From 4fe37a02cf2f7c9a5aee5a69af92b9ed3b316b0d Mon Sep 17 00:00:00 2001 From: manuellimartins Date: Fri, 4 Oct 2024 12:01:25 -0300 Subject: [PATCH 1/9] =?UTF-8?q?Adi=C3=A7=C3=A3o=20de=20material=20projeto?= MIME-Version: 1.0 Content-Type: text/plain; charset=UTF-8 Content-Transfer-Encoding: 8bit --- Projeto_final_Manuelli_ipynb.ipynb | 1651 +++ README.md | 62 +- mental_health_and_technology_usage_2024.csv | 10001 ++++++++++++++++++ 3 files changed, 11680 insertions(+), 34 deletions(-) create mode 100644 Projeto_final_Manuelli_ipynb.ipynb create mode 100644 mental_health_and_technology_usage_2024.csv diff --git a/Projeto_final_Manuelli_ipynb.ipynb b/Projeto_final_Manuelli_ipynb.ipynb new file mode 100644 index 0000000..393c216 --- /dev/null +++ b/Projeto_final_Manuelli_ipynb.ipynb @@ -0,0 +1,1651 @@ +{ + "cells": [ + { + "cell_type": "markdown", + "metadata": { + "id": "ehsYCT0aRQV_" + }, + "source": [ + "Base de dados:\n", + "https://www.kaggle.com/datasets/waqi786/mental-health-and-technology-usage-dataset?resource=download\n", + "Conjunto de dados sobre saúde mental e uso de tecnologia 🌱\n", + "Explorando o impacto do tempo de tela no bem-estar 🧠\n", + "\n", + "📱💻 Conjunto de dados sobre saúde mental e uso de tecnologia 🌱\n", + "\n", + "Novo notebook\n", + "\n", + "Download (201 kB)\n", + "\n", + "Sobre o conjunto de dados\n", + "Este conjunto de dados oferece insights sobre como o uso diário da tecnologia, incluindo mídia social e tempo de tela, impacta a saúde mental. 📊 Ele captura vários padrões comportamentais e suas correlações com indicadores de saúde mental, como níveis de estresse, qualidade do sono e produtividade. Mergulhe para analisar a relação entre nossas vidas digitais e bem-estar mental! 🌟\n", + "\n", + "O objetivo da análise é compreender a percepção dos entrevistados sobre seu estado mental em relação ao tempo dedicada a telas.\n", + "\n", + "Verificar o padrão de horas dedicadas a horas de sono e atividade física.\n", + "\n", + "Verificar a percepção sobre o impacto no trabalho em relação ao uso de telas.\n" + ] + }, + { + "cell_type": "markdown", + "metadata": { + "id": "-ccf6wkBSJHM" + }, + "source": [ + "Imports\n", + "Para fazer a análise, primeiro precisamos importar as bibliotecas de Python: Pandas." + ] + }, + { + "cell_type": "code", + "execution_count": 33, + "metadata": { + "id": "GMC_maMISM-n" + }, + "outputs": [], + "source": [ + "import pandas as pd\n", + "import matplotlib.pyplot as plt\n", + "\n", + "\n" + ] + }, + { + "cell_type": "markdown", + "metadata": { + "id": "Bx-PZi-JSV1A" + }, + "source": [ + "Criação do Dataframe\n", + "Etapa de coleta de dados\n", + "Vamos análisar a fonte de dados em csv, assim precisamos criar um dataframe e ler o arquivos arquivos csv(s)." + ] + }, + { + "cell_type": "code", + "execution_count": 38, + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/", + "height": 617 + }, + "id": "_IxsKqaCZ4UN", + "outputId": "45482164-1ab0-4e91-8590-5c9be971b384" + }, + "outputs": [ + { + "data": { + "application/vnd.google.colaboratory.intrinsic+json": { + "summary": "{\n \"name\": \"dataframe\",\n \"rows\": 10000,\n \"fields\": [\n {\n \"column\": \"User_ID\",\n \"properties\": {\n \"dtype\": \"string\",\n \"num_unique_values\": 10000,\n \"samples\": [\n \"USER-06253\",\n \"USER-04685\",\n \"USER-01732\"\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Age\",\n \"properties\": {\n \"dtype\": \"number\",\n \"std\": 13,\n \"min\": 18,\n \"max\": 65,\n \"num_unique_values\": 48,\n \"samples\": [\n 44,\n 35,\n 41\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n 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Column Non-Null Count Dtype \n", + "--- ------ -------------- ----- \n", + " 0 User_ID 10000 non-null object \n", + " 1 Age 10000 non-null int64 \n", + " 2 Gender 10000 non-null object \n", + " 3 Technology_Usage_Hours 10000 non-null float64\n", + " 4 Social_Media_Usage_Hours 10000 non-null float64\n", + " 5 Gaming_Hours 10000 non-null float64\n", + " 6 Screen_Time_Hours 10000 non-null float64\n", + " 7 Mental_Health_Status 10000 non-null object \n", + " 8 Stress_Level 10000 non-null object \n", + " 9 Sleep_Hours 10000 non-null float64\n", + " 10 Physical_Activity_Hours 10000 non-null float64\n", + " 11 Support_Systems_Access 10000 non-null object \n", + " 12 Work_Environment_Impact 10000 non-null object \n", + " 13 Online_Support_Usage 10000 non-null object \n", + "dtypes: float64(6), int64(1), object(7)\n", + "memory usage: 1.1+ MB\n" + ] + } + ], + "source": [ + "# Informações do dataframe\n", + "dataframe.info()" + ] + }, + { + "cell_type": "code", + "execution_count": 6, + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/", + "height": 523 + }, + "id": "ydO0XiVbIIE0", + "outputId": "fe9c4b78-04c2-4cd6-8bb8-310fa676310b" + }, + "outputs": [ + { + "data": { + "text/html": [ + "
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" + ], + "text/plain": [ + "Gender\n", + "Other 3364\n", + "Male 3350\n", + "Female 3286\n", + "Name: count, dtype: int64" + ] + }, + "execution_count": 29, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "# Quantidade de pessoas por Gênero\n", + "#do pandas é utilizada para contar a quantidade de ocorrências de cada valor em uma coluna.\n", + "#A coluna Gender será contada e retornará a quantidade de pessoas por gênero.\n", + "contagem_genero = dataframe['Gender'].value_counts()\n", + "contagem_genero\n", + "\n" + ] + }, + { + "cell_type": "code", + "execution_count": 30, + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/", + "height": 490 + }, + "id": "HS1a5QplSTd7", + "outputId": "0e8fdc48-8dea-4d31-fad2-13c30fd6ada5" + }, + "outputs": [ + { + "data": { + "text/html": [ + "
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" + ], + "text/plain": [ + "Age Gender\n", + "18 Other 78\n", + " Female 75\n", + " Male 67\n", + "19 Male 63\n", + " Other 63\n", + " ..\n", + "64 Female 72\n", + " Male 62\n", + "65 Male 80\n", + " Other 78\n", + " Female 72\n", + "Name: count, Length: 144, dtype: int64" + ] + }, + "execution_count": 30, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "# Quantidade de pessoas por idade\n", + "#value_conts(): do pandas é utilizada para contar a quantidade de ocorrências de cada valor em uma coluna.\n", + "#a coluna Age será contada e retornará a quantidade de pessoas por idade.\n", + "# sort_index(): é utilizada para ordenar os dados de uma Series ou DataFrame de acordo com o índice.\n", + "# contagem_idade será ordenada pelos valores do índice, que contém faixas etárias ou valores de idade.\n", + "# groupby() do pandas é usada para agrupar dados com base em uma ou mais colunas e realizar operações agregadas, como somas, médias, contagens, etc., em cada grupo\n", + "contagem_idade= dataframe['Age'].value_counts()\n", + "contagem_idade\n", + "order_idade = contagem_idade.sort_index()\n", + "order_idade\n", + "groupby_idade = dataframe.groupby('Age')['Gender'].value_counts()\n", + "groupby_idade" + ] + }, + { + "cell_type": "code", + "execution_count": 26, + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "2px9ffYGRKuq", + "outputId": "ae8aada2-0f92-4478-b36d-c4ef68d6aaf1" + }, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Stress_Level High Low Medium\n", + "Gender \n", + "Female 1107 1099 1080\n", + "Male 1110 1120 1120\n", + "Other 1113 1113 1138\n" + ] + } + ], + "source": [ + "#quantidade de respostas de acordo com a percepção de nível de estresse em relação ao gênero\n", + "#A função crosstab() do pandas é usada para criar uma tabela de frequência cruzada entre duas ou mais colunas.\n", + "# Ela é útil para gerar tabelas de contingência que mostram a relação entre variáveis categóricas, como a contagem de ocorrências entre elas.\n", + "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Stress_Level'])\n", + "print(dataframe_crosstab)" + ] + }, + { + "cell_type": "markdown", + "metadata": { + "id": "ghnh8pKpd_Xc" + }, + "source": [ + "De acordo com o resultado os niveis de estresse para o gênero feminino como alto teve maior incidência.\n", + "Para o gênero masculino o nível médio e baixo teve a mesma quantidade.\n", + "Para o gênero outros o nível de stress médio teve maior incidência.\n" + ] + }, + { + "cell_type": "code", + "execution_count": 27, + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "Id2zBo6XRTVT", + "outputId": "828411a7-32d0-48f4-eb78-21268e41d0f9" + }, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Mental_Health_Status Excellent Fair Good Poor\n", + "Gender \n", + "Female 846 779 847 814\n", + "Male 840 833 823 854\n", + "Other 832 878 838 816\n" + ] + } + ], + "source": [ + "#quantidade de respostas de acordo com a percepção a sensação do estado mental em relação ao gênero\n", + "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Mental_Health_Status'])\n", + "print(dataframe_crosstab)" + ] + }, + { + "cell_type": "markdown", + "metadata": { + "id": "o9EGG5oUhYe7" + }, + "source": [ + "De acordo com o resultado o estado de saúde mental para o gênero feminino como 'Excelente\" teve maior incidência. Para o gênero masculino o estado de saúde mental ruim teve maior incidência. Para o gênero outros o estado de saúde razoável maior incidência.\n", + "É possivel notar resultados interessantes pois a exemplo: apesar das mulheres em sua maioria descrevem estarem estressadas, a maioria classifica seu estado mental como Excelente.\n", + "Para o gênero masculino os resultados possuem mais relação entre o nível de strees entre médio e baixo com a percepção do estado mental(ruim).\n", + "Para o gênero outros os resultados possuem mais relação entre o nível de strees entre médio com a percepção do estado mental(razoável).\n" + ] + }, + { + "cell_type": "code", + "execution_count": 24, + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "LPs9IR8yVQKm", + "outputId": "d1649fb0-6fa9-412f-8356-4fe82bda24fa" + }, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Work_Environment_Impact Negative Neutral Positive\n", + "Gender \n", + "Female 1112 1069 1105\n", + "Male 1129 1119 1102\n", + "Other 1137 1124 1103\n" + ] + } + ], + "source": [ + "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Work_Environment_Impact'])\n", + "print(dataframe_crosstab)" + ] + }, + { + "cell_type": "markdown", + "metadata": { + "id": "_6jmEHfeFw7u" + }, + "source": [ + "Nessa tabela é possível identificar a quantidade de respostas sobre a sensação ao impacto no ambiente de trabalho em relação ao uso de tecnologias(telas, redes sociais, jogos, videogames).\n", + "A maioria acreditar ter impacto negativo, mas há uma variação pequena nas quantidade das respostas.\n" + ] + }, + { + "cell_type": "code", + "execution_count": 37, + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "keSd5dKjdDLC", + "outputId": "7f32aac6-113b-49b3-e5fd-e86453a240cf" + }, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Gender\n", + "Female 6.502684\n", + "Male 6.497627\n", + "Other 6.501894\n", + "Name: Sleep_Hours, dtype: float64\n" + ] + } + ], + "source": [ + "# Aplicar uma função que classifica os genêros a média de horas de sono\n", + "dataframe_horas_sono = dataframe.groupby('Gender')['Sleep_Hours'].mean()\n", + "print(dataframe_horas_sono)\n" + ] + }, + { + "cell_type": "markdown", + "metadata": { + "id": "W6MVupGdmhUG" + }, + "source": [ + "Os grupos de genêro apresentam uma média de horas de sono aproximadas.\n", + "\n", + "> Adicionar aspas\n", + "\n" + ] + }, + { + "cell_type": "code", + "execution_count": 25, + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "59uQmKatEmXW", + "outputId": "501d57a1-7739-4d34-909b-6f8690353850" + }, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Gender\n", + "Female 5.011625\n", + "Male 5.003287\n", + "Other 4.996846\n", + "Name: Physical_Activity_Hours, dtype: float64\n" + ] + } + ], + "source": [ + "# Aplicar uma função que classifica os generos a atividade física\n", + "dataframe_horas_at = dataframe.groupby('Gender')['Physical_Activity_Hours'].mean() # Define dataframe_horas_at and assign the result to the variable itself, not an attribute.\n", + "print(dataframe_horas_at)\n" + ] + }, + { + "cell_type": "markdown", + "metadata": { + "id": "-94G5cAmm1PG" + }, + "source": [ + "Os grupos de genêro apresentam uma média de horas praticando atividade físicas aproximadas." + ] + }, + { + "cell_type": "code", + "execution_count": 22, + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "-vf2PcW-Vx_5", + "outputId": "5244ed53-7f38-4cf6-f9f6-1db7475553f8" + }, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Gender\n", + "Female 8.078010\n", + "Male 7.868096\n", + "Other 7.983112\n", + "Name: Screen_Time_Hours, dtype: float64\n" + ] + } + ], + "source": [ + "dataframe_horas_tela = dataframe.groupby('Gender')['Screen_Time_Hours'].mean()\n", + "print(dataframe_horas_tela)\n", + "\n" + ] + }, + { + "cell_type": "markdown", + "metadata": { + "id": "oSm28K7onBxE" + }, + "source": [ + "O grupo do gênero feminimo passa mais tem nas telas." + ] + }, + { + "cell_type": "code", + "execution_count": 11, + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "mXbcmaOgWGo1", + "outputId": "bf3a9568-85b1-41a0-a9b7-38523b69a656" + }, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Gender Mental_Health_Status\n", + "Female Good 847\n", + " Excellent 846\n", + " Poor 814\n", + " Fair 779\n", + "Male Poor 854\n", + " Excellent 840\n", + " Fair 833\n", + " Good 823\n", + "Other Fair 878\n", + " Good 838\n", + " Excellent 832\n", + " Poor 816\n", + "Name: count, dtype: int64\n" + ] + } + ], + "source": [ + "dataframe_saude_mental = dataframe.groupby('Gender')['Mental_Health_Status'].value_counts()\n", + "print(dataframe_saude_mental)" + ] + }, + { + "cell_type": "code", + "execution_count": 15, + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "0-mQoAiXKa0X", + "outputId": "89d9fadd-afb5-429e-c39d-08cc5b24b67c" + }, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Age 18 19 20 21 22 23 24 25 26 27 ... 56 57 58 59 60 61 \\\n", + "Gender ... \n", + "Female 75 52 58 67 65 67 62 70 77 71 ... 71 73 64 78 63 66 \n", + "Male 67 63 74 81 71 84 71 70 75 64 ... 65 68 59 82 54 60 \n", + "Other 78 63 82 68 80 65 79 82 68 75 ... 67 77 73 75 69 61 \n", + "\n", + "Age 62 63 64 65 \n", + "Gender \n", + "Female 79 72 72 72 \n", + "Male 81 70 62 80 \n", + "Other 85 65 74 78 \n", + "\n", + "[3 rows x 48 columns]\n", + "Screen_Time_Hours 1.00 1.01 1.02 1.03 1.04 1.05 1.06 1.07 \\\n", + "Gender \n", + "Female 0 1 4 2 1 4 3 1 \n", + "Male 2 2 1 2 2 3 1 3 \n", + "Other 1 4 0 2 2 1 1 1 \n", + "\n", + "Screen_Time_Hours 1.08 1.09 ... 14.91 14.92 14.93 14.94 14.95 \\\n", + "Gender ... \n", + "Female 2 2 ... 6 5 2 2 4 \n", + "Male 2 5 ... 2 3 1 2 2 \n", + "Other 1 3 ... 3 2 1 2 5 \n", + "\n", + "Screen_Time_Hours 14.96 14.97 14.98 14.99 15.00 \n", + "Gender \n", + "Female 4 3 1 0 1 \n", + "Male 1 1 3 2 3 \n", + "Other 2 1 2 3 4 \n", + "\n", + "[3 rows x 1400 columns]\n", + "Gender\n", + "Female 8.078010\n", + "Male 7.868096\n", + "Other 7.983112\n", + "Name: Screen_Time_Hours, dtype: float64\n" + ] + } + ], + "source": [ + "# Criando uma tabela cruzada\n", + "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Age'])\n", + "print(dataframe_crosstab)\n", + "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Screen_Time_Hours'],)\n", + "print(dataframe_crosstab)\n", + "groupby_gender = dataframe.groupby('Gender')['Screen_Time_Hours'].mean()\n", + "print(groupby_gender)\n", + "# aqui é possivel notar que os entrevistados possuem a faixa etária de 18 as 65, com uma quantidade homogênea entre as idades.\n", + "# e as horas de tela varia de 1 a 15 horas\n", + "#identicação de gênero: feminino, masculino, outros." + ] + }, + { + "cell_type": "code", + "execution_count": 16, + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "HitPidcZAqrC", + "outputId": "3cc5e41b-aded-400c-cb60-3934f79854bc" + }, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Mental_Health_Status Excellent Fair Good Poor\n", + "Gender \n", + "Female 6.439634 6.174326 6.608654 6.772948\n", + "Male 6.455131 6.374454 6.427023 6.419180\n", + "Other 6.422055 6.488747 6.570501 6.525699\n" + ] + } + ], + "source": [ + "# Calcular a tabulação cruzada de Gênero e Status de Saúde Mental,\n", + "# agregando Horas de Uso de Tecnologia com a função média\n", + "\n", + "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Mental_Health_Status'], values=dataframe['Technology_Usage_Hours'], aggfunc='mean')\n", + "print(dataframe_crosstab)\n", + "\n", + "\n" + ] + }, + { + "cell_type": "code", + "execution_count": 35, + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/", + "height": 564 + }, + "id": "0x66XwX0bz5a", + "outputId": "9e447960-7e19-4394-b63b-59f41b6cd266" + }, + "outputs": [ + { + "data": { + "image/png": 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", + "text/plain": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "data = {\n", + " 'Mental_Health_Status': ['Excellent', 'Fair', 'Good', 'Poor'],\n", + " 'Female': [6.439634, 6.174326, 6.608654, 6.772948],\n", + " 'Male': [6.455131, 6.374454, 6.427023, 6.419180],\n", + " 'Other': [6.422055, 6.488747, 6.570501, 6.525699]\n", + "}\n", + "\n", + "# Criando um DataFrame com os dados\n", + "df = pd.DataFrame(data)\n", + "\n", + "# Definindo o gráfico de barras\n", + "df.set_index('Mental_Health_Status').plot(kind='bar', figsize=(10,6))\n", + "\n", + "# Adicionando rótulos e título\n", + "plt.title('Mental Health Status by Gender')\n", + "plt.xlabel('Mental Health Status')\n", + "plt.ylabel('Mean Score')\n", + "plt.xticks(rotation=0) # Rotaciona os labels do eixo x\n", + "\n", + "# Exibindo o gráfico\n", + "plt.legend(title='Gender')\n", + "plt.show()\n" + ] + }, + { + "cell_type": "markdown", + "metadata": { + "id": "4PoHgP0yAsjJ" + }, + "source": [ + "Pela relação apresentada acima as médias de horas usando tecnologia, a variação de horas usando tecnologia é pequena em relação ao estado mental. Mas o gênero feminimo que informou estado mental ruim fica um puco mais nas telas. o gênero masculino e outros, possui médias muito próximnas entre horas usando tecnologia e sua relação com a sensação dos estado mental. Acredito ser possivel inferir que a sensação do estado mental ao tempo de usando tecnologia não tenham uma realação significativa de acordo com as respostas no contexto de horas usando teconologia.\n", + "\n", + "Excellent: Excelente / Fair: Razoável/ Good: Bom/ Poor: Ruim" + ] + }, + { + "cell_type": "code", + "execution_count": 17, + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "ccHkKUsEA2_F", + "outputId": "999bfa2b-056f-4eee-d104-4e9f91702555" + }, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Mental_Health_Status Excellent Fair Good Poor\n", + "Gender \n", + "Female 3.845260 4.110244 3.940130 3.953956\n", + "Male 4.024190 3.991393 4.072260 3.895152\n", + "Other 3.919147 3.977802 3.949212 4.003272\n" + ] + } + ], + "source": [ + "\n", + "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Mental_Health_Status'], values=dataframe['Social_Media_Usage_Hours'], aggfunc='mean')\n", + "print(dataframe_crosstab)" + ] + }, + { + "cell_type": "markdown", + "metadata": { + "id": "wup_l88yBBys" + }, + "source": [ + "Resolvi verificar as horas dedicadas a mídias sociais para verificar se há diferenças referente a análise anterior.\n", + "\n", + "Nesse sentido apesar das pequenas diferenças em relação as médias, para os grupos a sensação de estado mental são distintas entre si. Para as mulheres que passam mais tempo em redes sociais seu estado mental é razoável, diferente do tempo dedicado a telas que a sensação estado mental era ruim. Para os homens que passam mais tempo em redes sociais seu estado mental é bom, semelhante ao tempo dedicadas a telas. Para os outros que passam mais tempo em redes sociais seu estado mental é ruim, diferente do tempo dedicado a telas que a sensação estado mental era razoável." + ] + }, + { + "cell_type": "code", + "execution_count": 18, + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "808hlt0UBWA8", + "outputId": "d6b16ecf-280a-4f47-f774-ee346594700e" + }, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Mental_Health_Status Excellent Fair Good Poor\n", + "Gender \n", + "Female 3.845260 4.110244 3.940130 3.953956\n", + "Male 4.024190 3.991393 4.072260 3.895152\n", + "Other 3.919147 3.977802 3.949212 4.003272\n" + ] + } + ], + "source": [ + "\n", + "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Mental_Health_Status'], values=dataframe['Social_Media_Usage_Hours'], aggfunc='mean')\n", + "print(dataframe_crosstab)" + ] + }, + { + "cell_type": "markdown", + "metadata": { + "id": "Ba3nw0nHBYfG" + }, + "source": [ + "Resolvi verificar as horas dedicadas a mídias sociais para verificar se há diferenças referente a análise anterior.\n", + "\n", + "Nesse sentido apesar das pequenas diferenças em relação as médias, para os grupos a sensação de estado mental são distintas entre si.\n", + "Para as mulheres que passam mais tempo em redes sociais seu estado mental é razoável, diferente do tempo dedicado a telas que a sensação estado mental era ruim.\n", + "Para os homens que passam mais tempo em redes sociais seu estado mental é bom, semelhante ao tempo dedicadas a telas.\n", + "Para os outros que passam mais tempo em redes sociais seu estado mental é ruim, diferente do tempo dedicado a telas que a sensação estado mental era razoável." + ] + }, + { + "cell_type": "markdown", + "metadata": { + "id": "XZjITheTZOdE" + }, + "source": [] + } + ], + "metadata": { + "colab": { + "provenance": [] + }, + "kernelspec": { + "display_name": "Python 3", + "name": "python3" + }, + "language_info": { + "name": "python" + } + }, + "nbformat": 4, + "nbformat_minor": 0 +} diff --git a/README.md b/README.md index 6f06bd0..638127c 100644 --- a/README.md +++ b/README.md @@ -18,8 +18,21 @@ O que veremos na aula de hoje? * [Slide Semana 17](https://docs.google.com/presentation/d/1axo2Dlm0Hx35ahKdZW6s-UAdG61L41QXdete8ZcQV0w/edit?usp=sharing) * Slide Semana 18 -* [Escolhendo uma fonte de dados](#Escolhendoumafontededados) +* [fonte de dados escolhida](#https://www.kaggle.com/datasets/waqi786/mental-health-and-technology-usage-dataset?resource=download ) * Análise exploratória + Semana destinada a esse tipo de análise para entendimento da base. + + Nessa etapa foi usado comandos da biblioteca pandas e matplotlib + Foram usados funções como: + DataFrame é uma estrutura de dados bidimensional amplamente usada na biblioteca pandas do Python. Ele se assemelha a uma tabela (como em uma planilha do Excel ou uma tabela SQL), onde os dados são organizados em linhas e colunas. + A função value_counts() é muito usada em Pandas para contar a frequência de valores únicos em uma coluna de um DataFrame. + A função sort_index(): é utilizada para ordenar os dados de uma Series ou DataFrame de acordo com o índice. + A função groupby() do pandas é usada para agrupar dados com base em uma ou mais colunas e realizar operações agregadas, como somas, médias, contagens, etc., em cada grupo + A função crosstab() do pandas é usada para criar uma tabela de frequência cruzada entre duas ou mais colunas. Ela é útil para gerar tabelas de contingência que mostram a relação entre variáveis categóricas, como a contagem de ocorrências entre elas. + + + + * Criando uma história com dados ## Conteúdo @@ -36,45 +49,30 @@ Então aqui vão algumas perguntas gerais que devemos nos fazer ao iniciar um pr - **Conteúdo** - O que eu quero informar? + compreender a percepção dos entrevistados sobre seu estado mental em relação ao tempo dedicada a telas. - **Público** - - Para quem eu estou contanto essa história? Com quem vou compartilhar essa informação? + - Para quem eu estou contando essa história? Com quem vou compartilhar essa informação? + Projeto destinado a conclusão de curso do Análise de dados Reprograma + O contéudo da base é relevante para compreender qual a percepção dos entrevistados frente ao uso de telas - **Transformação** - Por que essa informação é relevante? - -Ok, as perguntas são importantes, - -MAS POR ONDE COMEÇAR?! - -### Escolhendo uma fonte de dados - -#### O caminho comum -Se você já fez algum tipo de pesquisa acadêmica (TCC, Iniciação Científica, etc) você certamente está familiarizado com esse processo, pois tudo começa com a escolha de um TEMA, seguindo para a definição do PROBLEMA, que em seguida é desdobrado em PERGUNTAS, que irão guiar a COLETA DE DADOS. - -1. Delimitação do Tema -2. Definição do Problema -3. Desenvolvimento de Perguntas -4. Coleta de Dados - -#### O caminho que iremos seguir -Porque esse projeto é um exercício e encontrar os dados ideais para responder às nossas perguntas pode se tornar um trabalho extremamente complexo... - -Nós iremos fazer um caminho um pouco diferente e a partir de um tema de interesse, escolher uma base e então pensar quais perguntas podem ser respondidas a partir dela. - -O QUE TAMBÉM É SUPER VÁLIDO! E PODE RENDER DESCOBERTAS INCRÍVEIS! + O conteúdo é relevante para analisar o nível de aprendizado, bem como ter acesso as informações relacionadas a base de dados + * **Escolha do tema** - - No primeiro momento você deve escolher qual assunto gostaria de abordar. Pense em um tema atual, relevante e até onde você vai aprofundar a análise. Lembre-se, não adianta abraçar o mundo sozinho, você precisa focar e entregar o melhor resultado possível, então trabalhe na delimitação do Tema! Quais são os recortes possíveis dentro do universo escolhido? - - #Dica: Dê prioridade para algo que você goste, se interesse, tenha afinidade ou conhecimento na área. + Saúde mental e uso de tecnologia * **Escolha da Base de Dados** - [Algumas opções de Bases de Dados](#base-de-dados) + https://www.kaggle.com/datasets/waqi786/mental-health-and-technology-usage-dataset?resource=download * **Definindo nossas perguntas** - O que eu quero tentar responder? VAMOS AO [BRAINSTORM](#material-da-aula)! + O objetivo da análise é compreender a percepção dos entrevistados sobre seu estado mental em relação ao tempo dedicada a telas. + + Verificar o padrão de horas dedicadas a horas de sono e atividade física. + + Verificar a percepção sobre o impacto no trabalho em relação ao uso de telas. *** @@ -92,11 +90,7 @@ O QUE TAMBÉM É SUPER VÁLIDO! E PODE RENDER DESCOBERTAS INCRÍVEIS! #### Base de Dados - [Kaggle](https://www.kaggle.com/datasets) -- [IBGE](https://ces.ibge.gov.br/base-de-dados/links-base-de-dados.html) -- [Brasil.io](https://brasil.io/datasets/) -- [Gov.br](https://dados.gov.br/dados/conjuntos-dados) -- [Nosso Mundo em Dados](https://ourworldindata.org/charts) - +-

Desenvolvido com :purple_heart:

diff --git a/mental_health_and_technology_usage_2024.csv b/mental_health_and_technology_usage_2024.csv new file mode 100644 index 0000000..1b43563 --- /dev/null +++ b/mental_health_and_technology_usage_2024.csv @@ -0,0 +1,10001 @@ +User_ID,Age,Gender,Technology_Usage_Hours,Social_Media_Usage_Hours,Gaming_Hours,Screen_Time_Hours,Mental_Health_Status,Stress_Level,Sleep_Hours,Physical_Activity_Hours,Support_Systems_Access,Work_Environment_Impact,Online_Support_Usage +USER-00001,23,Female,6.57,6.0,0.68,12.36,Good,Low,8.01,6.71,No,Negative,Yes +USER-00002,21,Male,3.01,2.57,3.74,7.61,Poor,High,7.28,5.88,Yes,Positive,No +USER-00003,51,Male,3.04,6.14,1.26,3.16,Fair,High,8.04,9.81,No,Negative,No +USER-00004,25,Female,3.84,4.48,2.59,13.08,Excellent,Medium,5.62,5.28,Yes,Negative,Yes +USER-00005,53,Male,1.2,0.56,0.29,12.63,Good,Low,5.55,4.0,No,Positive,Yes +USER-00006,58,Male,5.59,5.74,0.11,1.34,Poor,Low,8.61,6.54,Yes,Neutral,Yes +USER-00007,63,Female,3.38,2.55,3.79,9.78,Excellent,Medium,8.61,1.34,Yes,Neutral,No +USER-00008,51,Female,7.18,4.1,4.74,8.14,Excellent,Medium,7.11,5.27,Yes,Neutral,No +USER-00009,57,Other,10.86,4.11,0.08,6.02,Fair,Medium,7.19,5.22,No,Positive,No +USER-00010,31,Other,4.3,7.23,0.81,6.87,Excellent,High,5.09,0.47,No,Positive,No +USER-00011,53,Other,4.78,3.94,1.88,14.87,Poor,High,5.13,3.01,Yes,Neutral,No +USER-00012,64,Other,4.83,4.85,1.68,13.68,Fair,Low,8.57,6.35,No,Neutral,Yes +USER-00013,40,Female,3.06,4.06,2.54,10.65,Poor,High,7.9,0.49,Yes,Negative,Yes +USER-00014,24,Other,5.82,5.22,3.3,1.65,Excellent,High,4.82,7.15,No,Positive,No +USER-00015,38,Female,10.48,4.53,0.94,10.27,Poor,High,7.13,7.14,Yes,Negative,No +USER-00016,53,Male,7.51,0.21,4.17,5.08,Good,Medium,8.53,5.05,Yes,Negative,No +USER-00017,26,Female,6.4,5.4,4.76,11.4,Fair,High,4.62,9.65,Yes,Neutral,Yes +USER-00018,55,Female,2.03,6.56,2.01,14.88,Fair,Low,8.95,8.96,Yes,Negative,No +USER-00019,55,Male,2.94,0.61,2.13,11.49,Excellent,High,7.71,7.51,Yes,Neutral,No +USER-00020,37,Other,10.74,3.85,1.29,6.0,Good,Medium,5.69,7.77,Yes,Positive,No +USER-00021,57,Female,7.69,7.33,3.16,9.55,Fair,Low,7.07,5.65,Yes,Neutral,No +USER-00022,34,Male,8.44,1.14,2.28,1.51,Fair,High,4.76,0.06,No,Negative,Yes +USER-00023,38,Female,1.27,1.22,2.92,2.83,Poor,Low,4.01,6.48,No,Neutral,Yes +USER-00024,39,Male,2.06,5.99,3.96,9.8,Excellent,Low,5.83,7.59,Yes,Negative,Yes +USER-00025,42,Other,6.23,3.88,1.52,14.16,Poor,Medium,5.73,8.7,No,Positive,Yes +USER-00026,27,Other,7.39,4.15,0.19,3.03,Poor,Medium,4.85,0.34,Yes,Positive,Yes +USER-00027,23,Male,2.2,0.06,2.49,12.79,Poor,Medium,5.33,6.55,No,Positive,Yes +USER-00028,50,Female,1.16,0.51,3.2,14.72,Good,High,8.37,4.97,No,Neutral,Yes +USER-00029,60,Other,5.92,7.43,2.17,5.36,Excellent,Low,5.36,9.87,No,Negative,No +USER-00030,20,Female,3.65,7.48,0.32,1.63,Excellent,Medium,8.01,9.28,Yes,Neutral,No +USER-00031,40,Female,5.98,4.07,2.18,8.48,Fair,Low,8.27,9.78,Yes,Positive,No +USER-00032,29,Female,11.8,6.11,2.86,8.05,Fair,Medium,6.24,9.74,No,Positive,Yes +USER-00033,55,Female,11.51,1.42,2.47,5.32,Poor,High,4.4,3.69,No,Negative,No +USER-00034,30,Male,1.33,3.53,3.53,2.41,Good,Low,5.02,7.84,No,Negative,Yes +USER-00035,47,Male,9.91,4.52,0.61,1.69,Fair,Low,7.1,7.99,Yes,Neutral,No +USER-00036,37,Male,5.66,7.42,1.75,13.89,Poor,Low,5.77,8.17,Yes,Negative,No +USER-00037,41,Other,11.76,6.25,0.9,11.1,Poor,Low,7.98,0.74,Yes,Positive,No +USER-00038,44,Female,6.65,4.66,1.1,12.79,Good,Low,4.47,4.69,No,Positive,Yes +USER-00039,23,Male,10.87,2.98,4.69,5.37,Excellent,Low,4.7,2.25,Yes,Positive,Yes +USER-00040,21,Other,10.43,2.2,2.64,14.2,Good,High,6.98,5.61,Yes,Neutral,No +USER-00041,48,Male,7.05,1.62,3.62,1.22,Fair,Low,6.7,5.26,Yes,Neutral,Yes +USER-00042,57,Male,1.04,1.95,2.46,13.84,Excellent,Medium,7.59,8.4,No,Negative,Yes 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+USER-00091,22,Female,11.11,1.5,1.58,13.31,Good,Medium,4.34,2.66,No,Neutral,Yes +USER-00092,51,Female,9.65,5.54,3.76,7.5,Good,Low,4.28,4.65,No,Negative,Yes +USER-00093,40,Female,1.16,0.17,3.43,6.95,Excellent,Medium,8.23,3.5,No,Neutral,No +USER-00094,28,Other,5.03,2.43,3.66,3.87,Good,Low,5.11,2.24,Yes,Positive,Yes +USER-00095,23,Female,3.4,1.01,0.03,7.96,Poor,Medium,6.33,4.05,Yes,Positive,Yes +USER-00096,51,Other,3.16,7.44,1.58,10.28,Poor,Low,7.69,8.36,No,Neutral,Yes +USER-00097,48,Male,9.01,6.8,1.02,11.19,Fair,Medium,6.68,2.79,Yes,Neutral,No +USER-00098,44,Male,1.51,3.04,3.81,2.61,Good,Medium,8.82,6.66,No,Negative,No +USER-00099,34,Female,4.61,6.27,0.5,8.08,Poor,High,4.8,2.28,Yes,Negative,Yes +USER-00100,51,Male,8.68,3.66,1.95,14.71,Excellent,Low,5.17,4.83,Yes,Positive,Yes +USER-00101,35,Female,5.44,4.65,2.22,13.41,Poor,Low,8.76,4.89,No,Positive,No +USER-00102,46,Female,6.35,4.4,3.33,12.43,Good,High,5.88,1.85,No,Negative,No +USER-00103,60,Other,5.04,0.55,0.69,3.5,Poor,High,4.09,3.41,Yes,Positive,Yes +USER-00104,59,Male,6.65,1.98,0.63,6.53,Excellent,Low,4.79,5.12,No,Positive,No +USER-00105,29,Female,2.04,1.5,0.11,6.69,Fair,Medium,7.66,2.96,Yes,Neutral,Yes +USER-00106,45,Other,3.62,4.73,3.31,6.73,Fair,Low,7.72,7.96,Yes,Positive,No +USER-00107,35,Other,6.8,6.16,4.6,6.88,Fair,Low,8.33,8.28,No,Negative,Yes +USER-00108,63,Male,2.15,0.8,4.2,2.1,Excellent,Low,8.24,2.34,Yes,Negative,No +USER-00109,32,Other,4.63,3.31,3.66,2.3,Fair,Low,6.98,5.32,No,Neutral,Yes +USER-00110,29,Male,5.88,6.35,0.36,10.74,Good,High,6.28,9.69,No,Positive,Yes +USER-00111,44,Male,3.0,2.99,3.06,9.14,Good,Low,5.42,7.4,Yes,Neutral,No +USER-00112,19,Female,10.11,7.19,0.17,11.45,Excellent,Low,8.71,9.18,No,Positive,No +USER-00113,20,Male,11.98,1.87,0.74,10.68,Fair,Medium,6.99,6.03,Yes,Positive,No +USER-00114,50,Other,3.69,2.21,1.96,7.94,Poor,High,8.55,7.03,No,Positive,Yes +USER-00115,53,Female,3.29,0.12,0.95,11.8,Good,High,7.17,1.57,Yes,Positive,Yes +USER-00116,53,Other,1.55,2.21,0.09,2.96,Excellent,Medium,8.64,2.29,Yes,Negative,Yes +USER-00117,56,Other,4.37,2.39,1.61,1.39,Good,Medium,5.94,8.39,No,Positive,No +USER-00118,19,Male,11.14,6.27,3.15,13.1,Good,Low,5.4,5.75,No,Neutral,Yes +USER-00119,54,Female,5.52,0.5,2.05,14.28,Excellent,High,4.56,0.05,No,Neutral,Yes +USER-00120,45,Male,1.28,7.18,0.69,3.19,Poor,High,8.59,7.34,Yes,Negative,Yes +USER-00121,61,Female,5.7,4.07,2.19,8.79,Fair,Medium,5.51,5.16,No,Positive,No +USER-00122,59,Other,1.66,7.38,3.18,5.55,Excellent,High,4.4,6.51,Yes,Neutral,Yes +USER-00123,54,Male,4.54,3.84,2.17,9.28,Fair,Low,7.25,9.93,No,Neutral,No +USER-00124,29,Other,4.63,4.27,0.91,3.76,Good,Medium,6.09,3.36,No,Neutral,Yes +USER-00125,19,Other,4.41,1.93,1.83,9.98,Good,Low,5.93,7.64,No,Negative,No +USER-00126,34,Female,4.31,0.94,2.75,5.58,Excellent,High,4.49,8.86,Yes,Negative,No +USER-00127,62,Other,8.14,2.69,3.7,14.55,Excellent,High,6.15,4.1,No,Positive,Yes +USER-00128,20,Other,10.84,1.7,2.61,13.17,Fair,Medium,5.57,9.0,Yes,Positive,Yes +USER-00129,18,Female,4.88,0.07,2.91,8.63,Excellent,High,4.26,3.6,No,Neutral,Yes +USER-00130,42,Male,6.12,6.7,4.5,4.34,Good,Low,6.36,8.66,No,Positive,No +USER-00131,58,Female,3.08,0.77,2.72,5.93,Fair,High,8.99,4.56,No,Neutral,No +USER-00132,47,Other,11.0,1.64,4.33,8.62,Excellent,Medium,4.34,4.44,No,Positive,Yes +USER-00133,63,Male,5.81,1.44,1.76,1.05,Good,Medium,5.86,8.4,Yes,Positive,Yes +USER-00134,48,Female,8.64,1.18,4.9,8.57,Fair,Low,4.48,9.93,No,Neutral,No +USER-00135,25,Male,4.81,7.0,3.58,13.65,Good,Low,6.31,9.26,Yes,Neutral,No +USER-00136,50,Male,11.63,3.33,1.87,1.78,Poor,Medium,8.57,8.47,No,Neutral,Yes +USER-00137,46,Male,2.01,0.32,3.72,9.45,Good,Medium,5.09,3.01,No,Negative,No +USER-00138,45,Other,5.79,0.3,4.41,14.73,Good,Low,5.52,6.12,No,Negative,No +USER-00139,64,Female,11.59,5.33,4.5,13.11,Fair,High,5.16,4.86,No,Positive,Yes +USER-00140,26,Female,11.84,6.76,0.4,14.89,Poor,Medium,5.22,2.5,No,Neutral,No +USER-00141,20,Other,10.94,3.41,0.96,3.32,Excellent,Low,8.66,6.07,No,Positive,No +USER-00142,56,Other,2.42,2.68,1.18,3.36,Excellent,Low,4.67,2.91,No,Neutral,No +USER-00143,39,Other,3.74,1.28,0.8,10.08,Fair,High,4.1,9.58,No,Neutral,Yes +USER-00144,35,Female,4.02,5.24,3.04,9.99,Poor,Medium,8.97,0.66,Yes,Neutral,Yes +USER-00145,38,Male,11.49,4.36,2.09,13.41,Good,High,4.7,5.6,Yes,Positive,Yes +USER-00146,58,Other,5.46,1.28,4.59,13.92,Fair,High,5.32,8.41,No,Neutral,No +USER-00147,63,Male,6.91,5.97,2.83,6.26,Poor,Low,8.61,8.03,No,Negative,Yes +USER-00148,52,Other,2.17,6.89,1.54,2.56,Excellent,Medium,7.35,0.44,No,Neutral,Yes +USER-00149,64,Female,9.45,2.64,4.97,11.34,Good,High,6.93,9.98,No,Positive,Yes +USER-00150,55,Male,10.41,6.62,3.23,3.42,Excellent,Medium,5.57,5.22,Yes,Neutral,Yes +USER-00151,25,Male,10.5,6.98,3.8,13.15,Good,High,4.03,1.29,Yes,Negative,Yes +USER-00152,39,Female,1.68,2.08,0.27,14.82,Poor,Low,5.43,2.58,No,Neutral,No +USER-00153,35,Male,3.46,1.32,4.48,4.84,Fair,Medium,4.06,6.62,No,Neutral,No +USER-00154,52,Male,2.15,6.29,2.9,8.53,Good,Medium,8.59,2.66,No,Negative,Yes +USER-00155,50,Other,3.37,6.3,1.54,6.33,Excellent,Medium,8.55,9.22,No,Neutral,No +USER-00156,63,Female,2.47,3.28,2.87,1.8,Good,High,4.08,0.84,Yes,Neutral,Yes +USER-00157,63,Other,2.63,0.03,1.57,3.0,Poor,Low,8.6,1.24,Yes,Neutral,No +USER-00158,35,Female,6.57,0.33,3.72,5.42,Poor,Low,8.37,8.57,No,Negative,No +USER-00159,42,Other,3.82,2.56,4.05,3.04,Good,Medium,6.13,9.94,Yes,Positive,Yes +USER-00160,53,Male,1.57,0.84,2.73,8.41,Fair,Medium,6.07,9.5,Yes,Positive,Yes +USER-00161,28,Female,5.73,1.04,3.31,14.39,Poor,Medium,6.77,3.74,No,Neutral,Yes +USER-00162,56,Other,8.36,3.87,0.02,13.22,Excellent,Medium,4.86,6.52,No,Positive,Yes +USER-00163,35,Male,9.69,2.26,3.26,6.7,Good,Low,6.54,3.64,No,Negative,No +USER-00164,39,Male,4.04,7.93,1.3,12.95,Fair,Low,8.01,0.48,Yes,Neutral,Yes +USER-00165,34,Female,11.87,0.2,0.56,12.18,Fair,High,4.09,0.96,Yes,Neutral,No +USER-00166,56,Other,11.36,4.62,0.36,11.91,Poor,Medium,6.13,2.26,No,Neutral,Yes +USER-00167,26,Male,8.57,7.76,1.28,12.54,Excellent,High,5.91,2.92,Yes,Neutral,Yes +USER-00168,29,Male,5.56,6.75,3.84,4.52,Fair,Low,7.2,7.87,Yes,Neutral,Yes +USER-00169,29,Female,4.04,2.0,1.35,10.08,Excellent,Low,8.78,5.72,No,Negative,No +USER-00170,46,Male,5.43,0.01,1.66,7.14,Fair,High,6.74,2.56,No,Neutral,No +USER-00171,51,Female,9.73,5.65,4.83,10.72,Good,High,5.34,8.59,No,Neutral,Yes +USER-00172,55,Female,7.22,5.78,3.25,7.68,Poor,High,8.18,0.78,No,Negative,No +USER-00173,33,Male,8.6,1.11,4.54,5.19,Good,Low,5.01,3.64,Yes,Negative,No +USER-00174,18,Female,10.93,6.34,2.01,7.6,Excellent,Low,8.07,3.77,No,Negative,No +USER-00175,29,Male,3.66,2.12,4.32,12.0,Fair,High,7.68,5.02,Yes,Neutral,Yes +USER-00176,30,Male,2.48,2.44,2.98,2.48,Good,Medium,5.43,5.49,No,Neutral,Yes +USER-00177,27,Male,6.16,4.18,1.14,7.86,Fair,Low,8.39,3.0,No,Negative,Yes +USER-00178,26,Male,7.18,7.8,3.98,13.22,Excellent,Low,5.78,6.08,No,Negative,No +USER-00179,21,Male,5.9,4.77,3.04,13.93,Good,Medium,8.19,7.89,Yes,Positive,Yes +USER-00180,38,Female,8.38,1.47,3.89,5.0,Excellent,High,6.2,1.94,Yes,Neutral,Yes +USER-00181,61,Male,6.75,6.17,2.24,5.52,Fair,Medium,4.43,6.23,No,Neutral,No +USER-00182,49,Male,4.29,0.35,0.45,11.63,Good,High,7.8,1.61,Yes,Neutral,Yes +USER-00183,54,Other,9.89,6.48,1.25,1.17,Good,High,4.55,2.91,No,Neutral,Yes +USER-00184,26,Male,1.03,4.85,1.66,4.61,Excellent,Low,7.97,1.06,No,Negative,Yes +USER-00185,65,Other,7.58,7.92,1.62,1.4,Fair,Low,5.2,7.24,No,Neutral,No +USER-00186,35,Male,9.17,5.48,2.25,11.45,Fair,Medium,5.93,3.84,Yes,Neutral,Yes +USER-00187,51,Male,2.21,5.12,1.19,3.88,Excellent,Medium,8.14,0.1,No,Neutral,No +USER-00188,59,Female,5.77,2.18,2.46,10.91,Poor,Medium,8.79,4.0,No,Neutral,No +USER-00189,42,Female,4.63,2.22,1.0,13.11,Good,Low,5.84,8.09,Yes,Positive,No +USER-00190,50,Male,11.95,1.87,0.25,2.39,Poor,High,4.3,7.09,Yes,Neutral,Yes +USER-00191,53,Female,4.62,0.96,0.17,1.84,Good,Medium,7.71,6.41,No,Neutral,Yes +USER-00192,37,Other,7.96,5.36,0.71,4.35,Good,Medium,8.74,4.4,Yes,Positive,No +USER-00193,25,Female,7.44,6.36,2.46,13.65,Excellent,Low,8.97,5.81,Yes,Negative,No +USER-00194,49,Male,8.22,4.6,4.31,12.85,Excellent,High,7.37,2.02,Yes,Neutral,Yes +USER-00195,64,Female,8.11,6.28,3.42,4.27,Fair,High,7.02,3.27,No,Positive,Yes +USER-00196,46,Male,10.59,7.1,1.26,6.28,Excellent,High,5.7,5.13,Yes,Positive,No +USER-00197,65,Other,11.86,4.95,2.14,1.45,Poor,High,6.16,5.38,Yes,Neutral,No +USER-00198,65,Female,11.84,0.79,2.69,11.5,Excellent,High,7.47,7.01,No,Neutral,Yes +USER-00199,53,Female,3.09,0.34,1.57,14.05,Excellent,Medium,4.58,7.31,No,Negative,Yes +USER-00200,18,Other,3.92,2.44,3.21,4.41,Excellent,Medium,5.4,7.98,No,Negative,Yes +USER-00201,31,Male,7.62,4.04,3.29,14.63,Fair,Medium,6.89,3.94,No,Negative,No +USER-00202,56,Female,11.24,2.4,1.45,7.72,Good,Medium,7.66,0.45,Yes,Negative,No +USER-00203,64,Female,7.69,7.3,2.66,14.9,Fair,Low,7.97,7.55,No,Neutral,No +USER-00204,52,Male,6.85,6.18,1.76,12.67,Fair,High,8.22,9.03,Yes,Neutral,Yes +USER-00205,21,Male,10.83,0.73,0.66,11.48,Good,High,7.33,8.69,No,Negative,No +USER-00206,64,Other,8.35,2.72,3.73,14.6,Good,High,8.38,5.61,Yes,Negative,No +USER-00207,29,Male,8.84,5.93,1.03,6.54,Excellent,Low,4.31,3.86,No,Neutral,Yes +USER-00208,36,Male,1.14,6.57,0.03,1.38,Excellent,Low,6.9,0.15,Yes,Neutral,No +USER-00209,62,Other,5.84,6.76,2.79,1.74,Poor,Low,6.18,9.36,Yes,Positive,Yes +USER-00210,60,Male,8.33,1.05,2.3,14.98,Fair,Low,4.31,6.08,No,Neutral,Yes +USER-00211,39,Male,7.67,3.24,1.66,6.33,Poor,Medium,7.03,8.93,No,Neutral,No +USER-00212,27,Female,6.45,1.11,0.49,7.6,Fair,High,4.93,2.36,Yes,Negative,Yes +USER-00213,47,Female,11.47,3.18,3.73,1.97,Good,Medium,7.98,8.35,Yes,Neutral,No +USER-00214,40,Other,10.71,4.11,0.26,3.24,Fair,High,6.18,3.19,Yes,Neutral,No +USER-00215,58,Female,11.61,2.12,4.44,1.97,Good,Low,7.92,9.2,Yes,Negative,No +USER-00216,30,Male,8.15,5.74,3.46,9.58,Excellent,High,6.31,6.89,Yes,Positive,Yes +USER-00217,36,Other,5.83,1.55,2.66,4.29,Fair,Medium,4.38,9.46,Yes,Neutral,No +USER-00218,39,Female,4.56,1.28,4.17,2.73,Poor,Low,4.83,6.54,Yes,Negative,No +USER-00219,52,Male,10.61,4.53,4.48,2.04,Poor,High,5.92,3.41,Yes,Neutral,No +USER-00220,42,Other,3.86,2.75,0.45,12.93,Good,High,4.63,9.29,Yes,Negative,Yes +USER-00221,22,Male,10.82,1.88,3.47,7.56,Excellent,Medium,8.89,5.73,Yes,Neutral,Yes +USER-00222,52,Female,5.16,6.61,0.43,7.97,Good,Low,5.5,1.67,Yes,Negative,Yes +USER-00223,55,Other,9.9,3.86,4.91,5.24,Fair,Medium,5.0,6.72,Yes,Neutral,No +USER-00224,38,Female,5.69,0.3,1.45,8.03,Fair,Low,7.71,1.55,Yes,Neutral,Yes +USER-00225,38,Female,7.1,3.08,1.08,10.59,Good,High,8.63,9.35,Yes,Neutral,No +USER-00226,49,Female,8.78,7.33,2.26,2.54,Poor,Low,4.64,3.8,No,Positive,No +USER-00227,42,Male,3.78,7.54,3.26,4.86,Poor,Low,5.7,8.64,No,Negative,Yes +USER-00228,25,Male,5.21,6.92,3.97,7.5,Fair,Medium,4.76,8.71,No,Positive,No +USER-00229,36,Other,5.34,1.39,2.09,5.4,Excellent,High,7.17,9.62,Yes,Positive,No +USER-00230,45,Female,6.31,7.16,4.93,4.75,Good,High,7.16,8.6,No,Negative,No +USER-00231,23,Other,7.35,4.04,3.42,12.37,Good,High,8.42,5.27,No,Neutral,Yes +USER-00232,60,Male,1.82,2.27,4.4,10.55,Fair,Medium,7.21,3.27,No,Negative,No +USER-00233,64,Other,2.53,4.1,4.82,10.13,Fair,Low,4.5,3.56,Yes,Positive,Yes +USER-00234,44,Female,5.14,5.82,2.2,3.99,Good,Medium,5.26,8.77,No,Neutral,No +USER-00235,34,Male,7.02,3.56,1.83,1.64,Excellent,Low,6.19,8.55,Yes,Positive,No +USER-00236,33,Other,9.24,6.93,0.89,14.33,Good,High,6.91,0.54,No,Negative,No +USER-00237,26,Male,3.28,3.44,0.14,9.08,Fair,Medium,4.05,2.05,Yes,Neutral,Yes +USER-00238,49,Male,8.04,3.1,3.59,14.3,Excellent,Medium,7.6,8.9,No,Negative,No +USER-00239,44,Female,7.91,3.52,3.0,9.94,Poor,Medium,7.04,2.86,No,Negative,Yes +USER-00240,37,Male,5.2,4.55,0.4,14.61,Good,Low,6.79,4.51,No,Positive,Yes +USER-00241,28,Male,1.83,3.68,2.2,5.29,Poor,High,4.22,2.47,No,Neutral,No +USER-00242,41,Other,4.15,3.44,2.64,8.62,Good,Medium,4.02,7.95,No,Positive,Yes +USER-00243,26,Male,3.61,3.2,3.3,1.46,Poor,Low,5.18,3.23,No,Negative,Yes +USER-00244,59,Male,4.99,7.07,1.18,3.83,Poor,Medium,5.12,8.7,Yes,Negative,Yes +USER-00245,43,Other,7.72,5.92,2.52,10.49,Fair,High,5.89,0.2,No,Neutral,No +USER-00246,40,Female,4.46,2.06,4.31,3.29,Good,Low,8.53,1.89,Yes,Positive,Yes +USER-00247,55,Male,6.07,6.88,4.11,2.84,Good,Low,7.81,2.2,No,Negative,Yes +USER-00248,56,Other,6.92,4.58,2.8,10.84,Poor,High,5.68,9.53,No,Positive,Yes +USER-00249,50,Male,11.74,2.44,3.05,10.61,Fair,Low,5.74,8.31,No,Positive,No +USER-00250,46,Female,9.94,5.5,3.2,8.24,Excellent,High,6.53,0.26,No,Positive,Yes +USER-00251,23,Male,9.57,1.18,0.76,9.46,Poor,Low,6.64,2.54,Yes,Negative,No +USER-00252,47,Male,3.46,2.98,0.29,6.23,Fair,Medium,5.62,1.49,Yes,Neutral,Yes +USER-00253,39,Other,10.81,2.34,2.34,4.81,Poor,Medium,8.19,6.46,Yes,Negative,Yes +USER-00254,48,Other,10.11,6.63,1.45,9.77,Good,Low,8.07,1.08,No,Neutral,No +USER-00255,31,Male,2.58,1.9,4.46,5.96,Poor,Medium,4.82,2.56,No,Positive,No +USER-00256,55,Female,7.88,5.39,0.29,9.36,Poor,Medium,4.12,9.05,Yes,Neutral,No +USER-00257,21,Other,6.22,3.98,4.37,3.01,Good,High,6.09,8.11,Yes,Negative,Yes +USER-00258,19,Female,10.09,0.9,0.81,12.94,Good,Medium,4.49,4.82,No,Positive,Yes +USER-00259,25,Other,9.9,5.54,2.2,5.24,Fair,High,5.43,3.71,No,Positive,No +USER-00260,63,Other,1.07,3.39,1.35,8.69,Good,Medium,5.79,1.46,Yes,Neutral,No +USER-00261,49,Male,7.35,4.11,0.36,6.36,Excellent,Low,4.17,3.95,Yes,Neutral,Yes +USER-00262,27,Male,1.22,7.33,1.78,13.56,Good,Medium,8.53,7.33,No,Positive,Yes +USER-00263,27,Male,3.03,0.39,3.54,1.59,Poor,Medium,7.59,2.74,Yes,Neutral,Yes +USER-00264,20,Male,6.86,5.16,4.64,1.19,Good,Medium,8.14,5.97,No,Positive,Yes +USER-00265,58,Other,11.79,5.57,4.65,2.69,Excellent,High,5.2,1.78,No,Positive,Yes +USER-00266,61,Male,3.13,1.94,0.14,6.21,Poor,High,7.46,8.75,No,Negative,No +USER-00267,22,Female,5.88,1.84,2.73,7.26,Excellent,Medium,7.01,0.61,Yes,Negative,No +USER-00268,22,Other,10.29,0.93,1.56,3.1,Fair,Low,7.45,0.29,No,Positive,No +USER-00269,62,Other,3.78,3.58,0.72,5.14,Good,High,7.1,9.3,Yes,Neutral,No +USER-00270,64,Other,9.84,1.13,4.51,13.43,Good,Medium,5.26,9.32,No,Negative,No +USER-00271,34,Female,5.43,4.77,1.27,11.44,Excellent,Low,5.68,9.69,No,Neutral,No +USER-00272,33,Other,6.29,0.65,2.44,1.57,Excellent,High,5.21,4.16,Yes,Negative,Yes +USER-00273,39,Male,4.1,2.82,4.71,10.28,Good,Low,6.7,2.52,No,Positive,No +USER-00274,23,Male,11.59,7.87,2.42,6.18,Excellent,Medium,4.05,1.07,No,Neutral,Yes +USER-00275,34,Male,4.85,6.26,1.61,8.34,Excellent,Medium,8.12,8.44,Yes,Positive,Yes +USER-00276,33,Other,11.19,6.34,1.58,5.83,Good,Medium,6.41,8.33,Yes,Negative,Yes +USER-00277,47,Other,6.43,7.89,2.66,2.47,Excellent,High,4.78,9.47,No,Positive,Yes +USER-00278,38,Other,9.86,1.99,0.02,13.62,Excellent,Medium,7.04,9.23,No,Neutral,Yes +USER-00279,45,Male,3.04,5.23,2.16,7.5,Good,Medium,6.78,0.47,No,Neutral,Yes +USER-00280,45,Other,4.7,6.21,2.84,12.73,Fair,High,6.1,2.84,No,Negative,No +USER-00281,30,Male,9.99,7.06,4.96,7.22,Excellent,Medium,5.48,1.3,No,Neutral,Yes +USER-00282,51,Male,8.94,1.64,0.55,3.8,Excellent,High,6.52,3.91,Yes,Neutral,Yes +USER-00283,62,Male,8.04,1.04,2.56,3.01,Excellent,Medium,5.49,8.67,No,Negative,Yes +USER-00284,56,Female,1.69,6.11,3.71,3.26,Poor,Low,5.76,3.95,Yes,Positive,No +USER-00285,37,Male,1.94,3.76,2.63,1.3,Poor,Low,6.65,5.13,No,Negative,Yes +USER-00286,27,Male,11.5,2.8,3.13,9.27,Excellent,High,5.05,3.87,No,Negative,No +USER-00287,56,Male,3.99,4.41,0.16,10.74,Excellent,Low,4.88,1.02,Yes,Positive,No +USER-00288,48,Other,4.36,7.37,3.0,5.29,Good,Low,7.51,1.38,Yes,Negative,Yes +USER-00289,65,Female,1.76,2.33,4.02,12.11,Good,High,7.07,4.95,Yes,Positive,Yes +USER-00290,57,Female,3.51,2.96,3.69,13.78,Excellent,Low,6.42,3.29,No,Neutral,No +USER-00291,53,Other,2.07,5.3,1.35,4.5,Poor,High,8.13,7.19,No,Positive,No +USER-00292,24,Other,9.14,5.31,0.34,3.39,Fair,Low,5.49,1.37,No,Positive,Yes +USER-00293,25,Other,10.42,1.47,0.89,4.77,Good,High,6.1,3.08,No,Positive,Yes +USER-00294,64,Other,5.76,6.52,2.14,2.42,Excellent,High,5.11,3.42,No,Neutral,Yes +USER-00295,42,Male,9.41,1.11,3.3,6.67,Fair,Low,4.75,0.46,No,Negative,Yes +USER-00296,43,Other,8.58,1.9,3.47,12.92,Fair,Medium,5.7,9.31,No,Negative,Yes +USER-00297,32,Other,5.47,2.44,3.09,4.71,Excellent,High,5.91,0.85,Yes,Negative,Yes +USER-00298,18,Other,5.93,3.7,2.18,13.67,Fair,Low,5.97,8.52,No,Positive,Yes +USER-00299,28,Male,3.66,3.29,4.42,12.6,Fair,Low,4.97,0.28,Yes,Negative,No +USER-00300,25,Female,9.42,0.62,2.34,6.75,Good,Low,4.32,8.43,Yes,Positive,No +USER-00301,30,Female,11.78,5.32,0.11,4.24,Poor,High,7.56,8.58,Yes,Negative,No +USER-00302,27,Male,4.28,6.15,4.92,14.85,Good,Low,5.22,9.7,No,Positive,Yes +USER-00303,65,Other,1.49,0.21,3.89,2.4,Fair,Medium,8.67,0.7,Yes,Negative,No +USER-00304,38,Male,7.32,3.71,3.05,2.25,Good,Low,8.36,2.52,Yes,Negative,No +USER-00305,30,Other,5.61,3.44,4.64,1.89,Good,Low,7.71,7.34,Yes,Negative,Yes +USER-00306,55,Other,7.95,7.41,2.28,14.86,Excellent,Low,8.17,6.87,Yes,Negative,No +USER-00307,31,Male,10.94,2.36,4.6,14.32,Poor,High,7.35,4.86,No,Neutral,No +USER-00308,62,Other,2.05,0.25,2.68,3.94,Fair,Low,5.73,8.16,Yes,Positive,No +USER-00309,40,Other,4.17,6.47,1.61,8.06,Poor,Low,7.54,0.74,Yes,Positive,Yes +USER-00310,34,Male,3.18,1.73,1.25,2.95,Fair,Medium,8.64,2.2,No,Negative,No +USER-00311,55,Other,10.14,4.93,3.46,6.05,Fair,High,4.99,1.86,Yes,Positive,Yes +USER-00312,46,Male,1.63,7.78,3.26,5.16,Excellent,High,4.76,7.54,Yes,Positive,No +USER-00313,25,Female,6.3,7.1,2.08,4.06,Fair,Medium,6.15,0.48,No,Negative,No +USER-00314,20,Female,3.92,7.35,1.06,11.5,Good,Low,8.35,3.27,No,Positive,No +USER-00315,45,Male,4.99,7.48,0.74,6.62,Fair,Low,4.38,6.77,No,Neutral,Yes +USER-00316,62,Male,10.56,0.97,4.64,2.86,Good,High,5.44,0.35,Yes,Positive,No +USER-00317,48,Other,3.43,4.94,2.44,5.0,Good,Medium,8.52,7.88,Yes,Positive,No +USER-00318,28,Male,7.43,7.58,0.8,11.85,Fair,Low,7.95,9.55,Yes,Neutral,Yes +USER-00319,56,Male,11.93,4.55,3.02,5.51,Excellent,Low,6.82,2.44,No,Positive,Yes +USER-00320,62,Female,8.8,0.13,2.04,3.78,Good,Medium,5.68,2.68,No,Positive,Yes +USER-00321,63,Male,6.39,5.49,0.96,11.52,Fair,High,4.32,2.81,No,Negative,No +USER-00322,40,Male,7.49,4.95,3.12,1.85,Poor,Low,5.88,0.59,No,Positive,Yes +USER-00323,60,Female,6.11,5.99,1.2,13.12,Fair,High,7.48,9.08,No,Positive,No +USER-00324,65,Female,7.75,4.62,0.18,10.38,Excellent,Medium,8.86,3.73,Yes,Positive,No +USER-00325,46,Male,7.84,1.3,1.65,3.46,Excellent,Low,4.74,6.81,Yes,Neutral,No +USER-00326,58,Other,10.3,3.82,4.62,12.85,Excellent,Medium,8.51,4.4,Yes,Positive,No +USER-00327,61,Male,6.77,1.7,2.94,5.03,Excellent,Low,7.88,7.94,No,Neutral,No +USER-00328,32,Other,3.99,0.47,1.92,4.03,Poor,Medium,5.97,6.64,No,Neutral,Yes +USER-00329,51,Female,5.81,3.55,2.96,2.33,Excellent,Low,4.58,0.9,Yes,Neutral,No +USER-00330,58,Female,10.45,1.91,0.74,7.78,Fair,Medium,7.66,8.34,Yes,Neutral,No +USER-00331,25,Female,2.14,2.67,0.47,13.67,Excellent,High,7.42,6.0,No,Positive,Yes +USER-00332,43,Other,10.34,6.18,0.03,8.49,Fair,Medium,8.56,3.07,No,Negative,Yes +USER-00333,27,Male,10.29,1.57,4.04,11.27,Good,Medium,8.68,4.13,No,Negative,No +USER-00334,23,Other,9.46,0.49,3.99,3.73,Excellent,Low,7.0,3.15,No,Negative,Yes +USER-00335,50,Male,6.73,7.2,3.19,9.41,Poor,Medium,4.58,7.34,Yes,Negative,No +USER-00336,55,Other,4.46,4.26,1.42,4.54,Fair,High,5.31,9.95,No,Negative,No +USER-00337,39,Female,4.49,5.76,1.81,1.49,Excellent,Low,6.31,9.52,Yes,Negative,Yes +USER-00338,29,Male,4.1,1.21,0.46,13.34,Fair,Medium,6.8,8.95,No,Positive,Yes +USER-00339,35,Male,5.44,0.64,3.03,8.48,Fair,High,4.37,3.23,Yes,Positive,No +USER-00340,20,Male,6.66,2.54,1.19,2.39,Poor,High,8.0,8.59,Yes,Negative,No +USER-00341,41,Other,7.36,7.92,3.88,7.52,Good,High,4.33,6.39,Yes,Neutral,No +USER-00342,51,Other,3.71,3.91,2.82,4.93,Fair,Low,7.94,6.86,No,Negative,No +USER-00343,21,Other,4.43,5.02,4.62,10.86,Excellent,Medium,4.4,4.46,No,Negative,Yes +USER-00344,39,Male,4.26,7.53,4.96,7.49,Poor,High,4.07,9.83,Yes,Negative,Yes +USER-00345,20,Other,11.48,4.16,1.06,6.03,Poor,Low,5.61,5.89,No,Neutral,Yes +USER-00346,25,Other,4.61,3.13,1.65,11.84,Good,Low,5.32,1.16,Yes,Negative,Yes +USER-00347,56,Male,4.72,1.15,4.4,2.65,Poor,Low,8.89,9.09,Yes,Negative,Yes +USER-00348,54,Female,6.7,2.03,4.16,2.47,Poor,Low,7.57,6.15,Yes,Neutral,Yes +USER-00349,35,Other,6.26,3.95,4.17,8.22,Good,Medium,8.08,3.08,No,Negative,No +USER-00350,55,Female,7.55,1.15,0.88,13.36,Poor,Medium,6.82,4.75,No,Negative,No +USER-00351,60,Female,4.74,7.74,3.52,12.71,Poor,High,6.85,6.61,Yes,Positive,No +USER-00352,32,Female,11.85,5.8,0.56,2.63,Poor,Medium,6.55,2.93,Yes,Neutral,Yes +USER-00353,28,Other,11.53,5.13,1.42,11.91,Fair,High,5.02,0.67,Yes,Negative,No +USER-00354,65,Male,3.81,0.26,0.39,3.28,Excellent,High,8.62,2.83,No,Neutral,No +USER-00355,20,Male,6.27,4.99,2.23,9.03,Poor,High,7.87,5.34,Yes,Negative,No +USER-00356,24,Other,3.12,6.83,3.32,10.11,Good,High,7.37,7.03,Yes,Positive,Yes +USER-00357,27,Male,3.38,0.04,0.39,7.47,Good,High,4.61,0.09,Yes,Negative,Yes +USER-00358,21,Other,7.71,7.41,2.56,6.69,Fair,High,4.2,2.56,Yes,Positive,Yes +USER-00359,41,Other,11.63,5.67,4.46,13.34,Fair,High,6.65,2.67,No,Positive,No +USER-00360,37,Male,1.17,4.36,3.3,11.77,Excellent,High,7.31,0.58,Yes,Negative,Yes +USER-00361,23,Other,8.64,2.12,0.89,14.2,Good,High,7.68,2.73,Yes,Positive,No +USER-00362,25,Other,1.26,0.21,4.83,6.41,Excellent,Low,4.74,4.35,Yes,Neutral,Yes +USER-00363,59,Other,3.29,5.77,3.89,8.26,Excellent,Low,8.45,6.85,Yes,Negative,Yes +USER-00364,45,Other,4.01,0.11,3.66,4.83,Fair,High,8.92,1.51,Yes,Negative,No +USER-00365,48,Female,7.86,1.98,4.54,12.82,Fair,High,5.36,1.36,Yes,Positive,No +USER-00366,32,Female,7.01,0.01,2.84,13.13,Good,Low,6.09,0.55,No,Positive,No +USER-00367,22,Female,9.75,3.47,1.85,6.53,Good,High,6.81,4.24,No,Neutral,Yes +USER-00368,36,Male,4.53,7.57,0.78,6.74,Fair,High,7.28,4.7,No,Positive,Yes +USER-00369,33,Female,6.29,3.69,0.26,2.37,Excellent,Medium,4.02,6.66,No,Negative,No +USER-00370,30,Female,11.79,3.54,4.76,6.88,Poor,High,5.73,3.4,Yes,Positive,No +USER-00371,62,Male,4.92,3.43,1.64,11.72,Good,Low,6.64,0.27,Yes,Positive,Yes +USER-00372,65,Male,4.34,1.95,1.24,5.32,Fair,Medium,5.95,0.96,Yes,Neutral,No +USER-00373,57,Female,10.64,6.12,3.07,11.69,Excellent,Low,8.71,9.25,Yes,Neutral,Yes +USER-00374,64,Male,6.73,3.03,2.5,2.28,Poor,High,8.81,4.66,No,Neutral,Yes +USER-00375,32,Female,5.41,7.93,0.48,2.25,Fair,Low,8.3,8.24,Yes,Neutral,Yes +USER-00376,34,Other,8.08,3.5,0.77,6.67,Fair,Low,5.77,0.61,No,Negative,Yes +USER-00377,59,Male,3.05,2.17,0.53,7.71,Poor,High,5.99,1.51,No,Negative,Yes +USER-00378,54,Male,8.06,7.43,4.05,5.53,Fair,Medium,7.38,1.78,Yes,Negative,No +USER-00379,50,Male,9.45,4.37,3.43,4.35,Good,Low,4.03,2.32,Yes,Positive,No +USER-00380,22,Other,10.27,3.89,4.72,6.18,Good,High,5.41,4.94,Yes,Neutral,Yes +USER-00381,21,Male,3.94,5.14,2.49,14.18,Poor,Low,7.91,4.3,No,Neutral,No +USER-00382,34,Male,3.1,1.29,2.67,1.61,Fair,Medium,8.8,9.01,Yes,Neutral,Yes +USER-00383,30,Other,8.05,1.18,4.13,12.27,Poor,Low,8.31,6.57,No,Neutral,Yes +USER-00384,60,Male,9.71,3.66,3.0,10.61,Poor,Low,6.3,5.18,Yes,Negative,Yes +USER-00385,54,Female,7.2,7.48,1.35,6.78,Excellent,Medium,4.09,0.68,Yes,Positive,No +USER-00386,48,Other,5.91,7.83,4.72,2.52,Poor,Low,4.27,3.08,No,Neutral,Yes +USER-00387,43,Male,1.01,0.23,2.57,1.45,Poor,Medium,8.47,8.23,Yes,Negative,No +USER-00388,49,Female,2.48,4.19,0.88,8.6,Excellent,Medium,5.3,6.5,No,Neutral,Yes +USER-00389,55,Male,3.4,7.19,1.78,7.01,Good,Medium,5.66,3.63,Yes,Neutral,No +USER-00390,53,Other,3.91,1.24,2.56,1.41,Excellent,High,5.62,0.94,Yes,Neutral,No +USER-00391,54,Male,6.17,4.33,2.81,5.14,Fair,High,5.48,2.18,Yes,Negative,No +USER-00392,61,Female,5.97,6.59,3.62,8.09,Excellent,High,6.5,8.74,No,Positive,Yes +USER-00393,24,Female,2.3,1.33,3.21,5.23,Fair,Low,8.25,1.28,No,Neutral,Yes +USER-00394,49,Female,11.77,6.77,1.15,7.69,Good,High,5.86,3.83,No,Positive,Yes +USER-00395,30,Male,11.01,7.09,0.13,13.94,Fair,Low,6.98,8.75,Yes,Negative,No +USER-00396,28,Male,7.48,2.84,0.18,6.13,Excellent,Medium,8.23,4.05,No,Positive,No +USER-00397,32,Female,2.98,7.8,3.76,11.85,Fair,Medium,6.02,1.15,No,Neutral,No +USER-00398,35,Female,1.34,4.4,4.65,12.29,Excellent,Medium,8.33,7.02,Yes,Neutral,Yes +USER-00399,25,Other,11.02,3.13,3.9,10.22,Excellent,High,5.7,8.95,Yes,Neutral,No +USER-00400,64,Other,11.14,6.65,4.64,10.67,Excellent,High,5.53,4.44,Yes,Positive,Yes +USER-00401,60,Male,10.1,3.25,1.25,10.47,Poor,High,6.21,4.28,No,Negative,No +USER-00402,34,Female,11.81,6.0,1.96,12.36,Good,High,5.53,7.44,No,Neutral,No +USER-00403,54,Male,2.83,1.56,0.01,6.92,Excellent,Low,5.36,4.8,No,Neutral,No +USER-00404,19,Male,10.63,3.3,0.08,6.74,Good,Medium,6.12,9.36,No,Neutral,Yes +USER-00405,45,Male,7.76,2.66,4.21,9.37,Poor,Low,4.68,4.33,No,Negative,Yes +USER-00406,46,Female,3.64,6.18,5.0,14.66,Excellent,High,7.65,0.73,No,Positive,No +USER-00407,39,Male,5.47,5.52,3.81,1.14,Fair,High,8.94,7.97,Yes,Negative,No +USER-00408,39,Male,11.92,1.87,0.87,9.82,Poor,Low,7.64,7.2,Yes,Neutral,No +USER-00409,46,Male,3.56,0.43,0.32,7.48,Poor,High,6.2,2.68,No,Positive,Yes +USER-00410,47,Male,8.95,4.38,0.15,14.29,Fair,Medium,5.39,4.94,No,Positive,No +USER-00411,50,Male,1.11,6.67,3.68,1.2,Good,Low,4.61,8.16,No,Positive,Yes +USER-00412,40,Female,9.51,6.48,3.97,5.35,Good,Low,7.55,4.03,No,Negative,No +USER-00413,38,Other,6.01,4.55,4.53,3.8,Poor,Medium,8.88,1.71,No,Negative,Yes +USER-00414,30,Other,1.41,1.86,2.39,11.83,Good,Low,5.26,2.42,No,Neutral,Yes +USER-00415,53,Female,5.22,4.2,3.9,11.14,Poor,Low,8.55,6.99,Yes,Neutral,Yes +USER-00416,44,Female,7.71,0.86,3.88,12.9,Good,Medium,5.47,2.49,Yes,Positive,No +USER-00417,29,Other,5.81,7.2,0.0,4.77,Excellent,Medium,8.69,2.36,No,Positive,No +USER-00418,54,Male,11.52,1.25,2.59,6.47,Good,Medium,8.81,9.88,No,Positive,No +USER-00419,24,Female,5.89,2.5,3.12,4.37,Good,High,7.05,9.07,Yes,Positive,Yes +USER-00420,22,Female,6.5,4.67,2.33,1.78,Good,Low,5.29,0.11,No,Negative,No +USER-00421,28,Other,4.69,6.8,2.82,8.46,Fair,Medium,5.25,2.96,No,Neutral,Yes +USER-00422,47,Female,2.99,0.38,4.71,2.06,Good,Low,6.49,2.31,Yes,Positive,No +USER-00423,54,Female,1.19,6.0,1.88,13.31,Fair,Low,4.91,0.74,Yes,Negative,No +USER-00424,45,Male,5.83,5.35,2.63,6.62,Good,Low,4.89,0.77,No,Positive,Yes +USER-00425,57,Other,3.06,0.62,3.8,5.44,Good,Low,7.9,2.6,No,Neutral,No +USER-00426,63,Female,1.16,0.96,1.31,10.45,Fair,Medium,7.79,5.0,Yes,Positive,Yes +USER-00427,54,Other,7.69,3.38,3.85,1.01,Fair,Medium,8.36,4.02,No,Positive,Yes +USER-00428,51,Female,4.54,3.42,4.93,3.55,Excellent,Medium,8.28,5.61,Yes,Negative,Yes +USER-00429,30,Other,10.01,3.95,1.25,2.62,Good,Low,5.38,7.45,No,Negative,Yes +USER-00430,54,Female,1.44,6.62,2.49,6.87,Poor,Low,5.02,8.34,Yes,Negative,No +USER-00431,31,Female,9.99,4.48,3.15,7.24,Good,Low,8.12,1.4,No,Neutral,Yes +USER-00432,60,Female,5.32,1.2,4.84,9.74,Fair,Low,8.75,7.42,Yes,Negative,No +USER-00433,64,Other,8.44,7.62,1.57,13.08,Excellent,Medium,5.15,2.18,Yes,Negative,No +USER-00434,22,Other,2.21,2.19,4.19,10.49,Fair,High,6.23,6.67,No,Neutral,No +USER-00435,63,Other,8.67,3.25,2.16,8.21,Fair,Low,6.3,6.16,Yes,Neutral,Yes +USER-00436,41,Male,7.07,2.31,2.41,5.94,Excellent,Low,6.33,0.78,No,Neutral,Yes +USER-00437,48,Female,7.13,1.43,1.96,14.09,Poor,High,6.23,4.14,No,Neutral,No +USER-00438,56,Male,4.99,3.64,2.78,6.73,Poor,High,8.68,9.76,No,Neutral,No +USER-00439,49,Female,5.17,7.7,1.49,4.85,Excellent,Low,4.63,4.47,Yes,Negative,No +USER-00440,60,Other,7.33,3.74,1.38,3.63,Poor,Medium,4.16,2.35,No,Positive,Yes +USER-00441,21,Other,11.77,2.57,4.28,10.97,Fair,Medium,6.64,3.57,No,Neutral,No +USER-00442,27,Male,9.86,6.67,1.98,14.64,Excellent,Medium,5.11,9.39,No,Positive,No +USER-00443,58,Female,6.78,2.66,2.12,10.43,Good,Medium,7.15,1.92,Yes,Negative,No +USER-00444,63,Other,1.7,0.13,0.75,8.75,Excellent,High,6.37,8.31,Yes,Negative,Yes +USER-00445,32,Other,4.81,0.52,2.72,11.5,Excellent,Low,4.84,8.37,No,Neutral,Yes +USER-00446,21,Female,7.84,3.71,3.47,3.06,Good,Low,5.37,2.82,Yes,Negative,Yes +USER-00447,47,Other,9.93,0.34,2.56,14.61,Excellent,High,7.38,4.9,Yes,Positive,No +USER-00448,43,Other,8.43,5.01,0.56,6.99,Fair,Medium,7.76,8.11,Yes,Negative,No +USER-00449,62,Other,6.77,7.81,1.06,6.48,Good,High,7.21,8.09,Yes,Neutral,No +USER-00450,33,Male,3.89,6.66,4.55,7.25,Poor,High,6.52,4.78,No,Neutral,Yes +USER-00451,26,Female,10.09,7.21,3.56,13.17,Good,Medium,6.52,6.21,Yes,Neutral,Yes +USER-00452,37,Other,4.98,2.92,0.26,4.61,Fair,Medium,6.02,2.38,No,Neutral,Yes +USER-00453,62,Male,4.56,3.05,3.67,14.06,Fair,Medium,8.51,8.16,No,Positive,No +USER-00454,36,Female,7.05,1.72,2.03,13.04,Poor,High,5.03,0.13,No,Positive,No +USER-00455,54,Male,2.36,4.13,2.78,7.27,Poor,Medium,8.77,6.12,No,Negative,No +USER-00456,65,Male,7.52,6.43,1.76,5.6,Poor,Medium,6.08,9.45,Yes,Positive,Yes +USER-00457,22,Other,4.66,1.26,4.37,13.71,Good,Medium,6.38,2.58,Yes,Negative,Yes +USER-00458,22,Female,7.24,2.92,1.34,3.11,Poor,Medium,5.79,1.8,No,Positive,No +USER-00459,41,Other,8.77,4.64,4.64,9.89,Fair,Low,6.56,5.01,No,Neutral,No +USER-00460,65,Female,11.72,6.26,4.61,14.62,Fair,Low,8.28,3.98,No,Positive,No +USER-00461,40,Female,1.01,1.04,4.81,6.31,Poor,Low,5.94,2.26,Yes,Negative,No +USER-00462,60,Other,3.47,7.5,1.13,9.05,Poor,Medium,4.56,2.8,Yes,Negative,Yes +USER-00463,32,Other,4.91,4.31,0.91,14.55,Excellent,High,5.65,4.14,No,Negative,Yes +USER-00464,24,Other,2.8,3.32,1.82,11.58,Fair,Medium,5.68,9.1,No,Positive,No +USER-00465,41,Male,5.14,0.81,4.47,3.18,Poor,Medium,7.85,0.13,No,Neutral,No +USER-00466,40,Female,10.98,0.41,2.79,4.6,Poor,High,7.15,2.73,Yes,Neutral,No +USER-00467,34,Female,5.73,6.9,2.57,14.77,Excellent,Low,4.45,9.78,Yes,Positive,No +USER-00468,61,Female,9.34,3.79,3.69,5.47,Excellent,Low,5.27,2.63,Yes,Neutral,No +USER-00469,23,Male,7.55,2.91,2.43,4.93,Poor,Low,5.61,1.34,Yes,Positive,Yes +USER-00470,36,Female,11.87,2.47,3.22,8.7,Good,Medium,5.37,7.97,No,Neutral,No +USER-00471,58,Other,9.22,0.81,2.07,13.51,Poor,Medium,8.27,1.67,No,Negative,Yes +USER-00472,36,Other,3.74,6.59,4.56,7.51,Good,Low,4.65,2.69,No,Negative,Yes +USER-00473,47,Male,4.08,1.9,0.78,8.3,Poor,Low,8.59,1.93,No,Negative,No +USER-00474,51,Female,10.59,7.6,0.0,9.18,Poor,Low,5.03,5.44,Yes,Neutral,No +USER-00475,60,Male,4.56,6.41,0.81,1.04,Good,High,7.94,1.94,No,Negative,No +USER-00476,42,Female,8.99,3.79,2.39,3.46,Fair,High,5.16,5.57,Yes,Positive,Yes +USER-00477,49,Other,3.58,3.72,2.02,14.5,Excellent,Medium,7.19,9.59,Yes,Positive,Yes +USER-00478,50,Female,7.59,0.53,4.81,13.12,Good,High,5.77,6.77,Yes,Negative,Yes +USER-00479,31,Other,7.47,7.44,0.71,3.07,Good,High,7.96,8.03,Yes,Positive,No +USER-00480,25,Other,8.35,4.56,1.02,10.42,Poor,Medium,6.47,9.83,Yes,Positive,No +USER-00481,33,Other,10.91,6.72,2.16,3.73,Good,Low,4.56,6.67,No,Positive,Yes +USER-00482,54,Other,2.19,4.28,3.15,6.58,Poor,Medium,4.31,9.58,No,Positive,Yes +USER-00483,26,Other,10.98,5.39,1.66,2.12,Good,High,4.18,4.01,No,Positive,Yes +USER-00484,20,Male,4.98,5.31,2.46,14.94,Poor,Low,4.94,1.31,No,Neutral,No +USER-00485,21,Male,11.84,5.01,4.8,8.42,Good,High,5.91,3.16,No,Negative,No +USER-00486,36,Other,5.81,5.12,3.86,13.85,Excellent,High,5.0,4.0,No,Positive,No +USER-00487,30,Other,1.67,1.4,3.21,10.81,Poor,High,7.82,5.84,Yes,Neutral,No +USER-00488,56,Male,6.39,1.49,2.97,11.84,Fair,Low,4.05,8.23,No,Positive,No +USER-00489,56,Female,1.14,3.74,4.08,8.88,Good,Low,8.0,5.09,No,Positive,No +USER-00490,62,Other,6.49,4.29,1.16,2.96,Fair,High,5.73,2.9,No,Neutral,Yes +USER-00491,50,Male,5.73,1.31,3.8,7.91,Good,High,8.28,9.35,Yes,Positive,Yes +USER-00492,60,Female,10.92,6.72,4.72,7.93,Poor,Medium,5.46,4.81,Yes,Negative,No +USER-00493,38,Other,5.62,2.26,0.15,3.32,Poor,Low,4.88,5.6,Yes,Negative,No +USER-00494,57,Other,7.81,2.9,3.12,3.72,Poor,Low,4.55,0.94,No,Neutral,No +USER-00495,62,Male,2.82,0.11,0.09,7.87,Good,Medium,4.03,0.41,Yes,Positive,Yes +USER-00496,43,Other,4.6,7.35,2.73,12.63,Fair,High,4.21,9.86,Yes,Neutral,No +USER-00497,36,Female,9.05,3.5,4.98,9.17,Poor,High,4.36,7.31,Yes,Negative,No +USER-00498,61,Male,3.67,7.71,0.15,5.89,Poor,High,5.03,5.05,No,Negative,Yes +USER-00499,51,Female,8.06,2.73,2.83,14.15,Good,Low,5.7,5.46,No,Positive,Yes +USER-00500,62,Male,5.83,6.49,3.67,6.13,Fair,High,6.81,1.62,Yes,Positive,Yes +USER-00501,43,Male,4.22,5.39,1.78,7.0,Excellent,Low,4.95,5.26,No,Neutral,Yes +USER-00502,39,Other,9.29,0.53,1.39,3.81,Fair,High,7.95,4.42,No,Positive,Yes +USER-00503,59,Male,5.95,0.28,3.87,6.05,Fair,Medium,8.91,4.06,No,Positive,Yes +USER-00504,42,Other,4.59,2.22,2.89,2.36,Good,Low,7.78,5.93,No,Negative,Yes +USER-00505,21,Female,1.56,5.29,0.64,13.59,Good,Low,6.73,9.87,No,Positive,Yes +USER-00506,42,Female,10.22,2.18,4.45,14.41,Good,Medium,8.37,6.46,No,Negative,Yes +USER-00507,37,Other,5.16,4.35,4.28,1.08,Fair,Medium,6.78,6.32,Yes,Negative,Yes +USER-00508,33,Other,3.33,0.09,0.74,2.54,Poor,Medium,8.26,2.48,Yes,Neutral,Yes +USER-00509,30,Male,4.83,0.02,2.34,10.55,Good,Medium,7.17,5.34,Yes,Neutral,No +USER-00510,45,Female,3.74,7.82,3.82,14.34,Poor,Low,6.15,5.96,Yes,Neutral,Yes +USER-00511,21,Other,8.4,7.44,2.75,1.24,Good,Low,5.49,2.12,Yes,Positive,Yes +USER-00512,59,Female,6.77,6.36,0.55,11.17,Good,Low,6.39,3.25,No,Positive,No +USER-00513,53,Female,6.58,0.58,1.2,13.79,Excellent,Low,6.22,4.89,Yes,Neutral,No +USER-00514,23,Female,10.63,7.46,1.95,2.78,Excellent,Low,4.31,5.95,Yes,Negative,No +USER-00515,47,Male,8.16,4.84,3.87,1.18,Poor,Medium,4.87,3.78,Yes,Positive,No +USER-00516,64,Female,10.7,4.55,0.4,4.46,Excellent,Low,7.42,3.73,No,Negative,No +USER-00517,19,Other,7.91,2.28,4.45,3.68,Excellent,High,7.65,4.94,Yes,Positive,Yes +USER-00518,22,Male,6.09,1.67,0.84,3.06,Excellent,Low,8.36,3.96,No,Negative,No +USER-00519,53,Female,5.94,4.53,1.59,3.99,Good,Low,6.48,7.24,Yes,Negative,No +USER-00520,38,Other,11.65,1.02,0.71,4.41,Fair,High,5.66,9.81,Yes,Neutral,No +USER-00521,39,Male,2.16,5.25,4.51,4.98,Excellent,Low,6.2,5.46,Yes,Negative,No +USER-00522,33,Male,5.51,2.62,1.29,1.27,Poor,High,5.27,4.1,Yes,Positive,No +USER-00523,60,Male,10.55,4.59,2.0,8.18,Good,Low,5.05,5.42,No,Neutral,No +USER-00524,37,Male,8.46,5.13,0.51,8.68,Good,Medium,7.24,4.43,No,Neutral,No +USER-00525,22,Female,6.2,2.71,0.29,9.77,Excellent,Low,8.25,0.76,No,Positive,Yes +USER-00526,62,Male,11.69,2.16,0.43,2.74,Fair,Medium,7.36,9.87,Yes,Neutral,Yes +USER-00527,34,Female,8.89,6.03,1.08,13.56,Good,Medium,8.43,9.74,No,Positive,Yes +USER-00528,51,Female,4.39,7.56,3.71,3.41,Good,High,8.83,8.82,No,Negative,Yes +USER-00529,45,Female,3.47,2.52,4.35,6.32,Fair,Medium,6.41,0.94,No,Negative,No +USER-00530,55,Female,10.75,0.26,1.92,1.13,Excellent,Medium,5.68,2.51,Yes,Negative,Yes +USER-00531,38,Other,1.71,1.65,2.63,13.51,Fair,High,4.4,8.2,Yes,Negative,Yes +USER-00532,41,Male,11.41,4.8,3.16,3.87,Excellent,High,5.21,5.68,No,Neutral,Yes +USER-00533,55,Other,5.27,4.72,2.37,6.07,Good,Low,8.39,1.63,No,Positive,No +USER-00534,40,Other,8.72,2.51,3.84,11.06,Excellent,High,7.56,6.13,Yes,Negative,No +USER-00535,48,Female,9.12,1.74,3.57,6.22,Fair,Low,4.21,4.73,No,Positive,No +USER-00536,19,Female,3.87,1.43,0.02,14.0,Good,Low,6.33,5.62,No,Neutral,No +USER-00537,52,Male,9.62,0.89,3.45,5.18,Excellent,Low,4.12,5.23,No,Positive,Yes +USER-00538,27,Other,8.18,3.14,2.0,8.72,Excellent,Medium,6.2,2.75,Yes,Negative,Yes +USER-00539,24,Other,9.22,4.92,2.42,1.48,Fair,Medium,5.66,1.13,No,Neutral,Yes +USER-00540,61,Other,10.49,6.72,0.06,12.36,Good,Low,6.92,0.18,No,Positive,No +USER-00541,23,Male,6.09,4.58,3.38,3.78,Excellent,Low,4.73,1.65,No,Neutral,No +USER-00542,30,Male,11.79,4.64,0.43,14.66,Excellent,Medium,6.02,6.36,No,Negative,Yes +USER-00543,41,Male,2.55,1.28,2.07,5.79,Poor,Medium,7.26,1.08,No,Positive,Yes +USER-00544,37,Male,1.04,0.65,2.33,14.32,Good,Low,7.67,1.18,No,Positive,No +USER-00545,23,Other,11.77,3.48,0.35,7.5,Fair,Low,5.66,1.98,Yes,Negative,Yes +USER-00546,34,Female,10.58,1.0,3.17,11.75,Fair,Low,5.33,5.32,No,Neutral,No +USER-00547,35,Female,4.21,3.71,1.24,9.05,Fair,High,8.38,9.12,No,Positive,No +USER-00548,28,Female,5.96,1.7,4.74,6.89,Excellent,Low,6.84,8.55,No,Neutral,No +USER-00549,39,Other,10.93,5.15,3.97,2.14,Good,Medium,6.43,3.77,No,Positive,Yes +USER-00550,39,Other,5.23,0.92,3.64,11.5,Poor,Medium,4.42,2.32,No,Neutral,No +USER-00551,24,Female,10.56,1.64,3.62,12.55,Excellent,Low,4.17,5.61,Yes,Negative,Yes +USER-00552,42,Other,8.37,2.1,2.07,7.3,Poor,High,8.25,5.54,Yes,Positive,No +USER-00553,61,Male,8.93,6.77,4.51,3.1,Excellent,Low,7.59,1.8,No,Positive,No +USER-00554,29,Male,9.1,2.24,3.33,7.8,Fair,Low,4.88,4.63,No,Neutral,Yes +USER-00555,40,Male,3.71,6.14,3.63,4.61,Good,High,8.51,4.97,Yes,Positive,No +USER-00556,31,Female,4.94,0.77,0.56,1.03,Good,Low,8.47,2.81,No,Neutral,No +USER-00557,58,Other,9.05,5.17,2.25,8.23,Good,High,4.12,3.26,Yes,Neutral,Yes +USER-00558,47,Male,4.05,3.85,1.85,12.52,Poor,High,5.85,0.09,Yes,Negative,No +USER-00559,31,Other,11.7,7.37,3.01,11.81,Good,Low,4.46,5.79,Yes,Positive,Yes +USER-00560,28,Male,4.75,0.99,0.19,9.8,Poor,High,5.01,5.81,Yes,Neutral,No +USER-00561,55,Other,6.48,6.55,0.88,7.06,Fair,Low,4.49,4.15,No,Positive,No +USER-00562,24,Female,5.33,7.44,3.29,7.95,Good,Low,5.97,4.21,No,Positive,Yes +USER-00563,19,Female,2.73,1.61,1.8,14.85,Good,Low,4.11,0.43,Yes,Neutral,No +USER-00564,65,Male,3.23,7.03,0.87,14.41,Fair,Medium,6.13,8.98,Yes,Positive,No +USER-00565,43,Female,9.67,0.57,3.94,11.5,Fair,Medium,7.06,5.29,Yes,Negative,Yes +USER-00566,44,Male,9.91,2.95,2.77,13.57,Good,Low,4.04,6.36,Yes,Positive,Yes +USER-00567,56,Male,8.82,2.12,0.5,14.67,Fair,High,8.89,6.09,No,Neutral,No +USER-00568,46,Female,1.45,7.82,0.58,1.49,Excellent,Low,4.24,2.08,No,Positive,Yes +USER-00569,62,Female,3.51,5.68,1.53,3.11,Good,Low,7.5,3.34,No,Positive,Yes +USER-00570,34,Female,1.52,3.52,0.15,14.41,Fair,Medium,6.67,9.14,Yes,Positive,No +USER-00571,38,Female,3.46,0.03,2.79,14.45,Poor,Medium,5.15,4.05,Yes,Positive,No +USER-00572,38,Male,6.25,6.56,1.73,3.99,Excellent,Medium,8.15,8.23,Yes,Positive,Yes +USER-00573,53,Other,6.22,1.62,1.74,13.72,Fair,High,6.56,0.98,Yes,Positive,Yes +USER-00574,40,Other,1.73,7.66,3.61,7.48,Poor,Low,8.02,6.96,No,Positive,No +USER-00575,30,Female,10.27,0.34,0.4,7.9,Fair,High,6.87,0.07,Yes,Positive,Yes +USER-00576,56,Male,8.3,6.33,2.71,9.28,Good,Low,4.15,1.27,Yes,Negative,Yes +USER-00577,32,Other,11.35,0.46,0.41,12.55,Fair,High,5.81,4.87,Yes,Positive,Yes +USER-00578,38,Other,9.52,7.38,4.35,5.97,Excellent,High,7.4,3.37,No,Negative,No +USER-00579,50,Female,5.54,5.44,2.51,14.9,Good,Low,4.32,4.89,No,Neutral,No +USER-00580,38,Female,11.04,0.15,1.74,12.86,Poor,Medium,7.79,8.08,No,Positive,Yes +USER-00581,20,Other,1.8,2.6,0.16,3.69,Excellent,High,7.6,0.36,Yes,Positive,No +USER-00582,20,Male,10.52,5.7,0.05,1.38,Good,Low,8.36,5.47,Yes,Negative,Yes +USER-00583,33,Male,7.44,7.42,4.41,2.12,Poor,Low,5.77,1.86,Yes,Negative,No +USER-00584,51,Male,6.38,6.28,3.13,14.78,Good,Low,8.09,1.51,No,Neutral,Yes +USER-00585,26,Male,5.45,1.12,1.66,6.42,Fair,Low,8.99,1.28,Yes,Negative,Yes +USER-00586,36,Male,11.14,6.34,1.37,6.22,Excellent,High,7.73,9.66,No,Negative,Yes +USER-00587,57,Female,4.91,0.94,3.09,14.75,Good,High,6.82,6.47,No,Positive,Yes +USER-00588,19,Female,4.15,0.89,2.81,14.79,Excellent,Low,4.81,9.58,Yes,Positive,Yes +USER-00589,46,Other,4.1,3.67,2.23,9.79,Fair,Medium,7.4,2.81,No,Negative,Yes +USER-00590,32,Female,5.19,4.95,4.42,3.49,Fair,Medium,7.23,0.99,Yes,Negative,Yes +USER-00591,59,Female,5.84,4.87,2.3,3.01,Poor,Medium,8.39,2.82,No,Negative,No +USER-00592,57,Female,8.85,5.62,4.18,12.4,Good,High,6.38,6.39,No,Negative,No +USER-00593,38,Female,10.15,3.49,0.8,2.5,Excellent,Medium,5.67,5.2,No,Neutral,No +USER-00594,57,Female,1.06,5.37,1.4,6.69,Good,Low,7.8,5.76,Yes,Positive,No +USER-00595,23,Male,1.13,1.15,3.12,4.08,Good,High,5.33,8.93,Yes,Neutral,No +USER-00596,39,Other,10.21,1.64,1.23,13.01,Excellent,Low,4.27,8.99,No,Positive,No +USER-00597,45,Female,6.38,5.7,1.64,9.3,Fair,High,7.5,7.61,Yes,Positive,Yes +USER-00598,55,Other,7.73,7.22,4.02,1.65,Good,Medium,4.94,9.31,Yes,Negative,Yes +USER-00599,65,Female,7.76,6.66,4.37,13.9,Excellent,Low,4.89,0.05,No,Positive,Yes +USER-00600,43,Other,4.86,2.62,3.54,13.47,Good,High,4.47,6.06,Yes,Positive,No +USER-00601,20,Female,4.9,5.52,1.1,6.44,Good,Medium,8.28,2.67,Yes,Negative,No +USER-00602,37,Other,11.05,6.24,3.82,11.76,Poor,Medium,4.79,8.54,No,Positive,No +USER-00603,52,Other,6.88,7.95,3.74,10.85,Good,Medium,4.46,9.34,Yes,Positive,Yes +USER-00604,33,Female,5.79,1.81,0.99,12.85,Good,High,6.14,9.78,No,Negative,No +USER-00605,26,Female,7.75,5.6,0.1,1.6,Fair,Medium,8.16,6.43,No,Negative,No +USER-00606,51,Other,2.64,4.23,4.98,11.35,Poor,Low,8.43,4.78,Yes,Negative,Yes +USER-00607,35,Male,1.3,0.4,3.75,9.95,Fair,Low,5.61,1.46,No,Negative,Yes +USER-00608,42,Female,8.41,5.13,2.96,1.07,Poor,Medium,5.16,7.26,Yes,Positive,No +USER-00609,60,Male,11.98,0.21,3.99,11.84,Fair,High,8.24,6.88,No,Neutral,No +USER-00610,57,Male,4.73,3.81,1.36,14.11,Good,High,8.59,2.05,No,Neutral,No +USER-00611,32,Male,8.7,6.95,4.08,6.2,Good,Medium,5.2,6.14,No,Neutral,No +USER-00612,52,Male,7.87,1.29,4.44,5.81,Fair,Medium,7.34,6.62,Yes,Negative,Yes +USER-00613,36,Female,10.46,3.49,0.16,14.27,Poor,Low,7.64,4.97,Yes,Neutral,No +USER-00614,26,Female,1.18,5.6,0.3,11.49,Good,Medium,4.76,0.24,Yes,Neutral,No +USER-00615,65,Other,5.67,1.88,1.06,5.41,Excellent,High,8.1,0.54,No,Positive,Yes +USER-00616,31,Other,8.79,4.84,4.37,7.28,Good,Medium,8.11,3.25,Yes,Neutral,Yes +USER-00617,50,Other,8.24,5.62,1.89,9.84,Fair,Low,4.03,4.82,Yes,Neutral,No +USER-00618,62,Other,10.36,2.07,4.8,7.66,Poor,High,7.38,2.22,Yes,Negative,Yes +USER-00619,53,Male,1.99,2.93,3.26,11.47,Excellent,Low,4.29,7.7,No,Positive,Yes +USER-00620,28,Other,10.21,7.22,4.44,12.03,Poor,High,5.35,6.78,Yes,Neutral,Yes +USER-00621,33,Female,9.83,4.24,4.69,13.42,Excellent,Low,8.74,2.12,No,Positive,Yes +USER-00622,18,Other,7.7,4.04,2.29,8.92,Good,Low,6.51,5.82,No,Negative,Yes +USER-00623,23,Male,6.85,2.31,1.08,5.24,Excellent,Medium,8.89,5.0,Yes,Negative,Yes +USER-00624,40,Male,3.33,3.15,2.75,3.5,Good,High,4.38,3.95,No,Neutral,Yes +USER-00625,50,Male,1.66,6.21,2.14,2.35,Good,Medium,4.58,6.86,Yes,Positive,No +USER-00626,52,Other,3.75,0.86,1.09,11.37,Fair,High,8.42,4.02,Yes,Neutral,No +USER-00627,24,Male,2.82,6.63,1.19,8.51,Excellent,Medium,8.01,0.87,Yes,Negative,Yes +USER-00628,28,Other,9.59,4.68,1.17,2.45,Fair,High,8.06,0.01,Yes,Negative,Yes +USER-00629,59,Other,8.61,0.66,2.45,8.05,Fair,High,6.94,1.03,Yes,Negative,No +USER-00630,24,Other,5.7,5.63,1.38,8.54,Fair,High,7.85,7.04,No,Neutral,No +USER-00631,57,Other,10.44,2.7,1.17,11.1,Fair,High,5.53,1.27,No,Positive,No +USER-00632,29,Female,2.83,4.09,2.13,13.46,Good,Low,4.58,3.35,No,Negative,Yes +USER-00633,21,Male,5.58,7.05,3.61,7.24,Poor,Medium,5.27,1.27,No,Positive,Yes +USER-00634,32,Other,11.77,3.6,1.16,13.1,Excellent,Low,5.55,5.82,No,Neutral,No +USER-00635,20,Male,7.27,6.91,4.85,11.94,Excellent,Medium,5.68,5.13,No,Positive,No +USER-00636,65,Male,4.34,7.47,3.34,5.81,Fair,High,4.77,9.01,Yes,Neutral,Yes +USER-00637,49,Female,9.51,7.97,0.02,3.94,Fair,Medium,7.7,6.01,No,Positive,No +USER-00638,55,Male,11.95,5.16,4.83,5.7,Poor,Low,8.32,6.72,No,Neutral,No +USER-00639,56,Male,1.14,2.99,1.3,11.95,Good,Low,7.29,1.97,Yes,Neutral,No +USER-00640,42,Male,8.85,3.35,2.41,10.16,Excellent,High,6.54,6.45,No,Neutral,No +USER-00641,63,Female,11.1,3.97,4.18,10.73,Poor,Low,5.01,8.77,Yes,Negative,Yes +USER-00642,36,Female,2.63,7.24,3.41,11.05,Good,Medium,7.59,1.1,Yes,Negative,Yes +USER-00643,25,Other,9.35,3.26,3.3,13.61,Fair,Medium,5.09,8.9,No,Positive,No +USER-00644,25,Other,3.17,5.54,3.0,1.15,Poor,Medium,6.09,5.48,No,Positive,Yes +USER-00645,33,Female,1.32,5.92,0.79,12.28,Fair,High,5.0,1.57,Yes,Neutral,Yes +USER-00646,34,Other,10.18,5.85,4.04,5.84,Fair,Low,4.06,3.28,No,Neutral,Yes +USER-00647,58,Male,5.17,5.08,3.38,9.77,Good,High,5.87,7.99,No,Negative,No +USER-00648,54,Male,6.04,0.62,2.36,6.56,Excellent,Medium,5.28,8.36,No,Positive,No +USER-00649,45,Male,9.99,6.51,2.49,9.83,Poor,High,7.76,7.92,No,Positive,No +USER-00650,19,Male,3.55,3.78,4.36,7.05,Good,Low,5.09,0.24,Yes,Neutral,No +USER-00651,32,Female,5.72,0.28,3.59,14.45,Excellent,Medium,8.17,9.33,Yes,Positive,No +USER-00652,51,Other,2.54,2.1,2.76,2.52,Good,Low,7.52,3.23,Yes,Positive,No +USER-00653,19,Male,2.14,3.45,0.24,7.99,Good,High,7.51,1.98,No,Negative,Yes +USER-00654,40,Male,3.99,1.44,1.17,1.93,Excellent,High,8.06,4.84,Yes,Negative,No +USER-00655,41,Male,6.27,5.27,0.74,12.79,Excellent,Medium,4.0,8.05,No,Positive,Yes +USER-00656,60,Male,10.15,5.45,1.73,5.69,Excellent,Low,7.19,6.07,No,Positive,Yes +USER-00657,56,Male,5.83,6.67,4.11,7.07,Poor,High,5.84,5.18,No,Negative,No +USER-00658,58,Other,3.64,0.9,3.78,11.51,Poor,Medium,8.88,8.27,No,Neutral,No +USER-00659,42,Male,3.79,6.04,2.82,2.69,Excellent,High,6.96,7.53,No,Negative,Yes +USER-00660,60,Other,6.58,0.72,4.51,9.6,Excellent,High,4.2,9.84,Yes,Negative,Yes +USER-00661,41,Male,3.16,1.43,1.49,4.68,Fair,Low,7.98,7.64,Yes,Neutral,No +USER-00662,65,Female,7.94,1.09,0.4,5.46,Excellent,Medium,7.93,7.59,No,Neutral,Yes +USER-00663,52,Other,5.05,0.49,0.6,1.47,Excellent,High,4.15,9.05,Yes,Negative,No +USER-00664,22,Male,6.64,7.95,4.95,4.6,Poor,Low,5.5,4.73,No,Positive,No +USER-00665,43,Male,5.33,4.64,4.78,10.22,Good,High,6.49,5.2,Yes,Negative,Yes +USER-00666,59,Female,11.5,7.81,3.57,6.14,Excellent,Low,7.18,6.21,Yes,Negative,Yes +USER-00667,38,Male,7.57,7.22,2.17,4.05,Good,Medium,7.19,7.68,Yes,Positive,Yes +USER-00668,42,Other,7.02,6.97,4.63,12.2,Good,Low,6.59,4.31,No,Neutral,Yes +USER-00669,33,Female,5.48,2.07,2.66,9.51,Excellent,Medium,6.86,5.51,No,Neutral,Yes +USER-00670,62,Male,3.2,6.46,4.91,11.33,Excellent,High,7.95,1.11,No,Positive,No +USER-00671,18,Other,2.79,0.2,2.6,9.73,Excellent,Low,8.05,3.14,Yes,Negative,No +USER-00672,38,Other,6.8,0.69,2.55,4.74,Excellent,Low,6.92,5.22,Yes,Negative,No +USER-00673,61,Male,9.46,6.95,1.71,5.69,Excellent,Medium,7.49,3.68,Yes,Positive,Yes +USER-00674,22,Female,2.53,2.63,2.54,5.81,Fair,High,5.64,6.66,No,Positive,Yes +USER-00675,32,Female,4.0,4.02,1.47,4.82,Excellent,High,8.93,2.31,Yes,Neutral,Yes +USER-00676,31,Male,3.87,2.26,2.35,5.38,Poor,High,6.6,7.66,Yes,Negative,No +USER-00677,56,Other,10.07,2.1,3.93,6.04,Fair,Medium,7.49,8.36,No,Neutral,No +USER-00678,22,Other,2.55,3.9,1.09,10.1,Fair,Low,6.8,3.43,No,Neutral,No +USER-00679,55,Other,7.13,5.25,4.2,7.8,Fair,Low,8.19,3.49,No,Neutral,No +USER-00680,58,Female,7.56,6.37,4.54,8.59,Fair,Medium,8.62,2.23,Yes,Neutral,Yes +USER-00681,27,Female,3.74,6.15,4.11,5.07,Poor,High,5.47,5.57,No,Negative,No +USER-00682,53,Other,9.81,2.12,1.73,7.08,Good,Medium,4.41,4.55,Yes,Neutral,No +USER-00683,20,Male,9.06,6.89,1.99,4.89,Excellent,High,4.48,7.49,Yes,Neutral,Yes +USER-00684,28,Female,7.43,7.22,4.58,13.08,Good,Low,4.17,7.83,Yes,Neutral,No +USER-00685,34,Other,7.44,0.58,1.75,4.0,Poor,Low,8.02,10.0,Yes,Neutral,No +USER-00686,46,Female,1.25,3.56,0.66,13.87,Poor,Medium,6.53,4.17,Yes,Positive,Yes +USER-00687,34,Male,2.46,6.31,2.39,7.11,Good,High,5.84,2.5,Yes,Neutral,No +USER-00688,20,Female,10.14,6.83,3.54,10.43,Poor,High,4.18,3.78,Yes,Positive,Yes +USER-00689,41,Male,10.68,3.03,0.36,10.09,Excellent,Low,7.11,6.01,Yes,Negative,Yes +USER-00690,44,Male,2.8,1.66,4.03,11.06,Excellent,Medium,8.74,8.58,No,Positive,Yes +USER-00691,24,Male,8.01,0.16,1.99,8.01,Excellent,Medium,8.12,5.04,Yes,Neutral,No +USER-00692,57,Female,4.18,6.81,4.8,10.08,Poor,High,8.24,8.74,Yes,Neutral,No +USER-00693,21,Female,9.58,7.85,3.92,13.27,Fair,Medium,7.59,5.39,No,Positive,No +USER-00694,33,Female,6.69,6.15,4.67,12.38,Excellent,Low,5.47,9.32,No,Positive,Yes +USER-00695,54,Female,1.26,0.79,4.57,7.44,Good,High,6.22,6.24,No,Negative,No +USER-00696,45,Female,5.34,0.91,3.98,12.2,Poor,Low,4.51,5.87,Yes,Negative,Yes +USER-00697,36,Male,1.98,5.92,3.92,7.53,Fair,Medium,4.86,8.01,No,Positive,No +USER-00698,48,Female,8.74,4.0,4.75,1.96,Fair,Medium,4.42,7.04,Yes,Neutral,Yes +USER-00699,27,Male,5.78,2.84,4.27,9.55,Fair,High,8.82,0.96,No,Neutral,No +USER-00700,63,Other,6.64,4.76,4.38,1.5,Excellent,Medium,8.75,0.12,Yes,Negative,No +USER-00701,48,Male,10.22,1.28,1.07,5.37,Fair,Low,6.1,0.07,No,Positive,Yes +USER-00702,35,Other,6.08,3.38,3.17,11.08,Fair,High,6.58,7.29,Yes,Negative,No +USER-00703,23,Male,7.79,3.93,1.17,9.33,Fair,Medium,4.07,0.54,No,Negative,Yes +USER-00704,26,Other,8.58,2.16,3.17,10.62,Good,Medium,8.24,6.36,No,Negative,Yes +USER-00705,64,Female,2.73,1.56,2.07,11.86,Excellent,Low,7.88,6.61,No,Positive,No +USER-00706,37,Other,2.14,4.36,0.5,5.94,Poor,High,8.9,1.75,Yes,Neutral,Yes +USER-00707,33,Male,3.94,5.91,2.96,1.14,Fair,Medium,7.47,6.87,Yes,Negative,No +USER-00708,45,Male,7.44,3.66,4.34,6.59,Good,High,7.79,2.13,No,Neutral,Yes +USER-00709,40,Male,10.23,2.73,3.28,10.69,Fair,Low,4.32,8.17,Yes,Neutral,No +USER-00710,62,Male,9.2,7.74,2.09,6.37,Excellent,Medium,5.98,3.15,Yes,Negative,Yes +USER-00711,40,Male,6.73,1.42,0.19,2.43,Excellent,High,5.42,8.11,Yes,Neutral,Yes +USER-00712,61,Other,11.77,3.31,2.49,14.02,Fair,Low,5.79,8.89,No,Negative,No +USER-00713,51,Other,2.1,2.98,1.8,1.28,Fair,Medium,4.59,5.85,Yes,Neutral,No +USER-00714,36,Other,11.54,4.72,1.83,5.68,Excellent,Medium,7.81,1.92,Yes,Positive,Yes +USER-00715,22,Female,2.67,3.09,4.93,6.33,Poor,High,8.31,6.31,Yes,Neutral,No +USER-00716,55,Other,5.53,6.84,1.88,7.99,Fair,Medium,6.65,7.18,No,Negative,No +USER-00717,26,Male,3.61,4.96,3.44,3.0,Poor,Medium,6.13,9.23,No,Neutral,No +USER-00718,47,Other,7.75,1.68,4.02,2.98,Excellent,Low,7.73,6.47,Yes,Positive,No +USER-00719,52,Other,3.4,4.26,3.28,8.92,Fair,High,7.04,6.9,Yes,Positive,Yes +USER-00720,58,Female,5.37,5.02,0.93,1.98,Fair,Low,4.25,5.19,No,Negative,Yes +USER-00721,29,Other,9.79,3.72,3.35,11.49,Poor,Medium,5.73,8.21,Yes,Neutral,No +USER-00722,52,Male,5.28,5.52,0.2,4.65,Excellent,High,7.76,4.72,No,Neutral,Yes +USER-00723,20,Female,11.0,3.05,1.54,4.5,Good,Medium,7.46,3.08,Yes,Negative,No +USER-00724,64,Female,7.33,3.35,4.35,13.51,Fair,Medium,8.12,6.11,No,Neutral,No +USER-00725,53,Female,5.65,2.01,3.02,10.9,Excellent,High,4.38,7.98,No,Neutral,No +USER-00726,36,Male,11.65,0.38,0.32,14.05,Poor,Medium,6.91,7.25,Yes,Positive,No +USER-00727,50,Male,8.94,1.41,3.16,14.88,Fair,High,7.49,1.65,No,Negative,No +USER-00728,21,Female,1.06,7.48,0.14,13.29,Excellent,Low,6.51,3.77,Yes,Neutral,No +USER-00729,52,Other,10.59,1.27,2.41,11.05,Excellent,Low,7.1,8.3,Yes,Neutral,No +USER-00730,24,Female,4.07,2.56,0.31,5.32,Excellent,Medium,5.33,5.35,No,Neutral,Yes +USER-00731,29,Female,7.42,6.11,0.3,6.43,Excellent,Low,8.62,8.35,Yes,Negative,Yes +USER-00732,24,Other,11.38,5.92,0.25,4.41,Poor,Low,5.63,4.26,Yes,Positive,Yes +USER-00733,52,Male,6.39,7.81,3.6,6.14,Poor,Low,5.09,0.92,Yes,Positive,No +USER-00734,22,Female,2.95,2.27,0.87,7.76,Poor,Medium,8.34,3.03,Yes,Positive,Yes +USER-00735,28,Other,3.55,5.01,3.58,9.73,Fair,Low,4.78,9.71,Yes,Positive,Yes +USER-00736,59,Male,5.68,2.01,0.42,4.94,Excellent,Medium,6.04,9.89,Yes,Neutral,Yes +USER-00737,32,Male,4.09,3.24,3.51,13.67,Poor,Medium,8.13,7.47,Yes,Neutral,No +USER-00738,47,Other,5.07,7.04,2.15,14.58,Fair,Low,6.26,5.51,Yes,Negative,No +USER-00739,64,Female,4.01,5.71,0.21,4.85,Excellent,Medium,4.72,0.63,No,Negative,Yes +USER-00740,51,Female,1.36,3.2,1.9,10.58,Fair,High,4.02,0.86,Yes,Neutral,Yes +USER-00741,52,Male,7.56,4.75,2.3,9.48,Good,Low,7.68,2.04,No,Negative,Yes +USER-00742,24,Male,10.75,5.59,2.84,14.13,Poor,Medium,4.96,1.43,Yes,Neutral,Yes +USER-00743,43,Other,8.08,5.01,4.95,2.23,Fair,High,4.98,4.09,No,Negative,Yes +USER-00744,37,Male,11.39,1.57,1.56,8.27,Good,High,5.0,4.15,Yes,Neutral,No +USER-00745,58,Other,10.92,4.39,0.9,3.52,Fair,Medium,4.93,6.98,Yes,Positive,Yes +USER-00746,35,Other,11.31,0.47,2.53,4.02,Excellent,Low,8.35,9.43,Yes,Neutral,No +USER-00747,53,Female,8.3,7.99,1.32,10.21,Poor,High,4.26,3.53,Yes,Positive,No +USER-00748,38,Other,7.89,0.84,4.71,3.14,Excellent,Low,4.55,8.9,No,Neutral,Yes +USER-00749,48,Female,3.7,1.55,1.43,2.92,Good,Medium,5.23,2.6,Yes,Neutral,Yes +USER-00750,61,Male,5.77,6.15,0.98,9.02,Excellent,Medium,7.77,8.67,No,Positive,No +USER-00751,56,Female,11.9,7.41,0.38,9.77,Fair,High,7.48,0.27,No,Positive,Yes +USER-00752,21,Other,4.67,0.24,4.36,11.25,Poor,High,7.72,8.15,Yes,Neutral,No +USER-00753,45,Male,2.1,5.16,3.19,3.76,Excellent,Low,6.87,4.88,Yes,Negative,No +USER-00754,50,Male,5.77,6.18,0.22,10.3,Good,Low,6.73,4.66,Yes,Negative,Yes +USER-00755,53,Female,1.93,2.22,4.81,13.75,Excellent,Low,8.12,2.12,No,Negative,No +USER-00756,27,Male,5.78,6.51,4.93,8.47,Fair,High,8.34,7.04,Yes,Neutral,Yes +USER-00757,36,Female,2.23,5.0,1.68,13.88,Poor,Medium,6.72,5.6,No,Negative,No +USER-00758,57,Other,11.51,5.16,0.99,10.35,Excellent,Low,8.91,5.57,Yes,Negative,Yes +USER-00759,33,Male,3.93,2.69,2.52,5.15,Fair,Medium,7.81,7.58,No,Neutral,Yes +USER-00760,40,Female,11.41,4.29,2.42,5.42,Poor,Medium,6.38,9.84,Yes,Negative,Yes +USER-00761,53,Female,8.38,2.1,3.62,6.03,Poor,High,8.63,9.91,No,Neutral,Yes +USER-00762,26,Female,6.83,2.77,1.95,10.37,Excellent,Medium,6.78,9.94,Yes,Neutral,No +USER-00763,21,Female,11.24,7.22,4.91,7.72,Poor,Medium,5.48,1.67,Yes,Negative,Yes +USER-00764,29,Other,8.55,5.96,1.07,1.86,Fair,High,8.78,9.36,Yes,Positive,Yes +USER-00765,53,Female,10.33,2.74,0.45,3.46,Good,Medium,5.63,6.73,No,Positive,No +USER-00766,59,Male,1.08,0.52,2.99,13.71,Excellent,High,8.94,5.8,No,Negative,No +USER-00767,58,Other,5.64,2.09,3.38,4.13,Good,High,5.14,0.02,Yes,Positive,Yes +USER-00768,35,Other,8.11,1.53,0.06,13.86,Good,Medium,6.14,3.57,No,Negative,Yes +USER-00769,60,Other,8.23,7.33,0.84,3.1,Excellent,Medium,7.63,1.98,No,Negative,Yes +USER-00770,43,Female,11.9,4.26,3.81,7.78,Poor,Low,5.99,2.13,Yes,Negative,Yes +USER-00771,53,Female,3.5,5.89,2.93,6.16,Good,High,6.01,1.81,No,Negative,No +USER-00772,44,Male,3.33,5.31,2.01,8.84,Poor,High,5.01,6.35,Yes,Neutral,No +USER-00773,26,Female,9.62,0.72,4.79,6.69,Good,High,6.28,0.11,No,Positive,Yes +USER-00774,26,Female,4.35,5.39,2.35,9.92,Poor,High,8.7,5.96,Yes,Neutral,Yes +USER-00775,64,Female,3.18,6.85,3.52,7.22,Good,High,8.46,8.01,No,Neutral,Yes +USER-00776,61,Male,2.66,7.23,3.73,8.29,Good,Medium,4.75,5.77,Yes,Negative,No +USER-00777,65,Other,1.76,3.43,1.48,4.17,Excellent,High,6.74,8.29,No,Positive,No +USER-00778,49,Female,3.22,3.1,0.49,13.35,Excellent,High,4.82,1.81,No,Positive,Yes +USER-00779,30,Female,9.91,4.49,1.13,11.07,Excellent,Low,7.79,4.94,Yes,Positive,Yes +USER-00780,43,Other,8.56,7.27,2.59,1.92,Excellent,Low,5.12,6.5,No,Positive,Yes +USER-00781,49,Female,6.58,3.53,4.58,5.09,Poor,High,6.42,9.78,No,Positive,Yes +USER-00782,60,Male,4.64,3.9,1.96,9.77,Poor,Medium,8.84,3.07,Yes,Positive,No +USER-00783,25,Other,7.59,1.75,4.96,9.55,Fair,High,5.47,8.0,No,Negative,No +USER-00784,47,Female,5.0,2.95,1.02,3.22,Fair,Medium,5.93,6.75,No,Positive,Yes +USER-00785,33,Other,4.23,3.56,1.57,8.01,Excellent,High,6.41,9.56,Yes,Neutral,Yes +USER-00786,41,Male,5.83,6.38,0.06,7.44,Excellent,Low,6.89,1.54,No,Negative,No +USER-00787,54,Female,7.64,6.26,0.25,6.68,Poor,Medium,7.88,9.26,No,Negative,No +USER-00788,61,Female,5.5,7.78,4.06,14.09,Poor,Low,5.73,0.67,Yes,Neutral,No +USER-00789,65,Female,8.62,5.56,4.39,8.97,Poor,Low,4.36,2.46,Yes,Positive,No +USER-00790,49,Female,3.12,0.47,4.75,3.59,Excellent,High,5.88,4.22,Yes,Positive,No +USER-00791,62,Male,6.9,7.15,1.14,8.26,Fair,Medium,7.87,8.59,No,Negative,No +USER-00792,28,Other,1.38,3.8,1.18,9.26,Good,Medium,4.22,0.73,No,Negative,No +USER-00793,55,Other,5.22,3.69,1.18,8.69,Poor,Medium,7.72,4.06,No,Negative,Yes +USER-00794,21,Other,9.25,5.44,4.58,1.55,Poor,High,4.45,6.21,No,Neutral,No +USER-00795,32,Other,3.75,6.34,4.39,5.57,Good,Low,5.6,2.21,No,Negative,No +USER-00796,55,Female,5.26,6.54,4.71,4.84,Good,Low,6.09,8.85,Yes,Negative,Yes +USER-00797,47,Other,3.07,3.01,0.98,11.91,Excellent,High,6.65,7.06,No,Positive,Yes +USER-00798,41,Other,5.24,7.95,2.44,7.85,Excellent,High,4.01,7.02,No,Negative,Yes +USER-00799,53,Other,5.58,0.59,2.81,14.95,Poor,High,5.99,4.99,No,Positive,No +USER-00800,61,Female,11.21,6.57,2.59,8.72,Good,Medium,4.98,5.85,Yes,Positive,No +USER-00801,39,Male,4.94,0.15,0.54,10.8,Poor,High,8.72,1.74,No,Negative,Yes +USER-00802,20,Male,8.9,5.99,3.3,10.44,Good,High,7.1,9.05,No,Neutral,Yes +USER-00803,19,Female,11.4,2.65,4.85,3.4,Excellent,Medium,4.56,3.31,No,Positive,No +USER-00804,22,Female,1.69,1.37,4.45,4.81,Excellent,Medium,4.87,5.31,Yes,Neutral,No +USER-00805,48,Male,8.04,4.41,2.31,13.21,Fair,Low,5.91,2.32,Yes,Positive,Yes +USER-00806,54,Other,2.82,2.92,2.72,8.94,Excellent,High,7.14,7.76,Yes,Negative,Yes +USER-00807,53,Other,9.04,7.0,4.69,3.33,Poor,Low,7.99,4.72,No,Neutral,No +USER-00808,43,Other,11.01,5.54,4.3,5.73,Fair,Medium,5.68,9.92,No,Neutral,No +USER-00809,52,Other,8.71,6.82,4.65,6.12,Fair,Low,4.56,1.22,Yes,Positive,Yes +USER-00810,47,Male,11.27,5.87,2.67,10.54,Fair,High,6.61,4.86,Yes,Neutral,Yes +USER-00811,57,Male,5.59,3.52,1.36,1.15,Poor,Low,4.58,7.92,Yes,Negative,Yes +USER-00812,45,Other,8.75,7.58,2.93,11.36,Poor,Low,4.82,1.96,No,Neutral,Yes +USER-00813,64,Male,9.06,6.69,2.02,1.54,Poor,High,8.18,8.73,No,Negative,Yes +USER-00814,57,Other,6.24,4.37,4.74,11.46,Poor,High,6.53,7.09,Yes,Negative,Yes +USER-00815,18,Female,2.88,0.23,1.43,4.52,Excellent,Low,7.67,7.25,No,Positive,Yes +USER-00816,57,Female,9.87,2.01,4.33,11.33,Poor,High,6.84,4.03,Yes,Positive,Yes +USER-00817,62,Other,9.16,6.3,2.38,7.88,Fair,Low,8.29,7.56,No,Positive,Yes +USER-00818,22,Other,2.63,3.81,4.08,3.88,Fair,Medium,5.46,1.19,Yes,Neutral,No +USER-00819,41,Other,10.71,0.5,0.93,4.72,Good,Low,4.29,9.08,Yes,Neutral,No +USER-00820,38,Female,6.77,1.89,0.63,2.26,Excellent,Medium,4.96,7.51,Yes,Negative,Yes +USER-00821,32,Female,5.6,1.93,3.38,6.56,Fair,Medium,7.32,4.81,No,Positive,Yes +USER-00822,21,Male,3.77,1.47,3.99,5.73,Good,Medium,8.92,2.88,No,Negative,No +USER-00823,22,Female,4.25,6.0,0.96,2.11,Poor,Medium,7.99,8.55,Yes,Positive,No +USER-00824,44,Male,4.32,0.54,2.35,8.17,Excellent,Low,5.23,1.77,No,Negative,No +USER-00825,49,Female,6.13,4.65,3.89,14.83,Poor,Medium,5.75,9.64,No,Neutral,Yes +USER-00826,25,Other,5.6,6.26,1.97,7.63,Good,Medium,7.89,6.59,Yes,Neutral,No +USER-00827,36,Other,9.46,0.66,1.63,7.09,Excellent,Medium,4.87,2.38,Yes,Negative,No +USER-00828,62,Male,7.9,7.56,3.94,10.08,Fair,Low,6.53,9.35,No,Positive,Yes +USER-00829,19,Other,10.71,5.1,3.56,4.88,Excellent,Medium,5.07,3.49,No,Negative,Yes +USER-00830,58,Female,6.96,0.75,4.03,13.29,Excellent,Medium,5.29,1.86,Yes,Positive,No +USER-00831,32,Male,11.43,2.17,1.44,2.47,Fair,High,7.03,3.23,Yes,Neutral,No +USER-00832,39,Other,3.2,6.23,4.65,13.6,Poor,Medium,6.19,2.31,Yes,Negative,No +USER-00833,42,Female,7.21,7.12,4.89,2.43,Fair,Medium,6.91,3.52,No,Neutral,Yes +USER-00834,36,Male,5.7,0.76,0.87,7.16,Excellent,Medium,6.61,4.57,No,Positive,Yes +USER-00835,61,Male,7.05,7.76,1.99,12.43,Good,Medium,7.32,8.14,Yes,Positive,Yes +USER-00836,21,Male,10.42,0.2,1.73,2.19,Good,Low,4.03,8.06,Yes,Neutral,Yes +USER-00837,28,Female,7.96,0.29,2.73,10.7,Excellent,High,8.31,1.38,Yes,Neutral,No +USER-00838,59,Other,7.19,4.04,2.69,9.52,Poor,High,6.87,1.41,Yes,Negative,Yes +USER-00839,61,Male,6.27,3.45,3.39,3.9,Poor,Medium,8.4,8.13,No,Negative,Yes +USER-00840,42,Male,9.72,0.33,2.74,6.03,Fair,Low,5.92,0.77,No,Neutral,Yes +USER-00841,21,Other,11.58,4.2,3.33,10.88,Excellent,Medium,4.36,5.16,No,Neutral,Yes +USER-00842,35,Female,10.99,6.08,1.33,6.98,Poor,Low,4.76,4.56,No,Negative,No +USER-00843,56,Other,8.16,3.56,4.15,8.77,Good,Low,6.26,5.59,Yes,Negative,Yes +USER-00844,64,Female,7.08,4.55,2.78,2.18,Fair,Medium,6.65,4.47,No,Neutral,Yes +USER-00845,61,Male,6.89,7.17,2.73,11.68,Excellent,Low,5.86,4.35,No,Neutral,No +USER-00846,44,Female,7.05,5.09,0.89,2.96,Fair,Medium,8.67,8.33,No,Positive,Yes +USER-00847,52,Male,8.75,0.13,4.96,4.89,Fair,Medium,5.01,3.98,No,Negative,Yes +USER-00848,47,Female,8.87,6.77,1.05,1.16,Poor,Low,5.17,7.31,No,Positive,Yes +USER-00849,30,Male,4.75,2.74,0.56,8.01,Fair,Low,5.69,9.5,No,Negative,No +USER-00850,53,Female,11.38,5.2,3.92,11.93,Fair,Low,7.61,9.39,No,Negative,Yes +USER-00851,26,Other,8.0,5.78,1.1,12.71,Poor,High,7.29,4.08,No,Positive,Yes +USER-00852,60,Female,10.95,1.53,3.67,5.35,Excellent,Medium,6.57,9.4,Yes,Negative,No +USER-00853,41,Male,5.88,3.2,4.62,14.74,Fair,Low,8.75,1.51,No,Neutral,Yes +USER-00854,52,Other,7.06,4.32,3.42,4.09,Excellent,High,6.33,3.31,No,Positive,Yes +USER-00855,28,Male,9.41,4.22,1.94,7.74,Good,Medium,7.7,1.19,Yes,Positive,Yes +USER-00856,59,Male,5.28,2.81,3.32,4.9,Excellent,Medium,5.3,5.63,Yes,Positive,Yes +USER-00857,52,Male,5.43,2.14,3.27,4.35,Excellent,Low,7.71,3.36,Yes,Neutral,No +USER-00858,23,Female,1.9,6.02,3.57,5.85,Fair,Medium,4.42,8.46,Yes,Positive,No +USER-00859,37,Other,5.59,0.38,1.38,9.24,Excellent,High,5.03,8.38,No,Negative,No +USER-00860,35,Other,7.08,6.26,1.92,13.74,Good,Medium,6.08,1.02,No,Neutral,Yes +USER-00861,23,Female,7.24,4.85,4.71,13.11,Excellent,Low,5.8,3.41,Yes,Positive,Yes +USER-00862,52,Female,6.05,7.79,3.44,7.54,Poor,High,7.72,8.82,Yes,Positive,No +USER-00863,18,Female,7.39,3.4,2.91,7.08,Good,Medium,8.17,0.86,Yes,Positive,No +USER-00864,26,Male,1.85,0.83,2.78,12.85,Excellent,Medium,8.59,4.16,Yes,Negative,No +USER-00865,25,Male,2.17,1.34,4.4,12.31,Good,Medium,5.09,1.59,Yes,Neutral,Yes +USER-00866,49,Male,5.71,4.89,0.69,5.38,Excellent,Medium,8.37,1.86,Yes,Negative,Yes +USER-00867,23,Other,6.35,6.34,0.09,8.49,Poor,Low,7.02,4.59,Yes,Neutral,No +USER-00868,39,Female,8.39,5.77,3.59,8.41,Fair,High,7.98,3.97,No,Positive,Yes +USER-00869,60,Female,1.48,1.57,1.96,13.01,Fair,High,7.67,7.41,Yes,Negative,Yes +USER-00870,47,Female,4.2,1.45,4.61,7.59,Fair,Low,5.94,5.91,No,Negative,No +USER-00871,58,Female,2.36,7.99,3.28,8.05,Poor,High,4.21,3.88,No,Negative,Yes +USER-00872,50,Male,11.58,6.49,0.01,3.33,Excellent,Medium,8.21,3.73,No,Positive,No +USER-00873,38,Other,1.39,5.36,3.15,6.44,Good,Medium,5.22,2.74,Yes,Positive,Yes +USER-00874,43,Other,7.74,5.43,3.41,2.42,Fair,Low,8.79,1.6,No,Neutral,Yes +USER-00875,32,Female,7.53,1.65,2.71,12.99,Excellent,High,4.2,4.49,No,Positive,Yes +USER-00876,19,Female,6.77,3.52,1.08,9.49,Good,High,7.04,7.97,No,Negative,No +USER-00877,20,Male,2.2,2.1,0.85,11.76,Good,Medium,4.45,4.0,No,Negative,Yes +USER-00878,57,Other,4.11,6.84,0.41,8.16,Poor,Medium,7.14,7.97,Yes,Positive,No +USER-00879,44,Male,4.62,3.29,2.3,2.46,Good,Medium,8.28,2.77,Yes,Positive,Yes +USER-00880,50,Female,2.73,6.88,0.75,5.05,Excellent,High,7.0,0.23,No,Neutral,Yes +USER-00881,28,Female,6.92,1.88,4.28,4.42,Excellent,High,7.0,6.59,Yes,Neutral,No +USER-00882,60,Female,2.5,1.33,1.33,5.66,Excellent,High,8.66,9.11,No,Negative,No +USER-00883,52,Female,8.93,2.61,4.29,1.81,Poor,Low,8.94,6.57,Yes,Positive,No +USER-00884,55,Female,3.21,5.46,2.3,8.58,Good,Low,6.73,4.01,No,Neutral,Yes +USER-00885,49,Female,3.49,0.62,2.42,3.61,Good,Low,5.77,2.54,No,Neutral,No +USER-00886,23,Female,9.77,6.83,2.18,9.76,Excellent,High,4.96,8.95,Yes,Neutral,Yes +USER-00887,53,Female,8.92,7.38,3.53,7.46,Poor,Low,8.69,9.36,Yes,Negative,No +USER-00888,64,Male,3.54,7.21,3.76,4.36,Poor,High,5.31,8.01,Yes,Negative,Yes +USER-00889,61,Female,11.21,6.51,4.09,11.62,Fair,High,4.09,8.82,Yes,Negative,No +USER-00890,27,Female,9.52,4.57,0.45,5.24,Good,High,5.99,9.42,No,Neutral,Yes +USER-00891,19,Male,4.51,3.91,2.3,2.42,Good,Medium,4.91,3.24,Yes,Negative,No +USER-00892,44,Female,1.95,3.94,1.78,12.76,Fair,High,6.57,1.38,Yes,Neutral,Yes +USER-00893,45,Other,4.71,3.66,4.49,9.2,Excellent,High,5.63,7.03,Yes,Neutral,Yes +USER-00894,49,Female,9.32,1.28,1.48,9.29,Good,High,8.28,8.73,No,Negative,No +USER-00895,64,Male,4.61,5.53,3.87,11.78,Poor,Low,4.22,2.73,No,Positive,No +USER-00896,28,Female,5.25,7.64,4.75,14.21,Fair,Medium,6.06,8.76,No,Neutral,No +USER-00897,39,Other,8.66,3.76,4.89,6.71,Excellent,Medium,7.91,9.29,No,Negative,Yes +USER-00898,39,Female,11.65,7.77,3.42,10.81,Good,Medium,8.72,5.04,No,Positive,Yes +USER-00899,25,Other,9.67,3.29,4.32,1.27,Good,High,5.07,9.62,Yes,Negative,Yes +USER-00900,28,Female,10.95,6.9,4.59,6.82,Poor,Medium,4.31,0.44,No,Positive,No +USER-00901,20,Male,2.53,5.11,2.64,13.87,Poor,Low,7.04,8.48,No,Negative,Yes +USER-00902,22,Other,1.43,5.23,4.51,2.48,Fair,Medium,6.38,5.27,No,Negative,Yes +USER-00903,56,Male,7.32,6.3,3.45,11.93,Excellent,Low,8.69,6.74,No,Negative,Yes +USER-00904,18,Other,10.99,1.33,0.98,7.62,Poor,High,4.06,7.39,Yes,Negative,Yes +USER-00905,50,Female,4.99,3.19,1.49,13.91,Fair,High,6.38,6.02,No,Negative,No +USER-00906,47,Female,11.36,5.98,0.2,1.42,Fair,Medium,6.69,6.64,No,Negative,No +USER-00907,32,Other,8.85,4.19,4.5,11.59,Fair,Low,7.65,0.61,Yes,Positive,No +USER-00908,26,Male,8.8,7.11,2.68,1.95,Fair,High,8.55,6.78,Yes,Negative,Yes +USER-00909,23,Other,3.13,6.26,0.75,11.38,Fair,High,7.9,7.1,No,Neutral,No +USER-00910,58,Female,7.21,5.87,0.81,6.52,Good,Low,6.14,2.84,Yes,Positive,Yes +USER-00911,47,Male,8.23,2.81,1.7,1.43,Poor,High,4.69,8.1,No,Negative,Yes +USER-00912,50,Female,3.95,2.32,4.24,6.53,Excellent,Medium,4.14,0.77,No,Positive,Yes +USER-00913,62,Female,4.88,4.46,4.8,11.18,Poor,Low,4.73,5.46,No,Neutral,Yes +USER-00914,35,Female,1.36,4.61,3.32,5.33,Excellent,Medium,6.73,1.16,No,Neutral,No +USER-00915,52,Female,4.41,1.28,3.02,10.35,Poor,High,4.35,7.16,No,Negative,No +USER-00916,57,Male,3.39,2.65,0.93,11.68,Good,Low,6.87,3.91,No,Negative,Yes +USER-00917,58,Male,2.5,1.27,1.59,12.58,Good,Low,6.02,6.96,Yes,Positive,Yes +USER-00918,44,Male,2.66,6.02,0.11,3.55,Good,Medium,4.34,6.56,No,Neutral,No +USER-00919,31,Other,1.37,3.01,3.29,11.46,Excellent,Medium,6.61,3.34,No,Positive,No +USER-00920,32,Other,7.24,7.25,0.77,13.88,Poor,High,5.66,8.03,No,Negative,No +USER-00921,58,Other,6.31,5.04,1.45,10.68,Good,Medium,4.93,1.97,Yes,Negative,No +USER-00922,32,Other,8.28,2.09,4.14,1.4,Fair,High,5.61,5.08,No,Neutral,Yes +USER-00923,25,Male,11.42,3.42,0.12,14.19,Poor,Medium,5.21,9.43,No,Positive,Yes +USER-00924,49,Other,7.3,5.46,1.98,12.02,Excellent,Low,8.26,2.2,No,Negative,Yes +USER-00925,37,Male,10.68,4.78,4.99,6.99,Good,High,4.26,4.39,No,Positive,No +USER-00926,18,Male,1.06,5.85,4.2,6.1,Excellent,Medium,7.59,8.85,No,Neutral,Yes +USER-00927,19,Male,4.83,2.07,4.62,9.95,Fair,High,5.15,8.79,Yes,Neutral,Yes +USER-00928,27,Male,7.78,2.66,0.4,5.36,Fair,Low,8.25,8.4,No,Neutral,No +USER-00929,61,Other,11.22,5.41,2.51,2.67,Poor,High,7.91,7.4,Yes,Negative,Yes +USER-00930,25,Other,10.59,5.94,1.57,2.14,Poor,Medium,7.0,9.61,No,Neutral,Yes +USER-00931,34,Other,6.18,3.39,0.87,2.04,Fair,Medium,5.74,3.48,No,Neutral,Yes +USER-00932,33,Male,1.14,4.64,1.24,2.57,Fair,Medium,5.15,2.36,No,Positive,No +USER-00933,34,Female,2.96,3.52,4.81,4.79,Poor,Low,5.68,7.69,No,Positive,No +USER-00934,33,Other,5.46,2.21,3.24,2.03,Good,Medium,6.55,0.15,Yes,Negative,No +USER-00935,65,Other,1.61,5.0,3.01,5.95,Good,Low,8.92,9.23,No,Negative,Yes +USER-00936,40,Other,7.93,2.21,3.86,8.58,Poor,Low,5.17,6.97,Yes,Positive,Yes +USER-00937,32,Male,4.91,2.07,1.35,4.57,Fair,Low,7.51,1.91,Yes,Positive,Yes +USER-00938,24,Male,7.53,3.32,4.09,7.61,Excellent,High,6.49,5.26,Yes,Negative,No +USER-00939,34,Male,6.95,4.03,2.83,10.02,Excellent,Medium,8.6,5.2,Yes,Negative,Yes +USER-00940,55,Female,11.5,3.68,3.08,12.87,Fair,Medium,8.59,4.39,Yes,Negative,Yes +USER-00941,65,Female,1.26,6.83,2.26,3.42,Excellent,High,4.77,8.04,No,Neutral,No +USER-00942,33,Male,7.04,1.37,0.84,6.7,Fair,Low,4.54,9.89,Yes,Positive,No +USER-00943,51,Female,5.22,4.31,1.06,2.03,Excellent,Medium,6.63,3.71,No,Neutral,No +USER-00944,18,Female,8.13,2.23,1.14,2.99,Good,High,7.01,0.79,No,Positive,No +USER-00945,35,Female,6.87,1.99,1.28,13.35,Excellent,Medium,6.66,9.33,No,Neutral,Yes +USER-00946,31,Female,8.34,3.27,0.44,7.61,Fair,High,7.59,3.09,No,Neutral,Yes +USER-00947,43,Male,2.86,6.4,0.51,5.88,Excellent,Medium,4.31,8.03,Yes,Negative,No +USER-00948,51,Other,1.44,1.22,1.92,9.59,Good,Low,7.97,3.7,Yes,Positive,No +USER-00949,63,Male,9.49,6.3,3.82,4.68,Good,Low,4.61,2.69,No,Neutral,No +USER-00950,59,Other,11.17,7.68,3.0,2.29,Poor,High,5.49,2.79,No,Neutral,No +USER-00951,53,Other,3.03,7.52,0.24,7.75,Good,Medium,8.43,0.37,Yes,Negative,Yes +USER-00952,54,Female,10.55,6.0,4.25,6.61,Poor,Low,7.26,0.44,No,Neutral,No +USER-00953,57,Other,3.84,1.28,1.78,1.8,Good,High,5.39,4.45,Yes,Neutral,No +USER-00954,55,Female,3.81,5.48,4.73,8.56,Fair,High,6.1,0.91,No,Positive,No +USER-00955,50,Female,6.1,2.73,0.32,5.9,Good,Low,5.83,7.98,No,Negative,Yes +USER-00956,63,Female,9.11,3.0,3.91,2.23,Excellent,Low,4.69,6.4,Yes,Negative,No +USER-00957,45,Female,11.75,6.57,3.12,5.13,Poor,High,4.21,2.87,Yes,Positive,No +USER-00958,45,Other,2.95,3.93,4.1,14.29,Fair,Low,8.34,5.03,No,Negative,No +USER-00959,24,Male,10.04,5.99,3.91,11.0,Fair,Low,7.11,2.83,Yes,Negative,No +USER-00960,43,Male,5.31,5.15,4.01,12.58,Good,High,5.51,7.89,Yes,Negative,No +USER-00961,55,Male,11.73,1.56,4.49,14.62,Good,Low,8.85,2.35,Yes,Negative,Yes +USER-00962,37,Male,1.26,7.73,0.86,11.67,Poor,Low,4.02,4.43,Yes,Positive,Yes +USER-00963,54,Male,9.94,6.17,1.43,3.23,Excellent,Low,7.59,2.08,Yes,Negative,Yes +USER-00964,53,Female,10.89,5.25,0.86,6.15,Excellent,High,6.7,4.61,No,Neutral,No +USER-00965,21,Other,2.24,5.57,1.08,13.24,Poor,High,4.15,6.07,No,Positive,Yes +USER-00966,58,Male,10.31,6.65,4.16,3.97,Good,Low,7.99,5.18,No,Negative,Yes +USER-00967,53,Other,4.11,0.66,1.06,9.71,Fair,Low,5.16,0.86,Yes,Positive,Yes +USER-00968,29,Other,2.38,1.04,0.88,1.47,Excellent,Low,4.28,9.46,No,Neutral,Yes +USER-00969,22,Other,10.91,7.2,3.49,1.09,Poor,High,5.61,5.41,No,Negative,No +USER-00970,41,Other,1.42,1.8,3.18,14.59,Fair,High,6.96,5.8,No,Neutral,No +USER-00971,43,Female,5.59,6.42,2.53,14.61,Fair,Low,4.6,4.11,No,Positive,Yes +USER-00972,40,Other,2.88,6.88,3.11,7.6,Fair,High,5.61,2.26,No,Neutral,No +USER-00973,54,Other,8.18,3.21,2.41,11.19,Poor,Medium,5.67,8.0,No,Negative,Yes +USER-00974,34,Female,11.68,5.2,3.3,1.41,Poor,Medium,8.05,8.96,Yes,Positive,Yes +USER-00975,64,Other,2.42,0.51,4.5,13.59,Good,Low,5.54,3.71,Yes,Positive,No +USER-00976,63,Male,5.49,5.08,1.48,5.35,Fair,Low,8.17,1.54,Yes,Negative,Yes +USER-00977,50,Other,3.15,5.45,0.67,1.61,Fair,Medium,5.02,1.38,Yes,Neutral,Yes +USER-00978,39,Female,8.72,5.95,4.14,3.46,Excellent,High,8.43,1.55,No,Negative,Yes +USER-00979,19,Other,3.46,7.18,0.4,7.51,Good,Medium,7.53,6.52,Yes,Positive,Yes +USER-00980,57,Male,10.64,2.16,2.83,6.16,Poor,Low,5.51,9.0,Yes,Neutral,No +USER-00981,27,Other,4.6,1.56,0.7,6.53,Good,Low,4.96,0.53,No,Positive,No +USER-00982,18,Female,8.14,2.17,4.53,10.85,Good,High,6.81,0.05,No,Positive,Yes +USER-00983,62,Other,10.08,1.66,3.17,4.03,Excellent,Low,5.69,6.85,Yes,Negative,Yes +USER-00984,62,Female,6.62,5.06,4.5,5.31,Good,Medium,5.06,5.94,No,Positive,Yes +USER-00985,26,Female,11.44,0.14,1.13,6.78,Good,Low,4.61,7.7,No,Positive,Yes +USER-00986,33,Female,3.99,0.27,0.86,2.82,Good,High,7.92,1.88,Yes,Negative,No +USER-00987,40,Male,10.43,5.09,2.96,12.29,Excellent,High,5.94,6.91,No,Positive,Yes +USER-00988,35,Male,3.87,2.19,2.52,10.36,Excellent,Medium,6.74,4.61,Yes,Negative,No +USER-00989,46,Female,11.03,3.92,2.94,1.88,Excellent,Medium,7.61,7.53,Yes,Negative,No +USER-00990,25,Male,10.21,3.07,1.54,13.92,Fair,Medium,6.02,8.08,Yes,Negative,No +USER-00991,18,Other,9.96,5.54,0.78,14.29,Excellent,High,6.46,8.33,No,Neutral,Yes +USER-00992,57,Female,3.64,5.06,3.5,5.04,Poor,Medium,5.67,8.07,No,Negative,No +USER-00993,42,Other,8.25,2.48,0.48,11.78,Fair,High,8.19,9.77,No,Negative,Yes +USER-00994,58,Male,10.25,1.93,0.28,8.09,Poor,High,8.61,3.04,No,Positive,Yes +USER-00995,31,Other,3.91,2.26,3.8,9.14,Poor,High,5.52,5.36,No,Negative,No +USER-00996,35,Other,9.5,3.47,2.04,9.05,Excellent,High,8.18,2.63,Yes,Neutral,Yes +USER-00997,60,Female,8.04,0.89,2.99,7.36,Good,Medium,5.05,6.31,Yes,Positive,No +USER-00998,22,Female,1.59,7.39,2.52,9.8,Excellent,Medium,8.26,3.74,Yes,Neutral,No +USER-00999,41,Other,10.61,4.4,0.12,10.82,Fair,Medium,8.41,7.8,No,Positive,No +USER-01000,61,Female,1.61,0.45,4.36,1.21,Excellent,High,8.33,7.45,No,Negative,Yes +USER-01001,30,Female,5.36,5.42,1.67,4.71,Good,Low,8.21,0.61,No,Positive,Yes +USER-01002,47,Other,6.72,3.89,3.74,7.53,Fair,Medium,5.6,2.38,Yes,Negative,No +USER-01003,44,Male,11.93,6.52,2.71,1.81,Fair,Low,4.07,3.7,No,Neutral,Yes +USER-01004,49,Female,2.46,4.85,3.38,9.56,Poor,High,7.14,4.38,Yes,Negative,No +USER-01005,25,Male,11.51,6.59,1.43,10.33,Excellent,Medium,6.29,5.61,No,Positive,Yes +USER-01006,64,Other,7.39,1.47,0.21,14.21,Excellent,Low,6.61,4.8,Yes,Negative,Yes +USER-01007,41,Male,6.24,6.35,4.01,3.71,Excellent,High,6.81,1.36,Yes,Positive,Yes +USER-01008,62,Male,11.59,0.39,4.72,12.45,Good,High,7.12,4.06,Yes,Neutral,Yes +USER-01009,39,Female,5.04,4.87,0.9,8.03,Good,High,6.65,6.58,Yes,Negative,No +USER-01010,53,Female,6.12,2.59,2.69,13.56,Fair,Medium,5.69,4.49,Yes,Negative,Yes +USER-01011,23,Male,10.0,2.43,3.35,1.45,Poor,Medium,7.48,1.91,Yes,Positive,Yes +USER-01012,25,Female,6.43,0.79,3.81,13.61,Excellent,Low,5.89,6.0,No,Neutral,No +USER-01013,26,Other,7.14,4.38,2.7,1.83,Excellent,High,5.68,6.26,No,Negative,Yes +USER-01014,23,Female,4.82,5.84,4.48,2.34,Poor,Low,7.81,6.3,Yes,Negative,Yes +USER-01015,60,Male,11.41,5.89,2.9,14.56,Good,High,8.68,5.27,No,Neutral,Yes +USER-01016,51,Female,5.39,3.04,3.41,2.27,Poor,Low,4.42,2.25,No,Positive,No +USER-01017,30,Other,7.16,0.17,1.5,2.96,Fair,High,6.67,3.6,No,Negative,Yes +USER-01018,57,Other,5.65,7.44,4.17,12.69,Poor,High,7.95,5.46,No,Negative,No +USER-01019,22,Female,6.38,1.31,3.13,13.18,Good,Low,5.31,7.02,Yes,Negative,No +USER-01020,41,Male,6.35,5.83,2.77,13.3,Poor,Low,4.73,0.06,Yes,Neutral,Yes +USER-01021,22,Male,7.92,5.02,1.5,12.26,Good,Medium,5.93,3.78,No,Positive,No +USER-01022,32,Male,8.61,3.66,3.57,4.22,Excellent,Low,4.21,8.48,No,Negative,Yes +USER-01023,55,Male,5.93,2.57,1.07,3.2,Poor,High,7.18,6.5,Yes,Positive,Yes +USER-01024,47,Male,11.98,3.09,1.47,14.89,Poor,Low,5.26,1.3,No,Negative,No +USER-01025,46,Male,7.48,2.43,2.41,13.24,Poor,Low,6.8,8.82,Yes,Negative,No +USER-01026,51,Male,11.38,6.48,1.18,5.91,Good,Low,8.86,0.17,No,Neutral,Yes +USER-01027,32,Other,4.9,6.43,2.27,7.38,Poor,Low,5.43,7.5,No,Positive,No +USER-01028,50,Male,11.59,3.05,1.51,8.03,Fair,Low,7.59,6.57,Yes,Negative,No +USER-01029,23,Male,9.95,3.78,4.36,5.31,Excellent,Low,4.69,6.42,No,Neutral,No +USER-01030,58,Female,10.8,7.26,3.3,12.27,Fair,High,4.31,4.32,Yes,Neutral,Yes +USER-01031,33,Male,4.12,6.03,1.17,4.31,Poor,High,4.54,8.98,Yes,Neutral,Yes +USER-01032,18,Male,5.64,6.21,4.76,8.47,Excellent,High,7.85,9.17,No,Neutral,No +USER-01033,38,Male,3.89,2.22,3.45,7.51,Fair,High,5.39,4.66,No,Neutral,Yes +USER-01034,37,Female,11.35,1.51,3.28,13.8,Excellent,Low,8.91,6.15,Yes,Neutral,No +USER-01035,30,Female,9.7,4.91,4.96,10.98,Good,Low,6.17,8.09,Yes,Negative,No +USER-01036,33,Other,5.88,7.23,3.54,13.64,Good,Low,4.83,8.43,No,Neutral,No +USER-01037,63,Other,11.64,1.01,1.52,3.72,Fair,Medium,8.3,3.11,No,Neutral,No +USER-01038,65,Female,10.07,6.54,4.01,14.29,Fair,High,7.2,8.43,Yes,Positive,Yes +USER-01039,58,Other,11.58,1.18,2.56,13.38,Fair,Medium,4.99,8.49,No,Positive,No +USER-01040,40,Female,11.13,4.17,2.81,12.54,Fair,Low,6.09,6.12,No,Negative,Yes +USER-01041,48,Other,1.9,0.29,0.07,5.39,Good,High,8.62,2.61,No,Negative,Yes +USER-01042,19,Male,3.62,1.34,3.75,5.68,Excellent,High,7.19,6.65,No,Positive,No +USER-01043,58,Female,1.65,6.09,1.92,1.75,Fair,High,8.75,5.73,No,Positive,Yes +USER-01044,31,Other,7.8,5.41,0.65,3.9,Excellent,Medium,6.86,2.09,Yes,Positive,Yes +USER-01045,44,Female,2.17,5.99,0.15,3.8,Poor,Medium,4.65,8.06,No,Negative,No +USER-01046,29,Female,8.58,3.44,4.81,5.87,Excellent,Medium,8.41,2.08,No,Positive,No +USER-01047,37,Other,10.1,1.82,3.51,2.85,Fair,High,4.14,4.34,No,Negative,Yes +USER-01048,21,Male,10.39,0.64,2.41,1.91,Excellent,Low,6.94,6.47,No,Positive,Yes +USER-01049,50,Male,1.05,3.62,2.08,6.98,Good,High,6.83,8.91,Yes,Positive,No +USER-01050,53,Female,3.8,4.67,4.85,3.04,Fair,Medium,6.67,8.07,Yes,Positive,Yes +USER-01051,63,Female,11.47,4.57,4.48,2.32,Poor,High,7.92,7.51,No,Neutral,No +USER-01052,36,Other,8.97,3.02,4.05,6.52,Good,Medium,5.4,8.44,Yes,Positive,Yes +USER-01053,23,Male,6.29,2.63,4.93,5.05,Fair,Low,8.2,6.61,Yes,Neutral,No +USER-01054,51,Other,3.83,4.82,3.79,10.19,Poor,High,5.23,1.16,No,Neutral,No +USER-01055,25,Female,2.7,6.44,0.55,8.12,Fair,Low,6.67,2.75,Yes,Positive,No +USER-01056,28,Female,2.81,1.07,2.31,5.42,Fair,Medium,8.37,2.34,Yes,Negative,No +USER-01057,40,Other,7.55,0.61,3.27,14.8,Fair,Low,7.21,3.84,Yes,Neutral,Yes +USER-01058,39,Female,9.39,2.81,4.81,10.16,Poor,Low,8.94,8.6,No,Neutral,Yes +USER-01059,62,Male,1.79,3.42,3.93,3.76,Fair,Low,7.01,0.91,Yes,Negative,Yes +USER-01060,19,Other,10.53,6.06,2.1,7.66,Excellent,High,8.23,6.94,Yes,Negative,Yes +USER-01061,23,Male,2.33,1.44,0.88,5.04,Excellent,Low,5.69,4.7,No,Negative,No +USER-01062,37,Female,4.46,5.65,2.6,7.95,Excellent,Low,4.0,6.8,Yes,Negative,No +USER-01063,58,Male,11.96,5.77,4.17,9.22,Fair,High,7.19,1.26,Yes,Neutral,No +USER-01064,61,Other,5.75,1.98,4.25,15.0,Good,Medium,5.97,1.54,Yes,Negative,Yes +USER-01065,60,Female,8.73,3.54,1.42,9.42,Fair,Low,4.37,5.48,No,Neutral,No +USER-01066,62,Other,6.45,7.67,3.87,1.92,Good,High,7.56,9.49,No,Positive,Yes +USER-01067,47,Female,10.22,5.38,1.69,6.99,Poor,Medium,5.5,1.22,Yes,Positive,No +USER-01068,41,Other,3.24,0.62,0.6,5.35,Poor,Low,6.67,9.21,Yes,Neutral,No +USER-01069,36,Female,10.54,0.94,0.72,7.54,Poor,Medium,8.38,0.68,No,Neutral,Yes +USER-01070,29,Other,7.89,6.89,1.88,12.46,Excellent,High,8.31,3.89,Yes,Negative,No +USER-01071,45,Other,5.67,4.67,1.42,5.17,Excellent,Medium,4.29,2.36,Yes,Positive,No +USER-01072,40,Other,4.44,6.98,4.93,3.53,Good,Low,6.32,4.8,No,Neutral,No +USER-01073,27,Male,3.55,1.99,3.56,4.36,Poor,Low,4.19,0.07,No,Positive,Yes +USER-01074,32,Other,3.15,0.73,1.72,10.36,Poor,Low,5.9,5.83,No,Positive,No +USER-01075,41,Female,7.07,2.54,0.43,11.46,Excellent,Low,4.62,7.51,Yes,Neutral,Yes +USER-01076,35,Female,7.53,0.65,3.72,3.33,Fair,High,5.22,3.58,Yes,Negative,Yes +USER-01077,40,Other,4.55,0.47,0.24,10.44,Fair,Medium,8.98,1.42,No,Negative,Yes +USER-01078,37,Male,4.52,0.98,3.67,10.6,Good,Low,6.92,2.15,No,Positive,Yes +USER-01079,57,Female,7.76,4.39,4.56,7.47,Excellent,Low,5.32,9.17,No,Negative,Yes +USER-01080,51,Male,4.84,2.28,1.62,13.6,Fair,Low,7.79,2.3,No,Neutral,Yes +USER-01081,64,Other,9.25,2.85,1.7,6.12,Fair,Low,5.71,5.69,No,Negative,Yes +USER-01082,21,Female,5.92,3.62,3.18,4.6,Poor,Low,5.51,1.2,No,Neutral,Yes +USER-01083,38,Other,7.89,0.36,4.07,7.88,Good,High,5.4,4.4,Yes,Positive,Yes +USER-01084,48,Male,1.44,1.61,2.12,1.88,Good,Medium,5.06,2.38,No,Neutral,Yes +USER-01085,31,Male,3.78,0.57,2.8,5.47,Fair,Low,5.86,5.86,No,Negative,Yes +USER-01086,43,Female,11.44,0.37,0.69,9.54,Poor,High,8.63,5.52,Yes,Negative,Yes +USER-01087,32,Male,2.74,0.16,0.23,7.64,Poor,Medium,5.59,0.72,No,Negative,Yes +USER-01088,48,Other,2.96,2.35,2.05,10.7,Excellent,Low,7.34,5.23,Yes,Positive,Yes +USER-01089,54,Other,9.38,5.11,2.58,10.13,Fair,High,4.29,8.46,Yes,Positive,No +USER-01090,57,Other,8.21,2.95,2.86,13.34,Poor,Low,6.41,8.02,Yes,Negative,Yes +USER-01091,25,Male,5.69,2.68,4.9,13.5,Poor,Medium,5.81,7.74,Yes,Neutral,No +USER-01092,63,Female,1.63,3.16,4.59,1.78,Good,Medium,6.84,1.78,Yes,Neutral,Yes +USER-01093,18,Other,6.16,2.52,4.61,4.77,Excellent,High,8.08,7.46,No,Neutral,Yes +USER-01094,22,Other,2.07,5.05,2.82,2.29,Excellent,Medium,7.37,5.98,Yes,Negative,No +USER-01095,20,Female,9.06,3.21,4.27,7.6,Excellent,Low,7.14,7.81,Yes,Neutral,No +USER-01096,27,Other,6.65,2.48,3.58,7.64,Excellent,High,5.87,4.05,Yes,Neutral,Yes +USER-01097,24,Male,7.38,6.66,1.7,14.85,Good,Low,8.0,3.34,Yes,Positive,No +USER-01098,33,Female,8.79,2.85,0.09,13.91,Excellent,Medium,6.68,8.68,Yes,Positive,No +USER-01099,30,Other,6.12,6.62,3.25,3.81,Good,Medium,4.48,5.14,No,Positive,Yes +USER-01100,21,Male,11.03,1.51,3.27,7.17,Poor,High,6.67,3.21,Yes,Neutral,Yes +USER-01101,18,Female,8.22,0.51,3.17,8.4,Poor,Low,7.64,1.41,Yes,Positive,No +USER-01102,46,Female,5.51,1.22,4.84,12.15,Good,Medium,5.73,0.78,No,Negative,Yes +USER-01103,36,Male,9.87,2.71,2.27,5.02,Poor,Medium,7.08,6.36,No,Negative,No +USER-01104,62,Other,3.5,6.47,0.21,5.98,Excellent,High,5.32,5.58,No,Positive,No +USER-01105,59,Female,1.71,7.39,4.47,5.13,Excellent,Low,4.9,2.12,No,Negative,No +USER-01106,48,Male,3.91,7.97,1.28,7.53,Good,Medium,5.27,6.97,No,Positive,Yes +USER-01107,49,Male,6.87,7.36,0.23,12.15,Good,High,7.38,2.85,No,Negative,Yes +USER-01108,25,Male,8.76,6.98,0.93,1.39,Excellent,Low,7.04,1.9,No,Neutral,No +USER-01109,57,Other,9.41,7.38,0.65,1.52,Good,High,6.03,4.83,Yes,Positive,Yes +USER-01110,64,Male,11.87,7.88,2.22,6.33,Poor,Medium,5.0,2.27,No,Negative,Yes +USER-01111,60,Male,1.27,4.64,4.81,1.94,Excellent,Low,5.59,0.38,No,Positive,No +USER-01112,18,Female,1.59,2.09,0.58,12.27,Fair,Low,4.6,1.65,Yes,Negative,No +USER-01113,19,Male,3.38,5.25,3.71,3.54,Good,Low,5.37,3.11,Yes,Negative,Yes +USER-01114,24,Male,11.21,3.78,2.79,4.92,Fair,Medium,8.46,9.78,Yes,Positive,No +USER-01115,22,Male,8.95,1.14,2.03,2.39,Poor,High,5.24,9.88,Yes,Negative,No +USER-01116,50,Male,7.4,4.06,2.58,2.93,Fair,High,6.56,0.86,Yes,Positive,No +USER-01117,41,Male,1.58,3.72,2.83,2.74,Good,Low,6.26,7.52,No,Neutral,Yes +USER-01118,40,Male,10.55,1.06,1.33,7.3,Excellent,Low,7.28,4.02,No,Negative,Yes +USER-01119,29,Female,9.01,1.8,1.36,8.53,Poor,High,6.78,4.99,Yes,Positive,No +USER-01120,33,Male,2.34,0.45,2.44,12.2,Fair,Low,8.32,6.22,Yes,Neutral,No +USER-01121,60,Other,2.58,1.88,2.41,3.98,Excellent,Medium,5.56,0.24,Yes,Positive,No +USER-01122,26,Male,1.74,3.81,3.44,5.48,Good,Medium,7.95,3.41,No,Neutral,No +USER-01123,26,Male,8.28,1.96,2.9,10.05,Poor,Low,6.62,1.18,Yes,Positive,No +USER-01124,63,Male,11.04,0.39,4.69,3.69,Poor,Medium,4.17,9.87,No,Positive,Yes +USER-01125,18,Female,9.89,1.28,1.71,14.61,Good,High,4.48,5.63,Yes,Negative,Yes +USER-01126,38,Other,7.94,7.07,4.55,14.48,Good,High,4.06,5.6,No,Neutral,No +USER-01127,51,Male,10.7,4.97,4.88,4.41,Excellent,Low,6.69,5.82,Yes,Neutral,Yes +USER-01128,32,Other,5.34,6.19,1.41,11.34,Excellent,Low,7.95,2.25,No,Neutral,No +USER-01129,29,Female,1.74,6.24,2.93,1.91,Excellent,Low,8.03,6.06,No,Neutral,Yes +USER-01130,24,Female,4.63,3.42,4.39,12.21,Excellent,High,5.87,3.6,Yes,Positive,Yes +USER-01131,31,Female,10.8,4.62,2.72,2.66,Excellent,Medium,7.18,8.81,No,Neutral,No +USER-01132,28,Male,3.22,1.25,0.42,10.78,Good,Low,4.88,7.58,No,Positive,Yes +USER-01133,41,Female,7.82,0.62,4.77,12.36,Poor,High,7.45,1.05,No,Neutral,No +USER-01134,31,Female,1.95,2.95,0.38,1.43,Poor,Medium,4.58,2.36,Yes,Negative,Yes +USER-01135,22,Male,6.47,6.33,1.82,14.15,Fair,Medium,6.12,0.9,No,Neutral,No +USER-01136,56,Other,10.4,7.23,3.55,14.7,Fair,Medium,4.07,6.0,No,Positive,Yes +USER-01137,65,Female,5.57,3.5,2.49,7.23,Fair,Medium,8.97,2.4,No,Negative,Yes +USER-01138,21,Male,4.48,5.24,1.35,14.56,Fair,Medium,7.46,2.64,Yes,Positive,No +USER-01139,32,Female,11.98,7.34,3.86,7.67,Good,Low,6.85,0.54,No,Neutral,Yes +USER-01140,19,Male,8.9,3.04,4.08,6.79,Excellent,Low,7.0,2.83,No,Neutral,Yes +USER-01141,18,Other,1.66,0.52,4.74,8.95,Fair,High,7.56,6.6,Yes,Positive,No +USER-01142,45,Other,8.99,0.67,4.06,4.93,Excellent,Low,7.64,2.34,Yes,Negative,Yes +USER-01143,58,Other,5.22,3.08,2.38,4.25,Poor,Low,8.43,3.39,Yes,Positive,Yes +USER-01144,59,Female,7.17,6.31,1.95,10.83,Good,High,8.5,7.36,Yes,Negative,Yes +USER-01145,65,Male,3.35,1.83,1.77,4.4,Fair,High,6.19,5.08,Yes,Positive,No +USER-01146,56,Female,10.82,5.64,2.23,5.6,Excellent,Low,8.26,0.35,No,Positive,No +USER-01147,44,Male,2.39,6.95,2.42,6.08,Poor,Low,4.63,4.26,No,Neutral,No +USER-01148,23,Other,11.74,7.91,4.87,13.52,Fair,Low,8.69,4.28,No,Neutral,Yes +USER-01149,65,Other,1.12,1.19,2.59,8.31,Poor,High,5.47,5.53,No,Neutral,No +USER-01150,39,Other,3.57,6.04,2.99,13.7,Excellent,High,7.28,5.76,Yes,Neutral,Yes +USER-01151,55,Female,9.89,2.56,1.49,10.15,Fair,High,6.98,3.56,Yes,Positive,No +USER-01152,49,Male,4.35,5.65,4.13,14.44,Excellent,Low,5.31,2.13,Yes,Positive,Yes +USER-01153,31,Other,11.96,5.81,3.49,7.56,Excellent,Medium,8.47,6.1,Yes,Negative,No +USER-01154,31,Female,3.98,1.82,2.61,5.76,Poor,Medium,8.16,3.22,No,Neutral,Yes +USER-01155,44,Other,6.89,5.68,1.72,12.84,Good,Low,6.28,2.66,No,Positive,Yes +USER-01156,59,Male,11.42,7.33,1.18,4.95,Fair,Low,6.66,0.37,No,Negative,No +USER-01157,33,Other,5.17,3.87,4.65,2.76,Excellent,Low,8.99,8.37,No,Negative,Yes +USER-01158,33,Male,5.45,3.41,3.47,14.98,Excellent,Low,5.56,8.83,Yes,Neutral,No +USER-01159,18,Male,10.63,6.57,4.21,3.24,Excellent,High,7.91,4.47,Yes,Negative,No +USER-01160,40,Female,9.54,1.43,1.07,9.82,Excellent,Medium,4.11,7.37,Yes,Positive,Yes +USER-01161,44,Female,9.07,5.9,2.86,1.54,Fair,High,4.96,9.75,Yes,Neutral,Yes +USER-01162,65,Female,11.67,2.7,2.61,12.43,Poor,Low,4.19,2.1,No,Negative,Yes +USER-01163,20,Female,4.56,1.08,0.36,12.16,Excellent,High,5.65,5.65,Yes,Positive,No +USER-01164,42,Male,9.44,0.08,3.67,13.61,Poor,High,6.74,9.96,No,Positive,Yes +USER-01165,22,Female,8.05,4.5,3.28,3.29,Poor,Medium,7.05,2.54,Yes,Neutral,Yes +USER-01166,32,Other,10.44,4.31,4.05,2.09,Good,Medium,7.94,6.02,No,Positive,No +USER-01167,32,Male,9.16,0.67,3.04,8.94,Poor,Low,6.55,5.4,No,Negative,No +USER-01168,30,Other,4.71,0.01,3.81,1.94,Poor,Low,6.88,2.29,No,Positive,Yes +USER-01169,24,Other,7.29,2.36,3.14,15.0,Poor,Medium,6.33,3.01,No,Neutral,No +USER-01170,44,Female,4.72,2.31,2.73,3.97,Excellent,High,5.47,4.09,Yes,Negative,Yes +USER-01171,45,Female,5.91,6.31,0.79,1.08,Good,High,6.19,3.6,Yes,Positive,No +USER-01172,18,Male,5.42,6.63,2.04,7.99,Excellent,Medium,5.18,7.35,Yes,Neutral,No +USER-01173,64,Other,11.54,4.98,0.97,2.67,Good,Low,5.78,0.46,No,Negative,Yes +USER-01174,56,Other,9.89,4.84,3.15,7.69,Poor,Medium,4.95,8.01,No,Positive,Yes +USER-01175,22,Other,9.73,0.55,0.93,5.31,Good,Medium,6.76,9.08,Yes,Negative,Yes +USER-01176,42,Male,11.12,7.23,3.91,14.33,Excellent,Medium,5.72,2.67,Yes,Negative,Yes +USER-01177,59,Male,4.32,5.77,3.07,11.74,Excellent,High,6.54,0.15,No,Negative,Yes +USER-01178,22,Other,1.23,4.68,3.63,12.84,Excellent,Medium,7.46,0.27,No,Positive,Yes +USER-01179,52,Female,5.58,5.36,1.66,2.34,Good,High,5.78,9.25,Yes,Positive,No +USER-01180,57,Other,7.42,4.84,0.64,6.62,Excellent,Medium,7.21,8.02,Yes,Negative,No +USER-01181,28,Male,9.29,3.36,4.66,14.63,Poor,Low,6.57,8.13,Yes,Negative,No +USER-01182,35,Male,6.13,5.49,4.02,1.88,Poor,Low,5.38,0.13,No,Negative,No +USER-01183,34,Male,1.72,6.01,2.66,4.7,Poor,Low,6.56,2.88,No,Neutral,Yes +USER-01184,57,Female,6.09,3.98,3.49,14.39,Fair,Medium,7.66,7.36,Yes,Neutral,Yes +USER-01185,53,Other,1.39,6.19,1.13,11.79,Poor,Low,5.26,5.22,No,Negative,Yes +USER-01186,49,Male,9.68,6.46,0.55,10.24,Fair,High,7.84,7.59,Yes,Negative,Yes +USER-01187,62,Male,11.37,6.16,3.59,3.68,Poor,High,7.79,8.25,Yes,Neutral,Yes +USER-01188,28,Female,11.51,1.84,0.69,14.83,Excellent,Medium,4.45,0.74,No,Neutral,No +USER-01189,18,Male,8.61,7.93,2.77,1.82,Excellent,Medium,5.82,5.87,No,Neutral,No +USER-01190,58,Male,10.04,3.21,2.0,6.74,Good,Low,7.2,6.2,No,Neutral,No +USER-01191,62,Male,2.92,5.91,1.48,9.26,Fair,Low,7.17,0.57,No,Negative,Yes +USER-01192,29,Male,8.26,4.57,1.3,12.95,Excellent,High,4.56,0.19,Yes,Neutral,No +USER-01193,52,Other,9.76,6.81,0.68,3.71,Fair,High,7.97,6.89,Yes,Neutral,Yes +USER-01194,26,Other,5.46,2.11,2.44,14.03,Excellent,High,6.36,3.15,Yes,Positive,Yes +USER-01195,38,Female,4.93,6.0,0.14,4.74,Excellent,Low,6.85,1.48,No,Neutral,No +USER-01196,51,Female,3.33,2.42,3.86,11.72,Fair,Low,8.52,1.99,Yes,Positive,Yes +USER-01197,25,Male,11.57,5.73,4.79,5.39,Poor,High,5.51,5.24,Yes,Negative,Yes +USER-01198,33,Other,5.01,2.04,4.23,1.8,Poor,High,5.76,0.82,No,Negative,Yes +USER-01199,58,Other,1.91,0.13,1.27,1.17,Good,Medium,5.73,5.04,No,Negative,Yes +USER-01200,27,Other,4.77,7.2,3.25,1.9,Fair,Medium,6.57,5.77,No,Positive,No +USER-01201,58,Male,5.45,5.04,4.48,6.36,Excellent,High,7.98,0.31,No,Positive,No +USER-01202,31,Other,11.72,3.76,0.02,1.49,Fair,Low,4.37,2.72,No,Negative,Yes +USER-01203,40,Male,8.35,0.02,1.74,14.06,Excellent,Low,8.56,7.86,No,Positive,No +USER-01204,44,Other,3.01,3.44,0.88,6.39,Poor,High,5.8,9.67,No,Positive,No +USER-01205,26,Other,1.2,2.36,2.4,12.74,Good,High,8.0,8.0,Yes,Negative,Yes +USER-01206,42,Female,9.42,5.9,2.26,4.34,Good,High,5.8,4.35,No,Positive,Yes +USER-01207,25,Female,2.52,1.47,2.64,5.97,Excellent,Medium,5.06,1.55,No,Neutral,Yes +USER-01208,35,Male,10.81,4.26,4.35,9.0,Poor,Medium,7.37,3.07,No,Neutral,No +USER-01209,20,Female,10.52,4.55,3.99,13.9,Fair,High,8.97,5.56,No,Positive,Yes +USER-01210,41,Male,7.92,1.98,3.25,2.4,Good,Medium,6.02,8.34,Yes,Negative,Yes +USER-01211,37,Male,6.88,1.9,3.36,12.99,Good,Low,5.9,9.15,Yes,Neutral,Yes +USER-01212,26,Other,4.52,5.34,3.8,8.31,Fair,High,8.0,6.6,Yes,Neutral,Yes +USER-01213,31,Male,7.5,2.92,0.44,13.56,Poor,Medium,6.75,5.65,Yes,Neutral,No +USER-01214,23,Male,10.04,3.14,3.43,8.81,Fair,Medium,8.74,0.95,Yes,Neutral,Yes +USER-01215,42,Male,1.75,2.05,0.15,8.69,Excellent,High,4.94,9.62,No,Negative,Yes +USER-01216,41,Female,11.09,6.79,0.41,14.58,Fair,Low,8.68,0.82,Yes,Negative,No +USER-01217,63,Other,4.87,6.74,4.94,10.99,Fair,Low,6.32,7.47,No,Positive,No +USER-01218,31,Other,7.77,7.6,2.8,13.18,Good,Medium,8.58,6.7,Yes,Negative,No +USER-01219,18,Other,8.22,1.78,3.9,13.93,Fair,High,6.84,3.86,No,Neutral,Yes +USER-01220,37,Male,2.44,4.78,4.89,12.65,Fair,High,4.84,3.69,No,Negative,Yes +USER-01221,42,Female,4.34,5.09,4.61,12.84,Fair,Medium,7.69,5.52,No,Positive,No +USER-01222,55,Other,9.55,0.25,2.54,1.11,Fair,Medium,5.01,3.49,No,Neutral,Yes +USER-01223,36,Male,2.98,6.7,0.99,11.61,Fair,Low,7.81,1.93,No,Negative,Yes +USER-01224,46,Female,8.38,4.78,4.4,4.22,Excellent,Medium,7.96,9.35,Yes,Neutral,No +USER-01225,62,Female,10.89,4.73,1.16,3.47,Fair,Medium,7.35,7.63,Yes,Positive,No +USER-01226,36,Male,1.86,2.57,1.11,8.22,Fair,High,7.71,0.08,No,Negative,Yes +USER-01227,43,Female,4.87,2.63,1.73,1.1,Excellent,Medium,7.01,5.35,No,Positive,No +USER-01228,27,Female,4.89,6.33,1.31,2.4,Fair,High,8.45,0.79,Yes,Negative,Yes +USER-01229,31,Other,3.37,0.93,1.13,5.44,Good,High,7.61,2.89,Yes,Neutral,Yes +USER-01230,36,Female,4.26,3.79,1.82,13.17,Poor,Low,7.97,1.08,Yes,Positive,No +USER-01231,49,Female,9.14,0.77,3.98,14.98,Poor,Medium,4.92,3.87,Yes,Neutral,Yes +USER-01232,52,Female,8.53,2.59,0.46,10.58,Good,Medium,4.48,4.93,Yes,Neutral,Yes +USER-01233,49,Male,5.86,4.84,0.7,6.21,Excellent,Medium,5.67,2.82,No,Neutral,No +USER-01234,22,Male,7.4,4.1,2.05,9.83,Poor,High,6.5,3.64,Yes,Neutral,No +USER-01235,54,Male,11.91,2.72,0.95,14.35,Poor,Medium,7.63,1.02,Yes,Positive,Yes +USER-01236,31,Other,6.7,5.14,3.43,7.76,Fair,Medium,6.59,6.77,Yes,Negative,Yes +USER-01237,32,Other,9.19,1.62,0.51,7.17,Good,Medium,8.72,1.71,No,Positive,No +USER-01238,38,Male,4.05,0.19,1.91,1.41,Fair,Medium,8.46,0.91,Yes,Negative,Yes +USER-01239,43,Female,2.6,4.74,2.17,12.08,Good,Low,8.65,3.52,Yes,Negative,No +USER-01240,43,Other,6.07,6.28,3.39,14.42,Poor,Low,6.24,8.1,Yes,Negative,Yes +USER-01241,43,Male,8.24,5.93,2.84,6.2,Good,Medium,5.5,3.81,No,Negative,No +USER-01242,55,Other,6.84,3.39,4.51,1.14,Fair,Low,6.63,8.5,No,Neutral,Yes +USER-01243,59,Female,4.66,3.15,1.79,1.84,Fair,Medium,4.21,7.26,No,Neutral,No +USER-01244,22,Female,8.34,3.87,2.85,12.79,Fair,Medium,7.47,6.16,No,Positive,No +USER-01245,35,Other,11.31,5.27,3.72,7.95,Fair,Medium,4.05,0.48,Yes,Negative,No +USER-01246,30,Other,4.47,3.16,0.39,9.92,Poor,High,8.38,9.25,Yes,Negative,No +USER-01247,43,Male,7.11,6.49,4.42,14.0,Good,Low,8.51,5.88,No,Positive,Yes +USER-01248,58,Male,7.69,1.14,3.9,5.18,Fair,Medium,4.31,0.18,Yes,Neutral,Yes +USER-01249,35,Other,5.73,4.13,1.87,5.64,Poor,Low,5.96,9.23,No,Neutral,Yes +USER-01250,44,Other,6.69,3.29,3.51,13.67,Excellent,High,8.3,8.04,No,Negative,Yes +USER-01251,45,Female,4.22,4.36,0.63,7.25,Fair,Low,8.58,0.36,Yes,Neutral,No +USER-01252,46,Other,10.9,2.27,3.34,4.27,Poor,Low,5.71,3.4,No,Neutral,Yes +USER-01253,63,Male,1.09,1.03,2.56,8.51,Excellent,Low,4.77,7.47,Yes,Neutral,No +USER-01254,47,Male,3.28,3.69,0.95,8.05,Fair,Medium,7.08,5.73,No,Positive,No +USER-01255,25,Other,4.72,1.45,3.13,11.84,Poor,Medium,7.73,8.61,No,Negative,No +USER-01256,28,Male,3.53,6.46,3.58,3.54,Poor,Low,8.05,2.59,Yes,Neutral,Yes +USER-01257,19,Other,6.25,1.33,1.1,4.87,Excellent,High,4.85,7.39,Yes,Neutral,No +USER-01258,60,Other,5.42,2.46,3.37,9.72,Excellent,Low,4.45,5.64,Yes,Neutral,No +USER-01259,65,Female,1.37,0.68,3.79,9.55,Good,High,4.73,4.47,Yes,Negative,No +USER-01260,26,Other,8.34,1.09,3.71,8.43,Fair,Low,4.11,6.98,No,Neutral,No +USER-01261,28,Other,5.45,7.08,3.95,14.55,Good,Low,6.49,7.16,Yes,Positive,No +USER-01262,59,Male,6.07,0.64,2.18,10.46,Poor,High,5.58,0.52,Yes,Neutral,Yes +USER-01263,21,Other,5.77,4.77,1.65,10.89,Fair,High,5.08,8.71,Yes,Positive,No +USER-01264,20,Other,7.02,0.77,2.42,2.66,Good,Medium,8.91,6.32,No,Negative,Yes +USER-01265,56,Male,5.31,0.63,2.74,14.06,Good,Low,4.05,2.29,No,Negative,Yes +USER-01266,55,Other,2.97,5.32,2.72,10.04,Poor,Low,6.48,2.65,Yes,Positive,Yes +USER-01267,20,Male,11.25,5.44,3.41,13.6,Excellent,Medium,8.43,6.77,No,Neutral,No +USER-01268,33,Other,11.57,2.92,1.31,7.85,Poor,Medium,5.84,2.19,Yes,Neutral,Yes +USER-01269,61,Female,7.34,3.95,0.32,14.26,Fair,Low,4.19,7.6,Yes,Negative,Yes +USER-01270,34,Female,9.03,5.31,3.51,11.68,Excellent,Low,5.58,6.63,No,Neutral,No +USER-01271,25,Female,3.58,5.48,1.21,10.74,Good,High,5.8,0.93,No,Positive,No +USER-01272,32,Female,3.12,5.77,2.02,2.6,Good,High,7.23,5.58,Yes,Negative,Yes +USER-01273,45,Male,9.87,1.86,1.46,5.26,Fair,High,5.79,8.96,Yes,Positive,Yes +USER-01274,35,Other,7.22,5.47,4.72,5.41,Poor,Low,8.92,9.99,No,Positive,No +USER-01275,61,Female,10.06,6.93,2.09,1.73,Poor,High,8.63,2.56,Yes,Positive,Yes +USER-01276,31,Male,6.96,2.39,2.68,12.3,Good,Medium,8.76,8.08,Yes,Positive,Yes +USER-01277,51,Female,5.64,4.06,1.9,2.84,Poor,Low,6.34,3.97,Yes,Neutral,Yes +USER-01278,34,Other,6.07,5.64,3.53,8.76,Poor,Medium,4.7,9.63,Yes,Positive,Yes +USER-01279,41,Other,4.05,7.55,2.16,9.06,Good,High,7.53,9.16,Yes,Positive,Yes +USER-01280,23,Female,5.48,0.62,2.72,9.27,Good,Low,8.82,8.84,Yes,Positive,Yes +USER-01281,59,Other,5.62,2.22,1.96,11.29,Excellent,High,6.31,4.85,No,Negative,No +USER-01282,65,Male,4.14,2.84,4.65,4.83,Fair,High,7.07,9.05,No,Positive,Yes +USER-01283,63,Other,10.89,6.34,0.68,7.18,Poor,Low,4.07,1.17,No,Positive,No +USER-01284,50,Other,11.65,3.6,3.75,12.59,Fair,High,4.7,3.59,Yes,Negative,Yes +USER-01285,56,Male,7.12,5.71,0.44,14.02,Good,Medium,6.0,9.65,No,Negative,No +USER-01286,56,Female,8.89,3.52,4.0,1.15,Fair,High,5.74,9.88,Yes,Negative,No +USER-01287,28,Other,9.04,1.59,4.76,7.11,Fair,Medium,7.94,0.58,Yes,Positive,No +USER-01288,59,Other,8.73,2.51,0.24,2.25,Fair,Medium,5.91,1.39,Yes,Negative,Yes +USER-01289,47,Female,2.34,6.78,0.23,5.04,Fair,Medium,4.65,8.98,Yes,Positive,Yes +USER-01290,56,Male,10.02,4.97,4.11,6.43,Excellent,Low,6.94,5.38,Yes,Positive,Yes +USER-01291,61,Female,5.85,1.13,3.59,2.32,Poor,High,8.66,3.93,No,Positive,No +USER-01292,20,Female,10.64,1.23,2.87,3.8,Fair,High,7.57,1.06,No,Neutral,Yes +USER-01293,63,Male,5.94,3.38,1.78,3.9,Excellent,Low,8.27,8.25,No,Positive,No +USER-01294,33,Male,2.72,3.03,4.63,3.86,Poor,Low,5.21,7.81,Yes,Negative,Yes +USER-01295,19,Female,7.58,6.41,3.8,4.28,Poor,Low,6.24,9.02,Yes,Positive,Yes +USER-01296,46,Other,4.92,2.54,4.41,1.74,Good,Low,4.58,0.64,No,Positive,No +USER-01297,22,Male,2.03,2.4,3.65,8.13,Good,High,8.07,8.63,Yes,Positive,No +USER-01298,53,Female,9.59,4.37,3.91,2.71,Excellent,Low,4.43,9.18,No,Positive,Yes +USER-01299,35,Male,3.05,5.97,0.97,12.46,Poor,Low,7.65,8.9,Yes,Positive,No +USER-01300,21,Male,7.96,2.87,2.61,14.39,Good,Low,7.0,5.91,Yes,Neutral,Yes +USER-01301,62,Female,10.51,7.2,2.82,12.38,Good,Medium,5.42,6.46,Yes,Negative,Yes +USER-01302,44,Female,11.39,0.44,1.64,7.61,Good,High,5.43,9.57,No,Neutral,Yes +USER-01303,21,Other,10.83,7.19,4.94,11.91,Poor,High,4.29,5.25,Yes,Negative,No +USER-01304,46,Female,8.57,6.49,0.65,8.26,Poor,Low,4.6,0.4,Yes,Positive,No +USER-01305,40,Male,9.08,5.34,1.83,14.13,Good,Low,5.8,0.73,Yes,Negative,No +USER-01306,57,Other,7.12,7.95,4.88,8.42,Poor,Low,7.13,5.3,No,Negative,No +USER-01307,39,Other,5.23,1.29,1.04,8.53,Poor,High,8.05,8.7,Yes,Neutral,No +USER-01308,40,Male,8.05,4.67,2.24,6.86,Good,Medium,8.28,7.67,Yes,Positive,Yes +USER-01309,45,Other,3.77,0.59,2.45,10.58,Poor,Low,5.12,0.04,No,Positive,Yes +USER-01310,52,Other,2.21,6.83,2.4,12.9,Fair,Low,8.59,0.27,Yes,Negative,No +USER-01311,21,Male,4.84,5.02,3.68,11.47,Fair,Low,8.9,0.36,No,Negative,Yes +USER-01312,47,Other,8.49,2.36,3.14,13.22,Fair,High,8.58,6.0,Yes,Negative,No +USER-01313,39,Male,6.48,4.47,1.71,12.9,Excellent,Low,8.05,1.33,Yes,Positive,No +USER-01314,50,Male,6.59,7.82,3.89,2.41,Fair,Medium,6.49,2.41,Yes,Neutral,No +USER-01315,64,Male,2.29,5.33,1.03,3.66,Excellent,Medium,8.6,9.1,Yes,Positive,No +USER-01316,26,Other,8.56,3.98,1.79,1.44,Poor,High,5.03,2.21,Yes,Negative,Yes +USER-01317,54,Female,2.13,3.49,0.3,8.44,Fair,High,5.83,1.13,Yes,Neutral,Yes +USER-01318,32,Female,3.7,7.82,1.83,2.35,Fair,Low,5.82,1.6,No,Negative,No +USER-01319,26,Other,8.42,5.9,1.95,4.84,Fair,Medium,5.29,3.55,Yes,Negative,No +USER-01320,52,Male,2.88,1.23,4.6,8.87,Excellent,High,7.18,9.17,Yes,Positive,Yes +USER-01321,21,Female,2.96,0.65,0.18,13.64,Poor,Medium,6.56,4.21,No,Positive,Yes +USER-01322,64,Male,4.63,1.84,4.12,1.25,Fair,Low,8.62,8.49,Yes,Negative,Yes +USER-01323,64,Female,10.37,7.82,2.55,13.88,Fair,Medium,4.99,6.9,No,Negative,No +USER-01324,20,Male,8.07,5.97,4.37,3.88,Excellent,High,5.62,2.97,No,Positive,Yes +USER-01325,29,Female,4.78,2.09,2.67,12.31,Good,High,7.63,7.2,No,Positive,No +USER-01326,29,Female,10.95,4.94,4.76,3.05,Excellent,Medium,5.07,5.86,Yes,Negative,Yes +USER-01327,50,Other,10.72,0.67,1.81,5.83,Good,Low,8.79,3.49,No,Positive,No +USER-01328,20,Other,1.87,4.95,3.09,6.41,Good,Medium,4.36,4.76,No,Negative,No +USER-01329,25,Female,5.56,4.87,2.62,7.12,Fair,Medium,5.22,3.56,No,Neutral,No +USER-01330,31,Other,3.46,1.05,3.91,5.18,Good,Medium,6.31,3.24,No,Negative,Yes +USER-01331,47,Other,7.61,5.86,3.54,13.21,Good,High,5.64,0.16,No,Neutral,Yes +USER-01332,54,Female,4.4,6.45,0.58,10.36,Good,Low,7.95,7.49,No,Negative,No +USER-01333,65,Female,7.2,3.17,4.67,5.22,Fair,High,8.65,3.64,Yes,Neutral,No +USER-01334,50,Male,7.63,1.81,2.01,5.83,Poor,High,4.57,6.78,No,Positive,Yes +USER-01335,52,Male,4.81,1.97,1.01,5.91,Poor,Low,4.03,3.78,Yes,Neutral,No +USER-01336,36,Female,11.52,4.05,2.65,4.42,Fair,High,8.15,3.87,No,Neutral,Yes +USER-01337,64,Other,6.26,0.76,0.31,7.61,Good,High,8.5,0.94,No,Positive,No +USER-01338,39,Male,4.04,4.51,4.98,9.71,Fair,Medium,4.11,1.08,No,Negative,No +USER-01339,52,Male,4.05,2.46,2.55,3.51,Excellent,High,4.12,5.61,Yes,Negative,No +USER-01340,64,Other,1.08,2.8,2.27,7.81,Poor,Low,6.71,9.67,No,Positive,No +USER-01341,36,Female,10.16,3.63,1.44,7.68,Fair,Low,8.61,2.55,No,Negative,Yes +USER-01342,46,Male,8.71,6.03,2.86,14.21,Excellent,Medium,8.85,5.4,No,Positive,No +USER-01343,54,Female,3.11,2.63,2.95,3.27,Excellent,High,4.22,2.54,Yes,Negative,Yes +USER-01344,33,Other,5.12,0.9,2.09,5.43,Excellent,Medium,6.36,9.22,Yes,Positive,Yes +USER-01345,61,Female,11.5,5.16,4.63,13.63,Good,High,6.39,3.8,No,Negative,No +USER-01346,44,Male,7.69,5.86,1.55,4.2,Poor,High,6.62,3.69,No,Neutral,No +USER-01347,24,Female,3.91,5.87,4.78,6.67,Good,High,6.3,0.15,Yes,Positive,Yes +USER-01348,49,Other,11.09,1.62,1.15,14.52,Good,Low,4.48,9.97,Yes,Positive,No +USER-01349,24,Female,1.22,2.67,4.27,7.11,Good,Medium,6.08,3.73,Yes,Negative,Yes +USER-01350,50,Male,10.05,2.62,0.07,13.41,Fair,Low,4.47,6.45,Yes,Negative,No +USER-01351,39,Female,4.7,3.53,3.33,7.72,Excellent,High,5.38,7.34,Yes,Negative,Yes +USER-01352,29,Male,2.88,5.78,2.83,10.72,Poor,Low,7.21,0.42,No,Negative,Yes +USER-01353,24,Male,7.95,7.66,4.36,10.39,Poor,Medium,6.36,7.43,Yes,Positive,Yes +USER-01354,48,Other,9.63,0.85,2.06,13.12,Good,High,7.1,7.13,No,Neutral,No +USER-01355,38,Other,10.28,0.85,0.02,6.09,Fair,High,7.17,2.71,Yes,Positive,Yes +USER-01356,22,Other,2.3,1.49,0.21,1.29,Excellent,Medium,6.22,8.29,Yes,Positive,No +USER-01357,40,Male,1.36,5.82,3.41,9.07,Excellent,Low,5.31,1.4,Yes,Positive,Yes +USER-01358,49,Other,11.43,3.64,1.84,13.91,Good,Low,5.82,1.83,No,Negative,No +USER-01359,61,Other,2.6,4.4,4.05,4.5,Fair,High,6.24,2.18,Yes,Negative,Yes +USER-01360,53,Female,5.09,7.69,0.3,13.91,Excellent,Low,6.08,1.32,No,Negative,No +USER-01361,56,Other,8.24,6.38,3.17,1.58,Good,Low,8.17,5.15,Yes,Neutral,Yes +USER-01362,21,Other,6.12,7.28,0.08,10.5,Good,High,5.82,6.65,Yes,Neutral,Yes +USER-01363,19,Other,9.22,5.03,1.14,4.48,Good,High,7.4,7.96,Yes,Negative,Yes +USER-01364,33,Female,8.4,6.17,0.24,14.08,Excellent,Low,4.63,9.48,No,Negative,No +USER-01365,55,Male,6.26,0.2,4.59,11.97,Fair,Low,5.2,5.57,No,Negative,Yes +USER-01366,56,Other,4.24,6.51,4.66,10.41,Good,Medium,4.99,1.46,Yes,Negative,Yes +USER-01367,49,Male,5.2,6.1,0.79,12.91,Excellent,High,8.15,1.61,Yes,Positive,Yes +USER-01368,41,Other,4.62,7.86,4.94,9.56,Poor,Low,7.38,2.0,No,Negative,Yes +USER-01369,47,Female,8.2,0.53,4.77,6.16,Good,Medium,6.09,3.34,No,Positive,Yes +USER-01370,36,Male,2.52,1.06,3.97,13.43,Good,Medium,8.93,6.85,No,Positive,No +USER-01371,22,Other,5.79,5.18,2.68,12.85,Poor,Low,7.19,4.98,Yes,Positive,No +USER-01372,27,Male,1.39,5.08,0.56,9.56,Good,High,8.42,1.34,No,Positive,No +USER-01373,33,Female,7.14,5.95,3.57,3.29,Excellent,Low,6.06,1.7,No,Positive,No +USER-01374,51,Male,10.9,4.65,3.61,4.52,Poor,High,6.22,0.7,No,Positive,Yes +USER-01375,48,Male,3.19,2.63,3.95,1.96,Excellent,High,4.77,9.12,No,Positive,Yes +USER-01376,32,Female,1.58,1.38,0.97,14.39,Good,Low,8.93,9.41,No,Neutral,Yes +USER-01377,22,Male,2.76,4.85,0.57,6.46,Fair,Medium,7.6,9.78,Yes,Negative,Yes +USER-01378,32,Other,6.13,7.68,1.07,9.55,Poor,Medium,4.65,4.99,Yes,Positive,No +USER-01379,35,Female,1.09,1.87,3.43,8.12,Excellent,High,7.81,9.64,No,Neutral,Yes +USER-01380,61,Male,7.81,2.1,0.33,12.82,Excellent,High,6.06,7.22,Yes,Positive,No +USER-01381,54,Female,10.96,5.5,4.38,9.99,Excellent,High,8.48,2.68,No,Neutral,No +USER-01382,26,Female,3.33,3.81,4.33,10.5,Poor,Low,7.54,8.64,No,Positive,Yes +USER-01383,26,Male,5.17,2.16,3.96,8.07,Excellent,High,8.65,0.06,Yes,Positive,Yes +USER-01384,62,Other,7.57,3.15,0.53,13.05,Good,High,5.78,8.28,No,Neutral,Yes +USER-01385,45,Other,1.07,1.18,3.61,10.62,Excellent,High,4.09,1.13,No,Negative,Yes +USER-01386,45,Male,6.23,5.26,1.94,9.04,Fair,Low,8.48,7.34,No,Positive,Yes +USER-01387,37,Female,1.53,7.27,2.93,14.12,Excellent,High,4.92,1.81,Yes,Negative,Yes +USER-01388,52,Female,7.31,7.77,2.55,8.4,Excellent,Medium,8.67,0.2,Yes,Negative,No +USER-01389,40,Other,1.28,3.13,1.62,2.57,Fair,Low,5.28,4.94,Yes,Neutral,Yes +USER-01390,60,Male,7.45,4.27,0.99,12.37,Poor,Medium,8.04,1.1,Yes,Neutral,Yes +USER-01391,24,Male,9.2,4.53,2.78,2.3,Good,Medium,7.66,1.43,No,Negative,Yes +USER-01392,62,Female,10.92,1.66,1.66,12.43,Poor,High,4.9,4.25,No,Negative,No +USER-01393,53,Male,6.69,7.01,0.17,2.17,Good,Medium,8.08,0.87,No,Neutral,Yes +USER-01394,20,Female,10.88,5.42,3.9,8.3,Poor,High,5.54,6.47,Yes,Positive,Yes +USER-01395,39,Other,7.63,3.6,3.37,1.18,Poor,Medium,4.19,3.99,Yes,Positive,Yes +USER-01396,55,Male,5.95,4.19,0.8,4.71,Poor,High,4.35,0.73,Yes,Neutral,Yes +USER-01397,61,Male,5.09,5.58,2.53,13.03,Excellent,Low,5.99,3.29,No,Neutral,Yes +USER-01398,47,Other,11.71,6.51,0.2,14.4,Poor,Low,4.53,7.79,Yes,Positive,No +USER-01399,65,Other,5.21,7.39,4.14,8.9,Good,High,5.97,6.65,No,Positive,No +USER-01400,25,Other,4.71,7.84,4.22,9.88,Poor,Medium,5.38,9.18,No,Positive,No +USER-01401,53,Other,10.47,2.07,0.56,9.67,Excellent,Low,8.77,7.59,Yes,Negative,No +USER-01402,52,Male,7.7,7.19,3.02,1.44,Good,Low,4.14,1.94,Yes,Negative,Yes +USER-01403,65,Other,11.59,0.44,0.36,9.67,Poor,High,4.72,8.65,No,Neutral,Yes +USER-01404,48,Other,2.91,6.97,4.29,11.53,Fair,High,4.51,1.45,No,Negative,No +USER-01405,57,Other,8.79,1.11,4.41,14.79,Good,Medium,5.5,0.9,Yes,Positive,No +USER-01406,64,Female,10.01,5.7,1.94,1.03,Fair,Low,5.67,9.95,No,Neutral,No +USER-01407,65,Other,7.67,4.83,0.31,11.42,Poor,High,4.18,0.14,Yes,Negative,No +USER-01408,59,Male,11.09,6.96,4.17,1.2,Poor,Medium,7.1,1.29,Yes,Negative,No +USER-01409,40,Female,4.58,6.34,2.84,6.62,Poor,Low,8.49,1.6,No,Negative,No +USER-01410,45,Other,5.5,3.13,1.14,12.66,Poor,Medium,8.39,7.77,Yes,Neutral,No +USER-01411,64,Male,8.19,1.15,4.34,13.54,Fair,Medium,7.5,6.12,No,Positive,Yes +USER-01412,57,Other,7.58,0.49,0.8,4.75,Good,Low,4.78,5.31,Yes,Negative,No +USER-01413,28,Female,5.52,0.61,4.87,8.95,Excellent,High,7.04,0.99,Yes,Positive,No +USER-01414,48,Female,8.7,2.59,4.18,4.62,Poor,Medium,4.74,6.5,No,Positive,No +USER-01415,20,Female,8.65,1.32,3.68,7.82,Poor,Medium,8.99,7.64,Yes,Negative,Yes +USER-01416,29,Female,3.31,4.6,4.43,14.89,Good,High,5.49,0.34,Yes,Neutral,No +USER-01417,43,Male,1.12,0.16,4.39,5.94,Good,Medium,5.65,0.51,No,Neutral,Yes +USER-01418,28,Other,1.47,1.46,0.23,2.77,Poor,High,7.81,1.86,No,Neutral,Yes +USER-01419,38,Other,11.75,5.84,2.89,7.23,Poor,High,4.07,6.56,Yes,Negative,Yes +USER-01420,43,Female,2.54,2.08,1.32,9.24,Fair,Low,5.42,5.48,Yes,Positive,No +USER-01421,26,Female,6.59,0.39,0.35,7.15,Good,Medium,6.92,0.11,No,Neutral,Yes +USER-01422,23,Female,5.17,5.66,4.09,14.43,Fair,Low,8.8,8.3,No,Neutral,No +USER-01423,30,Other,8.33,5.26,2.53,13.61,Fair,Low,8.26,4.48,No,Positive,Yes +USER-01424,54,Male,7.36,6.63,3.07,3.42,Excellent,Medium,8.03,9.89,Yes,Positive,Yes +USER-01425,31,Other,3.96,4.73,1.78,1.15,Excellent,Low,6.78,2.44,No,Positive,No +USER-01426,59,Other,11.1,7.75,4.6,4.63,Excellent,Low,6.63,6.95,No,Neutral,No +USER-01427,48,Male,6.81,1.77,1.65,5.55,Fair,Medium,4.11,2.39,Yes,Positive,No +USER-01428,18,Other,4.98,4.56,0.79,1.27,Poor,Low,7.49,6.77,No,Neutral,No +USER-01429,44,Male,11.93,7.8,0.19,5.06,Excellent,Low,7.47,9.77,No,Positive,Yes +USER-01430,62,Male,8.28,7.56,0.37,4.45,Poor,Low,7.53,7.6,Yes,Positive,No +USER-01431,52,Other,5.24,2.42,1.1,9.76,Excellent,Medium,4.33,2.88,No,Negative,No +USER-01432,51,Male,8.41,5.6,0.28,8.89,Poor,Low,7.21,6.71,Yes,Positive,No +USER-01433,36,Male,7.81,1.24,1.72,3.89,Good,Medium,5.75,6.81,Yes,Positive,No +USER-01434,29,Female,11.31,2.87,1.3,4.98,Fair,High,5.68,0.09,No,Positive,No +USER-01435,36,Other,7.83,6.1,4.07,1.21,Good,Low,8.59,5.08,No,Negative,No +USER-01436,28,Male,9.4,5.46,0.98,7.56,Fair,High,4.26,6.75,Yes,Neutral,No +USER-01437,38,Female,6.01,5.88,4.64,3.48,Poor,High,8.66,2.25,Yes,Positive,No +USER-01438,63,Male,11.89,1.09,3.94,11.08,Good,High,5.32,9.51,Yes,Negative,No +USER-01439,57,Male,8.67,7.37,1.18,3.68,Good,Low,7.54,4.33,No,Positive,No +USER-01440,53,Male,6.14,6.48,1.95,14.76,Good,High,8.43,5.79,Yes,Negative,No +USER-01441,52,Other,10.47,1.22,0.28,14.7,Excellent,Low,8.82,0.14,No,Positive,Yes +USER-01442,53,Other,3.89,7.95,2.34,14.59,Fair,Medium,8.01,5.81,No,Negative,No +USER-01443,46,Male,5.38,5.35,0.94,2.36,Excellent,Low,4.47,8.51,No,Neutral,Yes +USER-01444,60,Other,11.23,4.5,4.93,8.46,Fair,Medium,8.22,2.59,No,Neutral,No +USER-01445,48,Female,11.06,0.46,2.83,11.89,Good,Low,8.3,0.81,No,Neutral,No +USER-01446,27,Other,8.31,3.36,1.46,7.73,Good,Low,4.46,3.29,Yes,Positive,Yes +USER-01447,47,Male,10.48,7.81,3.11,6.5,Excellent,Low,7.97,2.39,Yes,Negative,No +USER-01448,35,Male,8.92,0.09,1.18,6.35,Poor,High,8.94,3.51,Yes,Neutral,No +USER-01449,26,Female,8.8,1.15,4.85,10.23,Excellent,Low,5.82,3.33,No,Positive,No +USER-01450,37,Female,4.21,3.17,2.77,2.37,Good,High,8.53,0.56,Yes,Negative,No +USER-01451,27,Other,8.85,5.26,2.99,3.44,Excellent,Medium,8.54,8.58,No,Negative,No +USER-01452,33,Other,5.03,1.74,3.98,8.5,Fair,Medium,8.45,4.71,Yes,Negative,No +USER-01453,57,Other,8.9,1.65,0.64,12.2,Good,Low,4.09,0.82,Yes,Negative,No +USER-01454,55,Female,2.08,6.93,0.16,14.44,Good,Medium,6.82,3.11,Yes,Neutral,Yes +USER-01455,47,Male,1.85,5.0,0.83,11.17,Fair,Medium,4.43,5.09,Yes,Positive,No +USER-01456,61,Other,5.34,7.5,0.62,5.49,Excellent,Low,8.1,1.04,Yes,Negative,Yes +USER-01457,46,Female,8.95,1.78,3.28,7.23,Poor,Medium,7.67,1.91,No,Negative,No +USER-01458,52,Female,10.9,1.25,1.24,9.72,Good,Low,4.79,1.87,Yes,Neutral,No +USER-01459,62,Other,10.48,0.95,3.14,1.98,Excellent,Low,8.94,4.22,No,Negative,No +USER-01460,51,Male,11.33,2.21,2.64,12.6,Good,Low,7.49,5.24,No,Negative,No +USER-01461,59,Other,7.3,0.86,3.43,10.87,Poor,High,5.59,2.17,Yes,Positive,No +USER-01462,30,Female,3.79,1.33,2.0,5.99,Fair,High,4.02,3.71,Yes,Negative,Yes +USER-01463,23,Male,10.37,1.9,3.27,3.92,Good,High,8.32,5.95,No,Neutral,Yes +USER-01464,59,Female,2.2,7.42,3.14,4.55,Excellent,High,5.3,0.46,Yes,Positive,Yes +USER-01465,45,Male,3.03,2.74,3.4,3.12,Excellent,Low,4.36,1.08,No,Negative,Yes +USER-01466,50,Other,5.89,0.07,2.89,7.44,Excellent,Medium,6.87,2.42,Yes,Positive,Yes +USER-01467,18,Male,2.46,4.29,3.22,7.84,Good,Low,7.07,9.78,No,Positive,No +USER-01468,57,Other,8.32,5.28,3.37,9.92,Good,High,5.41,3.23,Yes,Negative,Yes +USER-01469,62,Female,7.86,6.99,1.08,8.48,Fair,Medium,6.3,8.2,Yes,Positive,Yes +USER-01470,56,Male,4.66,6.22,3.06,12.76,Excellent,Low,7.5,1.07,Yes,Positive,Yes +USER-01471,59,Female,1.93,4.94,2.79,2.34,Excellent,Medium,5.17,9.84,No,Neutral,Yes +USER-01472,40,Female,1.96,7.94,3.21,3.88,Fair,High,8.99,8.21,No,Positive,No +USER-01473,42,Other,7.96,1.96,0.75,14.63,Fair,Medium,5.72,6.52,Yes,Negative,Yes +USER-01474,18,Other,5.85,1.33,1.64,8.82,Good,Medium,5.44,5.75,No,Neutral,No +USER-01475,32,Female,10.68,6.87,4.62,11.34,Poor,Low,8.42,2.45,Yes,Negative,No +USER-01476,50,Other,8.78,7.74,2.51,11.72,Good,Low,8.89,8.53,Yes,Negative,Yes +USER-01477,62,Male,11.18,0.62,1.66,1.64,Poor,High,4.56,1.85,Yes,Neutral,Yes +USER-01478,50,Female,2.91,6.0,1.55,7.15,Poor,Medium,5.74,9.75,No,Positive,Yes +USER-01479,61,Other,4.66,4.26,2.64,13.29,Good,High,7.12,8.09,Yes,Positive,Yes +USER-01480,56,Female,6.35,4.31,1.13,10.59,Poor,High,6.89,7.07,Yes,Neutral,No +USER-01481,56,Female,3.41,5.36,3.22,11.81,Fair,High,4.84,6.67,No,Negative,No +USER-01482,36,Other,2.3,4.31,1.51,12.32,Excellent,High,7.02,7.05,Yes,Neutral,Yes +USER-01483,27,Male,5.67,0.94,1.63,10.77,Excellent,Low,7.85,4.71,Yes,Negative,Yes +USER-01484,38,Female,2.14,4.71,3.82,3.99,Poor,Medium,5.81,3.24,Yes,Negative,No +USER-01485,59,Other,10.57,7.76,1.24,11.01,Poor,Low,5.72,3.44,Yes,Neutral,Yes +USER-01486,64,Other,10.97,2.57,1.84,10.22,Good,Low,5.76,2.63,Yes,Positive,Yes +USER-01487,45,Female,5.55,2.5,2.22,14.71,Poor,Medium,8.4,4.9,No,Positive,No +USER-01488,62,Other,3.36,3.82,0.68,13.05,Good,Medium,8.02,0.07,Yes,Neutral,No +USER-01489,39,Male,3.46,2.15,1.22,10.51,Fair,Medium,6.32,8.36,Yes,Neutral,Yes +USER-01490,22,Male,8.41,3.41,1.18,4.78,Excellent,Low,7.83,3.35,Yes,Neutral,Yes +USER-01491,57,Other,6.13,1.76,0.11,5.96,Fair,High,5.92,0.32,No,Neutral,No +USER-01492,35,Female,4.69,6.66,3.19,6.29,Good,Low,6.86,2.86,No,Neutral,No +USER-01493,24,Male,4.66,7.06,1.39,14.16,Poor,Medium,8.24,1.48,No,Positive,Yes +USER-01494,63,Female,4.97,2.01,2.51,12.76,Fair,High,7.14,8.25,Yes,Positive,Yes +USER-01495,46,Female,10.68,4.95,0.77,8.64,Good,Medium,8.37,2.62,Yes,Positive,Yes +USER-01496,25,Female,3.89,0.09,2.47,14.39,Good,Medium,8.94,9.69,Yes,Negative,Yes +USER-01497,64,Other,11.58,5.05,0.23,7.37,Fair,Low,6.22,1.26,Yes,Positive,No +USER-01498,60,Other,9.34,3.97,3.42,4.73,Good,Medium,6.7,8.54,Yes,Neutral,No +USER-01499,58,Other,5.63,3.78,0.43,13.81,Fair,Low,4.29,3.07,Yes,Negative,Yes +USER-01500,53,Male,3.45,6.92,1.65,6.12,Excellent,Low,8.04,8.1,No,Neutral,No +USER-01501,65,Male,4.04,7.14,4.54,3.4,Poor,High,5.76,7.43,Yes,Positive,Yes +USER-01502,46,Other,5.84,1.09,4.97,3.53,Fair,Low,6.79,5.77,No,Negative,Yes +USER-01503,32,Female,10.49,0.15,1.76,11.22,Poor,Medium,5.19,0.18,Yes,Positive,Yes +USER-01504,44,Female,6.29,4.2,1.07,10.93,Good,High,4.8,9.64,No,Neutral,Yes +USER-01505,24,Female,11.83,4.03,0.48,8.61,Fair,Medium,5.69,8.12,No,Negative,No +USER-01506,43,Other,5.97,6.44,0.67,1.22,Poor,High,7.76,9.42,No,Neutral,Yes +USER-01507,60,Male,8.05,7.63,1.3,4.65,Fair,Medium,8.48,4.3,No,Positive,Yes +USER-01508,27,Male,9.4,2.34,4.8,7.32,Poor,Low,8.1,7.49,Yes,Neutral,Yes +USER-01509,46,Female,9.35,5.96,4.52,10.58,Excellent,High,8.03,1.24,Yes,Negative,Yes +USER-01510,36,Male,1.6,4.46,0.14,8.85,Fair,High,5.87,7.76,No,Neutral,No +USER-01511,31,Female,4.97,2.09,4.93,11.76,Excellent,High,8.06,1.23,No,Neutral,No +USER-01512,63,Male,9.09,7.69,1.81,6.92,Good,Low,8.95,0.89,No,Neutral,Yes +USER-01513,35,Male,10.39,1.35,4.81,6.21,Fair,Low,4.88,2.12,Yes,Negative,Yes +USER-01514,32,Female,8.63,5.35,4.98,3.57,Good,Low,6.04,2.36,No,Negative,No +USER-01515,46,Other,11.63,2.38,0.37,12.24,Fair,Medium,5.34,4.21,No,Neutral,No +USER-01516,61,Other,1.12,5.98,3.14,13.87,Poor,Low,5.99,7.39,No,Neutral,No +USER-01517,65,Male,2.79,0.72,3.62,2.51,Good,Medium,4.04,1.23,No,Negative,Yes +USER-01518,43,Female,5.04,4.54,1.17,1.31,Excellent,Medium,7.53,3.06,No,Neutral,Yes +USER-01519,57,Female,7.67,5.82,4.81,9.19,Good,Medium,7.49,2.49,No,Neutral,Yes +USER-01520,30,Male,6.34,7.13,0.54,3.78,Poor,Low,4.84,1.61,Yes,Neutral,Yes +USER-01521,55,Other,1.92,5.61,1.92,11.61,Good,High,8.11,9.38,Yes,Neutral,No +USER-01522,40,Female,8.18,0.06,2.57,13.97,Good,High,8.69,2.89,No,Positive,No +USER-01523,43,Other,9.74,4.45,1.21,2.34,Excellent,High,4.41,9.68,No,Negative,No +USER-01524,30,Male,2.44,4.79,4.74,10.15,Good,High,7.81,1.41,Yes,Neutral,No +USER-01525,36,Female,3.89,1.57,0.47,14.45,Poor,Low,8.85,0.06,No,Positive,Yes +USER-01526,65,Other,7.25,3.6,1.29,4.1,Poor,Medium,8.37,4.01,No,Positive,Yes +USER-01527,46,Male,4.83,0.07,1.67,13.84,Fair,Medium,8.21,0.89,No,Neutral,No +USER-01528,38,Male,3.96,0.59,3.98,6.3,Excellent,Low,4.89,8.36,Yes,Neutral,Yes +USER-01529,33,Female,10.7,6.43,3.95,13.51,Good,Low,4.38,7.01,No,Neutral,Yes +USER-01530,57,Other,8.26,2.37,1.75,3.65,Excellent,High,4.4,7.37,Yes,Neutral,No +USER-01531,52,Other,6.63,0.78,0.84,6.49,Excellent,Low,7.65,2.88,No,Positive,Yes +USER-01532,42,Male,1.16,5.63,2.04,1.91,Fair,Low,8.49,4.49,Yes,Neutral,No +USER-01533,64,Other,10.18,0.13,2.17,14.26,Fair,High,6.62,8.15,No,Positive,No +USER-01534,24,Other,6.78,3.79,4.87,10.37,Good,High,6.33,8.83,No,Negative,Yes +USER-01535,51,Male,2.64,2.41,1.9,1.55,Good,Medium,6.09,6.09,No,Positive,Yes +USER-01536,23,Other,7.04,6.56,2.26,10.07,Poor,High,7.43,2.94,Yes,Negative,No +USER-01537,45,Male,7.34,5.79,3.65,14.38,Excellent,Low,5.06,0.71,No,Positive,No +USER-01538,35,Female,7.37,0.99,4.03,14.92,Poor,Medium,5.85,1.59,Yes,Positive,No +USER-01539,54,Other,6.78,0.51,0.1,11.26,Fair,Low,6.37,9.61,No,Neutral,Yes +USER-01540,34,Female,1.32,0.81,3.93,12.09,Excellent,Medium,4.65,2.23,Yes,Positive,Yes +USER-01541,33,Female,6.5,5.57,0.31,6.97,Good,Low,5.85,8.95,Yes,Positive,Yes +USER-01542,63,Male,11.84,7.97,1.31,5.47,Fair,Low,4.45,2.19,Yes,Negative,Yes +USER-01543,32,Female,4.83,2.79,3.17,7.7,Fair,Low,5.62,1.77,No,Neutral,Yes +USER-01544,28,Other,8.48,4.83,3.73,2.72,Excellent,Medium,8.81,4.47,Yes,Negative,No +USER-01545,60,Male,4.06,6.82,2.53,1.72,Fair,Low,4.73,0.5,Yes,Negative,No +USER-01546,50,Female,10.52,4.52,2.85,11.13,Poor,High,4.31,1.19,No,Neutral,No +USER-01547,49,Other,10.38,5.4,1.28,13.06,Fair,Low,4.74,5.81,No,Positive,No +USER-01548,42,Other,5.5,7.64,1.92,6.53,Good,Medium,5.49,7.72,Yes,Negative,No +USER-01549,61,Other,3.66,0.16,1.38,7.52,Poor,Low,8.15,5.38,Yes,Neutral,No +USER-01550,21,Male,1.21,1.34,2.21,14.09,Good,Low,8.71,4.61,No,Negative,Yes +USER-01551,51,Female,8.5,3.39,4.81,10.51,Fair,Low,5.31,2.43,No,Positive,Yes +USER-01552,58,Female,6.87,3.75,1.84,9.89,Fair,High,5.52,1.12,No,Neutral,No +USER-01553,24,Male,1.97,4.84,2.01,7.33,Poor,Low,8.4,8.79,Yes,Neutral,Yes +USER-01554,52,Female,11.68,0.92,2.47,5.03,Excellent,Low,5.64,0.65,No,Positive,No +USER-01555,52,Female,2.32,4.6,0.56,3.32,Excellent,High,5.78,8.76,No,Negative,Yes +USER-01556,38,Female,5.85,4.62,1.63,4.21,Fair,Low,6.33,8.68,No,Positive,Yes +USER-01557,27,Other,8.92,4.21,2.84,1.18,Poor,High,6.77,8.69,Yes,Positive,Yes +USER-01558,49,Female,8.76,4.22,2.15,5.91,Poor,High,4.78,5.18,No,Negative,No +USER-01559,61,Female,9.91,2.82,2.11,5.27,Good,Medium,4.54,7.09,No,Negative,No +USER-01560,35,Other,7.01,0.59,1.08,2.45,Poor,Low,6.09,2.5,Yes,Negative,No +USER-01561,35,Female,6.85,7.15,2.45,7.28,Excellent,High,6.92,2.12,No,Positive,Yes +USER-01562,50,Male,7.45,2.24,0.43,2.22,Excellent,Medium,6.21,1.19,No,Negative,No +USER-01563,20,Female,1.0,5.52,3.72,12.44,Good,High,4.28,1.66,Yes,Neutral,No +USER-01564,53,Other,7.26,1.52,1.05,1.27,Excellent,High,7.35,4.08,Yes,Neutral,No +USER-01565,35,Other,9.34,3.4,1.09,4.74,Fair,Low,6.35,1.49,Yes,Negative,No +USER-01566,47,Other,2.51,7.05,0.74,13.21,Poor,High,8.88,1.38,No,Neutral,Yes +USER-01567,51,Female,1.05,4.42,3.09,4.95,Excellent,Low,7.14,3.62,No,Positive,Yes +USER-01568,36,Male,7.48,5.32,0.62,11.94,Excellent,Medium,7.76,8.41,No,Neutral,Yes +USER-01569,51,Male,7.98,1.15,4.91,12.04,Excellent,Medium,9.0,0.95,Yes,Negative,No +USER-01570,50,Male,3.52,0.07,2.46,5.26,Fair,Low,6.84,2.77,Yes,Positive,Yes +USER-01571,18,Female,9.78,1.07,4.68,3.29,Poor,High,7.93,2.34,No,Positive,No +USER-01572,49,Female,9.93,7.5,0.7,3.74,Excellent,High,4.02,7.64,No,Neutral,Yes +USER-01573,45,Male,1.52,6.21,1.56,8.0,Excellent,Low,8.22,0.42,No,Neutral,Yes +USER-01574,22,Male,9.21,5.04,0.2,6.57,Good,High,7.94,0.58,No,Negative,Yes +USER-01575,49,Female,1.32,0.78,1.89,13.82,Fair,High,5.28,5.65,No,Neutral,No +USER-01576,19,Other,7.64,6.15,2.37,11.94,Poor,Low,4.21,2.87,No,Positive,No +USER-01577,18,Male,10.03,7.54,4.78,5.79,Good,Low,6.96,5.01,Yes,Negative,Yes +USER-01578,28,Female,3.69,0.79,2.49,14.06,Excellent,High,6.03,6.49,No,Negative,Yes +USER-01579,33,Female,2.73,0.17,2.41,6.88,Fair,Medium,5.76,2.32,No,Positive,Yes +USER-01580,59,Other,3.36,3.66,1.72,12.63,Excellent,Low,4.55,8.67,No,Neutral,No +USER-01581,57,Female,9.22,3.39,4.42,1.02,Fair,Medium,7.65,5.73,No,Neutral,No +USER-01582,43,Female,2.2,1.36,4.77,1.49,Fair,High,7.12,9.89,No,Positive,Yes +USER-01583,25,Female,8.37,5.81,4.72,6.26,Excellent,High,6.17,6.54,Yes,Neutral,No +USER-01584,27,Male,6.45,7.34,3.34,7.88,Fair,Medium,7.46,5.49,Yes,Negative,Yes +USER-01585,18,Other,9.19,3.23,2.59,14.77,Good,Medium,4.25,1.35,Yes,Negative,Yes +USER-01586,54,Female,10.45,1.06,0.2,11.65,Good,High,7.77,0.81,No,Negative,No +USER-01587,44,Female,2.31,6.74,4.18,1.69,Good,Low,7.35,1.41,No,Neutral,Yes +USER-01588,35,Female,11.39,4.04,1.65,6.12,Excellent,Medium,4.26,2.94,Yes,Positive,No +USER-01589,29,Female,3.86,6.91,4.7,7.45,Fair,Medium,7.66,8.05,No,Positive,Yes +USER-01590,44,Male,4.29,3.14,4.01,3.55,Excellent,Low,8.7,4.32,No,Positive,Yes +USER-01591,54,Male,6.84,0.94,4.42,12.46,Good,High,5.01,3.2,Yes,Positive,Yes +USER-01592,49,Other,6.21,5.93,3.92,8.53,Fair,Low,7.72,6.8,Yes,Neutral,No +USER-01593,20,Other,2.39,4.2,4.63,13.68,Good,High,8.52,9.13,No,Neutral,Yes +USER-01594,22,Male,6.41,3.56,4.4,10.32,Fair,Low,7.43,2.09,No,Neutral,No +USER-01595,65,Other,10.44,7.35,4.73,13.19,Good,Medium,6.83,1.02,Yes,Positive,No +USER-01596,33,Male,4.22,2.0,4.71,14.81,Fair,Low,7.76,4.88,Yes,Positive,No +USER-01597,21,Male,7.93,5.42,4.0,2.1,Fair,Low,4.79,4.07,Yes,Neutral,No +USER-01598,26,Female,11.02,7.77,0.63,5.35,Good,Medium,6.36,3.72,No,Neutral,No +USER-01599,54,Female,9.45,7.51,4.31,1.39,Poor,Medium,5.97,8.49,Yes,Positive,No +USER-01600,50,Other,8.31,6.55,2.02,13.24,Excellent,Low,5.34,9.79,No,Neutral,No +USER-01601,65,Other,2.8,0.49,1.54,5.52,Good,High,8.41,4.55,No,Neutral,Yes +USER-01602,53,Female,1.22,6.56,1.65,3.5,Good,High,6.69,2.24,Yes,Positive,Yes +USER-01603,45,Other,3.94,2.42,3.88,12.19,Excellent,Low,6.67,2.43,Yes,Negative,Yes +USER-01604,56,Male,1.96,7.28,0.68,3.1,Fair,Low,5.13,8.9,Yes,Negative,Yes +USER-01605,22,Other,5.94,3.2,0.7,5.16,Excellent,Low,8.1,0.75,No,Neutral,No +USER-01606,18,Female,9.31,3.2,0.72,7.2,Fair,Low,8.52,2.82,Yes,Neutral,No +USER-01607,54,Female,10.27,5.74,0.25,1.71,Fair,Low,6.82,0.96,No,Positive,No +USER-01608,20,Female,9.25,0.46,0.8,11.99,Poor,Low,6.96,6.24,Yes,Positive,Yes +USER-01609,21,Female,6.94,1.88,0.62,3.7,Poor,High,5.42,4.77,Yes,Positive,No +USER-01610,22,Male,2.29,4.39,1.38,8.95,Good,Low,5.53,3.02,No,Positive,No +USER-01611,38,Other,3.0,0.82,0.04,7.22,Excellent,Low,8.98,7.28,Yes,Positive,No +USER-01612,39,Other,9.21,5.5,4.04,12.96,Fair,Medium,6.74,8.49,No,Negative,Yes +USER-01613,21,Female,2.34,7.22,0.87,6.18,Fair,Medium,6.46,6.32,Yes,Negative,Yes +USER-01614,38,Female,1.32,3.8,4.57,7.53,Good,Low,6.74,2.37,No,Positive,Yes +USER-01615,55,Male,5.46,1.76,1.59,5.56,Fair,High,7.57,5.55,No,Positive,Yes +USER-01616,58,Male,8.87,7.87,1.61,2.55,Good,Medium,4.64,7.37,Yes,Neutral,No +USER-01617,62,Other,1.39,0.81,0.24,10.02,Poor,Low,5.75,3.82,No,Positive,No +USER-01618,31,Male,10.61,4.12,2.3,9.33,Good,High,7.47,9.62,Yes,Positive,Yes +USER-01619,45,Male,2.79,5.9,0.24,1.72,Good,Low,7.5,9.44,Yes,Positive,No +USER-01620,33,Female,11.81,7.04,2.84,2.24,Fair,Low,6.74,0.26,No,Negative,No +USER-01621,41,Male,2.41,2.58,0.5,12.78,Poor,Medium,7.18,2.61,No,Negative,Yes +USER-01622,27,Other,4.05,3.66,0.92,6.63,Poor,High,6.52,3.24,Yes,Negative,Yes +USER-01623,63,Other,2.08,3.79,0.95,11.66,Fair,High,4.48,1.37,No,Negative,Yes +USER-01624,24,Female,4.82,4.83,3.4,13.07,Excellent,Medium,4.6,3.64,No,Negative,Yes +USER-01625,54,Female,11.49,7.09,2.04,6.25,Fair,High,4.37,1.53,No,Positive,Yes +USER-01626,53,Female,2.47,3.26,2.24,3.47,Fair,Medium,7.36,7.76,Yes,Neutral,Yes +USER-01627,32,Male,4.66,2.72,3.29,11.04,Good,High,5.28,3.86,Yes,Negative,Yes +USER-01628,19,Female,1.62,0.77,0.47,7.17,Fair,Low,8.58,7.6,No,Negative,No +USER-01629,38,Other,10.43,1.19,4.76,6.82,Poor,Low,4.11,5.02,Yes,Negative,No +USER-01630,23,Male,11.73,0.3,3.99,10.95,Good,Low,5.97,0.71,No,Neutral,Yes +USER-01631,31,Male,10.22,6.81,0.98,14.8,Fair,High,4.84,9.4,Yes,Neutral,No +USER-01632,24,Male,4.18,4.88,1.93,13.13,Excellent,High,4.61,9.02,No,Neutral,No +USER-01633,64,Female,3.49,2.94,2.33,3.12,Good,Low,6.38,7.57,Yes,Positive,No +USER-01634,24,Female,3.35,3.64,2.51,10.84,Excellent,Low,8.45,2.07,Yes,Positive,No +USER-01635,33,Other,2.16,0.29,4.9,2.39,Good,Medium,4.79,7.1,No,Positive,No +USER-01636,36,Female,6.74,3.93,0.2,13.83,Good,High,4.61,6.02,No,Negative,Yes +USER-01637,25,Male,4.86,1.7,0.76,1.5,Fair,Medium,6.72,5.26,No,Negative,Yes +USER-01638,21,Other,2.52,3.68,0.34,9.77,Good,High,5.19,9.49,Yes,Neutral,No +USER-01639,43,Male,8.6,7.66,2.39,3.9,Good,Medium,4.23,9.32,No,Neutral,Yes +USER-01640,62,Male,11.22,2.91,4.2,6.15,Excellent,High,4.08,0.96,No,Negative,No +USER-01641,45,Male,4.47,6.54,2.2,14.79,Excellent,Medium,7.71,8.11,Yes,Negative,Yes +USER-01642,33,Other,6.9,3.4,4.13,5.77,Fair,High,6.07,8.1,Yes,Negative,No +USER-01643,33,Male,2.93,6.52,2.97,12.59,Poor,Low,5.59,5.87,Yes,Positive,Yes +USER-01644,41,Female,4.08,4.34,4.56,1.49,Excellent,Medium,7.77,9.46,Yes,Positive,Yes +USER-01645,40,Male,11.32,1.08,2.58,1.58,Good,High,5.57,5.35,Yes,Neutral,Yes +USER-01646,47,Female,5.19,7.62,1.3,14.52,Fair,Low,8.64,9.81,Yes,Positive,No +USER-01647,23,Male,4.63,1.15,0.34,9.12,Poor,High,8.39,0.05,Yes,Negative,Yes +USER-01648,21,Female,5.03,5.01,2.52,5.88,Poor,Medium,4.49,5.12,No,Positive,No +USER-01649,59,Male,5.85,7.54,1.4,11.51,Excellent,Low,4.05,3.94,Yes,Neutral,Yes +USER-01650,57,Female,7.73,3.49,4.39,6.99,Good,High,8.01,0.93,No,Positive,No +USER-01651,21,Other,9.36,6.97,3.57,2.43,Excellent,High,7.54,8.45,Yes,Negative,Yes +USER-01652,36,Female,5.96,5.23,1.38,13.26,Good,Low,6.53,0.62,Yes,Negative,No +USER-01653,36,Other,10.54,6.17,1.28,2.15,Good,High,8.74,5.84,No,Positive,No +USER-01654,54,Other,7.88,1.07,2.56,8.78,Poor,High,4.88,1.75,Yes,Positive,Yes +USER-01655,46,Other,8.05,2.89,2.46,6.12,Good,Medium,8.19,6.16,No,Negative,Yes +USER-01656,61,Other,3.94,4.16,2.12,7.9,Poor,Medium,7.84,2.26,Yes,Negative,Yes +USER-01657,42,Male,3.56,0.95,2.16,10.11,Poor,High,4.91,7.88,No,Negative,No +USER-01658,50,Male,3.82,4.71,4.01,1.57,Poor,High,7.93,4.74,Yes,Negative,No +USER-01659,31,Male,10.26,6.49,2.73,4.73,Poor,High,6.78,0.68,Yes,Positive,Yes +USER-01660,40,Female,9.64,5.86,4.57,5.41,Poor,High,6.14,1.49,No,Positive,Yes +USER-01661,49,Male,4.92,0.35,1.42,12.13,Fair,Low,7.37,9.85,No,Positive,Yes +USER-01662,44,Other,5.42,0.18,4.19,12.88,Poor,Medium,5.17,3.93,Yes,Neutral,Yes +USER-01663,25,Female,3.76,4.12,0.23,5.63,Poor,Low,5.22,6.6,No,Positive,Yes +USER-01664,65,Female,4.68,3.08,3.45,13.74,Good,Low,8.5,0.45,No,Positive,No +USER-01665,47,Other,4.67,1.99,3.47,14.04,Excellent,Low,5.86,0.74,Yes,Neutral,No +USER-01666,58,Female,5.96,6.21,0.71,2.94,Poor,High,4.35,6.87,Yes,Neutral,No +USER-01667,42,Male,6.66,7.36,1.39,6.47,Good,High,4.3,4.76,No,Negative,Yes +USER-01668,42,Female,3.26,2.45,1.63,8.1,Poor,Low,8.84,0.14,No,Positive,No +USER-01669,29,Other,1.76,2.59,4.69,14.93,Excellent,Low,6.8,8.19,Yes,Neutral,No +USER-01670,63,Other,3.06,1.31,3.03,6.73,Fair,Low,8.25,0.03,Yes,Positive,Yes +USER-01671,52,Male,10.11,4.96,3.89,5.12,Excellent,Medium,5.06,1.45,No,Negative,No +USER-01672,34,Male,6.41,4.23,2.41,3.02,Excellent,Medium,7.16,5.8,No,Positive,No +USER-01673,61,Male,8.01,0.87,1.13,1.76,Good,Low,4.76,0.25,No,Positive,Yes +USER-01674,62,Male,11.0,7.26,4.06,2.47,Excellent,High,7.18,9.93,Yes,Neutral,No +USER-01675,24,Other,4.18,6.26,3.91,11.77,Good,High,8.1,9.27,Yes,Positive,Yes +USER-01676,57,Female,8.26,5.85,3.48,6.33,Excellent,Medium,8.45,9.68,No,Positive,Yes +USER-01677,39,Male,3.97,7.22,0.93,5.47,Poor,High,7.58,6.77,No,Positive,Yes +USER-01678,32,Other,11.73,1.09,1.14,6.84,Fair,Low,4.07,2.25,No,Neutral,No +USER-01679,43,Female,2.63,2.04,4.33,14.64,Good,High,4.96,6.74,Yes,Positive,No +USER-01680,38,Female,6.73,1.03,0.19,7.15,Fair,Medium,6.36,8.61,No,Positive,Yes +USER-01681,51,Female,3.63,7.48,1.93,9.16,Poor,High,4.05,8.99,No,Positive,Yes +USER-01682,19,Male,7.22,4.92,0.02,2.17,Fair,High,4.97,6.3,Yes,Positive,Yes +USER-01683,34,Female,11.3,5.15,1.43,4.36,Poor,Medium,6.91,5.95,Yes,Neutral,Yes +USER-01684,38,Other,5.5,1.49,4.19,1.07,Poor,Medium,7.11,8.7,No,Negative,No +USER-01685,62,Male,2.14,3.4,2.14,5.36,Fair,Low,6.4,0.95,Yes,Negative,No +USER-01686,38,Other,8.72,3.53,3.45,14.3,Poor,High,7.37,2.18,Yes,Positive,Yes +USER-01687,64,Female,11.14,0.74,3.92,12.61,Poor,Medium,7.28,7.68,No,Negative,No +USER-01688,58,Male,9.98,0.52,1.08,13.34,Excellent,Medium,5.66,9.33,Yes,Neutral,No +USER-01689,40,Female,9.87,2.85,1.5,14.14,Poor,High,6.46,6.41,Yes,Positive,No +USER-01690,32,Other,1.02,2.15,2.21,9.67,Excellent,High,4.55,6.87,No,Neutral,No +USER-01691,56,Male,11.04,4.49,4.09,5.2,Good,High,4.72,4.31,Yes,Negative,Yes +USER-01692,55,Other,6.11,6.69,1.15,14.11,Fair,High,7.1,6.54,No,Neutral,No +USER-01693,51,Male,4.67,0.76,2.49,8.46,Poor,Low,4.76,2.62,No,Negative,No +USER-01694,21,Female,10.04,7.73,4.29,13.34,Fair,Low,8.72,0.98,No,Positive,No +USER-01695,31,Other,2.77,1.77,1.46,14.39,Fair,High,6.09,6.81,Yes,Neutral,Yes +USER-01696,23,Male,1.23,1.56,3.03,6.37,Fair,High,8.84,5.85,No,Negative,Yes +USER-01697,32,Male,3.56,3.87,0.05,10.76,Fair,Medium,7.24,4.49,Yes,Negative,Yes +USER-01698,46,Other,8.58,0.65,3.87,11.25,Excellent,Low,4.16,9.96,No,Neutral,Yes +USER-01699,64,Male,4.62,0.91,3.34,11.52,Good,High,8.52,3.24,Yes,Negative,No +USER-01700,31,Female,10.96,5.77,0.48,8.83,Fair,Low,5.66,6.11,No,Positive,Yes +USER-01701,20,Male,6.88,3.1,4.52,9.77,Excellent,High,5.32,0.92,Yes,Negative,Yes +USER-01702,22,Other,8.39,4.02,1.62,5.79,Excellent,Low,8.27,5.06,No,Negative,No +USER-01703,56,Male,6.87,6.3,0.65,11.02,Poor,Low,6.0,2.68,No,Positive,Yes +USER-01704,20,Female,1.94,7.07,4.63,11.58,Fair,Medium,7.78,6.3,No,Positive,Yes +USER-01705,53,Other,5.07,3.76,0.78,1.24,Poor,Low,5.87,1.59,No,Neutral,No +USER-01706,55,Male,11.58,3.22,3.57,13.77,Poor,Medium,8.42,2.32,No,Positive,No +USER-01707,47,Female,7.6,1.54,0.29,3.14,Poor,High,6.21,2.17,No,Negative,No +USER-01708,62,Male,4.62,7.27,3.94,5.67,Poor,High,7.13,8.55,Yes,Positive,Yes +USER-01709,34,Female,11.99,5.53,2.47,6.07,Good,High,8.78,1.42,Yes,Positive,No +USER-01710,23,Female,8.04,2.63,3.42,5.21,Fair,High,8.32,4.69,Yes,Positive,No +USER-01711,65,Other,1.11,4.66,2.23,4.64,Good,Medium,8.55,0.03,No,Neutral,Yes +USER-01712,55,Other,11.85,7.92,2.54,7.56,Fair,Medium,8.93,3.86,No,Negative,No +USER-01713,26,Other,10.32,7.21,4.16,13.37,Good,Medium,4.48,5.83,No,Positive,No +USER-01714,54,Other,1.94,1.61,1.88,2.0,Excellent,Low,5.92,4.47,Yes,Neutral,Yes +USER-01715,62,Other,3.08,6.67,0.32,2.55,Poor,High,6.98,1.72,No,Positive,No +USER-01716,62,Other,7.37,6.76,0.79,10.45,Excellent,High,7.05,3.65,No,Positive,No +USER-01717,34,Female,7.53,4.46,0.38,14.26,Excellent,Medium,5.42,5.61,No,Negative,Yes +USER-01718,29,Male,3.19,3.53,1.25,4.8,Fair,High,8.19,7.86,No,Neutral,Yes +USER-01719,59,Female,4.84,1.77,1.54,3.77,Excellent,Low,5.73,3.08,No,Positive,Yes +USER-01720,51,Other,4.53,5.62,2.56,14.55,Fair,High,7.47,1.97,No,Neutral,No +USER-01721,18,Female,6.43,5.8,4.57,11.1,Good,High,8.63,8.48,No,Neutral,No +USER-01722,60,Other,7.58,7.59,1.99,9.94,Fair,Medium,8.72,0.66,Yes,Negative,No +USER-01723,49,Male,11.78,7.57,1.49,3.18,Excellent,High,4.52,7.68,Yes,Negative,No +USER-01724,24,Female,1.82,0.28,1.0,6.97,Good,High,6.24,2.34,Yes,Neutral,Yes +USER-01725,24,Other,1.3,3.96,4.7,4.96,Excellent,High,6.5,1.81,No,Negative,No +USER-01726,59,Male,1.59,3.78,2.04,1.66,Poor,Low,7.3,0.7,Yes,Neutral,No +USER-01727,32,Male,8.6,2.89,0.59,12.55,Excellent,High,4.35,7.97,Yes,Positive,No +USER-01728,32,Female,6.08,1.5,4.94,12.72,Poor,Medium,5.45,9.86,Yes,Neutral,No +USER-01729,30,Male,10.46,5.66,1.23,4.74,Excellent,High,5.61,0.63,No,Neutral,No +USER-01730,28,Male,4.47,2.32,2.98,3.05,Good,High,8.17,7.96,Yes,Neutral,Yes +USER-01731,34,Female,6.37,6.03,4.74,14.54,Good,Medium,8.55,4.05,Yes,Negative,No +USER-01732,22,Other,4.74,0.14,2.13,13.93,Excellent,Low,4.31,2.99,Yes,Neutral,No +USER-01733,28,Other,9.81,1.22,0.22,4.4,Excellent,High,5.23,0.17,Yes,Positive,Yes +USER-01734,42,Male,10.54,6.37,0.88,2.38,Excellent,High,4.68,3.67,No,Positive,Yes +USER-01735,52,Female,1.25,3.5,1.77,12.08,Excellent,Low,5.14,7.06,Yes,Neutral,No +USER-01736,38,Other,9.95,4.2,4.86,3.95,Excellent,Medium,8.65,3.96,Yes,Neutral,No +USER-01737,49,Other,8.72,6.12,3.98,5.55,Excellent,Medium,4.08,0.4,No,Neutral,Yes +USER-01738,23,Other,8.72,2.19,1.64,2.78,Fair,Low,4.04,7.87,No,Negative,Yes +USER-01739,21,Female,2.51,5.64,0.31,14.18,Excellent,Low,5.49,3.86,No,Neutral,No +USER-01740,55,Female,6.65,6.55,4.19,7.06,Fair,High,6.62,6.26,No,Positive,Yes +USER-01741,64,Female,1.38,3.09,0.7,14.59,Poor,Low,8.09,2.32,No,Negative,No +USER-01742,65,Other,5.86,3.53,2.09,8.53,Good,Low,7.91,9.86,Yes,Neutral,No +USER-01743,58,Other,6.12,6.87,1.07,9.37,Fair,High,4.74,0.52,Yes,Negative,No +USER-01744,48,Other,9.53,1.48,0.38,9.11,Poor,Low,8.01,6.85,No,Positive,Yes +USER-01745,64,Other,3.79,4.12,1.17,3.59,Poor,High,5.94,5.48,No,Positive,Yes +USER-01746,54,Other,6.51,3.39,4.16,13.57,Excellent,Medium,8.08,5.35,Yes,Negative,No +USER-01747,42,Male,4.85,6.76,4.68,1.37,Excellent,High,7.26,8.17,No,Negative,Yes +USER-01748,39,Female,2.98,5.82,2.7,7.42,Poor,Low,6.24,3.62,No,Negative,Yes +USER-01749,61,Male,3.92,0.4,2.28,12.98,Excellent,Medium,4.44,7.84,Yes,Neutral,No +USER-01750,57,Male,1.43,7.28,1.0,9.39,Good,Low,6.23,5.01,Yes,Positive,No +USER-01751,33,Female,8.09,6.79,3.53,2.85,Good,High,4.02,3.95,No,Negative,Yes +USER-01752,61,Female,9.67,7.83,3.97,3.9,Fair,High,7.84,9.55,Yes,Positive,No +USER-01753,37,Male,4.16,6.93,0.31,7.48,Excellent,High,4.58,8.57,No,Negative,No +USER-01754,52,Other,3.61,3.98,3.91,9.55,Poor,High,6.15,2.28,No,Positive,Yes +USER-01755,31,Female,6.43,2.09,1.55,6.81,Excellent,High,7.9,3.02,Yes,Negative,Yes +USER-01756,59,Male,2.97,1.36,1.7,7.42,Excellent,High,6.87,6.18,No,Positive,No +USER-01757,35,Female,3.08,5.91,0.33,8.28,Fair,Medium,5.86,3.46,No,Negative,Yes +USER-01758,60,Male,11.39,1.67,3.03,6.25,Fair,High,5.1,9.63,Yes,Neutral,No +USER-01759,55,Female,7.65,3.35,2.36,10.73,Excellent,High,7.86,2.15,Yes,Neutral,No +USER-01760,44,Other,10.46,4.76,0.44,3.93,Good,Medium,7.9,5.58,Yes,Neutral,No +USER-01761,52,Female,9.77,7.01,4.23,14.07,Good,High,4.82,4.33,No,Positive,Yes +USER-01762,52,Other,2.15,1.83,1.38,12.82,Excellent,Medium,5.29,1.03,Yes,Neutral,Yes +USER-01763,60,Male,2.99,6.14,3.84,14.17,Good,Medium,4.67,3.6,No,Neutral,Yes +USER-01764,65,Male,5.92,4.38,2.17,3.73,Fair,Low,6.3,7.44,Yes,Negative,No +USER-01765,35,Male,5.11,2.86,3.88,1.84,Excellent,High,5.59,3.76,No,Neutral,No +USER-01766,47,Female,5.05,2.01,1.83,7.02,Good,Low,4.08,1.96,Yes,Negative,Yes +USER-01767,43,Male,7.47,1.19,1.76,10.54,Poor,Medium,8.14,9.74,No,Neutral,No +USER-01768,24,Female,4.94,2.72,0.38,9.96,Good,Medium,5.2,3.09,Yes,Negative,No +USER-01769,32,Male,5.17,6.93,4.76,7.59,Fair,Medium,4.01,2.82,No,Negative,No +USER-01770,30,Male,1.72,5.5,0.4,4.65,Excellent,High,4.35,5.66,No,Positive,Yes +USER-01771,56,Other,6.22,7.71,1.35,13.82,Excellent,High,8.25,3.52,No,Neutral,No +USER-01772,36,Other,10.62,7.37,0.89,5.98,Good,Medium,8.03,0.31,No,Positive,Yes +USER-01773,39,Other,2.48,0.59,1.95,9.98,Good,Medium,4.84,8.25,No,Positive,Yes +USER-01774,48,Female,1.08,3.0,4.2,2.83,Poor,Medium,4.42,3.99,Yes,Negative,Yes +USER-01775,63,Female,4.38,0.78,4.79,4.07,Good,Low,8.34,7.61,Yes,Negative,No +USER-01776,43,Other,3.57,0.6,3.81,14.19,Poor,Medium,8.81,2.06,Yes,Neutral,No +USER-01777,61,Male,8.05,6.04,4.59,10.42,Fair,Medium,7.57,3.98,No,Positive,No +USER-01778,40,Male,9.05,4.81,0.1,1.08,Good,High,4.78,6.76,Yes,Neutral,Yes +USER-01779,58,Male,7.57,3.91,0.21,3.8,Poor,Low,4.38,6.58,No,Positive,Yes +USER-01780,24,Other,7.58,6.81,0.26,4.37,Good,High,6.85,8.73,Yes,Neutral,Yes +USER-01781,63,Male,7.43,7.99,3.98,2.97,Fair,Low,4.98,8.79,No,Positive,No +USER-01782,65,Female,10.65,1.3,3.18,9.39,Good,Low,4.02,2.05,Yes,Positive,No +USER-01783,56,Other,2.2,6.22,1.0,10.84,Good,Medium,4.05,5.72,Yes,Neutral,No +USER-01784,35,Other,7.79,2.42,4.72,11.26,Excellent,High,8.07,9.09,Yes,Negative,Yes +USER-01785,63,Male,4.54,3.86,1.99,5.15,Fair,Medium,8.06,4.09,Yes,Negative,No +USER-01786,43,Other,5.82,4.56,4.6,14.55,Poor,Low,4.24,7.56,Yes,Negative,Yes +USER-01787,40,Female,10.19,5.69,0.46,1.15,Fair,Low,4.56,0.89,No,Positive,No +USER-01788,35,Male,8.51,3.26,1.59,8.14,Fair,Low,8.32,2.24,No,Neutral,No +USER-01789,46,Other,8.54,7.66,3.11,7.87,Excellent,High,6.93,6.67,Yes,Positive,Yes +USER-01790,48,Female,10.57,6.8,4.21,4.7,Good,Medium,6.35,8.74,Yes,Negative,No +USER-01791,20,Male,1.53,3.96,3.56,10.63,Good,Low,6.66,9.4,No,Positive,Yes +USER-01792,39,Other,4.53,0.67,2.23,13.37,Fair,Low,7.48,9.55,Yes,Neutral,No +USER-01793,20,Male,10.91,2.75,1.37,4.22,Poor,High,7.24,0.65,Yes,Neutral,No +USER-01794,47,Female,6.22,6.96,3.45,3.26,Fair,Medium,8.37,6.08,No,Negative,No +USER-01795,38,Other,9.95,2.69,4.49,5.1,Poor,Low,5.61,9.37,Yes,Negative,No +USER-01796,52,Other,9.04,4.24,1.52,3.36,Excellent,High,7.07,9.27,Yes,Positive,No +USER-01797,48,Other,8.91,3.38,4.63,7.62,Poor,High,5.93,9.11,No,Negative,No +USER-01798,27,Female,3.6,1.31,0.32,6.44,Good,High,8.06,9.74,Yes,Negative,No +USER-01799,58,Other,4.34,2.88,2.29,10.75,Excellent,Medium,6.08,4.28,Yes,Positive,No +USER-01800,54,Female,3.2,6.98,1.67,5.69,Fair,Low,8.99,9.13,No,Neutral,No +USER-01801,44,Other,3.02,3.43,0.65,14.51,Fair,Low,8.42,5.92,Yes,Negative,Yes +USER-01802,28,Female,1.1,7.2,4.15,12.84,Fair,Low,6.85,0.01,No,Positive,No +USER-01803,21,Female,4.0,3.65,1.24,14.83,Good,Low,8.53,4.35,No,Neutral,No +USER-01804,45,Female,3.16,6.76,1.16,7.26,Fair,Medium,8.73,2.36,Yes,Neutral,Yes +USER-01805,20,Other,11.81,7.54,2.56,10.97,Fair,Medium,8.48,1.18,No,Positive,No +USER-01806,53,Other,7.12,7.32,4.19,4.45,Excellent,Medium,6.2,0.58,Yes,Negative,No +USER-01807,42,Other,1.05,4.51,3.75,11.67,Good,Low,6.75,1.62,No,Neutral,No +USER-01808,43,Other,4.24,6.99,3.74,1.48,Excellent,High,8.88,9.81,Yes,Positive,No +USER-01809,31,Male,8.47,1.09,0.66,9.21,Good,Medium,6.1,3.13,No,Positive,No +USER-01810,39,Other,3.64,2.58,3.17,13.7,Good,Medium,4.43,4.47,Yes,Neutral,Yes +USER-01811,26,Female,10.46,5.32,3.24,11.79,Excellent,Low,4.46,1.84,Yes,Positive,Yes +USER-01812,22,Female,5.28,2.67,1.9,3.42,Good,High,8.01,4.67,Yes,Neutral,No +USER-01813,32,Other,5.21,3.76,1.37,2.83,Poor,High,4.4,6.7,No,Neutral,No +USER-01814,26,Female,7.16,1.55,4.34,14.78,Fair,Low,4.83,8.14,No,Negative,No +USER-01815,60,Female,9.5,5.69,3.4,7.32,Good,Medium,7.88,3.65,Yes,Positive,No +USER-01816,55,Other,4.99,6.95,3.07,8.05,Fair,High,5.43,6.71,Yes,Positive,No +USER-01817,50,Other,10.66,2.43,3.61,2.39,Good,Medium,5.83,3.7,Yes,Positive,Yes +USER-01818,65,Female,8.75,0.78,1.51,13.52,Excellent,Medium,7.48,7.51,No,Positive,No +USER-01819,34,Female,5.96,4.17,0.03,12.18,Poor,High,8.82,5.55,No,Neutral,Yes +USER-01820,37,Other,3.97,3.19,4.85,2.5,Fair,Low,8.98,5.34,Yes,Positive,Yes +USER-01821,46,Other,10.17,6.52,4.42,6.07,Poor,High,8.34,3.0,No,Positive,Yes +USER-01822,35,Female,10.27,2.05,4.13,7.02,Poor,High,8.13,4.89,Yes,Neutral,No +USER-01823,51,Male,11.17,1.94,2.7,10.74,Good,Low,5.81,3.47,No,Positive,Yes +USER-01824,59,Male,9.59,2.12,1.85,10.62,Poor,Medium,6.19,2.8,No,Neutral,Yes +USER-01825,35,Male,9.82,2.04,1.78,5.53,Excellent,Medium,6.67,5.09,Yes,Negative,No +USER-01826,59,Other,8.3,6.6,2.42,6.95,Poor,Low,7.81,3.89,No,Positive,Yes +USER-01827,61,Male,2.58,6.2,3.54,13.33,Good,Low,7.15,7.46,No,Neutral,No +USER-01828,56,Male,10.42,5.9,2.03,8.46,Good,Low,5.21,6.98,Yes,Positive,No +USER-01829,20,Other,7.06,5.06,1.89,6.94,Poor,Low,6.03,7.34,No,Negative,No +USER-01830,28,Male,10.01,0.49,4.79,2.04,Excellent,Low,8.21,9.75,No,Negative,No +USER-01831,28,Other,10.45,3.2,0.64,6.53,Fair,High,4.14,6.35,Yes,Positive,No +USER-01832,19,Female,5.5,2.13,3.36,11.96,Good,High,8.79,1.75,No,Positive,Yes +USER-01833,25,Other,7.76,3.94,2.76,11.05,Excellent,Low,8.88,3.0,No,Negative,Yes +USER-01834,52,Male,7.76,7.24,2.44,7.48,Fair,High,8.88,6.57,Yes,Neutral,Yes +USER-01835,24,Male,3.37,6.34,0.38,8.6,Fair,Medium,6.09,4.08,Yes,Neutral,Yes +USER-01836,30,Male,5.56,0.36,1.99,1.85,Good,Low,7.78,8.1,Yes,Neutral,No +USER-01837,24,Male,4.29,0.71,0.66,1.29,Good,High,6.66,3.62,No,Positive,Yes +USER-01838,45,Male,1.33,0.89,4.39,4.73,Good,Medium,7.71,6.99,No,Negative,Yes +USER-01839,32,Other,11.61,2.89,4.29,9.68,Excellent,High,8.71,3.93,No,Negative,No +USER-01840,21,Female,9.26,2.24,0.78,6.11,Fair,Low,4.57,9.64,Yes,Neutral,Yes +USER-01841,24,Other,11.19,3.17,4.49,11.61,Poor,Medium,5.37,6.78,No,Neutral,Yes +USER-01842,40,Female,9.77,6.25,4.39,8.13,Excellent,Low,5.96,5.09,No,Neutral,No +USER-01843,64,Male,9.03,4.92,4.39,1.75,Fair,Medium,8.74,5.55,No,Neutral,No +USER-01844,61,Female,11.03,4.23,4.87,13.0,Excellent,Medium,7.77,7.77,Yes,Negative,No +USER-01845,34,Other,1.48,7.34,2.52,7.08,Fair,Low,5.75,5.47,Yes,Neutral,No +USER-01846,46,Male,4.35,5.39,4.27,4.67,Excellent,High,6.7,1.1,Yes,Neutral,No +USER-01847,36,Other,9.71,0.27,1.21,14.07,Excellent,Medium,6.76,2.79,Yes,Positive,Yes +USER-01848,38,Male,7.35,5.52,2.55,5.6,Good,Medium,7.22,3.2,No,Positive,No +USER-01849,34,Other,3.15,2.94,4.76,6.97,Excellent,Medium,4.68,7.58,No,Positive,Yes +USER-01850,28,Other,8.47,2.03,4.61,11.4,Good,Medium,6.02,8.23,Yes,Positive,Yes +USER-01851,58,Male,8.89,0.64,4.28,5.67,Fair,Low,8.98,5.49,Yes,Neutral,Yes +USER-01852,58,Other,11.11,6.91,3.45,6.7,Excellent,Medium,8.16,8.59,Yes,Negative,Yes +USER-01853,57,Male,1.66,2.55,0.19,10.88,Excellent,High,7.17,7.69,Yes,Neutral,Yes +USER-01854,36,Male,4.31,5.63,4.61,10.45,Excellent,High,5.92,1.95,No,Positive,Yes +USER-01855,43,Male,2.83,1.58,0.55,6.92,Good,Low,8.7,0.55,Yes,Negative,No +USER-01856,56,Male,7.94,4.32,0.84,11.17,Fair,High,8.63,7.94,Yes,Positive,No +USER-01857,61,Female,2.76,4.11,3.07,6.44,Poor,Medium,6.94,3.13,Yes,Negative,No +USER-01858,48,Female,10.0,5.19,4.97,12.01,Good,Medium,6.56,5.05,Yes,Neutral,Yes +USER-01859,43,Other,4.02,3.37,1.1,14.73,Excellent,Low,7.03,7.99,Yes,Positive,No +USER-01860,20,Other,2.92,2.23,0.11,2.62,Poor,Low,5.5,5.57,No,Positive,Yes +USER-01861,63,Other,7.25,0.99,4.32,2.01,Good,Low,8.18,0.53,Yes,Negative,Yes +USER-01862,60,Male,3.2,7.73,1.95,3.52,Good,High,7.36,7.74,No,Neutral,Yes +USER-01863,44,Other,2.2,3.07,1.56,6.68,Fair,Medium,8.96,0.3,Yes,Neutral,No +USER-01864,48,Other,1.97,1.28,4.02,14.66,Excellent,High,6.68,3.25,No,Neutral,Yes +USER-01865,26,Male,6.7,0.73,0.57,4.04,Good,Medium,4.3,6.93,Yes,Positive,No +USER-01866,54,Male,5.91,3.77,2.16,6.5,Good,High,5.01,4.16,Yes,Negative,No +USER-01867,20,Male,1.42,3.06,0.85,9.68,Excellent,High,8.16,8.73,No,Neutral,Yes +USER-01868,30,Other,1.49,1.13,3.03,13.39,Excellent,High,7.28,6.1,No,Positive,No +USER-01869,18,Male,7.69,5.16,1.56,1.15,Poor,Medium,4.17,5.77,No,Negative,Yes +USER-01870,24,Female,10.88,0.01,2.45,10.33,Poor,Low,5.85,4.7,No,Positive,Yes +USER-01871,63,Male,11.21,0.6,3.36,2.57,Excellent,Low,7.7,0.54,No,Neutral,Yes +USER-01872,59,Other,4.03,0.53,2.51,7.25,Fair,High,8.98,0.04,No,Neutral,No +USER-01873,49,Other,7.18,1.51,0.23,12.72,Excellent,High,7.21,7.67,No,Negative,Yes +USER-01874,57,Female,2.28,7.44,4.8,4.56,Excellent,Low,5.9,4.26,Yes,Positive,Yes +USER-01875,62,Female,10.86,4.44,4.72,9.47,Fair,Medium,8.68,6.55,Yes,Negative,Yes +USER-01876,45,Male,3.77,0.97,3.23,8.85,Good,Medium,5.7,5.13,Yes,Positive,No +USER-01877,21,Female,4.15,3.24,3.57,4.41,Good,Low,8.81,6.59,No,Positive,No +USER-01878,64,Female,8.29,1.04,4.18,3.43,Excellent,Medium,5.77,2.16,No,Negative,Yes +USER-01879,55,Female,6.42,5.1,2.17,10.08,Good,Medium,4.6,9.89,Yes,Negative,No +USER-01880,26,Female,9.72,6.49,2.15,7.32,Fair,Low,4.58,3.04,Yes,Positive,No +USER-01881,43,Female,2.29,3.61,0.8,10.2,Poor,High,8.98,9.0,Yes,Negative,No +USER-01882,40,Male,6.2,2.62,2.29,4.16,Poor,High,5.81,4.72,No,Neutral,Yes +USER-01883,43,Other,2.61,1.57,1.21,6.09,Good,Medium,4.71,1.13,No,Negative,Yes +USER-01884,35,Male,6.46,1.55,4.63,7.05,Excellent,High,4.94,0.34,No,Negative,No +USER-01885,43,Male,7.94,6.83,0.09,3.77,Poor,Medium,4.95,2.85,No,Negative,No +USER-01886,62,Male,11.89,0.55,2.22,5.53,Fair,Medium,6.69,5.95,Yes,Neutral,No +USER-01887,52,Male,1.91,0.98,0.06,5.78,Fair,High,8.31,4.23,No,Positive,Yes +USER-01888,52,Female,6.24,3.34,2.36,4.32,Excellent,Medium,4.18,5.58,No,Neutral,Yes +USER-01889,20,Other,3.93,5.87,3.16,7.18,Excellent,High,7.59,6.85,Yes,Negative,No +USER-01890,56,Other,10.72,2.7,0.19,11.17,Good,Medium,5.01,3.08,Yes,Negative,No +USER-01891,50,Male,1.66,3.01,3.51,11.92,Poor,Low,6.59,1.83,No,Positive,Yes +USER-01892,65,Male,10.01,3.86,0.05,7.28,Good,Medium,5.33,0.36,Yes,Positive,No +USER-01893,55,Male,6.81,5.39,0.15,8.32,Fair,Medium,5.79,5.74,No,Positive,Yes +USER-01894,54,Male,1.5,2.67,4.34,4.7,Fair,High,5.69,2.29,No,Neutral,Yes +USER-01895,45,Other,8.1,5.39,0.51,14.35,Fair,Low,4.37,4.31,Yes,Neutral,No +USER-01896,62,Female,5.72,5.79,4.89,4.41,Excellent,Medium,7.9,2.05,No,Neutral,Yes +USER-01897,53,Other,4.97,2.84,3.18,6.45,Excellent,Low,4.42,7.45,No,Neutral,No +USER-01898,43,Other,11.17,4.14,0.1,5.09,Fair,High,5.14,7.36,No,Negative,Yes +USER-01899,24,Female,5.1,2.84,2.66,3.45,Excellent,Medium,6.07,6.56,No,Positive,No +USER-01900,18,Female,11.94,6.36,4.43,2.58,Fair,Medium,8.19,8.94,No,Positive,Yes +USER-01901,28,Other,8.49,4.75,3.05,4.38,Fair,Low,4.67,3.5,Yes,Neutral,No +USER-01902,48,Other,4.09,2.58,4.78,12.88,Fair,Medium,5.89,5.19,No,Positive,No +USER-01903,26,Other,6.46,5.98,0.36,13.17,Fair,Medium,5.61,7.19,No,Neutral,Yes +USER-01904,37,Female,7.11,0.75,3.55,8.23,Excellent,High,5.06,5.06,Yes,Positive,No +USER-01905,62,Other,10.97,4.61,4.98,5.38,Fair,High,6.17,6.18,Yes,Positive,No +USER-01906,37,Female,10.16,4.28,2.52,11.55,Excellent,Low,4.46,5.81,No,Negative,No +USER-01907,52,Female,5.77,6.93,2.76,4.68,Fair,Low,7.01,2.19,No,Neutral,No +USER-01908,54,Other,8.25,0.76,3.76,12.59,Fair,Low,7.9,6.36,Yes,Negative,Yes +USER-01909,37,Female,6.84,5.11,4.67,2.69,Good,High,7.51,7.91,No,Neutral,Yes +USER-01910,65,Female,6.66,5.38,3.13,13.66,Good,Low,8.15,1.85,No,Negative,Yes +USER-01911,62,Other,10.38,5.72,2.04,11.67,Good,Low,6.24,5.21,Yes,Positive,Yes +USER-01912,30,Female,10.8,0.06,4.73,7.52,Poor,High,4.63,7.29,No,Negative,Yes +USER-01913,41,Female,4.93,3.79,1.38,9.89,Fair,Medium,4.25,5.63,No,Positive,Yes +USER-01914,28,Other,2.95,4.24,2.15,12.1,Excellent,High,4.77,8.37,Yes,Positive,No +USER-01915,39,Female,9.26,4.04,0.78,6.07,Fair,High,4.31,9.14,Yes,Neutral,Yes +USER-01916,54,Other,8.72,4.27,2.12,12.04,Good,Medium,8.38,6.23,No,Negative,No +USER-01917,55,Female,10.9,6.55,1.5,9.33,Good,Low,4.14,9.76,Yes,Positive,No +USER-01918,37,Male,11.42,3.9,2.3,10.18,Good,High,5.43,3.67,No,Neutral,No +USER-01919,65,Other,9.28,7.16,2.7,6.8,Good,High,5.1,4.71,No,Positive,No +USER-01920,33,Female,8.75,1.56,0.92,8.96,Excellent,Low,5.52,4.09,Yes,Neutral,No +USER-01921,41,Female,2.61,1.36,3.39,11.49,Fair,Low,8.5,7.27,No,Positive,Yes +USER-01922,61,Female,10.8,2.62,0.9,3.66,Excellent,Low,6.6,1.46,Yes,Positive,Yes +USER-01923,20,Female,4.48,5.15,0.28,9.62,Good,Low,6.23,7.14,Yes,Neutral,No +USER-01924,42,Other,10.7,4.62,3.5,9.37,Poor,Low,6.91,1.19,Yes,Negative,Yes +USER-01925,58,Male,4.94,6.46,4.08,14.54,Poor,Medium,8.1,1.67,Yes,Negative,Yes +USER-01926,46,Male,10.6,2.23,1.37,13.08,Poor,High,5.84,0.59,No,Neutral,No +USER-01927,39,Female,1.6,7.68,4.34,4.26,Excellent,Low,9.0,6.19,Yes,Positive,Yes +USER-01928,44,Other,11.37,5.75,0.82,3.8,Excellent,High,7.01,0.48,No,Negative,Yes +USER-01929,26,Female,6.78,4.75,4.2,13.0,Excellent,Medium,5.53,5.89,No,Negative,Yes +USER-01930,26,Male,11.45,7.9,0.09,11.0,Good,High,8.22,2.91,Yes,Positive,No +USER-01931,59,Female,7.13,3.87,2.95,11.25,Poor,Medium,6.53,6.41,Yes,Negative,No +USER-01932,52,Female,7.75,5.95,3.65,7.82,Fair,High,5.9,3.8,Yes,Negative,Yes +USER-01933,43,Other,9.01,2.08,0.81,6.16,Excellent,Medium,5.6,3.72,Yes,Negative,Yes +USER-01934,57,Male,3.46,4.04,3.34,2.7,Poor,Low,8.31,8.09,Yes,Positive,No +USER-01935,31,Female,8.76,4.18,0.41,13.85,Poor,Low,5.88,9.01,Yes,Negative,No +USER-01936,40,Female,3.09,7.39,1.95,11.87,Good,Medium,4.2,7.06,No,Negative,No +USER-01937,53,Male,8.64,6.39,4.75,6.41,Poor,Medium,6.55,5.87,Yes,Positive,Yes +USER-01938,32,Other,8.3,4.53,4.57,11.73,Poor,Low,8.2,3.69,No,Positive,Yes +USER-01939,38,Male,6.18,4.88,2.6,11.99,Poor,High,5.32,3.84,No,Positive,Yes +USER-01940,48,Male,6.22,5.44,2.5,5.95,Excellent,Low,4.13,0.63,No,Negative,Yes +USER-01941,44,Female,9.36,0.81,3.32,8.39,Poor,Low,8.69,5.3,Yes,Neutral,No +USER-01942,60,Female,9.48,3.55,0.03,11.22,Poor,Medium,8.51,7.73,Yes,Neutral,Yes +USER-01943,19,Other,10.65,0.58,0.69,6.55,Poor,High,5.29,0.08,No,Positive,No +USER-01944,62,Male,8.03,1.45,2.78,7.12,Excellent,Medium,6.08,0.68,No,Negative,Yes +USER-01945,47,Male,8.8,5.17,3.37,8.1,Fair,Low,4.39,4.01,Yes,Positive,Yes +USER-01946,37,Male,1.32,1.56,0.42,10.81,Good,Medium,6.53,4.93,No,Positive,Yes +USER-01947,41,Other,1.5,4.36,0.45,7.84,Excellent,Medium,5.08,8.9,No,Negative,Yes +USER-01948,43,Female,4.5,2.21,1.38,1.59,Fair,High,7.53,4.42,No,Positive,No +USER-01949,55,Male,10.39,4.47,2.5,15.0,Good,High,7.21,6.71,Yes,Positive,Yes +USER-01950,50,Male,4.28,0.48,1.51,4.06,Poor,Medium,6.74,7.79,No,Negative,No +USER-01951,61,Other,11.05,0.85,1.19,10.86,Good,Low,8.49,2.04,Yes,Positive,Yes +USER-01952,48,Male,1.76,4.71,1.56,8.64,Good,Medium,5.32,7.61,No,Positive,Yes +USER-01953,27,Other,4.62,1.99,0.19,11.04,Fair,Low,5.8,3.03,No,Positive,No +USER-01954,61,Female,6.12,4.01,0.48,5.55,Excellent,Low,5.3,3.51,Yes,Positive,No +USER-01955,32,Other,11.1,4.48,2.45,14.32,Excellent,Low,7.97,7.57,No,Positive,Yes +USER-01956,49,Other,11.15,7.04,3.26,14.03,Poor,Low,6.69,3.82,No,Negative,Yes +USER-01957,58,Female,1.89,6.23,4.42,14.3,Fair,Low,5.73,2.92,Yes,Negative,No +USER-01958,32,Other,5.2,6.06,3.44,13.39,Fair,Medium,5.85,9.8,No,Negative,Yes +USER-01959,39,Other,7.54,2.05,1.87,10.49,Poor,Medium,6.57,6.07,No,Positive,No +USER-01960,29,Male,5.92,3.5,3.21,5.97,Fair,Low,7.31,8.6,No,Neutral,Yes +USER-01961,56,Female,9.07,5.54,1.67,2.8,Poor,High,8.61,7.12,Yes,Negative,Yes +USER-01962,65,Other,10.88,5.65,3.99,9.51,Poor,Medium,7.84,7.27,Yes,Negative,No +USER-01963,58,Male,2.26,7.26,4.98,10.8,Good,Medium,4.42,3.21,Yes,Neutral,No +USER-01964,46,Female,11.95,1.24,2.84,3.69,Fair,Low,4.68,8.39,Yes,Neutral,Yes +USER-01965,41,Female,7.43,3.91,3.92,8.41,Fair,Medium,4.57,4.9,Yes,Negative,No +USER-01966,37,Male,5.26,2.41,0.9,7.62,Good,Low,4.83,3.9,No,Positive,Yes +USER-01967,34,Male,4.74,6.62,0.08,6.94,Fair,High,6.52,7.98,No,Negative,Yes +USER-01968,29,Male,7.7,6.4,0.42,11.21,Excellent,Medium,6.01,4.13,Yes,Negative,Yes +USER-01969,56,Other,5.92,2.37,2.81,4.14,Poor,Low,7.38,6.31,No,Neutral,No +USER-01970,55,Other,11.28,0.55,3.78,10.7,Good,Low,6.16,0.49,Yes,Positive,Yes +USER-01971,55,Other,9.47,6.14,4.74,10.06,Poor,High,7.91,3.27,No,Positive,Yes +USER-01972,32,Female,6.55,5.53,4.99,13.66,Poor,Low,6.93,8.79,No,Positive,No +USER-01973,44,Other,4.19,5.09,0.18,12.47,Excellent,Medium,8.15,4.76,Yes,Neutral,No +USER-01974,49,Other,7.59,1.31,2.58,12.76,Fair,Low,5.51,6.3,Yes,Positive,Yes +USER-01975,44,Female,3.02,2.07,0.02,5.19,Good,Low,8.81,2.09,No,Negative,Yes +USER-01976,39,Other,9.7,4.83,0.47,4.06,Good,Medium,6.16,7.82,No,Positive,Yes +USER-01977,38,Male,7.83,5.58,2.5,3.07,Good,High,6.94,7.63,Yes,Positive,No +USER-01978,22,Other,1.94,5.88,3.53,10.39,Excellent,Low,4.28,1.62,Yes,Negative,Yes +USER-01979,62,Female,9.62,3.95,0.08,1.13,Excellent,Medium,4.68,9.78,Yes,Neutral,No +USER-01980,34,Male,2.22,0.99,3.27,4.24,Good,Medium,6.15,5.3,No,Negative,Yes +USER-01981,43,Other,7.48,2.53,2.24,4.18,Poor,Low,6.51,0.94,Yes,Negative,Yes +USER-01982,21,Female,5.24,2.59,0.95,14.45,Excellent,Low,8.29,0.04,Yes,Negative,Yes +USER-01983,34,Male,4.88,7.59,4.33,1.89,Good,High,6.3,4.77,No,Positive,Yes +USER-01984,26,Female,2.38,6.84,4.77,3.77,Excellent,High,6.65,0.2,No,Neutral,Yes +USER-01985,26,Female,10.6,3.32,2.45,1.55,Excellent,Low,6.61,7.45,No,Neutral,No +USER-01986,61,Male,5.05,6.72,1.37,10.94,Poor,Medium,8.63,2.76,No,Positive,Yes +USER-01987,20,Female,7.52,7.53,4.54,10.03,Fair,High,5.15,5.06,No,Positive,No +USER-01988,43,Female,5.42,6.03,2.86,12.01,Excellent,Medium,5.23,9.9,Yes,Positive,No +USER-01989,55,Male,1.54,2.85,2.5,13.81,Poor,Medium,8.49,3.25,No,Negative,Yes +USER-01990,47,Other,2.19,3.96,2.13,7.55,Fair,Low,7.85,1.67,Yes,Positive,No +USER-01991,54,Male,7.12,0.86,2.28,1.81,Excellent,High,4.41,6.7,Yes,Neutral,Yes +USER-01992,59,Female,3.94,4.04,0.18,6.72,Fair,Medium,6.71,4.88,No,Negative,Yes +USER-01993,34,Female,3.74,6.72,3.78,3.42,Excellent,High,8.14,7.6,Yes,Neutral,Yes +USER-01994,37,Female,5.83,2.85,3.8,14.9,Fair,High,5.66,1.01,Yes,Neutral,Yes +USER-01995,33,Female,8.33,2.33,0.52,5.7,Excellent,High,6.67,8.91,No,Positive,No +USER-01996,44,Female,11.2,2.76,3.66,8.6,Fair,Medium,5.34,5.6,Yes,Negative,No +USER-01997,42,Female,10.78,5.11,0.64,9.65,Good,High,6.72,9.8,No,Neutral,No +USER-01998,57,Male,11.77,5.82,3.47,1.86,Fair,Low,4.83,2.61,Yes,Positive,No +USER-01999,45,Other,5.76,6.38,4.78,4.68,Poor,Medium,5.39,1.76,Yes,Neutral,No +USER-02000,44,Other,6.77,4.51,2.48,8.13,Poor,Medium,4.91,2.5,No,Negative,Yes +USER-02001,64,Female,3.06,4.99,4.56,9.98,Excellent,High,8.05,0.28,Yes,Negative,Yes +USER-02002,60,Male,8.58,5.87,0.69,12.98,Poor,Low,7.37,1.69,No,Neutral,No +USER-02003,48,Female,1.31,4.35,4.9,12.73,Good,Low,5.73,2.93,Yes,Neutral,No +USER-02004,22,Male,10.87,7.35,0.52,9.19,Good,Medium,8.28,9.09,No,Negative,No +USER-02005,37,Female,8.76,3.27,3.35,6.41,Poor,Medium,8.33,1.07,No,Negative,Yes +USER-02006,44,Female,4.49,0.05,0.95,6.25,Poor,High,4.48,1.47,No,Negative,Yes +USER-02007,50,Female,10.12,6.0,4.02,10.45,Good,Low,5.94,4.37,Yes,Neutral,Yes +USER-02008,59,Other,10.8,2.47,4.94,12.92,Excellent,High,5.9,7.72,No,Neutral,No +USER-02009,33,Male,4.53,7.77,4.89,8.49,Poor,Medium,5.65,6.45,Yes,Positive,Yes +USER-02010,25,Other,3.82,3.71,3.61,6.57,Poor,Low,4.78,2.29,Yes,Negative,No +USER-02011,42,Female,3.79,5.4,2.62,14.12,Fair,Low,5.78,3.07,Yes,Negative,Yes +USER-02012,50,Female,5.9,2.53,3.75,6.74,Poor,Low,5.27,1.24,Yes,Negative,No +USER-02013,39,Male,11.29,1.32,4.21,12.05,Poor,Medium,8.26,4.67,No,Neutral,Yes +USER-02014,41,Male,8.59,6.77,3.25,2.59,Poor,High,5.84,8.61,No,Neutral,No +USER-02015,43,Male,1.55,6.28,4.45,5.14,Poor,Medium,4.78,6.2,No,Negative,No +USER-02016,43,Other,8.05,3.97,2.21,9.56,Poor,High,6.79,8.37,Yes,Negative,No +USER-02017,39,Female,8.03,1.01,2.15,11.51,Poor,Low,7.2,4.84,Yes,Positive,No +USER-02018,47,Male,8.39,6.19,1.95,6.21,Good,Low,6.84,7.26,Yes,Negative,No +USER-02019,24,Other,4.96,1.82,2.83,11.92,Excellent,Low,6.94,8.99,No,Negative,No +USER-02020,38,Female,8.3,6.87,2.93,3.96,Fair,Low,6.54,8.56,Yes,Positive,No +USER-02021,53,Other,9.95,0.53,3.7,8.91,Poor,High,8.09,8.27,No,Neutral,No +USER-02022,55,Female,11.8,4.9,0.85,3.16,Poor,Low,4.77,4.34,No,Neutral,No +USER-02023,27,Female,2.72,0.24,2.94,12.07,Excellent,Low,6.66,1.83,No,Positive,No +USER-02024,29,Female,4.94,5.86,3.94,9.33,Poor,Medium,7.78,3.84,No,Negative,Yes +USER-02025,45,Female,1.4,2.01,3.45,14.24,Poor,High,7.02,6.09,Yes,Neutral,No +USER-02026,31,Male,8.51,7.04,1.58,13.99,Fair,High,6.03,8.0,Yes,Positive,Yes +USER-02027,49,Male,6.03,4.39,0.32,5.26,Fair,Medium,4.19,8.77,Yes,Positive,Yes +USER-02028,44,Female,8.27,5.0,4.44,14.94,Fair,High,7.78,2.4,Yes,Positive,Yes +USER-02029,42,Female,9.72,3.13,2.95,7.52,Fair,Low,4.35,6.16,Yes,Positive,Yes +USER-02030,59,Female,4.45,7.85,1.54,14.95,Good,High,8.59,7.01,Yes,Negative,Yes +USER-02031,55,Male,7.49,2.32,1.42,5.09,Poor,Medium,4.71,8.37,No,Neutral,No +USER-02032,49,Male,9.72,7.82,0.18,13.28,Excellent,Medium,4.44,0.66,No,Neutral,No +USER-02033,30,Male,7.02,7.44,4.98,1.14,Good,Medium,4.14,6.21,Yes,Negative,No +USER-02034,43,Male,1.96,6.54,0.31,10.69,Fair,High,8.85,2.96,No,Negative,Yes +USER-02035,56,Other,2.19,0.45,0.72,8.36,Good,Medium,4.25,7.71,Yes,Neutral,Yes +USER-02036,57,Female,2.26,4.9,2.5,8.9,Excellent,Low,8.02,4.05,Yes,Negative,Yes +USER-02037,64,Other,9.29,1.65,4.12,13.11,Fair,Low,5.54,6.85,No,Neutral,No +USER-02038,51,Male,10.13,2.2,4.75,10.02,Fair,Low,5.66,6.44,Yes,Positive,Yes +USER-02039,52,Female,8.19,6.99,2.13,5.32,Excellent,High,8.66,4.13,No,Neutral,No +USER-02040,36,Other,9.64,3.23,4.32,14.5,Poor,Low,8.58,9.2,Yes,Positive,No +USER-02041,31,Female,5.07,3.17,4.32,4.78,Excellent,Medium,5.14,5.31,Yes,Neutral,No +USER-02042,56,Other,11.78,4.32,0.63,9.25,Fair,Low,5.27,1.65,Yes,Negative,Yes +USER-02043,36,Other,9.34,5.41,1.32,2.0,Good,High,7.28,6.72,Yes,Negative,No +USER-02044,34,Male,8.86,6.57,2.19,6.71,Good,High,5.45,0.72,No,Positive,No +USER-02045,49,Male,1.6,3.84,0.96,3.91,Good,Low,4.89,9.82,No,Negative,No +USER-02046,19,Other,8.52,5.15,4.26,1.36,Fair,High,6.4,4.01,Yes,Neutral,Yes +USER-02047,59,Female,5.11,0.9,2.96,1.74,Good,High,8.78,9.48,Yes,Neutral,No +USER-02048,42,Other,10.63,0.95,1.3,12.64,Poor,Low,6.96,8.97,Yes,Positive,Yes +USER-02049,22,Female,8.07,0.95,0.45,2.78,Poor,Medium,5.72,7.66,No,Negative,Yes +USER-02050,35,Female,2.95,2.84,2.64,7.76,Fair,Low,6.88,2.14,No,Negative,No +USER-02051,28,Other,9.47,1.65,3.61,13.53,Poor,Medium,5.48,1.52,Yes,Negative,No +USER-02052,59,Male,6.55,2.73,1.71,11.27,Excellent,Medium,5.31,3.72,No,Negative,Yes +USER-02053,52,Other,1.63,0.84,3.83,3.86,Fair,Medium,7.42,2.99,No,Negative,No +USER-02054,19,Female,2.37,1.08,3.35,9.56,Fair,High,6.22,8.17,Yes,Neutral,No +USER-02055,59,Male,11.02,5.98,0.91,13.14,Poor,Medium,6.61,9.59,Yes,Positive,Yes +USER-02056,65,Female,8.61,0.49,3.89,11.78,Good,High,4.91,1.92,No,Negative,No +USER-02057,63,Female,4.94,1.76,4.15,7.26,Good,Low,5.54,0.04,No,Negative,Yes +USER-02058,38,Female,2.41,1.06,1.51,14.37,Poor,Low,8.45,6.55,Yes,Negative,No +USER-02059,52,Female,6.41,3.89,1.32,4.49,Fair,High,5.25,0.5,Yes,Positive,No +USER-02060,63,Female,5.25,4.73,3.09,9.64,Fair,Medium,8.48,8.27,Yes,Positive,Yes +USER-02061,27,Female,11.06,2.45,1.97,11.99,Excellent,Low,6.15,8.34,No,Positive,Yes +USER-02062,56,Male,9.7,0.79,0.12,13.9,Poor,Low,4.33,5.0,Yes,Positive,No +USER-02063,53,Female,4.17,1.66,3.81,11.47,Good,High,7.91,6.63,No,Negative,Yes +USER-02064,43,Other,7.64,4.18,1.67,1.03,Good,Low,6.54,0.41,No,Neutral,No +USER-02065,56,Male,7.09,1.43,2.02,6.46,Fair,High,5.51,9.14,Yes,Neutral,Yes +USER-02066,37,Male,6.55,5.68,0.38,5.01,Good,High,8.14,5.91,Yes,Negative,Yes +USER-02067,58,Other,2.38,1.12,3.98,13.69,Excellent,Low,4.41,3.59,No,Neutral,No +USER-02068,60,Other,6.03,6.65,2.4,14.21,Poor,High,7.96,1.82,Yes,Positive,Yes +USER-02069,27,Other,1.38,0.06,1.6,10.55,Poor,Low,8.56,3.26,Yes,Positive,Yes +USER-02070,47,Male,4.89,7.85,4.63,8.62,Good,Low,8.28,5.74,Yes,Positive,No +USER-02071,44,Female,8.68,0.12,2.19,10.31,Poor,High,8.22,6.13,No,Negative,No +USER-02072,53,Other,6.92,0.31,3.06,11.97,Poor,Medium,8.67,0.9,No,Positive,Yes +USER-02073,63,Female,9.47,6.86,3.31,4.86,Fair,Medium,4.16,3.42,No,Positive,No +USER-02074,61,Male,11.01,0.57,4.22,3.1,Fair,High,7.94,4.58,Yes,Positive,Yes +USER-02075,18,Male,2.55,4.53,4.97,7.68,Poor,High,4.76,4.62,Yes,Negative,Yes +USER-02076,25,Other,5.77,4.79,0.28,6.18,Good,Medium,6.73,4.46,No,Negative,Yes +USER-02077,19,Other,10.77,7.8,2.11,8.74,Fair,Low,8.37,2.79,Yes,Positive,Yes +USER-02078,25,Other,5.48,7.86,3.47,12.11,Fair,Medium,6.36,6.87,No,Neutral,No +USER-02079,40,Other,11.31,0.76,2.07,9.2,Fair,High,8.55,3.07,Yes,Negative,Yes +USER-02080,21,Male,2.81,4.94,1.05,12.14,Fair,Low,4.94,8.67,No,Negative,Yes +USER-02081,25,Other,8.81,1.94,4.21,8.54,Good,Low,8.86,3.28,Yes,Negative,Yes +USER-02082,48,Female,3.97,5.34,2.13,6.47,Good,High,6.12,8.78,No,Neutral,Yes +USER-02083,29,Other,7.91,2.46,3.33,14.1,Fair,Medium,7.94,6.93,Yes,Neutral,No +USER-02084,53,Female,11.33,7.6,0.17,9.67,Good,Medium,8.34,8.45,No,Negative,No +USER-02085,21,Male,10.51,6.8,1.93,9.45,Good,Medium,5.44,8.32,Yes,Negative,Yes +USER-02086,21,Female,10.79,3.4,1.91,8.5,Good,High,8.23,8.92,No,Negative,Yes +USER-02087,54,Male,6.05,2.63,1.66,8.21,Poor,Low,4.38,1.61,Yes,Negative,Yes +USER-02088,18,Other,1.53,2.85,1.12,10.48,Poor,High,6.56,3.26,No,Negative,No +USER-02089,65,Female,10.65,4.08,1.42,6.61,Excellent,High,5.88,6.88,No,Negative,No +USER-02090,53,Male,5.86,0.79,2.87,2.79,Poor,Low,7.64,7.17,Yes,Positive,No +USER-02091,35,Female,2.66,6.96,2.87,4.7,Excellent,Medium,4.02,2.99,No,Negative,Yes +USER-02092,29,Female,9.42,5.04,1.74,8.62,Excellent,Medium,5.5,5.23,No,Positive,No +USER-02093,38,Male,2.89,0.94,2.79,13.11,Poor,Medium,7.49,9.87,Yes,Neutral,No +USER-02094,31,Female,6.72,7.89,3.6,13.86,Good,Low,6.45,9.01,Yes,Neutral,Yes +USER-02095,42,Female,7.66,2.45,3.6,2.4,Fair,Medium,5.91,5.89,Yes,Neutral,Yes +USER-02096,59,Male,11.37,4.65,4.17,10.4,Excellent,Low,5.1,5.98,Yes,Positive,Yes +USER-02097,26,Female,9.77,5.12,3.02,7.36,Poor,High,7.57,7.18,Yes,Negative,Yes +USER-02098,42,Female,7.96,1.57,1.75,3.66,Excellent,Medium,7.65,5.67,Yes,Negative,Yes +USER-02099,25,Female,3.79,7.37,1.13,12.79,Good,High,6.91,4.55,No,Positive,No +USER-02100,63,Male,9.49,4.18,4.23,9.11,Fair,Low,5.27,1.36,Yes,Neutral,No +USER-02101,56,Female,3.2,4.76,1.38,10.77,Excellent,High,5.2,9.75,Yes,Negative,Yes +USER-02102,29,Female,4.98,0.61,1.35,14.96,Good,Medium,8.35,2.79,No,Negative,Yes +USER-02103,44,Male,9.24,4.35,1.7,13.45,Poor,Low,7.3,9.76,No,Positive,Yes +USER-02104,47,Male,2.2,2.04,0.96,9.91,Excellent,Low,7.51,4.43,Yes,Positive,Yes +USER-02105,28,Female,5.47,5.04,3.21,14.52,Good,Low,7.94,5.26,No,Neutral,Yes +USER-02106,44,Male,3.06,2.15,4.79,13.32,Good,Low,7.13,7.23,Yes,Positive,Yes +USER-02107,45,Female,5.56,5.28,2.52,3.12,Excellent,Low,7.79,2.71,Yes,Positive,No +USER-02108,54,Female,7.61,2.66,3.85,4.69,Excellent,Low,5.69,3.31,No,Negative,Yes +USER-02109,32,Other,7.83,1.2,2.38,6.54,Poor,Low,8.8,2.98,Yes,Negative,Yes +USER-02110,58,Female,8.32,3.97,2.62,1.15,Excellent,Low,6.55,8.57,Yes,Positive,No +USER-02111,35,Female,11.96,0.76,4.46,2.6,Good,Medium,6.95,8.13,No,Neutral,Yes +USER-02112,43,Other,5.23,7.96,1.77,8.0,Fair,High,7.7,6.82,No,Neutral,Yes +USER-02113,59,Male,7.88,7.79,0.77,3.71,Good,High,4.43,9.0,Yes,Negative,No +USER-02114,65,Male,10.46,3.23,2.37,7.12,Poor,Medium,8.93,2.05,Yes,Neutral,Yes +USER-02115,46,Female,6.95,6.17,0.54,1.36,Poor,High,5.03,2.67,Yes,Negative,Yes +USER-02116,65,Other,4.93,7.06,1.66,9.8,Fair,High,8.67,1.86,Yes,Positive,No +USER-02117,34,Other,11.25,5.01,3.93,6.66,Fair,Medium,6.45,9.7,No,Neutral,Yes +USER-02118,56,Male,5.94,4.58,4.21,4.67,Poor,Medium,5.82,1.77,Yes,Positive,Yes +USER-02119,35,Other,4.05,1.48,4.13,10.06,Good,Medium,5.94,4.82,Yes,Neutral,Yes +USER-02120,46,Female,9.48,1.0,4.67,4.9,Fair,Medium,4.66,2.96,Yes,Positive,No +USER-02121,63,Other,11.83,4.74,0.42,9.8,Fair,Medium,8.33,4.5,Yes,Negative,No +USER-02122,26,Female,9.84,6.65,4.64,7.98,Good,High,4.79,0.44,No,Neutral,Yes +USER-02123,60,Female,7.42,3.75,1.18,13.72,Excellent,Low,5.2,6.47,Yes,Negative,No +USER-02124,46,Female,4.62,2.72,3.55,5.97,Poor,Low,4.63,8.92,Yes,Neutral,Yes +USER-02125,20,Other,5.53,3.64,2.4,11.1,Poor,High,4.16,7.05,Yes,Neutral,Yes +USER-02126,47,Other,11.88,7.15,2.71,11.94,Fair,Medium,5.5,7.41,No,Neutral,No +USER-02127,33,Male,7.77,0.56,1.15,1.44,Poor,Medium,7.12,5.53,No,Negative,Yes +USER-02128,53,Male,10.73,0.12,0.98,6.06,Good,Low,4.21,8.22,No,Neutral,No +USER-02129,18,Male,6.74,5.97,3.71,6.5,Good,Medium,6.21,2.19,No,Positive,No +USER-02130,57,Female,10.07,7.29,1.4,8.64,Poor,Low,7.5,7.46,Yes,Neutral,No +USER-02131,41,Other,7.53,4.86,1.08,4.31,Fair,High,5.81,8.01,No,Neutral,No +USER-02132,19,Male,2.62,3.17,2.46,9.88,Excellent,High,7.28,7.05,No,Negative,No +USER-02133,53,Female,7.82,6.09,3.28,7.16,Poor,Medium,8.84,8.91,Yes,Positive,No +USER-02134,37,Male,3.14,1.69,4.73,4.1,Good,Low,8.49,9.24,Yes,Neutral,No +USER-02135,37,Other,3.03,6.78,3.89,4.08,Poor,Low,5.75,5.62,No,Negative,No +USER-02136,24,Female,10.52,0.04,4.67,3.53,Fair,Low,8.0,5.32,No,Neutral,No +USER-02137,60,Female,8.45,3.92,2.32,1.48,Good,High,8.67,1.27,No,Positive,No +USER-02138,59,Female,9.43,0.96,2.27,12.77,Excellent,Low,7.27,7.58,No,Negative,Yes +USER-02139,29,Other,1.78,1.92,4.48,5.18,Fair,Low,6.62,3.23,No,Negative,No +USER-02140,46,Female,7.17,7.02,2.83,8.32,Fair,Medium,5.52,2.5,Yes,Negative,Yes +USER-02141,50,Other,9.87,7.6,1.07,12.41,Poor,High,6.03,1.12,Yes,Negative,Yes +USER-02142,45,Male,6.92,6.9,2.47,13.56,Excellent,High,4.45,1.44,No,Negative,Yes +USER-02143,41,Other,8.11,6.49,4.02,11.04,Poor,High,8.54,4.71,Yes,Positive,Yes +USER-02144,61,Male,11.12,0.13,2.13,3.67,Poor,Low,5.24,9.36,No,Positive,No +USER-02145,37,Female,5.71,2.49,2.55,2.25,Excellent,High,8.67,6.81,No,Negative,Yes +USER-02146,61,Other,8.28,3.13,4.82,2.02,Fair,High,6.13,9.4,No,Negative,No +USER-02147,35,Male,10.71,7.85,4.28,2.35,Excellent,Medium,8.49,8.1,Yes,Negative,Yes +USER-02148,61,Other,9.16,7.27,4.12,7.09,Poor,Low,5.58,4.4,No,Positive,No +USER-02149,37,Male,8.19,0.27,3.5,12.89,Poor,High,4.55,3.04,Yes,Negative,Yes +USER-02150,44,Male,10.32,1.38,0.81,8.71,Fair,High,7.37,7.68,No,Neutral,Yes +USER-02151,18,Male,2.16,3.88,1.62,7.98,Good,High,6.91,8.69,Yes,Positive,Yes +USER-02152,19,Female,3.82,3.18,0.87,7.62,Good,Medium,8.71,5.91,No,Neutral,No +USER-02153,35,Male,8.04,0.93,4.56,14.91,Fair,High,6.12,4.98,Yes,Neutral,No +USER-02154,51,Female,10.57,3.18,2.55,11.59,Excellent,Low,4.76,5.22,No,Negative,No +USER-02155,37,Male,7.84,3.38,2.24,9.08,Excellent,Medium,4.08,4.74,Yes,Positive,No +USER-02156,32,Female,4.74,3.62,3.35,12.47,Fair,Medium,6.15,5.26,Yes,Positive,No +USER-02157,23,Male,7.55,3.14,0.34,10.59,Poor,High,4.54,1.81,No,Neutral,Yes +USER-02158,20,Other,2.05,5.94,4.71,6.98,Poor,Low,4.08,3.59,No,Neutral,Yes +USER-02159,31,Male,9.31,2.91,2.78,13.44,Fair,Low,8.19,2.3,Yes,Negative,No +USER-02160,31,Female,10.27,1.57,4.28,14.1,Excellent,High,7.4,1.9,No,Positive,No +USER-02161,35,Female,10.37,6.55,3.87,8.38,Poor,High,4.86,0.37,No,Neutral,Yes +USER-02162,18,Female,9.22,0.64,0.29,12.2,Poor,High,6.38,3.07,Yes,Neutral,No +USER-02163,41,Male,3.98,0.59,3.84,5.68,Good,Low,6.01,8.05,Yes,Positive,Yes +USER-02164,18,Female,9.06,5.02,2.5,4.4,Excellent,High,8.04,3.39,Yes,Neutral,No +USER-02165,36,Other,7.2,1.61,1.45,13.97,Poor,Medium,7.44,2.19,No,Positive,Yes +USER-02166,27,Other,1.83,7.92,2.62,7.35,Excellent,Medium,8.93,3.02,Yes,Negative,Yes +USER-02167,23,Other,5.12,7.24,1.82,10.14,Poor,Medium,8.68,9.84,Yes,Neutral,Yes +USER-02168,24,Male,10.06,0.79,3.76,8.54,Fair,Medium,4.44,0.56,No,Neutral,Yes +USER-02169,42,Male,11.44,5.65,4.54,11.38,Poor,Low,6.04,0.74,No,Neutral,Yes +USER-02170,34,Other,3.51,4.7,3.97,11.07,Excellent,High,8.61,7.74,No,Positive,No +USER-02171,48,Other,8.97,3.76,2.89,9.43,Good,Medium,5.84,3.4,No,Neutral,Yes +USER-02172,63,Other,1.43,0.92,4.45,14.48,Good,High,6.15,3.4,Yes,Negative,Yes +USER-02173,65,Male,6.53,1.99,0.84,13.7,Excellent,Medium,7.82,8.85,No,Negative,Yes +USER-02174,65,Male,5.77,0.02,0.46,10.44,Fair,High,7.63,7.96,Yes,Negative,Yes +USER-02175,39,Male,5.89,0.2,3.21,10.48,Fair,High,8.43,1.17,Yes,Positive,Yes +USER-02176,39,Female,5.46,7.48,3.69,7.81,Fair,Low,4.49,2.81,Yes,Positive,Yes +USER-02177,22,Other,8.77,5.9,2.83,4.54,Fair,Low,6.46,9.37,No,Positive,No +USER-02178,30,Female,5.82,5.64,0.86,8.04,Poor,High,4.07,7.31,Yes,Neutral,Yes +USER-02179,47,Female,7.79,1.01,4.1,6.86,Fair,Medium,8.51,5.41,No,Neutral,No +USER-02180,43,Female,3.18,6.55,2.48,5.86,Excellent,High,7.21,6.18,Yes,Positive,Yes +USER-02181,65,Other,2.86,0.98,0.83,7.34,Good,Medium,5.07,9.77,Yes,Neutral,No +USER-02182,59,Male,7.02,2.44,4.25,14.1,Fair,Low,8.47,3.83,No,Neutral,No +USER-02183,29,Other,7.54,7.79,4.18,7.79,Good,High,5.63,0.12,Yes,Neutral,No +USER-02184,32,Female,4.94,3.74,2.05,10.1,Fair,High,8.85,4.64,Yes,Negative,Yes +USER-02185,42,Male,5.56,2.27,3.75,5.13,Excellent,Medium,7.44,6.17,No,Neutral,No +USER-02186,46,Female,11.56,2.36,0.38,3.28,Good,High,8.5,4.15,Yes,Neutral,No +USER-02187,24,Male,5.86,7.45,0.95,12.03,Poor,High,4.75,4.41,Yes,Positive,No +USER-02188,54,Female,7.28,4.66,4.02,8.73,Poor,High,4.97,2.58,No,Negative,No +USER-02189,62,Female,1.4,7.62,4.05,2.28,Poor,High,5.45,9.3,Yes,Positive,Yes +USER-02190,62,Male,11.43,7.99,3.39,3.36,Fair,Low,5.56,6.35,No,Negative,No +USER-02191,52,Female,6.37,0.47,0.35,12.51,Fair,Low,5.61,9.93,No,Neutral,Yes +USER-02192,37,Female,9.45,7.29,1.56,12.5,Excellent,Medium,5.01,7.28,No,Positive,Yes +USER-02193,42,Male,7.0,3.51,0.5,2.64,Excellent,Medium,8.33,5.6,No,Neutral,Yes +USER-02194,53,Female,4.74,3.23,2.74,14.6,Excellent,Medium,6.43,6.88,No,Positive,Yes +USER-02195,24,Male,6.31,5.94,4.13,13.51,Good,Low,4.43,5.7,Yes,Positive,No +USER-02196,49,Female,10.25,1.88,3.42,13.07,Excellent,Medium,5.69,7.08,Yes,Positive,Yes +USER-02197,46,Female,3.51,4.18,4.06,6.71,Excellent,Low,6.39,2.36,Yes,Positive,No +USER-02198,26,Other,7.54,4.48,1.19,13.91,Fair,Medium,6.19,0.07,No,Negative,No +USER-02199,22,Male,10.4,5.86,3.67,8.34,Poor,High,7.83,7.55,Yes,Neutral,No +USER-02200,38,Male,9.96,0.22,2.67,6.4,Good,High,6.45,6.13,Yes,Negative,Yes +USER-02201,58,Male,1.52,2.15,2.36,10.29,Excellent,Medium,4.34,2.98,Yes,Negative,Yes +USER-02202,49,Male,6.24,5.27,0.03,6.71,Excellent,Medium,5.57,8.84,Yes,Neutral,Yes +USER-02203,41,Other,6.21,6.29,3.01,4.74,Good,Low,8.24,0.7,No,Positive,Yes +USER-02204,59,Other,5.39,5.92,2.99,4.22,Poor,Medium,4.46,4.48,Yes,Neutral,No +USER-02205,64,Other,8.79,6.8,3.25,2.06,Poor,High,6.54,3.24,Yes,Positive,No +USER-02206,18,Other,5.08,3.55,0.28,9.48,Excellent,Medium,8.31,9.89,No,Neutral,Yes +USER-02207,32,Other,7.13,4.18,3.63,9.35,Good,Medium,4.77,5.0,Yes,Neutral,Yes +USER-02208,37,Male,6.64,0.5,2.71,2.43,Excellent,Low,8.26,5.29,Yes,Negative,Yes +USER-02209,51,Male,7.16,4.95,4.55,3.62,Good,High,5.54,2.1,No,Negative,Yes +USER-02210,36,Other,9.68,1.64,3.6,5.13,Good,Low,7.96,3.09,Yes,Negative,Yes +USER-02211,18,Male,10.9,7.55,4.1,5.42,Good,Low,5.07,0.58,Yes,Neutral,Yes +USER-02212,26,Male,3.42,0.92,4.73,3.5,Fair,Low,8.76,5.98,Yes,Positive,Yes +USER-02213,42,Male,1.16,1.2,3.89,13.56,Poor,Low,6.34,2.73,No,Neutral,No +USER-02214,27,Male,6.39,4.55,1.81,8.24,Fair,Low,5.51,5.12,Yes,Positive,Yes +USER-02215,65,Male,11.47,5.96,4.02,12.13,Fair,Low,5.56,0.3,Yes,Negative,Yes +USER-02216,28,Male,3.38,2.93,2.8,3.57,Excellent,Medium,5.54,6.28,Yes,Neutral,No +USER-02217,27,Male,7.57,7.2,1.3,3.24,Poor,High,4.04,6.84,Yes,Neutral,Yes +USER-02218,57,Male,7.59,7.89,4.76,6.08,Excellent,High,4.19,5.29,Yes,Negative,Yes +USER-02219,21,Other,10.01,2.28,3.41,3.0,Poor,Low,6.75,3.38,No,Positive,Yes +USER-02220,37,Other,5.44,1.11,2.46,5.24,Good,Medium,6.22,6.84,Yes,Positive,Yes +USER-02221,62,Female,3.91,4.18,0.76,6.68,Poor,Low,4.36,5.94,Yes,Positive,No +USER-02222,65,Male,3.4,5.15,2.23,8.38,Fair,Medium,8.0,2.93,Yes,Negative,No +USER-02223,20,Other,2.82,6.67,4.03,13.13,Good,Low,8.73,7.43,No,Positive,No +USER-02224,59,Female,11.23,6.92,3.52,7.86,Fair,Medium,5.86,5.66,Yes,Positive,Yes +USER-02225,57,Female,5.52,2.4,3.72,12.78,Excellent,Medium,7.51,0.81,Yes,Positive,Yes +USER-02226,32,Male,5.63,0.36,3.24,3.68,Excellent,Medium,4.73,4.31,No,Negative,Yes +USER-02227,35,Male,4.65,4.1,0.66,7.82,Poor,Medium,7.75,2.2,Yes,Negative,No +USER-02228,18,Female,5.19,6.72,4.91,11.2,Excellent,High,8.28,3.12,No,Neutral,No +USER-02229,61,Other,6.02,6.49,3.79,13.02,Good,Medium,8.44,7.71,Yes,Positive,No +USER-02230,61,Female,9.27,6.31,0.05,9.12,Poor,High,7.82,5.34,Yes,Neutral,No +USER-02231,34,Other,7.93,3.79,4.29,5.4,Excellent,Medium,5.8,1.95,Yes,Negative,No +USER-02232,25,Female,7.06,0.12,1.23,10.32,Fair,Low,5.9,6.31,No,Negative,No +USER-02233,24,Female,5.39,1.4,4.99,3.99,Good,Medium,8.25,1.21,Yes,Neutral,No +USER-02234,21,Female,11.45,4.75,1.75,13.55,Excellent,Low,5.24,3.88,No,Negative,Yes +USER-02235,18,Other,8.18,5.48,3.22,12.63,Fair,Low,7.6,3.3,Yes,Positive,No +USER-02236,59,Female,4.78,5.25,0.71,8.22,Excellent,High,7.11,9.18,No,Positive,Yes +USER-02237,41,Female,9.09,7.44,0.76,1.71,Good,Low,6.82,5.84,No,Neutral,No +USER-02238,49,Female,10.63,6.38,3.15,7.5,Excellent,Low,7.6,9.03,No,Neutral,No +USER-02239,59,Female,5.13,5.27,0.68,10.33,Excellent,Low,7.68,1.9,No,Neutral,Yes +USER-02240,32,Female,3.0,2.46,4.92,11.0,Good,Low,6.88,5.84,No,Neutral,Yes +USER-02241,57,Male,11.89,0.0,4.86,4.96,Fair,Medium,6.38,0.52,Yes,Positive,No +USER-02242,37,Female,6.24,5.95,1.9,13.44,Good,Medium,5.69,9.5,Yes,Positive,Yes +USER-02243,42,Other,6.04,4.78,2.51,12.19,Excellent,High,8.85,0.93,Yes,Positive,No +USER-02244,40,Female,9.61,1.92,3.83,3.59,Poor,Medium,4.76,4.89,Yes,Positive,No +USER-02245,30,Other,1.71,3.98,3.62,3.67,Good,Medium,4.25,7.23,Yes,Positive,No +USER-02246,47,Other,8.73,2.31,1.18,13.73,Fair,Low,5.54,4.42,No,Negative,Yes +USER-02247,18,Other,9.16,1.66,0.66,7.84,Good,Low,7.03,0.95,Yes,Negative,Yes +USER-02248,30,Female,11.34,3.51,1.46,9.17,Fair,Low,4.59,8.35,Yes,Positive,Yes +USER-02249,54,Other,11.02,4.7,4.92,9.93,Poor,Low,7.76,7.4,No,Positive,Yes +USER-02250,20,Other,7.41,7.47,3.83,13.02,Poor,Medium,4.08,9.97,No,Neutral,Yes +USER-02251,60,Female,4.71,7.72,3.32,13.12,Good,Low,7.91,4.34,Yes,Negative,No +USER-02252,28,Male,4.81,6.96,3.06,14.41,Poor,Low,6.75,9.62,Yes,Neutral,No +USER-02253,26,Male,11.93,5.68,2.48,10.09,Excellent,High,4.62,2.98,No,Neutral,No +USER-02254,36,Male,3.06,3.81,4.5,2.72,Excellent,Medium,4.75,6.05,No,Negative,No +USER-02255,36,Other,2.32,2.47,1.82,9.32,Poor,Medium,4.23,4.64,Yes,Negative,Yes +USER-02256,21,Female,9.31,5.97,0.83,7.94,Fair,Medium,7.96,6.5,No,Positive,Yes +USER-02257,47,Female,9.05,5.24,3.25,7.87,Excellent,High,6.96,0.13,Yes,Negative,No +USER-02258,59,Male,5.22,1.36,3.91,13.5,Fair,Low,7.11,3.76,No,Positive,Yes +USER-02259,40,Other,6.22,3.69,2.41,3.63,Good,High,8.98,1.59,No,Negative,No +USER-02260,38,Male,11.59,3.06,4.74,14.37,Poor,Medium,5.83,1.01,Yes,Negative,Yes +USER-02261,39,Male,2.77,6.5,1.95,7.61,Excellent,Low,6.31,4.62,Yes,Positive,No +USER-02262,30,Female,2.98,2.18,4.57,12.06,Fair,Medium,8.25,5.67,No,Negative,Yes +USER-02263,60,Female,10.29,3.65,3.02,7.2,Poor,High,8.96,9.16,No,Positive,No +USER-02264,37,Female,4.99,7.21,1.84,10.6,Excellent,Low,4.7,1.57,Yes,Negative,Yes +USER-02265,51,Other,9.64,2.39,4.08,13.62,Good,High,7.94,3.91,Yes,Positive,No +USER-02266,25,Other,8.59,5.51,0.93,8.82,Good,Medium,8.82,7.43,No,Negative,No +USER-02267,50,Other,1.08,2.74,3.11,12.73,Good,Medium,8.68,2.87,No,Negative,No +USER-02268,36,Male,6.98,4.5,2.31,13.99,Fair,High,7.82,1.17,No,Negative,Yes +USER-02269,35,Other,2.97,1.31,3.58,7.06,Excellent,High,5.18,9.83,Yes,Negative,No +USER-02270,58,Male,5.09,3.37,3.9,1.16,Fair,High,5.13,7.58,No,Negative,Yes +USER-02271,37,Male,7.67,3.83,3.37,5.63,Excellent,High,6.22,3.32,No,Positive,No +USER-02272,31,Male,2.56,6.17,4.52,12.13,Excellent,High,7.35,6.8,Yes,Positive,No +USER-02273,19,Male,4.07,1.51,4.44,7.91,Excellent,High,8.43,2.96,No,Negative,Yes +USER-02274,50,Other,3.76,4.13,4.96,4.68,Fair,Low,4.64,1.2,Yes,Neutral,No +USER-02275,37,Other,9.34,0.6,0.41,9.82,Fair,High,8.2,5.92,No,Positive,No +USER-02276,62,Other,9.86,0.07,3.5,6.1,Good,Medium,8.66,5.87,Yes,Neutral,No +USER-02277,21,Male,9.22,7.52,1.3,1.61,Poor,High,5.15,1.61,No,Negative,No +USER-02278,50,Male,1.34,4.83,2.05,8.68,Fair,Medium,5.4,8.05,No,Negative,No +USER-02279,26,Other,8.92,3.16,0.71,6.19,Poor,Medium,7.03,7.37,Yes,Negative,Yes +USER-02280,55,Male,9.29,2.82,3.84,1.62,Good,Medium,7.1,6.86,No,Positive,No +USER-02281,18,Male,6.84,3.65,2.33,6.81,Good,High,7.63,2.27,No,Neutral,No +USER-02282,43,Female,9.64,7.46,2.92,6.17,Good,Low,5.46,0.77,No,Negative,Yes +USER-02283,43,Female,8.18,5.01,2.1,14.6,Good,Low,8.63,2.72,No,Negative,Yes +USER-02284,59,Male,2.45,1.83,4.23,7.15,Fair,High,7.25,8.59,Yes,Positive,Yes +USER-02285,22,Male,6.82,5.74,1.44,5.27,Fair,Medium,5.5,0.85,Yes,Negative,No +USER-02286,61,Other,4.13,3.74,0.63,14.9,Good,High,7.13,6.57,No,Neutral,No +USER-02287,27,Male,2.74,7.33,1.4,1.07,Excellent,Low,7.67,9.2,No,Neutral,No +USER-02288,55,Female,2.52,0.12,0.54,3.29,Excellent,Low,7.14,4.65,Yes,Neutral,No +USER-02289,52,Male,7.31,5.93,2.81,10.61,Good,Medium,8.01,0.43,Yes,Positive,No +USER-02290,47,Female,7.95,7.8,1.53,2.85,Poor,Low,7.75,4.59,Yes,Neutral,Yes +USER-02291,41,Male,1.14,6.24,1.56,13.13,Poor,Medium,7.59,5.02,No,Negative,Yes +USER-02292,62,Male,7.61,0.19,4.23,2.25,Fair,High,4.67,9.13,Yes,Neutral,No +USER-02293,40,Male,2.64,0.16,0.75,9.21,Excellent,High,4.14,2.5,No,Positive,Yes +USER-02294,50,Other,4.01,8.0,2.55,4.11,Excellent,Low,6.88,5.44,No,Neutral,Yes +USER-02295,22,Male,8.31,0.93,1.51,1.0,Fair,Low,4.66,4.93,No,Negative,No +USER-02296,62,Male,10.37,6.83,4.15,4.08,Excellent,Low,5.61,1.19,Yes,Positive,Yes +USER-02297,41,Female,3.5,7.16,3.43,12.77,Fair,High,5.17,8.39,No,Neutral,No +USER-02298,37,Female,11.31,6.32,3.52,6.72,Poor,Medium,6.62,2.57,Yes,Positive,Yes +USER-02299,35,Male,8.64,7.14,2.18,5.82,Fair,High,6.54,3.1,Yes,Neutral,Yes +USER-02300,20,Male,11.4,0.55,4.95,10.34,Poor,Medium,6.27,7.9,No,Negative,Yes +USER-02301,53,Other,9.19,7.23,1.97,9.66,Excellent,Medium,8.31,4.41,Yes,Positive,Yes +USER-02302,21,Male,11.27,5.71,2.16,10.46,Good,Medium,8.44,8.31,Yes,Negative,Yes +USER-02303,50,Male,3.98,2.78,0.24,14.81,Excellent,Medium,4.03,9.23,No,Negative,No +USER-02304,45,Other,9.24,2.52,2.63,8.25,Good,Low,6.51,7.01,Yes,Neutral,Yes +USER-02305,56,Other,2.33,8.0,1.43,3.38,Excellent,Low,5.65,4.84,No,Negative,No +USER-02306,62,Other,4.83,0.4,2.33,11.57,Excellent,Low,5.35,4.23,Yes,Neutral,Yes +USER-02307,58,Male,7.47,1.29,3.0,12.97,Excellent,Low,6.75,5.31,Yes,Neutral,No +USER-02308,28,Female,7.74,3.67,1.43,3.15,Excellent,Medium,5.98,7.12,No,Positive,No +USER-02309,33,Male,11.77,2.39,4.84,4.09,Poor,High,4.5,5.37,No,Negative,Yes +USER-02310,32,Female,11.98,7.64,2.95,9.8,Excellent,Low,4.42,1.38,Yes,Positive,No +USER-02311,48,Male,4.86,3.92,0.2,4.97,Poor,High,8.58,0.86,No,Neutral,Yes +USER-02312,46,Other,12.0,5.72,0.44,14.72,Good,Medium,4.48,0.5,No,Negative,No +USER-02313,61,Female,7.41,7.91,4.32,12.49,Fair,Low,6.28,0.95,No,Negative,Yes +USER-02314,18,Other,10.55,0.34,0.04,13.08,Good,High,5.46,3.99,Yes,Positive,No +USER-02315,65,Male,5.3,2.38,2.85,10.82,Fair,Low,4.7,8.24,Yes,Positive,No +USER-02316,24,Male,4.11,1.12,2.44,11.26,Excellent,Medium,7.38,8.75,No,Neutral,Yes +USER-02317,19,Female,7.26,7.63,1.73,5.96,Fair,Low,7.25,3.08,No,Positive,No +USER-02318,25,Other,2.33,5.04,0.81,14.19,Fair,High,4.59,6.87,Yes,Negative,No +USER-02319,51,Female,1.3,4.3,4.36,13.03,Excellent,High,8.25,2.73,No,Positive,Yes +USER-02320,32,Other,2.91,6.08,3.29,3.6,Poor,Low,5.91,6.31,No,Negative,No +USER-02321,31,Other,10.24,6.3,0.34,9.1,Fair,Medium,7.48,9.02,Yes,Positive,Yes +USER-02322,37,Male,1.92,4.35,4.9,12.7,Excellent,Low,4.14,6.9,Yes,Neutral,No +USER-02323,38,Other,11.93,6.62,3.33,11.8,Poor,High,7.06,9.22,Yes,Negative,No +USER-02324,34,Other,6.26,2.17,2.93,2.84,Fair,High,4.58,6.93,Yes,Neutral,Yes +USER-02325,20,Male,1.06,2.58,3.76,10.75,Good,Medium,6.73,8.02,Yes,Negative,No +USER-02326,54,Male,8.56,2.96,2.17,14.64,Excellent,Low,6.9,5.99,Yes,Negative,No +USER-02327,27,Other,9.46,6.78,3.9,1.88,Fair,High,6.48,4.28,Yes,Positive,Yes +USER-02328,57,Other,9.01,1.89,1.96,1.23,Good,Medium,7.17,3.69,Yes,Neutral,No +USER-02329,39,Other,2.98,4.07,4.71,10.79,Fair,High,7.84,7.81,Yes,Neutral,No +USER-02330,64,Female,3.81,1.12,4.35,5.3,Excellent,High,4.4,6.76,No,Neutral,Yes +USER-02331,29,Other,9.81,4.58,4.14,5.04,Excellent,High,7.68,7.93,Yes,Neutral,No +USER-02332,54,Other,8.59,7.97,0.18,5.67,Good,High,5.98,9.49,Yes,Neutral,Yes +USER-02333,40,Female,7.21,0.63,4.52,4.2,Good,Medium,4.73,3.52,No,Neutral,No +USER-02334,26,Male,7.98,3.09,0.97,10.0,Excellent,Low,7.53,7.41,No,Neutral,Yes +USER-02335,52,Female,5.65,1.16,4.53,13.7,Poor,Medium,6.29,2.86,No,Neutral,No +USER-02336,39,Male,4.77,2.97,3.21,13.7,Good,High,5.32,7.43,No,Positive,Yes +USER-02337,21,Male,11.29,0.18,4.26,7.45,Fair,High,4.81,5.36,No,Negative,Yes +USER-02338,29,Other,1.06,3.81,4.35,4.17,Good,High,8.39,5.06,Yes,Positive,Yes +USER-02339,59,Male,9.26,7.01,4.52,4.21,Fair,Low,4.39,3.95,Yes,Neutral,No +USER-02340,44,Male,7.77,4.3,0.9,4.15,Good,Low,4.17,4.06,Yes,Neutral,Yes +USER-02341,33,Male,3.36,7.57,3.79,12.5,Poor,Low,8.48,1.87,No,Neutral,No +USER-02342,36,Female,3.21,6.61,1.85,3.26,Good,High,6.35,9.39,Yes,Positive,No +USER-02343,36,Female,11.4,7.14,4.71,6.64,Poor,Medium,5.33,4.98,Yes,Neutral,Yes +USER-02344,31,Female,6.01,4.97,4.48,14.95,Fair,Medium,5.98,8.11,No,Neutral,No +USER-02345,37,Female,9.64,7.94,1.47,8.74,Excellent,Medium,4.57,0.61,Yes,Positive,Yes +USER-02346,29,Other,4.93,1.05,3.76,4.68,Fair,Medium,5.07,0.69,No,Positive,No +USER-02347,33,Female,2.03,3.49,3.31,3.44,Poor,High,7.41,6.99,Yes,Positive,No +USER-02348,41,Female,3.42,0.98,3.02,13.07,Fair,Medium,5.58,7.91,Yes,Negative,No +USER-02349,18,Female,6.71,4.74,0.24,11.58,Good,High,8.18,9.96,Yes,Negative,Yes +USER-02350,49,Male,9.76,4.65,4.95,1.86,Good,Low,4.1,8.18,No,Positive,Yes +USER-02351,48,Other,4.25,2.79,3.38,12.61,Good,Medium,6.29,7.37,No,Positive,Yes +USER-02352,55,Male,11.39,0.69,3.17,7.13,Good,Low,8.97,9.66,Yes,Negative,Yes +USER-02353,55,Other,5.43,2.44,4.11,13.31,Fair,Low,6.97,1.85,Yes,Positive,Yes +USER-02354,34,Other,11.66,1.82,3.72,7.98,Excellent,Low,7.0,0.93,No,Negative,Yes +USER-02355,52,Male,8.77,6.68,2.76,14.71,Good,Medium,7.66,2.85,Yes,Neutral,Yes +USER-02356,49,Female,6.39,6.87,3.58,9.59,Fair,Low,6.54,9.95,No,Positive,No +USER-02357,31,Male,11.89,1.73,1.18,6.52,Good,Medium,4.12,2.24,Yes,Positive,No +USER-02358,42,Male,11.29,4.22,3.43,1.81,Good,High,4.52,9.83,No,Negative,Yes +USER-02359,34,Other,10.64,4.33,1.91,4.26,Poor,High,5.53,3.22,No,Positive,No +USER-02360,29,Other,9.29,6.29,3.78,7.65,Poor,Medium,6.81,5.47,Yes,Positive,No +USER-02361,56,Female,11.7,7.13,2.74,6.29,Poor,Medium,4.83,6.13,Yes,Neutral,Yes +USER-02362,45,Female,11.37,2.75,3.77,13.21,Fair,High,4.9,3.49,No,Neutral,Yes +USER-02363,49,Male,9.62,7.69,4.06,7.13,Poor,High,7.68,5.27,No,Negative,Yes +USER-02364,64,Male,5.4,3.02,0.32,5.57,Fair,High,8.89,7.1,No,Neutral,Yes +USER-02365,61,Female,11.13,0.22,4.4,10.84,Good,Low,8.59,1.86,Yes,Neutral,No +USER-02366,65,Male,4.31,5.26,1.77,11.89,Fair,Medium,5.57,4.26,No,Positive,Yes +USER-02367,46,Female,4.08,4.76,2.47,1.65,Fair,Medium,8.7,0.82,No,Neutral,No +USER-02368,57,Male,3.45,1.43,0.15,6.93,Excellent,Low,8.24,2.04,No,Negative,Yes +USER-02369,30,Female,5.62,1.66,3.33,4.94,Excellent,Low,4.18,3.15,No,Neutral,No +USER-02370,45,Female,1.81,6.97,1.4,9.7,Excellent,High,5.04,1.88,No,Neutral,No +USER-02371,41,Other,3.59,1.28,0.25,3.24,Good,High,4.47,4.37,Yes,Positive,Yes +USER-02372,40,Female,10.35,7.72,3.62,13.35,Excellent,High,4.0,8.49,No,Negative,Yes +USER-02373,40,Other,8.32,4.14,0.05,12.13,Good,Low,7.69,3.26,No,Negative,No +USER-02374,32,Female,10.97,3.71,4.49,7.8,Good,Low,5.33,7.17,Yes,Positive,Yes +USER-02375,57,Male,4.34,1.73,0.31,13.25,Poor,Low,7.28,1.11,Yes,Negative,No +USER-02376,58,Female,10.34,5.52,3.94,5.99,Excellent,Medium,4.38,9.59,Yes,Positive,No +USER-02377,41,Female,11.99,0.35,1.03,13.32,Poor,Low,8.23,4.03,Yes,Negative,No +USER-02378,41,Other,7.54,1.06,0.65,13.72,Poor,Low,8.15,6.47,Yes,Neutral,Yes +USER-02379,31,Female,11.64,6.87,4.36,7.56,Poor,High,5.55,7.2,Yes,Neutral,No +USER-02380,46,Female,9.51,7.57,4.82,8.56,Excellent,Low,5.96,7.68,Yes,Negative,No +USER-02381,62,Other,2.6,1.59,4.75,11.42,Poor,High,8.7,9.04,Yes,Positive,Yes +USER-02382,20,Other,8.48,0.98,1.14,14.79,Fair,High,7.25,1.7,Yes,Positive,No +USER-02383,45,Male,3.19,4.98,0.01,3.19,Good,High,5.0,6.4,Yes,Neutral,No +USER-02384,35,Other,2.88,2.89,0.38,1.6,Fair,Low,8.28,9.81,Yes,Negative,No +USER-02385,28,Female,2.56,6.66,3.7,2.06,Excellent,Low,4.75,3.08,Yes,Neutral,Yes +USER-02386,35,Female,8.05,6.37,0.88,7.5,Poor,Medium,6.96,5.87,Yes,Neutral,No +USER-02387,51,Other,9.28,3.11,2.5,12.54,Excellent,Low,8.49,7.78,Yes,Negative,No +USER-02388,55,Other,8.48,5.27,3.23,5.64,Excellent,Medium,8.75,1.3,Yes,Negative,No +USER-02389,58,Female,1.86,4.01,2.64,12.56,Good,Low,6.86,3.74,No,Neutral,Yes +USER-02390,26,Male,1.91,3.67,4.43,11.63,Excellent,Low,8.67,8.84,Yes,Positive,Yes +USER-02391,62,Other,3.3,4.78,3.96,9.44,Good,High,4.88,7.72,No,Positive,No +USER-02392,48,Male,5.25,5.68,4.91,2.04,Poor,Low,7.16,9.81,No,Neutral,Yes +USER-02393,31,Female,3.51,0.45,1.37,14.77,Excellent,High,5.73,8.9,No,Negative,No +USER-02394,51,Male,1.52,3.37,1.75,9.92,Good,Medium,6.09,7.29,No,Positive,Yes +USER-02395,23,Other,9.52,1.28,4.5,8.36,Excellent,Low,4.17,1.62,No,Negative,No +USER-02396,18,Male,3.85,7.53,4.82,3.71,Fair,Medium,8.76,2.36,Yes,Neutral,Yes +USER-02397,48,Other,7.84,1.44,2.24,11.72,Excellent,Low,6.54,1.6,Yes,Positive,No +USER-02398,47,Other,8.13,7.3,3.2,7.78,Fair,Low,5.16,6.3,Yes,Negative,Yes +USER-02399,57,Female,7.28,1.41,1.06,9.0,Good,Low,5.85,3.25,No,Negative,No +USER-02400,37,Female,11.67,5.39,2.16,12.79,Good,High,5.64,5.63,Yes,Negative,Yes +USER-02401,34,Male,6.53,2.69,4.52,10.01,Excellent,Medium,7.01,9.87,No,Neutral,Yes +USER-02402,27,Female,7.08,3.72,4.22,7.66,Excellent,Medium,5.74,2.75,Yes,Negative,Yes +USER-02403,46,Other,2.53,6.22,2.91,9.36,Excellent,High,8.47,0.72,No,Negative,Yes +USER-02404,60,Other,3.61,6.49,2.71,5.52,Excellent,High,7.3,1.52,Yes,Negative,Yes +USER-02405,24,Male,5.96,7.65,4.44,7.28,Good,Low,5.24,6.51,No,Neutral,No +USER-02406,30,Male,10.71,7.0,3.94,12.98,Good,High,8.63,9.01,Yes,Negative,Yes +USER-02407,24,Male,11.07,7.25,1.85,2.07,Excellent,High,4.75,6.64,Yes,Neutral,Yes +USER-02408,43,Other,4.14,3.92,1.73,9.93,Fair,Medium,8.8,6.67,No,Neutral,Yes +USER-02409,39,Male,4.36,1.74,1.1,2.02,Excellent,Low,7.64,3.52,No,Neutral,No +USER-02410,19,Other,8.74,0.89,4.33,8.09,Good,Medium,7.25,7.54,No,Negative,No +USER-02411,61,Female,11.72,6.29,0.01,6.43,Fair,High,5.86,3.73,Yes,Negative,No +USER-02412,27,Other,8.41,4.69,0.11,7.6,Excellent,High,8.55,6.04,No,Positive,No +USER-02413,63,Female,7.72,2.88,0.71,13.73,Fair,Medium,6.84,2.51,No,Negative,Yes +USER-02414,41,Male,7.59,2.4,0.37,4.9,Poor,Low,4.54,9.93,Yes,Negative,No +USER-02415,42,Other,11.86,2.39,2.58,3.98,Poor,Low,8.5,5.99,Yes,Neutral,Yes +USER-02416,21,Female,2.57,2.17,0.3,7.34,Good,Low,5.35,3.09,Yes,Positive,No +USER-02417,32,Female,5.17,6.5,1.22,9.4,Good,High,6.66,0.89,Yes,Neutral,No +USER-02418,26,Male,11.68,7.97,3.49,8.86,Good,High,6.66,3.95,No,Positive,Yes +USER-02419,55,Male,1.23,7.81,1.04,9.78,Fair,Low,6.67,1.1,No,Positive,No +USER-02420,27,Male,2.1,2.27,3.4,5.48,Good,Low,8.02,9.2,No,Neutral,Yes +USER-02421,26,Female,4.38,2.79,4.19,3.66,Good,Medium,6.12,6.54,No,Positive,No +USER-02422,59,Female,1.56,3.56,0.28,9.92,Fair,High,4.65,8.49,Yes,Positive,Yes +USER-02423,25,Female,2.93,0.25,4.09,2.65,Fair,Low,5.3,5.15,No,Neutral,Yes +USER-02424,50,Female,2.66,7.15,1.98,2.64,Excellent,Low,4.76,9.96,Yes,Neutral,No +USER-02425,45,Other,5.65,1.2,2.82,6.22,Excellent,Medium,5.8,9.54,Yes,Negative,Yes +USER-02426,52,Male,2.3,1.95,1.99,8.69,Poor,Low,5.16,8.87,No,Neutral,Yes +USER-02427,18,Other,5.72,1.15,3.34,14.43,Poor,High,6.59,2.47,No,Positive,Yes +USER-02428,36,Other,5.57,2.04,1.36,13.09,Excellent,Medium,5.24,7.97,Yes,Negative,Yes +USER-02429,56,Female,9.5,4.2,0.94,2.77,Good,Low,6.43,6.79,Yes,Positive,No +USER-02430,19,Other,3.47,4.57,4.79,1.73,Excellent,Low,5.43,9.01,No,Positive,Yes +USER-02431,62,Female,4.75,0.59,3.33,9.61,Poor,Medium,5.54,0.16,No,Negative,No +USER-02432,44,Female,10.76,2.67,1.69,5.84,Excellent,High,6.02,2.96,Yes,Neutral,No +USER-02433,24,Female,4.38,4.77,1.52,8.76,Good,Medium,6.96,6.37,Yes,Negative,Yes +USER-02434,31,Male,7.61,1.75,4.15,5.42,Poor,Low,6.57,4.29,Yes,Positive,No +USER-02435,35,Male,5.94,1.49,0.87,3.63,Fair,Low,8.36,8.21,Yes,Positive,Yes +USER-02436,64,Male,3.8,1.26,4.99,2.71,Poor,Medium,7.43,6.3,Yes,Negative,No +USER-02437,35,Other,5.0,6.31,2.82,1.34,Excellent,Medium,8.82,1.73,No,Positive,No +USER-02438,30,Female,9.25,4.78,0.45,14.02,Good,Low,4.43,1.74,Yes,Neutral,No +USER-02439,29,Other,6.37,6.35,1.19,6.73,Excellent,Medium,5.61,6.67,Yes,Neutral,No +USER-02440,21,Other,7.34,3.01,2.51,6.68,Good,High,5.66,8.94,Yes,Neutral,No +USER-02441,26,Female,10.38,4.34,4.37,13.01,Good,High,8.39,5.22,Yes,Negative,No +USER-02442,41,Female,9.91,4.7,4.83,1.37,Fair,Medium,5.44,2.88,Yes,Neutral,No +USER-02443,44,Female,6.18,2.87,2.4,8.66,Good,High,5.36,7.9,Yes,Positive,No +USER-02444,40,Other,8.82,4.58,2.01,6.06,Excellent,Medium,4.75,0.33,No,Negative,No +USER-02445,37,Male,3.78,0.64,2.37,4.21,Good,Medium,5.5,9.19,Yes,Neutral,Yes +USER-02446,32,Male,2.31,2.99,2.62,5.88,Excellent,Medium,7.38,2.69,Yes,Positive,Yes +USER-02447,27,Other,7.6,0.45,0.44,11.11,Good,Medium,5.66,2.21,No,Neutral,No +USER-02448,39,Female,7.22,2.45,0.3,3.35,Poor,High,4.79,4.25,Yes,Negative,No +USER-02449,33,Male,9.72,4.14,0.92,12.74,Poor,Low,6.85,0.53,No,Negative,No +USER-02450,57,Male,4.97,3.36,2.02,3.14,Poor,High,4.59,3.18,Yes,Neutral,No +USER-02451,21,Female,9.76,6.24,2.84,12.45,Good,Low,8.64,1.43,No,Neutral,Yes +USER-02452,59,Male,10.42,7.04,2.59,13.17,Excellent,Low,8.47,0.86,No,Neutral,Yes +USER-02453,58,Male,10.49,0.15,4.33,6.79,Excellent,Low,6.0,4.14,No,Positive,Yes +USER-02454,44,Other,2.53,4.08,2.49,13.78,Fair,Low,8.48,0.29,Yes,Neutral,Yes +USER-02455,55,Male,9.53,0.59,4.7,4.42,Fair,Low,6.46,7.02,No,Positive,No +USER-02456,26,Male,7.8,7.0,0.22,5.45,Excellent,Low,7.91,8.43,No,Negative,Yes +USER-02457,30,Other,7.91,2.01,0.83,12.53,Poor,Low,5.19,2.92,Yes,Positive,No +USER-02458,63,Male,4.57,3.48,0.5,8.51,Excellent,Low,6.31,8.16,Yes,Negative,Yes +USER-02459,54,Female,2.87,2.27,3.86,4.11,Good,Low,5.44,3.88,No,Neutral,No +USER-02460,31,Male,2.95,6.22,2.59,9.64,Fair,High,5.74,3.56,Yes,Positive,Yes +USER-02461,62,Male,7.99,4.34,4.36,13.2,Excellent,Medium,4.01,7.76,No,Negative,No +USER-02462,51,Male,8.88,5.01,0.12,4.73,Good,High,5.62,5.18,No,Positive,Yes +USER-02463,41,Male,11.03,3.54,1.72,11.71,Poor,Low,6.32,1.41,No,Negative,No +USER-02464,24,Male,4.46,5.21,4.56,7.46,Excellent,Low,7.5,0.89,No,Neutral,No +USER-02465,57,Male,10.9,3.37,3.8,7.01,Poor,Medium,6.16,7.51,No,Negative,No +USER-02466,35,Other,3.02,7.78,4.46,8.79,Excellent,Low,5.67,6.17,Yes,Positive,Yes +USER-02467,43,Male,1.36,1.08,3.01,10.81,Poor,Low,4.15,4.0,Yes,Negative,No +USER-02468,42,Male,2.44,7.09,2.31,12.19,Poor,Low,7.96,2.68,No,Negative,Yes +USER-02469,30,Male,11.65,1.75,0.82,12.18,Poor,Low,7.1,3.59,Yes,Negative,No +USER-02470,28,Male,5.45,4.88,0.57,13.45,Good,High,5.0,3.35,No,Neutral,Yes +USER-02471,48,Male,4.76,7.84,2.94,1.17,Fair,Low,7.4,9.64,Yes,Neutral,Yes +USER-02472,45,Other,9.15,6.31,1.63,5.5,Excellent,Medium,6.56,8.1,Yes,Positive,No +USER-02473,59,Male,7.41,5.12,0.15,3.99,Fair,Medium,8.88,4.76,No,Positive,Yes +USER-02474,65,Female,2.56,2.68,1.52,5.03,Poor,Medium,8.87,6.81,Yes,Negative,No +USER-02475,38,Male,3.64,5.21,2.59,1.53,Fair,Medium,8.93,1.84,No,Neutral,Yes +USER-02476,54,Other,2.75,2.38,2.05,5.29,Poor,Medium,5.86,2.04,No,Positive,No +USER-02477,22,Male,5.82,6.59,1.26,13.79,Poor,Low,7.22,7.29,Yes,Neutral,No +USER-02478,41,Male,4.51,2.2,0.95,14.11,Excellent,Medium,6.17,8.94,Yes,Positive,No +USER-02479,55,Female,10.19,0.21,3.42,9.47,Poor,Low,4.39,3.71,No,Neutral,No +USER-02480,32,Other,3.28,6.02,2.21,8.22,Excellent,High,8.1,7.63,Yes,Negative,Yes +USER-02481,27,Other,4.79,2.42,4.32,1.57,Fair,Medium,7.93,9.86,No,Neutral,No +USER-02482,62,Male,4.01,7.84,1.89,3.44,Poor,Low,6.26,2.41,No,Neutral,Yes +USER-02483,59,Male,7.78,3.81,2.41,5.42,Good,Medium,7.6,9.93,No,Positive,Yes +USER-02484,37,Other,1.87,3.74,2.32,11.62,Excellent,Low,4.13,4.84,No,Positive,Yes +USER-02485,26,Male,6.28,2.1,3.31,8.47,Fair,Low,8.87,1.03,Yes,Positive,No +USER-02486,61,Other,11.03,2.93,0.42,6.78,Poor,Low,7.17,6.73,No,Negative,No +USER-02487,30,Other,4.29,1.04,1.67,5.32,Poor,High,5.42,3.81,No,Negative,Yes +USER-02488,62,Male,2.78,0.04,1.7,10.66,Excellent,High,8.24,8.51,Yes,Positive,No +USER-02489,42,Male,2.39,0.23,3.14,12.02,Good,Low,4.53,5.97,Yes,Positive,No +USER-02490,40,Female,5.59,3.12,1.4,1.62,Poor,Medium,8.8,1.97,Yes,Neutral,Yes +USER-02491,58,Other,1.1,4.81,4.15,8.22,Poor,Medium,4.95,1.57,Yes,Neutral,No +USER-02492,35,Male,1.48,7.16,2.5,13.0,Good,High,4.13,9.64,Yes,Neutral,No +USER-02493,41,Male,10.05,6.13,1.77,1.25,Excellent,Medium,8.1,8.1,No,Positive,No +USER-02494,42,Female,4.83,2.91,3.54,4.76,Good,Medium,5.1,4.61,No,Positive,Yes +USER-02495,51,Other,10.02,0.79,0.14,2.57,Good,Low,5.78,0.52,Yes,Positive,No +USER-02496,36,Other,9.05,5.08,2.31,10.4,Excellent,Medium,8.78,1.88,Yes,Negative,Yes +USER-02497,42,Other,5.33,1.09,2.46,10.71,Fair,Medium,7.79,1.96,No,Negative,Yes +USER-02498,20,Male,1.79,4.82,0.01,6.0,Good,Medium,7.58,6.51,Yes,Neutral,No +USER-02499,26,Male,11.18,4.7,0.89,4.63,Excellent,Low,6.54,9.31,No,Neutral,No +USER-02500,65,Male,9.39,4.5,2.59,14.33,Excellent,Low,7.83,9.15,No,Negative,No +USER-02501,37,Male,3.73,4.92,1.57,7.94,Fair,High,4.91,4.05,No,Negative,No +USER-02502,29,Other,3.39,5.53,2.91,14.12,Excellent,High,4.78,7.54,Yes,Neutral,No +USER-02503,35,Male,1.03,7.6,0.41,14.72,Fair,Low,4.75,0.95,No,Negative,Yes +USER-02504,53,Other,5.28,1.38,0.07,14.36,Fair,Low,4.55,5.53,No,Negative,No +USER-02505,62,Other,4.89,1.38,3.56,1.69,Excellent,Medium,8.2,3.93,Yes,Negative,No +USER-02506,57,Other,3.28,1.62,3.47,13.05,Fair,Medium,7.7,9.18,Yes,Neutral,No +USER-02507,19,Female,1.01,4.72,1.87,10.39,Excellent,High,8.51,3.03,No,Negative,Yes +USER-02508,23,Male,3.77,2.99,2.82,8.6,Good,High,8.83,3.2,No,Neutral,Yes +USER-02509,35,Male,4.72,5.5,4.13,10.23,Fair,High,8.15,5.41,No,Negative,Yes +USER-02510,62,Female,8.49,6.93,4.19,13.64,Excellent,Low,8.25,4.62,Yes,Negative,No +USER-02511,47,Female,2.65,2.22,0.68,1.9,Good,Low,4.94,0.85,Yes,Negative,Yes +USER-02512,43,Male,7.77,5.45,1.71,12.59,Poor,Low,6.24,3.31,Yes,Positive,No +USER-02513,37,Male,5.6,4.69,1.35,12.14,Excellent,High,7.54,8.88,Yes,Neutral,No +USER-02514,24,Other,5.61,6.77,4.85,4.42,Fair,Medium,8.68,3.12,No,Positive,Yes +USER-02515,41,Other,6.29,7.68,3.44,9.65,Poor,Medium,5.66,7.65,No,Neutral,Yes +USER-02516,64,Male,2.96,1.42,4.38,5.38,Poor,Medium,7.47,7.07,Yes,Negative,Yes +USER-02517,58,Other,5.15,4.77,1.42,13.11,Fair,High,7.12,8.25,No,Negative,No +USER-02518,46,Other,8.9,3.67,3.01,12.39,Excellent,Low,7.82,1.78,Yes,Negative,Yes +USER-02519,22,Other,6.87,5.84,0.29,8.25,Good,Medium,8.13,7.03,Yes,Neutral,No +USER-02520,28,Male,4.33,1.24,4.99,10.27,Poor,Medium,7.86,0.33,Yes,Negative,Yes +USER-02521,37,Male,4.88,1.88,0.59,7.33,Poor,Low,8.27,5.81,Yes,Positive,Yes +USER-02522,53,Male,2.43,1.62,3.07,5.65,Fair,Low,5.99,9.89,No,Neutral,No +USER-02523,19,Other,11.79,3.37,4.82,6.96,Poor,Medium,7.05,2.63,Yes,Positive,Yes +USER-02524,24,Male,4.36,5.47,0.63,10.62,Good,Low,8.62,2.52,Yes,Neutral,Yes +USER-02525,31,Other,4.96,0.16,4.21,11.13,Excellent,High,6.93,1.7,No,Negative,No +USER-02526,58,Female,4.91,4.14,2.06,11.56,Excellent,High,8.95,5.81,Yes,Positive,No +USER-02527,45,Other,11.53,4.34,1.03,5.36,Poor,Medium,5.76,0.38,Yes,Positive,No +USER-02528,50,Other,3.62,2.27,3.65,6.21,Excellent,Low,8.26,0.86,Yes,Negative,Yes +USER-02529,57,Female,9.93,5.93,1.65,13.14,Excellent,High,6.39,0.99,No,Neutral,Yes +USER-02530,20,Other,5.42,0.75,3.95,10.65,Excellent,High,4.25,0.06,Yes,Negative,Yes +USER-02531,62,Female,5.38,2.1,0.81,2.02,Excellent,Medium,7.86,7.86,No,Positive,Yes +USER-02532,56,Female,7.55,0.28,0.35,8.19,Excellent,Low,6.62,0.31,No,Negative,Yes +USER-02533,62,Male,3.02,0.25,0.37,3.85,Excellent,High,5.56,9.68,No,Positive,No +USER-02534,63,Male,4.46,4.93,0.94,10.4,Poor,Medium,6.93,2.11,No,Negative,No +USER-02535,40,Female,7.34,0.26,2.91,5.33,Good,Low,8.98,2.2,No,Neutral,No +USER-02536,18,Female,2.88,5.64,0.79,1.75,Fair,Low,5.65,4.1,No,Neutral,No +USER-02537,65,Female,5.72,4.02,4.2,14.18,Good,Low,6.68,3.67,No,Positive,No +USER-02538,19,Male,7.7,7.23,4.9,6.57,Poor,High,7.86,4.13,Yes,Negative,Yes +USER-02539,19,Male,10.01,3.17,4.26,9.26,Poor,Low,5.97,6.05,No,Negative,No +USER-02540,30,Other,4.97,2.15,3.74,1.99,Poor,Medium,8.12,7.73,Yes,Positive,Yes +USER-02541,60,Male,4.91,2.69,3.52,11.21,Fair,High,6.61,1.7,Yes,Neutral,Yes +USER-02542,56,Female,7.85,6.96,3.29,14.14,Fair,Low,8.87,3.92,Yes,Neutral,No +USER-02543,24,Other,11.53,6.27,3.16,14.42,Fair,High,7.75,8.18,Yes,Neutral,No +USER-02544,28,Female,10.02,3.23,0.52,2.02,Excellent,Low,7.6,2.53,No,Neutral,No +USER-02545,20,Male,8.56,0.05,3.35,7.96,Excellent,High,5.78,2.87,Yes,Negative,Yes +USER-02546,56,Female,3.58,7.72,2.07,13.24,Good,High,5.46,7.17,No,Neutral,Yes +USER-02547,42,Other,10.66,1.4,0.76,2.24,Good,Low,5.01,0.44,No,Positive,Yes +USER-02548,35,Female,9.67,6.51,2.31,5.1,Poor,Low,7.04,5.78,Yes,Negative,Yes +USER-02549,58,Male,9.29,0.63,3.75,10.63,Fair,Medium,6.75,3.2,Yes,Negative,Yes +USER-02550,45,Male,1.49,4.37,0.93,9.08,Good,High,7.04,5.74,No,Neutral,Yes +USER-02551,46,Other,11.83,3.77,4.04,9.75,Good,Low,6.38,6.98,Yes,Neutral,Yes +USER-02552,63,Male,1.26,3.16,0.49,7.17,Poor,Medium,6.52,0.47,No,Negative,Yes +USER-02553,38,Female,7.6,3.86,0.66,14.62,Good,Medium,8.69,7.15,No,Negative,No +USER-02554,48,Male,8.06,1.1,2.37,10.34,Good,High,6.59,9.02,No,Positive,Yes +USER-02555,50,Other,4.31,4.42,2.06,6.3,Good,Medium,7.97,1.7,No,Neutral,Yes +USER-02556,32,Other,7.92,7.02,2.4,2.71,Fair,High,8.73,7.64,Yes,Negative,No +USER-02557,34,Other,7.56,1.86,1.28,7.04,Poor,Medium,4.6,0.64,No,Positive,No +USER-02558,27,Female,9.02,0.9,0.09,14.72,Poor,Medium,4.17,8.72,Yes,Positive,No +USER-02559,19,Male,3.75,0.29,4.5,14.52,Fair,Medium,4.48,2.34,Yes,Neutral,Yes +USER-02560,36,Male,1.43,7.81,2.98,14.3,Fair,Medium,6.05,6.94,No,Neutral,Yes +USER-02561,23,Female,6.13,6.67,2.91,1.25,Poor,Low,9.0,1.66,No,Negative,Yes +USER-02562,29,Other,8.55,7.15,2.2,5.79,Fair,High,5.84,4.7,Yes,Negative,Yes +USER-02563,20,Male,2.29,4.55,3.5,13.15,Good,High,7.88,6.24,No,Neutral,Yes +USER-02564,52,Other,11.25,5.35,2.68,6.42,Good,Low,7.1,8.69,Yes,Neutral,Yes +USER-02565,37,Other,3.9,3.68,0.55,9.41,Fair,High,6.55,2.43,No,Negative,No +USER-02566,26,Other,8.34,5.63,0.49,14.81,Poor,High,5.09,6.03,Yes,Positive,No +USER-02567,29,Other,4.77,1.69,1.54,8.7,Poor,Medium,7.42,7.47,No,Positive,Yes +USER-02568,37,Female,11.91,7.3,4.3,5.06,Good,Medium,4.86,8.8,No,Negative,No +USER-02569,21,Male,10.24,7.18,2.24,11.2,Fair,Medium,5.7,2.64,Yes,Neutral,Yes +USER-02570,19,Other,5.47,0.64,2.52,8.07,Good,High,4.53,1.46,No,Neutral,No +USER-02571,63,Female,8.61,7.76,4.36,9.98,Excellent,Medium,5.78,5.0,No,Neutral,Yes +USER-02572,20,Other,5.24,2.85,3.73,8.58,Good,Medium,6.0,0.05,No,Neutral,Yes +USER-02573,57,Other,1.07,2.82,3.49,8.43,Fair,Low,7.76,8.21,No,Negative,No +USER-02574,45,Female,3.5,7.25,1.61,8.21,Good,Medium,7.11,9.28,No,Positive,Yes +USER-02575,37,Male,4.76,1.4,3.13,9.19,Poor,Low,6.47,1.85,Yes,Neutral,No +USER-02576,59,Male,2.21,6.41,4.62,2.21,Excellent,Low,7.86,6.66,Yes,Negative,Yes +USER-02577,29,Other,10.56,7.37,1.22,12.42,Poor,Medium,4.47,3.0,No,Positive,Yes +USER-02578,62,Other,7.81,3.81,0.98,14.48,Good,Low,4.22,7.07,No,Positive,Yes +USER-02579,39,Male,2.7,4.58,2.58,5.23,Excellent,High,8.84,9.46,Yes,Neutral,No +USER-02580,60,Male,4.52,7.61,2.48,14.13,Fair,Medium,5.95,6.96,Yes,Positive,No +USER-02581,52,Other,2.93,0.07,3.97,8.77,Fair,Low,8.59,0.36,No,Positive,Yes +USER-02582,32,Other,5.23,3.97,0.15,8.56,Poor,Low,8.3,2.78,Yes,Negative,No +USER-02583,47,Female,8.81,0.76,1.87,1.24,Good,High,5.83,6.44,Yes,Neutral,Yes +USER-02584,58,Female,8.96,1.38,4.94,9.26,Good,Low,4.84,3.99,No,Neutral,No +USER-02585,20,Other,10.14,5.31,2.99,8.66,Fair,High,5.93,4.77,No,Neutral,No +USER-02586,63,Female,6.04,0.46,3.17,14.37,Fair,Low,7.05,6.41,No,Neutral,Yes +USER-02587,28,Male,2.91,5.1,0.31,3.75,Poor,High,7.14,0.72,No,Neutral,No +USER-02588,40,Female,2.93,1.3,4.14,6.33,Poor,High,8.97,9.28,Yes,Neutral,No +USER-02589,57,Other,1.71,0.7,0.32,2.48,Good,High,8.65,8.34,No,Positive,Yes +USER-02590,47,Female,5.08,1.56,4.04,12.68,Excellent,High,4.24,7.16,Yes,Positive,Yes +USER-02591,65,Female,2.96,5.37,0.29,10.43,Fair,High,4.86,3.35,Yes,Positive,No +USER-02592,53,Other,11.29,2.52,4.9,3.27,Excellent,Medium,8.83,9.01,Yes,Neutral,No +USER-02593,40,Other,2.99,0.58,1.84,11.72,Poor,Medium,7.37,4.9,Yes,Neutral,No +USER-02594,31,Other,10.87,6.79,4.31,8.07,Fair,Low,8.06,9.64,Yes,Negative,No +USER-02595,64,Other,7.42,2.1,2.34,7.92,Fair,High,7.9,4.01,No,Negative,No +USER-02596,46,Other,8.83,7.28,1.69,4.79,Poor,Medium,6.18,1.05,Yes,Negative,Yes +USER-02597,51,Male,1.47,4.83,4.27,12.2,Poor,High,5.23,3.86,Yes,Positive,Yes +USER-02598,44,Male,4.45,1.28,3.29,13.23,Fair,High,4.06,7.07,Yes,Negative,Yes +USER-02599,32,Other,1.03,4.59,4.87,1.36,Poor,Low,6.06,2.73,No,Positive,No +USER-02600,43,Male,3.85,7.19,4.53,9.65,Excellent,Medium,8.05,9.2,Yes,Neutral,Yes +USER-02601,65,Other,4.04,5.05,2.66,4.37,Fair,High,7.24,2.46,No,Negative,No +USER-02602,34,Male,10.69,2.77,1.25,11.81,Excellent,Low,8.64,8.82,No,Negative,Yes +USER-02603,27,Female,4.95,0.87,4.83,8.48,Good,Low,6.04,8.61,Yes,Neutral,No +USER-02604,22,Female,10.23,7.93,1.11,7.57,Excellent,Medium,5.18,9.29,Yes,Neutral,No +USER-02605,61,Other,11.77,5.97,3.34,11.11,Poor,Medium,4.08,2.48,No,Negative,Yes +USER-02606,58,Male,7.88,7.74,1.61,1.57,Poor,Low,8.96,4.99,Yes,Positive,Yes +USER-02607,63,Female,8.64,5.6,3.16,12.17,Excellent,Low,6.52,7.0,No,Neutral,No +USER-02608,36,Male,1.08,2.4,1.75,6.99,Fair,Low,4.47,5.68,Yes,Negative,No +USER-02609,53,Male,7.32,1.55,1.23,2.94,Poor,Medium,6.9,2.13,No,Positive,No +USER-02610,64,Male,2.53,1.46,1.26,7.7,Fair,Medium,4.46,3.01,Yes,Negative,Yes +USER-02611,56,Male,11.86,4.87,2.05,7.5,Excellent,Medium,4.2,2.02,Yes,Positive,No +USER-02612,54,Female,4.46,1.75,1.65,4.59,Good,Medium,4.85,1.11,Yes,Negative,No +USER-02613,57,Other,10.15,1.62,1.53,2.89,Fair,Medium,4.27,2.49,Yes,Negative,No +USER-02614,33,Other,7.3,7.59,1.86,1.9,Excellent,Medium,8.65,1.48,No,Negative,No +USER-02615,42,Male,9.08,6.32,1.9,11.27,Fair,Medium,7.51,1.14,No,Negative,Yes +USER-02616,39,Other,10.13,0.09,1.08,7.38,Poor,Medium,7.68,4.18,Yes,Negative,No +USER-02617,49,Female,1.57,3.55,1.46,6.6,Poor,High,7.74,4.94,Yes,Neutral,Yes +USER-02618,48,Male,7.28,2.63,0.55,8.34,Fair,Low,7.36,2.73,Yes,Negative,No +USER-02619,48,Other,8.96,6.92,4.14,2.43,Good,Medium,4.27,8.56,Yes,Negative,Yes +USER-02620,19,Male,8.42,6.19,2.56,7.23,Excellent,High,8.18,6.61,Yes,Neutral,No +USER-02621,57,Female,8.94,4.19,2.77,9.03,Excellent,Low,7.49,6.98,Yes,Neutral,No +USER-02622,59,Other,6.34,0.42,1.43,8.96,Good,Low,8.1,6.08,No,Negative,Yes +USER-02623,21,Other,4.98,1.81,1.05,5.96,Poor,Low,5.52,0.2,Yes,Positive,No +USER-02624,59,Other,2.5,0.44,1.48,9.38,Good,High,6.38,8.63,Yes,Negative,Yes +USER-02625,33,Male,1.49,2.69,2.45,11.28,Excellent,Low,5.71,5.29,Yes,Positive,Yes +USER-02626,52,Male,8.28,3.08,4.67,11.49,Fair,High,7.47,5.44,Yes,Positive,No +USER-02627,30,Other,2.95,7.08,3.19,9.65,Fair,High,4.66,0.47,No,Neutral,No +USER-02628,36,Other,10.1,3.02,3.89,10.32,Excellent,Medium,4.05,1.93,Yes,Negative,Yes +USER-02629,27,Other,2.18,3.22,0.98,14.22,Good,Low,8.28,2.53,No,Neutral,Yes +USER-02630,55,Male,4.59,3.65,3.67,10.21,Good,High,6.12,4.61,Yes,Positive,Yes +USER-02631,35,Male,5.51,0.49,1.13,1.12,Excellent,Medium,7.24,7.5,Yes,Negative,No +USER-02632,57,Other,7.29,6.47,2.72,7.94,Good,Medium,8.46,5.93,No,Positive,Yes +USER-02633,34,Male,6.47,4.1,1.8,6.94,Good,High,5.99,8.62,Yes,Neutral,Yes +USER-02634,62,Male,1.56,4.16,2.11,9.23,Fair,Medium,6.91,2.22,No,Positive,No +USER-02635,21,Female,6.65,2.06,0.96,4.77,Fair,Medium,4.42,2.49,No,Negative,Yes +USER-02636,50,Other,3.75,1.8,4.64,6.28,Good,Low,4.68,4.59,No,Positive,No +USER-02637,36,Male,10.45,3.9,4.04,11.6,Poor,High,6.11,3.29,No,Negative,No +USER-02638,61,Female,4.83,5.69,1.62,8.9,Fair,Medium,4.81,7.23,No,Neutral,Yes +USER-02639,51,Other,5.65,0.32,3.67,8.65,Poor,Medium,6.2,6.14,No,Neutral,No +USER-02640,31,Female,3.49,3.13,4.16,3.07,Fair,Low,8.75,1.4,Yes,Neutral,No +USER-02641,49,Other,1.28,7.19,4.25,12.51,Fair,Medium,5.88,3.03,No,Neutral,Yes +USER-02642,18,Male,2.18,3.53,3.34,5.39,Excellent,High,4.98,6.7,No,Positive,Yes +USER-02643,21,Male,8.75,2.05,2.52,3.19,Excellent,Medium,5.9,2.57,Yes,Neutral,Yes +USER-02644,62,Female,6.89,3.4,0.73,6.18,Fair,High,5.98,6.7,No,Negative,No +USER-02645,59,Other,7.49,4.29,4.99,8.13,Good,Low,5.5,3.67,No,Negative,No +USER-02646,44,Other,3.34,3.19,2.13,12.7,Good,Medium,5.58,9.18,No,Positive,Yes +USER-02647,25,Other,4.5,2.76,1.43,1.9,Fair,Low,4.5,5.83,Yes,Positive,Yes +USER-02648,19,Female,9.11,3.14,3.35,1.12,Poor,High,4.57,7.61,Yes,Neutral,Yes +USER-02649,26,Female,1.72,0.53,1.42,11.14,Poor,High,4.77,4.3,No,Neutral,No +USER-02650,30,Other,9.97,4.42,3.06,5.82,Poor,Medium,6.15,7.1,Yes,Neutral,No +USER-02651,63,Male,11.38,5.02,2.7,6.26,Good,High,5.1,7.61,Yes,Neutral,No +USER-02652,53,Female,1.0,2.17,1.95,5.07,Excellent,Medium,8.03,3.65,No,Neutral,No +USER-02653,29,Other,9.11,7.34,0.03,8.19,Poor,Low,5.32,9.63,Yes,Neutral,No +USER-02654,65,Male,6.05,7.63,4.82,11.52,Excellent,High,8.85,3.79,Yes,Neutral,Yes +USER-02655,28,Other,1.07,5.66,3.7,7.62,Excellent,Medium,7.33,9.78,Yes,Neutral,Yes +USER-02656,22,Female,7.9,0.84,4.03,7.5,Poor,Low,5.8,3.05,Yes,Positive,Yes +USER-02657,62,Male,4.76,3.58,2.22,2.12,Poor,High,8.37,0.78,Yes,Neutral,Yes +USER-02658,65,Other,3.26,2.18,0.39,4.24,Excellent,Medium,5.55,0.4,No,Positive,No +USER-02659,26,Other,2.36,2.21,1.83,2.27,Excellent,High,6.21,8.81,No,Neutral,Yes +USER-02660,23,Male,2.31,2.98,4.78,12.12,Excellent,High,8.08,3.73,No,Neutral,No +USER-02661,58,Female,8.31,3.72,0.08,10.09,Fair,High,6.9,6.35,No,Positive,Yes +USER-02662,24,Other,11.04,3.38,2.6,9.2,Poor,High,8.37,8.56,No,Neutral,No +USER-02663,45,Female,3.17,5.26,4.02,14.41,Excellent,Low,7.53,1.86,No,Negative,Yes +USER-02664,59,Other,5.84,7.32,2.36,4.69,Poor,Medium,8.2,8.99,No,Negative,No +USER-02665,61,Male,8.41,2.53,2.87,14.34,Fair,Low,5.41,7.99,Yes,Positive,Yes +USER-02666,20,Other,6.14,6.1,2.62,6.51,Excellent,Low,8.5,2.63,Yes,Positive,No +USER-02667,31,Male,1.16,7.91,3.3,4.04,Fair,High,7.77,8.25,Yes,Neutral,Yes +USER-02668,22,Female,6.89,0.6,2.91,2.79,Poor,Medium,4.71,4.05,Yes,Positive,No +USER-02669,30,Female,2.97,4.19,4.09,10.76,Excellent,Medium,7.46,7.64,No,Neutral,No +USER-02670,43,Other,2.62,3.62,2.52,9.36,Poor,High,7.4,2.41,No,Negative,Yes +USER-02671,27,Other,4.04,0.99,1.68,7.66,Poor,Low,4.49,5.94,No,Negative,Yes +USER-02672,35,Male,11.1,2.52,0.64,7.36,Excellent,Medium,8.23,3.27,Yes,Positive,No +USER-02673,29,Male,2.47,0.37,0.49,14.25,Poor,High,6.82,3.22,Yes,Negative,No +USER-02674,54,Female,5.68,4.26,1.56,11.14,Poor,High,8.98,2.36,No,Neutral,No +USER-02675,32,Other,4.97,2.12,1.55,6.57,Excellent,High,4.59,0.06,No,Negative,No +USER-02676,57,Other,3.96,7.57,4.87,5.49,Good,Medium,6.72,3.02,No,Positive,No +USER-02677,53,Male,10.16,1.79,2.81,11.83,Good,Low,7.57,9.27,No,Negative,No +USER-02678,61,Male,7.31,0.41,2.81,6.33,Good,Low,5.91,8.11,No,Positive,Yes +USER-02679,31,Female,7.71,5.51,1.84,14.5,Poor,Medium,5.56,5.37,No,Positive,No +USER-02680,23,Female,11.37,7.95,1.77,4.19,Good,Medium,7.05,2.43,No,Negative,No +USER-02681,38,Male,6.52,6.2,2.9,6.41,Excellent,High,6.51,9.87,No,Positive,Yes +USER-02682,30,Female,10.23,3.23,4.54,2.76,Poor,High,8.92,3.92,Yes,Positive,Yes +USER-02683,50,Female,4.04,2.6,3.04,11.5,Excellent,High,5.81,8.63,No,Positive,No +USER-02684,49,Male,2.77,7.54,0.98,13.34,Excellent,High,8.79,8.8,Yes,Positive,Yes +USER-02685,23,Female,2.25,4.39,2.23,8.62,Excellent,Medium,4.51,9.0,Yes,Positive,No +USER-02686,50,Male,6.02,0.38,0.31,4.47,Excellent,Low,8.94,4.0,Yes,Positive,No +USER-02687,55,Male,4.3,4.17,0.96,5.94,Fair,High,4.85,2.19,Yes,Neutral,Yes +USER-02688,54,Other,11.92,5.5,2.57,1.56,Fair,Low,5.61,6.15,Yes,Neutral,No +USER-02689,60,Other,8.19,6.52,2.23,8.74,Poor,Low,7.34,7.24,No,Positive,Yes +USER-02690,31,Female,9.97,7.78,0.67,11.83,Poor,Low,6.7,5.34,No,Positive,Yes +USER-02691,63,Other,5.12,5.43,4.32,6.69,Poor,Low,8.6,5.89,No,Negative,Yes +USER-02692,29,Male,6.83,1.59,1.14,1.96,Good,High,7.42,8.33,No,Negative,Yes +USER-02693,46,Female,5.72,2.28,2.57,3.75,Excellent,High,7.68,9.77,No,Neutral,No +USER-02694,44,Male,4.7,3.57,4.42,3.92,Poor,Medium,7.03,8.57,Yes,Neutral,No +USER-02695,32,Other,6.79,4.05,3.1,5.47,Fair,Low,6.26,1.49,No,Neutral,Yes +USER-02696,40,Male,2.37,6.46,2.11,12.9,Excellent,High,7.42,4.94,No,Neutral,Yes +USER-02697,23,Other,8.67,1.79,3.1,1.94,Good,High,6.76,2.23,Yes,Neutral,Yes +USER-02698,64,Female,1.32,3.98,4.83,9.44,Excellent,Low,4.37,6.02,No,Negative,Yes +USER-02699,53,Male,7.85,3.37,2.1,8.07,Fair,High,6.9,9.3,Yes,Positive,Yes +USER-02700,29,Female,8.89,3.62,4.15,6.42,Poor,Medium,5.85,3.89,Yes,Neutral,Yes +USER-02701,49,Other,10.63,6.94,0.02,11.81,Poor,High,6.89,8.47,No,Neutral,No +USER-02702,38,Male,6.27,7.59,4.83,6.87,Excellent,Low,4.42,0.54,Yes,Neutral,No +USER-02703,65,Male,6.07,1.99,0.6,12.54,Poor,Medium,5.09,7.49,Yes,Neutral,Yes +USER-02704,52,Female,2.98,3.53,0.97,12.75,Excellent,Low,7.13,7.64,Yes,Positive,No +USER-02705,35,Male,7.89,1.66,1.18,6.02,Good,High,8.2,2.3,No,Negative,No +USER-02706,28,Other,7.75,7.15,0.65,11.78,Poor,High,7.91,1.72,No,Positive,No +USER-02707,21,Other,8.1,5.7,3.68,2.83,Excellent,High,8.06,4.48,No,Neutral,No +USER-02708,18,Female,10.24,0.34,3.46,13.03,Fair,Low,8.63,8.61,Yes,Positive,Yes +USER-02709,59,Other,4.84,7.64,3.64,3.24,Excellent,High,8.44,1.79,No,Neutral,Yes +USER-02710,57,Male,9.04,7.22,4.61,11.11,Fair,Low,5.6,4.29,No,Negative,No +USER-02711,55,Other,10.79,2.43,1.88,5.96,Poor,Low,8.1,1.6,Yes,Neutral,Yes +USER-02712,40,Other,9.57,2.11,1.64,6.92,Fair,Low,4.22,4.8,No,Positive,Yes +USER-02713,60,Other,9.46,1.04,1.22,9.5,Excellent,High,6.68,7.39,Yes,Positive,Yes +USER-02714,45,Other,3.85,3.39,3.13,1.56,Good,Low,6.65,9.02,No,Negative,Yes +USER-02715,58,Other,4.07,0.64,5.0,11.29,Poor,High,7.23,9.98,Yes,Positive,Yes +USER-02716,58,Other,9.22,3.04,2.64,5.59,Poor,Medium,5.55,3.11,Yes,Positive,No +USER-02717,23,Male,7.14,7.04,1.4,4.49,Excellent,High,6.52,4.62,No,Neutral,Yes +USER-02718,49,Male,8.31,7.82,4.47,9.88,Poor,Low,6.16,0.82,Yes,Neutral,No +USER-02719,28,Other,4.15,1.31,2.74,7.84,Fair,High,7.65,5.4,No,Negative,Yes +USER-02720,36,Male,10.8,6.48,3.6,11.7,Fair,Medium,8.7,7.75,Yes,Neutral,No +USER-02721,34,Female,3.81,7.32,2.19,10.65,Excellent,Low,7.45,5.2,No,Positive,No +USER-02722,32,Other,9.55,7.73,0.73,6.8,Good,Medium,7.8,8.82,No,Neutral,No +USER-02723,25,Male,4.31,1.7,3.03,3.4,Good,Medium,8.95,9.78,No,Negative,Yes +USER-02724,63,Female,5.26,3.9,1.7,6.88,Fair,Medium,8.35,8.64,No,Positive,No +USER-02725,38,Female,1.04,3.48,2.5,10.95,Fair,Low,4.01,9.62,No,Positive,No +USER-02726,61,Male,6.71,4.64,4.87,6.03,Poor,Low,6.05,7.36,No,Positive,No +USER-02727,23,Male,9.03,0.1,3.14,10.9,Poor,Low,6.63,6.67,No,Positive,Yes +USER-02728,62,Other,10.64,4.02,4.29,13.47,Excellent,Low,6.11,1.74,Yes,Negative,No +USER-02729,32,Other,4.88,4.83,4.3,11.4,Excellent,High,5.7,7.41,No,Neutral,No +USER-02730,33,Male,7.08,6.72,0.4,12.82,Good,Medium,5.56,7.77,Yes,Negative,Yes +USER-02731,65,Male,8.64,5.8,4.13,11.95,Poor,Low,6.48,0.98,No,Negative,Yes +USER-02732,55,Male,4.31,0.31,0.23,6.06,Poor,High,6.97,2.7,Yes,Negative,No +USER-02733,31,Male,9.36,6.23,4.32,13.12,Fair,High,4.97,1.57,No,Positive,No +USER-02734,27,Male,3.38,5.41,2.41,3.01,Excellent,Medium,7.21,1.77,Yes,Neutral,No +USER-02735,32,Female,9.12,3.09,1.24,2.86,Fair,High,6.5,0.41,Yes,Neutral,Yes +USER-02736,25,Other,9.16,7.32,2.98,8.31,Excellent,Medium,6.35,0.01,Yes,Positive,Yes +USER-02737,22,Female,7.07,1.12,4.31,3.79,Good,Low,7.57,8.0,No,Neutral,Yes +USER-02738,20,Female,11.15,4.41,0.14,2.45,Excellent,Medium,6.97,6.95,No,Negative,Yes +USER-02739,60,Female,7.61,2.6,4.95,11.5,Good,Low,5.87,3.29,No,Neutral,Yes +USER-02740,45,Other,8.36,6.26,4.4,5.01,Poor,High,5.62,1.14,No,Positive,No +USER-02741,64,Other,3.72,3.77,2.73,3.6,Excellent,High,5.99,3.4,No,Negative,No +USER-02742,52,Other,6.48,7.68,3.41,14.16,Good,High,5.36,1.39,Yes,Neutral,No +USER-02743,49,Female,1.66,7.78,4.89,3.75,Excellent,Low,5.8,1.23,No,Negative,Yes +USER-02744,21,Female,1.09,0.64,2.75,6.07,Poor,Low,6.41,9.76,No,Neutral,No +USER-02745,28,Other,2.45,1.49,4.78,1.44,Excellent,Low,5.6,7.03,No,Positive,Yes +USER-02746,46,Female,8.73,0.01,2.43,1.41,Good,Low,7.38,5.16,Yes,Negative,No +USER-02747,45,Female,10.85,1.05,0.81,3.24,Excellent,Medium,8.72,8.4,Yes,Neutral,Yes +USER-02748,21,Other,8.89,1.35,1.1,7.43,Good,High,8.62,0.45,No,Positive,No +USER-02749,28,Male,3.03,1.76,2.56,13.76,Good,High,7.82,2.2,No,Negative,No +USER-02750,29,Female,7.98,7.78,4.08,10.09,Fair,Medium,5.03,0.35,No,Positive,No +USER-02751,24,Other,4.57,2.78,0.08,7.25,Excellent,Medium,6.24,0.91,Yes,Neutral,No +USER-02752,46,Male,1.77,6.03,1.09,14.57,Excellent,Low,6.93,1.46,No,Neutral,Yes +USER-02753,49,Male,2.82,7.41,2.29,1.62,Fair,Low,5.58,5.53,No,Positive,Yes +USER-02754,50,Other,7.27,6.39,0.38,7.71,Fair,Medium,5.22,6.87,No,Positive,No +USER-02755,54,Female,8.11,7.2,2.31,11.3,Poor,Medium,4.37,6.01,No,Neutral,No +USER-02756,44,Female,11.28,4.18,4.41,5.11,Excellent,High,5.46,7.45,Yes,Negative,Yes +USER-02757,48,Male,5.53,5.47,1.22,7.65,Good,High,7.45,2.12,No,Positive,No +USER-02758,33,Other,10.99,6.05,1.74,13.13,Good,Medium,5.92,9.5,No,Positive,No +USER-02759,49,Other,4.16,4.44,2.03,4.28,Poor,High,6.14,7.45,Yes,Positive,No +USER-02760,18,Male,8.72,2.91,3.59,11.93,Poor,Medium,8.01,5.66,No,Positive,Yes +USER-02761,56,Other,2.09,0.74,2.21,4.74,Fair,High,6.25,1.56,Yes,Positive,Yes +USER-02762,36,Female,8.06,6.03,1.72,1.71,Poor,Low,7.29,8.73,No,Neutral,Yes +USER-02763,61,Other,5.06,5.16,4.11,7.79,Fair,Low,8.77,8.53,Yes,Neutral,Yes +USER-02764,47,Female,4.63,3.35,1.7,11.17,Poor,High,4.59,6.54,Yes,Negative,No +USER-02765,38,Female,8.2,6.06,4.41,2.45,Fair,High,8.85,2.18,Yes,Neutral,Yes +USER-02766,50,Female,6.5,3.01,0.38,12.69,Fair,Medium,7.04,0.65,Yes,Positive,Yes +USER-02767,37,Female,3.9,7.79,1.33,6.64,Poor,Medium,5.04,3.26,No,Negative,Yes +USER-02768,29,Male,10.64,4.35,2.82,13.11,Poor,Low,6.58,2.64,Yes,Positive,Yes +USER-02769,33,Other,9.64,2.19,3.85,4.47,Excellent,Low,8.02,6.84,No,Neutral,Yes +USER-02770,38,Other,8.2,2.18,0.87,2.17,Fair,Medium,7.71,0.47,No,Positive,No +USER-02771,50,Male,8.43,2.1,1.17,8.67,Poor,Low,8.83,1.8,No,Neutral,Yes +USER-02772,24,Male,6.13,6.37,0.69,7.81,Excellent,Low,6.01,0.73,No,Neutral,Yes +USER-02773,62,Male,6.15,5.98,1.36,8.58,Good,Medium,7.27,6.51,Yes,Positive,Yes +USER-02774,63,Male,10.01,1.17,3.53,4.72,Fair,Medium,5.12,9.17,Yes,Positive,No +USER-02775,26,Female,5.41,2.26,0.85,2.51,Good,Medium,7.88,8.77,Yes,Neutral,No +USER-02776,19,Female,2.75,1.04,4.99,14.61,Good,High,4.74,2.56,Yes,Neutral,Yes +USER-02777,34,Female,4.28,7.41,3.51,14.17,Good,Low,7.06,6.43,Yes,Negative,Yes +USER-02778,53,Female,5.36,5.62,3.82,4.05,Good,High,4.55,1.07,Yes,Neutral,No +USER-02779,40,Female,8.62,7.89,3.93,13.73,Poor,High,7.25,4.58,No,Negative,Yes +USER-02780,58,Female,3.43,1.51,3.57,8.88,Fair,High,8.77,6.82,Yes,Neutral,No +USER-02781,44,Other,6.92,2.8,0.46,9.57,Fair,Medium,6.43,1.1,No,Negative,No +USER-02782,31,Male,9.46,7.86,3.69,1.2,Poor,High,5.85,2.87,No,Positive,No +USER-02783,36,Other,9.23,3.32,3.38,4.85,Excellent,High,6.77,7.14,No,Negative,No +USER-02784,36,Female,5.94,7.53,1.74,3.91,Good,Medium,6.5,0.89,No,Neutral,Yes +USER-02785,35,Female,9.75,5.57,1.14,3.97,Fair,Medium,8.98,9.16,No,Positive,No +USER-02786,25,Female,6.47,6.46,0.26,1.92,Poor,Low,5.38,7.87,Yes,Negative,No +USER-02787,34,Other,5.95,7.69,3.9,10.73,Good,High,6.69,4.97,No,Neutral,No +USER-02788,38,Female,10.15,7.84,2.65,10.48,Poor,Medium,7.77,6.87,No,Neutral,Yes +USER-02789,42,Male,3.89,0.21,0.57,10.56,Good,Medium,4.77,8.16,No,Neutral,No +USER-02790,64,Other,7.03,2.83,1.83,10.52,Poor,Low,8.37,6.12,No,Positive,Yes +USER-02791,34,Male,4.99,6.22,1.8,13.47,Fair,Low,7.29,0.93,Yes,Neutral,No +USER-02792,42,Female,11.35,3.77,1.85,5.19,Fair,High,4.93,0.91,Yes,Negative,Yes +USER-02793,40,Male,3.42,5.97,3.64,12.48,Poor,High,6.84,4.45,No,Negative,Yes +USER-02794,19,Female,6.81,5.82,3.86,10.79,Excellent,Low,6.14,5.87,No,Neutral,No +USER-02795,37,Male,8.49,7.85,4.94,8.99,Poor,High,6.84,2.41,Yes,Negative,Yes +USER-02796,39,Female,8.73,1.05,2.75,7.41,Good,Low,7.69,5.55,No,Positive,No +USER-02797,55,Female,3.56,2.75,2.41,4.18,Good,Medium,6.93,4.5,No,Neutral,Yes +USER-02798,31,Male,9.49,7.33,1.68,8.54,Fair,Low,7.75,9.67,Yes,Neutral,No +USER-02799,52,Male,11.93,4.65,2.06,9.71,Poor,Medium,6.85,1.94,No,Negative,No +USER-02800,45,Female,2.3,0.7,3.71,4.74,Poor,Low,8.03,3.41,Yes,Neutral,No +USER-02801,53,Male,5.78,6.3,1.21,10.35,Good,High,7.09,3.75,Yes,Neutral,No +USER-02802,45,Other,1.15,3.32,0.09,10.51,Poor,Low,6.19,9.61,Yes,Positive,No +USER-02803,62,Female,9.21,4.72,1.99,2.65,Poor,Low,5.9,7.54,No,Neutral,Yes +USER-02804,48,Other,5.14,5.13,0.06,8.55,Fair,Low,4.0,6.9,Yes,Negative,Yes +USER-02805,65,Other,2.93,0.82,4.8,5.2,Excellent,High,7.4,7.16,Yes,Negative,No +USER-02806,37,Other,5.38,4.12,4.79,5.57,Fair,Low,7.55,9.41,Yes,Negative,No +USER-02807,36,Other,3.23,5.68,4.62,5.77,Fair,High,7.27,0.84,Yes,Neutral,Yes +USER-02808,48,Female,1.83,5.3,4.29,6.12,Fair,Low,7.06,7.85,Yes,Negative,No +USER-02809,19,Male,1.8,0.03,1.05,4.79,Fair,Medium,7.85,3.22,No,Positive,No +USER-02810,43,Female,9.99,5.3,0.12,5.69,Fair,Low,7.71,2.46,No,Positive,No +USER-02811,18,Other,2.5,4.02,4.03,9.44,Good,Low,4.62,7.05,No,Positive,No +USER-02812,27,Other,3.75,4.53,1.52,9.18,Good,Low,5.97,9.54,Yes,Neutral,No +USER-02813,37,Female,12.0,6.85,3.72,10.57,Fair,Low,5.44,9.8,Yes,Negative,No +USER-02814,36,Male,4.42,0.08,2.2,10.48,Good,Medium,6.91,3.29,No,Positive,Yes +USER-02815,43,Male,4.83,2.46,3.91,9.89,Excellent,Medium,7.41,4.73,Yes,Neutral,No +USER-02816,45,Male,10.93,0.57,0.39,10.24,Fair,High,5.58,3.62,Yes,Neutral,No +USER-02817,25,Female,6.12,3.67,4.37,13.1,Good,Low,6.01,4.82,Yes,Positive,Yes +USER-02818,59,Female,4.13,2.77,3.07,5.89,Fair,Medium,5.67,2.43,No,Neutral,No +USER-02819,59,Male,1.66,3.34,2.52,5.28,Fair,High,4.61,8.42,No,Positive,No +USER-02820,55,Other,10.27,1.28,2.61,4.64,Poor,Medium,8.08,2.9,No,Neutral,No +USER-02821,61,Female,9.89,2.12,2.43,13.03,Good,High,5.12,1.96,No,Positive,No +USER-02822,26,Female,7.11,7.5,2.35,9.31,Fair,Low,6.15,6.54,Yes,Positive,No +USER-02823,26,Female,3.5,0.96,1.85,12.16,Good,Low,6.94,0.03,No,Neutral,No +USER-02824,65,Female,9.32,3.89,0.59,9.19,Excellent,Low,8.83,7.71,No,Neutral,No +USER-02825,18,Female,10.82,1.79,4.74,8.76,Excellent,High,6.01,6.31,No,Negative,Yes +USER-02826,20,Other,2.95,2.98,3.49,1.9,Good,High,5.07,2.79,Yes,Neutral,Yes +USER-02827,31,Other,5.69,4.58,2.41,11.22,Excellent,High,8.72,4.7,Yes,Negative,No +USER-02828,20,Other,4.73,5.92,0.75,1.94,Excellent,High,5.4,2.53,No,Negative,Yes +USER-02829,62,Female,11.7,0.46,1.77,6.85,Good,High,8.1,8.6,Yes,Neutral,No +USER-02830,29,Other,8.21,2.32,3.98,3.12,Fair,Medium,6.55,6.46,No,Neutral,No +USER-02831,44,Female,1.32,1.25,0.8,12.97,Poor,High,4.27,9.5,No,Positive,No +USER-02832,35,Other,6.5,6.26,4.15,9.2,Fair,Medium,5.7,5.28,Yes,Neutral,No +USER-02833,26,Female,5.57,6.61,3.33,1.05,Poor,Medium,6.27,2.66,No,Negative,No +USER-02834,24,Other,7.3,0.46,3.23,11.87,Good,High,6.21,6.73,Yes,Positive,Yes +USER-02835,39,Other,4.59,0.66,1.75,2.28,Excellent,Low,8.77,7.59,No,Negative,Yes +USER-02836,55,Male,6.95,3.76,4.59,13.31,Excellent,Low,7.89,5.64,No,Neutral,Yes +USER-02837,26,Female,6.68,5.24,1.18,8.27,Poor,Medium,5.91,5.03,No,Negative,No +USER-02838,49,Other,11.72,2.67,0.13,7.52,Poor,High,7.59,0.25,Yes,Neutral,No +USER-02839,58,Male,8.26,1.64,2.08,14.11,Good,Medium,7.54,3.23,No,Negative,No +USER-02840,59,Female,7.16,7.83,2.32,14.66,Good,Medium,8.91,2.68,No,Positive,No +USER-02841,45,Female,9.72,5.42,4.85,10.72,Good,High,5.32,9.23,No,Neutral,Yes +USER-02842,29,Female,10.16,3.96,4.37,6.92,Poor,Low,5.91,8.78,No,Negative,No +USER-02843,18,Other,10.1,2.06,1.66,7.04,Excellent,Low,6.67,2.71,Yes,Negative,Yes +USER-02844,63,Other,1.11,7.66,3.82,8.38,Poor,Medium,5.09,8.87,Yes,Negative,Yes +USER-02845,60,Male,7.31,6.57,0.23,7.89,Fair,High,8.55,2.44,Yes,Negative,Yes +USER-02846,61,Male,4.39,3.75,1.92,5.53,Good,High,4.68,3.54,No,Neutral,Yes +USER-02847,64,Other,1.2,2.66,4.45,9.78,Excellent,High,4.44,9.96,No,Neutral,Yes +USER-02848,31,Male,3.99,0.5,1.11,12.42,Excellent,High,7.49,3.72,Yes,Negative,Yes +USER-02849,41,Female,6.97,7.27,1.04,14.88,Excellent,Low,8.54,5.65,No,Positive,No +USER-02850,42,Male,2.88,7.55,2.18,2.73,Excellent,High,7.36,6.82,No,Neutral,No +USER-02851,20,Male,3.05,4.87,0.35,2.6,Poor,Medium,6.03,4.05,No,Positive,Yes +USER-02852,56,Female,1.13,1.33,2.42,3.66,Poor,High,6.43,7.87,Yes,Positive,No +USER-02853,60,Other,2.54,6.02,1.3,7.02,Fair,High,8.28,4.93,Yes,Positive,No +USER-02854,35,Female,5.83,0.74,4.81,11.04,Excellent,High,7.44,2.45,No,Neutral,No +USER-02855,29,Other,4.63,3.07,4.5,14.82,Good,Medium,8.5,8.85,No,Negative,No +USER-02856,40,Other,1.13,4.81,0.85,4.86,Poor,Medium,4.72,0.06,Yes,Positive,No +USER-02857,59,Female,3.69,5.71,3.83,9.74,Good,Low,7.2,0.34,Yes,Neutral,No +USER-02858,26,Female,4.82,0.87,2.71,11.71,Fair,Low,7.37,8.58,Yes,Positive,No +USER-02859,38,Male,5.14,7.35,4.31,9.43,Fair,Low,7.85,7.71,Yes,Positive,Yes +USER-02860,21,Male,7.54,3.62,4.44,8.29,Fair,Low,5.09,6.86,Yes,Neutral,Yes +USER-02861,60,Female,10.52,0.99,4.68,13.12,Good,Medium,6.0,8.47,No,Negative,Yes +USER-02862,18,Male,1.2,4.16,0.05,9.97,Poor,Medium,5.42,8.23,Yes,Negative,Yes +USER-02863,30,Female,4.27,5.53,3.75,8.65,Good,Low,4.35,7.8,No,Positive,No +USER-02864,37,Male,2.89,7.51,1.31,11.74,Fair,High,5.82,9.18,Yes,Positive,Yes +USER-02865,53,Male,10.57,2.68,0.4,12.74,Excellent,Low,7.89,6.87,Yes,Negative,Yes +USER-02866,39,Other,9.64,3.78,2.38,11.4,Fair,Low,5.3,0.91,No,Neutral,No +USER-02867,44,Male,9.63,5.56,3.68,9.32,Fair,High,8.68,6.42,Yes,Neutral,No +USER-02868,38,Other,8.63,0.29,2.97,11.76,Poor,Low,4.15,9.99,Yes,Neutral,No +USER-02869,65,Male,11.86,3.6,1.24,4.87,Poor,Low,7.53,4.36,Yes,Negative,Yes +USER-02870,32,Other,6.38,6.57,1.01,9.51,Fair,Medium,8.9,0.94,Yes,Negative,No +USER-02871,34,Male,6.26,0.87,4.16,5.1,Poor,Medium,6.61,3.74,Yes,Negative,No +USER-02872,18,Female,4.51,5.04,3.59,13.29,Poor,Low,5.5,1.28,No,Positive,Yes +USER-02873,40,Other,2.31,2.18,0.55,13.97,Excellent,Medium,7.15,2.42,Yes,Neutral,Yes +USER-02874,51,Male,1.71,0.88,4.68,11.29,Poor,Medium,8.26,4.86,Yes,Negative,Yes +USER-02875,21,Male,7.7,4.75,0.71,6.04,Excellent,High,7.26,9.89,Yes,Negative,No +USER-02876,23,Female,11.44,5.12,2.37,10.66,Poor,High,4.15,4.36,Yes,Positive,No +USER-02877,64,Male,7.87,6.39,3.65,1.48,Poor,Medium,5.92,0.67,Yes,Neutral,Yes +USER-02878,37,Other,9.86,5.99,0.29,8.15,Poor,High,6.44,0.83,Yes,Negative,Yes +USER-02879,58,Female,5.27,0.97,0.63,3.01,Fair,Low,7.23,9.37,No,Negative,Yes +USER-02880,48,Female,10.48,4.17,4.69,5.91,Poor,High,8.44,6.09,No,Negative,No +USER-02881,48,Female,10.14,4.8,3.52,6.83,Good,Medium,4.69,6.51,Yes,Neutral,No +USER-02882,27,Female,1.82,4.32,0.97,14.71,Good,High,7.87,4.68,Yes,Positive,Yes +USER-02883,52,Other,2.95,3.97,2.21,4.81,Excellent,High,4.5,4.04,No,Negative,Yes +USER-02884,53,Other,7.23,2.05,3.85,6.68,Good,Medium,6.31,8.8,No,Positive,No +USER-02885,27,Female,8.69,6.61,3.94,2.75,Good,Low,4.39,7.05,Yes,Negative,No +USER-02886,27,Other,10.1,7.94,2.5,10.46,Poor,Low,4.22,2.48,No,Positive,Yes +USER-02887,50,Male,10.02,6.3,1.32,14.04,Poor,Low,4.45,9.52,Yes,Negative,No +USER-02888,21,Other,6.84,2.24,0.91,2.63,Good,Medium,4.07,0.5,No,Positive,No +USER-02889,63,Other,3.66,0.16,3.95,7.03,Poor,Low,8.25,7.57,Yes,Positive,No +USER-02890,44,Male,2.21,0.21,0.95,10.63,Poor,High,8.84,2.37,No,Neutral,Yes +USER-02891,58,Male,6.0,5.99,3.12,2.99,Good,Medium,8.96,2.97,Yes,Neutral,Yes +USER-02892,49,Male,1.6,7.26,1.64,6.56,Good,Medium,8.48,7.62,No,Positive,Yes +USER-02893,49,Other,5.27,5.78,0.71,1.55,Good,High,7.94,8.52,No,Neutral,No +USER-02894,24,Male,3.43,2.82,2.23,3.66,Fair,High,5.14,3.63,Yes,Positive,No +USER-02895,28,Other,10.92,1.48,0.53,7.93,Poor,Medium,6.27,5.79,No,Negative,No +USER-02896,39,Male,10.28,1.77,2.81,4.76,Good,High,4.59,1.93,Yes,Negative,No +USER-02897,42,Other,10.85,6.97,1.04,10.99,Fair,Low,4.39,1.84,Yes,Positive,No +USER-02898,31,Female,1.7,7.8,4.23,12.46,Excellent,High,7.91,0.29,Yes,Negative,Yes +USER-02899,51,Male,8.84,1.25,1.11,7.86,Poor,High,5.07,3.75,Yes,Negative,No +USER-02900,48,Other,11.43,2.03,1.29,6.41,Fair,Low,6.28,2.66,No,Negative,No +USER-02901,34,Female,11.94,7.74,4.69,11.81,Good,High,8.3,8.47,No,Negative,No +USER-02902,21,Female,10.75,2.06,0.69,14.34,Excellent,High,6.61,2.36,No,Positive,No +USER-02903,28,Other,8.34,4.23,4.42,6.55,Good,High,7.92,3.33,No,Positive,Yes +USER-02904,28,Other,6.29,3.73,2.02,11.55,Good,High,7.74,3.87,Yes,Positive,Yes +USER-02905,63,Male,7.15,6.56,2.63,11.06,Good,Medium,8.9,5.18,No,Positive,Yes +USER-02906,28,Male,9.02,1.89,3.08,10.62,Fair,Low,7.78,7.05,No,Negative,No +USER-02907,40,Male,11.42,3.78,1.45,5.93,Good,Medium,6.35,0.19,Yes,Negative,No +USER-02908,28,Male,6.95,2.15,4.76,2.78,Fair,Medium,6.01,5.23,Yes,Positive,Yes +USER-02909,36,Female,11.05,3.42,3.09,14.21,Good,Low,7.46,4.54,Yes,Neutral,No +USER-02910,24,Male,5.82,6.13,0.35,12.81,Poor,Medium,7.99,4.05,Yes,Positive,No +USER-02911,60,Female,9.94,2.15,3.8,1.79,Good,Low,6.63,8.8,Yes,Positive,Yes +USER-02912,65,Male,3.88,3.84,0.41,8.07,Poor,Low,6.54,8.59,No,Positive,No +USER-02913,29,Female,7.08,5.21,0.77,11.96,Poor,High,8.33,5.33,Yes,Positive,No +USER-02914,50,Male,7.41,1.13,4.23,8.47,Poor,Medium,6.35,4.33,Yes,Neutral,No +USER-02915,33,Female,11.63,6.67,0.69,5.72,Good,High,7.44,0.54,Yes,Positive,Yes +USER-02916,19,Male,2.48,0.98,4.25,5.11,Excellent,Medium,8.16,3.76,Yes,Positive,No +USER-02917,56,Female,4.84,6.61,2.4,5.37,Excellent,Medium,6.42,0.62,No,Positive,Yes +USER-02918,41,Male,2.18,4.84,1.39,9.9,Good,Low,5.06,9.25,No,Neutral,No +USER-02919,46,Male,5.56,0.74,0.17,6.22,Good,High,8.46,4.78,Yes,Positive,No +USER-02920,29,Other,11.85,3.44,3.3,7.56,Fair,Low,6.64,6.27,No,Positive,No +USER-02921,40,Other,10.1,0.81,1.57,5.06,Excellent,Medium,5.71,9.96,No,Neutral,Yes +USER-02922,23,Other,5.66,6.4,3.54,8.41,Poor,Medium,7.52,5.19,Yes,Positive,No +USER-02923,38,Other,8.35,3.71,1.59,10.07,Good,Low,7.51,5.05,Yes,Negative,No +USER-02924,61,Male,7.22,0.12,1.96,11.92,Excellent,Medium,8.06,1.72,Yes,Positive,No +USER-02925,33,Female,4.95,3.01,0.34,8.05,Excellent,Medium,6.71,6.99,No,Positive,Yes +USER-02926,38,Other,6.39,2.6,2.21,4.76,Poor,Medium,4.01,4.82,No,Neutral,Yes +USER-02927,19,Male,7.56,7.16,1.43,3.01,Good,Low,6.5,2.38,No,Neutral,Yes +USER-02928,37,Other,1.07,3.79,0.26,6.84,Excellent,High,6.92,8.47,No,Negative,No +USER-02929,33,Other,5.37,0.67,0.44,1.55,Poor,Medium,4.51,4.94,Yes,Positive,Yes +USER-02930,50,Male,1.43,7.52,4.43,1.34,Good,High,4.53,0.94,No,Negative,No +USER-02931,56,Female,6.89,0.25,4.44,5.27,Fair,Low,6.74,3.41,No,Positive,Yes +USER-02932,43,Female,11.17,4.04,0.72,2.44,Good,Medium,5.93,0.38,No,Positive,No +USER-02933,49,Male,8.16,6.14,3.47,13.98,Good,Medium,4.56,8.47,Yes,Positive,Yes +USER-02934,43,Other,10.63,1.51,1.34,1.26,Fair,Medium,4.6,6.93,No,Positive,No +USER-02935,64,Male,10.67,4.51,0.75,5.9,Excellent,Medium,4.36,7.94,Yes,Negative,No +USER-02936,46,Other,9.12,6.04,2.96,5.2,Excellent,Medium,4.39,9.61,No,Positive,Yes +USER-02937,50,Male,4.42,4.57,3.76,13.51,Fair,High,8.8,3.74,No,Neutral,Yes +USER-02938,29,Other,5.79,5.5,4.6,9.14,Excellent,High,4.19,8.02,No,Positive,Yes +USER-02939,52,Other,11.15,4.56,0.17,8.22,Excellent,Medium,7.9,0.92,Yes,Positive,Yes +USER-02940,65,Other,8.81,6.03,0.73,4.93,Poor,High,8.3,3.4,No,Positive,No +USER-02941,31,Female,4.09,0.43,4.55,2.69,Excellent,Low,5.86,0.46,No,Positive,No +USER-02942,46,Male,5.73,0.94,4.02,8.44,Poor,High,6.74,2.77,Yes,Positive,Yes +USER-02943,47,Other,5.45,3.66,1.39,9.77,Good,Low,7.45,2.98,Yes,Positive,Yes +USER-02944,31,Other,8.53,2.29,1.27,8.13,Excellent,High,6.89,8.45,Yes,Positive,Yes +USER-02945,31,Male,4.14,1.93,1.55,5.55,Excellent,Low,6.05,7.45,Yes,Neutral,Yes +USER-02946,42,Male,5.34,7.1,3.73,11.27,Excellent,Low,6.94,5.81,No,Positive,No +USER-02947,35,Female,5.21,0.41,1.43,7.75,Good,High,6.29,9.43,Yes,Neutral,No +USER-02948,54,Male,2.0,7.82,2.89,10.44,Fair,Low,4.03,1.47,Yes,Negative,No +USER-02949,51,Other,6.61,7.06,0.59,4.29,Poor,High,5.89,2.97,Yes,Neutral,No +USER-02950,52,Male,11.46,2.74,2.9,7.89,Poor,Medium,4.36,6.8,Yes,Positive,Yes +USER-02951,62,Male,10.05,4.69,3.58,2.5,Fair,Low,6.76,0.37,No,Neutral,No +USER-02952,29,Female,3.92,7.49,2.36,1.9,Excellent,High,7.25,7.0,No,Neutral,Yes +USER-02953,31,Male,2.89,2.25,1.39,10.78,Excellent,High,4.73,4.26,No,Negative,No +USER-02954,51,Other,2.18,3.8,2.69,13.08,Fair,High,7.22,7.63,No,Positive,Yes +USER-02955,60,Other,10.54,6.48,3.96,2.78,Excellent,Medium,6.05,3.49,Yes,Positive,No +USER-02956,46,Male,11.58,7.13,2.62,13.17,Good,High,6.59,0.95,No,Positive,Yes +USER-02957,31,Male,4.38,5.12,1.5,5.38,Good,Low,6.97,4.54,No,Neutral,No +USER-02958,37,Male,6.08,6.22,2.38,8.04,Good,Medium,5.2,8.48,Yes,Negative,No +USER-02959,40,Other,3.65,4.71,3.4,5.71,Fair,Low,6.32,9.59,No,Negative,Yes +USER-02960,40,Other,6.99,5.77,2.05,7.98,Fair,Low,6.56,5.97,Yes,Positive,Yes +USER-02961,28,Other,4.12,1.4,2.72,7.93,Fair,Medium,8.15,3.65,Yes,Positive,Yes +USER-02962,37,Other,5.83,5.78,1.95,2.01,Excellent,Medium,8.98,3.55,Yes,Negative,No +USER-02963,32,Male,4.86,1.15,4.56,6.94,Good,Medium,7.11,9.04,No,Neutral,No +USER-02964,49,Other,10.55,0.3,3.73,3.77,Fair,High,5.16,3.68,No,Positive,Yes +USER-02965,53,Female,8.4,5.54,3.62,8.43,Poor,High,8.79,3.02,Yes,Neutral,No +USER-02966,32,Male,1.43,0.72,0.38,3.69,Excellent,High,8.11,7.99,No,Negative,No +USER-02967,37,Male,1.44,0.81,4.54,12.11,Poor,Low,6.26,8.82,No,Neutral,No +USER-02968,55,Male,9.8,6.4,2.21,14.55,Good,Medium,5.84,6.23,Yes,Negative,No +USER-02969,28,Female,4.57,0.73,1.43,3.35,Good,Low,7.23,4.13,No,Negative,Yes +USER-02970,24,Female,9.9,4.98,1.12,11.87,Poor,Low,4.44,3.71,Yes,Positive,No +USER-02971,51,Male,7.9,3.02,4.73,12.43,Fair,High,4.66,8.59,No,Positive,Yes +USER-02972,35,Male,4.63,7.4,0.44,12.11,Good,Low,5.82,3.18,No,Positive,No +USER-02973,55,Other,4.04,1.33,0.41,8.09,Good,Low,4.06,9.35,Yes,Neutral,Yes +USER-02974,47,Other,8.34,5.41,2.94,5.55,Fair,Medium,4.93,0.42,Yes,Negative,Yes +USER-02975,42,Male,4.63,3.16,1.36,7.69,Poor,Medium,7.41,1.19,Yes,Neutral,Yes +USER-02976,27,Female,6.72,3.33,4.02,3.67,Good,Medium,5.73,7.44,No,Positive,Yes +USER-02977,39,Other,11.25,0.53,0.79,3.32,Excellent,High,8.46,0.01,No,Neutral,Yes +USER-02978,23,Female,5.73,3.19,2.04,12.22,Fair,Low,8.29,1.16,No,Neutral,Yes +USER-02979,50,Female,3.31,1.82,2.45,9.68,Excellent,Low,7.38,2.4,No,Neutral,Yes +USER-02980,19,Other,2.32,5.11,2.97,14.1,Excellent,Low,7.61,9.43,No,Negative,Yes +USER-02981,39,Other,2.51,5.73,3.44,3.41,Fair,Medium,7.09,6.91,Yes,Positive,No +USER-02982,30,Female,10.65,6.82,1.47,4.69,Poor,Medium,8.17,8.06,No,Neutral,Yes +USER-02983,34,Male,11.62,7.35,0.13,6.64,Fair,Medium,8.57,0.53,Yes,Positive,No +USER-02984,40,Other,9.93,7.26,4.95,14.69,Poor,High,8.08,5.98,No,Positive,No +USER-02985,33,Female,8.8,6.01,2.36,13.38,Poor,Low,5.39,0.06,No,Positive,Yes +USER-02986,45,Male,2.45,6.63,2.07,7.65,Excellent,High,8.23,9.66,No,Neutral,Yes +USER-02987,36,Male,5.14,1.45,1.72,4.55,Excellent,Low,5.59,6.66,No,Neutral,No +USER-02988,42,Female,2.28,2.97,0.08,7.3,Excellent,Medium,5.83,7.3,Yes,Negative,Yes +USER-02989,49,Other,5.07,2.89,0.57,2.49,Poor,High,8.6,5.66,Yes,Positive,Yes +USER-02990,22,Male,9.64,3.62,0.94,8.41,Fair,Medium,6.45,7.6,No,Negative,Yes +USER-02991,55,Female,1.86,2.93,0.47,2.2,Good,Low,6.08,9.86,No,Negative,No +USER-02992,59,Male,11.4,1.76,0.97,2.95,Good,Medium,4.34,9.67,No,Positive,No +USER-02993,63,Other,7.97,3.71,2.08,11.52,Excellent,Medium,4.42,2.64,Yes,Positive,Yes +USER-02994,45,Male,4.39,7.95,0.84,9.56,Good,Low,8.92,8.47,No,Negative,Yes +USER-02995,47,Male,9.52,1.41,1.23,6.57,Fair,High,6.04,4.27,No,Negative,No +USER-02996,38,Male,1.06,2.79,2.42,5.27,Poor,High,4.7,7.51,Yes,Negative,No +USER-02997,24,Male,3.77,4.02,3.05,3.78,Fair,Medium,7.55,8.8,No,Positive,Yes +USER-02998,50,Male,4.4,6.26,2.38,7.04,Good,High,4.35,4.85,Yes,Negative,Yes +USER-02999,38,Male,6.56,1.34,1.0,14.29,Poor,Medium,5.97,2.11,No,Negative,Yes +USER-03000,50,Male,1.52,2.63,1.56,12.06,Fair,Medium,6.4,4.44,Yes,Neutral,Yes +USER-03001,53,Female,5.03,7.98,4.71,12.84,Good,Medium,7.51,5.67,No,Positive,No +USER-03002,40,Other,2.34,7.81,3.28,3.03,Excellent,Low,5.58,5.21,Yes,Neutral,No +USER-03003,20,Other,4.98,1.48,4.99,9.63,Good,Low,8.8,4.48,Yes,Neutral,No +USER-03004,29,Male,11.72,7.44,4.46,10.44,Good,Low,8.1,0.58,No,Positive,Yes +USER-03005,50,Female,4.14,6.24,4.52,4.8,Excellent,Low,5.19,9.38,No,Neutral,No +USER-03006,61,Male,9.29,0.61,2.65,1.69,Excellent,Low,4.34,0.56,No,Positive,Yes +USER-03007,62,Male,11.16,2.01,4.79,13.47,Excellent,Low,6.45,3.29,Yes,Negative,No +USER-03008,32,Female,10.07,1.48,4.19,2.09,Excellent,High,4.02,6.04,Yes,Neutral,Yes +USER-03009,44,Male,6.28,0.95,2.64,14.81,Poor,High,6.6,1.62,No,Neutral,Yes +USER-03010,28,Female,9.37,2.06,3.33,5.52,Fair,Medium,4.11,0.62,Yes,Neutral,No +USER-03011,33,Male,1.6,0.7,4.6,7.66,Poor,Medium,4.21,5.1,No,Positive,No +USER-03012,33,Male,11.88,1.22,3.83,2.23,Good,Low,5.75,8.07,Yes,Neutral,No +USER-03013,61,Other,1.15,7.88,0.31,2.86,Fair,Medium,6.51,3.76,No,Positive,Yes +USER-03014,60,Other,5.71,1.47,2.8,2.34,Fair,Low,4.62,1.81,Yes,Neutral,Yes +USER-03015,30,Other,1.64,4.32,3.41,8.08,Excellent,Low,6.76,0.1,No,Negative,Yes +USER-03016,22,Other,1.26,6.74,2.66,14.77,Fair,Low,4.13,9.63,Yes,Negative,No +USER-03017,43,Other,11.05,7.18,3.53,14.99,Excellent,High,5.7,6.97,No,Neutral,No +USER-03018,64,Female,8.25,3.44,2.28,1.67,Excellent,High,5.05,9.24,No,Positive,No +USER-03019,39,Male,11.24,7.63,4.28,11.01,Fair,Low,6.9,7.18,Yes,Negative,Yes +USER-03020,35,Female,9.48,5.18,1.74,4.43,Good,Medium,7.89,3.74,Yes,Positive,No +USER-03021,46,Female,5.82,7.86,3.44,9.86,Good,High,5.02,0.58,Yes,Positive,No +USER-03022,45,Male,5.28,6.69,1.26,14.22,Poor,High,8.65,0.91,No,Negative,Yes +USER-03023,60,Other,3.25,7.61,1.84,11.25,Good,High,7.8,4.77,Yes,Neutral,Yes +USER-03024,29,Other,8.66,3.48,1.17,10.22,Fair,Low,4.06,3.26,Yes,Positive,No +USER-03025,36,Male,7.05,7.17,2.82,8.89,Good,Low,6.01,8.64,Yes,Neutral,No +USER-03026,18,Other,8.82,1.31,0.62,11.47,Excellent,Low,8.61,2.85,Yes,Positive,Yes +USER-03027,65,Female,6.96,3.6,3.83,11.78,Fair,Low,8.32,3.66,Yes,Negative,No +USER-03028,32,Male,11.98,4.11,4.37,5.81,Fair,Medium,8.74,1.2,No,Neutral,Yes +USER-03029,40,Other,4.2,0.33,0.16,10.78,Excellent,Medium,5.79,6.72,No,Positive,No +USER-03030,20,Other,8.86,6.6,0.88,13.85,Good,High,7.85,0.26,No,Neutral,No +USER-03031,30,Female,4.53,4.89,1.04,5.89,Good,Medium,4.35,1.38,No,Neutral,Yes +USER-03032,36,Other,3.11,6.53,2.81,8.42,Excellent,High,7.03,8.69,No,Negative,No +USER-03033,41,Other,3.14,1.46,2.46,3.7,Good,Low,5.27,0.7,Yes,Neutral,No +USER-03034,41,Male,11.28,7.87,0.12,9.37,Good,High,4.8,1.59,Yes,Negative,Yes +USER-03035,45,Female,3.01,0.98,4.51,1.15,Excellent,Medium,6.06,8.04,Yes,Negative,Yes +USER-03036,62,Other,11.75,5.57,0.68,10.7,Fair,Low,7.32,0.71,Yes,Negative,No +USER-03037,64,Female,7.53,0.41,0.32,4.73,Excellent,High,6.9,5.38,Yes,Positive,Yes +USER-03038,39,Other,4.07,1.41,4.42,7.6,Excellent,Low,4.65,4.08,No,Neutral,Yes +USER-03039,49,Other,2.43,6.46,3.17,9.19,Fair,High,6.63,0.25,No,Negative,No +USER-03040,38,Male,3.16,3.0,0.16,12.94,Fair,Medium,5.23,1.41,Yes,Negative,Yes +USER-03041,56,Male,7.8,4.55,2.57,1.9,Good,High,5.09,5.85,Yes,Negative,No +USER-03042,34,Female,7.69,3.29,0.87,7.46,Good,Medium,4.7,3.92,No,Positive,Yes +USER-03043,32,Female,6.26,7.54,2.11,11.24,Poor,Medium,6.35,9.92,Yes,Positive,No +USER-03044,57,Female,9.42,3.91,0.5,11.78,Fair,High,4.97,9.17,No,Neutral,No +USER-03045,49,Male,6.26,0.65,0.47,2.08,Excellent,High,5.65,9.03,Yes,Negative,No +USER-03046,21,Female,10.46,5.25,1.32,1.95,Poor,High,7.53,7.73,No,Neutral,Yes +USER-03047,41,Male,3.39,6.22,0.8,12.23,Good,High,7.6,8.86,Yes,Positive,No +USER-03048,26,Female,7.25,7.31,1.83,4.62,Excellent,High,6.84,1.49,Yes,Negative,Yes +USER-03049,62,Other,3.3,6.02,2.48,9.58,Poor,Medium,8.38,6.24,Yes,Negative,No +USER-03050,27,Other,8.17,0.94,0.14,2.67,Excellent,High,8.1,9.71,Yes,Negative,Yes +USER-03051,52,Female,2.64,4.43,0.37,10.98,Excellent,Low,7.62,4.55,Yes,Positive,No +USER-03052,60,Male,9.46,3.63,2.93,8.53,Poor,High,4.06,9.07,No,Neutral,No +USER-03053,44,Other,5.12,5.53,1.85,8.13,Poor,Low,4.48,6.6,No,Negative,Yes +USER-03054,18,Other,4.85,6.42,3.09,6.19,Good,Medium,5.18,0.33,Yes,Positive,Yes +USER-03055,32,Male,4.72,0.17,2.26,8.77,Excellent,Low,7.85,1.0,Yes,Positive,Yes +USER-03056,31,Female,1.09,6.28,3.84,14.39,Fair,Medium,4.28,3.46,No,Negative,No +USER-03057,36,Other,9.77,1.07,1.97,2.01,Good,Low,6.78,9.47,Yes,Neutral,Yes +USER-03058,33,Other,11.89,1.55,0.63,14.68,Fair,Low,8.19,9.44,No,Neutral,Yes +USER-03059,19,Male,6.35,5.54,0.63,1.98,Fair,Low,7.82,8.35,No,Neutral,No +USER-03060,23,Other,1.95,6.63,0.06,3.99,Poor,High,7.76,2.1,No,Positive,No +USER-03061,42,Female,3.75,3.0,0.64,9.78,Poor,High,5.21,7.46,No,Neutral,No +USER-03062,51,Male,11.41,7.37,4.59,6.82,Fair,Medium,4.11,3.75,Yes,Neutral,No +USER-03063,53,Other,2.29,4.5,3.63,11.19,Fair,Medium,7.09,5.34,Yes,Negative,Yes +USER-03064,51,Male,4.24,6.61,1.34,12.14,Poor,Medium,7.92,3.16,No,Positive,No +USER-03065,31,Other,7.9,7.31,4.16,13.35,Excellent,Medium,7.83,0.72,Yes,Negative,Yes +USER-03066,42,Male,5.64,5.65,1.02,10.45,Good,Medium,8.99,7.2,No,Positive,Yes +USER-03067,44,Female,9.23,1.75,4.61,1.47,Excellent,Medium,6.04,6.24,No,Negative,Yes +USER-03068,35,Male,5.71,3.79,1.61,11.74,Good,Low,8.3,5.88,No,Negative,No +USER-03069,39,Other,9.1,2.52,1.76,4.39,Good,Medium,6.4,1.76,Yes,Positive,Yes +USER-03070,31,Male,11.16,7.9,0.05,8.78,Poor,Medium,8.29,9.83,Yes,Negative,Yes +USER-03071,44,Female,8.98,0.1,0.91,11.51,Good,Low,6.4,4.12,Yes,Negative,Yes +USER-03072,43,Other,5.03,0.77,4.18,12.75,Excellent,High,7.68,9.79,No,Positive,No +USER-03073,38,Female,8.71,3.82,3.43,4.26,Excellent,Medium,6.38,5.03,No,Negative,No +USER-03074,65,Female,6.71,7.22,0.37,7.69,Excellent,Low,5.42,3.17,Yes,Negative,Yes +USER-03075,51,Other,2.47,0.87,3.55,10.21,Fair,High,5.17,1.84,No,Negative,No +USER-03076,59,Female,3.47,0.21,0.64,12.62,Good,Medium,4.9,6.18,Yes,Neutral,No +USER-03077,46,Female,6.4,0.01,3.53,14.38,Excellent,Low,4.97,4.02,No,Negative,Yes +USER-03078,65,Male,3.58,3.76,0.66,4.66,Fair,Low,6.35,1.92,Yes,Positive,No +USER-03079,58,Other,8.85,7.52,2.46,10.41,Good,Medium,7.99,1.09,Yes,Negative,No +USER-03080,28,Other,3.17,0.48,1.93,3.2,Poor,Medium,8.75,7.21,Yes,Negative,No +USER-03081,30,Other,6.72,7.54,4.8,14.11,Fair,Medium,6.04,8.18,No,Positive,No +USER-03082,25,Male,6.83,4.59,4.49,3.32,Fair,Medium,4.49,8.79,No,Neutral,No +USER-03083,25,Female,8.72,1.17,4.04,13.49,Fair,High,5.68,1.83,No,Negative,No +USER-03084,62,Female,4.13,4.88,1.72,8.79,Excellent,Medium,7.98,6.48,No,Negative,No +USER-03085,28,Other,3.15,1.15,2.85,8.16,Excellent,High,8.25,5.56,No,Neutral,No +USER-03086,45,Male,5.39,3.92,4.46,3.27,Excellent,Medium,7.21,7.08,No,Negative,Yes +USER-03087,28,Other,5.09,5.53,1.64,1.25,Excellent,Medium,8.05,2.13,Yes,Positive,No +USER-03088,29,Male,10.16,3.24,3.81,5.85,Excellent,High,7.8,6.12,Yes,Negative,Yes +USER-03089,18,Male,4.59,0.84,1.49,1.81,Poor,Low,6.34,7.48,Yes,Negative,Yes +USER-03090,31,Other,6.97,6.8,2.11,1.67,Excellent,High,5.67,1.81,Yes,Neutral,No +USER-03091,58,Female,4.25,2.72,0.44,4.58,Fair,Low,4.1,3.94,No,Neutral,Yes +USER-03092,51,Female,5.99,1.98,1.93,12.97,Fair,Low,7.33,7.21,No,Positive,No +USER-03093,62,Female,9.0,7.3,0.29,10.4,Poor,Low,5.69,9.89,No,Negative,Yes +USER-03094,33,Male,4.4,7.14,4.95,12.71,Poor,Medium,8.47,9.74,Yes,Negative,No +USER-03095,44,Male,9.97,0.86,4.39,11.72,Excellent,Medium,6.34,8.13,No,Negative,No +USER-03096,27,Female,1.8,7.05,0.31,2.57,Fair,Medium,6.23,6.87,No,Neutral,No +USER-03097,47,Male,11.04,1.1,2.11,7.05,Excellent,Low,5.14,8.0,Yes,Positive,Yes +USER-03098,20,Other,11.62,7.46,3.5,5.99,Fair,Low,5.34,4.75,No,Neutral,Yes +USER-03099,18,Male,10.7,1.5,3.52,3.08,Fair,Medium,4.46,6.57,No,Neutral,No +USER-03100,65,Other,5.9,7.79,4.17,13.16,Fair,High,8.0,0.2,No,Positive,Yes +USER-03101,35,Other,9.99,4.85,2.07,9.58,Excellent,Medium,5.41,3.78,Yes,Positive,No +USER-03102,34,Other,9.79,5.15,0.37,6.15,Good,Medium,6.45,0.82,No,Neutral,No +USER-03103,52,Female,6.11,4.64,0.74,6.25,Poor,High,8.71,6.26,No,Negative,Yes +USER-03104,25,Other,7.97,0.34,0.42,3.42,Excellent,High,6.58,3.72,Yes,Negative,No +USER-03105,37,Other,11.29,3.13,1.29,5.1,Poor,Medium,4.16,1.45,Yes,Negative,No +USER-03106,38,Other,5.83,0.41,4.86,13.28,Good,Medium,7.22,4.3,Yes,Neutral,No +USER-03107,64,Male,1.89,0.7,4.44,13.2,Poor,High,5.23,7.63,No,Positive,No +USER-03108,43,Other,9.29,3.33,0.39,10.64,Poor,High,4.1,8.1,Yes,Positive,No +USER-03109,38,Female,4.72,3.25,0.63,11.01,Excellent,Low,4.51,9.73,No,Neutral,No +USER-03110,32,Other,3.88,6.25,1.6,9.42,Fair,High,7.63,6.47,Yes,Negative,No +USER-03111,48,Other,11.79,7.8,3.5,9.6,Fair,Medium,7.91,2.03,No,Neutral,Yes +USER-03112,47,Male,5.87,7.49,4.16,8.14,Fair,High,4.28,0.38,No,Positive,Yes +USER-03113,26,Male,4.23,3.73,1.81,1.27,Fair,Medium,8.69,0.25,No,Positive,No +USER-03114,36,Other,7.45,2.65,2.72,3.29,Good,High,8.01,4.68,Yes,Neutral,No +USER-03115,36,Female,11.13,3.85,0.29,8.72,Good,High,6.85,3.29,Yes,Positive,No +USER-03116,30,Female,9.44,0.5,0.96,3.69,Excellent,High,7.22,3.96,No,Neutral,Yes +USER-03117,59,Female,9.88,5.38,4.21,11.5,Excellent,Low,5.26,4.71,No,Positive,Yes +USER-03118,22,Other,6.07,6.92,0.18,10.98,Good,High,5.65,4.21,Yes,Neutral,No +USER-03119,32,Male,7.06,0.84,4.42,8.78,Fair,Medium,6.22,7.48,No,Neutral,Yes +USER-03120,56,Male,7.41,3.06,2.79,4.59,Excellent,High,7.71,4.62,No,Negative,No +USER-03121,35,Male,6.88,3.65,2.04,10.82,Poor,Medium,5.02,3.87,Yes,Negative,No +USER-03122,40,Female,2.31,3.15,1.59,3.05,Fair,Low,5.47,7.7,No,Neutral,No +USER-03123,56,Male,11.29,3.02,4.31,4.79,Excellent,Low,4.2,6.9,Yes,Negative,No +USER-03124,53,Male,5.59,2.41,1.76,10.89,Good,High,5.59,8.62,Yes,Negative,No +USER-03125,37,Male,8.39,0.49,2.4,13.02,Poor,Low,6.97,9.93,Yes,Negative,Yes +USER-03126,24,Female,6.22,2.71,3.1,4.93,Poor,High,4.75,6.43,No,Neutral,Yes +USER-03127,21,Male,6.56,4.65,4.63,3.74,Excellent,Low,7.43,5.61,No,Negative,No +USER-03128,42,Other,2.96,3.61,3.57,3.02,Excellent,Medium,7.63,2.36,Yes,Positive,No +USER-03129,51,Other,4.0,6.2,0.17,14.82,Good,High,5.12,2.14,Yes,Neutral,No +USER-03130,56,Male,2.4,3.47,2.27,14.5,Good,Low,7.96,0.11,No,Negative,Yes +USER-03131,50,Female,10.29,1.77,3.49,14.03,Poor,Medium,4.42,4.12,No,Positive,Yes +USER-03132,32,Male,2.82,2.17,1.09,7.45,Excellent,Low,5.1,8.91,No,Negative,Yes +USER-03133,64,Male,9.26,0.16,0.83,6.65,Fair,Low,6.83,3.24,No,Negative,Yes +USER-03134,23,Male,9.51,7.97,4.47,3.28,Excellent,High,7.49,9.99,No,Positive,No +USER-03135,55,Male,2.17,0.2,0.76,2.18,Poor,High,8.39,0.47,Yes,Neutral,Yes +USER-03136,20,Male,7.23,0.03,2.55,7.37,Good,Medium,6.44,2.78,Yes,Neutral,Yes +USER-03137,18,Male,11.77,5.92,3.44,7.65,Good,Low,7.83,5.91,No,Neutral,No +USER-03138,35,Other,8.33,1.52,3.98,8.11,Excellent,Low,8.47,1.14,No,Neutral,No +USER-03139,59,Other,8.45,6.33,4.09,11.64,Poor,Low,8.61,6.59,No,Negative,Yes +USER-03140,62,Other,8.33,7.55,3.47,8.2,Poor,High,7.5,7.2,Yes,Positive,No +USER-03141,35,Male,10.54,3.43,2.47,9.17,Poor,Low,8.48,8.89,Yes,Negative,Yes +USER-03142,53,Female,8.83,0.94,1.75,13.34,Poor,High,8.57,5.55,No,Negative,Yes +USER-03143,22,Other,1.55,2.07,4.21,1.3,Poor,High,7.06,6.25,Yes,Negative,No +USER-03144,39,Other,2.09,3.71,0.29,11.44,Good,Medium,6.19,9.07,Yes,Positive,No +USER-03145,31,Female,7.64,4.74,4.6,13.62,Good,High,5.17,5.55,No,Positive,Yes +USER-03146,26,Male,9.73,4.24,0.2,9.98,Fair,High,4.15,5.16,Yes,Negative,Yes +USER-03147,33,Female,10.29,2.18,3.31,2.37,Poor,High,6.84,0.91,No,Negative,Yes +USER-03148,47,Other,6.71,5.85,2.38,14.2,Good,Low,8.6,0.99,No,Negative,Yes +USER-03149,49,Male,5.27,1.16,1.86,4.04,Fair,Medium,8.38,9.97,Yes,Positive,No +USER-03150,37,Female,10.07,4.95,4.6,14.85,Good,High,7.69,5.7,Yes,Neutral,Yes +USER-03151,22,Female,2.32,4.91,1.49,6.16,Poor,High,8.95,0.32,Yes,Positive,No +USER-03152,57,Female,7.25,5.47,2.98,2.73,Poor,High,5.35,7.36,No,Positive,Yes +USER-03153,18,Male,4.96,3.83,4.3,11.9,Good,High,8.92,5.41,No,Negative,Yes +USER-03154,23,Male,8.76,3.7,3.69,7.55,Poor,High,6.78,3.22,No,Neutral,No +USER-03155,42,Male,5.82,5.65,1.21,11.35,Poor,Low,4.39,4.55,Yes,Negative,No +USER-03156,59,Female,6.93,2.81,3.87,6.19,Good,Medium,8.53,1.38,No,Positive,No +USER-03157,57,Male,6.28,4.48,1.83,7.97,Poor,Medium,7.99,9.0,Yes,Neutral,No +USER-03158,37,Female,3.22,6.2,0.75,13.02,Excellent,Medium,4.32,6.64,Yes,Neutral,Yes +USER-03159,57,Other,9.33,5.78,2.41,5.04,Poor,Low,8.62,0.51,No,Neutral,No +USER-03160,18,Female,2.41,0.29,1.77,13.69,Fair,High,4.27,1.28,No,Neutral,Yes +USER-03161,59,Male,6.88,6.97,1.1,2.59,Good,Medium,7.35,7.79,No,Negative,No +USER-03162,23,Female,7.55,1.38,3.99,8.98,Excellent,Low,4.99,6.47,Yes,Positive,No +USER-03163,34,Other,7.54,2.48,3.88,9.86,Fair,Low,6.56,2.72,No,Neutral,No +USER-03164,56,Female,3.88,7.2,1.48,7.86,Fair,Low,8.89,8.55,Yes,Negative,No +USER-03165,36,Other,11.12,7.36,1.89,4.63,Excellent,Low,4.42,5.86,Yes,Negative,Yes +USER-03166,23,Male,5.08,3.26,1.29,6.64,Excellent,High,4.21,3.02,Yes,Neutral,No +USER-03167,52,Female,11.02,4.61,2.57,14.64,Poor,Low,7.46,4.89,Yes,Positive,Yes +USER-03168,28,Other,8.8,7.46,0.32,9.1,Fair,Low,8.35,2.28,Yes,Negative,No +USER-03169,65,Male,5.03,1.34,3.56,9.65,Good,Medium,5.78,0.65,No,Neutral,Yes +USER-03170,53,Male,7.67,7.46,2.01,4.81,Excellent,Medium,5.14,1.35,No,Neutral,Yes +USER-03171,62,Other,8.53,4.47,2.62,7.87,Excellent,Low,7.58,6.97,No,Negative,No +USER-03172,22,Male,10.46,5.62,1.97,8.23,Fair,Medium,5.16,1.8,No,Neutral,No +USER-03173,41,Other,10.73,2.12,2.49,9.09,Fair,High,5.91,9.44,No,Neutral,Yes +USER-03174,18,Female,6.68,2.74,2.39,14.94,Good,High,6.87,6.23,No,Positive,Yes +USER-03175,53,Other,5.39,6.02,3.32,10.22,Fair,Medium,7.74,8.53,Yes,Positive,No +USER-03176,64,Female,4.22,3.07,4.76,7.33,Good,Medium,6.53,4.74,No,Neutral,Yes +USER-03177,51,Other,3.47,1.63,1.01,13.65,Good,Low,6.99,3.17,No,Negative,Yes +USER-03178,31,Other,9.26,4.83,3.53,10.88,Good,Medium,4.68,3.86,Yes,Neutral,Yes +USER-03179,64,Female,7.15,0.58,4.13,3.51,Excellent,Low,8.1,0.83,Yes,Positive,No +USER-03180,56,Male,5.52,0.68,1.29,3.16,Poor,Medium,5.21,1.9,No,Neutral,No +USER-03181,26,Female,4.57,2.87,0.7,3.71,Excellent,Low,6.31,3.7,Yes,Negative,No +USER-03182,53,Other,2.65,6.69,0.79,4.28,Poor,Low,8.92,2.03,Yes,Neutral,No +USER-03183,45,Other,4.09,3.86,0.22,11.55,Good,High,6.95,3.83,Yes,Neutral,No +USER-03184,23,Female,7.46,3.09,4.88,14.97,Excellent,Low,6.55,0.7,No,Negative,No +USER-03185,50,Female,2.4,4.9,1.12,7.75,Good,High,7.55,0.47,No,Neutral,Yes +USER-03186,31,Other,4.87,1.56,1.77,13.05,Good,High,7.52,2.71,No,Negative,No +USER-03187,57,Other,2.0,0.92,4.08,12.08,Excellent,Medium,7.72,3.33,No,Negative,Yes +USER-03188,45,Other,8.9,4.64,4.02,5.1,Fair,High,8.36,9.82,Yes,Neutral,No +USER-03189,32,Other,6.82,4.05,0.12,14.03,Poor,High,8.83,0.08,Yes,Negative,No +USER-03190,20,Other,8.92,6.4,1.53,3.34,Fair,High,7.95,5.18,Yes,Negative,No +USER-03191,37,Male,3.86,2.32,1.04,13.21,Fair,High,4.98,2.6,No,Neutral,Yes +USER-03192,62,Other,8.17,5.02,4.31,1.75,Poor,Medium,8.42,5.11,No,Negative,Yes +USER-03193,18,Other,7.33,4.68,2.59,7.28,Excellent,Medium,4.91,0.49,No,Positive,Yes +USER-03194,41,Other,6.89,1.59,2.64,10.04,Fair,Low,7.37,4.86,Yes,Neutral,Yes +USER-03195,62,Other,11.7,5.98,0.77,10.93,Fair,Low,8.03,3.83,No,Positive,No +USER-03196,55,Male,1.79,0.35,1.97,2.98,Good,Medium,4.14,3.75,Yes,Negative,Yes +USER-03197,63,Male,6.53,5.84,1.4,9.12,Fair,Medium,5.26,9.89,No,Positive,Yes +USER-03198,46,Female,7.21,3.33,4.72,13.21,Poor,Medium,6.4,6.65,Yes,Neutral,Yes +USER-03199,30,Other,6.65,4.98,4.34,5.43,Good,High,4.49,9.44,No,Neutral,Yes +USER-03200,26,Female,3.73,1.0,2.72,10.54,Fair,Medium,8.59,1.55,No,Neutral,Yes +USER-03201,27,Female,3.94,5.42,4.03,6.92,Good,Low,6.84,4.39,No,Positive,No +USER-03202,41,Male,6.56,3.22,3.79,9.41,Poor,Low,6.99,5.0,No,Neutral,No +USER-03203,65,Other,8.88,0.08,0.87,13.34,Excellent,Low,5.45,6.92,Yes,Positive,Yes +USER-03204,46,Other,11.28,1.04,2.46,6.79,Fair,Medium,7.43,6.75,Yes,Negative,Yes +USER-03205,25,Other,2.24,6.59,1.13,5.07,Fair,Low,7.37,3.13,Yes,Negative,No +USER-03206,49,Male,6.49,6.3,4.1,13.44,Good,High,5.2,4.94,Yes,Negative,Yes +USER-03207,56,Female,4.78,2.7,4.93,5.46,Poor,Medium,4.48,5.27,Yes,Neutral,No +USER-03208,62,Female,6.84,0.78,4.64,12.69,Fair,Low,6.51,8.55,Yes,Positive,No +USER-03209,60,Other,8.43,7.16,3.01,14.7,Good,Low,8.17,3.91,No,Positive,No +USER-03210,37,Other,11.48,5.05,4.91,6.97,Good,Low,7.83,9.5,Yes,Positive,No +USER-03211,61,Male,7.45,2.38,1.46,4.41,Fair,High,4.27,9.4,Yes,Positive,No +USER-03212,33,Female,9.55,5.88,3.19,5.07,Excellent,High,8.33,6.67,Yes,Negative,No +USER-03213,22,Other,5.85,0.92,3.09,6.21,Fair,Medium,8.06,8.25,No,Neutral,Yes +USER-03214,59,Other,1.36,7.98,3.23,2.94,Good,High,8.68,8.86,No,Negative,No +USER-03215,46,Female,3.92,3.54,3.73,7.56,Good,Medium,8.57,9.48,No,Negative,Yes +USER-03216,36,Other,11.65,2.02,3.86,9.44,Excellent,Low,5.94,4.16,No,Positive,No +USER-03217,59,Female,2.11,0.86,2.03,10.15,Poor,Low,7.67,0.94,No,Neutral,No +USER-03218,30,Female,11.61,0.88,3.08,1.22,Poor,High,4.29,4.31,No,Negative,No +USER-03219,53,Male,1.3,7.09,3.27,1.64,Good,Low,6.21,3.01,Yes,Neutral,No +USER-03220,34,Other,11.82,1.16,0.75,12.79,Poor,Low,5.27,2.79,Yes,Negative,Yes +USER-03221,34,Female,8.67,6.38,4.23,9.05,Poor,Medium,7.46,9.2,Yes,Positive,Yes +USER-03222,51,Other,5.39,0.47,4.03,4.38,Good,High,7.41,4.51,No,Neutral,Yes +USER-03223,24,Female,1.2,7.61,1.52,14.52,Fair,Medium,6.37,5.1,No,Neutral,No +USER-03224,35,Male,4.74,2.65,1.54,9.26,Poor,Low,8.88,1.23,No,Neutral,No +USER-03225,63,Male,6.77,4.07,1.85,1.66,Good,Low,8.57,9.02,Yes,Positive,Yes +USER-03226,36,Other,9.89,6.43,1.21,6.5,Poor,High,5.35,7.95,Yes,Negative,Yes +USER-03227,29,Female,8.56,4.8,3.39,9.46,Fair,Medium,6.93,4.69,Yes,Negative,Yes +USER-03228,46,Other,6.75,2.78,4.52,11.87,Excellent,Medium,4.58,4.03,Yes,Negative,No +USER-03229,65,Other,8.21,2.29,1.83,1.51,Good,Low,4.13,3.61,No,Negative,Yes +USER-03230,18,Other,2.15,0.25,2.09,14.81,Good,High,4.98,6.99,No,Positive,Yes +USER-03231,53,Other,6.48,4.39,2.15,7.15,Good,High,6.22,3.17,Yes,Negative,No +USER-03232,54,Male,4.9,5.67,1.52,14.42,Poor,High,8.37,0.71,No,Neutral,Yes +USER-03233,21,Other,4.48,3.33,1.1,8.32,Poor,Medium,5.2,5.4,Yes,Negative,No +USER-03234,56,Other,11.8,2.98,2.05,6.04,Poor,Medium,6.38,6.09,Yes,Neutral,No +USER-03235,20,Female,11.62,6.91,0.97,3.04,Poor,Medium,8.41,9.97,No,Negative,Yes +USER-03236,18,Female,8.59,2.3,2.47,3.88,Fair,Low,6.29,0.42,No,Negative,No +USER-03237,52,Female,5.81,0.03,3.34,12.95,Excellent,Medium,6.98,2.17,No,Neutral,No +USER-03238,49,Other,4.47,3.87,0.72,10.84,Fair,Low,4.16,7.25,No,Negative,Yes +USER-03239,62,Other,3.2,2.76,1.74,10.09,Excellent,Low,7.53,6.08,No,Negative,Yes +USER-03240,43,Female,10.21,4.42,1.81,13.74,Good,Medium,4.6,7.58,No,Neutral,No +USER-03241,52,Female,3.98,3.53,4.49,7.31,Excellent,Medium,4.6,7.77,Yes,Negative,Yes +USER-03242,30,Female,9.86,1.28,2.67,9.32,Poor,Medium,5.33,1.42,No,Positive,No +USER-03243,33,Other,8.75,4.83,1.9,14.05,Excellent,High,5.34,6.11,No,Neutral,No +USER-03244,62,Female,10.69,6.83,2.85,1.84,Fair,Medium,7.75,5.74,Yes,Positive,No +USER-03245,26,Female,2.61,3.42,2.17,8.5,Fair,Medium,7.92,7.84,Yes,Negative,Yes +USER-03246,24,Other,10.72,6.62,2.13,5.59,Good,Medium,4.14,1.06,Yes,Negative,Yes +USER-03247,60,Female,9.58,5.01,4.98,1.45,Fair,High,5.1,8.05,No,Negative,No +USER-03248,22,Other,7.89,1.1,0.68,3.46,Excellent,Medium,6.77,4.22,No,Neutral,No +USER-03249,62,Other,1.19,7.47,3.01,11.94,Excellent,High,4.57,8.4,Yes,Positive,No +USER-03250,20,Female,2.12,3.82,4.76,12.0,Excellent,High,6.78,3.17,Yes,Neutral,Yes +USER-03251,58,Female,11.94,1.23,0.22,11.72,Fair,Medium,4.32,1.09,No,Positive,No +USER-03252,58,Other,6.77,6.04,4.57,14.65,Poor,Low,7.69,8.67,Yes,Negative,Yes +USER-03253,19,Other,5.44,1.61,3.58,13.33,Fair,Low,5.58,7.99,Yes,Negative,No +USER-03254,44,Other,2.86,3.91,0.6,11.62,Fair,High,8.68,4.06,Yes,Neutral,Yes +USER-03255,64,Other,8.84,6.77,4.98,7.73,Excellent,Low,4.58,4.55,No,Negative,Yes +USER-03256,53,Other,11.1,5.34,0.23,4.92,Excellent,High,6.08,8.19,No,Neutral,Yes +USER-03257,48,Female,1.63,0.22,1.16,11.84,Good,Medium,8.72,2.69,Yes,Positive,Yes +USER-03258,51,Other,11.01,1.23,4.46,11.55,Excellent,Low,7.69,2.45,Yes,Positive,No +USER-03259,18,Female,10.95,3.1,0.83,10.83,Fair,High,4.97,2.53,No,Neutral,No +USER-03260,24,Male,10.21,0.79,4.6,12.32,Poor,Low,8.86,6.46,No,Neutral,Yes +USER-03261,36,Female,1.84,5.5,0.31,10.21,Excellent,Low,5.57,2.73,No,Neutral,Yes +USER-03262,23,Other,8.95,2.79,4.63,5.61,Fair,Low,5.75,6.85,No,Positive,Yes +USER-03263,56,Female,4.17,3.63,0.51,5.81,Fair,High,7.97,2.12,Yes,Negative,No +USER-03264,26,Male,1.97,0.93,0.88,13.02,Good,High,5.32,9.86,No,Negative,Yes +USER-03265,46,Other,11.45,4.1,4.07,2.19,Fair,High,8.42,3.34,Yes,Negative,Yes +USER-03266,57,Other,4.98,0.42,4.61,13.74,Fair,Low,5.3,0.87,No,Positive,Yes +USER-03267,21,Male,11.36,1.88,1.73,9.26,Excellent,High,5.28,6.56,No,Neutral,No +USER-03268,22,Female,5.47,7.43,0.07,14.39,Good,Medium,4.2,9.6,No,Negative,No +USER-03269,37,Female,8.89,0.6,4.88,5.12,Poor,Low,7.12,8.92,No,Neutral,Yes +USER-03270,59,Female,4.84,0.75,2.03,5.43,Good,Medium,6.87,0.81,No,Positive,Yes +USER-03271,27,Female,9.62,6.5,4.33,1.96,Fair,Medium,7.72,8.26,Yes,Positive,Yes +USER-03272,38,Male,10.08,1.4,0.66,9.99,Good,High,6.49,6.62,No,Neutral,No +USER-03273,45,Female,10.79,4.78,2.55,9.5,Good,High,6.14,5.93,Yes,Positive,No +USER-03274,50,Female,11.58,4.58,3.81,7.05,Excellent,Medium,4.45,5.86,Yes,Neutral,No +USER-03275,38,Female,10.62,3.92,0.55,2.2,Poor,Medium,6.42,9.8,No,Negative,Yes +USER-03276,38,Male,4.75,0.49,2.39,1.31,Excellent,High,7.54,2.87,No,Neutral,No +USER-03277,43,Female,1.06,7.95,1.15,7.65,Excellent,Medium,7.06,1.59,No,Negative,No +USER-03278,24,Female,8.01,3.58,4.94,4.49,Good,Low,4.69,0.47,Yes,Positive,Yes +USER-03279,59,Other,4.97,1.73,2.08,11.17,Excellent,High,4.46,7.0,No,Positive,Yes +USER-03280,27,Other,2.38,3.27,0.98,10.53,Excellent,High,6.63,0.89,No,Negative,Yes +USER-03281,59,Female,9.11,1.24,3.25,3.07,Poor,Medium,4.66,7.35,Yes,Neutral,Yes +USER-03282,18,Male,1.53,0.4,4.9,14.06,Good,Low,7.51,3.52,No,Positive,Yes +USER-03283,32,Other,8.71,4.95,4.93,1.57,Poor,Low,8.77,6.89,Yes,Negative,Yes +USER-03284,27,Female,3.21,3.59,3.12,8.01,Fair,Low,6.4,9.48,No,Positive,No +USER-03285,63,Male,10.84,7.34,1.87,13.96,Good,High,5.6,8.62,Yes,Positive,No +USER-03286,53,Other,4.55,3.29,4.28,10.49,Excellent,Medium,8.13,8.06,Yes,Neutral,No +USER-03287,53,Female,3.93,2.34,0.49,14.13,Excellent,Medium,6.86,4.17,Yes,Negative,No +USER-03288,34,Male,3.3,2.66,2.84,10.23,Fair,Low,4.75,6.37,Yes,Neutral,Yes +USER-03289,52,Male,4.66,4.79,3.65,4.09,Good,Medium,5.59,1.38,Yes,Negative,Yes +USER-03290,41,Male,8.27,6.38,2.1,15.0,Good,Medium,6.25,4.06,Yes,Neutral,No +USER-03291,24,Other,10.92,0.94,3.06,14.71,Excellent,High,8.14,5.11,Yes,Positive,Yes +USER-03292,41,Other,5.6,3.46,1.86,2.05,Poor,Low,6.84,0.75,No,Negative,Yes +USER-03293,59,Female,3.41,5.09,3.5,8.73,Poor,Low,5.52,1.62,No,Neutral,No +USER-03294,25,Other,7.17,7.07,4.56,4.41,Fair,Medium,7.03,3.66,Yes,Positive,No +USER-03295,25,Male,2.31,5.5,1.23,11.26,Fair,High,8.96,0.68,Yes,Positive,No +USER-03296,55,Male,6.73,6.47,3.01,10.37,Fair,Medium,4.66,7.27,No,Negative,No +USER-03297,23,Female,8.72,4.21,4.31,10.57,Fair,High,7.57,8.01,Yes,Neutral,No +USER-03298,23,Other,10.41,6.91,3.62,1.17,Fair,Medium,4.26,2.9,Yes,Negative,Yes +USER-03299,62,Female,10.28,6.9,1.19,11.09,Poor,Medium,5.88,3.37,Yes,Positive,No +USER-03300,62,Female,1.32,4.91,0.03,6.5,Fair,High,5.58,6.45,Yes,Positive,Yes +USER-03301,50,Male,6.85,7.2,0.54,13.1,Excellent,Medium,4.99,9.34,Yes,Positive,Yes +USER-03302,18,Other,4.82,7.55,4.36,14.5,Fair,Low,4.76,3.96,No,Positive,Yes +USER-03303,59,Other,1.96,6.33,3.28,12.36,Fair,Low,5.76,4.88,Yes,Negative,Yes +USER-03304,56,Male,5.79,2.69,3.64,2.67,Poor,Low,5.58,2.15,No,Neutral,Yes +USER-03305,52,Other,4.67,0.47,3.67,1.32,Fair,High,4.29,6.03,No,Negative,Yes +USER-03306,65,Female,3.22,6.3,3.25,5.95,Good,Low,7.69,4.81,Yes,Neutral,Yes +USER-03307,58,Other,4.68,4.55,1.97,7.5,Excellent,Low,4.03,5.8,Yes,Neutral,No +USER-03308,25,Male,9.8,2.08,2.87,12.93,Good,Medium,7.43,4.56,Yes,Neutral,No +USER-03309,44,Female,11.43,3.8,4.35,5.53,Excellent,High,5.73,0.31,No,Neutral,Yes +USER-03310,60,Female,5.77,1.19,3.42,13.15,Poor,Low,6.78,8.6,No,Positive,Yes +USER-03311,64,Other,8.49,2.72,1.44,3.93,Poor,Low,6.49,6.91,Yes,Positive,No +USER-03312,29,Other,5.58,2.75,0.74,12.21,Poor,Low,4.29,4.62,Yes,Negative,No +USER-03313,56,Male,7.6,4.46,0.58,6.56,Fair,High,8.43,8.1,No,Negative,Yes +USER-03314,29,Other,4.18,3.46,2.08,5.04,Good,Medium,6.63,4.16,Yes,Negative,No +USER-03315,40,Male,6.66,1.11,4.25,14.94,Poor,High,7.13,2.4,No,Positive,Yes +USER-03316,58,Other,7.48,6.66,4.26,9.16,Fair,Medium,6.27,1.58,No,Neutral,No +USER-03317,43,Female,11.2,7.25,2.07,11.62,Excellent,Low,8.07,8.55,Yes,Neutral,No +USER-03318,19,Female,8.28,3.64,3.96,5.74,Poor,Low,6.1,5.02,Yes,Positive,Yes +USER-03319,19,Other,4.57,4.84,4.02,11.96,Fair,Medium,7.83,4.58,Yes,Negative,Yes +USER-03320,32,Male,6.62,1.23,0.42,7.61,Poor,Medium,7.59,7.91,No,Positive,Yes +USER-03321,38,Female,3.0,6.55,0.63,7.85,Poor,High,6.98,3.04,Yes,Negative,No +USER-03322,19,Other,1.09,4.4,2.55,2.43,Fair,Medium,7.77,1.59,No,Positive,Yes +USER-03323,23,Female,7.94,2.4,1.76,8.36,Poor,Medium,4.78,9.69,No,Negative,Yes +USER-03324,21,Female,2.03,0.0,3.77,9.04,Poor,Medium,6.69,2.69,No,Negative,No +USER-03325,54,Other,10.09,6.45,4.77,6.83,Excellent,Medium,6.45,1.3,No,Neutral,No +USER-03326,47,Female,5.47,1.67,1.68,11.48,Fair,High,7.48,3.91,No,Negative,No +USER-03327,33,Female,2.45,5.74,1.43,6.22,Poor,Low,6.43,2.6,Yes,Positive,Yes +USER-03328,45,Other,4.21,5.08,3.49,13.62,Good,Low,7.25,0.01,No,Neutral,No +USER-03329,45,Male,9.55,5.67,0.87,2.55,Excellent,Medium,7.55,0.21,Yes,Neutral,No +USER-03330,21,Female,10.9,5.83,2.39,13.83,Good,Low,4.24,1.9,No,Negative,Yes +USER-03331,18,Other,5.82,7.72,4.16,1.29,Poor,Medium,8.76,7.21,Yes,Negative,No +USER-03332,62,Other,10.01,4.37,3.97,10.58,Good,Medium,6.81,3.32,No,Neutral,Yes +USER-03333,22,Male,2.6,4.59,3.26,14.35,Fair,High,5.23,1.99,Yes,Negative,Yes +USER-03334,59,Other,5.54,3.7,4.43,2.24,Excellent,Low,8.8,7.19,Yes,Neutral,No +USER-03335,33,Male,4.01,2.13,4.05,10.37,Excellent,Medium,5.06,9.34,No,Negative,No +USER-03336,62,Male,7.88,6.01,0.34,5.18,Poor,Medium,4.42,1.32,No,Negative,No +USER-03337,43,Other,8.79,7.64,1.82,10.79,Fair,Low,8.76,8.44,Yes,Neutral,Yes +USER-03338,41,Other,2.22,6.38,1.18,14.21,Fair,Low,8.44,2.89,Yes,Negative,Yes +USER-03339,39,Male,3.85,7.59,4.82,2.96,Poor,High,4.97,6.92,Yes,Neutral,Yes +USER-03340,38,Male,6.72,7.08,1.04,14.17,Good,Medium,5.59,3.47,No,Negative,Yes +USER-03341,32,Female,3.79,3.74,3.28,6.85,Good,Medium,5.37,2.26,Yes,Neutral,Yes +USER-03342,43,Male,7.43,5.45,4.44,5.11,Excellent,Low,4.55,6.16,No,Neutral,No +USER-03343,56,Other,2.36,0.16,0.35,14.81,Good,High,4.16,2.33,Yes,Negative,No +USER-03344,57,Other,4.73,4.92,4.48,1.66,Poor,Medium,7.64,3.65,No,Neutral,Yes +USER-03345,42,Other,4.2,7.98,4.54,6.98,Good,High,7.57,5.77,Yes,Neutral,Yes +USER-03346,37,Other,5.27,3.64,2.53,4.74,Excellent,Low,4.58,3.49,No,Neutral,Yes +USER-03347,28,Male,1.84,7.82,1.09,5.82,Good,High,5.53,7.34,Yes,Negative,Yes +USER-03348,61,Female,5.0,3.96,3.01,13.23,Good,Medium,7.83,6.12,Yes,Neutral,Yes +USER-03349,46,Female,6.62,4.38,4.12,1.55,Excellent,Low,7.23,4.02,Yes,Neutral,Yes +USER-03350,20,Other,2.32,0.87,3.52,1.37,Poor,High,5.82,4.87,No,Neutral,No +USER-03351,35,Female,2.85,3.21,4.54,2.65,Good,Low,4.92,1.02,No,Neutral,Yes +USER-03352,59,Male,7.9,7.34,2.74,4.34,Good,High,6.41,1.49,No,Neutral,No +USER-03353,64,Male,4.08,6.71,3.09,5.99,Excellent,Medium,5.77,7.1,Yes,Negative,No +USER-03354,46,Male,3.26,4.95,3.06,4.65,Good,Low,7.38,2.39,Yes,Negative,Yes +USER-03355,31,Male,11.16,0.98,0.33,4.04,Good,Medium,4.68,1.4,Yes,Negative,Yes +USER-03356,60,Other,3.65,6.38,1.73,8.91,Fair,Medium,7.43,9.78,No,Positive,Yes +USER-03357,30,Male,8.73,6.7,4.02,12.66,Excellent,Medium,6.75,9.06,No,Negative,No +USER-03358,46,Female,8.55,6.45,3.02,1.65,Excellent,High,6.2,8.9,No,Positive,No +USER-03359,65,Male,11.91,3.6,2.93,3.22,Poor,Low,7.89,2.96,No,Negative,No +USER-03360,61,Other,9.67,3.2,2.63,13.57,Fair,Low,5.12,9.2,No,Neutral,No +USER-03361,19,Female,1.0,0.25,4.03,3.49,Fair,Low,4.51,6.16,No,Neutral,Yes +USER-03362,25,Other,7.12,6.37,3.33,11.62,Good,Medium,7.79,7.97,No,Neutral,No +USER-03363,43,Female,2.81,0.74,1.58,10.63,Poor,Medium,4.63,4.99,Yes,Positive,Yes +USER-03364,63,Female,7.8,1.33,3.14,4.47,Fair,High,6.07,3.06,No,Positive,No +USER-03365,34,Other,9.2,1.98,4.37,11.18,Poor,Low,5.63,4.86,Yes,Neutral,Yes +USER-03366,46,Female,7.38,3.98,2.75,9.77,Fair,Medium,8.0,9.77,Yes,Negative,No +USER-03367,46,Other,5.79,7.67,4.79,11.23,Excellent,Low,8.52,1.74,No,Neutral,Yes +USER-03368,46,Male,4.12,4.61,3.62,11.49,Fair,Low,5.94,5.29,Yes,Positive,Yes +USER-03369,33,Other,10.59,7.65,2.99,11.27,Good,Medium,4.76,5.55,Yes,Negative,No +USER-03370,65,Other,2.68,6.99,2.56,10.82,Excellent,Low,6.84,5.74,Yes,Negative,Yes +USER-03371,45,Female,2.82,7.57,0.1,2.12,Good,High,6.44,9.21,Yes,Positive,No +USER-03372,50,Female,2.09,3.66,0.36,8.87,Fair,Medium,5.73,9.11,No,Neutral,Yes +USER-03373,40,Female,3.11,0.9,3.78,7.12,Fair,Low,4.24,9.13,Yes,Neutral,Yes +USER-03374,44,Male,4.42,4.62,0.89,5.67,Poor,Medium,4.69,0.84,No,Neutral,Yes +USER-03375,53,Female,9.91,7.03,1.15,14.16,Poor,Medium,4.84,9.49,Yes,Negative,Yes +USER-03376,55,Female,8.58,1.05,4.61,6.06,Good,Medium,8.41,6.35,No,Positive,Yes +USER-03377,62,Male,3.31,2.19,2.95,12.19,Poor,Low,5.49,1.08,Yes,Neutral,No +USER-03378,49,Male,2.44,6.49,4.5,4.22,Fair,Low,5.67,5.03,Yes,Neutral,Yes +USER-03379,49,Other,8.75,6.33,0.35,12.69,Good,High,4.99,4.5,No,Positive,No +USER-03380,50,Female,4.55,5.34,1.57,6.07,Fair,Low,5.62,3.71,Yes,Positive,Yes +USER-03381,19,Other,5.99,2.77,2.92,3.59,Poor,Low,6.38,1.33,Yes,Negative,Yes +USER-03382,57,Other,11.78,0.93,3.06,12.8,Good,High,4.52,8.48,Yes,Neutral,Yes +USER-03383,27,Other,10.15,0.46,3.66,2.27,Fair,Medium,7.14,9.49,Yes,Positive,No +USER-03384,60,Other,1.98,1.62,2.91,8.39,Good,High,6.41,5.97,Yes,Negative,Yes +USER-03385,19,Other,4.75,3.7,3.34,2.08,Poor,Low,6.57,0.22,No,Negative,No +USER-03386,55,Male,4.78,3.37,3.58,11.29,Fair,Low,7.46,7.25,Yes,Neutral,Yes +USER-03387,26,Male,2.38,0.69,2.52,7.57,Poor,High,4.88,0.42,No,Negative,No +USER-03388,34,Other,3.74,3.9,4.53,5.41,Fair,Low,8.46,0.87,No,Negative,Yes +USER-03389,38,Female,2.11,5.86,2.54,1.78,Fair,Low,5.21,7.18,Yes,Neutral,Yes +USER-03390,27,Female,6.04,7.73,4.17,13.65,Poor,High,4.53,2.49,No,Positive,No +USER-03391,57,Female,1.38,7.67,3.34,3.27,Good,High,5.54,5.67,Yes,Neutral,Yes +USER-03392,42,Female,9.37,0.27,0.52,2.58,Fair,Medium,7.39,3.93,No,Positive,No +USER-03393,62,Other,2.58,0.58,0.24,2.47,Good,Low,4.37,7.11,Yes,Neutral,Yes +USER-03394,20,Other,4.97,7.95,1.13,13.69,Fair,High,6.5,6.16,Yes,Neutral,Yes +USER-03395,52,Male,4.5,3.25,2.14,10.11,Fair,Low,6.85,4.34,No,Negative,Yes +USER-03396,27,Other,7.61,1.39,0.23,7.1,Poor,Low,7.0,5.66,Yes,Negative,No +USER-03397,47,Female,1.23,2.04,1.19,12.94,Excellent,Low,6.44,3.67,No,Positive,No +USER-03398,20,Other,6.84,3.71,4.37,2.05,Excellent,High,8.07,5.3,No,Negative,Yes +USER-03399,55,Female,2.32,5.7,2.52,9.21,Good,Low,6.66,3.74,No,Negative,No +USER-03400,43,Male,2.65,3.54,1.91,12.89,Poor,High,6.28,8.16,Yes,Negative,Yes +USER-03401,55,Other,7.16,0.4,4.43,8.42,Poor,Medium,8.35,5.63,No,Positive,Yes +USER-03402,54,Female,11.2,6.23,1.35,10.08,Good,Low,5.81,2.3,Yes,Positive,Yes +USER-03403,60,Female,8.4,0.19,3.69,8.56,Fair,Medium,7.77,1.97,No,Neutral,No +USER-03404,20,Male,8.16,2.92,2.4,10.6,Excellent,High,7.07,7.57,No,Neutral,Yes +USER-03405,63,Female,1.73,6.17,3.8,1.54,Fair,Low,7.57,2.49,No,Negative,Yes +USER-03406,18,Female,6.12,3.8,1.26,5.09,Poor,Low,8.6,7.97,Yes,Neutral,No +USER-03407,28,Female,7.2,7.34,1.12,13.91,Good,Medium,7.86,8.13,Yes,Negative,Yes +USER-03408,35,Other,9.06,2.91,4.56,8.31,Poor,High,5.09,4.2,Yes,Negative,Yes +USER-03409,62,Other,10.64,6.2,1.43,13.89,Good,Medium,7.03,3.66,No,Negative,Yes +USER-03410,29,Female,1.37,5.36,2.9,12.05,Poor,Medium,4.55,7.37,Yes,Neutral,Yes +USER-03411,50,Male,3.33,3.92,3.53,5.09,Good,Low,6.76,5.72,No,Negative,No +USER-03412,28,Other,2.13,2.31,3.96,5.4,Good,Low,7.32,4.16,Yes,Negative,No +USER-03413,32,Other,8.8,2.33,1.01,14.39,Poor,Medium,6.33,1.61,Yes,Negative,Yes +USER-03414,22,Male,3.62,0.94,1.71,4.19,Good,Low,6.44,8.87,Yes,Neutral,No +USER-03415,27,Other,5.35,5.09,4.17,5.51,Good,Medium,7.25,6.01,Yes,Positive,No +USER-03416,59,Female,10.77,5.37,4.4,7.97,Poor,Medium,7.39,7.22,No,Positive,No +USER-03417,18,Female,10.06,7.68,4.83,9.97,Excellent,Low,4.51,8.07,Yes,Positive,No +USER-03418,50,Female,5.0,2.46,3.23,8.04,Good,Low,5.86,7.85,Yes,Negative,No +USER-03419,53,Other,2.22,3.71,0.34,10.19,Fair,Medium,4.48,8.85,Yes,Positive,Yes +USER-03420,50,Other,6.77,0.61,2.8,12.91,Poor,Low,4.44,8.79,Yes,Negative,Yes +USER-03421,37,Male,8.68,0.65,1.75,5.01,Excellent,High,8.68,4.37,Yes,Neutral,Yes +USER-03422,44,Male,9.22,3.27,3.76,4.91,Poor,Medium,4.06,8.51,Yes,Positive,No +USER-03423,52,Other,4.37,6.17,1.85,2.82,Fair,Low,4.06,0.17,No,Neutral,No +USER-03424,35,Other,6.18,5.48,4.99,14.48,Poor,High,6.42,7.11,Yes,Neutral,Yes +USER-03425,60,Female,1.33,0.26,2.39,11.55,Poor,Low,7.28,1.46,No,Positive,No +USER-03426,50,Female,10.94,6.43,3.21,11.53,Poor,High,8.12,8.22,No,Negative,No +USER-03427,28,Female,1.96,4.91,4.05,7.89,Excellent,Medium,6.09,9.02,Yes,Negative,No +USER-03428,30,Male,2.69,2.55,4.08,13.63,Poor,High,4.64,8.99,No,Positive,No +USER-03429,32,Female,11.21,6.91,2.55,11.82,Poor,Medium,4.95,9.14,Yes,Negative,No +USER-03430,27,Other,6.65,5.01,4.46,9.42,Good,Medium,8.89,1.29,Yes,Negative,No +USER-03431,45,Male,2.61,3.89,1.76,6.0,Good,Low,7.52,7.73,Yes,Positive,No +USER-03432,32,Other,5.95,4.79,0.37,7.2,Poor,Low,8.35,7.46,No,Positive,No +USER-03433,65,Female,8.72,1.84,3.27,1.57,Fair,High,6.05,9.53,No,Positive,Yes +USER-03434,50,Other,10.43,2.39,4.33,12.17,Good,Low,7.28,4.45,Yes,Negative,No +USER-03435,60,Other,5.56,5.87,3.46,1.44,Excellent,High,4.47,0.35,No,Negative,No +USER-03436,18,Female,2.92,2.83,2.2,13.0,Poor,Low,6.82,6.5,No,Positive,Yes +USER-03437,32,Female,3.1,7.23,4.55,9.24,Excellent,Low,4.32,7.52,No,Neutral,No +USER-03438,60,Female,7.21,1.19,3.73,8.8,Good,Medium,4.59,5.42,Yes,Positive,No +USER-03439,58,Female,4.27,5.58,0.03,3.07,Fair,High,6.29,1.76,No,Neutral,Yes +USER-03440,45,Other,7.83,0.02,4.93,14.83,Fair,High,8.26,2.68,No,Negative,No +USER-03441,37,Female,8.53,3.6,0.58,1.31,Excellent,High,8.89,2.12,Yes,Neutral,No +USER-03442,47,Female,11.06,7.03,4.78,5.2,Good,Medium,8.95,9.32,Yes,Negative,Yes +USER-03443,47,Female,4.03,7.25,1.07,7.79,Good,Medium,4.57,9.02,Yes,Negative,Yes +USER-03444,51,Female,8.71,0.22,1.33,1.42,Excellent,Medium,4.87,5.43,No,Negative,Yes +USER-03445,25,Other,10.01,1.09,2.41,9.86,Poor,Medium,6.57,8.23,Yes,Positive,Yes +USER-03446,33,Other,2.6,0.06,3.01,13.23,Fair,Low,4.06,9.6,No,Negative,No +USER-03447,61,Male,11.23,6.02,4.26,2.16,Poor,Low,4.82,6.78,Yes,Positive,Yes +USER-03448,20,Male,9.76,5.57,0.87,14.4,Good,Low,4.35,1.58,No,Negative,Yes +USER-03449,63,Other,1.35,5.16,0.28,9.32,Poor,Low,8.54,8.73,No,Positive,No +USER-03450,26,Female,6.44,1.58,3.19,11.37,Poor,Low,8.4,7.02,Yes,Negative,Yes +USER-03451,52,Male,5.83,4.32,3.55,8.43,Fair,Medium,7.88,1.77,No,Positive,No +USER-03452,25,Male,10.65,7.09,4.12,14.9,Poor,Low,5.93,8.89,Yes,Negative,No +USER-03453,33,Other,10.57,0.9,4.57,4.78,Excellent,High,5.48,4.61,No,Negative,No +USER-03454,62,Male,10.53,3.66,1.49,4.66,Poor,High,5.27,9.45,Yes,Positive,No +USER-03455,62,Female,11.78,7.74,0.55,7.6,Good,High,5.1,2.76,No,Positive,Yes +USER-03456,18,Male,4.38,7.65,2.45,14.25,Good,High,8.59,7.63,No,Neutral,Yes +USER-03457,37,Male,4.54,6.61,4.51,13.51,Good,Medium,8.29,7.23,Yes,Neutral,Yes +USER-03458,51,Female,10.54,1.56,0.55,5.24,Excellent,Medium,5.67,7.5,Yes,Negative,Yes +USER-03459,54,Male,2.92,1.29,0.06,3.84,Fair,Low,4.88,9.01,No,Neutral,No +USER-03460,44,Other,6.77,6.41,4.05,3.21,Excellent,Low,5.72,5.48,Yes,Neutral,Yes +USER-03461,43,Other,7.74,4.96,1.67,11.46,Poor,Medium,4.6,5.03,Yes,Positive,Yes +USER-03462,38,Male,5.63,1.01,4.22,8.52,Poor,High,8.86,4.78,No,Positive,Yes +USER-03463,38,Female,11.25,2.14,0.93,3.72,Excellent,High,4.33,6.09,Yes,Negative,No +USER-03464,37,Female,6.93,1.02,2.4,6.39,Fair,Low,7.22,4.46,Yes,Negative,No +USER-03465,25,Male,9.31,1.01,2.91,1.95,Fair,Medium,4.31,2.05,No,Negative,No +USER-03466,54,Female,10.22,3.92,4.55,13.05,Good,Low,6.14,9.67,Yes,Negative,Yes +USER-03467,55,Other,2.58,6.86,2.19,13.15,Good,High,6.49,9.29,No,Positive,No +USER-03468,28,Male,3.34,5.8,2.6,4.33,Good,Medium,8.33,1.61,No,Negative,No +USER-03469,63,Male,10.33,3.31,4.46,7.85,Fair,Medium,6.05,1.8,Yes,Positive,Yes +USER-03470,52,Other,6.72,6.24,0.79,9.76,Good,Medium,6.48,4.42,No,Neutral,Yes +USER-03471,56,Female,3.11,6.67,2.11,14.29,Good,High,7.05,6.64,No,Positive,Yes +USER-03472,29,Male,3.44,1.38,4.89,7.78,Fair,High,7.77,5.41,No,Positive,Yes +USER-03473,63,Female,2.11,5.1,1.23,6.82,Fair,High,5.7,0.46,Yes,Neutral,Yes +USER-03474,25,Female,7.18,3.73,4.48,6.36,Good,High,8.98,6.76,No,Negative,No +USER-03475,29,Other,5.35,2.53,0.95,11.87,Poor,Low,6.16,9.62,No,Neutral,No +USER-03476,33,Female,8.69,4.18,2.34,6.08,Poor,High,8.81,5.63,No,Positive,Yes +USER-03477,61,Female,1.6,3.48,3.75,7.43,Poor,Medium,8.08,7.27,No,Neutral,Yes +USER-03478,50,Other,6.7,5.08,0.2,7.84,Poor,Low,8.12,9.32,Yes,Negative,Yes +USER-03479,54,Other,11.64,0.03,2.73,2.84,Excellent,High,8.88,6.82,No,Negative,No +USER-03480,56,Other,11.09,5.69,4.2,9.42,Poor,Medium,8.5,3.5,Yes,Positive,No +USER-03481,64,Male,6.97,7.24,1.93,6.24,Excellent,Medium,8.34,9.75,No,Negative,Yes +USER-03482,40,Male,7.86,2.32,1.89,5.92,Poor,High,4.3,0.37,No,Positive,Yes +USER-03483,43,Other,5.55,1.09,2.73,4.88,Fair,Low,4.84,8.56,Yes,Neutral,No +USER-03484,38,Female,2.91,5.0,3.73,10.26,Good,High,6.08,0.96,Yes,Positive,Yes +USER-03485,65,Male,8.17,1.98,4.0,12.93,Poor,Medium,7.11,3.05,Yes,Negative,No +USER-03486,45,Other,10.15,3.13,1.71,2.3,Good,High,7.83,8.87,Yes,Positive,No +USER-03487,40,Other,4.55,6.04,3.82,6.14,Excellent,Low,7.2,6.3,No,Neutral,No +USER-03488,30,Male,9.5,3.56,4.68,11.81,Excellent,Medium,7.5,6.17,No,Negative,Yes +USER-03489,56,Male,10.27,4.08,0.62,3.55,Excellent,Low,4.39,5.84,No,Negative,Yes +USER-03490,54,Other,3.48,4.87,4.91,8.94,Fair,High,5.98,8.34,Yes,Positive,No +USER-03491,62,Other,7.71,3.37,4.38,12.43,Fair,High,4.06,2.2,Yes,Neutral,Yes +USER-03492,63,Female,9.71,5.41,0.58,3.28,Poor,Low,6.98,8.18,No,Neutral,Yes +USER-03493,22,Other,7.86,2.97,2.88,9.78,Good,Low,4.69,9.79,No,Negative,No +USER-03494,38,Female,9.17,0.47,3.26,11.26,Good,Low,7.01,3.68,Yes,Positive,No +USER-03495,44,Female,7.95,4.24,3.32,12.04,Excellent,Low,5.72,5.19,No,Neutral,No +USER-03496,50,Female,1.01,1.71,4.2,7.41,Poor,Medium,4.45,7.17,Yes,Negative,Yes +USER-03497,59,Female,2.6,4.86,0.52,10.89,Fair,Medium,6.63,0.98,No,Positive,No +USER-03498,22,Female,9.32,6.42,0.34,7.83,Poor,High,4.64,1.66,No,Positive,Yes +USER-03499,29,Male,6.3,2.76,1.6,8.79,Good,Medium,5.57,7.65,Yes,Positive,Yes +USER-03500,48,Other,1.02,4.18,2.4,5.79,Poor,Low,6.18,1.24,No,Negative,Yes +USER-03501,43,Female,2.7,1.28,0.25,2.97,Poor,Medium,7.17,0.58,Yes,Positive,Yes +USER-03502,64,Male,11.89,2.73,0.12,8.97,Excellent,Low,8.23,8.29,Yes,Neutral,No +USER-03503,46,Other,10.03,1.6,1.63,14.08,Good,Medium,7.27,5.38,Yes,Negative,No +USER-03504,34,Male,1.6,2.69,2.24,7.45,Poor,High,4.41,1.35,No,Neutral,Yes +USER-03505,60,Male,9.49,0.96,1.37,9.63,Good,High,5.17,5.54,No,Neutral,No +USER-03506,55,Female,3.56,2.33,1.92,10.05,Good,Medium,4.85,0.61,No,Negative,No +USER-03507,47,Female,7.06,2.84,2.37,2.17,Excellent,Low,6.59,0.82,No,Neutral,No +USER-03508,46,Other,2.39,6.75,0.51,8.39,Poor,Medium,7.05,9.28,Yes,Positive,No +USER-03509,52,Other,6.66,1.37,4.14,9.81,Excellent,Medium,7.1,4.95,Yes,Positive,Yes +USER-03510,37,Female,7.02,0.09,0.01,13.51,Fair,Low,5.02,7.25,No,Neutral,Yes +USER-03511,46,Female,8.68,0.37,4.56,1.18,Fair,Medium,6.18,1.07,No,Neutral,No +USER-03512,56,Male,7.89,0.82,3.07,10.27,Fair,Low,8.38,7.28,No,Neutral,Yes +USER-03513,35,Other,7.43,0.59,1.06,1.58,Excellent,Medium,5.73,9.29,Yes,Neutral,No +USER-03514,64,Male,5.15,0.22,2.45,11.12,Fair,Low,6.14,4.01,Yes,Negative,No +USER-03515,57,Male,9.82,5.57,1.48,13.83,Fair,Low,7.14,6.4,Yes,Negative,Yes +USER-03516,43,Other,7.81,5.93,4.02,1.68,Good,Low,5.1,5.91,No,Positive,Yes +USER-03517,65,Female,1.93,6.2,1.28,14.32,Fair,Medium,6.29,7.48,No,Positive,Yes +USER-03518,30,Other,8.58,6.93,2.81,12.2,Good,Medium,8.34,6.33,Yes,Neutral,Yes +USER-03519,57,Other,11.78,0.66,0.23,9.2,Poor,Medium,5.28,4.28,No,Positive,No +USER-03520,33,Other,7.13,1.62,4.23,10.91,Fair,High,5.74,2.64,No,Positive,Yes +USER-03521,25,Male,7.47,2.25,2.27,2.89,Fair,Medium,7.33,3.81,Yes,Positive,No +USER-03522,57,Male,5.29,6.48,4.15,1.13,Poor,High,6.52,5.84,No,Neutral,No +USER-03523,59,Other,2.48,0.28,2.7,2.02,Good,Medium,6.5,3.13,No,Neutral,Yes +USER-03524,23,Other,3.63,7.91,3.81,2.53,Fair,High,4.88,3.57,No,Positive,No +USER-03525,55,Other,5.92,2.37,3.79,13.38,Poor,Medium,4.34,8.22,Yes,Negative,Yes +USER-03526,27,Other,8.62,0.07,2.24,8.28,Fair,High,7.98,8.62,Yes,Neutral,Yes +USER-03527,61,Female,7.23,3.89,3.42,6.29,Poor,Low,5.01,6.69,Yes,Positive,Yes +USER-03528,59,Female,8.35,4.7,2.42,7.5,Excellent,High,5.01,4.82,Yes,Positive,Yes +USER-03529,32,Male,8.67,3.9,1.95,9.42,Poor,Low,5.94,6.41,No,Negative,No +USER-03530,39,Other,11.61,0.73,2.07,10.66,Excellent,Low,6.55,1.25,No,Positive,Yes +USER-03531,49,Female,4.57,3.68,4.71,4.87,Excellent,Low,8.47,0.15,Yes,Negative,Yes +USER-03532,47,Other,9.48,0.91,0.61,13.07,Fair,High,8.93,7.84,No,Negative,Yes +USER-03533,40,Male,11.71,2.64,2.2,3.45,Poor,Medium,7.07,1.43,Yes,Negative,Yes +USER-03534,49,Female,11.26,5.22,3.38,9.34,Excellent,Low,8.71,1.66,No,Negative,Yes +USER-03535,40,Female,1.54,1.95,3.94,10.42,Fair,Medium,5.76,1.89,Yes,Negative,Yes +USER-03536,41,Male,3.59,2.53,3.13,1.25,Poor,Low,7.63,5.15,No,Neutral,No +USER-03537,53,Male,7.82,3.68,2.2,13.94,Poor,Medium,5.32,9.89,Yes,Neutral,Yes +USER-03538,56,Female,10.44,1.41,4.84,3.03,Excellent,Low,4.59,5.58,Yes,Negative,No +USER-03539,64,Male,10.61,7.72,1.38,9.75,Poor,High,8.79,9.72,No,Negative,Yes +USER-03540,23,Male,3.48,5.55,3.21,8.53,Fair,High,4.68,2.66,No,Negative,Yes +USER-03541,57,Female,3.96,1.54,1.23,10.27,Fair,Low,6.73,2.7,No,Negative,Yes +USER-03542,18,Male,8.45,2.63,0.06,13.28,Fair,High,6.91,6.88,No,Negative,Yes +USER-03543,38,Male,11.94,6.47,1.96,12.78,Excellent,Medium,7.62,6.63,No,Neutral,Yes +USER-03544,64,Other,2.12,0.08,3.51,1.13,Excellent,Low,8.4,1.0,Yes,Neutral,Yes +USER-03545,29,Male,3.82,2.01,3.04,5.81,Poor,Medium,8.22,2.92,No,Neutral,No +USER-03546,34,Male,6.49,4.33,0.38,2.97,Excellent,Medium,8.86,0.61,Yes,Neutral,No +USER-03547,41,Female,11.42,3.72,0.1,13.7,Good,Medium,6.82,9.02,No,Negative,No +USER-03548,42,Male,5.27,3.1,3.46,14.16,Good,High,6.54,2.25,No,Negative,Yes +USER-03549,55,Other,9.91,3.47,4.77,14.94,Excellent,High,7.59,6.53,Yes,Positive,Yes +USER-03550,26,Male,2.79,1.72,3.43,5.19,Fair,Medium,6.25,0.26,Yes,Neutral,No +USER-03551,18,Male,5.45,5.99,1.85,11.79,Excellent,Medium,5.98,2.29,Yes,Positive,Yes +USER-03552,41,Other,8.09,4.97,1.89,13.08,Excellent,Medium,5.91,1.76,No,Neutral,Yes +USER-03553,48,Male,4.1,6.49,4.42,6.09,Excellent,High,8.47,3.6,No,Positive,No +USER-03554,23,Male,11.61,6.48,0.39,1.27,Poor,Low,5.27,9.84,Yes,Neutral,No +USER-03555,42,Other,11.33,4.95,1.06,5.68,Poor,High,4.29,2.6,No,Positive,Yes +USER-03556,24,Female,1.52,5.74,2.52,6.24,Fair,Low,4.62,9.78,No,Positive,Yes +USER-03557,23,Other,3.18,1.3,0.58,9.45,Good,Medium,7.54,4.45,No,Negative,No +USER-03558,52,Male,10.42,4.35,0.2,2.28,Fair,High,6.79,4.15,Yes,Negative,Yes +USER-03559,38,Male,5.65,3.71,2.14,11.63,Excellent,High,8.43,0.83,Yes,Negative,Yes +USER-03560,44,Female,10.37,1.24,2.05,13.1,Fair,High,6.37,7.91,No,Neutral,No +USER-03561,55,Male,2.43,7.91,3.95,8.32,Excellent,High,7.95,8.91,Yes,Neutral,Yes +USER-03562,56,Other,8.37,6.22,3.31,2.58,Poor,Medium,7.23,5.73,Yes,Neutral,No +USER-03563,23,Male,4.73,4.35,0.93,13.88,Fair,Medium,6.52,7.67,Yes,Negative,No +USER-03564,54,Female,4.21,5.21,1.18,13.59,Excellent,Low,4.33,4.16,No,Positive,Yes +USER-03565,40,Male,1.25,2.37,1.67,5.94,Fair,High,8.28,9.31,No,Positive,Yes +USER-03566,27,Female,9.39,1.92,4.29,2.09,Fair,Medium,7.28,6.28,No,Positive,Yes +USER-03567,27,Other,11.39,6.51,1.93,6.66,Fair,Low,8.83,7.23,No,Negative,Yes +USER-03568,55,Male,7.7,4.05,0.87,7.47,Good,High,6.12,6.39,Yes,Positive,Yes +USER-03569,37,Female,1.56,2.02,1.62,6.53,Fair,Medium,7.98,3.62,Yes,Positive,No +USER-03570,63,Female,1.65,1.63,3.55,7.58,Fair,High,7.09,2.27,No,Negative,Yes +USER-03571,32,Female,3.44,7.67,1.59,2.63,Fair,Low,7.29,3.87,No,Neutral,Yes +USER-03572,21,Female,1.82,6.47,1.13,4.71,Excellent,Low,4.61,9.05,No,Positive,Yes +USER-03573,27,Male,2.84,3.29,4.37,3.39,Excellent,High,7.24,5.23,Yes,Negative,Yes +USER-03574,47,Female,5.5,0.72,0.85,9.75,Excellent,Medium,4.05,2.32,Yes,Neutral,Yes +USER-03575,26,Female,10.8,5.54,0.78,9.43,Fair,High,7.37,7.04,Yes,Negative,No +USER-03576,55,Female,7.19,1.66,3.7,3.91,Excellent,Low,7.06,3.64,Yes,Neutral,Yes +USER-03577,58,Other,3.66,5.77,2.6,5.0,Good,Medium,8.76,8.15,No,Positive,No +USER-03578,25,Other,2.4,4.6,4.19,12.0,Excellent,High,7.31,9.28,No,Negative,Yes +USER-03579,39,Male,2.32,1.26,4.61,7.95,Excellent,Medium,8.16,7.17,No,Neutral,Yes +USER-03580,35,Male,1.06,5.02,3.52,5.24,Fair,High,8.61,3.85,Yes,Negative,Yes +USER-03581,53,Male,8.98,3.17,0.95,4.27,Good,Low,4.94,4.8,Yes,Positive,No +USER-03582,59,Male,1.62,7.17,1.45,13.77,Poor,High,6.99,3.69,No,Negative,No +USER-03583,20,Male,5.86,0.35,0.2,2.88,Good,Medium,6.63,8.65,No,Negative,No +USER-03584,41,Other,8.13,3.07,1.27,3.45,Fair,High,5.41,0.82,No,Neutral,No +USER-03585,65,Other,3.68,7.34,0.79,7.23,Fair,High,8.79,2.66,No,Negative,No +USER-03586,21,Male,10.29,0.06,4.29,6.05,Fair,High,7.75,3.99,No,Negative,No +USER-03587,38,Male,4.65,3.53,3.31,3.34,Excellent,High,4.24,5.98,Yes,Negative,Yes +USER-03588,41,Male,2.5,5.85,2.14,8.26,Good,Low,6.22,0.26,Yes,Neutral,Yes +USER-03589,45,Female,11.58,7.04,3.32,10.28,Excellent,High,6.35,6.91,No,Positive,Yes +USER-03590,19,Female,4.72,5.63,1.82,10.64,Poor,Low,7.29,5.69,Yes,Negative,No +USER-03591,21,Other,11.29,4.34,1.33,6.66,Fair,High,6.62,6.82,No,Neutral,No +USER-03592,31,Male,2.05,6.42,4.45,14.29,Good,High,6.5,9.11,No,Positive,No +USER-03593,48,Other,9.89,2.4,2.2,12.74,Excellent,Medium,4.75,2.57,Yes,Negative,Yes +USER-03594,45,Other,8.66,7.32,0.49,12.71,Good,Low,4.05,8.39,No,Negative,No +USER-03595,41,Other,2.82,3.09,4.69,7.32,Excellent,High,7.72,5.5,Yes,Negative,No +USER-03596,21,Female,7.99,6.39,1.49,1.71,Good,High,7.13,4.88,No,Neutral,No +USER-03597,62,Female,8.53,1.08,2.66,10.83,Good,Medium,4.33,9.23,Yes,Neutral,No +USER-03598,21,Female,5.06,4.77,0.84,5.78,Good,High,7.04,4.43,No,Neutral,No +USER-03599,39,Male,2.49,4.63,4.57,5.84,Excellent,High,8.64,0.42,No,Negative,No +USER-03600,18,Other,8.87,6.28,3.61,10.49,Excellent,Medium,7.44,7.89,No,Negative,No +USER-03601,61,Female,7.46,4.86,4.78,9.44,Good,High,8.93,4.81,No,Positive,Yes +USER-03602,52,Male,8.14,7.59,4.69,10.98,Excellent,Medium,4.95,3.95,Yes,Positive,Yes +USER-03603,28,Female,11.46,3.38,2.41,9.3,Poor,High,5.9,5.94,No,Neutral,Yes +USER-03604,63,Female,4.14,4.56,4.39,9.01,Good,Low,7.54,3.29,Yes,Negative,Yes +USER-03605,56,Male,10.79,6.23,3.01,11.09,Fair,High,7.96,1.98,Yes,Neutral,Yes +USER-03606,65,Male,2.14,5.41,3.69,13.5,Good,Medium,6.51,4.16,No,Neutral,Yes +USER-03607,43,Female,6.58,6.8,0.5,3.99,Excellent,Low,6.58,7.09,Yes,Neutral,Yes +USER-03608,63,Other,6.12,1.07,3.81,5.39,Excellent,High,5.4,6.07,No,Neutral,No +USER-03609,25,Female,2.43,5.5,4.08,5.0,Excellent,Low,4.22,0.28,Yes,Positive,Yes +USER-03610,37,Other,5.94,7.17,0.01,8.21,Good,Medium,5.51,1.93,Yes,Neutral,No +USER-03611,42,Male,5.2,4.27,4.31,1.09,Excellent,High,5.79,7.12,No,Neutral,Yes +USER-03612,22,Male,5.43,7.18,4.84,2.94,Poor,High,7.01,7.94,Yes,Negative,No +USER-03613,20,Other,2.68,5.41,4.45,7.19,Excellent,High,7.77,7.74,No,Negative,No +USER-03614,22,Male,2.01,6.25,1.4,3.09,Poor,Low,4.77,7.52,Yes,Positive,No +USER-03615,61,Female,2.08,0.25,2.01,10.39,Good,High,8.54,8.98,Yes,Negative,Yes +USER-03616,45,Female,11.89,0.07,1.09,10.78,Good,High,4.83,9.59,No,Neutral,No +USER-03617,21,Other,4.13,1.5,3.39,5.49,Fair,Medium,7.93,3.03,Yes,Positive,Yes +USER-03618,34,Female,11.85,2.13,1.53,5.89,Good,Low,5.09,2.22,Yes,Negative,No +USER-03619,61,Other,10.26,2.36,1.25,10.92,Good,High,5.03,6.89,Yes,Neutral,No +USER-03620,22,Male,7.69,3.17,4.11,6.32,Excellent,Low,5.28,8.4,Yes,Neutral,No +USER-03621,63,Other,6.05,0.05,0.73,1.14,Fair,Medium,5.19,7.41,No,Positive,No +USER-03622,63,Male,8.53,6.28,1.68,11.52,Fair,Low,4.31,2.11,No,Neutral,Yes +USER-03623,33,Male,7.55,7.04,4.22,7.37,Fair,Low,4.21,5.56,Yes,Negative,No +USER-03624,56,Male,3.09,1.83,0.18,5.06,Poor,High,5.59,5.15,No,Positive,Yes +USER-03625,32,Female,9.68,3.51,0.4,8.88,Good,Low,7.94,4.4,No,Neutral,Yes +USER-03626,29,Male,5.95,6.21,4.33,1.09,Fair,Medium,4.96,9.41,No,Neutral,No +USER-03627,30,Female,11.1,7.32,1.47,6.34,Fair,Low,7.25,0.28,Yes,Negative,Yes +USER-03628,36,Female,7.27,6.57,0.24,8.15,Poor,High,5.67,2.2,No,Positive,Yes +USER-03629,41,Other,7.38,3.43,1.26,9.31,Fair,Medium,5.74,0.11,Yes,Positive,Yes +USER-03630,40,Female,2.92,1.64,0.75,2.96,Poor,Medium,5.0,7.09,No,Negative,Yes +USER-03631,20,Other,2.32,2.94,4.41,12.37,Poor,Low,7.47,8.09,Yes,Negative,No +USER-03632,31,Other,6.87,0.66,3.69,12.87,Good,Medium,8.26,4.47,No,Neutral,Yes +USER-03633,25,Male,3.63,2.24,0.63,2.37,Excellent,Medium,7.68,3.36,Yes,Positive,No +USER-03634,30,Male,5.14,1.9,3.01,7.83,Good,High,7.06,8.27,No,Neutral,Yes +USER-03635,53,Other,8.08,7.32,0.76,14.66,Fair,Medium,4.39,7.24,Yes,Neutral,Yes +USER-03636,43,Other,2.96,4.48,0.65,9.02,Fair,High,4.23,4.05,No,Neutral,No +USER-03637,63,Female,11.87,5.42,2.78,1.91,Fair,High,5.89,3.41,Yes,Negative,No +USER-03638,43,Male,5.61,0.22,4.31,7.53,Poor,Medium,8.48,2.32,Yes,Neutral,Yes +USER-03639,24,Other,7.0,0.44,1.92,8.3,Excellent,High,7.61,0.68,Yes,Neutral,Yes +USER-03640,32,Other,5.58,6.48,0.85,11.55,Fair,High,7.31,5.99,Yes,Negative,No +USER-03641,59,Female,6.87,6.49,4.58,7.86,Good,Medium,5.42,0.95,No,Positive,No +USER-03642,37,Female,4.3,6.1,3.94,14.96,Good,Medium,6.17,4.75,Yes,Negative,No +USER-03643,26,Female,6.03,7.62,0.86,7.01,Poor,Medium,7.55,1.01,Yes,Negative,No +USER-03644,28,Female,7.19,7.5,1.43,7.7,Fair,High,5.31,8.48,No,Neutral,No +USER-03645,48,Female,6.79,5.41,1.54,10.99,Excellent,High,4.4,5.92,No,Neutral,Yes +USER-03646,23,Male,8.45,6.95,3.28,13.41,Poor,Medium,5.35,9.98,Yes,Neutral,Yes +USER-03647,19,Male,7.85,4.69,3.71,2.1,Good,Medium,5.55,4.55,Yes,Neutral,No +USER-03648,51,Female,10.01,0.25,2.12,5.49,Excellent,Medium,7.69,6.56,No,Positive,No +USER-03649,19,Other,4.32,4.35,4.11,9.64,Fair,Low,4.84,3.48,No,Neutral,No +USER-03650,44,Other,5.12,1.63,3.0,6.18,Fair,High,5.37,5.24,Yes,Negative,No +USER-03651,63,Female,6.46,7.23,2.95,3.5,Excellent,Low,5.51,8.49,Yes,Neutral,No +USER-03652,58,Other,9.18,1.85,2.76,7.84,Excellent,Medium,5.57,0.33,Yes,Negative,No +USER-03653,45,Male,2.73,2.44,4.18,14.47,Excellent,High,5.19,9.52,Yes,Positive,No +USER-03654,22,Other,9.97,2.82,4.06,8.91,Fair,High,5.43,6.96,Yes,Positive,Yes +USER-03655,41,Female,3.91,4.5,3.02,6.44,Good,High,6.76,8.58,Yes,Neutral,No +USER-03656,23,Other,6.04,0.98,3.31,2.54,Good,Medium,5.82,6.36,No,Positive,Yes +USER-03657,56,Female,5.01,5.63,2.87,8.2,Good,Medium,7.06,8.39,No,Negative,Yes +USER-03658,18,Female,5.01,5.35,3.99,10.14,Good,Medium,6.7,6.95,No,Neutral,No +USER-03659,24,Female,1.92,4.2,3.57,14.91,Excellent,Medium,8.83,9.42,No,Positive,Yes +USER-03660,32,Female,2.49,2.9,4.28,11.53,Poor,Medium,4.56,1.44,No,Neutral,No +USER-03661,53,Female,4.59,4.59,2.19,5.69,Poor,Medium,8.38,4.25,No,Positive,Yes +USER-03662,23,Male,4.6,3.72,2.13,12.48,Poor,High,8.43,1.73,Yes,Positive,No +USER-03663,36,Other,9.81,0.9,1.16,4.48,Good,High,5.58,8.32,Yes,Positive,No +USER-03664,22,Male,11.2,3.19,3.86,13.29,Poor,High,7.86,5.36,No,Positive,No +USER-03665,26,Male,6.06,3.92,0.44,3.35,Excellent,Low,5.54,1.11,Yes,Neutral,No +USER-03666,21,Other,1.24,5.61,1.35,12.88,Good,Medium,8.1,9.91,No,Positive,Yes +USER-03667,22,Other,2.68,2.97,3.73,9.49,Fair,Low,8.43,2.48,Yes,Negative,No +USER-03668,33,Female,8.4,1.38,0.51,8.32,Excellent,High,6.26,6.54,Yes,Negative,No +USER-03669,61,Other,11.72,4.42,1.17,7.75,Fair,High,7.85,1.42,No,Positive,No +USER-03670,48,Female,9.77,0.77,1.03,10.78,Poor,Low,8.23,6.84,No,Neutral,No +USER-03671,27,Male,9.96,4.23,4.63,5.06,Good,High,6.68,3.24,No,Negative,No +USER-03672,50,Male,8.34,2.33,0.6,11.18,Good,Medium,8.31,7.45,Yes,Neutral,No +USER-03673,47,Female,1.18,0.04,3.8,2.02,Excellent,Medium,5.25,0.1,No,Positive,No +USER-03674,46,Male,8.57,2.86,1.92,2.37,Poor,Low,8.78,5.41,Yes,Positive,No +USER-03675,35,Male,6.34,2.71,2.87,13.73,Good,Low,8.6,0.69,No,Neutral,Yes +USER-03676,62,Male,5.64,3.92,4.83,10.41,Fair,Low,6.63,5.78,No,Positive,No +USER-03677,23,Female,2.42,5.83,1.27,9.81,Fair,High,6.75,9.56,No,Positive,Yes +USER-03678,26,Female,5.13,0.15,4.04,3.8,Excellent,Medium,7.51,0.0,No,Negative,Yes +USER-03679,37,Female,4.44,0.97,1.02,11.83,Poor,High,4.32,6.45,Yes,Neutral,No +USER-03680,30,Female,9.49,0.36,4.43,1.18,Excellent,High,8.04,6.28,No,Neutral,No +USER-03681,38,Other,7.92,3.17,0.88,1.74,Good,Medium,4.87,3.5,No,Negative,Yes +USER-03682,18,Other,11.93,1.04,2.51,7.95,Excellent,High,8.04,1.95,Yes,Neutral,Yes +USER-03683,20,Female,1.62,1.01,2.57,9.23,Excellent,High,7.76,6.86,Yes,Negative,No +USER-03684,28,Other,11.59,3.56,4.3,13.84,Poor,Low,8.67,3.92,Yes,Neutral,Yes +USER-03685,20,Female,10.22,1.81,3.67,1.85,Poor,High,5.73,2.11,No,Positive,No +USER-03686,32,Other,8.0,0.96,4.22,4.84,Fair,Low,5.94,9.07,No,Negative,No +USER-03687,29,Other,2.38,4.4,4.02,14.0,Poor,Medium,4.34,1.36,Yes,Neutral,Yes +USER-03688,32,Female,7.79,5.73,0.59,13.99,Fair,Medium,7.13,4.15,Yes,Negative,No +USER-03689,64,Other,9.03,1.42,0.48,3.73,Good,Medium,5.93,2.36,No,Negative,Yes +USER-03690,35,Other,7.14,5.77,0.4,9.6,Poor,Low,5.31,6.69,No,Negative,No +USER-03691,47,Male,1.35,7.75,2.59,12.98,Poor,High,6.35,5.26,Yes,Neutral,Yes +USER-03692,48,Male,5.24,1.11,2.07,14.72,Poor,High,5.33,0.32,No,Neutral,No +USER-03693,38,Other,5.35,2.83,2.55,6.47,Poor,Low,6.07,3.52,No,Negative,No +USER-03694,23,Other,1.37,6.93,3.84,10.75,Fair,High,4.61,7.78,Yes,Positive,No +USER-03695,45,Male,10.75,0.89,2.64,13.68,Good,Low,8.75,4.39,No,Negative,Yes +USER-03696,21,Male,4.38,6.63,0.38,4.77,Good,High,8.44,4.21,Yes,Neutral,No +USER-03697,60,Female,2.31,0.65,4.63,2.17,Poor,Medium,7.19,5.57,Yes,Neutral,No +USER-03698,18,Male,10.8,1.13,3.04,11.99,Good,High,5.26,3.7,No,Neutral,Yes +USER-03699,49,Male,4.88,7.02,3.33,2.22,Excellent,Low,4.12,3.83,Yes,Neutral,No +USER-03700,59,Male,12.0,4.5,3.86,13.98,Poor,Medium,5.04,4.51,Yes,Negative,Yes +USER-03701,40,Female,9.0,3.3,0.06,5.36,Poor,Low,8.55,9.53,No,Negative,Yes +USER-03702,56,Other,10.96,5.28,3.93,7.73,Poor,Low,7.36,6.39,No,Positive,Yes +USER-03703,39,Male,2.18,7.83,1.95,6.54,Poor,High,7.12,6.51,Yes,Neutral,No +USER-03704,63,Female,2.73,7.81,2.71,12.34,Good,Medium,8.71,6.72,No,Neutral,Yes +USER-03705,64,Male,4.72,1.71,0.28,9.52,Poor,Medium,8.88,7.93,Yes,Neutral,Yes +USER-03706,40,Male,6.23,0.34,2.71,7.95,Good,Low,5.87,5.39,Yes,Negative,Yes +USER-03707,34,Other,10.13,0.26,3.02,5.17,Fair,Medium,7.53,4.39,No,Neutral,Yes +USER-03708,29,Female,6.01,3.25,0.36,6.79,Good,Medium,7.18,2.05,No,Negative,No +USER-03709,35,Other,3.27,2.12,4.84,3.71,Good,High,6.37,6.25,Yes,Negative,No +USER-03710,23,Female,5.08,6.29,2.09,9.17,Poor,Medium,4.66,1.91,No,Neutral,Yes +USER-03711,59,Other,7.78,0.97,2.75,9.49,Fair,Low,7.12,7.92,Yes,Negative,No +USER-03712,40,Female,10.39,2.43,4.91,4.77,Excellent,Low,8.98,1.44,Yes,Positive,No +USER-03713,23,Female,9.4,5.35,3.04,12.13,Fair,High,5.41,2.8,Yes,Neutral,No +USER-03714,57,Male,10.36,4.56,2.34,1.98,Poor,Medium,8.04,4.18,Yes,Neutral,Yes +USER-03715,63,Other,10.03,6.66,3.7,13.22,Good,Low,8.16,2.1,No,Negative,Yes +USER-03716,59,Female,3.95,4.27,3.24,2.79,Excellent,Low,7.96,2.34,No,Positive,Yes +USER-03717,62,Female,2.25,5.94,4.67,5.29,Excellent,Medium,7.25,2.19,Yes,Neutral,No +USER-03718,65,Other,3.13,2.79,4.02,12.51,Good,Medium,6.02,2.92,No,Positive,Yes +USER-03719,39,Male,1.47,4.78,1.8,9.61,Fair,Low,6.48,4.23,Yes,Negative,Yes +USER-03720,46,Male,8.18,2.71,2.37,6.29,Poor,Medium,8.03,0.88,No,Positive,No +USER-03721,52,Other,10.39,0.64,2.1,13.38,Excellent,Low,5.66,1.24,Yes,Negative,Yes +USER-03722,34,Female,5.22,5.88,0.02,8.28,Excellent,Low,7.6,0.48,No,Positive,No +USER-03723,39,Female,10.25,4.28,1.37,12.75,Poor,Low,5.29,1.89,Yes,Neutral,No +USER-03724,50,Female,6.17,4.83,0.97,11.71,Poor,High,8.26,0.85,Yes,Negative,Yes +USER-03725,26,Male,5.46,6.8,0.8,12.8,Poor,Low,7.42,8.2,Yes,Positive,Yes +USER-03726,27,Male,7.35,1.47,4.21,1.05,Poor,High,8.86,3.46,Yes,Positive,Yes +USER-03727,18,Other,10.59,5.12,3.99,10.61,Poor,Medium,8.12,4.59,No,Neutral,Yes +USER-03728,20,Other,1.75,5.2,3.71,8.55,Poor,Medium,4.19,3.79,Yes,Positive,Yes +USER-03729,35,Male,4.55,2.57,1.77,7.26,Excellent,Low,7.64,6.24,Yes,Negative,Yes +USER-03730,57,Other,11.08,6.45,1.96,11.72,Excellent,Medium,6.54,5.15,No,Neutral,Yes +USER-03731,24,Other,3.87,5.1,0.69,2.67,Poor,High,8.53,1.95,Yes,Neutral,Yes +USER-03732,30,Male,5.76,2.42,3.96,7.86,Fair,Medium,5.71,4.68,Yes,Negative,Yes +USER-03733,63,Female,11.68,5.23,4.26,3.18,Good,Low,4.32,1.38,Yes,Neutral,Yes +USER-03734,47,Other,8.82,7.64,3.85,12.67,Excellent,High,4.95,5.31,Yes,Positive,Yes +USER-03735,65,Female,9.28,6.18,3.31,6.79,Good,Low,5.75,0.2,Yes,Positive,Yes +USER-03736,38,Other,1.96,0.03,3.41,6.35,Poor,Low,7.18,3.99,Yes,Neutral,Yes +USER-03737,27,Male,4.82,2.18,4.18,10.25,Poor,High,5.92,8.8,No,Negative,Yes +USER-03738,27,Other,9.63,2.13,1.68,9.53,Good,Medium,8.55,1.4,Yes,Neutral,No +USER-03739,49,Male,2.48,7.37,3.0,8.49,Good,Medium,5.32,2.55,No,Positive,No +USER-03740,47,Male,2.44,0.43,0.35,11.05,Excellent,High,7.81,8.97,No,Neutral,No +USER-03741,53,Other,7.17,1.56,1.23,10.59,Poor,Low,6.86,1.71,Yes,Positive,No +USER-03742,20,Male,6.79,2.88,2.99,4.19,Good,Low,4.76,6.22,Yes,Positive,No +USER-03743,50,Male,8.61,3.42,2.37,6.24,Good,High,7.38,5.49,No,Negative,Yes +USER-03744,18,Other,10.52,1.21,0.29,5.19,Good,High,8.25,6.41,No,Positive,Yes +USER-03745,33,Male,4.95,0.61,1.87,10.94,Excellent,High,8.78,2.38,Yes,Negative,Yes +USER-03746,19,Other,4.93,6.02,4.33,3.19,Excellent,Low,4.31,7.57,Yes,Neutral,Yes +USER-03747,41,Other,5.82,6.88,3.25,2.74,Excellent,Low,8.78,4.93,No,Negative,Yes +USER-03748,33,Female,8.88,5.53,0.48,11.71,Poor,Low,6.18,9.69,Yes,Positive,No +USER-03749,58,Female,10.76,4.13,3.07,13.1,Good,Medium,5.21,9.45,No,Negative,Yes +USER-03750,49,Other,2.38,1.96,2.31,4.35,Fair,High,6.51,4.24,No,Neutral,No +USER-03751,64,Other,2.83,6.61,2.15,14.53,Fair,High,8.84,1.06,No,Neutral,No +USER-03752,47,Male,8.39,1.13,3.08,9.73,Excellent,Low,4.7,6.54,Yes,Positive,Yes +USER-03753,62,Female,5.27,7.06,3.42,10.07,Poor,High,5.45,0.89,No,Negative,No +USER-03754,56,Male,6.88,6.61,3.98,10.1,Fair,Medium,8.56,8.09,No,Neutral,No +USER-03755,45,Other,8.37,5.18,4.43,14.18,Excellent,Low,6.3,7.97,No,Positive,No +USER-03756,45,Male,9.25,1.55,2.69,8.07,Good,Low,7.16,4.34,No,Negative,Yes +USER-03757,56,Female,9.62,0.07,4.78,2.86,Excellent,Low,4.35,7.62,No,Neutral,No +USER-03758,37,Female,5.5,2.13,1.67,8.39,Good,High,8.73,7.94,Yes,Negative,Yes +USER-03759,18,Male,6.79,1.88,0.97,7.42,Good,Low,6.07,0.86,No,Negative,Yes +USER-03760,61,Female,8.78,2.94,1.92,9.55,Excellent,High,7.32,9.73,Yes,Negative,No +USER-03761,47,Female,1.8,6.39,3.67,4.76,Good,Medium,7.95,2.18,Yes,Negative,Yes +USER-03762,21,Female,2.54,5.12,1.81,13.17,Fair,Medium,7.58,0.23,No,Neutral,No +USER-03763,51,Other,11.5,4.17,0.0,4.01,Poor,High,6.52,3.44,Yes,Negative,No +USER-03764,52,Male,4.63,5.26,1.22,7.55,Excellent,Low,6.29,6.68,Yes,Positive,No +USER-03765,51,Female,6.0,1.64,3.65,14.34,Fair,Low,4.39,1.47,No,Neutral,No +USER-03766,53,Male,2.06,4.91,3.05,11.27,Excellent,Medium,4.41,8.36,Yes,Negative,No +USER-03767,59,Female,5.8,6.74,1.35,3.01,Fair,Medium,5.8,1.91,Yes,Neutral,Yes +USER-03768,65,Female,7.09,4.58,1.56,7.61,Good,High,8.42,4.65,No,Positive,No +USER-03769,42,Male,11.46,3.1,1.23,12.97,Good,Medium,6.75,0.36,No,Negative,No +USER-03770,34,Other,6.0,6.65,4.1,6.32,Good,High,8.34,5.39,No,Negative,No +USER-03771,38,Other,1.99,0.83,1.28,13.33,Fair,Low,7.42,9.19,No,Positive,No +USER-03772,19,Other,8.04,1.52,0.38,3.67,Fair,Low,4.46,1.24,No,Neutral,No +USER-03773,50,Female,7.67,3.5,3.43,13.16,Excellent,Low,8.09,6.73,Yes,Positive,No +USER-03774,48,Female,3.39,4.45,3.52,3.94,Excellent,Medium,7.32,6.83,No,Negative,No +USER-03775,20,Female,10.84,6.89,3.08,2.66,Poor,Medium,7.18,7.71,No,Positive,No +USER-03776,30,Other,11.13,0.45,4.04,12.48,Fair,Medium,7.52,2.02,Yes,Positive,No +USER-03777,23,Male,9.09,1.76,1.58,3.44,Poor,Low,5.56,2.88,No,Neutral,No +USER-03778,35,Male,5.62,0.81,1.1,2.09,Excellent,High,8.26,7.58,No,Positive,No +USER-03779,45,Male,9.73,3.59,3.68,8.85,Poor,Medium,7.06,2.44,Yes,Negative,Yes +USER-03780,32,Female,8.42,5.15,1.0,9.43,Excellent,Low,6.13,3.22,Yes,Negative,Yes +USER-03781,33,Male,11.93,2.1,2.98,5.95,Fair,High,6.43,1.54,No,Positive,No +USER-03782,29,Female,7.77,5.12,1.25,14.61,Poor,High,8.74,5.11,Yes,Negative,Yes +USER-03783,61,Female,8.8,6.54,4.64,7.21,Fair,High,7.38,2.78,Yes,Positive,No +USER-03784,24,Female,1.27,4.96,2.48,4.47,Excellent,High,6.3,9.87,Yes,Neutral,Yes +USER-03785,23,Female,9.72,3.83,2.89,6.51,Fair,High,6.07,9.51,Yes,Negative,No +USER-03786,45,Other,9.84,2.89,0.92,2.51,Excellent,Medium,5.11,8.81,No,Positive,Yes +USER-03787,41,Male,1.5,2.62,0.6,9.44,Poor,Low,6.54,0.38,No,Neutral,Yes +USER-03788,33,Male,3.64,6.81,4.39,4.85,Good,Low,7.66,1.44,Yes,Neutral,No +USER-03789,32,Female,3.09,0.45,0.54,7.31,Good,Low,4.37,2.34,No,Neutral,Yes +USER-03790,44,Other,6.12,7.9,1.68,10.66,Excellent,Medium,4.94,5.17,No,Positive,No +USER-03791,53,Other,1.48,4.51,2.24,8.56,Fair,Low,8.78,1.73,Yes,Positive,No +USER-03792,27,Female,10.28,0.25,0.69,5.88,Excellent,Medium,4.36,7.24,No,Positive,Yes +USER-03793,56,Other,8.97,7.7,1.16,4.85,Poor,Low,6.28,0.56,Yes,Negative,No +USER-03794,40,Male,2.1,7.73,0.46,13.75,Excellent,High,4.26,5.42,No,Neutral,Yes +USER-03795,22,Female,7.11,6.48,2.96,13.53,Fair,Medium,5.34,5.26,Yes,Positive,Yes +USER-03796,62,Female,1.69,3.03,3.48,9.71,Good,Medium,8.59,9.65,Yes,Negative,No +USER-03797,39,Female,6.63,2.79,2.59,13.41,Poor,Low,6.7,5.63,Yes,Negative,Yes +USER-03798,23,Female,1.55,6.82,0.41,7.81,Fair,High,6.15,3.48,Yes,Neutral,No +USER-03799,41,Other,9.57,3.0,4.2,7.98,Good,Medium,5.51,2.99,Yes,Negative,Yes +USER-03800,63,Other,1.27,4.21,3.21,9.36,Fair,High,4.42,8.1,No,Negative,No +USER-03801,44,Female,3.12,2.42,4.13,5.49,Poor,Medium,6.63,2.96,No,Neutral,No +USER-03802,58,Male,11.63,0.93,4.24,1.47,Good,High,8.42,6.8,No,Positive,No +USER-03803,37,Other,9.22,6.71,1.52,1.57,Poor,Medium,4.81,2.96,No,Neutral,Yes +USER-03804,61,Other,9.9,2.83,2.88,7.26,Good,Medium,7.79,8.24,No,Positive,Yes +USER-03805,37,Other,9.05,6.78,3.95,8.17,Excellent,Low,6.51,7.55,No,Negative,No +USER-03806,41,Male,7.59,4.79,0.07,13.89,Excellent,Low,4.46,6.88,Yes,Positive,Yes +USER-03807,24,Other,9.05,5.19,0.75,14.18,Good,Medium,6.76,9.57,Yes,Positive,Yes +USER-03808,19,Male,2.84,6.17,1.65,6.4,Fair,High,4.45,1.67,Yes,Positive,Yes +USER-03809,23,Male,5.65,6.76,2.35,7.46,Good,High,7.71,2.97,No,Negative,Yes +USER-03810,19,Female,4.46,3.12,3.74,12.3,Excellent,Low,5.34,3.6,Yes,Positive,No +USER-03811,61,Male,8.36,7.53,4.63,12.8,Good,Low,5.84,3.55,Yes,Negative,No +USER-03812,36,Female,2.91,5.03,2.86,11.88,Fair,High,4.17,7.35,No,Positive,No +USER-03813,65,Male,10.14,4.0,1.1,5.21,Excellent,Medium,7.29,3.04,No,Positive,No +USER-03814,59,Male,7.51,6.3,2.64,3.13,Poor,Low,8.83,1.79,No,Negative,Yes +USER-03815,22,Other,8.39,7.87,1.11,1.79,Poor,High,8.59,7.12,Yes,Negative,No +USER-03816,49,Female,6.9,2.6,2.8,13.96,Poor,High,7.42,0.33,Yes,Negative,Yes +USER-03817,63,Female,1.89,1.9,4.82,5.36,Fair,High,4.66,2.33,No,Positive,No +USER-03818,62,Other,3.81,3.45,1.82,9.64,Excellent,High,4.99,2.38,Yes,Positive,Yes +USER-03819,58,Male,2.78,2.63,1.35,5.94,Good,Low,7.03,4.18,No,Neutral,No +USER-03820,47,Female,1.43,4.65,1.94,14.91,Fair,Low,7.54,9.09,Yes,Negative,Yes +USER-03821,20,Female,8.42,7.35,2.32,4.15,Fair,High,6.76,3.98,No,Neutral,Yes +USER-03822,48,Other,7.6,6.29,0.24,10.81,Good,Low,5.84,5.56,No,Negative,Yes +USER-03823,43,Male,3.94,7.91,4.34,11.0,Good,High,4.74,8.4,Yes,Negative,No +USER-03824,36,Male,9.26,4.55,3.67,8.41,Fair,High,5.19,5.08,Yes,Negative,No +USER-03825,54,Male,11.59,6.68,3.83,8.98,Fair,Low,4.79,1.11,Yes,Neutral,No +USER-03826,35,Female,5.11,7.09,4.2,14.25,Good,High,7.0,4.82,No,Neutral,Yes +USER-03827,47,Male,11.84,4.75,2.73,8.19,Poor,Medium,6.83,8.78,Yes,Neutral,Yes +USER-03828,25,Other,1.54,0.69,1.6,12.27,Fair,Medium,4.71,8.3,No,Neutral,Yes +USER-03829,65,Female,4.21,6.92,2.24,7.5,Poor,Medium,8.67,7.75,Yes,Negative,Yes +USER-03830,59,Male,10.67,6.03,4.98,14.09,Fair,Medium,7.81,1.81,Yes,Negative,Yes +USER-03831,32,Female,11.51,4.02,2.39,5.46,Excellent,Medium,6.01,9.17,No,Positive,Yes +USER-03832,56,Female,1.34,3.03,2.3,7.05,Fair,High,8.85,3.51,No,Positive,No +USER-03833,49,Other,8.42,3.97,1.19,7.07,Good,Low,6.87,5.58,No,Negative,Yes +USER-03834,61,Other,4.25,5.05,0.78,1.27,Poor,Low,6.86,3.33,Yes,Neutral,No +USER-03835,37,Other,4.98,7.2,0.95,8.33,Fair,Low,8.22,4.8,No,Neutral,No +USER-03836,41,Male,8.62,0.86,2.78,7.56,Good,High,4.2,0.34,Yes,Positive,No +USER-03837,58,Other,9.25,6.77,4.52,10.26,Fair,Low,8.9,8.44,No,Positive,Yes +USER-03838,51,Other,6.62,4.75,4.95,2.79,Excellent,High,7.73,6.39,Yes,Positive,Yes +USER-03839,27,Male,9.39,7.74,2.44,11.99,Fair,High,4.46,0.25,Yes,Neutral,No +USER-03840,65,Other,10.85,7.7,2.77,11.1,Poor,Low,5.04,0.52,Yes,Negative,No +USER-03841,63,Female,4.35,6.48,2.62,7.57,Fair,Low,4.33,8.8,No,Neutral,Yes +USER-03842,36,Male,10.22,1.83,2.11,2.53,Excellent,Medium,5.88,4.9,Yes,Positive,No +USER-03843,25,Female,3.47,1.56,0.76,14.9,Good,High,6.58,7.72,No,Negative,No +USER-03844,65,Female,1.4,3.88,2.92,1.14,Fair,Low,4.43,4.25,Yes,Neutral,No +USER-03845,59,Other,2.06,4.48,2.85,7.77,Excellent,Low,8.54,7.97,Yes,Positive,No +USER-03846,61,Female,9.36,0.3,4.87,1.16,Excellent,Medium,8.6,8.79,No,Negative,Yes +USER-03847,38,Other,5.13,6.37,1.68,8.04,Good,Medium,8.2,3.79,Yes,Negative,Yes +USER-03848,31,Other,6.09,1.24,1.28,13.49,Fair,Low,7.43,0.43,No,Positive,Yes +USER-03849,29,Male,5.71,1.83,1.89,6.72,Fair,High,6.11,6.69,Yes,Negative,Yes +USER-03850,45,Male,7.21,0.05,0.09,7.43,Excellent,Medium,7.01,2.56,Yes,Neutral,No +USER-03851,36,Other,3.57,2.66,4.6,2.74,Fair,High,8.66,8.97,Yes,Negative,No +USER-03852,25,Other,9.77,6.32,3.37,10.07,Poor,Medium,8.42,0.67,Yes,Neutral,Yes +USER-03853,50,Female,6.82,6.14,4.91,8.35,Excellent,Medium,5.51,2.57,Yes,Positive,No +USER-03854,23,Male,2.88,3.77,4.72,6.15,Poor,Medium,8.72,0.4,Yes,Neutral,No +USER-03855,51,Other,1.44,7.23,3.73,3.3,Good,High,6.93,5.92,No,Positive,Yes +USER-03856,46,Male,10.03,7.4,4.5,10.28,Poor,Medium,5.47,7.57,No,Negative,Yes +USER-03857,65,Female,5.7,4.72,3.11,11.08,Fair,Low,5.68,6.48,No,Neutral,No +USER-03858,33,Other,5.9,5.5,2.22,6.2,Good,High,4.35,3.62,Yes,Negative,Yes +USER-03859,27,Other,1.19,4.76,4.15,9.09,Fair,Low,7.18,6.12,No,Positive,No +USER-03860,62,Female,2.29,2.89,4.78,12.2,Fair,Medium,5.14,0.88,Yes,Positive,Yes +USER-03861,24,Other,11.93,2.08,1.08,10.61,Good,High,8.3,7.55,Yes,Neutral,Yes +USER-03862,22,Other,5.86,6.58,4.74,2.05,Excellent,Low,5.05,9.64,Yes,Neutral,Yes +USER-03863,42,Other,8.65,4.54,3.51,11.65,Good,High,8.82,9.47,Yes,Negative,No +USER-03864,25,Other,10.33,5.53,1.24,13.38,Excellent,High,4.59,4.92,Yes,Positive,Yes +USER-03865,46,Other,2.96,2.72,0.41,11.07,Good,Medium,6.95,1.54,No,Neutral,Yes +USER-03866,37,Other,11.64,7.24,3.03,14.41,Fair,Medium,5.43,0.91,No,Positive,No +USER-03867,50,Male,4.0,2.68,4.76,7.54,Poor,Low,8.16,0.98,No,Negative,Yes +USER-03868,44,Female,1.85,6.7,3.79,13.14,Fair,High,6.66,6.97,No,Neutral,No +USER-03869,48,Other,9.76,1.71,3.66,6.16,Fair,Low,6.49,2.25,No,Neutral,Yes +USER-03870,40,Other,11.61,0.77,0.2,13.7,Poor,Low,7.03,7.19,Yes,Positive,No +USER-03871,22,Other,2.32,1.16,2.0,10.39,Fair,High,4.98,9.27,Yes,Negative,No +USER-03872,37,Female,2.15,2.08,1.59,14.18,Fair,Medium,8.36,5.76,No,Negative,Yes +USER-03873,22,Male,2.9,0.39,2.96,2.76,Poor,Low,4.46,2.5,Yes,Neutral,Yes +USER-03874,21,Female,8.64,7.17,2.41,8.83,Poor,High,6.04,2.5,Yes,Neutral,Yes +USER-03875,57,Female,2.53,5.82,2.41,8.92,Poor,High,7.56,8.94,No,Neutral,No +USER-03876,45,Male,10.14,5.16,2.57,11.34,Good,High,5.22,5.94,No,Positive,No +USER-03877,47,Female,2.86,5.24,2.14,1.73,Fair,High,7.23,1.43,No,Neutral,No +USER-03878,48,Female,11.78,6.34,4.76,5.92,Excellent,High,4.65,4.29,Yes,Positive,No +USER-03879,39,Other,3.04,1.3,0.03,3.26,Good,High,6.19,1.37,Yes,Negative,Yes +USER-03880,45,Male,10.4,8.0,1.02,12.98,Excellent,High,7.67,7.82,Yes,Neutral,No +USER-03881,45,Female,9.19,6.0,3.36,10.16,Poor,Low,7.15,8.1,Yes,Positive,No +USER-03882,38,Other,2.06,4.72,4.19,5.17,Excellent,Low,8.24,7.15,No,Negative,No +USER-03883,57,Female,6.32,6.82,1.99,12.33,Good,Low,6.94,8.54,Yes,Positive,Yes +USER-03884,26,Male,9.3,1.2,2.76,4.92,Excellent,Medium,5.07,4.81,Yes,Positive,Yes +USER-03885,22,Other,7.45,8.0,4.98,2.51,Good,High,8.34,6.14,Yes,Positive,No +USER-03886,32,Male,7.08,6.53,0.44,8.03,Excellent,Low,5.17,7.22,Yes,Negative,No +USER-03887,51,Female,9.91,7.36,0.2,7.5,Excellent,High,8.39,5.35,No,Positive,No +USER-03888,63,Other,11.45,0.57,2.55,14.88,Excellent,Low,6.5,9.59,Yes,Neutral,Yes +USER-03889,57,Male,9.88,3.12,4.23,11.14,Poor,Medium,4.16,3.85,Yes,Negative,Yes +USER-03890,29,Male,8.65,6.57,2.76,13.13,Fair,High,6.3,6.86,No,Neutral,Yes +USER-03891,45,Male,9.45,3.35,3.1,4.19,Excellent,Low,4.17,6.42,Yes,Neutral,Yes +USER-03892,39,Other,6.76,4.06,0.61,6.05,Excellent,Medium,4.77,8.31,No,Positive,Yes +USER-03893,56,Other,7.03,0.45,2.59,3.95,Poor,High,5.87,3.51,Yes,Neutral,Yes +USER-03894,19,Male,2.45,5.83,2.19,7.03,Fair,Low,7.27,3.37,No,Negative,No +USER-03895,50,Male,7.79,7.04,1.57,12.3,Fair,Medium,4.88,1.96,No,Neutral,No +USER-03896,51,Male,9.66,1.2,2.28,2.28,Excellent,High,4.51,1.2,No,Negative,No +USER-03897,32,Male,2.16,1.83,0.25,5.37,Poor,High,4.65,4.95,Yes,Negative,Yes +USER-03898,63,Female,5.03,7.08,1.82,1.52,Good,Low,8.33,4.37,Yes,Negative,Yes +USER-03899,42,Male,2.55,7.67,0.56,5.8,Excellent,Low,7.97,6.55,No,Positive,Yes +USER-03900,46,Other,1.28,4.23,0.85,2.95,Excellent,Medium,8.29,7.41,No,Neutral,No +USER-03901,27,Female,10.39,3.25,0.44,4.04,Fair,Medium,4.3,8.27,Yes,Negative,No +USER-03902,65,Male,6.18,2.71,3.95,10.36,Poor,Medium,6.79,4.27,Yes,Positive,Yes +USER-03903,57,Other,4.53,5.12,1.34,9.14,Fair,Low,4.17,5.06,No,Neutral,No +USER-03904,47,Female,6.79,5.89,0.35,11.32,Fair,Low,4.74,9.56,No,Negative,No +USER-03905,58,Male,3.4,7.34,0.39,10.75,Poor,Low,8.75,4.59,Yes,Positive,No +USER-03906,54,Female,10.43,2.83,0.05,7.42,Poor,High,8.42,5.92,No,Negative,Yes +USER-03907,58,Female,6.9,4.66,0.17,11.17,Fair,Low,5.39,7.78,Yes,Neutral,No +USER-03908,51,Male,8.71,6.05,4.24,1.78,Excellent,High,8.72,8.98,Yes,Neutral,Yes +USER-03909,63,Male,11.32,6.55,1.12,12.88,Fair,Low,8.26,3.49,No,Negative,No +USER-03910,36,Other,1.92,6.21,3.43,6.17,Poor,Low,5.57,6.03,No,Negative,No +USER-03911,64,Female,2.31,4.94,4.73,7.09,Excellent,Medium,5.02,5.59,No,Negative,No +USER-03912,27,Male,8.99,4.11,0.37,13.94,Excellent,Low,4.46,9.98,Yes,Negative,Yes +USER-03913,48,Female,6.45,4.76,4.22,5.78,Good,Medium,6.11,1.14,No,Negative,No +USER-03914,57,Other,1.18,0.68,4.05,9.15,Poor,Medium,8.57,0.41,Yes,Positive,No +USER-03915,32,Other,1.81,1.93,3.57,1.93,Good,Low,6.12,7.12,Yes,Positive,No +USER-03916,57,Female,9.91,7.18,2.24,10.02,Fair,High,7.59,4.41,No,Positive,Yes +USER-03917,26,Other,4.53,4.74,2.41,1.88,Fair,Medium,4.83,6.15,No,Neutral,Yes +USER-03918,27,Other,5.79,0.9,2.35,13.8,Good,High,5.44,4.77,Yes,Negative,Yes +USER-03919,43,Other,9.43,3.62,3.88,5.13,Fair,Low,8.23,0.11,No,Neutral,Yes +USER-03920,61,Female,7.07,3.99,4.55,5.24,Poor,High,5.46,4.05,Yes,Neutral,Yes +USER-03921,57,Female,5.88,1.93,2.39,13.84,Excellent,Medium,4.4,9.59,No,Positive,Yes +USER-03922,27,Other,10.43,7.94,1.78,6.34,Fair,Low,8.88,6.18,No,Neutral,No +USER-03923,62,Other,10.51,7.98,1.07,9.0,Poor,High,5.7,0.83,No,Neutral,No +USER-03924,41,Male,8.27,5.88,3.43,9.38,Good,High,8.89,0.85,No,Neutral,No +USER-03925,50,Other,5.08,6.84,0.97,14.81,Good,High,6.79,0.25,No,Neutral,Yes +USER-03926,42,Female,4.5,0.72,4.77,4.46,Good,Medium,4.28,6.01,Yes,Neutral,No +USER-03927,63,Male,8.94,5.82,4.51,13.52,Excellent,Medium,7.24,4.85,Yes,Neutral,No +USER-03928,49,Male,8.66,6.83,3.59,12.28,Poor,Medium,4.47,3.81,Yes,Positive,No +USER-03929,18,Other,5.52,6.37,3.69,9.06,Excellent,Low,5.74,0.02,No,Negative,No +USER-03930,31,Male,8.14,3.55,3.45,11.83,Excellent,Low,6.08,5.47,Yes,Positive,No +USER-03931,45,Female,2.05,5.11,3.66,3.91,Excellent,High,7.45,1.43,No,Negative,No +USER-03932,31,Female,5.22,7.75,2.91,13.12,Poor,Medium,4.11,2.61,Yes,Negative,No +USER-03933,51,Other,7.69,6.17,2.53,9.96,Excellent,High,8.48,3.25,Yes,Negative,No +USER-03934,27,Other,6.99,3.39,0.28,2.59,Good,Medium,7.06,0.81,No,Negative,Yes +USER-03935,64,Female,9.25,7.29,2.78,11.91,Good,Medium,6.42,6.69,No,Positive,Yes +USER-03936,26,Other,4.26,3.03,2.01,4.02,Fair,Medium,4.87,6.7,Yes,Negative,Yes +USER-03937,63,Male,8.18,3.42,4.35,4.92,Excellent,Medium,5.96,1.28,Yes,Positive,Yes +USER-03938,30,Male,4.47,2.14,1.28,9.27,Good,Medium,4.85,5.38,No,Negative,Yes +USER-03939,39,Female,11.35,1.75,3.63,2.77,Poor,Medium,7.92,4.02,Yes,Neutral,Yes +USER-03940,33,Female,1.96,2.84,0.41,4.59,Poor,High,4.06,0.76,No,Neutral,Yes +USER-03941,51,Other,8.92,7.7,4.34,13.96,Poor,Medium,7.12,5.66,Yes,Neutral,No +USER-03942,48,Male,4.57,2.02,2.04,14.34,Excellent,Low,7.68,3.05,Yes,Negative,Yes +USER-03943,39,Other,8.9,5.96,0.78,3.52,Excellent,Medium,7.87,2.88,No,Neutral,No +USER-03944,21,Female,3.59,0.13,1.14,5.63,Good,Low,7.55,0.33,No,Neutral,No +USER-03945,43,Female,6.12,1.07,2.22,11.87,Good,High,6.1,6.0,Yes,Negative,No +USER-03946,48,Other,5.34,7.57,4.02,3.0,Excellent,Medium,6.14,6.27,Yes,Positive,No +USER-03947,46,Female,9.42,2.23,2.67,9.35,Excellent,Medium,4.61,1.17,Yes,Neutral,Yes +USER-03948,53,Female,10.91,4.05,3.12,14.17,Poor,Medium,5.27,6.91,Yes,Neutral,Yes +USER-03949,18,Female,8.2,5.06,2.83,7.22,Poor,Medium,5.66,8.44,Yes,Positive,No +USER-03950,51,Male,2.52,3.54,1.82,13.06,Good,High,4.23,2.88,No,Negative,No +USER-03951,27,Female,9.84,0.16,4.16,11.61,Fair,High,6.33,4.0,No,Neutral,No +USER-03952,30,Male,11.62,0.3,4.71,3.74,Poor,Low,8.75,5.56,No,Positive,No +USER-03953,51,Male,9.96,1.11,1.24,4.2,Fair,High,8.67,2.72,No,Negative,Yes +USER-03954,40,Female,2.39,3.3,4.85,6.26,Excellent,High,8.93,9.82,Yes,Neutral,Yes +USER-03955,64,Male,3.82,7.46,3.85,10.04,Good,High,5.69,0.62,No,Negative,No +USER-03956,47,Male,2.41,4.09,4.39,1.0,Poor,Medium,6.21,0.33,Yes,Positive,No +USER-03957,39,Other,9.08,1.64,4.41,12.1,Excellent,High,4.19,9.78,No,Positive,Yes +USER-03958,51,Female,11.21,5.21,3.82,11.26,Good,High,7.07,4.72,Yes,Negative,No +USER-03959,50,Male,6.07,6.0,3.63,13.13,Excellent,Low,5.91,8.43,Yes,Positive,No +USER-03960,35,Male,5.43,4.16,0.88,1.52,Fair,High,8.4,7.96,Yes,Negative,No +USER-03961,20,Male,11.88,0.45,4.6,5.16,Excellent,Low,4.78,9.43,Yes,Neutral,Yes +USER-03962,39,Male,9.3,4.83,1.56,2.11,Poor,High,5.1,6.46,Yes,Neutral,No +USER-03963,34,Female,6.35,5.31,3.35,6.38,Good,High,7.2,8.01,No,Neutral,Yes +USER-03964,52,Male,8.5,1.57,0.15,14.83,Excellent,Medium,7.24,9.4,Yes,Neutral,No +USER-03965,48,Female,10.91,2.87,4.91,6.48,Excellent,Low,6.16,0.02,No,Negative,Yes +USER-03966,56,Other,8.33,3.3,1.46,10.09,Poor,High,8.29,7.34,Yes,Negative,No +USER-03967,54,Female,4.17,7.41,3.97,6.65,Fair,Medium,6.25,8.59,No,Positive,No +USER-03968,58,Male,7.07,6.97,2.38,11.4,Fair,High,7.21,4.28,Yes,Positive,Yes +USER-03969,21,Female,2.79,5.84,1.02,8.57,Good,High,8.64,3.35,Yes,Negative,No +USER-03970,24,Male,8.63,3.75,0.2,14.57,Poor,High,7.61,7.39,Yes,Negative,Yes +USER-03971,47,Male,9.21,3.07,0.11,12.99,Poor,High,4.0,6.89,Yes,Neutral,No +USER-03972,37,Male,8.49,7.17,1.94,8.51,Fair,Medium,6.74,9.11,No,Positive,No +USER-03973,58,Male,6.92,1.47,4.77,4.81,Excellent,Medium,4.95,1.47,Yes,Positive,Yes +USER-03974,35,Other,4.03,7.69,2.87,13.47,Poor,Low,8.8,7.12,Yes,Neutral,Yes +USER-03975,50,Female,4.76,7.99,2.27,13.9,Fair,Medium,8.25,3.76,Yes,Positive,No +USER-03976,63,Female,8.29,7.02,2.33,13.38,Poor,High,8.66,3.27,Yes,Negative,Yes +USER-03977,18,Other,3.68,4.92,2.53,13.66,Excellent,Medium,6.63,9.65,No,Positive,No +USER-03978,21,Female,2.63,3.18,4.9,1.13,Excellent,Low,4.32,8.24,No,Negative,No +USER-03979,25,Other,7.65,5.37,4.96,7.02,Poor,Low,7.64,7.99,No,Positive,No +USER-03980,49,Male,9.42,4.06,4.72,2.65,Excellent,Medium,7.07,4.17,No,Neutral,No +USER-03981,52,Female,5.88,4.19,1.79,5.63,Excellent,High,4.88,5.04,Yes,Positive,No +USER-03982,58,Male,4.18,1.21,3.9,9.89,Fair,Low,4.37,6.56,No,Neutral,Yes +USER-03983,23,Other,10.6,3.49,3.71,14.61,Good,High,8.99,5.81,Yes,Neutral,No +USER-03984,41,Other,9.32,0.24,1.72,10.52,Fair,Medium,6.0,1.75,No,Neutral,Yes +USER-03985,18,Female,7.53,4.71,4.99,14.14,Poor,High,6.99,5.35,Yes,Negative,Yes +USER-03986,47,Male,9.1,6.05,4.75,11.33,Good,Medium,8.18,8.31,Yes,Neutral,No +USER-03987,40,Female,4.54,5.06,1.89,10.18,Good,High,5.25,8.33,No,Neutral,No +USER-03988,65,Other,4.19,6.51,3.06,12.69,Poor,Low,4.5,0.34,No,Positive,Yes +USER-03989,52,Other,5.07,1.56,4.32,4.06,Excellent,Medium,7.03,3.58,No,Neutral,Yes +USER-03990,37,Female,6.62,3.93,2.59,14.58,Excellent,Low,4.4,1.08,Yes,Neutral,Yes +USER-03991,47,Other,9.02,3.49,2.69,8.56,Excellent,High,5.23,7.54,No,Positive,No +USER-03992,27,Female,3.84,2.45,2.18,1.88,Excellent,Medium,4.03,1.35,No,Positive,No +USER-03993,24,Other,8.76,2.7,0.42,1.49,Poor,High,6.21,2.06,No,Neutral,Yes +USER-03994,60,Other,4.91,7.16,2.07,13.94,Good,Low,6.36,3.87,Yes,Negative,Yes +USER-03995,27,Female,11.03,2.73,0.26,5.96,Good,Low,6.18,7.01,Yes,Negative,Yes +USER-03996,37,Male,3.37,1.28,1.6,9.5,Poor,Medium,6.31,3.94,No,Positive,Yes +USER-03997,57,Other,6.52,4.57,0.03,1.93,Excellent,Medium,4.69,6.09,Yes,Negative,Yes +USER-03998,62,Female,5.07,5.93,2.19,3.84,Fair,Medium,5.88,2.9,Yes,Positive,No +USER-03999,45,Female,6.42,3.26,2.12,9.12,Good,Low,6.89,9.36,Yes,Neutral,No +USER-04000,51,Male,6.83,4.11,1.69,8.67,Excellent,Low,4.3,4.27,Yes,Positive,No +USER-04001,21,Male,6.06,3.41,3.13,7.75,Poor,High,4.61,1.01,No,Negative,Yes +USER-04002,48,Female,9.04,7.73,4.69,3.25,Excellent,Medium,5.56,2.52,No,Negative,Yes +USER-04003,46,Female,9.85,6.68,1.71,11.55,Fair,High,5.39,8.56,Yes,Positive,No +USER-04004,53,Other,2.91,0.15,1.89,7.25,Poor,Low,6.08,6.4,Yes,Negative,Yes +USER-04005,18,Other,9.48,7.9,3.99,12.09,Poor,Low,7.5,4.76,Yes,Negative,Yes +USER-04006,36,Female,7.51,1.42,1.46,7.22,Fair,Low,5.12,4.14,Yes,Negative,Yes +USER-04007,32,Female,10.86,5.31,2.55,3.88,Excellent,Low,7.0,0.68,Yes,Negative,Yes +USER-04008,57,Female,5.36,6.79,0.22,14.16,Fair,Medium,7.54,6.47,Yes,Neutral,Yes +USER-04009,54,Female,9.45,6.18,4.73,5.47,Good,High,4.02,2.66,Yes,Positive,No +USER-04010,42,Female,8.9,7.65,2.07,5.69,Poor,Medium,4.12,6.96,No,Neutral,No +USER-04011,36,Female,9.78,0.47,1.69,11.19,Excellent,High,7.0,3.85,No,Positive,No +USER-04012,22,Other,5.5,0.52,2.14,14.19,Poor,Low,4.23,1.33,Yes,Positive,Yes +USER-04013,41,Other,3.93,4.13,1.81,3.06,Fair,Low,4.73,5.2,Yes,Neutral,Yes +USER-04014,58,Male,2.44,7.0,3.94,13.85,Fair,Medium,7.16,4.91,No,Neutral,No +USER-04015,19,Male,7.78,5.95,2.93,1.75,Good,Low,5.65,8.07,Yes,Positive,Yes +USER-04016,65,Female,10.49,5.71,2.42,1.63,Fair,High,7.55,5.32,Yes,Positive,No +USER-04017,45,Female,1.1,0.2,3.1,2.02,Good,Medium,6.75,9.22,No,Positive,No +USER-04018,65,Other,4.35,2.27,1.11,3.37,Fair,Medium,6.64,4.74,Yes,Neutral,Yes +USER-04019,20,Other,7.15,7.22,1.44,1.19,Fair,Medium,7.77,2.74,Yes,Neutral,Yes +USER-04020,38,Female,4.43,6.16,0.41,6.38,Fair,Medium,8.73,8.44,Yes,Negative,Yes +USER-04021,28,Other,4.46,2.08,4.4,11.19,Poor,High,7.77,6.64,No,Positive,No +USER-04022,64,Male,5.2,3.67,4.17,4.82,Excellent,High,7.08,0.72,No,Negative,No +USER-04023,46,Female,9.33,7.12,4.19,8.87,Excellent,Low,8.55,1.62,Yes,Negative,No +USER-04024,36,Other,6.4,2.57,1.75,9.42,Poor,Low,8.53,1.13,No,Negative,No +USER-04025,25,Other,8.55,2.13,4.78,1.43,Poor,Low,8.6,3.69,No,Negative,Yes +USER-04026,36,Male,6.24,6.76,2.71,2.4,Poor,Medium,5.28,1.93,No,Neutral,Yes +USER-04027,45,Male,3.43,5.55,2.33,13.6,Fair,High,7.91,2.5,No,Neutral,No +USER-04028,31,Male,6.35,4.95,1.86,10.57,Fair,Low,4.49,0.44,No,Positive,No +USER-04029,28,Other,7.19,5.03,0.55,2.53,Good,Low,5.88,4.06,No,Neutral,Yes +USER-04030,65,Other,10.11,1.57,1.93,6.65,Fair,High,7.33,7.69,No,Positive,No +USER-04031,60,Male,10.52,1.32,1.02,12.44,Poor,Low,7.32,1.89,Yes,Neutral,No +USER-04032,57,Other,2.32,7.85,4.08,14.79,Excellent,High,7.04,7.4,No,Positive,Yes +USER-04033,42,Male,7.28,0.63,3.76,8.75,Poor,Medium,4.78,1.65,Yes,Neutral,No +USER-04034,33,Female,7.78,2.77,1.81,1.33,Fair,Low,5.92,2.78,Yes,Neutral,No +USER-04035,29,Female,3.17,2.69,3.07,8.16,Excellent,High,5.79,8.67,Yes,Neutral,Yes +USER-04036,27,Female,1.89,6.48,1.66,8.4,Good,Low,7.64,0.67,Yes,Negative,No +USER-04037,30,Male,11.97,2.14,0.49,8.33,Excellent,High,5.41,8.43,Yes,Positive,No +USER-04038,32,Female,5.03,7.0,0.94,7.18,Poor,High,6.49,1.92,No,Positive,Yes +USER-04039,47,Other,4.24,1.49,3.94,7.29,Good,Low,5.51,2.98,Yes,Neutral,Yes +USER-04040,48,Male,6.89,6.25,2.36,3.32,Good,Low,5.66,8.51,No,Negative,Yes +USER-04041,48,Female,9.6,6.4,3.03,12.91,Fair,Low,7.05,3.71,Yes,Negative,No +USER-04042,59,Male,7.19,3.38,3.53,5.74,Good,Low,6.22,8.92,Yes,Neutral,Yes +USER-04043,40,Female,10.65,6.24,0.27,11.99,Fair,Low,8.61,0.77,No,Neutral,Yes +USER-04044,56,Female,2.31,7.38,1.14,1.46,Excellent,High,5.14,7.26,Yes,Neutral,Yes +USER-04045,50,Female,2.51,1.11,2.27,6.1,Good,Medium,6.31,6.97,No,Negative,Yes +USER-04046,42,Other,11.17,2.48,3.74,3.71,Excellent,Medium,8.24,9.55,Yes,Positive,Yes +USER-04047,21,Other,2.11,5.2,1.79,7.12,Fair,High,7.52,1.55,No,Positive,No +USER-04048,29,Male,2.41,5.12,1.65,12.5,Good,Medium,7.7,1.77,No,Negative,Yes +USER-04049,53,Female,5.58,6.75,2.27,5.5,Good,High,4.33,9.27,Yes,Positive,Yes +USER-04050,25,Other,1.59,6.13,3.93,11.87,Excellent,Medium,8.4,2.46,No,Positive,Yes +USER-04051,53,Other,1.38,2.26,0.18,6.36,Fair,Medium,7.1,3.39,Yes,Positive,No +USER-04052,52,Male,3.72,2.89,4.84,2.49,Fair,Low,6.79,9.72,No,Negative,No +USER-04053,31,Female,11.95,0.84,0.82,3.34,Poor,Low,4.6,1.94,No,Neutral,Yes +USER-04054,38,Female,8.03,1.88,1.54,9.58,Fair,Medium,6.25,0.92,No,Negative,Yes +USER-04055,46,Other,4.67,6.44,3.54,9.29,Poor,High,7.01,6.99,Yes,Positive,No +USER-04056,51,Male,10.15,5.17,1.38,13.58,Fair,High,5.48,9.01,Yes,Neutral,No +USER-04057,50,Other,3.96,4.04,4.15,13.71,Fair,High,4.26,7.55,No,Positive,Yes +USER-04058,51,Male,11.54,1.57,4.42,3.35,Fair,High,4.45,2.97,Yes,Neutral,Yes +USER-04059,28,Male,1.4,1.49,0.58,9.58,Excellent,Low,6.31,2.86,Yes,Neutral,No +USER-04060,58,Female,8.94,4.53,4.56,1.33,Fair,Low,4.9,5.05,No,Positive,No +USER-04061,29,Male,1.76,0.41,2.02,9.58,Excellent,High,4.18,2.09,Yes,Positive,No +USER-04062,36,Female,2.25,2.61,0.18,7.08,Good,High,6.82,2.41,No,Neutral,Yes +USER-04063,51,Other,5.66,4.51,3.65,1.13,Poor,Medium,6.29,4.55,No,Negative,Yes +USER-04064,33,Male,11.51,5.22,3.55,4.2,Excellent,Low,8.06,4.73,No,Negative,No +USER-04065,41,Female,8.97,5.22,1.54,1.43,Poor,Medium,5.78,1.16,Yes,Negative,Yes +USER-04066,32,Other,9.24,5.7,0.18,8.21,Poor,High,8.81,5.74,No,Neutral,Yes +USER-04067,39,Female,11.48,2.0,1.49,12.78,Poor,High,7.11,4.75,Yes,Positive,Yes +USER-04068,20,Other,5.64,3.21,0.07,11.35,Fair,Medium,4.68,9.62,No,Negative,Yes +USER-04069,31,Other,1.88,2.96,1.81,8.72,Excellent,High,5.87,6.07,Yes,Positive,No +USER-04070,25,Other,11.12,5.9,4.34,5.63,Excellent,Medium,5.18,7.27,Yes,Neutral,Yes +USER-04071,34,Female,3.65,1.01,2.23,11.37,Fair,Low,5.06,6.85,Yes,Neutral,Yes +USER-04072,20,Female,2.92,0.98,1.5,6.72,Fair,Low,5.44,4.05,No,Negative,Yes +USER-04073,56,Other,5.55,7.24,4.19,14.25,Poor,Medium,6.86,3.98,Yes,Positive,Yes +USER-04074,49,Female,1.83,2.99,1.59,2.09,Fair,Medium,6.48,2.67,No,Neutral,Yes +USER-04075,50,Other,3.33,6.79,1.56,10.06,Fair,Medium,6.28,7.17,Yes,Positive,Yes +USER-04076,24,Other,8.01,2.53,4.05,2.1,Poor,High,5.24,7.38,No,Positive,Yes +USER-04077,30,Male,8.88,7.08,4.66,5.17,Excellent,Low,5.95,0.54,No,Positive,Yes +USER-04078,19,Male,8.15,5.74,0.69,1.78,Fair,Low,4.07,0.64,Yes,Neutral,Yes +USER-04079,19,Female,1.74,2.51,3.45,10.7,Fair,Medium,8.5,5.22,No,Positive,No +USER-04080,49,Other,11.73,0.46,0.57,3.75,Fair,Medium,7.04,5.97,Yes,Positive,Yes +USER-04081,30,Other,7.38,5.9,2.68,9.0,Fair,Medium,5.84,1.6,No,Negative,Yes +USER-04082,64,Other,5.71,4.96,2.65,10.78,Excellent,Medium,7.43,8.71,No,Negative,Yes +USER-04083,33,Male,4.39,6.71,0.02,13.29,Good,Low,5.24,0.56,Yes,Neutral,No +USER-04084,19,Male,11.59,1.77,3.73,5.07,Poor,High,8.0,2.94,Yes,Positive,No +USER-04085,56,Other,4.28,3.41,4.91,5.3,Fair,Medium,5.62,6.75,No,Positive,No +USER-04086,53,Male,10.11,7.58,0.64,3.56,Fair,Medium,4.17,5.36,No,Positive,No +USER-04087,59,Male,10.64,4.62,2.51,3.56,Good,Low,6.8,7.1,No,Negative,Yes +USER-04088,56,Other,7.75,6.62,3.27,13.25,Fair,High,7.65,6.84,Yes,Positive,No +USER-04089,49,Female,8.77,4.45,4.75,8.5,Good,Low,5.26,4.33,No,Neutral,Yes +USER-04090,39,Other,5.01,4.94,0.59,3.38,Fair,Low,6.69,7.82,No,Negative,Yes +USER-04091,27,Female,11.69,4.63,1.96,9.8,Good,Low,8.96,5.25,Yes,Negative,Yes +USER-04092,42,Male,4.74,4.66,1.78,5.52,Poor,High,5.03,7.58,Yes,Positive,Yes +USER-04093,42,Male,1.92,2.28,3.46,5.2,Poor,Low,7.76,1.3,Yes,Negative,No +USER-04094,20,Female,8.54,0.78,0.38,8.02,Good,Low,6.05,7.17,No,Positive,No +USER-04095,40,Male,8.56,1.52,4.7,1.03,Excellent,Medium,7.8,1.6,Yes,Positive,No +USER-04096,31,Other,3.04,2.24,2.72,2.94,Excellent,Medium,5.05,3.9,Yes,Positive,Yes +USER-04097,37,Female,4.34,1.79,2.36,9.01,Poor,High,5.7,7.15,Yes,Negative,Yes +USER-04098,56,Other,8.72,0.71,4.07,3.02,Fair,Low,5.56,1.36,Yes,Neutral,No +USER-04099,55,Female,10.68,0.24,3.34,14.1,Fair,Low,6.97,0.3,No,Positive,Yes +USER-04100,30,Female,6.17,2.95,0.89,11.0,Good,Medium,8.54,1.32,Yes,Negative,No +USER-04101,52,Female,8.22,1.3,4.71,4.17,Good,Medium,4.66,9.94,Yes,Positive,Yes +USER-04102,26,Other,2.1,1.16,3.23,5.2,Good,Low,6.59,0.91,Yes,Positive,Yes +USER-04103,53,Other,10.32,2.84,2.94,13.28,Excellent,Low,8.69,6.57,No,Positive,Yes +USER-04104,44,Male,9.66,3.85,4.88,4.36,Good,High,9.0,5.44,Yes,Negative,No +USER-04105,51,Male,2.69,5.28,4.21,4.06,Good,High,8.83,1.14,No,Positive,No +USER-04106,36,Other,9.89,1.41,2.61,1.93,Poor,High,6.47,1.15,Yes,Negative,Yes +USER-04107,59,Male,10.43,5.02,4.55,7.68,Poor,High,7.4,4.3,No,Negative,Yes +USER-04108,27,Other,5.89,7.78,1.06,8.97,Poor,Low,6.82,2.8,No,Negative,Yes +USER-04109,37,Female,10.84,6.01,3.77,2.32,Fair,High,8.41,0.44,No,Positive,No +USER-04110,53,Other,2.55,5.92,1.77,14.86,Excellent,High,5.03,9.52,No,Neutral,Yes +USER-04111,34,Other,5.25,2.69,2.6,11.69,Excellent,Medium,6.83,1.95,Yes,Neutral,No +USER-04112,30,Male,4.7,2.54,3.43,2.46,Poor,High,4.93,2.27,Yes,Positive,No +USER-04113,25,Male,1.03,0.09,2.33,9.36,Fair,Low,4.6,9.96,No,Positive,No +USER-04114,27,Male,8.45,1.49,4.47,6.94,Poor,High,7.24,5.27,No,Positive,Yes +USER-04115,63,Female,6.12,1.06,3.91,4.4,Poor,Medium,5.14,6.38,Yes,Neutral,Yes +USER-04116,20,Female,1.32,1.48,2.15,13.44,Excellent,Medium,5.75,5.07,No,Negative,Yes +USER-04117,63,Male,11.63,2.79,0.48,1.99,Poor,Low,7.2,0.77,Yes,Neutral,No +USER-04118,29,Other,2.06,3.62,2.15,4.25,Fair,Medium,6.94,8.84,No,Neutral,No +USER-04119,47,Male,9.73,6.96,0.43,4.96,Good,Low,5.69,5.75,No,Neutral,No +USER-04120,42,Other,4.16,3.27,3.57,11.76,Good,Medium,6.19,9.75,No,Negative,No +USER-04121,20,Female,5.87,6.35,3.64,10.9,Good,Medium,5.72,5.34,Yes,Neutral,Yes +USER-04122,23,Other,10.57,5.02,1.7,5.3,Poor,Low,7.56,4.2,No,Positive,Yes +USER-04123,47,Other,1.54,7.65,3.86,4.84,Fair,Low,5.64,6.99,Yes,Negative,Yes +USER-04124,44,Other,5.09,0.36,1.78,10.57,Excellent,Low,8.1,3.13,Yes,Neutral,No +USER-04125,27,Male,1.97,4.06,1.62,13.41,Fair,Medium,8.31,2.22,No,Negative,No +USER-04126,50,Male,8.1,2.85,0.22,12.93,Good,High,7.68,9.72,No,Negative,No +USER-04127,29,Other,8.72,2.72,0.7,13.16,Poor,High,7.88,8.43,Yes,Neutral,No +USER-04128,44,Male,7.79,1.09,3.56,8.59,Poor,Medium,6.18,6.16,No,Neutral,Yes +USER-04129,56,Male,1.5,0.0,0.61,9.6,Good,Medium,4.84,1.26,Yes,Positive,Yes +USER-04130,47,Other,9.92,1.4,4.3,13.72,Good,High,5.4,3.38,No,Neutral,No +USER-04131,40,Female,8.29,3.34,3.46,2.79,Fair,Low,8.65,6.2,No,Positive,No +USER-04132,25,Female,9.3,1.88,1.01,3.6,Good,High,4.91,7.21,Yes,Negative,No +USER-04133,24,Female,3.98,0.59,3.01,14.62,Poor,High,4.86,3.93,No,Negative,Yes +USER-04134,60,Other,7.77,2.83,2.43,1.12,Excellent,Medium,4.38,6.31,Yes,Negative,No +USER-04135,25,Female,5.28,6.77,1.24,13.8,Good,Medium,5.04,6.16,No,Neutral,Yes +USER-04136,20,Other,11.71,5.71,0.23,12.89,Good,Low,8.9,6.09,No,Negative,Yes +USER-04137,35,Other,2.08,2.33,4.09,13.42,Poor,High,8.64,1.28,Yes,Negative,No +USER-04138,43,Male,8.51,3.38,0.96,11.8,Good,Low,8.87,1.21,Yes,Negative,No +USER-04139,64,Male,2.38,5.32,2.09,5.81,Poor,Low,8.13,0.25,No,Negative,No +USER-04140,44,Male,6.09,3.61,4.54,5.51,Fair,Medium,7.46,8.95,Yes,Positive,No +USER-04141,20,Female,11.2,1.11,4.75,12.17,Fair,High,4.18,3.19,No,Neutral,No +USER-04142,54,Male,8.77,0.05,4.78,6.2,Excellent,High,5.13,1.41,No,Neutral,Yes +USER-04143,62,Other,7.5,0.75,3.96,4.02,Excellent,Low,4.73,9.28,No,Neutral,Yes +USER-04144,35,Female,11.71,1.44,0.1,8.36,Good,Low,8.92,7.39,Yes,Negative,No +USER-04145,38,Other,9.49,6.79,0.5,7.8,Excellent,Low,7.19,7.29,No,Positive,No +USER-04146,20,Other,8.76,2.54,4.75,3.46,Excellent,Medium,6.34,0.39,Yes,Neutral,Yes +USER-04147,60,Female,10.45,4.39,4.14,2.79,Poor,Low,7.89,1.32,No,Positive,No +USER-04148,46,Male,3.48,4.22,2.82,2.92,Poor,Medium,6.46,2.23,No,Negative,Yes +USER-04149,40,Male,3.74,2.27,4.12,7.55,Poor,Low,5.56,7.96,Yes,Neutral,Yes +USER-04150,40,Male,7.96,0.18,4.69,4.57,Excellent,Medium,7.22,7.24,Yes,Negative,Yes +USER-04151,44,Female,9.91,5.33,3.25,11.22,Fair,Low,6.35,2.27,No,Negative,Yes +USER-04152,52,Other,1.86,7.89,4.66,13.91,Poor,High,5.29,3.65,No,Neutral,Yes +USER-04153,25,Female,11.06,4.96,1.45,11.91,Good,Medium,8.11,8.41,Yes,Negative,No +USER-04154,62,Other,1.96,0.74,4.35,7.38,Good,High,6.61,8.29,Yes,Positive,Yes +USER-04155,50,Male,3.87,6.44,1.26,1.44,Fair,Medium,6.27,1.09,No,Negative,No +USER-04156,44,Female,10.51,2.52,1.43,11.7,Excellent,High,6.68,6.63,No,Negative,No +USER-04157,62,Female,10.97,3.34,3.28,5.11,Poor,Low,5.99,9.26,No,Positive,No +USER-04158,43,Other,1.74,6.61,4.01,6.5,Fair,Medium,7.41,0.35,Yes,Positive,Yes +USER-04159,56,Other,9.76,5.89,3.76,9.62,Excellent,Medium,8.43,2.55,No,Negative,No +USER-04160,37,Female,5.51,5.14,2.22,14.75,Excellent,High,5.16,8.49,No,Positive,Yes +USER-04161,54,Other,5.86,3.26,4.94,3.85,Poor,Low,8.11,7.77,Yes,Neutral,Yes +USER-04162,24,Other,2.89,7.77,1.68,11.12,Excellent,Medium,4.74,4.93,No,Neutral,No +USER-04163,32,Female,2.44,6.24,0.05,3.37,Poor,High,7.98,8.35,No,Negative,No +USER-04164,63,Female,9.34,5.19,1.84,1.75,Good,High,4.15,5.02,Yes,Neutral,No +USER-04165,38,Female,2.61,3.07,3.12,3.02,Fair,High,6.77,4.75,No,Neutral,No +USER-04166,64,Other,6.03,3.66,3.12,1.76,Poor,High,4.63,2.93,Yes,Negative,Yes +USER-04167,43,Other,2.74,7.44,1.68,5.45,Good,Medium,4.58,4.16,No,Positive,Yes +USER-04168,19,Male,1.85,6.38,4.36,2.48,Fair,Medium,6.25,9.13,Yes,Negative,Yes +USER-04169,21,Male,3.24,3.22,4.62,7.48,Excellent,Medium,8.89,6.52,Yes,Negative,Yes +USER-04170,31,Male,6.01,7.87,4.04,7.14,Fair,Low,6.67,0.61,No,Neutral,No +USER-04171,26,Male,4.22,5.36,3.32,11.98,Excellent,High,8.16,0.01,Yes,Neutral,Yes +USER-04172,47,Other,8.44,1.1,4.61,13.28,Good,Low,5.18,4.48,No,Positive,No +USER-04173,50,Male,5.86,2.42,0.14,3.13,Fair,Low,5.72,4.3,No,Positive,No +USER-04174,39,Female,5.25,6.84,3.69,5.15,Poor,Medium,8.77,5.88,No,Positive,Yes +USER-04175,45,Other,2.68,3.82,0.24,12.16,Excellent,High,5.79,0.47,No,Positive,No +USER-04176,46,Male,10.95,0.65,3.42,8.63,Poor,Low,8.89,6.17,Yes,Negative,No +USER-04177,45,Male,6.73,0.77,1.72,6.06,Excellent,Medium,7.15,8.61,Yes,Negative,No +USER-04178,61,Male,9.36,6.66,3.9,12.26,Fair,High,7.3,1.59,Yes,Negative,Yes +USER-04179,61,Male,11.0,6.19,2.09,1.36,Good,Low,7.05,8.63,No,Positive,Yes +USER-04180,32,Other,6.37,1.08,2.65,4.42,Poor,High,7.97,4.03,Yes,Negative,Yes +USER-04181,44,Male,3.38,7.56,3.44,8.68,Poor,High,8.63,5.6,Yes,Neutral,No +USER-04182,61,Other,3.71,6.85,3.29,8.65,Poor,Low,6.16,3.74,Yes,Negative,Yes +USER-04183,21,Other,11.92,7.97,4.73,1.56,Fair,High,4.19,8.68,No,Neutral,Yes +USER-04184,43,Other,10.07,1.32,3.74,10.25,Good,Medium,8.71,5.58,No,Neutral,No +USER-04185,55,Female,4.3,1.07,3.09,10.03,Excellent,Low,7.19,6.92,No,Positive,No +USER-04186,32,Male,2.69,5.08,3.46,3.09,Excellent,High,5.5,7.03,No,Negative,Yes +USER-04187,23,Male,7.58,1.85,1.49,4.61,Poor,Medium,7.21,0.74,No,Positive,Yes +USER-04188,25,Other,2.54,3.38,2.27,8.7,Fair,High,7.11,2.6,No,Positive,No +USER-04189,33,Other,11.73,0.01,4.55,5.78,Good,Low,7.4,1.77,No,Neutral,No +USER-04190,52,Other,3.72,3.31,2.61,11.67,Fair,High,5.56,0.79,Yes,Neutral,Yes +USER-04191,56,Female,7.25,0.19,3.69,11.19,Excellent,Low,4.54,8.81,No,Negative,No +USER-04192,22,Other,3.89,5.47,1.42,6.29,Excellent,Medium,4.36,4.35,Yes,Positive,Yes +USER-04193,52,Other,6.09,2.7,2.37,14.59,Excellent,Medium,6.09,5.13,Yes,Positive,No +USER-04194,49,Other,2.66,4.64,4.45,13.27,Fair,Medium,4.3,0.76,Yes,Positive,No +USER-04195,38,Other,7.51,6.49,2.07,8.27,Good,Low,4.06,3.27,No,Negative,No +USER-04196,64,Female,10.71,3.75,2.44,13.79,Good,High,4.03,1.28,Yes,Negative,Yes +USER-04197,22,Female,9.38,2.63,1.31,3.62,Good,Low,7.34,8.18,Yes,Positive,No +USER-04198,30,Other,8.38,1.27,4.48,13.88,Good,Medium,7.08,0.71,No,Positive,Yes +USER-04199,63,Male,6.55,5.29,4.38,11.28,Good,Low,6.91,5.58,Yes,Neutral,No +USER-04200,38,Other,3.71,4.06,1.35,6.53,Good,Medium,8.66,2.95,No,Negative,Yes +USER-04201,63,Other,2.79,4.82,3.95,14.95,Poor,Medium,5.53,3.24,No,Positive,No +USER-04202,25,Other,7.38,6.4,1.8,6.07,Excellent,Medium,7.72,6.13,Yes,Neutral,No +USER-04203,42,Female,6.48,0.71,4.05,3.53,Good,Medium,6.61,9.08,No,Neutral,No +USER-04204,55,Other,3.28,2.9,0.42,1.1,Good,High,6.41,1.33,No,Positive,No +USER-04205,65,Female,3.0,0.2,0.26,12.61,Fair,Medium,5.58,9.93,No,Negative,No +USER-04206,42,Other,2.67,7.3,4.72,9.7,Poor,Low,4.2,8.47,No,Positive,Yes +USER-04207,54,Other,9.57,7.72,2.31,7.85,Poor,Low,4.4,4.47,Yes,Negative,No +USER-04208,19,Male,11.51,7.61,4.03,13.95,Poor,High,4.4,1.63,Yes,Positive,No +USER-04209,58,Female,5.75,3.46,0.91,7.59,Fair,Low,5.79,6.55,No,Negative,Yes +USER-04210,55,Male,8.09,6.98,0.87,8.26,Good,Low,7.22,3.45,No,Neutral,Yes +USER-04211,18,Male,9.29,7.24,0.33,10.22,Fair,Medium,4.86,2.23,Yes,Positive,Yes +USER-04212,53,Female,1.17,7.24,3.03,2.36,Poor,Medium,7.04,4.59,Yes,Positive,No +USER-04213,56,Other,4.41,6.42,4.98,5.65,Fair,Medium,8.06,3.86,Yes,Neutral,Yes +USER-04214,19,Other,10.88,2.57,4.98,7.62,Excellent,High,8.68,2.09,Yes,Neutral,Yes +USER-04215,41,Male,8.28,5.76,2.13,10.18,Poor,Low,7.44,9.81,Yes,Negative,No +USER-04216,20,Other,5.3,5.59,2.47,8.32,Good,Low,5.43,9.74,Yes,Negative,No +USER-04217,61,Other,2.88,3.6,1.07,8.74,Good,Low,5.32,0.16,No,Neutral,Yes +USER-04218,54,Female,5.01,0.04,4.34,1.79,Poor,Low,5.46,4.66,Yes,Neutral,No +USER-04219,44,Female,1.36,1.92,1.89,13.55,Fair,High,4.21,7.34,No,Positive,No +USER-04220,21,Other,1.4,0.97,0.14,13.23,Fair,Low,5.04,0.43,No,Positive,No +USER-04221,57,Other,11.83,2.93,2.46,11.99,Poor,Low,7.49,2.1,Yes,Neutral,No +USER-04222,18,Other,5.65,7.33,3.31,4.15,Good,Medium,4.55,9.53,No,Neutral,Yes +USER-04223,22,Female,9.81,4.95,2.31,2.0,Good,High,8.31,4.99,Yes,Negative,No +USER-04224,35,Other,5.86,3.3,2.03,8.71,Excellent,Medium,7.93,8.73,Yes,Negative,Yes +USER-04225,57,Male,5.95,3.1,1.73,1.98,Fair,Low,4.96,1.74,Yes,Neutral,No +USER-04226,20,Male,9.45,1.03,0.3,10.0,Poor,Medium,4.11,8.07,Yes,Negative,No +USER-04227,44,Other,5.69,2.53,2.47,13.63,Excellent,Medium,8.68,8.19,No,Positive,No +USER-04228,24,Male,4.88,3.57,0.13,12.44,Fair,High,7.23,9.09,Yes,Neutral,Yes +USER-04229,61,Male,10.45,7.55,4.85,7.09,Excellent,Low,5.36,1.89,No,Neutral,No +USER-04230,25,Female,4.33,0.08,4.39,9.85,Good,Low,8.43,2.41,No,Positive,No +USER-04231,20,Other,4.21,4.02,4.6,12.79,Fair,High,6.08,2.31,No,Positive,Yes +USER-04232,19,Male,2.26,6.11,0.41,5.75,Good,High,5.32,2.46,Yes,Neutral,Yes +USER-04233,19,Female,11.28,0.35,2.06,1.21,Fair,High,8.69,7.55,No,Positive,Yes +USER-04234,46,Female,4.77,2.25,3.77,5.11,Poor,Medium,5.7,0.42,Yes,Neutral,No +USER-04235,55,Female,4.87,5.36,3.25,14.28,Fair,High,8.2,5.61,No,Negative,No +USER-04236,60,Other,7.08,3.98,1.19,10.43,Poor,Medium,7.12,9.25,Yes,Negative,No +USER-04237,60,Female,8.15,2.29,3.74,7.18,Good,Medium,7.59,9.91,No,Negative,Yes +USER-04238,65,Other,9.2,1.85,4.59,1.66,Good,High,5.05,0.45,No,Positive,No +USER-04239,24,Female,9.57,4.28,1.95,1.99,Poor,Medium,4.56,7.64,No,Negative,No +USER-04240,59,Male,6.04,6.6,3.72,3.94,Fair,Medium,6.86,4.51,No,Negative,Yes +USER-04241,55,Female,4.52,4.75,2.42,3.23,Excellent,Low,8.52,2.08,Yes,Negative,Yes +USER-04242,21,Male,2.67,4.22,0.64,2.92,Fair,High,8.09,0.35,No,Neutral,Yes +USER-04243,62,Female,9.98,4.69,0.43,5.94,Excellent,Medium,8.74,7.02,Yes,Negative,No +USER-04244,35,Male,4.73,4.04,2.43,7.29,Excellent,High,5.38,1.78,No,Positive,No +USER-04245,32,Female,6.96,5.69,2.33,1.35,Fair,Medium,5.2,4.75,Yes,Neutral,Yes +USER-04246,43,Female,8.75,5.14,2.43,14.0,Good,High,4.45,9.38,Yes,Neutral,No +USER-04247,20,Female,5.81,0.83,1.12,11.08,Poor,Medium,7.31,7.75,No,Neutral,Yes +USER-04248,24,Other,7.21,1.38,3.58,12.47,Poor,Low,8.92,9.68,Yes,Negative,Yes +USER-04249,58,Other,2.6,0.44,2.46,14.51,Poor,Low,6.25,2.74,Yes,Positive,Yes +USER-04250,31,Other,5.55,3.36,4.21,7.84,Excellent,Low,6.6,2.7,Yes,Neutral,No +USER-04251,20,Female,6.98,6.15,4.87,14.91,Good,High,7.66,5.78,Yes,Positive,No +USER-04252,42,Female,9.81,3.73,4.48,3.01,Poor,Low,7.12,9.14,No,Positive,Yes +USER-04253,24,Other,4.14,1.7,4.07,4.97,Fair,High,8.77,1.66,Yes,Neutral,No +USER-04254,62,Other,3.92,0.44,0.36,13.84,Fair,Low,5.12,8.09,Yes,Negative,No +USER-04255,21,Female,11.64,2.0,4.77,8.63,Poor,Low,6.57,4.87,Yes,Positive,No +USER-04256,49,Male,10.52,6.82,4.24,12.62,Fair,Low,8.71,1.16,No,Negative,Yes +USER-04257,47,Other,4.95,2.68,0.29,7.34,Poor,Medium,8.59,5.76,Yes,Neutral,Yes +USER-04258,30,Male,5.84,7.95,4.63,8.27,Excellent,Medium,6.29,3.87,No,Negative,No +USER-04259,55,Female,11.63,1.25,0.79,6.62,Good,Medium,8.23,2.24,No,Positive,Yes +USER-04260,34,Male,1.8,4.75,3.66,8.29,Poor,High,8.75,1.58,No,Negative,Yes +USER-04261,59,Other,3.93,4.49,1.89,6.49,Poor,Medium,8.76,8.67,No,Neutral,No +USER-04262,49,Female,4.81,1.12,0.64,6.1,Fair,High,7.46,4.72,No,Positive,No +USER-04263,25,Female,9.73,2.09,3.54,1.15,Fair,Low,7.2,7.88,No,Positive,No +USER-04264,48,Male,5.33,1.89,4.89,5.87,Fair,Medium,5.95,1.45,No,Negative,No +USER-04265,62,Male,2.02,7.44,0.44,11.91,Good,Low,5.26,0.66,No,Negative,No +USER-04266,30,Female,5.42,1.96,2.18,8.47,Excellent,Low,8.19,8.04,Yes,Negative,No +USER-04267,24,Other,3.8,7.15,2.32,4.2,Excellent,High,8.27,6.53,Yes,Neutral,Yes +USER-04268,41,Other,3.47,5.15,1.98,1.42,Poor,Low,5.68,8.87,No,Negative,No +USER-04269,19,Female,10.91,3.06,3.99,12.36,Good,Low,5.85,9.58,No,Positive,Yes +USER-04270,32,Other,1.8,2.42,3.03,1.8,Fair,Low,5.12,9.17,Yes,Neutral,No +USER-04271,58,Other,7.8,1.27,2.91,2.75,Good,High,6.63,2.81,No,Neutral,No +USER-04272,27,Male,8.51,3.39,2.38,14.15,Good,Low,5.29,4.59,No,Positive,No +USER-04273,46,Other,6.84,6.68,0.39,14.71,Fair,Medium,5.42,5.65,No,Positive,No +USER-04274,19,Male,11.22,5.13,4.83,4.18,Fair,High,7.43,2.32,No,Positive,No +USER-04275,51,Other,9.19,4.48,1.57,6.4,Fair,Medium,4.67,3.56,Yes,Negative,No +USER-04276,63,Male,3.89,4.62,1.19,12.57,Excellent,Medium,5.98,4.71,No,Positive,Yes +USER-04277,44,Male,3.86,0.11,2.1,8.33,Fair,Medium,8.01,5.58,Yes,Positive,No +USER-04278,57,Male,5.59,2.34,3.68,7.88,Poor,High,6.24,7.8,No,Positive,Yes +USER-04279,27,Female,9.01,4.79,1.25,4.23,Fair,Low,8.05,0.1,Yes,Negative,Yes +USER-04280,63,Other,3.61,4.6,1.36,9.13,Fair,Low,5.52,9.4,No,Negative,Yes +USER-04281,27,Male,9.64,0.99,1.84,11.06,Poor,High,7.71,9.1,No,Neutral,No +USER-04282,42,Other,1.97,1.38,0.27,14.85,Good,High,4.04,9.14,No,Positive,Yes +USER-04283,44,Female,11.24,3.0,1.11,5.8,Good,Low,5.83,7.99,Yes,Positive,No +USER-04284,28,Male,10.03,6.57,2.53,4.79,Excellent,High,8.03,6.74,No,Negative,Yes +USER-04285,53,Other,9.62,2.0,3.21,5.91,Good,Medium,4.3,0.43,Yes,Negative,Yes +USER-04286,22,Female,5.29,0.97,2.2,10.28,Excellent,Medium,5.02,6.57,Yes,Negative,No +USER-04287,40,Other,3.24,5.98,4.23,2.39,Poor,Low,7.16,5.79,No,Neutral,No +USER-04288,26,Male,3.27,7.73,3.59,6.47,Excellent,Low,7.82,4.43,No,Positive,Yes +USER-04289,33,Female,10.06,3.66,4.24,1.09,Excellent,Low,4.54,3.19,No,Positive,No +USER-04290,45,Other,1.76,4.48,4.55,11.95,Good,High,6.11,5.79,No,Neutral,No +USER-04291,50,Other,9.33,5.96,2.35,11.83,Excellent,Medium,5.94,2.16,Yes,Negative,Yes +USER-04292,32,Female,3.85,2.59,0.31,3.07,Excellent,High,5.94,3.4,Yes,Negative,Yes +USER-04293,53,Male,2.88,1.5,3.0,14.9,Excellent,High,4.58,7.91,No,Positive,Yes +USER-04294,37,Female,8.92,1.07,2.77,4.37,Good,Medium,5.74,5.05,No,Negative,Yes +USER-04295,44,Female,3.17,6.7,0.37,7.74,Poor,Medium,7.58,6.74,No,Negative,Yes +USER-04296,40,Other,11.62,7.77,0.07,12.06,Excellent,Medium,6.05,5.86,No,Neutral,Yes +USER-04297,62,Male,1.4,5.98,2.32,6.03,Good,Medium,7.9,1.83,Yes,Neutral,No +USER-04298,20,Other,3.61,6.98,3.64,10.22,Good,Medium,4.95,0.53,Yes,Positive,No +USER-04299,41,Female,4.75,1.79,0.63,8.56,Good,Medium,8.62,4.08,No,Neutral,No +USER-04300,55,Other,11.59,2.5,2.28,13.62,Poor,Medium,7.5,3.64,No,Neutral,No +USER-04301,47,Other,9.31,0.14,1.64,11.62,Fair,High,7.0,2.68,No,Negative,Yes +USER-04302,27,Male,8.92,0.7,3.24,14.01,Fair,Low,6.31,4.64,Yes,Negative,Yes +USER-04303,38,Male,7.33,6.97,3.57,4.54,Excellent,Low,6.68,5.18,Yes,Positive,Yes +USER-04304,64,Other,1.86,4.94,1.62,10.82,Excellent,Low,8.25,0.96,Yes,Neutral,Yes +USER-04305,65,Male,8.99,2.97,4.97,1.33,Poor,Medium,7.92,6.36,Yes,Neutral,No +USER-04306,54,Male,3.52,2.66,3.39,11.43,Good,Medium,4.42,0.93,Yes,Positive,No +USER-04307,25,Other,4.11,7.31,2.17,9.55,Fair,Medium,7.73,7.83,No,Neutral,No +USER-04308,40,Other,3.14,6.6,3.01,8.17,Poor,Medium,5.01,0.91,Yes,Neutral,No +USER-04309,58,Female,4.02,5.17,1.8,8.32,Good,High,7.87,4.73,Yes,Neutral,No +USER-04310,37,Male,4.4,4.49,1.32,12.92,Fair,High,4.93,2.25,Yes,Positive,No +USER-04311,23,Other,9.74,1.69,3.37,9.28,Excellent,Medium,7.32,2.25,No,Positive,No +USER-04312,55,Male,1.6,5.68,1.44,6.49,Fair,Medium,5.73,4.42,No,Positive,Yes +USER-04313,25,Female,5.94,5.1,1.33,5.64,Fair,Medium,7.93,3.51,No,Negative,Yes +USER-04314,21,Female,5.72,2.54,0.68,2.6,Excellent,High,5.7,3.54,No,Neutral,Yes +USER-04315,35,Female,3.88,4.52,2.07,7.13,Excellent,Medium,6.28,6.3,Yes,Positive,Yes +USER-04316,30,Male,8.93,0.57,0.22,1.49,Good,High,4.39,9.24,No,Neutral,No +USER-04317,58,Male,2.12,3.85,4.21,2.92,Poor,Low,7.67,1.57,Yes,Positive,Yes +USER-04318,25,Female,5.98,2.16,2.21,6.04,Poor,Low,4.79,7.05,Yes,Negative,No +USER-04319,40,Other,1.17,2.63,0.18,6.17,Good,Low,6.39,6.99,No,Positive,Yes +USER-04320,40,Female,8.93,7.09,3.67,13.25,Poor,Low,8.49,3.52,Yes,Positive,Yes +USER-04321,31,Other,5.6,1.12,4.45,8.73,Good,Medium,4.27,4.98,Yes,Neutral,No +USER-04322,49,Other,7.23,6.88,1.98,8.64,Fair,High,7.54,5.95,No,Neutral,Yes +USER-04323,64,Other,3.94,5.59,2.95,14.36,Good,Medium,6.1,5.17,No,Neutral,Yes +USER-04324,25,Female,3.38,4.23,4.74,14.7,Poor,Low,7.35,6.4,Yes,Neutral,Yes +USER-04325,36,Other,3.7,3.61,4.76,7.98,Excellent,High,6.93,5.88,No,Negative,No +USER-04326,37,Male,2.37,3.61,3.02,2.06,Fair,High,8.93,8.82,Yes,Negative,Yes +USER-04327,64,Male,5.63,4.04,2.74,9.53,Excellent,High,8.41,7.31,Yes,Neutral,No +USER-04328,34,Male,1.92,2.38,0.09,5.5,Good,High,7.91,2.12,No,Positive,Yes +USER-04329,39,Female,2.88,4.4,2.67,3.52,Excellent,Medium,6.61,6.1,No,Neutral,Yes +USER-04330,24,Female,11.32,1.71,0.4,5.4,Good,Low,5.19,0.04,No,Positive,No +USER-04331,50,Other,3.17,5.2,3.3,5.85,Good,Medium,8.95,9.04,No,Neutral,Yes +USER-04332,54,Female,11.84,0.35,1.67,9.34,Fair,Low,5.84,2.68,No,Neutral,No +USER-04333,25,Male,4.54,3.94,4.5,2.33,Poor,High,5.89,2.05,Yes,Negative,Yes +USER-04334,31,Female,2.68,4.51,3.56,11.97,Excellent,Low,7.6,0.18,Yes,Negative,No +USER-04335,35,Other,3.26,6.98,0.71,6.99,Good,Low,6.9,1.73,Yes,Neutral,Yes +USER-04336,65,Male,11.28,6.21,0.59,2.87,Poor,Low,7.21,5.51,No,Negative,No +USER-04337,39,Male,6.36,1.29,0.61,3.5,Poor,High,8.17,5.31,Yes,Neutral,No +USER-04338,32,Other,2.41,2.94,3.01,6.02,Poor,High,8.45,4.65,No,Neutral,No +USER-04339,63,Female,4.34,2.48,0.75,14.83,Fair,Low,5.48,7.62,Yes,Negative,Yes +USER-04340,32,Male,1.03,6.71,4.64,1.01,Fair,Low,8.42,3.51,Yes,Negative,No +USER-04341,18,Female,9.52,4.93,1.93,5.35,Poor,Medium,7.82,3.66,Yes,Positive,No +USER-04342,42,Other,4.29,5.93,3.86,13.45,Poor,Low,4.2,6.24,Yes,Neutral,Yes +USER-04343,41,Other,8.04,5.66,4.12,1.97,Good,Low,7.55,2.45,Yes,Positive,No +USER-04344,64,Female,6.11,3.39,4.13,11.38,Poor,Low,7.9,9.82,No,Positive,No +USER-04345,37,Female,5.88,6.56,1.23,14.22,Poor,High,5.71,3.27,Yes,Positive,Yes +USER-04346,65,Other,9.73,1.89,0.21,9.23,Fair,High,4.47,5.13,Yes,Neutral,Yes +USER-04347,46,Male,6.75,6.34,0.81,11.88,Good,Low,7.0,5.09,No,Negative,Yes +USER-04348,32,Other,8.72,3.72,2.4,9.61,Good,Low,7.44,3.82,No,Negative,No +USER-04349,55,Other,6.25,7.11,1.78,11.95,Poor,High,4.53,8.77,Yes,Neutral,Yes +USER-04350,45,Male,2.87,6.23,5.0,6.92,Excellent,Medium,6.41,3.24,No,Negative,Yes +USER-04351,62,Other,9.55,6.4,2.0,5.66,Excellent,High,5.52,8.97,Yes,Positive,No +USER-04352,51,Male,9.86,1.3,4.08,5.1,Good,Low,5.71,3.86,Yes,Negative,No +USER-04353,50,Female,2.1,5.19,2.91,6.38,Excellent,Low,4.66,3.06,Yes,Negative,No +USER-04354,52,Other,9.51,2.32,3.84,6.58,Good,Low,6.03,5.46,No,Positive,No +USER-04355,51,Female,10.35,2.36,0.88,4.25,Excellent,Medium,6.44,1.92,No,Positive,Yes +USER-04356,46,Other,3.64,1.62,0.59,8.37,Good,High,5.94,5.46,Yes,Neutral,Yes +USER-04357,63,Other,1.48,2.12,2.83,2.74,Excellent,Low,8.01,6.74,Yes,Positive,No +USER-04358,47,Other,11.92,4.87,3.34,7.46,Good,Medium,6.32,9.07,Yes,Neutral,No +USER-04359,45,Male,2.23,0.34,0.22,13.25,Good,Medium,7.91,8.11,Yes,Negative,No +USER-04360,29,Female,1.4,7.29,1.6,4.49,Poor,High,8.51,0.72,No,Negative,No +USER-04361,33,Male,8.5,5.35,0.95,12.73,Poor,Low,6.71,3.99,Yes,Positive,No +USER-04362,59,Male,5.34,0.02,1.31,1.23,Poor,Medium,4.09,7.33,No,Negative,Yes +USER-04363,57,Male,10.46,1.58,0.98,8.81,Excellent,High,8.89,7.1,Yes,Positive,Yes +USER-04364,64,Other,10.23,2.44,1.86,3.32,Excellent,High,5.26,6.71,No,Negative,Yes +USER-04365,52,Male,8.86,3.87,3.96,5.13,Good,Medium,7.62,0.55,No,Positive,No +USER-04366,57,Other,8.75,7.43,1.19,12.53,Poor,Medium,5.91,7.24,No,Neutral,No +USER-04367,57,Other,1.66,1.82,4.11,5.73,Poor,Medium,8.3,0.93,Yes,Positive,No +USER-04368,60,Female,4.57,0.26,4.85,5.56,Poor,Low,8.35,4.59,No,Positive,Yes +USER-04369,47,Female,10.58,0.65,0.2,11.97,Good,High,8.29,0.81,Yes,Neutral,Yes +USER-04370,26,Male,6.78,5.13,0.73,11.47,Poor,High,4.24,4.63,No,Neutral,No +USER-04371,22,Male,1.26,1.45,2.21,9.13,Poor,Medium,8.57,8.32,Yes,Negative,Yes +USER-04372,47,Other,9.13,2.38,0.53,14.45,Excellent,High,8.48,4.48,No,Negative,No +USER-04373,30,Male,10.9,4.19,3.76,2.81,Fair,High,6.79,8.19,Yes,Positive,Yes +USER-04374,24,Other,11.62,3.74,0.16,7.03,Good,Medium,5.78,7.69,No,Neutral,No +USER-04375,50,Female,4.47,7.18,4.32,5.24,Fair,High,8.92,7.3,No,Negative,No +USER-04376,59,Other,3.41,5.31,2.91,1.24,Poor,High,4.03,5.84,No,Neutral,Yes +USER-04377,65,Other,6.98,7.41,0.16,1.66,Fair,Medium,7.44,4.02,No,Neutral,Yes +USER-04378,42,Male,7.16,1.5,3.34,8.55,Good,Medium,4.0,8.0,No,Negative,Yes +USER-04379,27,Other,4.44,1.34,3.85,4.96,Fair,Low,7.53,6.64,No,Negative,No +USER-04380,55,Female,9.84,2.58,1.99,12.27,Excellent,Medium,5.38,3.25,Yes,Negative,Yes +USER-04381,34,Male,5.11,0.96,4.26,8.59,Excellent,Low,4.56,6.74,No,Negative,No +USER-04382,30,Other,9.35,4.03,3.75,12.91,Excellent,High,7.54,4.34,No,Negative,No +USER-04383,35,Other,10.45,3.18,3.25,3.08,Poor,Low,8.57,9.93,Yes,Negative,Yes +USER-04384,20,Male,4.84,0.62,1.65,13.61,Fair,Low,7.74,2.62,Yes,Negative,Yes +USER-04385,50,Other,9.09,2.37,3.99,10.48,Excellent,Low,7.24,9.79,No,Neutral,No +USER-04386,51,Female,11.87,7.14,1.35,10.84,Poor,Medium,8.8,3.27,Yes,Negative,No +USER-04387,35,Other,7.97,7.07,2.46,9.66,Poor,High,4.64,8.01,Yes,Neutral,Yes +USER-04388,64,Female,6.21,1.0,2.73,14.62,Good,High,6.55,5.06,Yes,Positive,No +USER-04389,29,Other,10.74,0.8,0.44,6.62,Excellent,Low,5.91,9.39,No,Positive,No +USER-04390,31,Other,2.87,0.39,1.96,6.04,Excellent,Low,7.75,0.47,Yes,Positive,No +USER-04391,28,Male,1.53,0.75,1.45,4.61,Fair,Medium,4.72,3.54,No,Positive,No +USER-04392,29,Other,7.16,0.33,4.04,1.57,Good,High,5.54,5.14,No,Positive,Yes +USER-04393,19,Other,2.8,3.09,0.01,8.31,Excellent,Medium,8.08,3.19,Yes,Neutral,Yes +USER-04394,57,Male,5.82,3.4,1.04,1.24,Fair,Low,8.86,7.49,Yes,Negative,No +USER-04395,45,Male,7.84,7.28,0.58,1.18,Excellent,Medium,8.97,4.39,No,Positive,Yes +USER-04396,25,Male,4.06,6.63,0.82,9.75,Fair,Medium,7.75,1.62,No,Negative,No +USER-04397,47,Female,5.35,0.89,4.63,9.54,Excellent,High,8.05,0.1,Yes,Negative,Yes +USER-04398,63,Male,4.77,1.98,4.06,5.34,Fair,Low,8.67,8.37,No,Positive,No +USER-04399,29,Female,10.27,1.63,2.22,1.37,Good,Medium,7.24,4.24,No,Neutral,Yes +USER-04400,53,Male,7.57,3.59,1.15,4.96,Poor,High,6.48,6.81,Yes,Neutral,Yes +USER-04401,44,Male,4.64,1.98,4.15,14.05,Excellent,Medium,5.41,3.59,No,Negative,Yes +USER-04402,39,Male,7.54,2.25,4.68,13.82,Poor,High,5.38,6.87,No,Positive,Yes +USER-04403,41,Other,11.82,2.45,2.31,2.06,Poor,High,4.09,1.09,No,Negative,No +USER-04404,56,Female,11.35,0.12,2.78,12.04,Excellent,High,7.65,7.77,No,Negative,No +USER-04405,23,Other,7.74,3.45,4.28,12.37,Poor,High,6.44,5.62,No,Neutral,No +USER-04406,48,Female,10.48,7.61,0.91,4.14,Good,Medium,7.83,0.9,No,Positive,Yes +USER-04407,22,Other,6.72,3.15,4.45,2.73,Good,High,4.47,6.73,Yes,Positive,No +USER-04408,26,Male,1.75,6.09,1.52,5.51,Excellent,Low,4.89,8.35,No,Positive,Yes +USER-04409,50,Male,5.24,5.94,1.87,3.89,Fair,Low,7.16,3.68,No,Positive,No +USER-04410,47,Male,2.44,6.66,2.05,6.52,Fair,Medium,7.05,9.87,No,Neutral,No +USER-04411,18,Male,7.24,4.85,2.51,4.3,Poor,High,6.79,7.3,Yes,Neutral,No +USER-04412,42,Male,9.29,3.32,0.51,3.29,Excellent,Medium,7.69,5.27,No,Positive,Yes +USER-04413,26,Female,10.52,0.42,4.27,3.33,Poor,High,7.83,2.87,No,Positive,No +USER-04414,41,Male,7.21,1.25,0.17,10.64,Excellent,Low,4.39,3.13,Yes,Positive,No +USER-04415,18,Female,11.95,0.24,4.58,7.24,Fair,Medium,5.75,6.18,Yes,Negative,Yes +USER-04416,52,Other,11.0,0.9,3.29,9.54,Fair,Low,8.65,5.01,No,Neutral,No +USER-04417,44,Other,7.73,0.43,1.96,10.66,Good,Medium,8.14,0.38,No,Negative,Yes +USER-04418,43,Male,4.25,6.94,1.28,8.81,Good,Medium,4.95,5.07,No,Negative,Yes +USER-04419,29,Male,9.81,1.45,4.11,6.3,Fair,Medium,7.31,7.53,No,Negative,No +USER-04420,34,Male,7.21,3.49,2.22,6.16,Poor,Low,6.13,2.62,Yes,Negative,Yes +USER-04421,47,Male,9.49,0.52,3.39,13.99,Poor,Medium,8.94,8.63,Yes,Negative,Yes +USER-04422,18,Female,1.66,7.92,4.46,10.06,Good,Low,5.81,7.69,Yes,Neutral,Yes +USER-04423,22,Other,7.31,4.67,4.93,4.81,Good,Low,7.11,9.3,Yes,Positive,Yes +USER-04424,45,Male,4.82,6.34,0.35,1.63,Fair,Low,6.82,6.34,No,Negative,No +USER-04425,30,Male,5.34,7.84,3.14,3.87,Excellent,Medium,8.21,5.44,Yes,Neutral,No +USER-04426,59,Male,8.79,3.54,0.24,6.75,Good,Low,8.91,3.16,Yes,Negative,Yes +USER-04427,27,Other,5.02,1.33,2.19,7.13,Fair,High,5.19,7.48,Yes,Negative,Yes +USER-04428,27,Male,5.47,1.57,2.71,3.08,Fair,Medium,7.12,8.28,Yes,Negative,No +USER-04429,51,Female,8.57,1.31,2.67,14.92,Poor,High,6.03,6.84,Yes,Positive,No +USER-04430,49,Other,5.93,6.93,4.72,1.24,Excellent,Low,6.37,4.13,No,Positive,No +USER-04431,37,Female,4.15,7.27,4.99,13.24,Poor,High,7.91,4.77,Yes,Neutral,Yes +USER-04432,56,Male,4.63,0.58,1.43,3.65,Excellent,High,7.6,0.73,No,Positive,Yes +USER-04433,50,Other,9.19,6.53,4.32,8.37,Good,Medium,7.35,9.5,Yes,Positive,Yes +USER-04434,61,Other,9.07,7.97,1.62,7.8,Good,High,4.78,9.61,No,Negative,No +USER-04435,39,Other,1.94,7.18,4.26,3.22,Poor,High,4.13,1.13,Yes,Negative,No +USER-04436,56,Other,10.0,3.05,3.24,6.08,Fair,High,5.95,9.54,No,Positive,No +USER-04437,24,Male,6.52,2.24,1.08,14.88,Poor,Medium,5.93,7.69,No,Positive,Yes +USER-04438,52,Male,1.58,0.69,4.3,5.97,Fair,Low,6.88,4.36,Yes,Neutral,No +USER-04439,36,Male,8.85,2.99,0.74,6.29,Good,Medium,7.29,8.94,Yes,Neutral,No +USER-04440,38,Male,9.82,0.23,3.67,4.53,Poor,High,4.25,0.37,No,Negative,Yes +USER-04441,64,Other,10.84,2.17,0.14,14.39,Good,High,6.9,9.22,No,Negative,No +USER-04442,24,Male,3.6,0.61,1.01,2.17,Poor,Medium,8.56,3.25,No,Neutral,Yes +USER-04443,62,Male,2.55,4.58,3.14,2.24,Poor,Low,7.05,2.44,No,Positive,Yes +USER-04444,23,Female,7.52,7.03,4.1,12.47,Good,High,7.3,7.48,Yes,Negative,No +USER-04445,31,Other,5.71,4.03,2.55,11.3,Excellent,Medium,5.01,6.96,No,Neutral,Yes +USER-04446,59,Other,6.34,6.15,3.01,14.66,Fair,High,8.58,2.32,Yes,Positive,Yes +USER-04447,52,Male,6.0,5.47,2.33,10.96,Fair,Medium,5.24,5.92,No,Negative,No +USER-04448,51,Female,9.84,6.36,0.46,8.56,Poor,Low,5.11,9.19,No,Positive,Yes +USER-04449,25,Female,1.64,2.87,1.9,5.75,Good,Low,6.76,7.17,Yes,Negative,Yes +USER-04450,65,Other,9.79,4.77,1.64,4.96,Poor,Medium,4.63,5.32,Yes,Positive,Yes +USER-04451,33,Male,2.66,6.45,1.12,1.49,Excellent,Medium,5.9,1.82,No,Neutral,No +USER-04452,61,Female,8.63,5.51,3.27,5.29,Fair,High,8.21,6.32,Yes,Negative,No +USER-04453,58,Male,10.25,5.72,3.66,11.85,Excellent,Low,4.52,2.56,No,Positive,Yes +USER-04454,36,Female,11.09,6.69,1.21,5.99,Fair,Medium,4.32,1.84,No,Neutral,No +USER-04455,38,Other,4.07,0.52,1.95,5.13,Fair,Low,8.73,9.68,Yes,Negative,Yes +USER-04456,47,Female,8.56,3.86,3.94,1.86,Excellent,Medium,8.6,2.83,Yes,Negative,Yes +USER-04457,23,Female,7.46,0.31,1.19,1.8,Fair,High,8.29,1.89,No,Positive,Yes +USER-04458,20,Other,8.19,2.14,4.17,2.28,Fair,Medium,8.01,2.8,Yes,Positive,No +USER-04459,38,Other,10.27,2.22,3.9,1.05,Poor,Low,7.32,3.2,No,Positive,No +USER-04460,30,Other,2.39,0.54,4.08,7.34,Fair,Medium,8.08,9.48,No,Neutral,No +USER-04461,27,Female,7.74,0.62,2.76,2.84,Poor,Medium,7.81,0.52,No,Negative,No +USER-04462,43,Female,5.07,0.07,4.39,10.74,Poor,Low,6.95,4.06,No,Positive,Yes +USER-04463,45,Male,6.02,5.24,2.14,5.71,Good,Low,8.59,9.99,Yes,Neutral,Yes +USER-04464,18,Male,2.73,1.92,1.03,14.77,Good,Medium,7.43,5.49,Yes,Negative,No +USER-04465,22,Female,11.73,7.32,0.27,1.48,Fair,Medium,8.47,7.97,No,Negative,Yes +USER-04466,65,Other,10.26,6.87,3.42,3.17,Fair,High,7.25,0.72,Yes,Positive,Yes +USER-04467,44,Male,6.28,3.25,0.91,4.45,Poor,High,5.76,2.0,Yes,Positive,Yes +USER-04468,31,Other,2.4,0.87,2.77,6.14,Excellent,High,6.87,9.12,Yes,Negative,Yes +USER-04469,53,Other,10.21,4.74,3.3,10.92,Good,High,4.85,9.04,No,Neutral,No +USER-04470,42,Male,5.55,7.49,1.67,6.52,Poor,Low,5.12,0.15,Yes,Neutral,No +USER-04471,23,Male,4.43,0.1,0.18,6.87,Poor,High,5.93,3.5,No,Positive,Yes +USER-04472,48,Male,6.53,7.79,4.93,8.37,Poor,Medium,7.75,3.71,Yes,Positive,Yes +USER-04473,29,Male,10.72,5.63,3.23,12.57,Fair,High,6.3,5.03,Yes,Positive,No +USER-04474,21,Male,1.54,5.59,3.32,7.1,Fair,High,6.29,4.49,Yes,Positive,No +USER-04475,40,Female,8.56,6.33,4.14,14.64,Good,Medium,4.84,4.98,No,Positive,No +USER-04476,64,Other,7.44,4.98,4.91,13.15,Excellent,Low,5.06,2.66,No,Positive,No +USER-04477,48,Female,7.52,6.39,4.18,7.55,Excellent,High,5.88,7.94,Yes,Neutral,Yes +USER-04478,53,Male,4.38,7.01,0.29,11.42,Poor,Medium,6.22,0.52,Yes,Positive,Yes +USER-04479,49,Other,3.79,6.46,2.28,8.94,Excellent,High,4.98,3.05,Yes,Neutral,No +USER-04480,40,Female,2.64,5.25,2.33,1.88,Good,High,5.46,5.78,No,Negative,No +USER-04481,40,Other,3.0,2.02,0.18,3.51,Excellent,Medium,4.81,6.62,No,Negative,No +USER-04482,19,Male,1.65,7.62,3.6,1.2,Excellent,High,7.31,4.49,No,Neutral,Yes +USER-04483,57,Male,5.56,1.64,0.36,1.05,Good,High,6.3,0.86,Yes,Neutral,Yes +USER-04484,21,Female,9.8,0.71,4.34,4.68,Excellent,Low,6.81,4.0,Yes,Positive,No +USER-04485,44,Other,10.09,4.69,3.3,2.71,Fair,Medium,5.52,8.74,No,Positive,No +USER-04486,41,Other,10.36,4.34,2.57,14.2,Good,Low,8.57,1.02,No,Neutral,No +USER-04487,46,Male,7.57,3.66,1.19,14.63,Fair,Low,6.48,4.01,Yes,Neutral,Yes +USER-04488,34,Other,5.86,2.01,1.64,9.53,Good,Low,8.39,9.03,No,Neutral,Yes +USER-04489,24,Female,9.12,1.62,3.18,5.95,Fair,Medium,4.04,0.43,Yes,Neutral,Yes +USER-04490,30,Female,3.63,0.69,3.35,12.43,Excellent,Medium,5.96,2.01,No,Neutral,Yes +USER-04491,22,Male,7.28,6.15,3.67,2.12,Excellent,High,7.16,1.67,No,Negative,No +USER-04492,38,Male,9.02,1.79,2.24,2.57,Excellent,Medium,8.8,8.44,No,Positive,Yes +USER-04493,30,Other,6.49,7.97,1.97,3.12,Poor,Medium,8.78,7.94,Yes,Positive,No +USER-04494,25,Male,4.89,2.02,1.9,11.12,Poor,High,4.82,9.7,Yes,Negative,Yes +USER-04495,27,Male,4.57,1.26,2.39,4.06,Poor,Low,8.43,3.77,Yes,Positive,No +USER-04496,18,Other,11.25,2.53,2.27,12.89,Good,High,8.65,8.63,Yes,Negative,Yes +USER-04497,24,Male,11.25,6.41,4.07,6.51,Good,High,6.24,5.92,No,Positive,Yes +USER-04498,58,Female,7.21,5.48,0.37,2.73,Good,Medium,6.77,4.21,Yes,Negative,No +USER-04499,48,Other,3.68,4.14,2.5,12.23,Fair,Medium,7.93,7.83,No,Positive,No +USER-04500,27,Other,3.31,1.61,0.97,2.77,Good,Low,6.08,8.98,No,Negative,Yes +USER-04501,43,Male,6.9,0.52,3.77,4.11,Fair,Low,6.65,9.35,No,Negative,Yes +USER-04502,26,Male,4.06,4.44,0.59,9.98,Fair,Medium,7.62,9.62,No,Positive,Yes +USER-04503,20,Male,11.68,7.7,3.34,1.16,Fair,High,7.31,1.93,Yes,Positive,Yes +USER-04504,42,Male,3.52,3.26,2.02,5.06,Excellent,High,4.32,3.85,No,Positive,Yes +USER-04505,23,Male,10.83,5.72,3.8,9.45,Poor,Medium,7.79,4.43,Yes,Neutral,Yes +USER-04506,41,Male,7.65,6.92,2.38,2.46,Excellent,Low,6.66,1.28,No,Negative,No +USER-04507,22,Other,1.27,6.24,4.05,14.8,Poor,Low,5.66,2.68,No,Neutral,No +USER-04508,50,Male,7.39,4.36,2.13,9.28,Excellent,Medium,4.4,3.55,No,Negative,No +USER-04509,24,Other,5.23,1.19,0.33,8.64,Good,Medium,4.94,1.54,No,Neutral,Yes +USER-04510,48,Female,8.78,7.2,4.43,10.71,Poor,Low,7.32,4.32,No,Negative,No +USER-04511,30,Other,2.88,6.74,3.9,6.48,Poor,High,5.35,9.6,Yes,Neutral,No +USER-04512,25,Male,3.86,6.96,4.62,3.76,Fair,High,8.31,7.01,Yes,Negative,Yes +USER-04513,29,Other,9.32,0.7,2.89,13.65,Poor,Medium,5.01,7.36,Yes,Negative,No +USER-04514,59,Other,9.66,0.92,2.42,8.77,Good,Low,8.02,0.41,Yes,Neutral,Yes +USER-04515,49,Female,8.15,1.48,0.24,12.62,Good,High,5.92,9.29,No,Neutral,No +USER-04516,53,Female,10.56,4.35,3.64,5.27,Poor,Medium,8.18,6.31,Yes,Neutral,Yes +USER-04517,42,Female,6.29,4.9,4.59,6.9,Fair,High,5.16,4.02,No,Positive,Yes +USER-04518,27,Other,1.14,1.45,0.83,10.55,Poor,Medium,8.31,9.37,No,Negative,No +USER-04519,36,Male,8.44,6.95,0.51,11.72,Poor,High,4.48,4.68,No,Positive,No +USER-04520,22,Male,1.41,5.74,4.21,3.3,Good,Medium,4.2,5.47,Yes,Neutral,Yes +USER-04521,46,Other,9.29,0.26,1.19,9.82,Good,High,4.3,1.18,Yes,Positive,Yes +USER-04522,63,Other,3.45,5.72,1.67,1.06,Excellent,Medium,6.58,9.96,No,Negative,Yes +USER-04523,64,Female,5.32,0.09,4.46,5.83,Fair,High,5.08,0.19,No,Positive,Yes +USER-04524,21,Male,4.79,6.17,3.22,3.87,Excellent,Low,7.35,1.84,No,Positive,No +USER-04525,19,Male,3.05,0.09,1.44,14.02,Fair,High,7.77,8.63,No,Negative,Yes +USER-04526,45,Other,6.13,1.51,2.88,9.32,Fair,High,8.43,1.54,No,Positive,No +USER-04527,27,Female,9.69,3.79,3.99,10.52,Fair,Medium,7.16,0.56,No,Negative,No +USER-04528,43,Male,5.17,6.32,2.23,7.61,Excellent,Low,4.5,9.62,No,Neutral,Yes +USER-04529,29,Other,6.73,5.51,3.42,8.52,Excellent,Medium,4.59,0.21,No,Negative,Yes +USER-04530,30,Male,1.38,1.81,1.83,7.17,Excellent,Low,4.11,2.54,Yes,Neutral,Yes +USER-04531,36,Female,11.74,4.42,0.04,11.06,Excellent,Low,4.83,1.03,Yes,Negative,No +USER-04532,54,Male,3.49,1.7,1.71,12.18,Fair,Medium,5.37,4.64,Yes,Positive,Yes +USER-04533,27,Female,8.0,3.98,3.41,2.95,Poor,Medium,8.38,4.01,Yes,Positive,No +USER-04534,50,Other,7.28,7.39,4.19,5.43,Good,Low,6.57,4.88,No,Neutral,Yes +USER-04535,60,Female,5.05,2.34,0.03,9.0,Excellent,High,6.98,0.85,No,Neutral,No +USER-04536,51,Female,2.37,1.66,2.75,9.19,Poor,High,6.86,2.97,No,Negative,Yes +USER-04537,46,Other,6.18,6.92,1.27,4.5,Fair,High,5.71,0.41,Yes,Positive,Yes +USER-04538,53,Male,11.47,6.41,3.39,8.07,Excellent,Medium,4.09,3.44,No,Neutral,No +USER-04539,31,Male,4.96,6.27,3.93,7.52,Good,Medium,8.6,4.49,No,Negative,No +USER-04540,21,Other,3.71,7.53,3.94,13.12,Fair,Medium,6.88,7.98,No,Neutral,Yes +USER-04541,53,Male,8.75,3.93,1.85,2.69,Good,Medium,6.23,2.57,Yes,Positive,Yes +USER-04542,52,Female,8.14,2.56,4.79,4.06,Excellent,Medium,6.47,1.63,No,Neutral,Yes +USER-04543,42,Male,2.93,5.3,3.04,6.85,Excellent,Medium,5.88,5.74,Yes,Negative,Yes +USER-04544,30,Male,2.76,6.69,0.03,12.04,Poor,High,8.56,1.29,No,Negative,No +USER-04545,34,Male,2.21,5.42,1.96,9.18,Excellent,High,7.94,2.46,No,Positive,Yes +USER-04546,23,Other,3.74,0.97,4.2,2.81,Poor,High,8.1,2.01,No,Neutral,Yes +USER-04547,51,Male,1.7,6.01,3.61,8.5,Fair,High,8.09,1.24,No,Positive,No +USER-04548,43,Female,11.0,7.45,2.94,1.24,Good,High,8.94,1.71,Yes,Negative,Yes +USER-04549,62,Male,1.29,4.72,4.07,12.8,Fair,Low,6.5,0.19,No,Neutral,No +USER-04550,44,Female,11.5,5.52,3.12,7.95,Excellent,High,4.07,1.72,Yes,Negative,No +USER-04551,50,Other,2.11,1.85,1.74,3.9,Good,High,6.53,4.83,No,Neutral,No +USER-04552,53,Male,8.78,7.84,1.24,7.06,Poor,Low,6.13,8.24,Yes,Neutral,Yes +USER-04553,26,Female,1.08,5.39,4.81,12.87,Good,Medium,7.54,9.34,Yes,Positive,Yes +USER-04554,29,Female,9.92,5.97,2.62,1.74,Excellent,Low,4.88,7.68,No,Positive,Yes +USER-04555,55,Male,5.12,4.47,4.66,2.59,Poor,High,7.12,5.29,No,Positive,No +USER-04556,24,Female,2.18,1.86,3.57,14.66,Excellent,High,6.79,3.27,Yes,Neutral,Yes +USER-04557,24,Male,7.53,5.41,3.24,1.17,Poor,Low,5.04,8.87,No,Neutral,Yes +USER-04558,46,Female,4.78,2.5,2.25,12.94,Excellent,Medium,4.2,5.46,Yes,Negative,Yes +USER-04559,26,Female,3.13,6.18,2.84,12.78,Poor,High,5.05,0.52,Yes,Positive,Yes +USER-04560,44,Female,3.48,3.69,4.81,6.32,Good,High,4.91,0.43,No,Negative,No +USER-04561,38,Female,3.32,2.74,0.51,13.72,Fair,Medium,8.37,3.69,Yes,Neutral,No +USER-04562,26,Female,4.02,5.45,1.43,8.91,Fair,Low,4.93,1.41,Yes,Neutral,Yes +USER-04563,46,Female,2.15,4.84,2.46,7.3,Poor,Medium,8.27,6.01,Yes,Positive,Yes +USER-04564,61,Male,7.01,6.1,1.25,13.53,Fair,High,7.8,2.43,Yes,Neutral,Yes +USER-04565,25,Male,1.39,3.75,2.33,13.81,Excellent,High,8.9,3.23,No,Neutral,Yes +USER-04566,64,Male,10.37,0.3,0.38,13.01,Poor,Medium,7.86,2.64,Yes,Positive,Yes +USER-04567,63,Female,9.3,0.04,0.68,7.49,Good,High,6.55,9.65,Yes,Negative,Yes +USER-04568,38,Female,2.84,7.05,2.04,1.15,Poor,High,7.02,6.39,Yes,Negative,No +USER-04569,46,Female,2.73,1.52,3.26,7.28,Excellent,Medium,7.17,5.5,Yes,Negative,No +USER-04570,52,Other,7.95,4.05,0.27,10.93,Poor,Medium,5.55,0.86,Yes,Neutral,No +USER-04571,29,Male,1.35,3.88,0.72,8.77,Fair,Medium,5.88,0.06,No,Neutral,Yes +USER-04572,43,Female,8.45,2.33,4.56,12.43,Good,High,8.12,8.28,Yes,Negative,Yes +USER-04573,51,Male,2.71,2.82,2.56,6.44,Good,High,7.45,6.39,No,Positive,Yes +USER-04574,44,Female,4.14,0.4,2.69,7.9,Excellent,Low,8.06,8.9,No,Neutral,Yes +USER-04575,64,Other,4.55,7.46,1.84,13.84,Excellent,Medium,7.61,5.51,No,Positive,No +USER-04576,23,Female,9.4,6.68,2.2,3.31,Good,High,5.93,8.73,Yes,Negative,Yes +USER-04577,47,Female,3.33,6.26,3.79,14.06,Good,Medium,5.35,2.71,No,Negative,Yes +USER-04578,58,Other,8.88,7.71,1.76,13.29,Excellent,High,7.92,7.69,No,Neutral,Yes +USER-04579,60,Male,3.69,3.56,1.85,8.79,Excellent,Medium,6.44,1.28,No,Positive,No +USER-04580,36,Female,11.99,6.99,3.91,14.32,Poor,Medium,4.01,7.5,Yes,Neutral,No +USER-04581,45,Other,1.81,5.54,3.52,2.5,Fair,Medium,6.59,3.66,No,Negative,No +USER-04582,38,Female,2.42,6.55,4.69,14.78,Fair,Medium,5.39,2.66,Yes,Positive,Yes +USER-04583,33,Male,3.47,2.04,0.1,11.93,Poor,Low,4.36,9.32,No,Positive,No +USER-04584,44,Female,2.81,0.97,2.46,3.39,Fair,High,5.42,3.67,No,Neutral,No +USER-04585,42,Male,3.09,4.85,3.28,7.9,Fair,High,8.29,9.18,Yes,Positive,Yes +USER-04586,30,Male,9.52,1.45,2.85,8.46,Excellent,Low,4.53,4.41,No,Negative,No +USER-04587,20,Other,11.89,6.88,2.09,12.99,Excellent,Low,4.65,1.08,Yes,Negative,No +USER-04588,49,Female,7.47,6.65,0.04,13.16,Excellent,Low,4.74,5.31,No,Positive,No +USER-04589,39,Other,10.8,6.38,1.57,7.24,Excellent,Low,8.96,8.12,Yes,Positive,Yes +USER-04590,51,Other,2.37,7.78,0.68,3.26,Poor,High,4.98,1.12,No,Negative,Yes +USER-04591,50,Male,1.7,3.66,0.31,12.36,Good,Low,4.42,3.27,Yes,Negative,No +USER-04592,51,Male,3.2,1.7,2.95,6.17,Fair,Low,8.1,2.8,Yes,Negative,Yes +USER-04593,39,Other,4.35,0.73,1.05,6.51,Excellent,Low,6.66,2.44,No,Negative,Yes +USER-04594,18,Female,10.73,7.79,4.39,9.34,Fair,Low,6.1,6.36,No,Negative,Yes +USER-04595,36,Other,4.9,4.92,4.92,7.79,Poor,Low,8.34,4.06,Yes,Neutral,Yes +USER-04596,34,Other,11.07,2.57,1.17,7.57,Excellent,Medium,6.04,4.45,No,Neutral,No +USER-04597,35,Other,2.82,1.28,4.83,13.82,Excellent,Medium,4.96,7.01,Yes,Negative,Yes +USER-04598,34,Female,5.62,2.2,1.99,14.96,Poor,Low,7.71,6.14,No,Negative,Yes +USER-04599,25,Other,1.09,0.94,4.76,13.46,Excellent,High,4.58,8.98,No,Positive,Yes +USER-04600,33,Male,8.06,0.75,3.09,7.27,Good,High,4.58,3.61,No,Positive,Yes +USER-04601,22,Male,5.42,2.53,2.83,12.03,Excellent,Medium,5.85,7.95,No,Positive,No +USER-04602,42,Other,5.36,4.13,0.2,13.67,Fair,Medium,7.52,4.61,No,Neutral,Yes +USER-04603,62,Female,1.71,1.89,3.42,11.88,Fair,Low,4.12,5.58,Yes,Neutral,No +USER-04604,26,Other,8.17,3.64,1.49,12.33,Poor,Low,8.4,1.21,No,Positive,Yes +USER-04605,59,Male,3.29,4.62,0.48,13.99,Fair,Medium,8.78,5.02,Yes,Positive,Yes +USER-04606,49,Female,7.89,2.92,1.54,6.96,Excellent,High,6.83,4.17,No,Negative,No +USER-04607,32,Other,7.49,1.8,2.11,4.45,Poor,Low,6.3,4.07,Yes,Neutral,Yes +USER-04608,61,Male,5.1,4.22,2.83,2.67,Poor,Low,5.56,9.33,Yes,Positive,Yes +USER-04609,33,Other,1.06,5.39,2.95,8.81,Excellent,Low,8.09,1.38,Yes,Positive,No +USER-04610,32,Male,11.02,5.92,0.43,11.94,Good,Low,8.41,2.6,Yes,Neutral,No +USER-04611,41,Female,5.24,5.79,1.52,8.53,Excellent,Medium,5.55,1.88,No,Neutral,Yes +USER-04612,54,Other,5.58,6.18,0.83,5.89,Excellent,Medium,7.72,6.79,No,Positive,Yes +USER-04613,34,Male,3.54,5.53,4.43,6.41,Fair,Medium,4.78,8.02,No,Negative,No +USER-04614,20,Male,5.89,3.11,1.21,5.01,Excellent,Medium,4.64,0.87,Yes,Positive,Yes +USER-04615,43,Male,11.68,0.28,1.84,1.47,Fair,Medium,6.81,0.0,No,Positive,Yes +USER-04616,32,Male,6.67,4.47,1.09,3.53,Poor,High,4.27,1.22,No,Neutral,No +USER-04617,20,Female,1.04,1.01,0.41,1.99,Poor,Medium,8.87,9.8,Yes,Negative,No +USER-04618,31,Male,2.97,5.08,0.15,10.37,Fair,Medium,4.81,5.86,Yes,Neutral,Yes +USER-04619,25,Male,7.42,2.63,1.29,8.95,Fair,Medium,5.22,0.19,No,Positive,Yes +USER-04620,36,Other,5.48,4.0,3.42,5.35,Good,Low,4.18,8.64,No,Negative,Yes +USER-04621,23,Male,11.53,7.0,4.37,12.39,Excellent,High,6.9,9.04,Yes,Negative,No +USER-04622,53,Male,5.17,1.88,2.32,8.33,Poor,Low,6.6,4.83,Yes,Positive,Yes +USER-04623,34,Other,11.07,5.46,4.17,8.76,Fair,Low,4.12,1.86,Yes,Positive,No +USER-04624,61,Male,10.14,1.79,4.94,12.54,Poor,High,5.63,3.19,No,Neutral,No +USER-04625,65,Other,8.46,7.64,3.47,5.15,Excellent,Medium,4.33,4.46,Yes,Negative,No +USER-04626,52,Female,6.05,0.79,4.24,3.31,Excellent,High,5.86,2.12,No,Negative,Yes +USER-04627,46,Other,5.29,4.65,1.69,11.69,Excellent,Low,4.86,8.05,Yes,Negative,Yes +USER-04628,42,Male,6.64,2.42,3.98,3.74,Poor,High,7.57,8.32,No,Negative,Yes +USER-04629,28,Male,11.01,1.91,2.94,3.36,Excellent,Low,7.67,1.79,Yes,Neutral,No +USER-04630,25,Other,7.76,3.91,1.3,10.53,Good,High,5.65,2.62,No,Positive,Yes +USER-04631,53,Male,11.35,5.99,1.5,12.43,Excellent,High,4.37,7.68,Yes,Negative,No +USER-04632,54,Female,4.42,2.11,0.74,3.86,Excellent,Medium,6.79,2.37,Yes,Neutral,No +USER-04633,21,Female,3.1,7.69,1.35,11.98,Good,High,6.46,4.23,Yes,Negative,No +USER-04634,60,Female,4.18,2.19,0.85,4.54,Fair,High,5.3,0.97,No,Positive,No +USER-04635,47,Female,9.12,3.52,1.13,12.61,Excellent,Low,5.63,7.85,Yes,Positive,No +USER-04636,27,Male,9.95,1.6,1.09,1.77,Fair,High,4.4,0.1,Yes,Neutral,Yes +USER-04637,53,Female,8.86,6.47,1.35,7.46,Excellent,Medium,5.73,3.93,Yes,Positive,No +USER-04638,58,Male,1.76,1.52,4.25,14.43,Fair,Medium,8.45,1.29,Yes,Neutral,No +USER-04639,24,Male,8.27,2.38,1.97,4.8,Poor,Low,6.32,6.79,Yes,Positive,Yes +USER-04640,59,Female,9.79,4.44,3.39,14.53,Excellent,High,4.56,7.74,No,Neutral,No +USER-04641,20,Male,7.86,1.31,4.89,2.01,Poor,High,5.4,0.4,Yes,Positive,Yes +USER-04642,43,Male,3.42,6.72,0.03,9.98,Fair,Low,5.14,7.71,No,Positive,Yes +USER-04643,21,Female,6.2,2.07,2.63,7.74,Good,Medium,7.84,5.96,No,Positive,No +USER-04644,55,Male,6.93,6.41,4.02,10.26,Poor,Medium,8.12,2.64,No,Negative,Yes +USER-04645,40,Other,10.8,6.55,0.14,3.29,Excellent,Low,4.41,9.75,Yes,Negative,No +USER-04646,53,Male,4.78,4.25,1.15,2.48,Poor,High,5.8,5.83,Yes,Positive,Yes +USER-04647,52,Female,3.58,5.91,4.69,2.76,Good,High,4.79,3.63,No,Neutral,Yes +USER-04648,21,Female,5.78,4.88,2.34,3.68,Excellent,Low,5.16,4.44,No,Neutral,Yes +USER-04649,50,Male,2.9,0.4,4.71,4.42,Fair,High,4.74,9.5,No,Neutral,Yes +USER-04650,31,Male,3.96,3.22,1.11,6.0,Good,Medium,5.58,6.21,No,Positive,Yes +USER-04651,63,Female,7.32,4.99,1.43,10.88,Good,Low,4.2,0.31,Yes,Neutral,No +USER-04652,29,Male,9.31,3.2,0.66,6.03,Good,High,8.09,3.95,Yes,Negative,Yes +USER-04653,43,Male,2.14,0.41,4.28,7.81,Excellent,High,4.92,0.13,Yes,Neutral,No +USER-04654,25,Other,1.13,1.44,0.75,11.27,Excellent,Medium,8.52,0.83,Yes,Positive,Yes +USER-04655,35,Other,9.47,0.14,1.63,4.68,Poor,Medium,8.75,3.12,No,Negative,No +USER-04656,25,Other,8.09,7.21,4.62,10.28,Excellent,Low,7.44,2.83,No,Negative,Yes +USER-04657,55,Female,9.14,3.76,1.55,3.48,Good,Low,6.35,2.56,No,Positive,No +USER-04658,46,Male,4.02,6.15,0.87,8.0,Poor,Low,7.94,7.79,Yes,Negative,No +USER-04659,51,Female,10.92,5.42,1.91,11.56,Poor,High,7.6,8.41,No,Neutral,No +USER-04660,32,Male,8.6,7.22,1.94,4.75,Excellent,Medium,8.9,2.56,No,Neutral,Yes +USER-04661,24,Other,1.09,2.79,1.35,8.58,Fair,High,5.21,6.06,No,Negative,Yes +USER-04662,59,Other,1.38,0.85,2.5,6.87,Good,Medium,5.95,2.99,Yes,Positive,No +USER-04663,62,Female,11.85,2.13,2.11,2.06,Good,Medium,4.53,1.16,Yes,Neutral,No +USER-04664,43,Other,8.94,7.74,0.05,12.55,Excellent,High,5.33,2.99,No,Neutral,Yes +USER-04665,33,Male,10.17,6.69,4.42,11.9,Excellent,Low,4.24,4.03,No,Neutral,No +USER-04666,57,Other,9.0,2.25,0.3,5.95,Excellent,High,4.37,7.6,No,Positive,No +USER-04667,59,Female,4.37,7.17,1.4,7.93,Fair,High,5.64,8.37,No,Negative,No +USER-04668,54,Other,8.07,7.89,2.53,1.47,Excellent,Medium,4.48,3.0,Yes,Neutral,No +USER-04669,20,Female,9.76,2.77,4.62,7.45,Poor,Medium,6.13,7.87,Yes,Positive,Yes +USER-04670,46,Male,4.7,7.51,3.59,9.71,Fair,Medium,5.48,6.31,Yes,Positive,Yes +USER-04671,25,Male,7.95,3.39,3.88,9.86,Good,Low,6.28,8.04,No,Neutral,Yes +USER-04672,18,Male,1.41,0.45,3.25,3.61,Fair,High,7.47,4.51,No,Positive,No +USER-04673,38,Female,4.32,2.15,0.48,2.79,Poor,High,6.64,5.06,Yes,Positive,No +USER-04674,25,Other,5.25,2.72,3.46,13.89,Excellent,High,5.79,5.0,Yes,Negative,No +USER-04675,27,Other,11.0,1.16,1.93,12.17,Fair,Medium,7.11,2.2,No,Neutral,No +USER-04676,49,Female,1.05,3.15,2.13,6.29,Excellent,High,8.92,7.37,Yes,Negative,No +USER-04677,62,Other,1.43,7.16,3.23,2.13,Good,Medium,6.3,7.6,No,Negative,No +USER-04678,34,Other,10.6,1.91,2.64,1.88,Good,Medium,6.35,3.61,Yes,Positive,Yes +USER-04679,45,Female,4.3,6.28,1.55,8.55,Fair,High,7.82,9.15,Yes,Positive,No +USER-04680,40,Male,4.55,1.42,1.93,8.25,Excellent,High,5.53,5.02,No,Negative,No +USER-04681,47,Female,9.64,1.74,3.87,6.13,Excellent,Low,4.78,5.93,No,Positive,Yes +USER-04682,37,Other,8.74,6.6,3.25,14.01,Good,Low,5.11,3.3,No,Positive,Yes +USER-04683,56,Female,11.74,3.32,4.45,7.86,Fair,Medium,7.94,8.25,No,Positive,Yes +USER-04684,29,Female,7.27,4.28,1.48,12.34,Fair,Medium,4.52,3.11,Yes,Negative,No +USER-04685,47,Other,3.15,2.62,3.36,12.95,Excellent,Low,6.51,9.57,Yes,Positive,No +USER-04686,41,Female,11.76,7.49,3.93,10.05,Good,High,8.95,5.97,Yes,Positive,Yes +USER-04687,52,Female,5.85,6.75,0.37,1.62,Good,High,7.46,1.95,No,Neutral,Yes +USER-04688,47,Other,5.2,7.49,1.02,12.55,Excellent,Low,5.8,2.86,Yes,Positive,Yes +USER-04689,26,Female,5.55,1.02,4.44,7.65,Good,High,7.32,5.88,No,Neutral,No +USER-04690,62,Female,1.2,2.15,0.13,2.32,Good,Low,6.46,7.35,Yes,Positive,Yes +USER-04691,38,Female,6.84,7.33,3.06,13.45,Good,High,7.45,4.78,No,Positive,No +USER-04692,57,Male,9.73,1.02,3.87,13.44,Fair,High,5.93,1.71,No,Positive,No +USER-04693,53,Other,4.11,3.8,4.3,14.08,Good,Medium,8.5,0.34,Yes,Neutral,No +USER-04694,31,Male,10.48,6.51,4.64,11.88,Good,High,4.69,9.88,No,Neutral,Yes +USER-04695,49,Male,11.88,7.24,1.1,6.52,Fair,Low,8.94,8.28,No,Negative,Yes +USER-04696,33,Female,8.73,4.39,2.15,12.14,Excellent,Medium,6.2,6.61,No,Positive,No +USER-04697,23,Other,6.57,6.91,2.4,12.02,Good,Low,6.5,2.19,No,Positive,No +USER-04698,30,Other,6.47,4.61,3.05,9.05,Excellent,Low,8.73,7.67,No,Negative,Yes +USER-04699,46,Male,6.2,2.64,4.3,8.48,Excellent,Medium,5.3,7.69,Yes,Negative,No +USER-04700,18,Male,6.25,2.08,3.95,10.9,Excellent,Medium,6.66,4.96,Yes,Positive,Yes +USER-04701,46,Male,3.48,3.82,2.2,12.37,Fair,High,6.92,9.63,No,Negative,Yes +USER-04702,49,Female,7.19,7.33,2.94,6.45,Poor,High,8.84,3.17,Yes,Neutral,No +USER-04703,56,Female,5.91,3.19,0.11,6.17,Fair,High,8.29,10.0,No,Neutral,Yes +USER-04704,33,Other,4.63,4.25,4.93,8.66,Excellent,Low,7.9,3.49,Yes,Positive,No +USER-04705,41,Other,6.06,6.09,4.96,5.09,Poor,Low,6.52,8.93,No,Positive,No +USER-04706,43,Male,4.84,0.25,3.29,8.16,Poor,High,8.26,4.97,No,Negative,No +USER-04707,42,Male,7.65,0.71,4.07,14.08,Excellent,High,5.76,0.24,No,Neutral,Yes +USER-04708,34,Female,1.54,4.07,1.14,12.21,Excellent,Low,8.55,4.65,No,Neutral,Yes +USER-04709,46,Female,3.82,5.08,4.83,9.27,Good,Low,5.52,1.28,No,Neutral,Yes +USER-04710,62,Male,8.22,0.14,2.69,5.13,Poor,High,8.21,2.73,Yes,Neutral,Yes +USER-04711,48,Female,5.65,4.83,1.55,9.84,Excellent,High,8.8,7.0,No,Positive,Yes +USER-04712,18,Male,1.71,7.16,3.74,10.56,Excellent,Low,5.73,2.95,Yes,Positive,No +USER-04713,20,Female,2.64,1.28,0.91,5.32,Excellent,Low,8.79,7.25,Yes,Negative,Yes +USER-04714,45,Other,9.46,7.57,4.82,5.92,Poor,Low,6.38,8.15,Yes,Negative,Yes +USER-04715,65,Female,2.14,1.45,0.73,13.06,Poor,Low,8.72,9.43,Yes,Negative,Yes +USER-04716,55,Female,5.99,5.15,4.93,5.19,Poor,Low,7.64,2.67,No,Negative,Yes +USER-04717,45,Other,7.53,4.98,3.93,1.61,Poor,Medium,6.49,1.85,No,Negative,Yes +USER-04718,48,Male,10.28,6.31,2.87,3.55,Fair,Medium,5.4,6.77,Yes,Negative,No +USER-04719,52,Female,7.75,3.15,2.45,2.86,Excellent,High,7.23,6.43,No,Neutral,No +USER-04720,49,Male,8.15,0.5,4.5,12.61,Fair,Medium,4.32,2.7,Yes,Positive,Yes +USER-04721,24,Female,3.43,4.56,4.98,8.73,Excellent,High,8.77,9.51,Yes,Negative,Yes +USER-04722,31,Male,5.3,5.49,4.85,3.65,Good,Low,5.45,9.46,Yes,Neutral,Yes +USER-04723,35,Male,1.37,3.37,4.37,5.1,Poor,Medium,8.61,8.2,Yes,Positive,Yes +USER-04724,44,Male,10.87,1.95,1.71,4.21,Good,High,4.74,4.26,No,Neutral,Yes +USER-04725,49,Other,11.32,1.46,2.31,8.35,Fair,Low,4.74,6.28,No,Positive,Yes +USER-04726,24,Male,5.35,2.64,1.39,14.42,Good,Low,8.78,7.6,Yes,Negative,Yes +USER-04727,24,Other,4.18,7.23,0.22,4.75,Excellent,Low,5.18,0.1,Yes,Neutral,No +USER-04728,21,Female,2.21,0.74,0.52,14.43,Good,Low,4.08,0.32,No,Positive,Yes +USER-04729,53,Other,10.73,5.78,4.12,14.22,Excellent,Low,5.4,1.33,No,Negative,No +USER-04730,50,Male,5.55,6.47,0.59,7.62,Poor,Low,5.17,5.95,Yes,Neutral,No +USER-04731,61,Male,8.76,1.76,0.55,10.71,Poor,Medium,6.97,8.8,No,Positive,Yes +USER-04732,47,Male,6.28,5.95,1.78,11.38,Fair,Medium,8.1,4.71,No,Positive,Yes +USER-04733,47,Other,2.54,7.46,4.75,6.55,Good,High,5.45,0.62,No,Negative,Yes +USER-04734,29,Other,10.75,2.75,0.99,12.21,Fair,High,4.73,7.18,Yes,Negative,No +USER-04735,59,Female,5.22,3.92,0.51,9.5,Poor,Low,5.4,9.76,Yes,Neutral,Yes +USER-04736,50,Female,7.57,4.91,2.74,2.19,Good,High,4.43,8.53,No,Positive,No +USER-04737,53,Other,11.7,6.69,3.93,8.52,Fair,Medium,7.88,3.35,No,Positive,No +USER-04738,58,Other,10.43,6.5,2.73,7.09,Fair,Medium,7.75,9.5,No,Negative,No +USER-04739,52,Female,6.29,0.98,0.06,7.7,Poor,Medium,5.61,8.04,No,Positive,No +USER-04740,55,Other,9.79,4.69,4.93,9.33,Good,High,8.57,2.59,Yes,Neutral,No +USER-04741,19,Female,6.0,3.21,1.13,12.28,Fair,Medium,5.04,3.12,Yes,Negative,Yes +USER-04742,42,Male,1.71,0.78,3.25,2.42,Excellent,Low,8.89,8.39,No,Neutral,No +USER-04743,38,Male,4.29,4.84,2.56,3.65,Excellent,Medium,8.28,5.75,Yes,Negative,No +USER-04744,32,Male,11.48,1.12,4.88,9.22,Excellent,Low,8.45,7.45,No,Negative,Yes +USER-04745,50,Male,10.84,0.1,0.1,12.26,Excellent,Low,4.59,4.79,Yes,Neutral,Yes +USER-04746,50,Female,4.83,5.56,2.71,14.51,Poor,High,8.61,5.74,No,Neutral,Yes +USER-04747,62,Female,11.3,2.02,0.17,1.61,Poor,Low,8.18,8.03,Yes,Negative,Yes +USER-04748,48,Male,4.46,7.2,1.19,6.74,Excellent,Medium,4.63,0.19,No,Negative,Yes +USER-04749,22,Male,7.51,1.49,0.91,2.11,Fair,High,4.9,3.71,No,Neutral,No +USER-04750,65,Male,6.83,6.73,1.18,9.56,Fair,Medium,5.09,2.31,Yes,Positive,Yes +USER-04751,54,Female,4.78,2.06,0.39,5.98,Poor,Low,5.85,5.79,No,Positive,No +USER-04752,63,Female,5.35,2.11,3.89,6.72,Poor,Medium,4.25,9.36,Yes,Positive,Yes +USER-04753,45,Other,9.17,3.61,2.14,3.6,Fair,High,5.07,1.87,No,Neutral,No +USER-04754,62,Female,5.75,3.61,1.1,2.44,Fair,High,7.28,4.86,Yes,Positive,No +USER-04755,62,Other,1.2,1.67,1.57,1.4,Excellent,High,7.29,9.64,Yes,Positive,No +USER-04756,64,Male,11.15,1.07,0.16,6.67,Fair,Medium,7.75,8.83,Yes,Neutral,Yes +USER-04757,65,Other,1.98,4.24,3.49,14.28,Poor,High,4.2,9.64,No,Positive,Yes +USER-04758,46,Male,1.64,5.65,2.34,2.0,Excellent,High,4.44,2.17,Yes,Positive,Yes +USER-04759,21,Other,5.55,6.03,2.41,7.78,Excellent,Medium,8.73,7.45,No,Negative,Yes +USER-04760,32,Female,5.68,6.9,2.54,11.89,Fair,High,6.85,5.41,Yes,Neutral,Yes +USER-04761,62,Male,3.74,1.53,1.14,13.87,Fair,Low,4.1,5.07,Yes,Negative,Yes +USER-04762,41,Female,4.04,6.16,3.93,1.06,Excellent,Medium,5.09,5.62,No,Positive,Yes +USER-04763,45,Male,10.28,6.53,1.0,11.81,Excellent,High,4.97,6.3,Yes,Negative,No +USER-04764,61,Male,7.88,6.34,3.68,5.58,Poor,High,5.97,0.0,Yes,Neutral,No +USER-04765,26,Male,4.1,7.03,0.52,2.71,Fair,High,8.01,1.56,No,Positive,No +USER-04766,56,Female,11.21,6.63,4.65,3.46,Good,Low,8.26,2.34,No,Negative,Yes +USER-04767,63,Female,10.32,3.54,2.99,3.14,Excellent,High,4.19,3.27,Yes,Negative,Yes +USER-04768,49,Other,9.99,3.22,3.44,10.55,Poor,Medium,8.32,3.45,Yes,Negative,No +USER-04769,48,Female,6.51,5.99,0.41,2.48,Good,High,6.67,7.63,Yes,Negative,Yes +USER-04770,62,Female,5.75,6.02,1.7,9.65,Good,Low,8.43,3.97,Yes,Negative,Yes +USER-04771,38,Male,3.42,7.58,2.96,1.5,Fair,Medium,7.15,7.05,Yes,Neutral,Yes +USER-04772,32,Male,1.04,5.8,0.8,10.1,Good,High,8.61,8.4,No,Positive,Yes +USER-04773,44,Female,10.34,3.82,3.13,14.73,Poor,Medium,8.39,2.02,No,Negative,Yes +USER-04774,21,Male,4.21,2.72,3.26,6.83,Excellent,Medium,4.54,3.37,Yes,Neutral,Yes +USER-04775,29,Male,4.83,6.76,2.03,2.89,Excellent,Low,7.01,0.6,Yes,Positive,Yes +USER-04776,31,Male,8.89,4.11,0.62,4.12,Excellent,Medium,8.7,8.64,Yes,Positive,Yes +USER-04777,49,Female,7.91,1.37,1.98,14.32,Good,Low,5.67,5.03,Yes,Neutral,No +USER-04778,29,Other,4.15,1.54,0.5,13.71,Good,High,5.51,4.02,No,Positive,Yes +USER-04779,31,Female,1.49,4.44,1.03,11.44,Poor,Medium,8.6,1.48,No,Negative,Yes +USER-04780,25,Male,5.48,7.56,3.67,13.69,Fair,Low,5.38,5.18,Yes,Positive,No +USER-04781,20,Other,5.83,7.75,4.09,8.53,Good,High,7.34,7.24,No,Positive,No +USER-04782,36,Other,11.53,3.69,0.53,6.41,Good,High,4.14,9.32,No,Positive,Yes +USER-04783,60,Female,2.93,5.46,2.0,1.74,Fair,Low,8.49,8.77,Yes,Positive,Yes +USER-04784,27,Male,7.03,6.18,3.12,5.21,Fair,Low,5.73,4.95,No,Negative,Yes +USER-04785,36,Female,8.63,7.75,4.4,6.91,Excellent,Low,7.36,6.39,No,Neutral,Yes +USER-04786,57,Other,1.9,7.26,2.0,8.45,Good,Low,5.47,0.84,Yes,Negative,Yes +USER-04787,43,Other,3.51,2.03,1.25,7.14,Good,Medium,8.33,9.48,No,Positive,Yes +USER-04788,61,Female,7.19,0.57,2.53,9.79,Fair,High,5.31,4.42,No,Neutral,No +USER-04789,33,Female,11.58,7.73,3.03,5.0,Good,Low,6.65,7.4,Yes,Positive,Yes +USER-04790,33,Male,9.24,3.36,3.02,1.02,Good,Medium,4.66,6.48,No,Positive,Yes +USER-04791,50,Other,7.51,4.2,1.3,13.79,Poor,Low,5.87,6.07,Yes,Negative,No +USER-04792,62,Male,5.9,6.92,0.38,13.31,Excellent,Low,6.46,3.43,No,Negative,No +USER-04793,26,Other,11.31,6.24,2.03,5.55,Excellent,Medium,8.16,9.12,Yes,Neutral,Yes +USER-04794,47,Male,8.68,4.08,1.4,11.03,Fair,High,5.43,1.88,Yes,Negative,No +USER-04795,63,Other,8.13,1.12,3.77,3.39,Excellent,Medium,4.76,0.86,No,Positive,Yes +USER-04796,37,Male,4.26,4.49,3.88,3.28,Good,High,8.82,1.59,Yes,Neutral,No +USER-04797,54,Other,7.41,5.91,2.48,6.3,Poor,Low,5.89,9.03,Yes,Positive,Yes +USER-04798,24,Female,1.32,3.69,3.39,12.25,Fair,High,5.83,7.6,No,Positive,Yes +USER-04799,46,Other,6.53,7.81,2.14,2.02,Excellent,High,4.57,1.81,Yes,Negative,Yes +USER-04800,56,Male,4.62,3.35,4.07,10.27,Poor,Medium,4.82,6.8,No,Positive,Yes +USER-04801,18,Other,9.32,4.33,4.24,7.54,Poor,Low,4.2,8.91,No,Positive,No +USER-04802,52,Female,5.24,7.77,0.64,6.72,Fair,Medium,7.24,0.84,Yes,Negative,No +USER-04803,43,Male,7.97,7.45,4.66,10.45,Poor,Medium,5.19,8.78,Yes,Positive,Yes +USER-04804,24,Other,11.29,6.11,2.02,3.45,Excellent,High,6.08,2.05,No,Neutral,Yes +USER-04805,44,Male,7.07,2.03,0.01,10.98,Excellent,Medium,4.99,9.25,Yes,Neutral,No +USER-04806,47,Male,5.84,3.37,1.86,8.83,Poor,Low,8.9,8.72,Yes,Neutral,No +USER-04807,23,Female,8.21,2.47,4.85,13.0,Fair,Medium,7.93,6.81,Yes,Negative,Yes +USER-04808,54,Male,9.33,7.38,0.46,14.58,Fair,Medium,7.39,2.79,No,Neutral,Yes +USER-04809,24,Male,8.34,0.95,4.62,8.02,Good,High,5.66,2.43,Yes,Neutral,No +USER-04810,40,Male,9.91,3.32,3.93,4.32,Good,High,4.67,1.7,No,Negative,Yes +USER-04811,63,Other,9.43,6.4,4.3,12.61,Excellent,Low,5.45,6.64,Yes,Neutral,Yes +USER-04812,43,Female,11.6,6.96,4.4,6.84,Poor,Medium,8.87,6.84,Yes,Neutral,No +USER-04813,29,Male,3.93,6.59,3.11,6.01,Excellent,Medium,7.76,4.43,No,Negative,No +USER-04814,64,Female,1.96,4.83,1.4,11.05,Excellent,Medium,5.95,4.43,Yes,Neutral,Yes +USER-04815,62,Female,4.26,2.32,0.8,3.69,Good,Medium,6.64,9.79,Yes,Negative,No +USER-04816,54,Male,2.67,5.3,4.16,10.62,Good,High,6.83,0.12,No,Positive,No +USER-04817,53,Male,5.16,3.98,2.96,8.54,Excellent,Medium,8.19,0.35,Yes,Neutral,No +USER-04818,58,Female,8.21,7.8,2.92,10.92,Fair,Medium,5.46,1.17,No,Positive,No +USER-04819,31,Female,6.95,1.0,3.28,1.4,Fair,Low,6.85,4.66,Yes,Neutral,No +USER-04820,39,Male,1.36,1.93,4.6,6.14,Fair,Low,8.87,5.47,Yes,Positive,Yes +USER-04821,60,Female,3.88,5.47,3.08,8.93,Fair,Low,8.22,2.75,Yes,Neutral,Yes +USER-04822,60,Male,8.03,5.18,4.86,14.87,Fair,Medium,7.7,9.14,Yes,Neutral,Yes +USER-04823,24,Female,6.3,7.33,1.22,3.42,Excellent,Medium,6.21,4.59,No,Positive,No +USER-04824,47,Male,7.8,1.67,4.44,6.04,Excellent,Low,4.68,2.95,Yes,Positive,Yes +USER-04825,31,Other,1.7,6.7,0.57,11.38,Poor,Low,4.39,2.21,Yes,Positive,No +USER-04826,59,Other,4.18,0.52,3.82,5.53,Good,Medium,8.04,9.83,No,Neutral,No +USER-04827,44,Male,9.99,6.87,0.1,13.64,Good,High,4.79,4.84,Yes,Negative,Yes +USER-04828,49,Male,2.92,7.85,1.07,11.19,Fair,Medium,4.64,5.61,No,Neutral,Yes +USER-04829,58,Male,2.99,5.34,4.78,1.16,Good,Low,4.13,6.19,Yes,Negative,No +USER-04830,50,Other,11.78,0.2,0.74,2.02,Poor,Medium,4.95,9.47,No,Neutral,No +USER-04831,35,Other,3.32,2.84,1.24,6.16,Good,High,8.81,8.59,Yes,Positive,No +USER-04832,22,Other,5.31,1.82,4.37,13.01,Excellent,Medium,6.5,1.42,No,Positive,No +USER-04833,21,Male,2.42,7.66,0.44,8.36,Excellent,High,4.65,4.05,No,Neutral,Yes +USER-04834,35,Male,5.68,5.05,4.22,13.08,Fair,High,4.41,8.37,No,Neutral,No +USER-04835,52,Male,5.26,6.84,0.24,9.94,Poor,Medium,4.93,5.14,Yes,Neutral,No +USER-04836,18,Female,11.65,2.03,0.49,6.94,Excellent,Low,8.72,9.11,No,Positive,No +USER-04837,63,Male,5.72,6.31,2.03,6.82,Poor,Low,4.61,5.64,No,Positive,Yes +USER-04838,58,Male,1.91,2.61,1.81,6.13,Good,High,6.55,1.66,Yes,Negative,No +USER-04839,19,Male,8.73,1.0,1.93,9.18,Excellent,Medium,7.21,7.71,Yes,Neutral,No +USER-04840,28,Female,10.39,1.73,3.74,2.85,Poor,Medium,4.34,8.97,No,Neutral,Yes +USER-04841,38,Other,1.65,2.14,0.6,10.22,Fair,Medium,7.15,3.05,No,Neutral,No +USER-04842,35,Female,6.63,3.72,2.46,12.01,Excellent,Medium,7.99,9.94,Yes,Positive,Yes +USER-04843,37,Male,8.32,0.24,4.62,3.02,Fair,Medium,7.52,8.75,No,Neutral,No +USER-04844,42,Female,1.33,1.16,0.69,14.17,Excellent,Medium,5.32,0.3,Yes,Neutral,No +USER-04845,27,Female,5.28,7.04,2.31,14.44,Good,Medium,6.87,8.61,Yes,Neutral,No +USER-04846,37,Female,11.1,3.51,0.06,8.14,Excellent,High,4.76,2.2,No,Positive,Yes +USER-04847,21,Male,7.81,1.65,0.82,6.51,Poor,Medium,4.7,7.7,Yes,Positive,No +USER-04848,36,Male,8.45,0.88,1.23,4.75,Excellent,Medium,6.39,0.58,Yes,Positive,Yes +USER-04849,27,Other,7.79,0.68,1.77,14.5,Excellent,Medium,4.42,1.79,No,Negative,Yes +USER-04850,54,Female,8.71,3.31,0.39,6.19,Poor,Medium,5.26,0.51,Yes,Neutral,No +USER-04851,44,Female,2.26,2.89,1.22,9.27,Poor,Medium,5.22,2.94,Yes,Neutral,Yes +USER-04852,37,Female,6.32,2.94,0.69,3.33,Excellent,Low,8.99,0.04,Yes,Positive,Yes +USER-04853,59,Male,9.96,0.22,3.52,12.51,Excellent,Low,8.71,0.2,Yes,Negative,Yes +USER-04854,22,Female,5.06,0.5,2.72,12.42,Good,Low,4.75,1.44,No,Negative,No +USER-04855,56,Male,11.02,5.0,4.55,7.34,Excellent,High,4.79,5.24,No,Negative,No +USER-04856,21,Female,8.74,2.66,4.26,14.42,Fair,High,4.04,9.47,No,Neutral,Yes +USER-04857,50,Male,4.62,6.58,0.04,3.95,Good,High,5.22,0.57,Yes,Neutral,No +USER-04858,22,Other,3.6,1.4,0.9,3.75,Good,Medium,6.62,6.52,Yes,Positive,No +USER-04859,19,Other,4.48,4.92,4.13,3.58,Poor,High,6.58,2.2,No,Positive,Yes +USER-04860,60,Other,8.93,6.0,2.14,6.42,Poor,Medium,7.69,4.33,Yes,Positive,Yes +USER-04861,49,Female,1.77,2.61,0.89,5.04,Poor,Low,5.06,6.78,No,Positive,No +USER-04862,37,Other,10.56,5.9,0.36,4.53,Poor,Low,5.77,6.64,No,Negative,No +USER-04863,29,Other,3.47,0.82,0.7,14.65,Excellent,Low,7.85,7.89,No,Neutral,No +USER-04864,20,Female,5.71,0.05,2.8,7.38,Good,Medium,8.09,5.16,No,Positive,No +USER-04865,57,Male,2.32,4.17,0.73,2.49,Fair,Medium,4.11,0.82,No,Neutral,No +USER-04866,47,Male,2.25,4.12,4.27,1.27,Excellent,High,7.0,4.76,Yes,Negative,No +USER-04867,22,Male,10.83,4.23,4.32,3.35,Good,Low,7.13,8.79,Yes,Negative,No +USER-04868,57,Male,6.61,2.13,4.98,10.25,Fair,Medium,7.57,6.5,No,Positive,Yes +USER-04869,33,Other,7.76,6.27,3.83,12.27,Good,Low,8.52,4.61,No,Neutral,No +USER-04870,60,Female,9.88,7.83,1.19,6.79,Fair,High,6.03,9.57,Yes,Negative,No +USER-04871,18,Female,3.33,1.57,4.27,12.33,Fair,Medium,7.26,5.37,Yes,Negative,Yes +USER-04872,63,Male,6.96,1.02,1.75,13.62,Fair,High,4.04,0.37,No,Negative,Yes +USER-04873,50,Female,4.47,1.04,2.07,13.13,Excellent,Medium,4.23,5.44,No,Positive,No +USER-04874,32,Male,1.77,3.66,0.09,7.83,Poor,High,4.52,0.55,No,Positive,Yes +USER-04875,58,Other,4.7,5.32,3.08,6.97,Fair,Medium,5.86,3.27,No,Negative,No +USER-04876,38,Other,11.53,4.44,1.72,1.45,Good,High,7.84,1.51,No,Negative,No +USER-04877,35,Female,2.55,5.58,1.32,13.14,Poor,High,4.6,9.17,Yes,Positive,No +USER-04878,54,Other,1.77,2.67,3.85,9.63,Fair,Low,5.97,0.19,Yes,Negative,Yes +USER-04879,57,Female,5.71,7.69,1.42,10.35,Good,High,4.43,2.95,No,Neutral,Yes +USER-04880,59,Female,7.97,3.32,3.67,8.23,Excellent,Medium,4.84,9.7,Yes,Positive,Yes +USER-04881,42,Other,11.12,4.37,4.5,14.37,Good,Medium,6.07,1.59,No,Negative,No +USER-04882,34,Male,2.4,0.88,2.4,2.99,Excellent,Medium,8.49,5.41,No,Positive,No +USER-04883,23,Male,11.99,6.29,2.69,6.42,Poor,High,8.04,9.28,No,Neutral,No +USER-04884,23,Male,2.32,4.88,4.2,9.08,Poor,Low,5.12,3.86,No,Neutral,No +USER-04885,40,Other,5.53,7.06,2.33,8.42,Fair,High,6.8,2.21,No,Positive,No +USER-04886,42,Other,6.45,3.01,3.58,1.01,Excellent,High,6.25,3.1,No,Negative,No +USER-04887,19,Female,9.03,7.11,3.36,7.02,Poor,Low,4.31,4.28,No,Positive,Yes +USER-04888,31,Male,7.14,0.6,3.06,2.83,Fair,Low,5.22,1.0,No,Positive,No +USER-04889,28,Male,8.13,1.75,2.34,11.13,Fair,Medium,8.67,3.14,No,Negative,Yes +USER-04890,56,Female,3.87,7.02,4.4,14.57,Poor,High,8.07,1.77,No,Positive,No +USER-04891,48,Female,5.28,6.35,4.01,3.53,Poor,Low,8.16,1.8,No,Positive,Yes +USER-04892,28,Male,3.13,2.01,4.57,12.66,Good,Medium,8.99,9.5,Yes,Positive,No +USER-04893,33,Male,11.74,7.34,2.95,1.73,Good,High,8.34,0.55,No,Negative,Yes +USER-04894,31,Male,7.81,6.42,1.47,2.93,Poor,High,4.67,3.0,Yes,Neutral,Yes +USER-04895,40,Male,5.27,1.72,0.59,7.6,Poor,Low,7.58,7.26,Yes,Negative,Yes +USER-04896,40,Female,4.66,7.84,4.94,1.08,Poor,Low,5.62,5.2,No,Negative,No +USER-04897,43,Male,4.92,5.29,0.88,13.95,Excellent,Medium,7.78,6.14,No,Neutral,Yes +USER-04898,53,Other,11.79,1.18,2.76,14.5,Fair,High,6.68,1.5,No,Neutral,No +USER-04899,20,Male,10.41,0.13,1.74,7.52,Good,Low,8.02,3.59,Yes,Positive,No +USER-04900,25,Male,6.56,6.56,2.66,3.83,Fair,High,8.54,8.65,Yes,Negative,No +USER-04901,40,Female,10.3,2.57,2.14,3.94,Poor,Medium,5.92,0.02,No,Neutral,No +USER-04902,59,Female,9.31,7.39,2.63,13.98,Excellent,High,6.89,4.05,No,Neutral,No +USER-04903,49,Male,8.32,3.9,4.08,6.13,Excellent,Low,7.84,3.78,Yes,Positive,Yes +USER-04904,62,Other,9.9,7.7,0.14,10.87,Fair,Medium,5.34,7.62,Yes,Positive,No +USER-04905,56,Male,9.05,4.56,1.45,4.05,Poor,Medium,4.23,8.57,Yes,Positive,No +USER-04906,32,Male,4.17,4.11,1.16,14.76,Poor,High,5.02,9.86,Yes,Neutral,No +USER-04907,23,Female,1.63,4.96,0.32,3.4,Poor,High,6.13,1.46,No,Neutral,Yes +USER-04908,33,Other,5.0,6.44,4.23,2.17,Excellent,High,6.35,1.15,No,Negative,No +USER-04909,33,Female,10.08,7.85,3.03,2.63,Fair,Medium,5.3,0.79,No,Positive,Yes +USER-04910,43,Other,11.62,0.05,4.83,13.58,Good,Medium,7.41,3.66,Yes,Neutral,No +USER-04911,47,Male,4.39,0.92,1.93,3.55,Good,Medium,7.04,8.17,Yes,Positive,Yes +USER-04912,43,Other,7.54,3.26,3.64,8.38,Poor,High,5.34,4.87,Yes,Negative,Yes +USER-04913,44,Female,3.5,1.49,1.28,5.56,Excellent,High,6.83,7.82,Yes,Negative,Yes +USER-04914,49,Female,8.6,6.19,0.63,4.58,Good,Low,5.04,7.24,No,Neutral,Yes +USER-04915,44,Female,6.74,7.06,4.84,11.08,Good,High,5.87,1.37,Yes,Neutral,No +USER-04916,31,Male,6.17,3.52,3.54,13.8,Good,Low,7.91,1.56,Yes,Positive,Yes +USER-04917,44,Female,5.31,0.92,1.07,6.33,Poor,Medium,7.04,7.88,Yes,Negative,Yes +USER-04918,20,Other,9.66,1.38,4.96,4.01,Excellent,Medium,6.1,7.98,Yes,Positive,Yes +USER-04919,52,Other,7.43,4.44,3.26,13.68,Good,Medium,8.58,9.67,Yes,Negative,No +USER-04920,55,Male,1.22,1.3,2.14,13.88,Excellent,Medium,5.53,4.68,No,Positive,Yes +USER-04921,40,Other,9.37,4.33,2.08,9.28,Excellent,High,6.76,6.23,Yes,Positive,No +USER-04922,43,Female,8.22,0.51,2.73,12.43,Good,Medium,4.44,3.29,No,Positive,No +USER-04923,20,Other,2.67,3.9,2.59,9.41,Excellent,Low,8.43,6.29,Yes,Positive,Yes +USER-04924,37,Male,7.77,5.38,3.43,7.75,Excellent,High,6.43,6.31,No,Positive,Yes +USER-04925,26,Female,5.18,2.13,2.42,8.55,Good,High,7.54,0.42,Yes,Negative,Yes +USER-04926,21,Other,7.03,6.31,4.63,8.53,Excellent,High,7.43,5.5,No,Neutral,No +USER-04927,44,Other,7.53,1.43,1.38,4.17,Poor,High,6.8,7.9,Yes,Positive,Yes +USER-04928,26,Other,8.26,1.3,3.27,12.0,Poor,Medium,7.51,3.7,No,Positive,No +USER-04929,51,Female,7.99,6.55,1.1,6.6,Fair,Low,5.48,2.12,No,Negative,Yes +USER-04930,29,Female,4.08,2.33,2.23,12.97,Excellent,Low,8.87,4.33,No,Negative,Yes +USER-04931,42,Other,3.13,0.8,0.47,7.48,Good,Low,6.42,4.62,Yes,Neutral,No +USER-04932,62,Female,11.16,4.33,1.23,4.6,Good,Low,6.84,4.91,No,Negative,No +USER-04933,22,Other,7.48,2.4,0.68,11.03,Good,High,8.39,0.2,No,Neutral,No +USER-04934,29,Other,3.74,0.72,0.26,7.49,Excellent,Low,7.88,5.45,No,Negative,No +USER-04935,46,Other,8.74,4.3,4.09,2.17,Excellent,Medium,6.26,5.89,No,Negative,Yes +USER-04936,63,Other,2.4,3.63,0.85,7.65,Fair,Medium,8.82,2.03,No,Negative,No +USER-04937,48,Male,4.96,2.69,1.34,1.6,Fair,High,8.46,0.55,Yes,Negative,Yes +USER-04938,44,Other,5.0,3.04,1.57,3.78,Fair,Low,6.09,7.95,No,Neutral,Yes +USER-04939,65,Other,10.51,4.01,4.96,5.55,Poor,Low,5.26,4.03,Yes,Neutral,No +USER-04940,52,Male,10.8,3.88,4.15,7.8,Good,Low,6.43,9.54,No,Positive,No +USER-04941,59,Other,3.63,2.67,2.28,13.71,Excellent,Low,8.66,8.76,No,Neutral,Yes +USER-04942,30,Other,6.86,4.72,1.19,3.31,Poor,Medium,5.74,8.69,Yes,Positive,No +USER-04943,34,Female,10.07,0.64,2.58,3.72,Poor,High,8.76,1.91,No,Positive,Yes +USER-04944,53,Male,11.38,5.95,1.54,7.32,Poor,Low,5.76,8.59,No,Neutral,Yes +USER-04945,31,Female,7.58,4.29,4.73,1.17,Good,High,5.16,1.82,Yes,Negative,No +USER-04946,24,Female,11.74,0.5,2.71,5.74,Good,Low,6.19,7.24,Yes,Neutral,No +USER-04947,31,Male,1.48,4.59,0.69,13.24,Fair,Medium,8.77,7.51,Yes,Negative,Yes +USER-04948,37,Female,1.61,1.9,4.48,10.83,Poor,Low,6.72,0.33,Yes,Neutral,No +USER-04949,49,Female,1.14,3.93,4.91,4.36,Fair,High,8.91,7.84,Yes,Negative,Yes +USER-04950,38,Other,10.26,7.26,2.84,4.33,Good,High,8.88,8.5,Yes,Positive,Yes +USER-04951,35,Male,2.09,7.36,0.44,7.47,Good,Low,7.54,1.88,Yes,Positive,No +USER-04952,32,Female,2.68,7.36,1.91,11.17,Poor,Medium,4.9,0.91,No,Positive,Yes +USER-04953,64,Other,5.67,0.02,2.26,10.07,Poor,High,8.41,9.84,No,Neutral,No +USER-04954,50,Female,3.6,0.19,4.62,12.0,Good,High,8.36,6.56,Yes,Negative,No +USER-04955,64,Female,10.73,2.0,4.94,14.19,Excellent,High,7.04,9.05,Yes,Positive,No +USER-04956,43,Male,1.14,7.91,2.85,10.88,Poor,High,7.68,8.57,Yes,Neutral,No +USER-04957,26,Other,7.28,1.49,0.06,7.8,Poor,Medium,5.98,5.45,Yes,Neutral,No +USER-04958,29,Male,7.02,1.38,3.06,13.36,Fair,Medium,5.58,0.5,No,Neutral,Yes +USER-04959,31,Other,3.75,3.54,2.86,14.37,Good,Low,4.7,7.98,Yes,Negative,Yes +USER-04960,64,Female,10.29,1.04,5.0,8.82,Excellent,High,4.5,8.33,Yes,Neutral,No +USER-04961,18,Other,2.81,2.23,2.49,5.76,Poor,Medium,5.88,4.83,Yes,Neutral,No +USER-04962,32,Other,2.13,2.71,2.01,2.9,Fair,Medium,4.81,9.86,Yes,Neutral,No +USER-04963,45,Other,9.26,6.03,0.13,3.88,Fair,Low,7.92,2.89,Yes,Negative,No +USER-04964,42,Other,4.38,3.49,3.12,8.44,Good,High,8.92,5.73,Yes,Negative,Yes +USER-04965,59,Male,7.11,6.29,1.1,8.98,Excellent,Medium,8.88,4.66,No,Positive,No +USER-04966,20,Other,6.45,2.29,0.58,10.07,Fair,Medium,7.33,7.8,No,Neutral,Yes +USER-04967,49,Female,11.42,4.89,4.74,1.15,Excellent,High,7.32,5.73,Yes,Neutral,No +USER-04968,24,Female,9.38,1.22,4.11,14.11,Poor,Low,4.21,9.6,No,Positive,No +USER-04969,56,Male,8.54,4.86,2.42,11.21,Fair,High,5.77,6.32,No,Positive,No +USER-04970,53,Female,1.6,6.26,3.66,2.47,Fair,Low,5.78,9.07,No,Negative,Yes +USER-04971,51,Male,5.13,1.0,4.15,11.62,Poor,Low,4.39,5.6,Yes,Neutral,Yes +USER-04972,48,Male,5.92,4.82,4.28,3.52,Good,Low,7.92,1.48,Yes,Neutral,Yes +USER-04973,29,Male,3.14,7.68,0.95,7.0,Fair,Low,5.69,2.41,No,Positive,No +USER-04974,19,Female,11.83,6.81,3.71,14.55,Good,High,6.41,4.42,Yes,Negative,No +USER-04975,22,Male,11.74,6.56,0.84,5.61,Poor,Low,6.06,3.02,No,Negative,Yes +USER-04976,46,Female,8.9,6.33,3.86,14.96,Poor,Low,7.55,6.43,No,Neutral,No +USER-04977,60,Male,2.18,1.84,2.14,9.37,Poor,Low,7.05,3.39,Yes,Neutral,No +USER-04978,28,Male,9.76,6.85,0.62,13.81,Fair,High,7.88,7.42,No,Negative,Yes +USER-04979,30,Male,5.31,1.98,4.25,7.82,Excellent,Low,7.63,9.79,No,Negative,No +USER-04980,34,Female,9.24,7.55,1.88,12.25,Excellent,Low,8.0,2.19,No,Negative,No +USER-04981,49,Male,11.71,6.77,3.33,13.08,Fair,Low,4.74,6.95,No,Negative,No +USER-04982,29,Male,1.9,4.54,1.07,1.81,Poor,High,6.33,5.56,Yes,Neutral,No +USER-04983,65,Male,9.94,5.53,3.43,11.32,Good,High,8.92,9.89,No,Negative,Yes +USER-04984,41,Female,2.66,2.12,1.03,9.54,Good,High,7.5,3.13,Yes,Positive,No +USER-04985,56,Male,3.71,4.99,2.99,7.54,Excellent,Medium,7.33,4.9,Yes,Negative,No +USER-04986,19,Female,8.09,6.62,3.55,13.48,Good,High,6.99,7.51,Yes,Positive,Yes +USER-04987,50,Female,10.62,0.47,4.57,2.74,Excellent,Low,7.02,7.71,No,Positive,No +USER-04988,27,Female,10.65,6.15,4.71,10.08,Poor,High,7.25,9.62,No,Negative,No +USER-04989,32,Other,9.63,3.18,2.4,2.3,Fair,Low,4.61,3.95,No,Negative,No +USER-04990,36,Female,2.98,2.1,4.43,14.93,Poor,Medium,4.74,2.11,Yes,Negative,Yes +USER-04991,51,Female,11.98,6.43,1.35,10.49,Excellent,Medium,8.7,7.85,Yes,Positive,No +USER-04992,64,Male,3.81,0.88,0.37,5.45,Poor,Low,8.33,6.7,Yes,Negative,No +USER-04993,59,Other,5.52,3.39,4.81,14.67,Excellent,Medium,4.63,6.72,Yes,Positive,Yes +USER-04994,22,Female,8.62,5.0,1.17,12.37,Excellent,High,8.44,3.54,Yes,Neutral,No +USER-04995,23,Other,6.13,3.79,2.45,6.82,Good,Medium,8.49,9.74,Yes,Positive,No +USER-04996,30,Male,9.32,1.58,2.42,6.11,Poor,Medium,5.37,8.9,Yes,Neutral,No +USER-04997,19,Other,8.32,5.45,2.94,11.67,Fair,Low,4.73,2.29,No,Neutral,No +USER-04998,23,Female,11.5,4.1,1.16,12.11,Good,Low,5.61,4.76,No,Positive,Yes +USER-04999,31,Female,4.2,7.37,4.06,10.64,Good,High,6.63,1.39,Yes,Neutral,Yes +USER-05000,20,Other,1.55,3.72,1.92,4.89,Excellent,Low,7.52,7.69,Yes,Neutral,Yes +USER-05001,23,Male,6.48,6.72,2.91,7.61,Excellent,High,4.61,9.76,Yes,Neutral,No +USER-05002,50,Female,10.48,0.06,1.69,5.04,Excellent,High,7.09,4.01,Yes,Negative,Yes +USER-05003,45,Other,4.62,4.04,2.35,6.23,Good,High,5.48,2.3,Yes,Negative,Yes +USER-05004,60,Other,5.36,5.62,1.82,12.29,Fair,High,7.12,8.94,Yes,Negative,No +USER-05005,60,Female,8.98,5.22,0.57,8.98,Good,Low,4.96,1.79,Yes,Negative,No +USER-05006,22,Other,3.32,4.63,3.0,10.71,Good,High,7.05,3.52,Yes,Positive,No +USER-05007,51,Other,4.06,0.03,0.14,4.24,Poor,Low,7.28,0.71,No,Negative,Yes +USER-05008,53,Other,7.37,0.62,0.39,2.16,Fair,Medium,5.37,2.1,No,Negative,No +USER-05009,20,Male,5.26,1.14,3.57,7.2,Poor,High,8.85,4.2,Yes,Positive,Yes +USER-05010,23,Other,9.61,6.46,1.71,13.75,Poor,Medium,4.38,0.99,No,Neutral,Yes +USER-05011,37,Other,9.97,6.65,3.14,2.26,Excellent,Low,6.74,7.8,No,Positive,No +USER-05012,38,Male,9.71,7.94,1.74,14.46,Excellent,Medium,4.8,3.55,No,Negative,Yes +USER-05013,62,Male,3.27,7.98,3.19,11.69,Poor,Medium,7.16,6.97,No,Negative,Yes +USER-05014,46,Male,11.01,0.59,0.12,11.84,Poor,High,7.84,8.69,Yes,Neutral,Yes +USER-05015,24,Other,2.25,7.28,2.58,10.26,Poor,High,5.55,5.89,Yes,Positive,Yes +USER-05016,54,Male,7.24,3.5,2.86,5.63,Good,Low,7.44,2.14,No,Negative,No +USER-05017,40,Other,11.14,0.29,3.44,11.41,Poor,Medium,7.74,5.15,Yes,Negative,No +USER-05018,56,Other,10.91,3.24,3.86,10.35,Good,Medium,8.39,8.69,No,Negative,Yes +USER-05019,35,Male,10.22,4.57,4.49,4.94,Fair,Low,6.6,3.19,No,Negative,No +USER-05020,39,Male,1.56,7.21,4.27,4.21,Good,High,8.2,9.21,Yes,Positive,No +USER-05021,21,Other,3.16,3.42,4.76,10.5,Poor,High,6.73,0.62,No,Neutral,Yes +USER-05022,58,Male,6.65,6.32,0.42,5.23,Poor,Low,8.79,6.56,Yes,Positive,No +USER-05023,33,Other,1.35,0.29,2.36,14.01,Good,Medium,7.67,9.29,No,Negative,Yes +USER-05024,43,Female,1.62,3.85,0.05,13.03,Fair,High,4.91,3.54,Yes,Negative,No +USER-05025,63,Male,2.68,4.35,2.77,6.57,Fair,Low,8.79,4.31,No,Negative,No +USER-05026,34,Female,6.62,6.3,4.45,6.55,Excellent,High,8.7,3.79,Yes,Negative,Yes +USER-05027,44,Male,1.73,3.62,0.57,4.55,Good,Low,6.21,5.06,Yes,Neutral,Yes +USER-05028,54,Female,5.17,1.64,0.66,4.79,Poor,Medium,4.49,9.23,No,Positive,No +USER-05029,29,Other,8.88,3.82,1.57,14.55,Poor,Low,7.47,2.06,Yes,Neutral,Yes +USER-05030,40,Male,6.87,5.87,4.01,9.71,Good,High,7.18,9.74,No,Positive,No +USER-05031,20,Other,2.35,2.14,4.04,2.97,Excellent,Low,8.44,7.12,Yes,Neutral,No +USER-05032,36,Male,7.68,3.58,0.88,11.31,Fair,High,8.36,1.66,Yes,Negative,Yes +USER-05033,27,Female,1.66,1.67,0.4,6.68,Excellent,Low,7.64,7.2,Yes,Negative,Yes +USER-05034,34,Other,1.31,3.07,1.47,12.28,Fair,Medium,8.94,1.51,No,Positive,No +USER-05035,45,Male,8.92,0.26,2.89,9.36,Good,Medium,8.36,4.37,No,Positive,Yes +USER-05036,55,Other,2.26,4.57,1.38,11.63,Good,High,6.81,4.35,Yes,Neutral,Yes +USER-05037,58,Female,5.04,7.57,2.82,11.08,Good,High,6.01,0.19,Yes,Neutral,Yes +USER-05038,62,Other,3.63,2.1,0.32,7.38,Excellent,Medium,7.54,2.29,Yes,Negative,Yes +USER-05039,36,Male,8.14,7.25,2.95,3.38,Poor,High,4.11,3.42,No,Negative,Yes +USER-05040,49,Male,6.68,7.46,1.18,5.46,Good,High,5.92,0.69,No,Neutral,Yes +USER-05041,51,Female,2.73,7.8,3.75,10.78,Excellent,Medium,4.87,3.17,Yes,Negative,Yes +USER-05042,54,Other,7.93,1.25,1.74,6.51,Good,Medium,6.52,3.45,No,Neutral,Yes +USER-05043,48,Other,7.5,0.28,4.66,6.46,Fair,High,4.01,9.7,Yes,Negative,No +USER-05044,33,Male,6.84,2.33,1.11,5.61,Fair,High,8.6,7.19,No,Neutral,No +USER-05045,53,Male,8.35,5.88,0.88,13.85,Good,High,4.94,6.24,No,Neutral,No +USER-05046,28,Male,4.12,5.05,4.34,14.31,Good,Medium,5.23,4.95,Yes,Positive,Yes +USER-05047,34,Male,5.43,7.19,1.05,12.31,Poor,Medium,6.13,6.74,No,Neutral,Yes +USER-05048,46,Other,1.82,3.14,3.43,4.74,Fair,High,7.81,3.93,Yes,Negative,No +USER-05049,55,Female,7.97,5.05,1.82,14.83,Fair,Low,8.4,0.11,No,Negative,No +USER-05050,33,Other,8.13,0.1,4.71,7.68,Excellent,High,5.06,8.64,Yes,Positive,No +USER-05051,23,Female,9.2,6.95,3.66,1.75,Good,Low,5.26,1.14,No,Negative,No +USER-05052,59,Female,8.34,5.68,3.93,7.06,Poor,Low,7.77,0.92,Yes,Positive,No +USER-05053,46,Other,9.34,6.13,0.4,14.62,Good,Medium,9.0,6.63,Yes,Positive,No +USER-05054,36,Other,2.32,7.7,2.72,8.42,Good,High,5.91,9.58,No,Positive,No +USER-05055,59,Female,5.3,2.65,4.31,5.21,Good,High,5.98,6.82,Yes,Negative,Yes +USER-05056,26,Other,4.36,3.72,4.84,1.97,Good,Low,7.54,6.84,No,Negative,No +USER-05057,32,Other,8.73,5.32,0.03,7.4,Good,Low,8.47,8.04,Yes,Negative,No +USER-05058,48,Male,11.58,7.9,4.42,10.81,Good,Low,4.59,5.45,Yes,Neutral,Yes +USER-05059,51,Other,4.37,7.21,4.51,3.25,Poor,Medium,8.59,0.2,Yes,Negative,No +USER-05060,49,Female,6.44,5.96,0.27,14.2,Poor,Medium,5.87,0.62,Yes,Positive,Yes +USER-05061,52,Other,4.75,5.94,4.79,4.05,Fair,Low,4.26,0.28,No,Negative,No +USER-05062,22,Female,9.58,1.45,4.98,6.22,Poor,Low,4.3,3.05,Yes,Neutral,Yes +USER-05063,18,Female,10.0,1.02,3.32,9.27,Good,Medium,4.88,4.43,No,Negative,Yes +USER-05064,34,Other,7.18,2.27,2.54,6.98,Poor,Medium,8.52,9.69,Yes,Positive,No +USER-05065,47,Other,2.62,3.04,2.96,6.54,Poor,Low,6.71,9.97,Yes,Positive,No +USER-05066,53,Male,9.72,2.33,1.68,13.21,Fair,Medium,4.37,9.9,No,Negative,Yes +USER-05067,60,Other,8.11,2.31,1.4,3.57,Poor,Low,5.36,4.05,No,Negative,Yes +USER-05068,27,Female,11.19,4.58,0.86,7.32,Poor,Low,8.12,2.35,Yes,Negative,Yes +USER-05069,38,Other,2.69,6.36,3.75,11.46,Excellent,Low,7.03,6.28,No,Neutral,Yes +USER-05070,22,Other,5.06,4.03,0.87,12.54,Excellent,High,7.31,4.81,Yes,Neutral,Yes +USER-05071,37,Other,8.23,6.21,4.62,11.66,Excellent,Low,5.65,5.48,No,Positive,Yes +USER-05072,18,Other,9.6,0.71,0.33,2.26,Excellent,Medium,7.55,1.35,Yes,Neutral,No +USER-05073,48,Female,8.56,5.52,2.42,1.05,Poor,High,6.16,5.29,No,Positive,No +USER-05074,40,Other,8.07,6.61,2.12,9.53,Good,Medium,5.53,7.33,No,Positive,No +USER-05075,63,Other,11.59,7.75,2.22,12.58,Good,Medium,6.85,2.59,Yes,Negative,Yes +USER-05076,62,Other,6.43,3.28,2.85,1.21,Good,Low,6.13,9.02,Yes,Positive,No +USER-05077,32,Male,1.14,3.33,0.44,1.09,Excellent,Medium,4.97,0.7,Yes,Positive,No +USER-05078,30,Other,5.21,1.24,1.38,3.77,Fair,Low,7.96,5.44,No,Neutral,No +USER-05079,36,Female,7.8,2.94,2.09,3.84,Good,Medium,7.9,7.49,Yes,Neutral,No +USER-05080,50,Female,3.93,5.89,2.31,7.1,Poor,Medium,5.28,3.56,No,Negative,Yes +USER-05081,24,Female,11.8,6.24,4.2,1.63,Fair,Low,4.95,0.04,Yes,Neutral,No +USER-05082,22,Other,8.84,7.33,0.7,13.45,Good,High,6.8,3.58,No,Negative,No +USER-05083,50,Male,1.78,3.84,0.7,10.6,Good,High,4.64,2.31,No,Neutral,Yes +USER-05084,50,Other,4.9,7.68,0.15,7.63,Excellent,Medium,8.92,4.12,No,Neutral,Yes +USER-05085,54,Male,9.78,1.66,0.68,7.67,Good,Low,6.45,8.63,Yes,Negative,No +USER-05086,56,Male,8.22,4.19,2.12,13.67,Fair,Low,4.99,5.97,No,Positive,Yes +USER-05087,55,Other,3.8,5.28,0.35,11.13,Excellent,Medium,7.99,6.05,Yes,Negative,Yes +USER-05088,43,Female,6.31,2.96,1.67,5.36,Excellent,High,4.59,7.23,Yes,Negative,No +USER-05089,23,Male,9.88,5.18,0.16,8.01,Fair,Low,8.22,1.97,Yes,Positive,Yes +USER-05090,53,Male,8.26,6.81,3.07,3.54,Excellent,Medium,4.78,9.63,Yes,Positive,Yes +USER-05091,30,Male,6.01,7.08,4.76,5.58,Good,Low,5.16,7.15,Yes,Neutral,No +USER-05092,18,Female,8.84,3.08,2.96,1.35,Excellent,Low,4.25,3.39,No,Negative,Yes +USER-05093,39,Other,7.79,4.61,0.64,10.04,Excellent,Low,5.39,4.71,Yes,Negative,No +USER-05094,25,Other,9.27,3.94,4.7,7.81,Poor,Low,5.56,9.59,No,Negative,No +USER-05095,51,Male,1.34,5.46,4.1,5.55,Good,High,4.18,6.85,Yes,Neutral,No +USER-05096,39,Female,10.78,4.4,1.09,9.16,Excellent,Medium,7.86,6.17,Yes,Negative,No +USER-05097,26,Female,5.62,4.67,3.8,1.58,Excellent,High,8.82,9.63,Yes,Negative,Yes +USER-05098,54,Male,11.09,0.74,4.8,11.28,Poor,High,5.65,3.34,Yes,Positive,Yes +USER-05099,28,Male,4.8,1.0,3.27,1.58,Fair,Low,4.86,0.39,Yes,Neutral,No +USER-05100,34,Female,9.53,3.86,1.88,2.8,Fair,High,4.85,8.67,Yes,Positive,Yes +USER-05101,38,Female,7.23,1.4,3.2,11.86,Poor,High,4.04,0.84,No,Positive,Yes +USER-05102,50,Female,9.3,2.62,4.7,7.29,Poor,Medium,7.25,2.12,Yes,Neutral,Yes +USER-05103,31,Other,11.55,6.48,2.42,6.55,Fair,Medium,4.57,5.04,Yes,Positive,Yes +USER-05104,30,Male,8.18,2.27,2.28,12.83,Poor,Low,4.78,3.09,No,Positive,Yes +USER-05105,26,Female,9.7,4.98,3.95,8.7,Good,High,6.03,8.15,No,Negative,No +USER-05106,37,Female,4.78,3.24,4.88,1.54,Good,Low,5.91,1.84,No,Positive,Yes +USER-05107,32,Other,8.43,0.3,4.52,13.17,Excellent,Low,6.03,4.48,No,Negative,Yes +USER-05108,35,Male,6.46,5.9,0.95,11.61,Fair,Medium,8.49,9.82,Yes,Neutral,No +USER-05109,62,Other,1.37,1.23,3.58,4.02,Good,Medium,8.62,1.42,Yes,Negative,Yes +USER-05110,22,Male,11.35,6.76,3.2,5.99,Good,High,4.71,0.72,Yes,Negative,Yes +USER-05111,49,Female,7.42,4.12,0.06,6.48,Poor,Low,8.29,0.78,No,Positive,Yes +USER-05112,50,Other,7.64,6.95,2.19,11.11,Excellent,High,6.94,8.25,No,Positive,Yes +USER-05113,47,Other,10.64,2.42,1.65,2.04,Fair,High,7.87,4.65,No,Positive,Yes +USER-05114,63,Other,7.79,6.2,2.8,13.45,Good,Medium,4.47,9.52,No,Neutral,Yes +USER-05115,52,Other,3.3,1.95,0.9,1.33,Excellent,High,7.72,2.8,No,Neutral,No +USER-05116,57,Other,2.79,1.31,1.27,7.88,Excellent,Low,5.2,5.79,Yes,Positive,Yes +USER-05117,20,Female,1.69,5.8,2.32,11.23,Poor,Low,5.44,0.98,Yes,Positive,Yes +USER-05118,49,Other,7.94,0.31,0.55,11.24,Excellent,High,6.44,4.59,No,Neutral,No +USER-05119,59,Male,7.68,0.75,0.82,14.69,Fair,Medium,4.59,8.01,No,Negative,No +USER-05120,47,Male,7.42,2.93,3.11,3.15,Poor,High,7.32,1.36,No,Neutral,No +USER-05121,50,Other,10.13,5.96,0.52,1.16,Good,High,5.69,7.29,No,Positive,Yes +USER-05122,47,Other,6.89,6.65,2.72,12.35,Poor,Medium,5.81,7.68,Yes,Neutral,Yes +USER-05123,20,Male,8.89,7.91,3.4,3.58,Poor,High,5.45,1.97,Yes,Neutral,No +USER-05124,63,Female,1.5,7.92,2.84,3.84,Fair,High,6.31,1.51,No,Negative,No +USER-05125,41,Male,9.02,7.97,0.58,7.36,Fair,High,7.05,4.03,No,Neutral,No +USER-05126,46,Other,9.11,3.53,2.38,1.48,Poor,Medium,5.12,7.71,Yes,Positive,No +USER-05127,27,Other,7.24,2.35,0.88,10.74,Fair,Low,5.16,0.15,No,Neutral,No +USER-05128,32,Other,3.02,2.34,3.94,6.31,Poor,High,4.33,1.62,Yes,Negative,No +USER-05129,40,Female,9.14,1.47,2.26,6.9,Excellent,High,5.03,9.04,Yes,Negative,Yes +USER-05130,41,Male,3.92,0.94,0.31,13.96,Good,High,4.86,7.59,Yes,Negative,Yes +USER-05131,48,Male,9.93,0.78,3.04,12.87,Poor,High,6.79,6.21,No,Neutral,Yes +USER-05132,58,Female,4.18,2.43,3.94,14.21,Good,Low,7.58,0.11,Yes,Positive,No +USER-05133,62,Female,3.25,5.63,3.07,7.08,Excellent,High,4.23,9.26,Yes,Neutral,No +USER-05134,29,Other,2.1,6.13,1.79,1.98,Fair,Medium,6.78,0.02,No,Neutral,No +USER-05135,50,Other,7.21,4.38,1.22,1.72,Poor,High,7.62,2.86,No,Positive,No +USER-05136,34,Male,4.12,7.18,0.01,8.96,Excellent,Medium,8.92,4.59,No,Negative,Yes +USER-05137,27,Female,4.94,3.14,4.9,11.43,Good,High,4.34,4.97,No,Neutral,Yes +USER-05138,23,Other,7.74,2.94,3.33,6.15,Good,Low,4.41,4.86,No,Neutral,Yes +USER-05139,24,Other,2.93,7.04,2.34,6.77,Fair,Low,7.36,8.67,Yes,Neutral,Yes +USER-05140,33,Other,11.37,6.91,4.16,3.17,Poor,Medium,4.96,8.64,Yes,Negative,No +USER-05141,34,Female,2.15,2.24,2.23,1.29,Good,High,7.63,7.8,Yes,Positive,No +USER-05142,47,Other,2.79,0.32,1.89,2.69,Fair,Low,4.56,8.96,Yes,Neutral,No +USER-05143,64,Other,2.98,2.58,4.98,2.81,Poor,Low,8.46,0.29,No,Negative,No +USER-05144,31,Male,11.69,4.61,2.22,13.97,Fair,Low,7.85,2.36,No,Positive,Yes +USER-05145,28,Other,1.63,1.96,0.45,5.39,Fair,High,4.96,1.72,No,Neutral,No +USER-05146,38,Other,3.16,1.46,3.96,5.5,Good,Low,6.37,4.08,No,Positive,Yes +USER-05147,45,Male,9.17,1.12,4.98,14.32,Fair,Low,6.88,9.45,No,Negative,No +USER-05148,32,Female,11.04,2.58,3.44,4.62,Fair,High,7.15,1.99,Yes,Negative,No +USER-05149,29,Male,8.96,2.7,3.87,4.86,Excellent,Medium,8.72,6.44,No,Negative,No +USER-05150,59,Other,1.88,5.39,3.02,1.38,Excellent,Medium,8.75,3.49,No,Negative,Yes +USER-05151,65,Other,10.84,2.79,4.17,13.39,Fair,Low,7.42,3.16,Yes,Neutral,Yes +USER-05152,55,Female,2.43,0.92,4.43,14.63,Good,Low,5.51,2.57,Yes,Positive,No +USER-05153,45,Male,11.56,7.93,0.18,4.12,Good,Medium,5.53,7.24,No,Neutral,No +USER-05154,31,Female,2.17,0.3,2.81,8.48,Excellent,High,5.3,2.4,No,Negative,Yes +USER-05155,47,Other,1.81,0.09,0.0,14.05,Fair,Low,8.42,4.47,No,Neutral,Yes +USER-05156,59,Other,9.05,3.46,4.82,6.39,Excellent,High,5.41,6.28,Yes,Positive,Yes +USER-05157,38,Other,11.54,0.27,3.88,4.31,Excellent,Medium,6.85,7.33,No,Neutral,No +USER-05158,49,Other,5.74,7.37,4.42,7.35,Poor,Low,4.54,1.62,Yes,Negative,No +USER-05159,30,Other,6.5,5.73,3.07,13.11,Good,Low,4.79,1.69,Yes,Positive,Yes +USER-05160,41,Other,8.08,7.7,2.12,3.8,Excellent,High,7.84,1.19,Yes,Neutral,Yes +USER-05161,40,Other,5.59,5.69,3.56,8.34,Poor,Medium,4.22,1.65,No,Negative,Yes +USER-05162,43,Male,2.4,2.23,4.18,4.25,Good,Low,4.49,7.55,No,Neutral,Yes +USER-05163,35,Other,7.4,0.84,1.4,14.42,Good,High,4.95,7.79,No,Neutral,Yes +USER-05164,20,Other,11.39,5.51,1.04,4.62,Fair,High,7.92,3.75,No,Neutral,Yes +USER-05165,40,Female,7.93,3.5,4.44,2.93,Poor,Medium,6.09,9.88,Yes,Positive,Yes +USER-05166,45,Female,9.71,7.61,2.66,3.99,Fair,Medium,8.77,0.2,No,Positive,No +USER-05167,32,Male,11.15,7.05,2.22,5.51,Poor,Medium,5.88,7.74,No,Positive,Yes +USER-05168,55,Male,11.83,5.59,3.17,7.19,Excellent,High,8.18,7.52,No,Positive,No +USER-05169,63,Female,6.81,1.35,0.04,7.74,Excellent,Medium,7.21,0.95,Yes,Positive,Yes +USER-05170,44,Male,1.95,5.59,3.46,2.5,Good,Medium,6.03,6.14,No,Neutral,No +USER-05171,65,Other,10.95,0.17,0.07,1.85,Good,Low,8.25,8.92,No,Positive,Yes +USER-05172,65,Other,6.14,0.39,2.89,13.06,Fair,Medium,7.99,0.88,Yes,Positive,Yes +USER-05173,34,Female,2.11,1.17,1.35,3.67,Fair,Low,6.14,4.28,Yes,Negative,No +USER-05174,45,Female,3.93,3.66,4.55,4.74,Excellent,Medium,8.96,0.88,Yes,Neutral,Yes +USER-05175,24,Male,5.11,4.92,2.84,14.19,Excellent,High,8.03,7.69,No,Neutral,No +USER-05176,44,Male,2.13,0.75,4.9,1.45,Poor,Low,4.03,2.28,No,Positive,Yes +USER-05177,40,Male,1.82,4.93,2.32,11.72,Fair,High,6.76,6.12,No,Negative,Yes +USER-05178,57,Male,2.27,0.15,2.21,9.17,Fair,Low,7.29,9.08,No,Positive,No +USER-05179,52,Other,3.38,1.32,3.32,7.36,Good,High,5.06,5.29,No,Neutral,Yes +USER-05180,63,Female,2.91,5.24,4.7,9.04,Excellent,Low,7.2,4.71,Yes,Negative,Yes +USER-05181,51,Other,10.15,0.01,0.56,2.77,Fair,Low,8.72,0.69,Yes,Positive,No +USER-05182,32,Male,7.07,0.77,4.49,8.25,Good,High,6.83,0.29,Yes,Positive,No +USER-05183,29,Other,1.98,0.64,1.97,8.26,Good,Medium,6.64,6.88,No,Neutral,Yes +USER-05184,38,Male,1.84,2.6,3.5,12.23,Good,Medium,7.12,9.98,No,Negative,Yes +USER-05185,19,Female,8.29,7.18,3.42,4.99,Fair,Medium,7.42,8.04,Yes,Positive,No +USER-05186,64,Female,4.98,2.78,0.24,9.79,Fair,Medium,5.55,6.98,Yes,Neutral,Yes +USER-05187,29,Other,6.02,0.04,4.95,6.64,Fair,High,7.38,4.03,Yes,Positive,No +USER-05188,19,Female,10.94,5.17,2.87,12.57,Poor,Low,5.5,1.86,No,Neutral,Yes +USER-05189,50,Female,1.19,0.12,2.71,11.09,Fair,Medium,4.87,0.63,No,Neutral,Yes +USER-05190,38,Female,5.21,3.01,3.34,2.12,Poor,Low,4.87,3.57,Yes,Neutral,No +USER-05191,65,Other,9.96,5.83,0.69,9.03,Fair,Low,8.85,4.64,No,Negative,No +USER-05192,48,Other,7.63,4.35,1.08,10.94,Good,High,4.81,1.89,No,Positive,No +USER-05193,24,Male,8.98,6.77,3.47,5.81,Excellent,High,4.75,6.72,No,Neutral,Yes +USER-05194,24,Male,1.52,3.0,1.45,9.63,Poor,High,6.39,9.39,No,Neutral,No +USER-05195,21,Other,3.46,1.21,1.55,2.52,Good,High,5.82,3.22,No,Negative,No +USER-05196,42,Other,4.74,3.69,3.14,7.34,Fair,Medium,7.31,8.09,Yes,Positive,No +USER-05197,61,Male,3.43,2.06,2.88,14.4,Good,Low,4.29,3.92,No,Positive,No +USER-05198,48,Male,3.97,3.27,4.11,2.08,Good,Low,8.92,3.09,No,Negative,No +USER-05199,37,Female,8.56,5.02,4.18,6.09,Poor,Low,5.0,5.78,No,Neutral,Yes +USER-05200,33,Female,7.96,2.35,4.27,1.24,Excellent,Medium,8.72,6.66,No,Negative,Yes +USER-05201,20,Male,10.41,5.65,4.85,13.58,Poor,High,5.34,5.93,No,Neutral,Yes +USER-05202,63,Female,11.42,3.09,2.14,8.49,Poor,Low,7.8,7.82,Yes,Negative,No +USER-05203,27,Male,10.38,5.1,1.72,8.47,Poor,High,5.96,7.21,Yes,Positive,No +USER-05204,27,Male,4.61,1.83,2.37,14.19,Fair,High,6.88,8.65,Yes,Neutral,No +USER-05205,65,Other,7.23,5.98,1.77,4.78,Excellent,Low,4.27,2.68,Yes,Neutral,Yes +USER-05206,36,Male,5.93,3.0,4.49,14.85,Excellent,Low,5.31,5.96,No,Negative,No +USER-05207,18,Other,3.93,7.67,4.52,4.44,Excellent,Low,4.41,0.14,Yes,Neutral,No +USER-05208,53,Other,5.85,0.91,3.93,7.93,Poor,Medium,6.47,9.18,Yes,Neutral,No +USER-05209,43,Other,5.73,4.04,4.81,13.03,Poor,Medium,7.98,3.79,Yes,Neutral,No +USER-05210,29,Male,4.67,4.27,0.68,8.73,Good,High,6.03,0.12,No,Positive,Yes +USER-05211,50,Male,11.75,3.59,2.89,1.45,Poor,Medium,7.24,1.24,No,Positive,Yes +USER-05212,37,Male,7.47,0.55,4.08,5.16,Poor,Low,4.56,3.38,Yes,Negative,No +USER-05213,28,Other,3.8,3.74,1.85,6.68,Poor,Low,8.76,8.57,Yes,Negative,Yes +USER-05214,22,Female,5.05,3.54,4.72,2.87,Fair,Medium,8.61,1.33,No,Positive,No +USER-05215,18,Female,3.35,7.2,3.35,6.76,Good,Medium,8.25,4.8,Yes,Positive,No +USER-05216,48,Male,11.83,2.21,3.18,2.09,Poor,High,4.59,8.37,Yes,Neutral,No +USER-05217,49,Female,9.56,7.27,0.69,15.0,Excellent,Low,4.72,8.0,Yes,Positive,Yes +USER-05218,29,Female,8.36,1.57,3.79,12.52,Poor,Low,5.4,1.42,Yes,Neutral,Yes +USER-05219,60,Female,6.51,5.71,2.67,10.3,Poor,High,8.82,6.16,No,Positive,No +USER-05220,30,Male,5.52,4.37,4.71,11.6,Poor,Low,4.61,5.68,No,Negative,Yes +USER-05221,59,Other,10.8,3.78,4.12,4.06,Excellent,Low,8.16,3.45,No,Negative,No +USER-05222,40,Female,10.92,6.08,0.85,12.42,Excellent,High,6.08,3.15,No,Neutral,No +USER-05223,62,Other,10.01,7.49,4.56,11.11,Fair,Medium,8.19,3.63,No,Negative,No +USER-05224,43,Male,10.53,5.63,2.68,1.62,Excellent,High,4.88,0.55,No,Neutral,Yes +USER-05225,34,Male,3.66,4.15,0.35,12.63,Fair,Medium,8.07,4.16,Yes,Neutral,No +USER-05226,63,Other,4.19,5.93,2.34,2.75,Good,High,8.24,9.09,No,Negative,No +USER-05227,44,Other,5.38,6.64,2.79,3.8,Poor,High,8.55,6.77,No,Neutral,Yes +USER-05228,53,Female,5.78,2.21,3.96,4.61,Poor,Medium,6.83,9.17,No,Positive,No +USER-05229,58,Other,4.72,5.87,0.84,10.5,Poor,Low,6.44,6.31,No,Negative,Yes +USER-05230,26,Female,10.53,0.3,0.58,12.04,Fair,High,8.55,1.79,Yes,Negative,Yes +USER-05231,39,Male,8.87,6.58,1.76,7.17,Poor,Low,7.07,5.76,Yes,Neutral,No +USER-05232,43,Other,5.24,5.94,3.01,9.48,Fair,High,5.86,3.71,Yes,Neutral,Yes +USER-05233,18,Female,9.45,1.81,1.82,5.13,Poor,Low,4.29,3.62,No,Positive,Yes +USER-05234,44,Female,10.15,2.05,3.24,7.9,Good,Medium,7.32,9.49,Yes,Negative,No +USER-05235,21,Male,1.16,7.64,2.29,2.84,Poor,High,6.28,7.14,Yes,Neutral,No +USER-05236,31,Female,9.81,3.99,3.94,8.35,Excellent,High,7.21,6.81,Yes,Neutral,Yes +USER-05237,28,Other,2.24,4.35,0.14,5.88,Fair,Low,7.58,3.29,Yes,Negative,No +USER-05238,25,Female,1.69,3.24,3.77,8.14,Fair,High,4.92,2.62,Yes,Positive,No +USER-05239,51,Male,9.54,7.1,3.87,10.47,Good,High,5.45,0.34,No,Negative,Yes +USER-05240,46,Other,2.64,3.02,1.89,10.11,Excellent,High,7.8,4.01,Yes,Negative,Yes +USER-05241,55,Male,2.25,2.13,3.47,10.58,Fair,Medium,4.67,8.53,No,Positive,Yes +USER-05242,65,Male,1.6,7.94,1.7,6.06,Excellent,High,4.19,4.44,Yes,Positive,Yes +USER-05243,53,Female,6.42,0.15,3.93,6.06,Excellent,Medium,4.34,2.36,No,Positive,Yes +USER-05244,48,Other,5.29,2.98,3.77,3.19,Good,Medium,5.87,8.58,No,Positive,No +USER-05245,31,Male,8.61,3.03,4.04,11.4,Poor,Low,4.26,7.2,No,Negative,No +USER-05246,29,Other,2.83,1.94,1.34,7.14,Fair,High,8.86,0.99,Yes,Neutral,No +USER-05247,28,Other,10.59,4.66,2.81,14.3,Fair,Medium,4.14,1.87,No,Negative,No +USER-05248,34,Female,6.11,6.65,0.89,5.72,Excellent,Low,7.7,0.35,Yes,Positive,Yes +USER-05249,52,Female,11.06,1.08,2.35,6.68,Fair,High,7.85,6.02,No,Negative,No +USER-05250,54,Other,9.55,4.03,1.38,11.78,Excellent,Medium,6.36,9.99,Yes,Negative,No +USER-05251,21,Female,3.2,7.43,1.22,6.25,Fair,Medium,7.26,0.06,Yes,Neutral,Yes +USER-05252,43,Male,8.51,3.47,4.39,14.39,Poor,High,8.23,8.13,No,Neutral,Yes +USER-05253,33,Other,4.43,0.31,1.74,14.44,Fair,Low,7.94,6.09,Yes,Positive,No +USER-05254,36,Female,5.8,1.46,3.36,2.6,Excellent,High,5.87,3.95,Yes,Positive,Yes +USER-05255,46,Female,7.43,1.4,1.07,6.61,Fair,Medium,7.14,9.61,No,Neutral,No +USER-05256,25,Other,2.18,6.63,4.03,13.44,Good,Medium,6.95,3.35,No,Neutral,Yes +USER-05257,29,Male,6.61,0.43,3.0,5.29,Excellent,High,6.93,7.62,No,Positive,Yes +USER-05258,28,Male,11.48,3.56,4.84,4.94,Good,Low,6.7,7.49,No,Positive,No +USER-05259,64,Male,1.58,6.56,4.97,10.71,Excellent,Medium,5.5,0.41,No,Positive,Yes +USER-05260,42,Other,7.47,1.34,4.02,4.56,Fair,Medium,4.58,5.6,Yes,Neutral,No +USER-05261,19,Female,3.14,4.4,2.28,4.06,Excellent,High,4.17,7.92,No,Neutral,No +USER-05262,42,Female,8.22,1.06,2.0,2.09,Fair,Low,7.66,1.22,Yes,Negative,Yes +USER-05263,62,Other,8.09,3.09,4.31,9.14,Poor,Low,8.22,2.24,Yes,Positive,Yes +USER-05264,28,Other,4.97,1.23,0.61,5.08,Good,Medium,5.5,4.56,Yes,Neutral,No +USER-05265,23,Female,3.78,0.64,0.43,8.36,Good,Medium,4.7,7.86,Yes,Neutral,No +USER-05266,32,Female,4.51,0.02,4.72,4.28,Excellent,High,6.31,3.65,No,Positive,Yes +USER-05267,63,Female,6.69,3.11,3.48,11.13,Poor,Low,4.56,5.6,Yes,Positive,Yes +USER-05268,26,Male,7.32,3.72,4.51,2.01,Poor,Low,8.45,4.22,No,Negative,No +USER-05269,48,Other,5.86,7.51,4.75,13.45,Fair,Medium,5.14,6.64,No,Positive,Yes +USER-05270,26,Other,1.02,0.02,0.47,11.85,Poor,Medium,8.76,7.96,Yes,Negative,No +USER-05271,47,Male,10.89,5.48,1.6,8.6,Poor,High,7.38,1.76,No,Negative,Yes +USER-05272,35,Male,2.08,2.21,2.96,7.37,Fair,Low,4.94,1.66,Yes,Negative,Yes +USER-05273,44,Female,1.1,0.92,1.34,13.34,Good,Low,7.85,2.91,No,Neutral,No +USER-05274,26,Female,6.84,4.21,2.46,5.94,Excellent,Low,6.81,2.26,No,Positive,Yes +USER-05275,65,Female,2.45,2.29,4.51,3.83,Fair,Medium,8.08,2.74,No,Negative,No +USER-05276,41,Female,8.82,4.69,0.25,10.06,Good,Medium,7.33,6.0,Yes,Negative,No +USER-05277,18,Female,11.28,4.95,4.17,7.1,Poor,Medium,4.95,3.39,Yes,Negative,Yes +USER-05278,54,Other,1.38,7.42,0.84,12.4,Good,High,4.67,0.45,Yes,Positive,No +USER-05279,27,Other,6.36,7.9,2.46,7.29,Excellent,High,8.84,9.06,Yes,Neutral,No +USER-05280,63,Male,4.61,3.76,1.74,14.54,Excellent,Low,4.13,4.21,No,Positive,No +USER-05281,56,Male,8.92,6.77,2.16,8.95,Poor,Medium,5.43,9.53,Yes,Neutral,No +USER-05282,44,Other,1.51,3.39,3.26,7.59,Fair,High,8.92,0.84,Yes,Positive,No +USER-05283,63,Male,1.51,4.0,2.75,12.27,Fair,High,4.9,1.45,Yes,Negative,No +USER-05284,40,Male,5.3,2.55,1.0,5.54,Good,High,6.39,9.09,Yes,Negative,No +USER-05285,51,Male,8.09,4.14,2.77,14.66,Excellent,Medium,5.14,4.55,Yes,Neutral,Yes +USER-05286,55,Female,10.32,4.48,4.0,2.06,Excellent,High,5.26,9.51,Yes,Negative,Yes +USER-05287,54,Female,9.17,1.48,4.81,5.82,Poor,High,6.79,9.76,Yes,Positive,Yes +USER-05288,61,Male,9.99,3.47,1.77,9.89,Poor,High,5.07,1.09,No,Positive,Yes +USER-05289,49,Other,11.72,3.46,1.37,13.45,Excellent,Low,5.54,5.08,Yes,Neutral,No +USER-05290,24,Other,6.18,0.77,2.95,10.74,Fair,Low,7.45,1.0,Yes,Negative,Yes +USER-05291,48,Female,1.52,7.64,0.69,9.59,Excellent,High,7.38,7.49,Yes,Positive,Yes +USER-05292,25,Female,4.46,5.21,3.59,2.06,Good,Low,4.94,7.34,Yes,Negative,No +USER-05293,47,Other,11.89,1.75,2.82,6.8,Fair,High,4.32,6.58,No,Neutral,No +USER-05294,55,Male,2.96,2.34,2.97,5.03,Poor,High,5.63,3.24,Yes,Positive,Yes +USER-05295,42,Other,8.4,0.99,1.07,3.66,Poor,Low,7.93,6.83,Yes,Positive,Yes +USER-05296,64,Male,6.01,3.84,0.22,6.07,Excellent,Medium,4.94,7.17,Yes,Neutral,No +USER-05297,45,Male,6.26,0.77,0.65,9.12,Fair,Medium,6.47,5.83,Yes,Positive,No +USER-05298,21,Male,7.51,0.54,0.57,7.98,Excellent,Medium,8.35,6.84,No,Neutral,Yes +USER-05299,52,Other,6.97,6.02,0.91,4.76,Excellent,High,5.03,8.25,Yes,Neutral,No +USER-05300,19,Other,5.26,5.73,4.32,6.53,Excellent,High,7.62,0.69,Yes,Negative,Yes +USER-05301,34,Other,5.18,1.53,4.52,12.98,Excellent,Medium,7.51,3.0,Yes,Negative,No +USER-05302,24,Male,6.6,0.49,4.75,9.19,Excellent,Low,4.06,6.06,No,Positive,No +USER-05303,18,Male,4.37,1.68,4.39,11.77,Poor,High,6.68,4.94,Yes,Negative,No +USER-05304,28,Female,7.44,7.14,2.99,11.2,Fair,High,5.06,6.36,Yes,Negative,No +USER-05305,49,Female,3.57,4.49,3.76,10.92,Excellent,Low,7.04,0.18,No,Positive,No +USER-05306,20,Other,8.49,4.49,2.84,11.91,Good,Low,6.17,8.11,No,Positive,No +USER-05307,23,Female,5.93,1.79,1.46,2.9,Poor,High,5.43,4.41,No,Positive,Yes +USER-05308,32,Female,11.48,1.63,2.27,14.92,Excellent,High,8.16,0.96,Yes,Positive,No +USER-05309,38,Other,3.92,5.07,2.38,6.77,Fair,Low,5.11,2.27,No,Neutral,No +USER-05310,27,Female,6.25,1.44,1.83,7.11,Good,Medium,5.54,2.22,No,Positive,No +USER-05311,40,Male,10.36,7.32,3.34,14.81,Good,Low,5.09,3.65,No,Positive,No +USER-05312,52,Female,3.36,7.7,2.24,1.19,Fair,Low,8.49,1.5,No,Neutral,Yes +USER-05313,64,Male,2.66,1.52,3.87,4.94,Good,Medium,4.32,9.58,Yes,Neutral,No +USER-05314,60,Female,7.75,5.71,1.01,14.69,Excellent,High,5.68,9.93,No,Negative,No +USER-05315,34,Male,8.4,3.33,2.31,2.55,Excellent,High,5.41,3.48,Yes,Positive,Yes +USER-05316,20,Male,6.09,7.38,3.28,5.05,Excellent,High,8.54,0.9,No,Positive,Yes +USER-05317,33,Male,2.81,4.3,2.07,7.49,Poor,Low,5.54,2.91,No,Neutral,Yes +USER-05318,18,Female,7.91,2.96,4.6,6.54,Fair,High,7.28,1.16,No,Neutral,Yes +USER-05319,35,Female,4.81,0.6,1.55,6.25,Poor,High,6.84,5.54,Yes,Positive,Yes +USER-05320,23,Other,2.25,7.49,4.12,5.45,Good,Medium,8.8,8.39,Yes,Positive,Yes +USER-05321,30,Male,9.12,0.44,2.21,12.97,Fair,Medium,8.18,6.21,Yes,Neutral,No +USER-05322,54,Female,5.52,0.9,2.08,10.18,Poor,Medium,8.42,7.26,No,Positive,Yes +USER-05323,65,Female,4.31,6.17,1.79,13.17,Poor,High,6.74,0.42,No,Positive,No +USER-05324,22,Other,4.25,7.73,2.2,10.44,Excellent,High,4.94,1.78,No,Positive,Yes +USER-05325,33,Female,8.16,0.85,3.08,10.69,Fair,Low,5.4,6.79,Yes,Negative,Yes +USER-05326,28,Female,6.66,2.67,4.09,14.28,Good,Medium,6.01,1.7,No,Negative,Yes +USER-05327,60,Female,7.09,2.6,3.12,4.76,Good,Low,6.39,5.79,Yes,Neutral,No +USER-05328,36,Other,4.98,1.06,1.66,12.24,Excellent,Low,4.74,6.99,No,Negative,Yes +USER-05329,59,Female,5.84,5.84,3.23,5.14,Good,Low,7.64,3.13,No,Negative,No +USER-05330,33,Female,10.01,6.31,2.41,2.36,Poor,Low,4.09,6.91,Yes,Negative,No +USER-05331,29,Other,11.78,1.94,3.12,7.09,Good,High,6.74,3.6,Yes,Negative,No +USER-05332,19,Male,1.56,2.24,2.82,2.97,Excellent,Low,8.26,7.65,No,Positive,Yes +USER-05333,33,Other,1.11,1.26,4.3,2.29,Good,High,8.0,2.28,No,Negative,Yes +USER-05334,48,Female,3.98,7.29,2.0,6.65,Poor,Medium,5.83,0.37,Yes,Positive,Yes +USER-05335,26,Other,6.4,0.94,1.05,4.27,Excellent,Medium,5.49,8.51,No,Negative,No +USER-05336,18,Female,3.29,7.89,1.84,10.85,Good,High,8.97,1.49,No,Neutral,Yes +USER-05337,63,Other,2.32,5.91,3.97,3.58,Good,Low,7.85,2.35,No,Negative,Yes +USER-05338,36,Male,3.47,3.45,0.17,13.7,Fair,High,7.35,3.41,Yes,Neutral,Yes +USER-05339,38,Male,9.35,3.35,2.61,10.34,Excellent,Medium,8.96,8.23,Yes,Negative,No +USER-05340,42,Male,5.53,6.79,3.99,8.91,Fair,High,7.84,3.19,No,Positive,No +USER-05341,27,Male,6.22,5.53,2.67,3.28,Good,High,5.98,9.79,No,Negative,No +USER-05342,42,Other,1.29,7.76,1.23,3.11,Poor,High,7.29,8.32,Yes,Positive,No +USER-05343,25,Female,11.82,1.11,0.18,3.67,Poor,Medium,8.88,5.75,No,Positive,Yes +USER-05344,59,Male,10.45,5.7,4.28,3.55,Good,High,5.11,5.28,No,Positive,Yes +USER-05345,34,Female,4.75,1.89,4.41,5.41,Good,Low,8.16,3.49,No,Negative,Yes +USER-05346,39,Female,1.39,3.14,2.58,11.39,Good,Low,8.19,1.6,No,Positive,Yes +USER-05347,56,Other,4.64,0.42,4.31,3.23,Excellent,High,6.79,6.86,No,Negative,No +USER-05348,51,Male,2.93,3.25,4.59,7.06,Excellent,High,6.55,8.13,Yes,Positive,No +USER-05349,46,Male,8.31,5.12,1.63,12.43,Good,Low,4.85,7.7,Yes,Neutral,No +USER-05350,28,Female,2.93,5.78,1.33,3.45,Poor,Low,8.34,4.86,No,Negative,Yes +USER-05351,40,Male,11.75,5.03,1.28,6.01,Good,Low,5.13,0.14,Yes,Neutral,No +USER-05352,34,Male,9.87,0.43,4.16,9.76,Excellent,High,4.33,5.35,Yes,Neutral,Yes +USER-05353,53,Other,1.79,1.09,4.59,12.05,Good,Low,7.49,1.01,No,Neutral,Yes +USER-05354,33,Male,5.79,1.79,3.4,9.23,Poor,High,8.75,5.09,Yes,Positive,Yes +USER-05355,59,Other,9.33,7.38,3.31,3.35,Good,Low,4.5,7.52,No,Positive,Yes +USER-05356,62,Male,6.19,7.94,2.08,6.32,Good,Medium,5.48,7.41,No,Negative,No +USER-05357,54,Female,10.19,1.1,0.61,12.03,Poor,Medium,4.16,4.47,No,Neutral,No +USER-05358,58,Other,7.24,3.13,1.2,7.6,Fair,Medium,4.32,2.25,No,Neutral,No +USER-05359,23,Male,6.51,1.83,3.6,3.05,Fair,Low,7.97,2.62,No,Neutral,Yes +USER-05360,29,Other,11.99,2.69,3.59,12.0,Good,Medium,6.12,6.54,No,Negative,No +USER-05361,35,Female,11.28,6.86,1.56,8.22,Fair,Low,7.11,9.34,Yes,Neutral,Yes +USER-05362,47,Male,9.26,1.44,3.13,3.16,Fair,High,7.62,3.27,No,Positive,No +USER-05363,28,Other,5.74,1.56,1.65,9.54,Excellent,Medium,6.56,2.89,No,Negative,Yes +USER-05364,18,Female,7.47,0.95,1.14,3.37,Good,Low,6.07,7.67,No,Negative,No +USER-05365,45,Male,6.5,1.58,2.87,3.26,Fair,Medium,8.18,6.61,Yes,Positive,No +USER-05366,38,Female,9.72,1.84,3.47,12.81,Good,Medium,5.63,1.07,No,Positive,No +USER-05367,54,Other,10.53,3.05,1.97,11.55,Fair,Medium,5.96,5.04,No,Neutral,No +USER-05368,64,Other,4.61,0.87,1.71,2.26,Poor,High,5.36,0.2,Yes,Neutral,Yes +USER-05369,58,Female,8.56,1.38,4.93,2.06,Good,Medium,6.89,5.07,No,Neutral,Yes +USER-05370,19,Male,9.44,3.31,0.54,6.31,Good,High,5.44,3.38,Yes,Negative,Yes +USER-05371,33,Male,8.32,2.27,4.68,12.83,Excellent,Medium,4.06,4.59,Yes,Neutral,No +USER-05372,19,Male,11.42,7.32,0.12,3.33,Poor,High,7.94,6.86,No,Negative,No +USER-05373,33,Male,4.5,1.58,4.32,6.42,Poor,Medium,8.5,7.44,No,Negative,No +USER-05374,34,Other,8.27,2.13,1.26,9.78,Good,Low,4.5,9.74,No,Negative,Yes +USER-05375,19,Female,3.36,4.54,4.31,14.23,Poor,High,8.43,9.3,No,Neutral,Yes +USER-05376,35,Female,3.96,0.65,4.77,8.23,Excellent,Medium,8.73,3.74,Yes,Negative,No +USER-05377,30,Other,7.96,1.26,4.75,13.54,Good,High,4.61,0.01,Yes,Negative,Yes +USER-05378,63,Female,9.78,0.5,4.52,14.91,Poor,Low,4.55,2.36,No,Neutral,No +USER-05379,37,Other,9.58,1.13,2.62,10.48,Good,Low,4.32,7.88,No,Positive,Yes +USER-05380,21,Other,4.45,0.1,4.62,15.0,Excellent,Medium,4.53,0.15,No,Negative,No +USER-05381,57,Female,4.74,5.05,1.98,7.1,Good,High,5.99,0.89,Yes,Negative,No +USER-05382,40,Other,5.87,1.59,2.37,3.4,Good,High,8.44,8.37,No,Positive,No +USER-05383,27,Other,11.66,3.28,0.05,2.53,Poor,Low,4.38,9.72,Yes,Positive,Yes +USER-05384,23,Male,7.69,2.99,0.16,8.49,Good,Medium,8.69,0.5,No,Negative,Yes +USER-05385,20,Female,3.94,0.41,4.17,1.92,Excellent,Low,4.55,1.44,Yes,Neutral,No +USER-05386,64,Male,6.61,0.97,0.52,12.79,Good,Medium,5.04,0.12,No,Neutral,Yes +USER-05387,55,Female,6.75,4.66,3.65,10.6,Fair,Medium,7.19,6.42,Yes,Neutral,Yes +USER-05388,20,Male,3.27,6.08,0.22,13.35,Excellent,High,6.08,5.57,No,Positive,No +USER-05389,25,Female,11.28,0.71,2.66,12.27,Excellent,Low,7.06,2.81,Yes,Neutral,Yes +USER-05390,36,Female,7.19,2.15,4.87,13.7,Fair,High,8.52,3.24,Yes,Positive,Yes +USER-05391,46,Other,1.56,0.6,4.02,14.14,Fair,Low,4.55,2.44,No,Neutral,No +USER-05392,48,Female,9.13,2.23,2.95,6.81,Fair,High,6.69,0.04,No,Positive,No +USER-05393,42,Female,5.92,7.67,2.85,12.44,Excellent,Low,6.46,1.9,Yes,Negative,Yes +USER-05394,36,Male,9.9,0.68,3.83,14.14,Excellent,Medium,5.37,0.74,No,Neutral,Yes +USER-05395,43,Female,8.28,1.71,1.4,6.05,Good,Medium,4.07,7.86,No,Positive,No +USER-05396,50,Male,5.46,2.66,3.42,6.81,Poor,High,7.4,8.99,Yes,Positive,Yes +USER-05397,52,Male,8.1,0.89,4.76,6.06,Good,Low,7.46,8.21,Yes,Positive,Yes +USER-05398,31,Male,10.85,3.56,1.68,14.47,Poor,High,8.24,3.7,Yes,Neutral,No +USER-05399,18,Other,11.55,5.93,4.52,9.12,Fair,Low,8.66,5.46,No,Negative,No +USER-05400,29,Female,10.95,1.11,2.84,9.29,Excellent,Low,5.49,8.3,Yes,Positive,Yes +USER-05401,22,Male,9.97,5.28,1.75,9.76,Good,Low,6.72,1.37,No,Positive,Yes +USER-05402,28,Female,1.06,5.25,2.18,8.47,Excellent,Medium,6.39,2.24,Yes,Positive,Yes +USER-05403,34,Female,9.66,4.19,3.56,8.97,Fair,Medium,7.22,0.67,Yes,Neutral,Yes +USER-05404,65,Female,1.19,1.1,0.46,9.06,Excellent,Medium,8.37,4.48,Yes,Negative,Yes +USER-05405,37,Male,4.99,3.98,4.17,10.63,Excellent,High,6.43,4.32,No,Negative,No +USER-05406,61,Male,11.19,2.33,4.51,13.11,Fair,High,8.77,4.25,No,Negative,Yes +USER-05407,37,Female,6.03,7.8,0.54,10.89,Good,Low,7.62,6.36,Yes,Positive,Yes +USER-05408,33,Female,8.9,6.25,0.51,5.01,Excellent,Low,7.8,5.02,Yes,Negative,Yes +USER-05409,22,Other,11.66,0.87,2.05,6.17,Good,Low,4.37,2.94,Yes,Neutral,No +USER-05410,55,Other,1.58,1.54,3.4,4.16,Poor,Low,5.43,0.77,No,Negative,No +USER-05411,26,Other,5.82,4.49,4.28,13.62,Poor,Medium,6.04,2.43,Yes,Positive,No +USER-05412,63,Other,6.03,1.72,1.02,4.68,Excellent,Medium,7.12,6.94,Yes,Neutral,Yes +USER-05413,49,Other,2.6,0.14,2.77,11.79,Poor,Medium,8.32,2.53,Yes,Neutral,Yes +USER-05414,37,Male,5.68,7.7,0.81,13.07,Good,Medium,7.26,3.01,Yes,Negative,No +USER-05415,61,Other,3.56,7.6,4.36,3.71,Excellent,High,4.93,8.31,No,Negative,Yes +USER-05416,36,Other,11.02,4.61,0.84,2.23,Poor,High,7.22,1.91,No,Positive,No +USER-05417,39,Other,6.68,2.19,4.55,1.41,Poor,Medium,8.65,5.66,No,Neutral,Yes +USER-05418,28,Male,2.24,6.4,2.75,6.35,Poor,Low,6.67,5.8,Yes,Positive,Yes +USER-05419,47,Female,1.81,4.45,2.76,8.48,Good,Medium,8.91,1.93,Yes,Negative,No +USER-05420,58,Other,6.41,6.98,0.48,6.16,Poor,Low,7.64,4.92,Yes,Negative,No +USER-05421,27,Other,10.43,0.58,2.7,8.25,Fair,High,6.22,8.33,No,Positive,No +USER-05422,25,Male,8.07,4.24,4.84,8.13,Fair,Medium,8.73,6.18,No,Neutral,No +USER-05423,26,Male,9.41,5.08,0.38,5.0,Poor,Medium,4.93,2.66,Yes,Positive,Yes +USER-05424,39,Male,9.94,2.51,4.08,2.03,Fair,Medium,7.94,7.51,Yes,Neutral,No +USER-05425,19,Male,2.35,2.79,1.49,11.45,Fair,Medium,4.99,5.47,Yes,Neutral,No +USER-05426,57,Other,3.94,0.61,2.94,8.65,Fair,Medium,7.56,4.88,Yes,Neutral,No +USER-05427,49,Other,2.3,2.47,4.91,3.76,Poor,High,5.67,6.49,No,Neutral,No +USER-05428,25,Male,7.28,1.73,4.08,1.72,Fair,High,8.61,1.15,No,Negative,No +USER-05429,64,Male,2.33,4.19,0.52,5.0,Fair,Low,8.44,2.38,No,Positive,Yes +USER-05430,52,Other,10.16,7.81,0.26,14.64,Good,Medium,7.11,0.65,No,Neutral,Yes +USER-05431,63,Other,2.87,6.94,3.29,11.73,Poor,High,7.08,6.09,No,Negative,Yes +USER-05432,22,Female,3.19,6.38,4.73,10.69,Poor,Low,6.61,2.5,Yes,Positive,No +USER-05433,33,Female,7.62,0.2,3.65,4.84,Excellent,High,6.56,0.5,No,Negative,No +USER-05434,52,Female,2.08,4.15,3.05,1.71,Excellent,High,8.87,2.8,Yes,Neutral,No +USER-05435,45,Female,10.45,3.22,3.1,13.34,Good,Medium,4.47,0.72,No,Positive,No +USER-05436,40,Male,8.9,7.81,3.01,5.12,Fair,High,8.82,2.63,No,Neutral,No +USER-05437,28,Male,8.46,3.43,2.46,4.73,Fair,Medium,5.12,3.65,No,Negative,No +USER-05438,48,Other,5.34,6.24,4.91,6.55,Poor,Low,7.83,5.1,Yes,Positive,No +USER-05439,30,Female,7.17,6.83,3.77,2.56,Excellent,Low,6.36,8.19,Yes,Positive,No +USER-05440,48,Male,11.6,6.65,2.12,2.92,Poor,Medium,6.74,6.55,Yes,Positive,No +USER-05441,44,Other,8.91,1.94,3.72,14.95,Poor,Medium,8.43,0.5,No,Neutral,Yes +USER-05442,56,Female,3.19,0.22,4.56,4.0,Good,Medium,6.23,5.86,No,Negative,Yes +USER-05443,19,Other,6.17,5.97,3.13,9.42,Poor,Medium,8.6,0.37,Yes,Neutral,Yes +USER-05444,36,Female,7.27,5.8,3.28,8.59,Poor,Low,4.89,9.07,No,Negative,No +USER-05445,33,Male,3.37,1.41,1.98,11.29,Good,Medium,5.0,1.41,No,Negative,Yes +USER-05446,59,Other,5.36,1.59,2.67,3.49,Excellent,Medium,5.15,0.18,No,Positive,No +USER-05447,40,Other,1.41,4.53,4.6,7.49,Good,Medium,6.28,2.24,Yes,Negative,No +USER-05448,35,Female,7.97,0.29,1.54,11.36,Poor,Medium,4.74,0.65,Yes,Negative,Yes +USER-05449,53,Female,9.3,6.11,3.51,6.57,Fair,High,4.53,2.8,Yes,Negative,Yes +USER-05450,53,Female,1.73,3.45,0.39,12.43,Fair,High,6.11,4.25,No,Neutral,Yes +USER-05451,57,Other,1.52,2.71,2.12,12.59,Poor,Low,5.14,8.51,No,Positive,Yes +USER-05452,45,Male,2.59,5.33,0.98,12.69,Fair,High,7.04,1.18,No,Positive,Yes +USER-05453,65,Male,11.95,7.77,2.28,3.12,Poor,Medium,4.64,8.21,Yes,Positive,Yes +USER-05454,45,Male,5.91,7.47,0.33,12.88,Poor,Medium,5.51,5.01,Yes,Negative,Yes +USER-05455,47,Male,5.99,6.77,4.06,8.29,Fair,Low,8.74,8.05,Yes,Neutral,No +USER-05456,43,Male,6.38,3.72,0.17,7.8,Excellent,Low,7.77,4.47,No,Positive,Yes +USER-05457,62,Other,11.11,4.07,2.32,6.11,Good,Medium,5.04,2.96,Yes,Neutral,Yes +USER-05458,24,Other,1.31,7.5,4.79,9.7,Excellent,Medium,7.99,0.91,Yes,Positive,Yes +USER-05459,23,Female,10.93,5.07,0.29,9.27,Fair,Medium,6.98,1.68,Yes,Negative,No +USER-05460,35,Other,2.81,6.82,1.99,9.77,Fair,High,8.23,2.36,Yes,Negative,No +USER-05461,21,Other,6.03,0.39,4.19,9.01,Poor,Low,7.79,6.72,No,Neutral,No +USER-05462,58,Other,7.66,1.43,4.35,2.35,Poor,High,6.6,0.6,Yes,Neutral,Yes +USER-05463,49,Female,2.78,1.02,0.08,11.88,Excellent,High,4.57,7.44,No,Neutral,Yes +USER-05464,46,Male,11.44,6.4,2.05,6.96,Good,Low,4.58,4.91,Yes,Neutral,Yes +USER-05465,50,Other,2.26,2.29,1.83,1.39,Poor,Medium,8.36,5.5,Yes,Neutral,No +USER-05466,49,Other,4.15,5.65,0.63,4.04,Excellent,High,7.08,9.73,No,Negative,Yes +USER-05467,40,Male,6.41,2.29,2.13,4.45,Good,Low,7.55,0.46,Yes,Negative,No +USER-05468,45,Female,6.29,5.18,2.51,9.06,Good,High,7.69,1.13,No,Neutral,Yes +USER-05469,50,Other,4.92,7.65,1.63,13.38,Excellent,Medium,8.33,8.77,No,Neutral,No +USER-05470,23,Female,6.72,6.29,2.6,6.59,Poor,Low,4.68,9.59,No,Neutral,No +USER-05471,61,Other,7.97,3.32,2.89,6.51,Good,Medium,6.29,2.83,Yes,Neutral,Yes +USER-05472,59,Other,2.9,6.42,0.51,3.2,Good,Medium,4.37,3.74,No,Positive,No +USER-05473,49,Female,7.53,1.97,0.78,5.16,Poor,Medium,7.76,8.77,No,Neutral,No +USER-05474,50,Female,8.52,7.7,3.19,14.28,Fair,High,7.2,3.85,Yes,Positive,No +USER-05475,45,Female,4.46,1.76,0.54,3.36,Excellent,Low,7.98,4.27,Yes,Positive,No +USER-05476,45,Female,4.0,3.43,2.33,1.87,Poor,Medium,6.98,1.02,Yes,Positive,Yes +USER-05477,51,Male,4.78,2.58,1.64,6.65,Poor,High,5.08,3.37,No,Positive,No +USER-05478,50,Female,3.08,1.25,2.21,11.18,Excellent,High,6.56,5.11,No,Neutral,No +USER-05479,18,Female,4.02,2.31,2.35,5.59,Fair,High,7.15,0.78,Yes,Negative,No +USER-05480,53,Female,9.33,7.71,4.67,14.35,Poor,High,6.87,8.68,No,Neutral,No +USER-05481,39,Female,3.0,0.93,2.11,14.17,Good,High,6.43,1.03,No,Positive,Yes +USER-05482,57,Female,8.82,2.44,4.75,11.56,Excellent,Low,5.25,9.33,Yes,Neutral,No +USER-05483,62,Male,6.95,1.45,3.51,14.4,Good,High,5.31,8.7,Yes,Positive,Yes +USER-05484,44,Female,4.51,0.16,4.15,2.75,Poor,High,6.07,7.43,Yes,Positive,No +USER-05485,19,Female,8.89,4.82,2.04,3.27,Poor,High,8.59,2.77,No,Negative,No +USER-05486,29,Other,6.22,1.81,3.1,1.2,Excellent,Low,4.59,1.38,No,Neutral,Yes +USER-05487,48,Female,8.24,2.27,3.51,11.94,Good,High,4.57,3.7,Yes,Negative,No +USER-05488,23,Male,1.62,4.46,3.29,11.75,Fair,Low,7.14,0.57,Yes,Positive,No +USER-05489,26,Other,6.59,2.9,4.28,11.73,Poor,High,8.92,7.84,No,Positive,No +USER-05490,20,Female,10.21,0.54,4.0,11.88,Good,High,4.66,6.38,Yes,Neutral,Yes +USER-05491,28,Female,10.37,2.2,3.08,4.95,Poor,Medium,5.8,5.91,No,Neutral,No +USER-05492,52,Other,5.44,2.58,0.28,9.46,Fair,High,8.34,9.28,Yes,Positive,Yes +USER-05493,19,Male,8.78,5.63,3.76,9.93,Excellent,High,7.57,2.96,Yes,Positive,No +USER-05494,44,Female,1.01,5.86,3.94,8.1,Fair,Low,4.49,5.44,No,Neutral,Yes +USER-05495,60,Male,1.21,7.88,0.45,12.45,Excellent,Medium,7.22,1.92,Yes,Positive,No +USER-05496,26,Female,11.59,1.22,2.41,14.64,Fair,Low,4.15,9.01,Yes,Neutral,Yes +USER-05497,53,Other,1.53,6.35,4.83,11.65,Fair,High,6.75,8.34,No,Positive,Yes +USER-05498,33,Male,1.11,2.64,3.26,12.42,Poor,Medium,5.83,8.51,No,Neutral,No +USER-05499,33,Female,4.49,7.85,1.75,3.4,Good,Medium,7.18,3.84,No,Neutral,Yes +USER-05500,32,Female,3.42,5.17,2.64,13.79,Fair,Low,7.57,7.61,No,Neutral,Yes +USER-05501,57,Male,4.64,7.28,0.84,9.65,Good,High,6.08,7.63,No,Positive,Yes +USER-05502,52,Male,9.08,5.35,1.98,13.85,Excellent,High,6.82,3.83,No,Positive,No +USER-05503,45,Male,7.93,1.19,3.61,1.91,Good,Low,6.62,8.35,Yes,Negative,Yes +USER-05504,45,Male,2.03,4.87,0.69,6.73,Good,Medium,8.67,6.48,Yes,Positive,Yes +USER-05505,58,Other,5.09,6.93,3.31,2.18,Excellent,Medium,8.44,5.4,No,Positive,Yes +USER-05506,42,Other,11.52,4.12,2.23,3.16,Poor,Low,6.19,5.05,Yes,Neutral,No +USER-05507,34,Female,11.06,3.33,1.62,9.69,Good,Low,6.12,4.09,No,Positive,Yes +USER-05508,46,Male,8.77,3.35,3.15,12.89,Poor,Low,5.8,7.95,Yes,Neutral,No +USER-05509,58,Female,3.87,6.11,1.24,8.94,Fair,High,8.74,2.75,Yes,Positive,No +USER-05510,21,Female,8.74,3.96,3.17,11.18,Excellent,Medium,8.32,2.12,Yes,Positive,Yes +USER-05511,22,Male,11.27,4.2,2.85,7.04,Excellent,Medium,4.96,6.0,No,Positive,No +USER-05512,54,Female,11.71,0.58,1.07,4.88,Good,High,4.91,4.87,No,Neutral,Yes +USER-05513,29,Other,2.11,6.1,3.63,1.18,Poor,Medium,7.37,5.35,Yes,Neutral,No +USER-05514,57,Other,11.63,5.86,1.05,7.82,Excellent,High,6.99,1.71,No,Positive,Yes +USER-05515,54,Other,5.48,4.31,2.52,10.92,Excellent,Low,6.25,8.07,Yes,Negative,Yes +USER-05516,22,Female,2.73,4.99,3.21,3.64,Good,Low,5.93,4.44,Yes,Neutral,Yes +USER-05517,48,Other,8.09,1.77,3.73,11.06,Fair,Low,8.82,9.36,Yes,Positive,Yes +USER-05518,58,Other,9.42,7.13,4.83,11.14,Good,Medium,5.18,6.22,Yes,Neutral,Yes +USER-05519,49,Female,10.38,1.64,4.36,1.87,Excellent,High,7.29,3.97,No,Neutral,Yes +USER-05520,29,Female,5.91,4.02,3.0,1.36,Good,Medium,6.03,7.89,No,Neutral,Yes +USER-05521,51,Female,6.15,3.59,3.58,11.71,Fair,High,5.93,5.05,No,Negative,Yes +USER-05522,32,Male,10.24,6.44,4.22,13.1,Good,Low,5.37,2.45,No,Negative,Yes +USER-05523,23,Other,1.1,0.35,0.82,6.62,Excellent,High,6.12,6.33,Yes,Neutral,Yes +USER-05524,40,Other,2.05,4.4,1.84,7.01,Good,Low,6.36,0.18,No,Negative,No +USER-05525,52,Male,9.63,4.72,3.38,6.66,Fair,High,5.61,7.69,No,Negative,No +USER-05526,64,Other,10.34,7.61,0.49,1.24,Excellent,Low,4.55,0.28,No,Negative,Yes +USER-05527,35,Other,3.31,3.97,3.09,8.81,Good,Low,4.56,9.47,No,Neutral,Yes +USER-05528,55,Male,4.78,1.47,0.04,14.34,Poor,Medium,4.87,9.61,Yes,Negative,Yes +USER-05529,34,Male,8.02,3.78,0.81,1.17,Excellent,Low,4.76,3.69,No,Positive,No +USER-05530,38,Other,11.81,5.77,1.95,9.24,Poor,Medium,8.26,6.67,No,Positive,Yes +USER-05531,59,Male,9.89,5.25,0.46,3.34,Poor,High,6.08,9.74,Yes,Positive,Yes +USER-05532,29,Female,7.53,2.38,2.83,3.72,Fair,Medium,4.27,6.44,No,Positive,No +USER-05533,36,Other,5.13,2.55,4.39,7.79,Good,High,8.7,0.73,Yes,Positive,No +USER-05534,43,Other,5.72,0.36,4.46,3.39,Excellent,Medium,8.75,0.05,No,Negative,Yes +USER-05535,25,Male,9.52,2.13,3.18,9.42,Excellent,Medium,6.6,9.77,Yes,Negative,Yes +USER-05536,56,Female,3.39,3.36,3.61,11.88,Poor,Low,4.94,8.78,Yes,Negative,Yes +USER-05537,60,Other,10.12,1.72,0.15,10.42,Fair,High,6.67,4.83,Yes,Neutral,Yes +USER-05538,25,Female,2.43,3.87,2.22,9.59,Good,Low,8.59,3.89,No,Negative,No +USER-05539,60,Male,6.26,3.47,1.96,9.49,Fair,Medium,7.49,9.09,Yes,Negative,No +USER-05540,54,Other,7.1,3.69,4.37,4.67,Fair,Low,6.57,6.66,Yes,Neutral,Yes +USER-05541,61,Other,4.81,0.07,4.52,6.09,Fair,High,6.35,1.18,No,Neutral,Yes +USER-05542,60,Other,11.9,0.86,2.78,12.27,Good,Low,8.81,9.65,Yes,Negative,No +USER-05543,57,Female,1.38,7.3,3.97,9.71,Poor,High,4.36,6.75,Yes,Positive,Yes +USER-05544,52,Male,1.67,3.28,2.66,2.91,Excellent,Low,4.2,2.95,No,Positive,Yes +USER-05545,65,Female,9.35,1.02,1.49,12.51,Excellent,Low,4.15,9.38,No,Neutral,Yes +USER-05546,60,Male,2.23,6.07,3.28,8.24,Excellent,Low,6.62,4.8,Yes,Negative,Yes +USER-05547,54,Male,3.97,1.62,2.44,7.6,Excellent,Medium,8.55,9.85,No,Neutral,No +USER-05548,47,Female,3.39,2.73,1.06,8.5,Fair,Low,4.2,8.34,Yes,Neutral,Yes +USER-05549,49,Female,6.16,7.29,3.37,7.23,Poor,High,4.1,3.63,Yes,Positive,Yes +USER-05550,45,Other,2.58,6.96,0.27,4.19,Poor,Low,6.85,6.58,Yes,Negative,No +USER-05551,42,Male,1.34,6.2,4.26,12.21,Good,High,4.48,8.97,No,Negative,No +USER-05552,44,Male,7.47,3.98,3.77,1.83,Good,High,5.01,3.12,Yes,Neutral,No +USER-05553,51,Other,11.71,2.23,0.85,3.94,Poor,Medium,6.57,3.92,Yes,Positive,No +USER-05554,53,Other,4.47,5.79,2.21,2.22,Good,Medium,4.91,9.77,No,Neutral,Yes +USER-05555,60,Male,10.22,4.51,4.62,4.23,Fair,Medium,6.14,0.12,No,Negative,No +USER-05556,43,Other,2.53,2.19,0.19,8.6,Excellent,Medium,5.41,7.91,Yes,Positive,No +USER-05557,23,Other,9.25,1.51,3.64,10.74,Poor,Low,4.64,7.13,Yes,Negative,Yes +USER-05558,25,Other,9.75,4.02,2.33,2.5,Good,Low,5.54,6.39,No,Positive,No +USER-05559,45,Other,6.87,5.56,1.53,1.19,Good,High,5.21,3.14,No,Negative,No +USER-05560,18,Other,6.71,4.66,1.3,9.02,Excellent,Low,6.39,8.55,Yes,Positive,Yes +USER-05561,50,Female,11.09,3.12,3.25,3.12,Good,Low,7.01,6.28,Yes,Neutral,Yes +USER-05562,52,Female,10.86,2.86,4.46,2.91,Good,Medium,4.98,3.99,No,Positive,No +USER-05563,29,Other,3.14,7.91,4.6,9.39,Poor,Medium,6.16,3.07,No,Neutral,No +USER-05564,44,Female,9.25,3.07,3.87,1.46,Excellent,Low,5.39,3.07,No,Negative,No +USER-05565,37,Other,8.81,2.44,3.76,12.29,Excellent,High,8.12,0.39,No,Positive,No +USER-05566,23,Male,7.1,3.14,4.1,13.17,Good,Low,8.97,2.19,Yes,Positive,No +USER-05567,38,Male,2.6,5.21,2.46,3.96,Good,Medium,4.49,2.35,Yes,Neutral,No +USER-05568,64,Female,4.02,2.08,0.77,11.79,Fair,Medium,6.7,4.99,Yes,Negative,Yes +USER-05569,25,Other,11.14,6.46,1.31,5.3,Good,High,6.45,1.02,No,Negative,No +USER-05570,49,Female,4.04,2.6,1.01,4.64,Excellent,High,4.09,5.8,Yes,Positive,Yes +USER-05571,51,Male,7.21,4.21,4.8,4.63,Poor,Medium,6.6,0.47,Yes,Positive,No +USER-05572,27,Male,7.56,0.19,2.75,6.71,Fair,High,7.87,8.51,Yes,Positive,Yes +USER-05573,53,Other,6.53,1.52,3.37,6.14,Poor,High,5.87,3.98,Yes,Neutral,No +USER-05574,58,Male,6.53,6.34,0.94,1.68,Fair,Low,6.48,6.9,Yes,Negative,No +USER-05575,60,Male,5.52,5.18,2.11,5.07,Poor,Medium,8.5,2.94,No,Negative,Yes +USER-05576,24,Other,9.22,2.93,2.84,2.95,Good,High,5.88,8.19,Yes,Neutral,Yes +USER-05577,33,Male,2.67,7.56,2.64,3.04,Excellent,Low,4.85,5.67,Yes,Negative,No +USER-05578,57,Other,10.52,7.19,1.34,7.17,Excellent,Low,5.18,0.51,Yes,Neutral,No +USER-05579,65,Other,3.97,7.56,0.41,5.47,Poor,Low,4.31,6.43,No,Positive,No +USER-05580,41,Male,1.93,1.6,1.54,1.8,Fair,Low,5.59,1.91,Yes,Neutral,Yes +USER-05581,62,Other,7.16,4.64,2.57,3.55,Excellent,Medium,7.23,9.65,No,Positive,Yes +USER-05582,26,Other,1.24,3.97,3.42,2.96,Excellent,Low,4.08,2.7,Yes,Positive,No +USER-05583,49,Male,3.17,2.65,2.77,11.23,Good,Medium,5.59,5.15,No,Positive,No +USER-05584,30,Male,1.08,1.95,4.64,10.72,Good,High,4.45,7.22,No,Positive,No +USER-05585,36,Female,8.94,5.99,4.09,2.93,Poor,Medium,6.42,5.06,Yes,Negative,Yes +USER-05586,24,Male,10.93,5.3,3.61,7.05,Excellent,High,5.52,5.91,Yes,Positive,No +USER-05587,56,Other,8.08,2.59,0.47,13.23,Good,Medium,4.59,1.66,No,Negative,Yes +USER-05588,19,Male,4.29,3.61,3.27,4.07,Poor,Medium,8.22,3.1,Yes,Positive,Yes +USER-05589,19,Other,5.15,5.83,1.53,13.95,Excellent,High,4.17,0.75,No,Positive,No +USER-05590,45,Other,10.22,7.54,3.49,6.34,Fair,Medium,8.18,2.67,No,Neutral,Yes +USER-05591,42,Female,3.16,5.58,3.86,5.64,Fair,Low,6.83,1.72,No,Positive,Yes +USER-05592,22,Female,10.0,3.65,3.47,10.41,Good,Medium,6.1,9.68,Yes,Positive,No +USER-05593,36,Other,1.9,6.06,4.71,3.15,Good,Medium,4.07,1.71,Yes,Negative,No +USER-05594,33,Other,7.12,0.23,0.11,6.27,Good,High,4.53,6.4,No,Neutral,Yes +USER-05595,61,Male,4.55,6.82,1.4,5.68,Good,Low,6.23,4.0,Yes,Positive,Yes +USER-05596,52,Female,10.54,3.32,2.79,9.75,Good,Low,6.69,9.68,No,Positive,Yes +USER-05597,31,Female,10.42,5.56,3.72,1.21,Good,Medium,7.58,1.2,No,Negative,No +USER-05598,39,Other,1.1,2.59,1.91,8.44,Good,Medium,4.09,6.44,No,Negative,No +USER-05599,49,Female,1.46,0.27,0.31,4.68,Good,Medium,4.06,2.9,Yes,Positive,Yes +USER-05600,39,Male,3.3,5.3,4.6,3.39,Poor,Medium,5.65,9.54,No,Neutral,No +USER-05601,44,Female,5.98,4.79,5.0,14.36,Excellent,Medium,7.73,3.53,No,Positive,Yes +USER-05602,65,Male,3.43,4.95,4.29,7.75,Excellent,High,5.99,7.11,No,Negative,No +USER-05603,28,Other,2.63,6.7,3.44,10.73,Poor,Low,8.29,4.99,Yes,Negative,No +USER-05604,32,Other,3.15,0.22,4.79,5.7,Fair,Low,4.02,0.12,No,Neutral,Yes +USER-05605,41,Female,2.71,3.98,1.39,1.76,Good,Medium,7.2,4.67,No,Neutral,Yes +USER-05606,52,Other,8.0,5.27,3.91,5.66,Good,High,7.54,4.11,Yes,Positive,Yes +USER-05607,23,Male,9.32,0.52,2.78,7.09,Good,High,5.53,6.31,No,Positive,No +USER-05608,34,Male,2.08,0.83,4.9,8.03,Excellent,Medium,7.98,8.89,Yes,Neutral,No +USER-05609,37,Other,2.51,5.38,2.14,11.33,Fair,Medium,8.43,9.77,Yes,Positive,Yes +USER-05610,46,Female,1.29,7.03,0.01,2.11,Good,High,4.8,2.89,No,Negative,No +USER-05611,44,Male,9.7,7.28,2.95,13.61,Fair,Medium,7.05,4.82,Yes,Positive,Yes +USER-05612,25,Male,4.03,4.08,2.64,3.31,Excellent,Low,8.35,7.49,Yes,Positive,Yes +USER-05613,60,Female,9.66,7.56,1.4,6.6,Fair,Low,6.54,8.36,No,Neutral,No +USER-05614,24,Other,2.01,5.33,0.53,5.15,Poor,High,5.13,7.48,Yes,Neutral,No +USER-05615,64,Female,5.83,7.21,4.84,1.36,Poor,High,7.07,3.98,Yes,Negative,No +USER-05616,26,Female,4.77,7.77,1.44,4.4,Poor,Medium,7.35,0.63,No,Positive,Yes +USER-05617,39,Other,8.6,6.47,3.11,10.47,Fair,Medium,6.81,2.8,Yes,Negative,No +USER-05618,28,Female,2.45,4.69,1.4,8.07,Poor,Low,6.3,9.81,No,Neutral,Yes +USER-05619,30,Other,2.56,4.84,3.86,8.45,Poor,High,5.0,3.71,Yes,Positive,Yes +USER-05620,52,Other,4.73,2.76,2.91,4.72,Fair,Medium,7.3,7.96,Yes,Neutral,Yes +USER-05621,62,Other,1.99,0.36,0.73,13.65,Excellent,Medium,6.13,5.25,Yes,Positive,No +USER-05622,26,Other,7.52,2.85,3.57,14.74,Poor,Low,8.17,3.85,Yes,Negative,No +USER-05623,65,Male,4.77,7.88,3.06,8.92,Fair,Low,5.45,6.46,Yes,Negative,No +USER-05624,18,Female,9.15,0.88,1.64,6.33,Poor,Medium,5.88,0.67,No,Neutral,Yes +USER-05625,32,Male,2.97,3.21,4.85,7.48,Fair,Medium,7.92,7.65,Yes,Positive,Yes +USER-05626,31,Other,7.55,5.79,3.55,4.78,Good,Medium,4.71,9.38,Yes,Negative,No +USER-05627,26,Male,4.42,6.67,3.7,6.56,Fair,Medium,8.29,7.67,No,Neutral,No +USER-05628,37,Female,7.12,2.45,0.57,12.36,Excellent,High,6.27,0.76,Yes,Positive,Yes +USER-05629,46,Female,1.55,6.87,1.48,4.62,Fair,High,5.61,1.15,Yes,Positive,Yes +USER-05630,61,Male,5.47,3.7,4.53,13.73,Excellent,Medium,4.53,9.62,Yes,Positive,Yes +USER-05631,33,Male,5.8,6.9,4.76,3.0,Poor,Medium,8.7,2.8,No,Negative,No +USER-05632,51,Other,2.48,5.63,3.44,4.39,Poor,Medium,7.02,9.39,Yes,Negative,Yes +USER-05633,63,Female,2.28,3.74,2.92,8.46,Excellent,High,5.22,4.39,Yes,Neutral,Yes +USER-05634,62,Female,10.56,2.85,2.23,2.15,Poor,Low,8.26,9.6,No,Neutral,Yes +USER-05635,64,Female,10.66,0.91,2.4,4.58,Poor,Medium,8.58,0.01,No,Negative,Yes +USER-05636,39,Female,6.82,0.28,3.99,5.9,Good,High,6.64,2.44,No,Positive,Yes +USER-05637,58,Male,7.17,1.35,0.14,9.51,Excellent,Medium,5.07,6.79,No,Positive,Yes +USER-05638,50,Female,8.43,1.26,0.08,6.38,Poor,Low,5.47,2.74,Yes,Negative,Yes +USER-05639,23,Female,2.64,1.4,2.64,2.72,Excellent,High,4.35,0.89,No,Negative,Yes +USER-05640,21,Male,4.93,6.17,2.02,2.58,Excellent,High,8.96,2.55,Yes,Neutral,Yes +USER-05641,37,Male,1.37,3.07,2.26,1.59,Good,High,4.61,9.04,No,Negative,Yes +USER-05642,21,Male,5.54,1.05,4.25,1.79,Fair,Low,7.73,7.0,Yes,Negative,No +USER-05643,25,Male,8.29,2.78,3.88,2.77,Fair,Medium,6.78,7.59,Yes,Neutral,No +USER-05644,32,Other,8.78,6.89,2.3,6.26,Good,High,8.1,2.8,No,Positive,No +USER-05645,29,Male,8.27,2.04,0.17,5.88,Excellent,Low,7.51,2.06,Yes,Positive,Yes +USER-05646,20,Male,2.6,6.53,1.15,6.74,Poor,Medium,6.0,7.15,No,Positive,Yes +USER-05647,50,Female,5.92,1.98,1.56,1.28,Fair,Low,4.44,2.54,No,Positive,Yes +USER-05648,24,Other,4.44,4.86,1.63,2.6,Poor,Low,6.67,2.97,No,Neutral,No +USER-05649,56,Female,1.38,4.82,2.86,6.66,Excellent,Low,5.11,1.67,No,Neutral,No +USER-05650,40,Female,3.9,0.45,2.6,3.9,Fair,Low,7.56,3.52,Yes,Neutral,Yes +USER-05651,50,Female,11.59,4.73,1.88,3.58,Poor,Low,6.1,8.67,Yes,Neutral,Yes +USER-05652,56,Female,11.15,2.69,1.63,12.43,Poor,High,8.44,2.27,No,Negative,Yes +USER-05653,41,Male,2.47,4.95,0.19,2.76,Excellent,High,8.55,6.0,No,Neutral,Yes +USER-05654,48,Female,11.59,3.44,2.68,1.53,Good,Medium,4.44,6.39,Yes,Neutral,Yes +USER-05655,51,Other,7.79,2.53,0.5,2.37,Excellent,Low,6.24,5.89,No,Negative,No +USER-05656,46,Female,8.36,7.35,3.06,6.54,Good,Medium,6.1,7.77,No,Neutral,Yes +USER-05657,44,Other,6.76,5.4,3.73,14.77,Good,Medium,6.84,5.78,Yes,Positive,No +USER-05658,27,Male,6.56,6.54,1.89,2.51,Fair,High,6.5,9.36,Yes,Neutral,No +USER-05659,50,Male,5.18,3.8,1.19,5.71,Fair,Low,5.09,4.8,No,Positive,Yes +USER-05660,51,Other,5.5,4.06,4.77,14.39,Good,Medium,4.03,2.34,No,Positive,Yes +USER-05661,56,Other,11.48,1.86,0.2,4.2,Poor,Low,5.42,2.55,No,Negative,Yes +USER-05662,26,Female,2.66,6.07,0.84,6.23,Fair,High,8.34,1.62,No,Neutral,No +USER-05663,23,Female,11.15,0.09,2.72,1.97,Fair,Low,6.37,9.37,No,Negative,Yes +USER-05664,50,Female,2.66,7.18,1.14,11.79,Good,High,7.95,8.25,No,Neutral,No +USER-05665,64,Female,11.48,3.42,2.9,7.09,Poor,High,5.1,7.46,No,Negative,No +USER-05666,49,Other,4.72,2.8,4.85,6.18,Poor,Medium,8.23,5.78,Yes,Neutral,Yes +USER-05667,28,Other,5.32,4.76,3.8,7.99,Fair,Low,4.79,3.33,No,Positive,Yes +USER-05668,62,Male,10.89,7.78,1.68,9.62,Good,Medium,8.09,5.04,Yes,Negative,No +USER-05669,59,Female,4.92,6.08,1.68,5.38,Poor,High,7.15,6.84,No,Negative,Yes +USER-05670,56,Male,9.87,7.61,1.97,6.55,Good,High,5.97,8.96,No,Negative,No +USER-05671,53,Male,10.34,6.99,2.47,12.88,Good,Low,4.09,5.53,Yes,Neutral,Yes +USER-05672,26,Other,8.09,5.14,3.97,5.25,Good,Low,7.36,2.04,No,Positive,No +USER-05673,34,Female,1.52,7.81,1.4,10.08,Fair,Low,6.65,8.32,No,Neutral,No +USER-05674,59,Other,3.94,5.23,3.69,11.41,Fair,High,7.32,3.35,Yes,Negative,Yes +USER-05675,57,Other,2.55,1.88,2.73,4.32,Poor,Low,6.36,8.24,Yes,Positive,No +USER-05676,21,Male,9.92,4.53,2.78,3.92,Fair,High,8.17,9.65,No,Neutral,Yes +USER-05677,29,Other,1.54,6.66,1.5,5.75,Poor,High,8.5,0.8,Yes,Positive,No +USER-05678,64,Other,6.87,7.14,3.19,9.17,Good,Medium,5.35,9.98,No,Negative,No +USER-05679,48,Other,7.09,4.07,2.39,7.64,Excellent,High,8.83,8.42,Yes,Neutral,Yes +USER-05680,23,Female,8.39,2.76,1.16,11.18,Poor,Low,7.79,1.97,Yes,Positive,No +USER-05681,29,Male,6.32,6.97,0.48,6.64,Good,High,8.44,1.56,No,Negative,Yes +USER-05682,27,Male,8.82,4.43,4.95,2.18,Poor,High,4.64,6.01,Yes,Positive,Yes +USER-05683,43,Other,6.25,0.84,4.83,9.66,Good,Medium,4.58,1.41,No,Positive,No +USER-05684,29,Female,1.25,5.09,4.0,4.55,Fair,Low,8.09,10.0,Yes,Neutral,Yes +USER-05685,44,Other,9.24,6.56,1.08,5.33,Excellent,High,4.34,1.36,No,Neutral,No +USER-05686,62,Other,9.69,3.28,4.98,2.93,Fair,Low,4.18,8.92,Yes,Negative,Yes +USER-05687,20,Other,9.23,5.73,3.36,13.74,Fair,Low,5.84,3.2,Yes,Positive,No +USER-05688,32,Male,3.56,4.04,1.24,8.31,Good,Medium,4.97,1.6,No,Positive,Yes +USER-05689,18,Male,3.24,7.68,1.14,4.6,Poor,High,8.5,9.65,Yes,Positive,No +USER-05690,50,Female,9.23,6.99,2.79,7.59,Fair,Low,6.27,0.01,No,Neutral,Yes +USER-05691,36,Other,7.59,7.61,3.79,10.87,Fair,Low,6.22,0.56,No,Positive,No +USER-05692,34,Female,4.76,4.28,1.84,10.41,Good,High,7.47,2.17,Yes,Negative,Yes +USER-05693,56,Other,11.59,0.13,4.18,12.16,Fair,Low,7.36,0.01,No,Positive,Yes +USER-05694,34,Female,10.47,0.94,3.84,2.0,Good,Low,7.35,5.57,No,Positive,No +USER-05695,28,Other,10.99,7.8,3.94,5.73,Poor,High,7.37,4.72,Yes,Neutral,Yes +USER-05696,27,Female,1.07,0.49,2.76,4.87,Poor,Low,5.68,4.94,Yes,Negative,Yes +USER-05697,31,Male,4.65,0.83,0.1,6.31,Poor,Low,6.56,1.32,No,Neutral,No +USER-05698,47,Female,10.04,5.6,0.51,2.72,Fair,High,5.33,8.71,Yes,Positive,No +USER-05699,19,Other,4.74,4.97,0.96,8.51,Poor,Low,8.34,5.11,Yes,Neutral,No +USER-05700,51,Male,7.44,2.09,3.6,4.66,Poor,High,5.38,0.67,No,Positive,No +USER-05701,63,Male,9.31,3.32,1.86,3.44,Good,Low,7.77,0.39,No,Neutral,No +USER-05702,51,Male,10.9,1.21,1.47,5.49,Excellent,High,7.12,3.73,No,Negative,No +USER-05703,64,Other,6.4,0.27,4.01,10.5,Poor,Medium,8.49,4.38,Yes,Negative,No +USER-05704,24,Male,5.97,3.97,1.84,3.32,Excellent,High,8.79,8.7,No,Neutral,Yes +USER-05705,21,Male,7.3,6.51,4.61,5.08,Fair,Medium,4.04,7.62,No,Neutral,Yes +USER-05706,38,Female,2.32,6.72,0.57,1.23,Excellent,Medium,4.23,1.13,Yes,Positive,No +USER-05707,32,Female,3.06,3.83,0.92,8.76,Good,Medium,4.64,1.89,No,Positive,No +USER-05708,27,Female,6.13,2.09,1.64,4.26,Fair,High,7.84,3.87,Yes,Neutral,No +USER-05709,46,Female,11.98,4.68,0.82,10.68,Good,Medium,7.93,2.46,No,Positive,No +USER-05710,48,Other,5.83,4.5,4.2,9.44,Good,Medium,5.75,9.54,No,Neutral,Yes +USER-05711,53,Female,7.69,3.54,0.98,9.43,Excellent,Low,6.96,8.81,Yes,Neutral,No +USER-05712,55,Male,9.57,5.93,4.6,6.75,Excellent,Low,8.09,5.68,No,Positive,No +USER-05713,57,Other,8.28,5.75,1.51,11.25,Fair,Low,8.28,5.41,Yes,Negative,No +USER-05714,30,Male,6.03,5.39,3.03,13.28,Excellent,High,7.38,8.18,Yes,Positive,No +USER-05715,33,Male,2.14,0.16,1.52,4.01,Fair,High,4.9,0.25,Yes,Positive,No +USER-05716,25,Male,8.09,1.61,1.14,3.93,Fair,Low,4.39,2.61,Yes,Neutral,No +USER-05717,63,Other,5.91,6.91,4.87,8.8,Excellent,Medium,4.85,1.12,No,Neutral,Yes +USER-05718,24,Male,9.92,7.72,4.0,7.74,Fair,Low,7.2,5.32,No,Neutral,Yes +USER-05719,63,Female,4.45,4.89,1.71,6.42,Good,Medium,7.1,8.49,No,Neutral,No +USER-05720,43,Other,2.0,7.18,0.08,10.97,Fair,Medium,4.77,5.94,Yes,Neutral,No +USER-05721,49,Other,7.1,2.52,1.38,4.36,Fair,Low,6.38,0.72,Yes,Neutral,Yes +USER-05722,42,Other,8.22,7.13,3.61,3.96,Excellent,High,7.51,3.78,No,Positive,Yes +USER-05723,50,Female,1.0,4.95,1.15,11.56,Fair,High,7.97,6.43,Yes,Negative,Yes +USER-05724,36,Male,11.47,2.26,2.0,1.86,Excellent,Low,4.62,2.66,No,Negative,Yes +USER-05725,46,Male,6.8,0.69,1.48,13.06,Poor,High,7.88,4.29,Yes,Neutral,Yes +USER-05726,49,Male,4.77,7.37,3.52,10.92,Excellent,Low,5.85,7.11,Yes,Positive,Yes +USER-05727,52,Female,10.36,0.63,3.44,14.88,Excellent,Low,8.24,9.54,Yes,Negative,No +USER-05728,41,Female,5.93,2.28,1.85,3.32,Good,High,6.56,4.86,No,Negative,No +USER-05729,43,Female,2.82,3.22,4.34,13.1,Good,High,6.64,5.75,No,Positive,No +USER-05730,39,Male,6.07,5.4,0.14,10.2,Excellent,Low,7.03,6.69,Yes,Negative,Yes +USER-05731,21,Male,8.4,4.15,4.9,1.62,Poor,High,8.6,5.95,Yes,Negative,No +USER-05732,23,Male,7.85,3.41,3.76,5.52,Good,High,7.47,5.38,Yes,Positive,No +USER-05733,26,Male,9.03,6.9,2.37,1.17,Excellent,High,5.49,6.61,No,Negative,Yes +USER-05734,40,Female,2.79,3.04,0.78,9.25,Good,Medium,4.21,9.8,No,Negative,No +USER-05735,62,Other,9.16,1.69,0.75,4.57,Fair,Low,8.97,6.78,Yes,Neutral,Yes +USER-05736,45,Male,7.73,2.39,1.51,13.34,Poor,High,7.01,5.26,No,Negative,Yes +USER-05737,64,Female,4.8,6.35,4.67,1.29,Excellent,Low,6.24,4.61,No,Neutral,No +USER-05738,64,Female,2.8,3.11,2.86,11.43,Excellent,Low,5.55,4.62,Yes,Negative,No +USER-05739,44,Female,2.12,6.66,0.13,14.64,Good,High,4.14,6.61,No,Positive,Yes +USER-05740,30,Other,8.06,2.85,3.81,7.57,Fair,Low,5.29,9.95,No,Positive,No +USER-05741,31,Male,6.09,1.78,2.08,4.85,Good,High,7.7,2.21,No,Negative,Yes +USER-05742,65,Male,7.79,2.32,1.72,4.64,Good,Low,7.18,0.03,No,Negative,Yes +USER-05743,31,Female,9.07,4.23,2.26,7.25,Fair,Medium,8.76,1.84,Yes,Positive,Yes +USER-05744,42,Female,2.25,4.05,4.49,14.12,Fair,Medium,4.36,3.79,Yes,Negative,No +USER-05745,55,Male,9.87,2.23,2.82,4.65,Excellent,High,7.27,3.42,Yes,Neutral,Yes +USER-05746,50,Other,4.9,0.31,2.1,5.86,Poor,High,5.39,0.4,Yes,Neutral,No +USER-05747,60,Female,2.11,4.17,1.51,11.43,Fair,High,8.18,1.58,Yes,Positive,No +USER-05748,49,Male,6.73,0.44,1.82,1.86,Good,High,6.6,8.11,No,Neutral,No +USER-05749,52,Female,5.61,5.11,1.51,1.77,Poor,High,4.0,6.96,Yes,Positive,Yes +USER-05750,62,Male,3.34,1.23,2.7,14.01,Poor,High,5.25,6.6,Yes,Neutral,Yes +USER-05751,65,Male,8.33,6.02,4.4,11.78,Good,Medium,5.85,8.74,Yes,Negative,Yes +USER-05752,56,Male,2.25,1.0,3.3,6.16,Poor,High,8.48,1.93,Yes,Positive,Yes +USER-05753,49,Female,7.99,3.82,4.64,9.54,Poor,Low,7.03,2.53,Yes,Positive,Yes +USER-05754,35,Male,10.99,1.56,2.32,4.77,Poor,Medium,5.57,7.98,No,Neutral,No +USER-05755,52,Male,8.17,7.18,3.62,14.31,Good,High,4.33,2.45,No,Negative,Yes +USER-05756,51,Other,1.25,1.08,0.96,4.73,Fair,High,5.18,5.63,Yes,Negative,Yes +USER-05757,36,Other,3.74,3.28,0.66,13.26,Good,High,5.19,0.53,No,Positive,Yes +USER-05758,42,Male,6.59,0.65,4.58,7.01,Excellent,Medium,6.45,1.83,Yes,Positive,Yes +USER-05759,64,Other,3.17,2.24,4.04,7.35,Poor,Low,4.51,3.44,Yes,Neutral,Yes +USER-05760,46,Male,7.49,2.2,4.71,13.31,Excellent,Medium,6.51,7.03,No,Neutral,No +USER-05761,38,Female,1.76,1.7,2.15,14.43,Poor,Low,4.95,2.07,No,Negative,No +USER-05762,55,Other,1.03,4.38,1.32,7.2,Poor,Low,5.29,8.01,Yes,Negative,No +USER-05763,55,Female,11.86,5.61,0.4,3.96,Fair,Low,7.43,7.49,Yes,Neutral,Yes +USER-05764,41,Female,3.24,7.04,1.6,14.15,Poor,Medium,5.1,6.67,Yes,Neutral,Yes +USER-05765,56,Female,6.1,3.93,2.63,2.98,Poor,Medium,7.94,2.43,No,Negative,No +USER-05766,51,Male,4.69,1.22,2.57,12.42,Good,Medium,5.45,0.09,Yes,Neutral,Yes +USER-05767,23,Male,3.12,6.93,4.67,8.72,Poor,High,8.28,5.26,No,Positive,No +USER-05768,61,Other,3.37,4.05,2.57,2.87,Good,High,6.84,7.38,Yes,Neutral,No +USER-05769,46,Female,11.11,2.74,1.47,11.57,Fair,Low,8.74,8.53,Yes,Negative,Yes +USER-05770,57,Other,10.76,4.94,3.86,7.13,Poor,Low,8.4,4.38,No,Positive,No +USER-05771,24,Female,3.37,3.34,3.19,2.76,Fair,Low,4.83,5.19,No,Positive,Yes +USER-05772,60,Female,11.47,6.8,4.45,5.65,Poor,Low,4.18,4.31,No,Positive,Yes +USER-05773,49,Female,8.2,0.2,1.61,10.69,Good,Medium,8.59,2.44,Yes,Positive,No +USER-05774,46,Male,10.37,4.82,3.9,7.2,Excellent,High,7.98,7.18,Yes,Negative,Yes +USER-05775,30,Male,11.02,2.37,0.99,14.03,Good,Medium,4.49,4.71,Yes,Positive,No +USER-05776,56,Female,11.66,4.66,4.41,5.49,Poor,Medium,4.36,8.24,No,Positive,Yes +USER-05777,65,Male,4.19,2.1,1.02,3.66,Poor,Low,7.99,1.7,Yes,Negative,Yes +USER-05778,27,Other,3.76,2.65,0.7,13.14,Excellent,Medium,4.54,3.23,Yes,Neutral,Yes +USER-05779,20,Male,6.25,5.08,0.2,3.97,Poor,High,4.29,9.7,Yes,Positive,No +USER-05780,64,Male,6.98,0.32,0.96,3.93,Fair,High,4.93,8.18,No,Neutral,Yes +USER-05781,33,Other,6.51,1.12,4.22,3.84,Good,Medium,5.99,4.07,No,Negative,Yes +USER-05782,31,Other,4.4,1.74,3.04,10.26,Good,High,5.18,9.08,Yes,Positive,Yes +USER-05783,18,Male,5.31,5.25,1.56,9.14,Fair,Medium,4.67,7.82,No,Neutral,No +USER-05784,53,Female,5.1,6.06,2.01,12.25,Excellent,Low,8.78,0.46,No,Neutral,No +USER-05785,45,Female,3.14,0.9,4.36,8.99,Poor,Low,8.39,9.28,No,Negative,Yes +USER-05786,21,Male,4.23,5.81,1.37,1.08,Good,Low,8.83,3.53,No,Neutral,No +USER-05787,38,Male,8.38,0.04,3.63,5.38,Fair,Medium,4.56,8.4,Yes,Neutral,Yes +USER-05788,30,Other,10.06,0.92,1.54,3.47,Excellent,Low,6.1,8.52,Yes,Positive,Yes +USER-05789,27,Other,1.89,6.72,4.84,10.86,Poor,Medium,8.3,7.66,No,Neutral,No +USER-05790,65,Male,6.83,7.42,2.29,14.19,Poor,High,8.02,7.58,Yes,Positive,Yes +USER-05791,18,Male,7.62,4.44,1.29,2.08,Excellent,Medium,7.15,8.22,Yes,Positive,No +USER-05792,38,Male,1.42,3.85,4.36,1.34,Poor,Low,5.36,7.98,No,Negative,No +USER-05793,59,Other,7.56,3.71,4.2,14.91,Excellent,High,4.6,0.67,Yes,Positive,Yes +USER-05794,41,Female,4.3,0.33,3.41,11.92,Poor,Medium,6.09,5.44,No,Negative,No +USER-05795,64,Other,6.8,5.29,2.64,2.13,Poor,High,5.66,3.22,Yes,Negative,No +USER-05796,39,Other,3.73,1.9,0.75,2.34,Fair,Medium,8.64,2.83,No,Negative,No +USER-05797,59,Male,5.87,1.21,4.86,6.66,Fair,High,7.04,0.3,Yes,Negative,No +USER-05798,26,Other,3.98,2.63,3.11,14.5,Excellent,Low,8.12,5.07,Yes,Negative,Yes +USER-05799,33,Other,11.26,1.81,2.33,6.05,Good,High,7.3,5.14,No,Neutral,Yes +USER-05800,45,Male,5.09,0.55,4.39,14.19,Good,High,7.19,7.04,Yes,Positive,Yes +USER-05801,61,Female,8.08,0.47,4.78,6.33,Poor,High,4.71,2.05,Yes,Positive,Yes +USER-05802,45,Other,7.76,5.71,3.69,3.9,Good,Low,7.32,3.5,No,Neutral,Yes +USER-05803,53,Female,6.29,5.77,0.12,11.41,Poor,Low,4.26,2.0,Yes,Negative,No +USER-05804,61,Male,4.59,3.25,1.74,11.64,Excellent,Low,8.39,6.62,Yes,Negative,Yes +USER-05805,49,Other,9.95,4.98,0.24,5.92,Excellent,High,5.5,6.44,Yes,Positive,Yes +USER-05806,45,Female,7.43,5.48,1.55,13.45,Fair,High,6.17,1.02,No,Negative,Yes +USER-05807,40,Female,10.72,0.3,0.79,7.55,Poor,Medium,4.59,5.64,Yes,Positive,Yes +USER-05808,38,Male,3.64,2.48,4.03,8.14,Fair,Low,8.01,0.06,No,Negative,Yes +USER-05809,64,Other,11.63,1.45,1.27,6.72,Poor,Medium,4.98,6.64,No,Neutral,Yes +USER-05810,18,Other,11.96,4.97,4.17,7.43,Good,High,4.15,9.21,Yes,Positive,No +USER-05811,25,Female,5.15,1.23,1.56,9.11,Good,Medium,4.21,8.85,No,Neutral,Yes +USER-05812,53,Male,3.28,4.75,0.88,1.75,Excellent,Low,5.65,1.55,Yes,Positive,No +USER-05813,51,Female,4.42,4.07,2.37,1.63,Poor,Medium,4.39,0.53,Yes,Neutral,Yes +USER-05814,57,Male,6.83,1.12,4.39,9.38,Good,Medium,6.27,6.29,Yes,Positive,Yes +USER-05815,59,Female,5.98,2.3,4.32,10.16,Excellent,Low,8.69,6.52,Yes,Positive,Yes +USER-05816,23,Other,7.68,7.44,2.72,14.92,Fair,High,5.53,2.77,No,Negative,No +USER-05817,53,Other,6.92,2.83,1.24,13.65,Good,High,5.98,0.81,No,Negative,No +USER-05818,18,Female,11.04,4.23,4.61,5.0,Poor,High,7.55,1.39,Yes,Neutral,Yes +USER-05819,59,Female,5.63,2.61,2.88,1.35,Poor,Medium,8.94,4.28,Yes,Negative,No +USER-05820,56,Female,8.27,7.89,2.61,3.87,Good,High,6.72,0.8,Yes,Negative,Yes +USER-05821,51,Other,10.68,4.42,1.03,4.25,Fair,Low,7.22,9.63,No,Neutral,Yes +USER-05822,39,Male,6.89,7.45,3.11,5.88,Fair,High,7.28,0.08,Yes,Neutral,No +USER-05823,38,Other,1.8,1.1,2.04,8.32,Good,Medium,8.34,1.97,No,Neutral,Yes +USER-05824,54,Male,1.99,6.68,0.58,4.64,Fair,Low,7.96,2.09,Yes,Negative,No +USER-05825,31,Other,10.7,2.57,2.14,11.37,Good,Medium,6.69,4.39,Yes,Neutral,No +USER-05826,64,Female,8.8,6.03,2.74,7.62,Fair,High,6.2,8.01,No,Positive,No +USER-05827,54,Female,5.19,3.11,1.73,8.21,Poor,High,6.84,2.94,Yes,Neutral,No +USER-05828,35,Other,2.04,0.47,4.7,9.87,Excellent,Medium,5.95,3.84,Yes,Neutral,No +USER-05829,23,Male,4.84,2.99,2.55,3.33,Good,Medium,5.27,0.27,No,Negative,No +USER-05830,39,Female,11.38,4.01,2.2,14.05,Excellent,High,6.67,0.08,Yes,Positive,No +USER-05831,48,Male,6.85,5.9,3.36,9.38,Poor,Low,4.0,2.07,No,Neutral,Yes +USER-05832,48,Female,11.99,1.66,1.21,13.9,Poor,High,5.05,9.6,No,Negative,No +USER-05833,21,Other,3.42,4.43,4.37,3.77,Good,High,6.26,7.97,Yes,Negative,No +USER-05834,26,Other,6.56,0.07,1.83,14.73,Poor,Medium,7.65,9.22,Yes,Negative,No +USER-05835,34,Female,10.38,7.19,0.59,11.85,Fair,High,5.76,2.83,No,Neutral,Yes +USER-05836,21,Male,1.7,2.92,1.87,9.5,Poor,Medium,8.63,2.14,Yes,Positive,No +USER-05837,47,Other,9.46,4.72,3.08,12.62,Fair,High,5.48,0.13,Yes,Negative,Yes +USER-05838,58,Male,11.08,1.62,1.69,11.9,Good,High,4.91,5.67,No,Positive,Yes +USER-05839,40,Female,1.12,7.27,2.56,11.85,Fair,Medium,5.8,6.94,Yes,Positive,No +USER-05840,34,Female,8.76,3.12,3.88,3.84,Fair,Medium,8.62,4.45,Yes,Negative,No +USER-05841,58,Male,6.5,1.7,4.18,1.57,Good,Low,7.07,3.44,No,Positive,No +USER-05842,38,Other,6.89,0.94,4.02,3.53,Fair,Low,7.25,5.78,No,Positive,No +USER-05843,57,Male,6.58,3.5,4.43,5.23,Fair,High,8.6,8.25,No,Negative,No +USER-05844,31,Female,3.39,4.19,3.87,11.37,Good,Low,5.38,5.22,Yes,Negative,Yes +USER-05845,60,Male,8.88,4.78,3.01,11.95,Excellent,Medium,5.83,0.61,No,Negative,Yes +USER-05846,32,Female,3.94,6.83,2.14,1.75,Good,Medium,4.63,6.1,No,Neutral,Yes +USER-05847,41,Female,8.04,1.12,0.23,1.14,Good,Low,7.05,6.85,Yes,Neutral,No +USER-05848,50,Male,11.9,4.67,2.69,5.27,Poor,High,4.15,8.27,Yes,Neutral,No +USER-05849,48,Female,10.55,3.55,3.83,10.0,Fair,High,7.3,5.27,Yes,Neutral,No +USER-05850,42,Other,8.68,7.39,3.56,4.71,Fair,Low,6.62,4.42,No,Neutral,Yes +USER-05851,32,Male,1.74,3.31,4.34,4.04,Poor,High,8.36,2.37,No,Negative,Yes +USER-05852,47,Male,7.17,5.79,0.79,13.83,Fair,Low,5.15,6.51,No,Negative,No +USER-05853,55,Male,8.77,4.02,4.5,4.34,Excellent,Medium,8.46,0.58,No,Positive,No +USER-05854,36,Male,6.14,5.18,1.66,5.69,Fair,Low,7.12,4.83,Yes,Neutral,Yes +USER-05855,65,Other,7.39,4.55,3.4,13.43,Good,Medium,8.85,1.61,Yes,Positive,Yes +USER-05856,61,Other,11.04,7.84,2.74,11.13,Poor,Medium,7.18,9.74,Yes,Neutral,No +USER-05857,38,Male,3.94,3.94,2.4,3.18,Fair,Medium,4.66,3.93,Yes,Negative,Yes +USER-05858,24,Other,6.49,4.71,4.54,7.06,Good,Low,4.86,3.38,Yes,Positive,No +USER-05859,23,Female,5.3,2.62,4.44,7.56,Fair,Low,8.83,4.06,Yes,Neutral,No +USER-05860,41,Other,3.03,7.35,0.1,11.87,Fair,High,7.56,9.04,Yes,Negative,No +USER-05861,60,Male,3.64,1.07,3.24,13.53,Fair,Low,4.71,9.17,Yes,Neutral,Yes +USER-05862,23,Male,7.63,6.25,0.37,13.35,Fair,Medium,5.66,8.35,Yes,Neutral,No +USER-05863,33,Female,2.43,6.55,4.35,8.77,Fair,Medium,7.1,9.81,Yes,Neutral,No +USER-05864,18,Other,9.37,4.72,4.86,6.77,Excellent,Medium,4.81,2.23,No,Neutral,Yes +USER-05865,21,Male,7.55,4.33,0.28,12.4,Poor,Medium,7.99,7.11,No,Neutral,No +USER-05866,23,Other,9.11,0.59,4.01,5.73,Excellent,High,5.15,0.75,No,Positive,No +USER-05867,22,Female,10.31,5.42,3.72,11.53,Excellent,Medium,8.41,2.4,No,Neutral,No +USER-05868,25,Male,7.97,3.1,1.24,13.46,Good,Medium,8.95,8.95,Yes,Neutral,Yes +USER-05869,49,Female,6.6,6.79,2.46,2.44,Poor,Medium,7.83,0.31,Yes,Positive,No +USER-05870,24,Female,9.17,5.97,4.73,12.25,Good,High,5.23,4.55,Yes,Negative,No +USER-05871,56,Other,8.66,7.91,1.0,4.0,Excellent,Medium,5.49,8.6,No,Negative,Yes +USER-05872,44,Male,11.1,7.05,0.73,1.09,Good,Medium,6.78,8.98,No,Positive,No +USER-05873,64,Other,11.69,1.62,2.84,14.1,Excellent,High,6.79,7.88,Yes,Positive,Yes +USER-05874,52,Female,5.42,2.15,3.76,14.01,Excellent,High,6.59,3.83,Yes,Neutral,Yes +USER-05875,23,Other,11.8,3.08,1.52,13.75,Good,Medium,7.24,9.51,No,Positive,Yes +USER-05876,18,Male,1.7,0.7,2.92,2.99,Poor,Low,4.43,8.06,Yes,Negative,No +USER-05877,53,Female,4.71,5.08,2.1,6.07,Good,High,7.3,6.87,No,Negative,Yes +USER-05878,20,Female,4.6,6.04,1.7,9.49,Excellent,Medium,5.01,2.32,Yes,Negative,Yes +USER-05879,25,Other,1.17,5.97,2.69,2.1,Excellent,Low,4.75,7.49,Yes,Neutral,No +USER-05880,18,Other,9.62,6.92,3.44,5.1,Fair,Medium,8.14,2.3,No,Positive,Yes +USER-05881,61,Female,7.43,2.77,3.55,10.77,Poor,Medium,6.15,7.64,Yes,Negative,No +USER-05882,23,Male,5.85,1.12,0.24,1.04,Excellent,High,7.04,5.89,No,Negative,No +USER-05883,54,Female,10.67,6.14,1.26,1.16,Poor,Medium,5.13,7.53,No,Positive,Yes +USER-05884,37,Female,9.22,0.98,4.95,11.11,Poor,High,5.59,7.28,No,Negative,No +USER-05885,32,Female,9.03,0.11,3.39,5.94,Excellent,Low,8.17,2.27,Yes,Positive,Yes +USER-05886,55,Other,3.63,1.64,0.28,11.28,Poor,Medium,7.55,1.54,No,Positive,No +USER-05887,28,Female,3.14,1.13,0.86,14.24,Good,Medium,5.47,0.63,No,Positive,Yes +USER-05888,52,Female,7.96,6.23,3.56,9.94,Poor,Low,7.37,7.61,Yes,Positive,No +USER-05889,52,Male,9.42,6.01,0.23,8.32,Fair,Low,6.15,3.33,No,Positive,No +USER-05890,44,Female,2.56,2.57,3.5,3.06,Good,High,5.09,5.01,Yes,Neutral,No +USER-05891,28,Male,1.61,3.39,3.75,1.79,Excellent,Low,8.94,1.04,No,Neutral,No +USER-05892,39,Female,3.21,1.77,0.05,14.77,Excellent,Low,7.34,9.86,Yes,Positive,No +USER-05893,50,Male,5.97,0.88,3.62,13.54,Good,Low,7.58,7.48,No,Positive,No +USER-05894,57,Female,6.57,2.54,1.41,14.61,Poor,High,4.44,6.02,No,Neutral,Yes +USER-05895,52,Female,7.33,6.04,4.47,11.71,Poor,Medium,4.35,9.7,Yes,Negative,Yes +USER-05896,38,Female,5.35,1.19,2.06,1.39,Excellent,High,5.3,8.44,No,Negative,No +USER-05897,34,Female,3.34,2.88,4.08,12.23,Fair,Medium,4.99,5.55,No,Negative,Yes +USER-05898,40,Other,11.81,4.82,1.17,14.83,Good,Medium,6.84,2.1,Yes,Positive,No +USER-05899,26,Other,11.33,7.14,2.69,11.11,Fair,High,5.86,8.47,No,Negative,No +USER-05900,55,Female,1.96,3.94,2.8,5.76,Excellent,Medium,7.57,5.13,Yes,Neutral,No +USER-05901,30,Other,3.55,7.61,1.02,1.84,Fair,High,4.01,4.44,Yes,Positive,No +USER-05902,60,Male,2.58,2.66,4.89,14.13,Fair,Low,5.57,6.83,No,Neutral,Yes +USER-05903,42,Male,2.83,5.44,3.89,8.31,Excellent,High,8.78,7.02,No,Positive,No +USER-05904,43,Male,11.31,4.88,2.47,4.83,Poor,Low,7.79,4.49,No,Positive,No +USER-05905,20,Male,10.96,2.93,4.41,13.37,Good,Medium,6.96,9.28,No,Positive,No +USER-05906,27,Other,7.28,7.04,4.77,9.0,Excellent,Medium,4.15,7.08,Yes,Neutral,No +USER-05907,45,Female,5.12,3.25,1.85,3.95,Fair,Medium,7.01,5.14,No,Negative,Yes +USER-05908,29,Other,3.87,2.13,0.63,6.73,Fair,High,6.77,5.99,Yes,Neutral,Yes +USER-05909,21,Male,8.04,0.07,3.49,5.28,Excellent,High,7.52,2.45,No,Neutral,Yes +USER-05910,23,Male,2.3,0.54,1.32,13.64,Poor,Low,6.59,0.65,Yes,Positive,No +USER-05911,54,Female,8.88,1.81,3.47,2.68,Fair,Medium,4.11,6.73,No,Neutral,No +USER-05912,52,Male,9.52,4.8,0.36,10.57,Good,Low,6.0,1.39,No,Neutral,No +USER-05913,53,Female,10.99,1.2,1.23,10.1,Excellent,High,7.16,8.56,No,Negative,Yes +USER-05914,46,Other,6.04,4.81,0.16,3.99,Good,High,5.94,0.32,Yes,Positive,No +USER-05915,63,Female,6.51,3.4,2.29,3.58,Poor,Low,5.17,5.43,No,Negative,Yes +USER-05916,25,Male,9.98,2.33,3.04,3.62,Fair,High,4.22,2.37,Yes,Positive,Yes +USER-05917,65,Other,7.44,2.7,0.16,14.68,Poor,Medium,4.95,3.14,Yes,Positive,Yes +USER-05918,41,Male,6.8,1.06,0.83,3.53,Poor,High,7.61,4.52,No,Positive,Yes +USER-05919,44,Other,9.33,1.93,2.45,8.2,Poor,High,7.86,4.46,Yes,Negative,No +USER-05920,18,Male,5.24,1.65,0.02,14.27,Excellent,Low,4.61,7.31,Yes,Negative,No +USER-05921,22,Female,11.69,7.4,3.62,2.43,Excellent,Low,6.96,5.11,Yes,Positive,No +USER-05922,49,Other,7.78,2.35,4.99,3.73,Poor,Low,5.78,3.61,No,Negative,No +USER-05923,54,Other,7.75,3.0,2.29,1.54,Fair,Medium,4.76,3.78,No,Negative,Yes +USER-05924,43,Male,4.0,5.76,4.66,7.9,Good,High,6.87,0.76,No,Negative,No +USER-05925,48,Female,6.16,0.14,1.15,9.87,Poor,High,6.7,3.19,Yes,Positive,No +USER-05926,61,Female,4.49,4.06,1.27,2.66,Good,High,5.48,0.17,No,Negative,Yes +USER-05927,43,Female,7.97,4.16,3.01,14.01,Good,High,4.23,7.2,No,Neutral,Yes +USER-05928,28,Other,8.03,0.19,1.27,4.59,Good,Medium,4.43,9.11,No,Neutral,No +USER-05929,38,Male,5.47,4.6,0.21,3.67,Excellent,Low,5.03,2.71,No,Negative,Yes +USER-05930,48,Female,6.11,1.88,4.81,9.17,Excellent,High,8.59,8.62,Yes,Positive,Yes +USER-05931,34,Male,3.89,6.91,2.72,7.24,Good,Low,4.06,2.28,No,Positive,Yes +USER-05932,48,Female,3.02,1.34,2.84,6.44,Good,Low,6.15,7.81,No,Neutral,Yes +USER-05933,53,Other,7.87,3.46,2.4,3.23,Good,Medium,7.8,5.49,No,Positive,Yes +USER-05934,54,Male,7.65,2.12,4.61,8.72,Fair,Low,5.55,9.18,Yes,Neutral,Yes +USER-05935,30,Male,2.88,4.1,1.37,3.09,Excellent,Low,8.78,9.06,Yes,Positive,Yes +USER-05936,52,Other,1.43,0.47,1.89,5.06,Poor,Low,6.47,1.13,Yes,Positive,No +USER-05937,48,Other,10.05,6.47,4.87,10.23,Good,High,5.73,4.44,Yes,Positive,No +USER-05938,57,Female,11.91,6.39,2.68,7.57,Good,High,8.65,6.64,Yes,Positive,Yes +USER-05939,41,Other,9.76,5.37,2.06,9.12,Poor,Medium,8.86,6.37,Yes,Neutral,Yes +USER-05940,19,Male,3.52,5.72,1.95,5.15,Excellent,High,4.82,0.99,No,Neutral,No +USER-05941,41,Female,5.11,4.24,2.46,11.21,Excellent,Low,5.61,7.72,Yes,Positive,No +USER-05942,30,Other,3.77,7.86,2.82,13.91,Good,Medium,5.28,3.49,No,Positive,Yes +USER-05943,25,Male,7.49,3.19,0.04,2.22,Good,Low,6.71,9.9,No,Positive,Yes +USER-05944,38,Female,9.84,2.86,3.31,12.57,Excellent,Low,4.79,4.92,No,Neutral,Yes +USER-05945,50,Male,5.53,3.48,2.19,5.51,Fair,High,7.73,0.86,No,Negative,No +USER-05946,44,Female,9.52,6.05,2.75,12.87,Excellent,Medium,5.47,9.16,Yes,Positive,Yes +USER-05947,61,Other,8.09,6.22,1.09,11.78,Poor,Low,8.12,4.35,Yes,Positive,No +USER-05948,33,Male,8.38,6.64,2.28,1.82,Excellent,High,7.63,5.09,Yes,Neutral,Yes +USER-05949,38,Female,1.89,1.67,0.16,14.09,Poor,High,8.24,7.62,Yes,Neutral,Yes +USER-05950,63,Female,8.8,3.15,1.1,8.65,Good,Low,4.97,2.64,No,Neutral,No +USER-05951,18,Male,3.6,7.6,3.73,4.69,Fair,Medium,6.08,8.91,No,Neutral,No +USER-05952,57,Female,11.06,6.26,1.83,10.84,Fair,High,6.75,4.54,No,Neutral,No +USER-05953,48,Other,10.52,2.65,3.97,5.96,Good,Medium,6.37,8.33,No,Negative,No +USER-05954,32,Female,9.5,6.65,2.11,10.06,Good,Medium,4.35,3.78,Yes,Negative,No +USER-05955,47,Other,8.31,6.6,4.12,4.9,Excellent,Medium,5.22,0.57,Yes,Neutral,Yes +USER-05956,27,Female,1.12,5.58,4.96,4.33,Good,Medium,6.89,6.93,No,Negative,No +USER-05957,45,Female,3.93,4.6,1.89,10.3,Good,Low,7.6,9.17,No,Negative,No +USER-05958,59,Female,4.22,6.96,2.01,10.41,Good,High,6.92,9.43,Yes,Neutral,No +USER-05959,22,Female,9.52,1.59,4.74,4.91,Excellent,Medium,4.75,4.84,Yes,Negative,Yes +USER-05960,45,Other,1.13,7.03,2.34,12.3,Poor,Medium,7.35,4.32,No,Positive,No +USER-05961,26,Male,1.61,2.42,2.19,7.25,Fair,High,7.64,8.05,No,Negative,Yes +USER-05962,35,Female,2.8,0.91,1.63,7.11,Good,High,5.28,7.76,Yes,Neutral,No +USER-05963,58,Female,6.14,5.24,3.24,10.6,Fair,Low,7.5,8.65,No,Positive,No +USER-05964,50,Other,6.92,6.92,3.59,10.69,Poor,Low,6.68,3.73,Yes,Negative,No +USER-05965,46,Other,10.69,0.98,2.98,8.69,Poor,Low,8.47,1.11,Yes,Neutral,Yes +USER-05966,59,Female,10.08,3.57,1.61,11.61,Fair,Medium,7.65,0.13,No,Positive,No +USER-05967,27,Other,5.55,1.76,0.14,13.51,Poor,Medium,4.85,6.87,Yes,Neutral,Yes +USER-05968,48,Male,11.88,2.27,2.21,7.07,Excellent,Low,5.12,9.8,Yes,Positive,No +USER-05969,54,Male,10.87,7.35,2.95,9.85,Fair,Low,8.29,3.84,Yes,Positive,Yes +USER-05970,39,Male,2.39,2.2,2.92,11.86,Good,Low,7.59,2.77,No,Positive,Yes +USER-05971,61,Female,5.71,0.22,4.13,4.05,Good,Medium,7.9,6.43,Yes,Positive,Yes +USER-05972,58,Other,6.53,2.23,1.08,13.06,Excellent,Low,4.32,2.38,Yes,Negative,Yes +USER-05973,58,Other,2.17,1.51,3.17,8.26,Excellent,Low,8.04,8.26,No,Negative,No +USER-05974,59,Other,10.38,4.06,3.36,5.5,Excellent,Medium,4.73,4.72,No,Positive,Yes +USER-05975,39,Male,5.86,7.27,4.91,5.29,Poor,Low,5.0,4.63,No,Positive,No +USER-05976,27,Other,5.24,3.89,1.41,5.75,Excellent,Medium,8.5,7.72,Yes,Positive,No +USER-05977,27,Other,7.54,7.77,2.23,12.37,Good,High,7.55,7.38,No,Neutral,Yes +USER-05978,24,Other,2.94,7.8,4.0,8.92,Good,Medium,4.93,6.27,No,Positive,No +USER-05979,18,Other,11.24,2.26,1.55,8.78,Poor,Low,8.68,3.34,Yes,Positive,No +USER-05980,45,Other,5.06,6.8,3.32,13.42,Poor,Medium,8.91,0.17,No,Neutral,No +USER-05981,45,Male,10.2,3.57,2.35,2.35,Poor,Medium,8.42,9.27,No,Negative,Yes +USER-05982,31,Female,7.75,0.55,4.54,5.92,Poor,High,7.79,1.49,Yes,Neutral,No +USER-05983,41,Male,2.81,4.14,3.53,13.12,Fair,High,6.84,9.82,Yes,Positive,Yes +USER-05984,33,Female,8.87,3.48,3.92,1.42,Good,High,7.68,8.84,No,Neutral,Yes +USER-05985,61,Other,2.62,6.85,2.62,12.26,Poor,Medium,4.74,6.29,No,Positive,No +USER-05986,35,Other,7.23,1.86,0.7,9.53,Fair,High,8.72,8.03,Yes,Neutral,Yes +USER-05987,64,Male,11.46,1.58,0.54,6.1,Good,Low,8.49,1.39,No,Negative,Yes +USER-05988,44,Female,1.36,1.93,2.84,6.08,Fair,Low,5.06,3.78,Yes,Neutral,Yes +USER-05989,58,Other,8.31,6.38,0.76,12.49,Fair,Medium,4.37,0.39,Yes,Positive,No +USER-05990,51,Female,5.85,6.76,1.45,5.52,Fair,High,8.04,2.6,No,Negative,No +USER-05991,28,Male,5.61,0.67,4.57,9.51,Good,Medium,8.47,4.9,No,Negative,Yes +USER-05992,24,Other,10.05,5.43,1.06,13.33,Excellent,High,7.7,0.63,Yes,Positive,Yes +USER-05993,59,Female,6.69,0.42,1.11,2.73,Fair,Medium,5.41,5.07,No,Positive,Yes +USER-05994,23,Female,2.28,0.93,3.85,13.3,Good,Medium,6.91,0.1,Yes,Neutral,No +USER-05995,42,Female,10.15,7.03,2.95,13.13,Good,Low,6.29,8.57,Yes,Negative,No +USER-05996,51,Male,5.81,4.69,1.8,11.42,Excellent,High,7.37,3.76,No,Positive,Yes +USER-05997,59,Female,11.13,3.83,2.06,10.68,Fair,Medium,7.64,0.79,Yes,Negative,Yes +USER-05998,22,Female,8.41,2.3,2.26,1.92,Good,Low,7.68,5.68,Yes,Positive,No +USER-05999,64,Other,10.03,3.62,0.07,12.39,Good,High,5.36,0.86,Yes,Positive,Yes +USER-06000,19,Other,9.11,1.12,0.35,2.07,Good,High,4.95,8.5,Yes,Positive,No +USER-06001,61,Female,11.15,0.64,0.14,6.63,Excellent,Low,8.95,4.1,No,Negative,No +USER-06002,46,Male,11.98,6.98,4.62,9.38,Excellent,Low,4.12,8.99,No,Positive,Yes +USER-06003,39,Male,5.5,4.51,1.56,6.3,Good,High,7.04,0.39,Yes,Positive,No +USER-06004,44,Other,5.69,2.39,1.05,8.03,Fair,Medium,8.17,3.76,Yes,Positive,No +USER-06005,29,Female,4.73,0.84,2.31,14.25,Fair,High,8.97,4.2,Yes,Neutral,Yes +USER-06006,62,Male,3.67,6.04,2.15,6.07,Poor,High,6.48,6.34,No,Neutral,No +USER-06007,28,Female,3.49,4.87,0.49,4.82,Fair,Low,5.52,6.82,No,Neutral,Yes +USER-06008,64,Female,5.73,4.88,0.58,9.01,Excellent,Low,6.79,4.45,No,Positive,No +USER-06009,22,Male,3.48,6.47,1.89,8.9,Excellent,Medium,8.12,3.2,Yes,Negative,Yes +USER-06010,34,Female,5.28,5.68,1.12,5.01,Good,High,7.97,9.51,No,Neutral,Yes +USER-06011,41,Female,9.82,0.39,1.98,10.25,Poor,Medium,5.67,7.98,No,Positive,Yes +USER-06012,36,Other,3.97,2.33,1.38,4.98,Fair,High,6.18,5.13,No,Negative,No +USER-06013,30,Female,2.01,0.06,3.9,13.54,Fair,Medium,5.97,9.42,No,Positive,No +USER-06014,41,Male,7.84,5.96,1.38,3.06,Excellent,High,5.08,8.17,Yes,Neutral,Yes +USER-06015,18,Female,7.59,7.52,4.16,1.79,Good,Low,5.09,2.24,No,Negative,No +USER-06016,29,Other,7.81,3.38,2.64,7.9,Good,High,8.8,4.08,Yes,Negative,Yes +USER-06017,43,Male,9.95,3.74,4.87,2.12,Fair,High,5.09,9.22,No,Neutral,No +USER-06018,46,Male,2.71,2.43,1.53,8.76,Excellent,Medium,5.92,4.22,Yes,Positive,Yes +USER-06019,29,Other,4.77,7.74,4.02,5.59,Poor,Low,4.13,3.47,Yes,Positive,No +USER-06020,29,Male,4.28,7.24,3.68,2.97,Good,High,4.18,4.4,No,Positive,Yes +USER-06021,37,Male,1.78,0.45,1.69,4.49,Poor,Medium,5.75,8.46,No,Positive,No +USER-06022,40,Male,4.35,3.01,2.66,6.61,Poor,Medium,4.99,2.02,Yes,Neutral,No +USER-06023,58,Female,6.51,6.86,0.21,11.7,Excellent,Medium,5.55,1.55,Yes,Neutral,No +USER-06024,28,Female,8.2,0.59,3.87,7.16,Good,Medium,5.86,1.21,Yes,Positive,Yes +USER-06025,39,Female,7.23,1.67,2.37,8.11,Good,High,5.32,3.86,Yes,Negative,No +USER-06026,25,Other,11.52,7.42,0.64,1.18,Poor,High,5.35,2.03,Yes,Neutral,No +USER-06027,53,Male,6.33,6.61,3.31,1.27,Good,High,7.89,3.29,Yes,Positive,No +USER-06028,64,Male,1.73,3.17,0.17,1.96,Fair,Medium,8.96,1.27,Yes,Negative,No +USER-06029,41,Female,1.47,6.37,4.0,2.05,Good,Medium,7.09,9.43,No,Neutral,No +USER-06030,26,Female,3.66,0.8,4.08,7.13,Poor,High,4.2,5.61,No,Negative,Yes +USER-06031,41,Female,8.83,4.41,3.92,8.52,Good,Low,7.45,6.27,Yes,Positive,No +USER-06032,54,Male,11.97,5.24,2.22,3.53,Good,Low,5.33,5.32,No,Negative,No +USER-06033,34,Other,4.34,4.04,3.4,12.52,Poor,Low,8.76,4.22,Yes,Neutral,Yes +USER-06034,25,Female,4.9,0.32,3.27,10.3,Good,High,6.41,3.47,No,Negative,Yes +USER-06035,55,Female,1.84,7.24,1.22,10.16,Good,Medium,4.72,7.94,Yes,Positive,Yes +USER-06036,46,Female,5.37,2.42,3.37,3.31,Fair,High,4.69,5.65,No,Positive,No +USER-06037,25,Male,10.24,0.83,0.91,11.02,Fair,Low,5.83,7.62,Yes,Neutral,Yes +USER-06038,65,Male,8.72,0.61,0.18,8.41,Good,High,4.92,8.38,Yes,Positive,Yes +USER-06039,48,Other,2.62,7.42,2.32,12.19,Poor,Medium,4.21,3.07,Yes,Positive,Yes +USER-06040,42,Female,4.17,7.75,3.08,10.34,Good,Medium,7.58,8.02,Yes,Neutral,No +USER-06041,30,Female,6.7,4.46,1.46,1.13,Poor,Low,8.44,3.34,No,Neutral,No +USER-06042,46,Male,7.79,0.38,3.64,12.81,Excellent,High,5.02,1.56,No,Negative,No +USER-06043,39,Female,9.18,2.3,2.1,9.22,Excellent,Medium,6.42,8.54,No,Negative,No +USER-06044,48,Female,2.71,7.11,0.45,9.67,Poor,Medium,7.0,1.38,Yes,Positive,Yes +USER-06045,24,Female,9.84,7.88,1.29,12.77,Poor,Medium,6.31,7.86,No,Neutral,No +USER-06046,27,Female,6.04,5.53,0.18,2.36,Fair,Low,5.21,5.59,No,Positive,No +USER-06047,48,Male,5.86,6.27,2.11,3.96,Excellent,Low,7.53,7.35,No,Negative,No +USER-06048,25,Other,6.07,4.8,3.8,8.85,Poor,Low,5.02,5.8,No,Positive,Yes +USER-06049,43,Female,4.75,1.17,4.4,5.74,Excellent,High,8.99,8.8,Yes,Negative,Yes +USER-06050,55,Female,11.26,5.3,1.46,6.37,Fair,High,7.67,8.63,Yes,Neutral,No +USER-06051,47,Male,4.65,3.94,1.1,4.29,Fair,Medium,7.13,7.88,No,Negative,Yes +USER-06052,58,Female,3.57,6.78,4.11,8.77,Excellent,Medium,5.36,7.75,No,Negative,Yes +USER-06053,32,Male,5.12,7.53,4.01,8.28,Good,Low,7.92,3.94,No,Neutral,No +USER-06054,28,Other,11.76,2.24,4.18,10.93,Excellent,High,8.15,8.01,Yes,Negative,No +USER-06055,26,Other,7.46,1.4,1.65,8.22,Fair,High,5.15,1.29,Yes,Neutral,No +USER-06056,55,Other,8.52,2.03,2.82,3.61,Fair,High,7.46,5.58,Yes,Negative,No +USER-06057,51,Other,8.66,2.3,0.87,6.21,Good,Low,8.76,7.02,Yes,Neutral,Yes +USER-06058,37,Male,6.74,7.47,2.43,2.6,Excellent,Medium,8.11,9.34,No,Neutral,Yes +USER-06059,38,Male,1.34,0.36,2.55,12.23,Good,Medium,4.73,5.46,No,Neutral,Yes +USER-06060,34,Other,1.52,2.87,3.83,6.33,Fair,Low,7.49,6.35,No,Negative,Yes +USER-06061,62,Female,6.49,4.13,1.37,11.36,Good,Low,8.79,4.3,Yes,Negative,Yes +USER-06062,64,Male,3.79,5.81,3.11,2.56,Good,Low,4.52,1.16,Yes,Positive,No +USER-06063,20,Male,1.67,2.6,0.7,13.22,Fair,High,5.94,7.75,Yes,Positive,No +USER-06064,37,Female,6.48,3.4,4.06,8.22,Excellent,Medium,5.39,9.57,Yes,Positive,No +USER-06065,38,Male,2.36,4.15,1.43,11.72,Excellent,Medium,6.87,4.11,Yes,Neutral,No +USER-06066,24,Female,5.35,2.08,0.82,10.13,Fair,Medium,8.77,1.08,Yes,Neutral,No +USER-06067,23,Female,3.46,5.63,3.4,7.04,Poor,Low,8.1,2.47,Yes,Positive,Yes +USER-06068,44,Other,10.76,6.83,1.09,1.68,Good,Low,5.35,7.86,No,Positive,Yes +USER-06069,47,Male,5.64,3.08,1.0,9.58,Good,Low,7.23,5.37,No,Neutral,No +USER-06070,64,Other,5.84,0.2,2.49,7.27,Fair,Medium,8.33,5.04,No,Negative,No +USER-06071,63,Other,8.52,3.84,3.81,8.43,Fair,Medium,7.6,0.43,No,Neutral,No +USER-06072,30,Female,5.96,7.17,0.12,2.82,Poor,Low,5.42,5.06,No,Positive,No +USER-06073,62,Female,4.11,2.52,3.43,7.11,Excellent,Medium,7.51,5.39,Yes,Neutral,Yes +USER-06074,22,Female,11.57,5.1,1.38,8.24,Fair,High,4.47,8.58,Yes,Positive,Yes +USER-06075,51,Other,2.04,5.16,1.08,3.41,Excellent,High,6.59,5.01,Yes,Neutral,Yes +USER-06076,65,Male,5.09,1.14,3.24,12.57,Excellent,Low,8.3,0.54,No,Negative,No +USER-06077,41,Male,9.82,2.03,4.91,12.78,Fair,Low,8.14,5.3,No,Neutral,No +USER-06078,47,Other,5.76,1.46,2.05,2.52,Poor,Low,6.11,5.39,No,Positive,Yes +USER-06079,34,Female,2.24,3.86,2.76,9.16,Good,Low,6.3,4.34,Yes,Neutral,No +USER-06080,56,Female,4.85,6.42,3.4,4.17,Poor,Medium,6.15,1.74,Yes,Negative,No +USER-06081,26,Male,6.44,2.49,4.79,13.2,Good,Low,7.54,0.82,Yes,Positive,Yes +USER-06082,28,Other,1.14,1.98,2.45,2.77,Excellent,High,7.96,2.12,No,Neutral,Yes +USER-06083,48,Other,3.62,1.12,3.27,11.19,Poor,Medium,6.52,3.78,Yes,Neutral,Yes +USER-06084,42,Female,2.7,3.15,4.15,2.54,Fair,Low,6.92,8.99,No,Negative,No +USER-06085,32,Male,2.46,5.92,1.98,11.04,Poor,Low,4.73,4.99,No,Positive,No +USER-06086,37,Female,3.76,4.25,0.04,13.72,Excellent,Low,7.06,8.35,No,Positive,No +USER-06087,34,Other,3.6,2.06,0.25,4.22,Excellent,High,7.95,6.59,No,Neutral,Yes +USER-06088,52,Other,4.21,2.36,1.65,1.6,Good,Medium,4.07,2.99,Yes,Negative,Yes +USER-06089,59,Other,4.79,5.92,1.93,1.82,Fair,Low,4.88,7.06,No,Neutral,Yes +USER-06090,27,Other,2.7,0.93,2.62,5.64,Fair,High,7.59,6.17,Yes,Neutral,No +USER-06091,60,Other,4.22,6.94,0.02,13.83,Fair,Medium,7.23,8.1,No,Positive,No +USER-06092,55,Female,9.48,3.44,4.27,14.17,Good,High,8.05,0.55,Yes,Neutral,No +USER-06093,63,Other,11.93,1.37,3.71,11.02,Poor,High,5.06,9.17,No,Negative,Yes +USER-06094,34,Female,9.34,7.2,4.14,14.1,Good,High,8.35,1.51,No,Negative,No +USER-06095,42,Female,6.09,7.62,1.22,6.52,Fair,Low,4.73,2.21,No,Neutral,No +USER-06096,25,Male,5.35,1.24,3.42,2.09,Fair,Medium,8.54,3.8,Yes,Neutral,Yes +USER-06097,25,Female,11.92,0.35,0.2,3.28,Good,Medium,5.46,4.09,No,Negative,Yes +USER-06098,24,Male,3.19,2.84,1.85,6.75,Fair,Medium,4.38,2.0,No,Positive,No +USER-06099,42,Other,7.6,6.34,0.71,2.15,Excellent,Medium,8.16,0.82,Yes,Positive,No +USER-06100,19,Other,9.89,0.94,1.79,12.89,Poor,High,7.86,3.88,Yes,Neutral,No +USER-06101,36,Male,10.89,5.94,4.09,13.07,Excellent,Medium,8.99,2.23,No,Positive,Yes +USER-06102,49,Other,8.81,4.23,3.61,9.94,Poor,Low,7.73,2.39,No,Positive,Yes +USER-06103,35,Male,10.41,3.28,2.17,12.35,Fair,Low,7.85,5.15,No,Neutral,No +USER-06104,18,Female,6.16,4.53,1.04,10.51,Excellent,Low,8.15,2.43,No,Neutral,Yes +USER-06105,57,Female,7.08,0.27,1.34,4.06,Good,Medium,8.92,3.95,Yes,Neutral,Yes +USER-06106,34,Other,3.9,0.11,1.89,7.69,Fair,High,4.84,7.52,Yes,Negative,Yes +USER-06107,21,Other,2.2,0.5,1.27,9.98,Excellent,Medium,5.82,6.23,No,Positive,Yes +USER-06108,35,Male,8.68,2.55,2.76,7.27,Poor,High,4.68,7.45,No,Positive,No +USER-06109,26,Other,3.12,7.25,3.18,10.56,Poor,Low,4.24,7.86,Yes,Negative,No +USER-06110,49,Female,4.25,4.93,3.82,10.61,Good,Low,6.96,8.94,Yes,Negative,Yes +USER-06111,18,Male,9.77,2.28,0.68,3.72,Fair,Low,8.57,5.93,No,Neutral,No +USER-06112,56,Other,9.03,6.42,0.21,7.74,Excellent,Medium,4.79,3.17,Yes,Negative,Yes +USER-06113,36,Male,7.51,7.24,0.83,2.0,Fair,Medium,5.85,4.75,Yes,Neutral,Yes +USER-06114,18,Other,6.15,2.43,2.37,14.05,Excellent,Medium,7.08,7.07,Yes,Negative,No +USER-06115,50,Other,6.83,5.69,0.86,3.79,Excellent,Medium,5.52,1.89,No,Neutral,Yes +USER-06116,52,Female,9.9,3.03,2.74,13.54,Excellent,Medium,8.95,0.89,No,Positive,Yes +USER-06117,42,Male,8.15,0.05,2.27,13.21,Fair,Low,6.8,4.43,Yes,Neutral,No +USER-06118,20,Other,3.52,2.51,3.47,14.9,Poor,Low,6.31,0.68,No,Neutral,Yes +USER-06119,60,Female,9.1,0.23,3.41,12.03,Fair,Medium,8.9,0.59,No,Neutral,Yes +USER-06120,38,Male,2.83,1.73,2.55,10.64,Good,Medium,8.12,5.66,No,Neutral,No +USER-06121,43,Female,9.66,3.35,2.95,8.88,Good,Medium,6.38,8.64,Yes,Negative,No +USER-06122,45,Male,1.61,1.78,2.82,14.96,Excellent,Low,8.04,8.69,Yes,Negative,Yes +USER-06123,51,Male,4.39,6.69,3.05,1.44,Poor,High,6.46,6.44,No,Negative,No +USER-06124,48,Female,1.25,3.08,1.77,9.86,Poor,Medium,5.15,2.64,Yes,Neutral,Yes +USER-06125,57,Female,4.08,3.5,3.77,3.2,Excellent,Medium,7.68,9.73,No,Positive,Yes +USER-06126,58,Female,1.6,6.72,2.74,11.61,Good,High,6.78,9.54,Yes,Neutral,No +USER-06127,43,Other,9.19,2.96,4.37,1.16,Excellent,Low,6.17,1.04,No,Negative,Yes +USER-06128,53,Female,11.31,3.16,4.01,8.02,Poor,High,4.2,2.86,No,Negative,Yes +USER-06129,25,Male,1.33,2.57,4.17,5.83,Excellent,High,5.93,3.73,Yes,Negative,Yes +USER-06130,39,Female,3.75,6.67,3.84,8.9,Good,High,6.9,7.37,No,Neutral,Yes +USER-06131,42,Male,8.2,5.14,0.51,14.89,Fair,High,4.38,6.99,Yes,Positive,Yes +USER-06132,32,Male,4.78,5.86,2.64,12.6,Excellent,Low,5.63,0.22,No,Neutral,No +USER-06133,58,Female,2.28,1.88,1.69,10.77,Excellent,Medium,6.49,3.6,Yes,Positive,Yes +USER-06134,56,Female,7.2,2.99,1.62,11.99,Poor,High,5.2,8.81,No,Neutral,No +USER-06135,54,Male,8.28,5.78,1.12,1.77,Fair,Medium,5.54,6.17,Yes,Negative,No +USER-06136,49,Other,11.6,1.26,1.14,3.06,Fair,Low,6.99,1.92,Yes,Neutral,Yes +USER-06137,37,Male,8.63,5.84,2.69,5.73,Fair,Medium,5.89,2.04,No,Negative,Yes +USER-06138,40,Male,1.01,2.13,2.38,10.75,Fair,Medium,7.77,1.19,No,Positive,No +USER-06139,55,Male,10.96,2.56,0.76,8.74,Poor,Medium,6.99,2.82,No,Neutral,No +USER-06140,31,Female,6.61,1.84,2.46,3.29,Poor,Medium,6.11,9.21,Yes,Positive,No +USER-06141,24,Male,5.01,3.74,0.06,5.07,Fair,High,7.31,9.7,Yes,Negative,No +USER-06142,18,Male,1.06,6.13,3.94,7.5,Fair,High,8.76,2.53,No,Positive,Yes +USER-06143,29,Male,1.01,2.26,3.93,4.3,Poor,High,5.29,1.41,No,Positive,No +USER-06144,19,Male,6.46,0.95,0.79,9.78,Excellent,Medium,6.77,4.6,Yes,Negative,No +USER-06145,40,Female,8.84,5.39,4.8,6.19,Poor,High,6.01,8.92,Yes,Neutral,No +USER-06146,40,Male,11.46,6.93,4.29,3.56,Fair,High,6.6,5.1,Yes,Positive,Yes +USER-06147,19,Female,7.38,6.22,3.95,10.41,Good,Low,5.96,5.76,No,Positive,Yes +USER-06148,45,Female,4.42,0.94,3.52,5.6,Good,Low,4.57,2.2,No,Positive,Yes +USER-06149,38,Other,7.3,4.1,3.15,11.28,Excellent,Low,6.63,1.77,Yes,Positive,No +USER-06150,65,Male,8.41,6.26,1.28,6.79,Poor,Medium,5.05,2.03,Yes,Neutral,No +USER-06151,34,Male,7.78,4.68,1.76,5.75,Fair,High,7.95,9.12,Yes,Positive,Yes +USER-06152,48,Male,7.13,2.14,3.21,10.38,Fair,Medium,8.9,6.89,No,Positive,Yes +USER-06153,29,Other,9.72,7.93,4.62,6.37,Fair,Low,8.3,4.89,Yes,Neutral,No +USER-06154,32,Female,10.53,6.21,2.86,2.11,Fair,Medium,7.83,1.58,Yes,Neutral,No +USER-06155,43,Male,9.82,1.82,3.7,6.37,Poor,Medium,4.51,4.94,Yes,Positive,No +USER-06156,38,Male,10.23,6.04,3.59,5.21,Fair,Low,5.29,9.12,Yes,Neutral,No +USER-06157,55,Other,6.37,5.49,3.58,7.67,Excellent,High,4.83,6.4,No,Neutral,No +USER-06158,23,Female,8.17,0.57,0.46,13.22,Excellent,Low,7.99,4.97,Yes,Negative,Yes +USER-06159,32,Female,8.82,2.11,4.68,6.5,Poor,Low,6.27,3.68,No,Positive,Yes +USER-06160,36,Male,9.96,7.38,0.78,2.8,Excellent,Low,5.98,3.61,No,Positive,No +USER-06161,26,Female,7.84,6.9,4.9,1.73,Poor,Low,7.53,6.75,No,Neutral,No +USER-06162,28,Male,3.91,6.86,0.77,8.14,Poor,High,6.14,0.02,Yes,Negative,No +USER-06163,62,Female,11.92,6.29,4.06,6.48,Fair,Low,8.5,0.45,Yes,Neutral,No +USER-06164,24,Other,11.31,4.64,4.26,10.74,Poor,Low,4.92,9.07,Yes,Neutral,Yes +USER-06165,47,Other,11.58,3.01,1.94,14.32,Fair,Medium,8.53,8.62,No,Negative,Yes +USER-06166,36,Female,9.36,0.74,0.52,10.38,Fair,Low,5.95,4.61,Yes,Negative,No +USER-06167,52,Female,6.8,5.14,0.57,7.42,Good,Medium,6.06,6.77,Yes,Positive,Yes +USER-06168,41,Male,6.49,5.19,4.06,3.57,Fair,Medium,5.47,7.12,Yes,Positive,No +USER-06169,61,Male,1.23,7.77,3.28,12.45,Excellent,High,8.19,6.18,No,Neutral,No +USER-06170,30,Female,1.94,7.09,0.39,4.84,Good,High,8.68,5.42,Yes,Positive,Yes +USER-06171,32,Other,8.2,0.81,0.29,5.07,Fair,High,4.58,6.76,Yes,Positive,No +USER-06172,54,Other,4.57,0.51,3.53,3.6,Fair,Low,8.28,4.35,Yes,Negative,No +USER-06173,44,Other,2.9,4.21,3.98,8.03,Poor,Low,6.33,0.16,Yes,Neutral,No +USER-06174,32,Other,1.45,6.1,0.26,6.72,Excellent,Low,6.18,1.11,Yes,Negative,No +USER-06175,62,Male,4.51,0.55,1.24,7.17,Poor,High,8.76,9.29,Yes,Neutral,No +USER-06176,40,Other,9.02,0.06,2.76,14.23,Fair,High,5.94,1.8,Yes,Neutral,No +USER-06177,55,Female,1.84,5.98,3.14,1.3,Good,High,4.36,4.52,Yes,Negative,No +USER-06178,59,Other,4.91,4.65,3.67,8.51,Poor,Medium,5.94,2.25,Yes,Neutral,No +USER-06179,29,Female,8.12,5.55,2.59,6.55,Poor,Medium,7.83,2.87,No,Neutral,No +USER-06180,25,Male,11.31,3.89,4.52,8.0,Fair,High,6.69,4.75,No,Negative,Yes +USER-06181,53,Male,2.48,2.33,4.15,13.01,Good,Medium,6.92,8.1,No,Negative,Yes +USER-06182,56,Other,10.42,0.46,2.8,5.46,Poor,High,4.63,1.69,Yes,Neutral,No +USER-06183,40,Other,7.4,3.41,1.07,1.85,Excellent,Medium,6.61,8.89,No,Positive,Yes +USER-06184,42,Female,9.42,0.99,0.31,8.71,Poor,Medium,7.45,5.28,No,Negative,Yes +USER-06185,38,Male,2.82,1.48,3.82,10.35,Fair,Low,7.37,9.3,Yes,Positive,No +USER-06186,32,Other,5.61,2.88,4.89,4.73,Poor,High,7.33,7.84,No,Positive,Yes +USER-06187,54,Other,4.43,2.65,4.66,1.91,Poor,High,4.42,2.64,No,Neutral,Yes +USER-06188,31,Female,7.04,1.21,3.66,10.95,Poor,Medium,6.52,8.89,Yes,Positive,No +USER-06189,43,Female,5.4,5.49,0.99,12.29,Fair,High,8.1,0.6,Yes,Neutral,Yes +USER-06190,49,Female,5.82,0.93,4.09,7.51,Excellent,Medium,8.95,1.96,No,Neutral,No +USER-06191,30,Male,7.05,0.17,0.31,13.82,Good,Medium,4.36,7.1,Yes,Negative,No +USER-06192,47,Male,6.12,4.98,2.68,7.96,Good,Medium,8.53,1.44,No,Positive,Yes +USER-06193,24,Other,2.04,1.52,1.17,14.42,Excellent,Medium,4.44,4.83,Yes,Neutral,Yes +USER-06194,20,Female,9.28,3.51,1.24,5.56,Good,Low,6.12,8.81,Yes,Positive,Yes +USER-06195,33,Female,5.54,5.45,2.83,14.05,Poor,High,7.0,6.33,Yes,Positive,Yes +USER-06196,51,Male,6.47,5.19,3.53,12.81,Excellent,High,8.24,8.86,Yes,Negative,Yes +USER-06197,44,Female,11.29,0.66,3.88,1.12,Good,High,5.5,3.04,Yes,Positive,No +USER-06198,23,Male,9.18,6.12,0.14,12.56,Poor,Low,7.43,8.25,No,Positive,No +USER-06199,20,Male,5.09,6.23,0.36,5.65,Fair,High,6.35,7.24,No,Neutral,Yes +USER-06200,37,Male,9.09,4.95,2.3,15.0,Poor,Low,5.2,8.07,Yes,Positive,Yes +USER-06201,59,Male,3.99,1.81,2.32,1.41,Poor,High,4.46,4.89,No,Neutral,No +USER-06202,22,Other,4.75,1.64,2.95,13.68,Poor,High,6.38,9.56,Yes,Negative,Yes +USER-06203,29,Other,10.26,3.46,1.34,14.86,Excellent,High,8.5,6.98,Yes,Negative,No +USER-06204,21,Male,8.74,7.44,3.88,10.77,Excellent,Medium,5.39,8.71,Yes,Neutral,Yes +USER-06205,60,Male,1.35,0.77,1.23,9.84,Good,High,8.93,5.19,No,Positive,No +USER-06206,60,Other,9.44,2.57,2.08,8.05,Good,Low,5.37,0.6,No,Positive,Yes +USER-06207,60,Female,2.64,0.52,0.73,12.24,Good,Medium,8.5,7.0,Yes,Negative,Yes +USER-06208,37,Male,7.59,3.91,0.72,4.78,Fair,High,5.14,2.49,No,Neutral,Yes +USER-06209,51,Other,8.92,3.37,2.42,8.8,Poor,Low,5.04,3.96,No,Positive,Yes +USER-06210,25,Female,9.22,1.81,2.82,2.32,Fair,High,8.62,3.52,No,Positive,Yes +USER-06211,20,Other,5.41,4.93,4.18,11.79,Excellent,High,6.24,7.83,Yes,Neutral,No +USER-06212,54,Male,4.68,2.08,4.2,6.47,Fair,High,4.55,8.44,Yes,Positive,Yes +USER-06213,56,Female,11.71,1.34,3.14,9.08,Good,High,4.96,4.2,No,Neutral,Yes +USER-06214,55,Male,5.42,0.26,2.52,2.27,Good,Medium,6.17,7.95,Yes,Positive,No +USER-06215,47,Male,6.54,1.51,2.12,9.57,Poor,Low,7.52,4.65,No,Neutral,Yes +USER-06216,50,Male,5.85,0.87,2.93,14.04,Poor,Medium,8.48,5.71,Yes,Positive,No +USER-06217,40,Female,8.77,2.66,3.07,13.25,Fair,High,6.98,4.64,No,Positive,No +USER-06218,41,Female,6.0,3.53,4.66,13.84,Fair,Medium,5.9,3.94,Yes,Neutral,No +USER-06219,28,Female,8.78,1.06,0.31,11.96,Good,High,6.88,7.49,Yes,Negative,Yes +USER-06220,55,Female,9.93,6.5,4.25,11.64,Excellent,High,7.23,8.72,No,Neutral,Yes +USER-06221,34,Male,11.94,3.8,2.67,8.1,Excellent,Medium,4.39,2.55,No,Positive,Yes +USER-06222,64,Female,4.57,2.72,4.35,9.99,Fair,Low,7.75,4.55,Yes,Neutral,Yes +USER-06223,36,Male,1.24,5.62,2.47,11.03,Good,High,4.85,0.41,Yes,Neutral,No +USER-06224,38,Other,10.78,2.19,1.56,7.24,Poor,High,5.12,1.86,Yes,Negative,No +USER-06225,36,Male,8.18,4.1,4.74,9.12,Good,High,8.28,9.98,Yes,Positive,No +USER-06226,25,Male,6.62,5.84,3.3,4.0,Excellent,Medium,4.88,3.34,Yes,Neutral,No +USER-06227,24,Other,6.91,5.58,3.64,6.25,Excellent,Low,8.3,8.96,No,Positive,Yes +USER-06228,28,Male,11.09,6.45,2.98,9.43,Good,Medium,6.86,5.07,No,Positive,No +USER-06229,26,Male,11.71,6.03,0.89,3.89,Excellent,High,8.97,8.75,No,Positive,No +USER-06230,51,Female,6.68,0.67,1.7,11.47,Fair,Medium,5.96,6.47,Yes,Negative,Yes +USER-06231,42,Female,2.61,6.16,1.82,6.15,Poor,Medium,7.53,5.03,Yes,Neutral,Yes +USER-06232,19,Male,1.08,1.22,3.93,10.99,Fair,Medium,6.62,3.15,Yes,Negative,No +USER-06233,19,Other,7.18,0.85,2.41,6.66,Poor,Low,4.67,6.61,Yes,Positive,Yes +USER-06234,23,Male,2.3,7.37,2.17,5.39,Fair,Low,8.37,4.15,No,Neutral,No +USER-06235,63,Female,6.87,7.16,2.41,10.33,Excellent,Medium,5.77,5.68,Yes,Positive,Yes +USER-06236,25,Male,5.47,3.18,2.94,4.48,Good,Medium,5.53,5.1,No,Neutral,No +USER-06237,64,Female,5.65,6.78,4.59,13.51,Excellent,Medium,6.29,8.2,Yes,Positive,No +USER-06238,57,Female,4.43,3.19,1.25,7.49,Excellent,High,5.06,1.68,Yes,Positive,Yes +USER-06239,41,Male,10.68,6.75,1.61,11.26,Poor,Low,7.62,0.87,No,Negative,No +USER-06240,18,Other,2.46,4.41,1.22,6.61,Excellent,High,7.56,4.41,Yes,Negative,Yes +USER-06241,19,Female,5.96,6.87,4.6,7.48,Poor,Medium,7.74,0.0,Yes,Negative,No +USER-06242,48,Female,6.98,2.45,2.24,5.36,Fair,High,7.19,7.99,No,Negative,Yes +USER-06243,25,Male,8.21,5.94,1.18,5.69,Fair,Low,6.44,1.54,No,Negative,Yes +USER-06244,46,Male,3.98,4.49,3.0,11.13,Excellent,Medium,5.44,5.62,No,Neutral,Yes +USER-06245,34,Female,8.48,3.92,0.16,5.43,Fair,Low,8.03,0.11,No,Positive,Yes +USER-06246,32,Other,6.94,7.41,2.45,14.03,Excellent,High,4.68,8.21,Yes,Positive,Yes +USER-06247,37,Female,9.79,3.17,2.25,11.84,Excellent,High,4.92,7.47,No,Neutral,No +USER-06248,57,Female,6.95,3.37,0.17,7.83,Good,Low,4.27,1.48,Yes,Positive,No +USER-06249,37,Female,2.08,0.68,2.31,1.23,Excellent,Medium,5.4,3.48,Yes,Negative,No +USER-06250,18,Other,9.23,2.59,1.47,3.72,Poor,Low,8.25,7.51,No,Negative,No +USER-06251,62,Female,9.73,5.37,2.44,6.2,Fair,High,7.89,3.27,No,Negative,Yes +USER-06252,38,Female,10.36,2.74,2.09,7.71,Fair,Medium,6.45,6.79,Yes,Positive,Yes +USER-06253,29,Female,7.46,3.17,0.66,10.78,Poor,Low,5.25,0.6,Yes,Negative,Yes +USER-06254,26,Male,1.11,5.07,0.89,1.42,Good,Medium,4.38,9.03,Yes,Neutral,Yes +USER-06255,46,Female,1.89,4.84,4.4,7.02,Good,High,6.92,6.81,Yes,Negative,No +USER-06256,46,Female,10.57,5.2,3.53,7.78,Poor,Low,5.53,6.09,Yes,Negative,Yes +USER-06257,20,Male,5.16,5.28,3.61,9.3,Poor,Low,4.19,1.43,No,Positive,Yes +USER-06258,20,Male,9.85,0.65,4.01,12.51,Good,Medium,4.96,0.53,No,Positive,No +USER-06259,41,Female,10.52,2.7,0.7,4.34,Good,Low,6.93,6.97,Yes,Neutral,No +USER-06260,39,Female,3.64,1.19,3.16,2.6,Fair,High,4.06,4.22,Yes,Negative,No +USER-06261,31,Female,5.6,2.48,0.56,8.7,Excellent,Low,8.46,0.88,No,Positive,Yes +USER-06262,19,Male,3.7,3.21,2.91,4.05,Fair,High,8.81,8.66,No,Neutral,No +USER-06263,29,Male,10.14,3.07,4.84,7.71,Excellent,High,7.49,4.79,No,Positive,Yes +USER-06264,62,Other,3.54,3.41,1.46,7.69,Excellent,Medium,6.53,5.52,No,Neutral,No +USER-06265,42,Male,1.14,7.22,0.14,12.99,Excellent,Medium,5.35,7.13,No,Negative,Yes +USER-06266,29,Other,8.39,1.61,2.7,3.15,Fair,Low,4.06,2.39,Yes,Positive,Yes +USER-06267,25,Female,3.33,2.97,2.34,6.84,Poor,Medium,8.18,2.35,Yes,Positive,Yes +USER-06268,56,Female,5.31,3.38,2.81,5.97,Good,Low,8.19,6.63,Yes,Positive,Yes +USER-06269,61,Female,9.9,2.73,3.45,8.74,Fair,High,5.02,9.0,Yes,Negative,Yes +USER-06270,51,Other,8.9,0.84,4.1,9.73,Excellent,High,7.86,4.93,Yes,Neutral,Yes +USER-06271,46,Male,5.73,7.65,0.69,5.29,Good,Low,6.49,7.89,No,Positive,No +USER-06272,26,Other,9.95,1.57,1.33,14.11,Poor,Low,8.88,1.26,Yes,Positive,Yes +USER-06273,25,Other,9.3,5.84,0.11,11.36,Fair,High,6.12,6.67,Yes,Neutral,No +USER-06274,23,Other,9.2,5.43,0.02,4.32,Fair,High,5.22,6.37,No,Neutral,Yes +USER-06275,30,Male,3.04,6.62,4.2,13.63,Poor,Medium,4.04,9.69,Yes,Neutral,No +USER-06276,33,Male,9.05,5.28,4.03,1.28,Good,Medium,8.63,6.47,No,Neutral,No +USER-06277,63,Male,5.39,6.81,4.84,3.37,Fair,High,5.52,0.62,Yes,Negative,Yes +USER-06278,29,Other,6.88,0.6,0.15,12.22,Fair,High,4.83,2.88,Yes,Neutral,Yes +USER-06279,49,Other,11.02,0.24,4.75,5.18,Poor,Medium,6.95,4.06,Yes,Negative,No +USER-06280,20,Male,4.42,3.08,3.17,13.03,Fair,Low,4.54,7.17,Yes,Negative,Yes +USER-06281,53,Male,4.82,0.7,4.98,4.85,Fair,Low,7.34,4.1,No,Neutral,Yes +USER-06282,44,Male,9.52,7.55,0.64,11.42,Good,High,7.9,5.76,No,Neutral,Yes +USER-06283,24,Female,5.74,3.59,1.53,3.76,Fair,Medium,4.25,8.95,No,Neutral,Yes +USER-06284,41,Other,8.98,2.64,3.88,3.65,Good,High,6.7,2.78,No,Negative,Yes +USER-06285,44,Other,4.21,3.26,0.2,1.29,Excellent,Low,7.67,1.86,No,Negative,No +USER-06286,30,Female,10.18,3.29,0.43,3.45,Good,Low,5.48,8.47,No,Negative,No +USER-06287,43,Other,6.97,4.64,0.46,8.04,Fair,High,6.23,0.57,No,Negative,Yes +USER-06288,34,Female,5.63,2.45,3.43,3.52,Excellent,Low,6.29,3.26,Yes,Positive,Yes +USER-06289,53,Female,2.83,0.75,3.27,2.81,Poor,Medium,5.17,0.58,Yes,Neutral,No +USER-06290,35,Other,2.93,3.73,3.52,11.61,Poor,Medium,5.65,7.65,No,Positive,Yes +USER-06291,55,Other,10.76,5.54,0.25,10.24,Fair,Low,6.77,9.83,No,Negative,Yes +USER-06292,54,Male,4.96,7.28,1.06,1.99,Poor,High,5.29,0.04,Yes,Negative,No +USER-06293,49,Female,1.95,4.84,3.5,3.35,Fair,High,6.96,9.93,Yes,Neutral,No +USER-06294,24,Other,5.26,1.58,1.31,14.48,Excellent,Medium,4.35,7.47,Yes,Positive,No +USER-06295,27,Female,7.45,1.2,3.74,10.61,Good,Low,8.24,6.79,No,Negative,Yes +USER-06296,51,Other,9.54,7.8,4.28,11.2,Excellent,Medium,7.87,8.41,No,Neutral,No +USER-06297,49,Male,6.85,6.58,1.85,7.34,Good,High,7.25,5.25,Yes,Negative,Yes +USER-06298,32,Female,3.66,3.35,3.88,13.97,Poor,High,8.79,7.11,No,Neutral,No +USER-06299,47,Male,4.44,6.2,4.3,12.76,Excellent,High,5.62,0.85,No,Negative,Yes +USER-06300,64,Female,7.92,6.39,3.16,12.52,Poor,High,5.08,5.24,No,Negative,Yes +USER-06301,54,Male,10.4,6.66,2.3,12.84,Excellent,High,4.47,1.51,Yes,Positive,Yes +USER-06302,51,Other,4.52,3.81,4.29,7.24,Excellent,Medium,6.32,2.37,Yes,Positive,No +USER-06303,52,Other,8.33,3.62,0.48,3.54,Excellent,High,8.51,2.52,Yes,Positive,Yes +USER-06304,27,Other,1.48,5.65,4.93,12.58,Poor,High,6.32,2.95,Yes,Negative,Yes +USER-06305,55,Female,2.46,7.73,2.94,5.89,Good,High,4.39,5.65,No,Negative,No +USER-06306,44,Male,1.67,5.68,4.91,6.24,Fair,High,8.97,6.31,No,Positive,No +USER-06307,63,Male,8.96,1.98,4.76,14.4,Fair,High,6.68,7.07,No,Neutral,No +USER-06308,48,Female,5.72,7.76,2.29,7.43,Fair,High,7.27,1.71,Yes,Neutral,No +USER-06309,42,Other,2.24,6.18,3.37,3.16,Excellent,High,7.54,6.5,Yes,Neutral,Yes +USER-06310,65,Other,2.62,6.6,1.28,8.55,Good,High,7.7,6.77,No,Neutral,Yes +USER-06311,55,Other,1.46,3.13,3.83,3.19,Excellent,High,8.63,6.01,Yes,Positive,Yes +USER-06312,44,Male,8.45,5.38,3.31,9.77,Good,High,7.32,6.92,No,Negative,Yes +USER-06313,61,Female,6.75,0.69,2.16,2.97,Fair,Medium,7.88,8.81,Yes,Positive,No +USER-06314,45,Female,7.99,1.72,1.93,2.7,Fair,Medium,8.02,0.58,Yes,Positive,Yes +USER-06315,37,Male,3.73,1.76,3.0,4.03,Fair,High,8.23,3.06,No,Positive,Yes +USER-06316,49,Female,3.37,0.22,2.51,7.62,Excellent,High,4.11,2.54,Yes,Negative,Yes +USER-06317,36,Female,6.91,6.48,4.24,2.27,Poor,Medium,7.52,1.38,Yes,Negative,Yes +USER-06318,65,Male,1.52,5.28,0.55,14.43,Excellent,Medium,7.38,3.98,Yes,Positive,No +USER-06319,27,Female,9.34,0.87,1.94,14.95,Fair,High,5.82,0.94,Yes,Neutral,No +USER-06320,58,Female,2.01,1.37,4.93,11.57,Fair,Low,7.01,9.05,No,Negative,Yes +USER-06321,63,Other,5.03,7.06,3.42,2.26,Good,Medium,4.05,7.61,No,Positive,No +USER-06322,21,Male,11.5,6.35,1.66,10.27,Good,High,5.59,9.38,No,Negative,Yes +USER-06323,54,Female,10.15,3.13,4.77,11.34,Good,Medium,4.08,9.25,Yes,Neutral,No +USER-06324,24,Male,10.93,5.42,1.92,8.15,Poor,Low,8.86,9.88,Yes,Negative,No +USER-06325,56,Other,5.4,6.49,3.01,6.42,Excellent,Medium,4.25,4.42,No,Neutral,No +USER-06326,43,Female,9.99,4.18,4.19,10.28,Excellent,Medium,5.17,6.95,Yes,Neutral,Yes +USER-06327,22,Other,5.99,2.72,0.99,2.11,Fair,Medium,6.08,3.81,No,Neutral,Yes +USER-06328,44,Female,4.45,7.9,3.89,1.17,Excellent,Low,4.49,7.99,Yes,Negative,Yes +USER-06329,30,Other,10.72,4.36,0.04,5.87,Excellent,Low,7.73,0.53,Yes,Positive,No +USER-06330,44,Female,5.05,3.15,0.63,4.26,Fair,Low,8.7,9.0,Yes,Positive,No +USER-06331,35,Female,4.28,0.9,4.9,11.25,Fair,High,8.51,0.41,Yes,Neutral,No +USER-06332,21,Female,5.21,0.05,0.43,12.46,Good,Low,7.48,1.51,No,Neutral,Yes +USER-06333,44,Male,11.57,5.94,3.52,2.74,Poor,Medium,7.37,6.27,No,Negative,No +USER-06334,55,Female,5.15,2.93,0.34,11.2,Good,Medium,4.99,3.87,Yes,Positive,Yes +USER-06335,31,Female,11.76,7.82,0.31,9.06,Poor,Low,6.75,6.5,No,Negative,Yes +USER-06336,30,Male,6.27,5.14,3.13,13.48,Good,Low,6.2,5.66,Yes,Negative,No +USER-06337,38,Female,4.85,5.8,0.8,7.66,Excellent,Medium,4.48,0.48,No,Positive,Yes +USER-06338,20,Other,11.22,5.4,1.2,3.67,Poor,High,4.53,3.2,No,Positive,No +USER-06339,22,Other,9.48,2.19,1.38,3.8,Excellent,High,6.86,1.84,No,Negative,No +USER-06340,49,Male,4.98,2.83,2.94,4.9,Fair,Medium,7.42,3.08,No,Positive,No +USER-06341,24,Female,2.37,3.68,1.42,9.19,Excellent,Low,7.55,4.58,No,Negative,Yes +USER-06342,38,Other,8.15,4.55,4.15,12.59,Good,High,5.27,3.41,Yes,Neutral,No +USER-06343,49,Other,1.88,6.8,4.99,5.38,Poor,Medium,8.93,0.99,No,Neutral,Yes +USER-06344,55,Male,3.63,4.33,4.49,1.83,Excellent,High,8.12,6.01,Yes,Neutral,No +USER-06345,58,Other,7.31,3.82,1.39,6.87,Fair,High,6.61,5.13,Yes,Negative,No +USER-06346,22,Female,9.32,2.75,3.38,7.55,Fair,High,5.49,7.92,Yes,Positive,No +USER-06347,28,Female,1.15,7.94,4.65,10.95,Fair,Medium,5.53,3.7,No,Neutral,No +USER-06348,35,Female,10.15,0.07,3.49,5.25,Good,High,4.3,5.77,No,Neutral,No +USER-06349,55,Female,11.67,0.62,3.79,13.88,Good,High,6.86,1.19,Yes,Neutral,Yes +USER-06350,25,Male,1.84,4.42,5.0,3.94,Good,High,8.97,1.65,No,Negative,No +USER-06351,38,Male,3.88,5.81,3.05,5.48,Good,High,8.97,2.9,No,Positive,Yes +USER-06352,60,Male,10.23,7.83,3.02,7.08,Poor,Low,8.21,8.2,No,Positive,No +USER-06353,21,Male,1.86,6.32,3.34,7.41,Good,Low,5.25,1.58,Yes,Neutral,Yes +USER-06354,41,Other,11.08,4.28,2.28,2.93,Excellent,High,8.49,3.61,No,Negative,No +USER-06355,31,Other,2.84,4.12,0.92,7.81,Poor,Medium,6.65,1.46,Yes,Neutral,No +USER-06356,30,Male,8.1,4.64,3.58,2.61,Poor,Low,5.88,7.46,No,Neutral,Yes +USER-06357,44,Male,10.2,4.46,3.53,12.29,Fair,Low,6.88,8.86,No,Neutral,Yes +USER-06358,38,Female,3.34,2.86,0.19,4.62,Fair,High,8.03,7.97,No,Positive,Yes +USER-06359,46,Male,5.45,7.17,1.28,1.14,Poor,Low,6.52,2.52,Yes,Negative,No +USER-06360,56,Male,5.3,2.11,0.31,2.4,Poor,Medium,6.04,6.72,Yes,Negative,Yes +USER-06361,32,Female,2.13,6.11,0.13,12.71,Fair,Low,4.13,9.14,Yes,Negative,No +USER-06362,51,Other,2.2,5.66,4.04,14.79,Excellent,Medium,5.8,6.77,No,Neutral,No +USER-06363,23,Other,5.01,5.87,0.61,4.78,Poor,Low,8.91,5.6,Yes,Positive,Yes +USER-06364,61,Other,9.67,1.16,3.93,2.58,Good,Medium,6.35,2.65,No,Neutral,Yes +USER-06365,46,Male,8.59,6.51,4.31,3.61,Good,Medium,5.76,5.57,Yes,Negative,Yes +USER-06366,22,Male,9.6,5.38,4.26,14.05,Poor,High,7.02,3.14,Yes,Positive,No +USER-06367,51,Female,7.86,6.9,2.87,3.49,Good,Medium,4.2,8.37,No,Negative,Yes +USER-06368,49,Male,6.9,5.64,0.24,2.37,Fair,Medium,7.34,9.46,Yes,Positive,No +USER-06369,42,Male,3.8,6.64,0.43,10.35,Good,Medium,4.89,3.5,No,Negative,No +USER-06370,58,Other,6.82,1.2,3.19,8.95,Fair,Medium,7.93,4.96,Yes,Negative,Yes +USER-06371,42,Other,3.57,0.6,3.39,13.47,Fair,Low,6.19,2.29,No,Positive,No +USER-06372,54,Male,9.88,4.85,0.73,6.73,Poor,Medium,6.47,0.68,Yes,Neutral,No +USER-06373,45,Male,11.36,1.24,4.17,1.77,Fair,Medium,5.49,6.15,Yes,Negative,Yes +USER-06374,57,Other,3.68,5.69,1.88,13.29,Excellent,High,5.11,8.16,Yes,Negative,Yes +USER-06375,38,Male,5.19,3.36,1.85,11.75,Good,Medium,4.85,5.34,No,Positive,No +USER-06376,61,Female,8.21,7.01,1.9,8.03,Poor,High,6.49,1.43,Yes,Negative,No +USER-06377,48,Female,1.43,0.71,1.83,11.03,Excellent,Low,6.12,7.47,No,Negative,No +USER-06378,49,Female,8.82,3.28,2.27,7.87,Excellent,High,8.45,4.91,Yes,Neutral,No +USER-06379,60,Male,9.54,4.03,4.65,14.95,Good,High,6.25,5.98,Yes,Positive,No +USER-06380,42,Female,6.26,2.78,2.77,2.94,Excellent,High,8.88,6.28,Yes,Negative,Yes +USER-06381,42,Other,11.18,6.14,3.11,5.59,Poor,Medium,8.37,3.62,No,Neutral,No +USER-06382,34,Other,11.2,3.98,2.92,9.19,Poor,Medium,7.7,4.29,Yes,Neutral,Yes +USER-06383,45,Male,9.11,5.85,4.82,5.54,Poor,Low,4.16,5.83,No,Positive,No +USER-06384,22,Other,7.48,0.35,2.91,1.21,Good,Medium,7.45,1.27,Yes,Negative,No +USER-06385,65,Male,4.57,6.09,4.83,2.85,Excellent,High,4.87,3.77,No,Negative,Yes +USER-06386,45,Female,4.02,5.14,0.24,13.55,Good,Low,6.92,3.29,No,Neutral,No +USER-06387,58,Other,8.74,5.37,2.43,2.75,Fair,Medium,6.47,0.47,No,Positive,No +USER-06388,56,Male,4.14,2.16,2.76,14.92,Excellent,Low,6.62,3.0,Yes,Positive,Yes +USER-06389,53,Female,6.0,7.94,1.76,2.71,Good,Medium,5.55,4.45,Yes,Positive,No +USER-06390,31,Other,3.2,6.88,3.65,8.31,Good,Medium,5.09,8.99,No,Negative,No +USER-06391,28,Other,11.42,3.44,3.65,13.4,Poor,Low,6.14,4.31,Yes,Positive,No +USER-06392,22,Other,10.01,4.96,2.37,1.04,Good,Medium,7.33,3.82,No,Negative,Yes +USER-06393,62,Other,1.24,4.03,4.48,3.62,Good,Medium,4.51,2.32,No,Positive,Yes +USER-06394,18,Other,10.0,2.17,1.09,12.58,Excellent,Medium,5.49,7.8,Yes,Neutral,No +USER-06395,46,Other,3.75,7.5,1.69,11.02,Fair,Low,7.06,0.0,Yes,Neutral,Yes +USER-06396,52,Other,3.78,4.11,2.13,10.65,Fair,Low,5.02,4.77,Yes,Negative,Yes +USER-06397,41,Male,8.49,7.15,3.12,10.76,Excellent,High,8.49,3.99,No,Neutral,No +USER-06398,39,Other,8.02,6.51,2.45,3.24,Good,Medium,5.87,2.46,No,Positive,No +USER-06399,59,Other,11.42,3.23,4.44,14.13,Excellent,Low,5.61,5.92,No,Negative,No +USER-06400,57,Female,5.04,3.21,4.32,10.53,Poor,High,7.72,9.07,No,Negative,No +USER-06401,31,Other,1.79,4.77,2.76,2.53,Fair,High,8.55,8.21,No,Negative,No +USER-06402,56,Other,11.68,4.8,2.7,12.56,Excellent,High,5.18,7.5,No,Positive,Yes +USER-06403,53,Female,1.6,4.85,1.08,6.06,Good,Medium,7.28,7.17,No,Neutral,Yes +USER-06404,38,Male,5.76,0.83,3.73,11.29,Fair,High,4.83,8.8,No,Neutral,Yes +USER-06405,24,Other,2.21,0.65,4.54,1.19,Excellent,Low,4.47,0.31,No,Neutral,Yes +USER-06406,62,Female,11.15,1.52,0.34,3.89,Good,High,4.74,5.19,No,Negative,Yes +USER-06407,59,Other,3.93,2.22,3.29,7.24,Excellent,High,6.98,3.56,No,Negative,No +USER-06408,27,Male,7.93,1.03,2.78,8.97,Fair,Low,7.96,4.96,No,Neutral,No +USER-06409,54,Female,10.21,0.99,4.04,6.68,Excellent,Medium,6.85,6.17,No,Neutral,Yes +USER-06410,47,Other,10.95,1.78,1.59,9.18,Poor,Low,5.45,6.97,Yes,Positive,Yes +USER-06411,35,Other,9.98,3.78,3.52,7.97,Fair,Low,8.07,6.87,Yes,Neutral,Yes +USER-06412,21,Female,3.72,2.54,1.29,12.04,Poor,Medium,8.11,4.58,No,Neutral,No +USER-06413,61,Female,5.54,4.28,4.95,7.01,Fair,Low,6.37,1.83,No,Neutral,Yes +USER-06414,28,Female,1.94,3.11,3.02,1.74,Excellent,Low,6.9,7.89,Yes,Neutral,Yes +USER-06415,50,Female,1.39,1.16,3.81,13.59,Poor,Low,6.16,3.56,Yes,Neutral,Yes +USER-06416,44,Other,1.79,6.76,0.79,10.7,Excellent,Medium,4.19,1.21,Yes,Positive,No +USER-06417,41,Other,8.18,0.65,1.52,1.66,Excellent,Medium,7.33,2.32,No,Negative,Yes +USER-06418,56,Female,5.78,3.28,4.82,5.26,Good,Medium,7.54,8.36,Yes,Neutral,No +USER-06419,35,Other,8.2,5.32,0.09,9.62,Excellent,High,8.22,3.9,No,Neutral,No +USER-06420,21,Male,10.2,6.66,1.43,5.48,Fair,High,7.23,0.4,Yes,Negative,Yes +USER-06421,23,Female,4.24,2.5,4.86,9.42,Poor,Medium,4.35,0.22,Yes,Positive,Yes +USER-06422,65,Female,11.42,6.46,4.97,1.19,Good,Low,7.93,5.82,Yes,Positive,Yes +USER-06423,18,Female,2.44,7.39,3.74,9.96,Poor,High,7.82,0.37,No,Positive,Yes +USER-06424,65,Male,10.57,2.73,3.47,11.76,Poor,High,4.88,3.04,Yes,Positive,No +USER-06425,25,Other,11.49,2.05,2.64,13.19,Excellent,Medium,7.09,5.55,No,Neutral,Yes +USER-06426,48,Other,1.45,5.87,0.29,2.38,Excellent,Medium,4.8,1.03,Yes,Negative,No +USER-06427,55,Male,11.59,4.97,1.87,7.7,Poor,Low,7.96,0.51,No,Neutral,Yes +USER-06428,19,Female,1.01,6.59,1.13,14.93,Fair,Low,7.3,2.51,No,Negative,Yes +USER-06429,61,Female,10.24,1.55,1.99,14.87,Fair,Low,4.91,7.77,Yes,Neutral,Yes +USER-06430,43,Male,4.14,0.6,3.13,10.0,Poor,High,6.72,6.34,No,Neutral,Yes +USER-06431,47,Female,6.89,6.88,1.14,14.31,Good,Low,8.26,4.17,No,Negative,No +USER-06432,30,Female,6.09,7.39,0.22,8.99,Fair,High,8.5,0.14,Yes,Positive,No +USER-06433,58,Male,7.29,1.45,1.29,12.84,Excellent,High,7.92,9.58,Yes,Positive,Yes +USER-06434,38,Female,7.71,2.93,0.03,2.31,Poor,High,4.72,9.16,No,Neutral,No +USER-06435,63,Male,6.22,2.61,1.26,6.74,Fair,High,5.46,9.19,No,Positive,No +USER-06436,62,Male,6.96,7.28,4.11,13.42,Poor,High,4.26,1.16,Yes,Positive,Yes +USER-06437,27,Female,6.82,2.33,2.0,9.59,Poor,Medium,7.75,6.38,No,Positive,No +USER-06438,23,Female,7.26,2.77,1.4,10.72,Excellent,Medium,5.92,9.37,No,Neutral,Yes +USER-06439,25,Other,2.84,2.15,1.74,13.32,Fair,Low,7.29,0.62,No,Neutral,No +USER-06440,57,Female,4.45,0.53,3.27,4.34,Poor,High,6.49,4.78,Yes,Negative,Yes +USER-06441,26,Female,6.0,1.39,2.62,6.45,Fair,High,8.29,0.3,No,Negative,Yes +USER-06442,24,Other,6.18,0.13,3.26,4.11,Excellent,Medium,4.23,6.02,No,Negative,No +USER-06443,59,Other,9.53,1.51,4.62,6.56,Good,High,7.55,1.16,Yes,Neutral,No +USER-06444,41,Female,7.19,2.51,0.96,2.02,Excellent,Medium,8.82,0.47,No,Negative,No +USER-06445,48,Female,6.57,4.52,4.27,1.66,Fair,Medium,6.25,4.29,No,Negative,Yes +USER-06446,21,Female,4.97,1.84,2.52,12.6,Poor,High,4.77,5.03,Yes,Positive,No +USER-06447,64,Male,1.69,7.19,1.44,8.07,Excellent,High,8.46,7.53,Yes,Neutral,No +USER-06448,21,Male,10.15,2.14,4.57,8.41,Excellent,Low,7.24,2.28,Yes,Positive,No +USER-06449,54,Male,1.67,0.99,1.8,9.57,Fair,Medium,5.48,7.72,Yes,Negative,Yes +USER-06450,53,Male,4.51,4.91,1.94,14.09,Good,Low,8.38,7.94,Yes,Positive,No +USER-06451,47,Other,5.39,3.06,3.28,3.57,Excellent,Medium,8.18,3.12,No,Negative,No +USER-06452,33,Female,7.23,0.28,2.61,13.6,Poor,High,4.2,5.6,Yes,Negative,No +USER-06453,45,Male,11.35,0.28,4.19,7.65,Good,Medium,7.36,9.23,No,Neutral,No +USER-06454,41,Male,5.3,1.14,4.24,11.4,Excellent,Low,7.87,4.08,No,Negative,Yes +USER-06455,34,Female,2.76,5.28,2.38,1.63,Poor,Medium,8.08,6.63,Yes,Negative,No +USER-06456,34,Other,3.21,1.08,4.54,5.66,Poor,Medium,8.14,2.79,No,Positive,No +USER-06457,52,Male,5.92,7.02,3.19,8.86,Good,High,7.5,2.94,No,Neutral,No +USER-06458,25,Other,5.42,0.44,0.57,6.62,Good,Low,7.74,3.97,No,Neutral,Yes +USER-06459,49,Female,10.99,0.63,1.08,12.66,Excellent,Low,5.77,7.28,Yes,Negative,Yes +USER-06460,54,Female,6.35,2.01,2.93,2.33,Fair,Medium,5.87,3.42,No,Neutral,No +USER-06461,33,Female,10.12,0.52,2.7,10.66,Good,Medium,7.42,5.44,Yes,Neutral,No +USER-06462,63,Female,11.67,0.47,2.13,11.35,Good,Medium,4.33,4.02,Yes,Negative,No +USER-06463,32,Other,10.71,2.73,0.01,1.83,Excellent,Low,4.4,4.7,Yes,Neutral,No +USER-06464,23,Other,9.07,2.69,2.24,8.16,Good,Low,7.21,9.97,Yes,Positive,No +USER-06465,23,Other,4.67,7.42,3.41,14.47,Poor,Low,4.17,7.4,No,Positive,No +USER-06466,53,Other,11.45,1.06,4.88,12.45,Poor,High,5.43,4.7,No,Negative,No +USER-06467,38,Other,6.93,4.5,3.51,1.09,Good,Medium,8.31,2.59,Yes,Negative,Yes +USER-06468,55,Female,1.21,7.48,2.04,8.08,Fair,Medium,8.11,6.11,Yes,Neutral,Yes +USER-06469,60,Other,2.48,6.85,1.16,1.64,Good,Medium,8.33,7.34,No,Positive,No +USER-06470,45,Female,5.2,1.07,4.99,5.22,Poor,Medium,7.53,5.08,Yes,Positive,No +USER-06471,56,Female,4.77,7.79,3.7,1.83,Good,Low,6.33,1.36,No,Negative,Yes +USER-06472,32,Male,6.12,4.65,0.22,13.27,Poor,Low,8.47,8.62,Yes,Neutral,No +USER-06473,52,Other,4.54,5.86,4.62,10.21,Poor,Low,5.15,6.96,No,Positive,Yes +USER-06474,39,Male,4.19,5.32,3.26,9.73,Excellent,High,6.14,3.5,Yes,Neutral,Yes +USER-06475,26,Female,5.14,5.11,0.17,12.55,Fair,Low,7.08,3.94,No,Positive,Yes +USER-06476,33,Male,11.1,4.28,3.95,4.47,Good,High,8.78,4.79,Yes,Neutral,Yes +USER-06477,59,Male,9.02,1.96,2.78,10.41,Fair,High,5.78,1.88,No,Negative,No +USER-06478,35,Female,9.47,3.08,4.44,6.16,Poor,High,6.03,7.15,No,Negative,No +USER-06479,54,Female,9.47,5.55,0.57,14.03,Fair,Low,7.98,8.6,No,Positive,Yes +USER-06480,21,Female,3.48,5.47,3.5,7.63,Poor,Medium,5.71,8.34,Yes,Negative,Yes +USER-06481,26,Other,10.76,2.02,4.38,2.92,Excellent,Medium,8.97,7.67,Yes,Positive,No +USER-06482,38,Female,5.1,0.91,2.83,10.35,Good,Low,5.21,3.18,Yes,Negative,No +USER-06483,27,Male,3.61,4.37,2.41,10.57,Fair,Medium,4.49,5.8,Yes,Neutral,Yes +USER-06484,24,Female,8.59,2.32,0.83,11.44,Fair,Medium,5.9,0.4,Yes,Negative,No +USER-06485,53,Female,5.52,2.08,2.73,11.02,Good,Low,7.69,0.42,No,Positive,No +USER-06486,28,Other,8.24,1.33,2.17,10.88,Poor,Low,5.14,6.45,Yes,Negative,Yes +USER-06487,63,Other,10.37,1.4,3.06,12.83,Fair,High,4.5,8.4,Yes,Positive,Yes +USER-06488,21,Male,3.33,4.05,2.14,5.17,Good,High,4.97,5.62,Yes,Positive,No +USER-06489,56,Other,9.16,5.17,3.78,6.49,Poor,Medium,4.51,8.47,No,Neutral,No +USER-06490,22,Male,1.31,1.76,2.64,10.01,Good,High,8.8,3.33,Yes,Positive,Yes +USER-06491,35,Other,5.44,5.79,2.3,11.87,Poor,High,5.61,3.97,No,Negative,No +USER-06492,27,Male,7.74,1.1,0.95,10.29,Poor,Low,5.66,0.48,No,Neutral,Yes +USER-06493,42,Female,3.71,2.54,1.33,7.04,Fair,High,7.05,2.94,No,Neutral,No +USER-06494,45,Male,6.8,2.39,1.8,7.35,Excellent,Low,5.93,3.19,Yes,Positive,Yes +USER-06495,30,Male,11.72,2.04,0.5,8.49,Poor,Low,4.22,9.64,Yes,Negative,No +USER-06496,50,Other,10.7,5.39,2.2,9.45,Fair,Medium,6.21,4.28,Yes,Positive,Yes +USER-06497,52,Female,1.71,5.33,2.33,2.51,Good,High,5.8,9.61,No,Positive,No +USER-06498,31,Female,5.0,2.15,3.61,8.11,Fair,Low,6.54,4.18,Yes,Negative,No +USER-06499,34,Other,7.23,4.79,4.14,10.51,Excellent,High,6.15,7.68,No,Negative,No +USER-06500,25,Other,3.95,7.72,1.63,2.12,Excellent,Low,5.82,3.78,Yes,Neutral,No +USER-06501,26,Male,6.01,7.02,2.01,14.46,Good,Medium,5.45,0.68,Yes,Neutral,No +USER-06502,52,Female,6.92,3.95,1.41,2.02,Good,Medium,6.38,1.58,Yes,Negative,No +USER-06503,24,Male,8.79,5.93,2.2,10.88,Fair,Low,4.74,2.2,Yes,Neutral,Yes +USER-06504,26,Female,2.1,6.75,4.89,6.75,Fair,High,5.67,3.73,No,Negative,No +USER-06505,26,Male,2.45,4.86,2.69,4.08,Poor,High,8.55,1.46,No,Neutral,No +USER-06506,29,Female,9.33,7.76,3.07,7.82,Excellent,Medium,4.96,0.46,Yes,Negative,No +USER-06507,25,Male,1.47,1.13,0.88,9.05,Good,Medium,4.8,4.9,No,Positive,Yes +USER-06508,39,Male,3.35,7.62,4.71,12.27,Poor,Medium,4.95,5.04,No,Positive,Yes +USER-06509,34,Male,1.16,0.07,1.63,12.75,Poor,Low,7.97,1.69,Yes,Positive,No +USER-06510,26,Male,4.09,6.04,3.06,1.97,Poor,Low,8.96,7.5,Yes,Neutral,Yes +USER-06511,63,Male,7.25,0.11,1.46,3.05,Excellent,High,8.3,2.37,No,Negative,Yes +USER-06512,52,Other,1.36,5.36,3.39,14.87,Fair,Medium,7.48,7.61,Yes,Neutral,Yes +USER-06513,58,Other,5.99,7.2,4.98,14.42,Excellent,Medium,8.72,9.51,No,Neutral,Yes +USER-06514,59,Female,3.57,4.7,3.7,7.1,Good,Low,4.3,0.82,Yes,Negative,No +USER-06515,50,Other,3.0,4.05,1.43,14.62,Excellent,Medium,5.38,3.64,No,Negative,Yes +USER-06516,56,Other,4.7,0.11,4.97,8.16,Fair,High,7.08,0.75,No,Negative,Yes +USER-06517,38,Female,10.42,5.65,0.68,4.3,Excellent,High,8.16,9.42,No,Negative,No +USER-06518,22,Female,7.34,3.31,1.29,14.11,Excellent,Medium,8.64,1.12,Yes,Neutral,Yes +USER-06519,55,Female,11.64,6.78,0.99,14.77,Good,High,5.98,7.08,No,Neutral,No +USER-06520,45,Female,8.42,3.46,1.08,12.17,Fair,Low,4.68,7.31,No,Neutral,Yes +USER-06521,23,Other,3.86,7.91,0.17,12.88,Good,Medium,8.92,0.69,Yes,Negative,Yes +USER-06522,54,Female,2.99,0.21,1.72,9.25,Good,Medium,8.17,0.36,Yes,Negative,Yes +USER-06523,19,Female,5.1,4.99,1.61,6.5,Poor,Medium,7.95,3.98,No,Positive,Yes +USER-06524,25,Other,6.71,3.58,2.03,3.2,Good,Low,6.22,4.7,Yes,Negative,No +USER-06525,55,Other,6.54,7.84,1.33,14.57,Good,Medium,4.21,3.48,No,Neutral,No +USER-06526,42,Female,6.84,7.94,0.26,3.09,Fair,High,6.93,7.61,No,Positive,No +USER-06527,61,Other,9.68,6.53,1.85,12.77,Excellent,Low,7.89,9.47,No,Neutral,No +USER-06528,42,Male,4.04,3.97,2.99,6.93,Fair,High,8.43,5.96,No,Negative,No +USER-06529,44,Male,5.46,3.41,1.18,6.59,Poor,Medium,7.46,2.87,Yes,Negative,Yes +USER-06530,45,Female,2.15,4.22,4.0,9.32,Good,High,6.96,2.66,Yes,Positive,Yes +USER-06531,51,Male,3.49,5.68,3.79,3.57,Poor,Low,8.66,7.41,Yes,Positive,Yes +USER-06532,25,Male,9.03,7.79,2.55,13.88,Excellent,Low,8.63,2.28,Yes,Negative,No +USER-06533,62,Other,3.41,5.75,0.88,8.69,Fair,Medium,4.76,0.97,Yes,Positive,No +USER-06534,37,Other,1.33,4.3,3.36,5.21,Poor,High,7.85,9.61,Yes,Negative,Yes +USER-06535,20,Male,7.7,6.66,2.73,1.89,Excellent,Low,6.65,2.21,No,Negative,Yes +USER-06536,54,Other,5.41,5.14,1.87,11.18,Fair,Low,4.09,8.88,No,Neutral,No +USER-06537,38,Female,10.62,4.4,3.68,7.1,Poor,Low,6.22,4.81,No,Neutral,No +USER-06538,39,Male,6.55,4.28,2.02,5.89,Good,High,7.82,4.79,Yes,Neutral,Yes +USER-06539,18,Other,6.48,5.25,0.5,5.54,Poor,High,5.43,3.91,Yes,Positive,Yes +USER-06540,52,Male,4.21,2.0,1.87,2.61,Poor,High,8.23,2.63,No,Positive,Yes +USER-06541,47,Male,5.77,6.8,2.35,6.71,Good,High,5.74,9.54,Yes,Positive,Yes +USER-06542,43,Other,11.04,0.47,2.67,7.28,Fair,Low,6.88,5.25,No,Negative,No +USER-06543,59,Female,9.68,2.14,0.5,12.51,Poor,Low,7.61,1.46,No,Positive,No +USER-06544,64,Female,8.76,4.28,0.88,9.41,Excellent,Low,5.61,1.27,Yes,Negative,Yes +USER-06545,62,Male,6.69,4.9,2.55,9.03,Excellent,Low,7.97,9.72,No,Neutral,No +USER-06546,28,Male,9.83,7.2,0.31,2.21,Fair,Medium,6.66,4.9,No,Positive,Yes +USER-06547,18,Other,7.05,6.91,4.23,13.56,Good,High,4.88,10.0,Yes,Negative,Yes +USER-06548,26,Other,8.18,3.97,0.81,10.72,Fair,Low,7.73,9.86,Yes,Negative,Yes +USER-06549,45,Female,2.51,4.21,0.72,6.6,Good,High,4.33,0.08,No,Negative,No +USER-06550,42,Male,10.73,7.49,4.3,1.77,Fair,Medium,4.16,9.2,No,Negative,No +USER-06551,54,Male,1.33,6.6,3.76,5.29,Excellent,Medium,8.32,4.51,Yes,Positive,Yes +USER-06552,30,Male,7.64,3.23,4.26,5.66,Good,Low,6.75,9.08,No,Positive,Yes +USER-06553,34,Male,2.02,6.7,2.82,8.58,Poor,Low,4.7,9.29,Yes,Negative,No +USER-06554,26,Female,9.35,0.33,2.64,1.5,Good,High,4.43,5.36,No,Positive,No +USER-06555,47,Other,10.95,5.83,0.19,9.57,Poor,Low,8.63,0.32,Yes,Positive,No +USER-06556,22,Other,4.42,1.28,2.32,7.86,Good,Medium,4.62,3.67,Yes,Neutral,No +USER-06557,25,Other,4.69,6.15,4.77,7.42,Poor,Low,4.49,5.2,Yes,Neutral,No +USER-06558,27,Female,5.16,7.62,2.32,10.0,Fair,Low,5.88,8.57,Yes,Negative,Yes +USER-06559,28,Male,5.44,4.33,0.33,12.01,Excellent,High,8.35,9.41,No,Positive,Yes +USER-06560,24,Male,3.42,7.79,0.71,2.16,Excellent,High,6.87,3.49,No,Positive,Yes +USER-06561,37,Male,11.91,4.6,3.23,5.17,Good,Low,5.45,9.8,Yes,Neutral,Yes +USER-06562,22,Other,9.5,6.68,4.66,10.11,Poor,High,6.16,9.56,No,Positive,No +USER-06563,18,Female,2.68,0.97,2.47,6.44,Poor,Medium,6.47,0.38,Yes,Positive,No +USER-06564,46,Other,5.77,3.31,0.95,10.33,Poor,High,6.52,4.3,No,Positive,No +USER-06565,18,Other,1.47,7.61,1.67,11.44,Fair,High,7.21,9.89,No,Neutral,No +USER-06566,24,Other,8.37,0.69,3.38,9.04,Good,Low,7.56,5.62,No,Negative,No +USER-06567,30,Female,2.35,4.98,2.21,6.32,Poor,Low,5.77,4.84,Yes,Neutral,Yes +USER-06568,52,Other,5.86,2.73,2.54,7.61,Fair,Medium,4.01,9.08,Yes,Negative,No +USER-06569,42,Other,1.76,3.23,3.29,13.38,Excellent,High,8.94,5.94,No,Negative,No +USER-06570,19,Other,5.08,3.82,2.32,3.21,Fair,Medium,4.65,8.82,No,Positive,No +USER-06571,26,Female,11.88,7.85,4.53,4.84,Poor,Low,7.41,3.37,Yes,Negative,Yes +USER-06572,28,Other,6.87,6.88,4.11,6.74,Poor,Medium,4.3,8.48,Yes,Positive,No +USER-06573,43,Other,11.19,5.99,3.85,11.0,Good,High,5.42,7.48,No,Positive,Yes +USER-06574,47,Female,3.66,5.08,4.25,9.36,Fair,Medium,8.14,8.2,Yes,Neutral,No +USER-06575,34,Female,1.4,0.66,1.01,6.16,Excellent,High,6.56,8.24,No,Neutral,Yes +USER-06576,30,Female,9.48,3.93,3.65,9.16,Good,Low,4.73,5.56,Yes,Negative,Yes +USER-06577,43,Male,11.36,3.94,3.46,6.04,Fair,High,4.51,5.53,No,Positive,Yes +USER-06578,46,Male,5.4,0.52,2.76,12.72,Good,Low,7.92,4.18,Yes,Positive,No +USER-06579,28,Female,6.01,7.35,4.02,6.02,Good,Low,8.64,3.53,Yes,Negative,No +USER-06580,55,Female,7.89,3.28,1.93,3.09,Good,Low,5.36,1.02,No,Negative,Yes +USER-06581,30,Male,5.39,1.18,4.55,10.65,Excellent,Medium,5.87,9.21,No,Positive,Yes +USER-06582,59,Male,8.78,2.93,3.49,6.13,Poor,Low,6.03,9.42,No,Negative,Yes +USER-06583,25,Female,7.75,2.26,1.52,14.16,Good,High,8.32,6.57,Yes,Negative,No +USER-06584,37,Female,11.91,6.77,2.78,11.97,Poor,Medium,8.69,3.29,Yes,Positive,Yes +USER-06585,37,Female,8.88,5.08,0.56,4.79,Good,High,4.44,0.83,Yes,Positive,No +USER-06586,38,Male,7.44,1.66,2.25,14.67,Poor,High,5.18,3.97,No,Positive,Yes +USER-06587,24,Female,2.39,3.43,4.34,12.26,Poor,High,4.66,3.81,Yes,Neutral,No +USER-06588,58,Male,6.49,1.22,0.95,10.72,Fair,Low,5.14,4.61,Yes,Positive,No +USER-06589,23,Male,10.64,4.74,0.38,4.85,Good,Medium,8.44,8.78,Yes,Positive,Yes +USER-06590,45,Male,7.87,5.47,0.43,2.42,Good,Medium,7.53,0.36,Yes,Neutral,No +USER-06591,50,Female,8.16,4.38,4.74,14.79,Poor,Low,7.06,0.25,Yes,Neutral,No +USER-06592,34,Other,10.3,1.58,3.18,6.07,Good,Low,4.55,0.81,Yes,Neutral,Yes +USER-06593,60,Other,3.63,6.54,1.61,3.95,Good,Low,5.35,3.02,No,Negative,Yes +USER-06594,62,Male,3.07,4.67,4.21,9.41,Good,High,8.93,4.57,No,Neutral,Yes +USER-06595,62,Other,9.07,6.05,1.34,14.98,Fair,High,4.86,1.95,No,Neutral,Yes +USER-06596,64,Other,9.92,0.42,0.63,10.66,Fair,Low,5.53,5.33,Yes,Neutral,No +USER-06597,59,Other,9.62,4.03,3.72,14.61,Good,Low,7.4,4.03,No,Negative,No +USER-06598,53,Other,9.72,5.82,3.93,14.8,Excellent,Low,5.55,8.0,No,Positive,Yes +USER-06599,65,Other,9.52,2.53,0.49,7.65,Good,Medium,8.63,3.31,Yes,Positive,Yes +USER-06600,63,Female,2.51,7.2,3.88,4.64,Excellent,Low,6.64,0.07,Yes,Neutral,Yes +USER-06601,53,Other,10.85,4.95,0.8,8.55,Good,High,8.54,4.42,Yes,Negative,No +USER-06602,47,Female,4.73,0.7,2.57,7.84,Good,Low,8.21,6.84,Yes,Negative,No +USER-06603,18,Male,1.78,7.05,1.87,13.02,Good,High,4.99,0.39,Yes,Positive,No +USER-06604,56,Other,11.28,1.49,1.66,13.04,Fair,Low,5.52,6.54,Yes,Neutral,Yes +USER-06605,42,Other,5.1,4.55,4.61,14.94,Fair,Medium,5.94,2.94,No,Neutral,Yes +USER-06606,41,Female,3.19,0.47,1.1,8.58,Good,High,6.52,7.22,Yes,Negative,Yes +USER-06607,65,Other,1.85,3.36,2.76,10.65,Fair,High,8.22,2.08,No,Neutral,Yes +USER-06608,28,Other,1.87,1.36,3.84,3.16,Excellent,Medium,4.46,4.52,Yes,Neutral,No +USER-06609,50,Female,7.88,3.86,4.96,13.66,Excellent,High,7.99,4.11,No,Positive,Yes +USER-06610,52,Female,8.62,4.23,4.07,7.84,Poor,High,7.91,7.47,Yes,Positive,Yes +USER-06611,46,Male,8.18,6.14,2.1,6.66,Poor,High,6.85,1.34,Yes,Negative,No +USER-06612,34,Other,7.09,5.33,4.28,1.59,Poor,High,8.37,4.62,Yes,Positive,No +USER-06613,57,Other,2.08,1.56,1.12,6.98,Excellent,Medium,8.25,2.0,Yes,Neutral,No +USER-06614,20,Male,4.42,7.2,3.57,13.56,Fair,High,5.24,3.12,No,Negative,Yes +USER-06615,59,Other,6.25,4.75,0.15,3.0,Poor,High,5.67,4.88,Yes,Positive,No +USER-06616,65,Female,10.57,0.3,3.56,9.67,Poor,High,7.44,0.3,Yes,Negative,No +USER-06617,57,Female,11.94,7.32,2.51,7.07,Good,Medium,8.16,0.06,No,Neutral,No +USER-06618,19,Other,10.88,0.32,4.48,8.19,Excellent,Low,6.96,9.08,Yes,Neutral,Yes +USER-06619,36,Other,9.1,4.96,1.58,8.33,Excellent,High,5.27,1.73,No,Negative,Yes +USER-06620,25,Female,1.0,0.12,2.92,1.52,Fair,Low,5.35,0.0,Yes,Negative,Yes +USER-06621,52,Female,5.71,6.37,1.31,11.65,Excellent,Medium,8.85,0.86,Yes,Negative,Yes +USER-06622,32,Other,2.52,4.96,2.1,6.59,Good,Low,8.45,3.59,Yes,Positive,No +USER-06623,42,Male,11.42,0.3,1.54,9.62,Good,Low,8.02,3.38,No,Negative,No +USER-06624,46,Other,3.8,2.21,0.28,9.64,Fair,Low,7.52,9.36,No,Negative,Yes +USER-06625,20,Female,4.16,2.67,2.26,10.63,Good,High,5.08,7.92,Yes,Negative,No +USER-06626,50,Male,1.1,7.15,1.1,13.48,Poor,Medium,8.88,8.46,No,Positive,No +USER-06627,42,Female,1.33,5.48,4.28,8.64,Excellent,Medium,7.09,9.44,Yes,Neutral,No +USER-06628,60,Female,4.96,1.24,4.46,3.92,Good,Low,7.61,1.87,No,Neutral,Yes +USER-06629,55,Female,7.09,0.89,2.14,2.84,Good,Low,8.6,6.83,No,Neutral,Yes +USER-06630,37,Other,3.96,6.62,3.38,12.04,Excellent,Low,4.68,5.29,No,Neutral,No +USER-06631,45,Other,7.54,7.69,4.55,13.24,Excellent,Low,5.49,4.81,No,Negative,Yes +USER-06632,31,Female,4.4,4.66,0.96,1.65,Fair,Medium,4.05,4.96,No,Neutral,No +USER-06633,40,Female,1.89,0.48,1.99,1.14,Fair,High,4.76,2.69,Yes,Neutral,Yes +USER-06634,21,Male,10.78,7.77,4.85,2.51,Fair,Medium,7.18,3.05,No,Positive,Yes +USER-06635,41,Other,8.71,1.71,2.77,6.89,Poor,Low,5.73,6.09,Yes,Positive,No +USER-06636,21,Female,11.94,2.39,1.16,7.73,Poor,High,8.03,4.39,No,Negative,No +USER-06637,59,Male,10.03,0.77,5.0,7.05,Good,Low,4.3,6.85,No,Positive,No +USER-06638,42,Female,7.9,7.5,3.41,6.4,Poor,Low,8.34,3.82,No,Positive,Yes +USER-06639,53,Female,1.74,5.67,1.38,13.33,Fair,Low,5.14,5.52,Yes,Neutral,No +USER-06640,25,Male,6.71,0.5,4.21,9.95,Excellent,Low,6.5,1.13,No,Negative,No +USER-06641,41,Other,5.82,3.91,1.5,1.19,Poor,Medium,6.42,1.42,Yes,Neutral,No +USER-06642,62,Other,8.06,0.68,3.37,11.22,Excellent,High,4.65,9.9,No,Positive,No +USER-06643,20,Other,11.58,4.69,3.47,8.93,Excellent,Low,7.83,2.14,No,Positive,Yes +USER-06644,26,Female,10.08,7.39,1.09,5.37,Good,Medium,5.3,4.85,No,Neutral,Yes +USER-06645,35,Female,9.83,5.9,2.05,5.04,Fair,High,4.13,5.98,Yes,Neutral,No +USER-06646,62,Female,5.43,4.44,1.9,5.51,Poor,High,4.4,2.74,No,Neutral,No +USER-06647,38,Male,11.0,3.26,0.51,1.39,Fair,Low,4.56,5.35,No,Negative,Yes +USER-06648,61,Other,2.97,3.82,0.45,12.22,Fair,Medium,6.19,6.96,No,Positive,No +USER-06649,45,Male,6.63,3.55,1.9,12.91,Poor,High,5.4,0.67,No,Neutral,No +USER-06650,27,Male,1.04,2.23,3.21,5.0,Good,Low,8.15,0.97,No,Positive,No +USER-06651,63,Male,11.36,4.85,0.22,4.34,Good,Low,8.19,7.8,No,Negative,Yes +USER-06652,19,Male,11.26,4.78,0.39,1.32,Good,High,6.77,7.34,No,Neutral,No +USER-06653,40,Other,3.26,5.59,4.98,4.75,Good,Low,8.36,0.68,Yes,Neutral,No +USER-06654,33,Male,5.14,3.47,4.82,1.15,Good,Medium,8.7,6.27,Yes,Positive,Yes +USER-06655,63,Male,5.74,4.53,3.14,4.69,Good,Low,7.92,3.97,No,Neutral,No +USER-06656,64,Other,2.7,6.81,0.93,14.38,Good,Medium,8.89,6.78,No,Negative,Yes +USER-06657,35,Female,9.33,4.43,0.83,3.43,Poor,Low,6.9,2.73,No,Neutral,No +USER-06658,46,Male,3.28,2.8,4.76,12.53,Excellent,Low,5.71,4.89,Yes,Negative,Yes +USER-06659,41,Female,1.53,1.89,0.2,3.64,Good,Medium,5.41,7.76,Yes,Positive,Yes +USER-06660,45,Other,8.68,3.92,0.46,14.91,Excellent,Low,6.3,9.48,No,Positive,No +USER-06661,29,Other,2.49,5.24,2.94,1.03,Poor,High,5.07,9.75,No,Neutral,No +USER-06662,45,Male,2.16,7.47,3.81,9.76,Fair,Low,5.65,8.06,Yes,Neutral,Yes +USER-06663,34,Female,11.99,0.66,2.75,14.88,Excellent,Medium,7.17,8.02,Yes,Neutral,Yes +USER-06664,60,Female,7.52,7.7,4.96,2.99,Poor,Low,4.01,8.92,Yes,Negative,No +USER-06665,43,Other,11.42,7.06,3.54,1.97,Poor,Medium,8.98,0.83,No,Neutral,Yes +USER-06666,60,Male,2.13,6.14,0.98,10.25,Excellent,Low,4.02,7.99,Yes,Neutral,No +USER-06667,50,Other,10.29,3.76,2.06,14.21,Excellent,High,4.33,10.0,Yes,Negative,No +USER-06668,21,Other,9.31,2.32,3.38,14.14,Excellent,Medium,4.54,7.38,Yes,Neutral,No +USER-06669,20,Female,5.76,5.92,2.5,5.9,Poor,High,4.15,9.9,Yes,Neutral,Yes +USER-06670,42,Male,11.78,3.92,3.43,10.57,Good,Low,5.37,0.31,No,Positive,Yes +USER-06671,45,Other,2.41,1.56,4.4,10.19,Excellent,Low,7.78,4.37,Yes,Negative,Yes +USER-06672,44,Male,11.56,6.88,0.23,4.82,Fair,Low,6.7,2.16,Yes,Positive,Yes +USER-06673,38,Other,9.78,0.34,2.21,5.52,Excellent,Medium,4.93,6.34,No,Negative,No +USER-06674,36,Other,2.43,4.2,2.46,9.41,Fair,Medium,7.21,5.11,Yes,Positive,No +USER-06675,22,Male,6.69,2.29,3.62,10.37,Good,Medium,4.64,8.21,Yes,Positive,No +USER-06676,65,Female,4.42,7.92,0.89,13.3,Good,Low,7.11,9.4,Yes,Neutral,No +USER-06677,29,Other,9.47,0.46,2.63,9.66,Fair,Low,8.64,4.88,Yes,Negative,No +USER-06678,30,Other,11.39,2.87,0.1,9.28,Poor,High,6.48,8.1,Yes,Neutral,No +USER-06679,23,Male,2.53,4.06,0.09,11.6,Poor,Medium,8.48,3.39,Yes,Negative,No +USER-06680,30,Other,5.8,1.05,2.89,14.76,Good,High,6.96,0.17,No,Neutral,Yes +USER-06681,29,Male,2.32,7.47,3.23,9.86,Poor,Low,7.0,2.22,Yes,Neutral,No +USER-06682,21,Male,3.88,7.55,0.91,10.85,Excellent,Medium,6.75,3.43,No,Positive,Yes +USER-06683,25,Male,3.57,2.76,4.09,4.95,Poor,Medium,4.91,5.73,No,Negative,No +USER-06684,26,Female,1.4,5.58,5.0,11.72,Excellent,Medium,6.11,6.91,Yes,Neutral,No +USER-06685,48,Other,5.28,2.88,4.85,13.2,Excellent,Medium,5.37,2.93,Yes,Negative,No +USER-06686,41,Male,6.37,6.06,2.59,9.59,Excellent,Medium,5.01,2.28,No,Positive,Yes +USER-06687,31,Female,2.28,2.91,3.91,6.01,Excellent,Low,7.6,0.6,Yes,Positive,Yes +USER-06688,21,Other,9.63,6.05,0.32,3.24,Poor,Medium,8.31,2.73,No,Neutral,Yes +USER-06689,34,Male,11.09,7.24,4.49,4.47,Good,Low,7.69,6.43,Yes,Negative,No +USER-06690,45,Male,1.15,7.76,3.74,8.79,Excellent,High,7.88,6.36,No,Neutral,No +USER-06691,54,Female,3.85,5.01,0.97,2.06,Fair,High,5.74,0.93,Yes,Negative,Yes +USER-06692,30,Female,8.52,4.95,3.66,7.3,Fair,Medium,6.99,8.2,No,Neutral,Yes +USER-06693,19,Female,8.35,3.83,2.69,13.61,Fair,Low,4.3,4.69,Yes,Neutral,Yes +USER-06694,27,Other,10.05,1.64,1.35,9.05,Poor,High,5.69,8.99,Yes,Positive,No +USER-06695,52,Female,11.63,2.86,4.37,10.42,Good,Low,8.51,8.45,No,Positive,Yes +USER-06696,19,Male,2.17,2.22,0.67,4.01,Poor,Low,5.99,5.43,No,Neutral,Yes +USER-06697,29,Female,3.04,4.34,0.02,9.92,Fair,Medium,6.75,5.53,Yes,Negative,No +USER-06698,54,Female,10.62,4.92,1.35,7.57,Poor,High,7.05,4.29,Yes,Positive,Yes +USER-06699,22,Male,2.15,5.7,1.83,4.54,Fair,High,6.3,3.29,No,Neutral,No +USER-06700,23,Other,8.32,2.45,2.07,2.76,Excellent,Low,6.7,5.5,Yes,Negative,No +USER-06701,43,Male,4.98,1.55,2.98,1.94,Excellent,High,6.8,6.19,Yes,Negative,Yes +USER-06702,41,Other,6.35,6.95,1.43,11.8,Poor,Medium,6.26,6.83,No,Positive,No +USER-06703,39,Other,4.31,4.0,4.4,11.76,Fair,Medium,7.99,3.47,Yes,Neutral,No +USER-06704,45,Other,4.72,1.71,3.1,9.91,Good,Medium,8.3,4.71,No,Neutral,No +USER-06705,56,Female,7.13,0.18,3.55,10.63,Poor,Low,8.63,9.96,No,Positive,No +USER-06706,65,Female,9.38,7.3,0.46,5.79,Good,High,8.93,1.81,No,Neutral,No +USER-06707,64,Male,6.34,7.38,2.56,11.63,Fair,Low,8.17,7.44,Yes,Negative,Yes +USER-06708,29,Male,10.67,7.81,1.61,6.8,Fair,Low,4.78,8.82,Yes,Neutral,No +USER-06709,24,Female,5.08,1.58,1.13,6.58,Poor,Low,7.74,0.04,Yes,Negative,Yes +USER-06710,42,Female,2.38,4.41,1.21,4.11,Excellent,High,4.27,9.88,No,Neutral,Yes +USER-06711,27,Female,6.17,3.71,1.75,1.99,Poor,Medium,4.6,9.83,No,Neutral,Yes +USER-06712,63,Male,10.0,6.44,2.97,10.04,Excellent,Low,7.32,7.77,No,Positive,No +USER-06713,61,Female,5.95,5.18,0.32,11.65,Good,Low,6.79,1.27,Yes,Negative,Yes +USER-06714,31,Male,3.67,5.32,1.66,8.3,Fair,Low,4.57,7.78,No,Neutral,No +USER-06715,41,Male,3.81,0.22,3.61,10.44,Poor,Medium,6.03,2.0,No,Positive,No +USER-06716,28,Other,9.64,2.06,1.13,14.37,Excellent,Low,5.17,9.21,No,Positive,No +USER-06717,62,Other,3.3,6.35,4.39,6.15,Excellent,Medium,4.21,7.16,No,Positive,Yes +USER-06718,44,Other,1.25,5.24,0.39,4.18,Poor,Medium,8.08,1.47,No,Negative,Yes +USER-06719,23,Other,7.54,5.23,1.67,9.03,Excellent,High,5.7,7.2,Yes,Neutral,Yes +USER-06720,48,Other,1.63,7.37,0.75,13.05,Fair,High,5.46,6.21,Yes,Negative,Yes +USER-06721,51,Male,2.35,6.55,3.0,13.95,Fair,Medium,5.3,8.67,No,Negative,No +USER-06722,59,Male,9.38,5.39,4.41,12.91,Excellent,Medium,4.41,9.51,No,Positive,No +USER-06723,33,Other,1.73,3.76,2.52,13.32,Poor,Low,4.82,9.94,No,Negative,Yes +USER-06724,45,Male,11.46,2.99,0.2,9.37,Excellent,Medium,4.04,8.76,Yes,Negative,Yes +USER-06725,42,Other,4.59,1.0,0.95,3.63,Fair,Medium,4.95,0.82,Yes,Negative,Yes +USER-06726,57,Male,1.57,1.07,4.64,6.93,Excellent,High,5.56,5.34,No,Neutral,Yes +USER-06727,41,Other,3.68,4.13,4.45,3.02,Fair,High,5.66,5.67,Yes,Neutral,No +USER-06728,26,Male,8.95,5.6,3.4,10.08,Good,Low,8.85,0.63,No,Neutral,Yes +USER-06729,41,Female,6.65,7.86,1.69,5.3,Fair,Medium,5.8,0.61,Yes,Neutral,Yes +USER-06730,62,Female,1.08,5.88,1.66,10.12,Fair,Medium,8.71,5.98,No,Neutral,Yes +USER-06731,18,Male,11.04,4.15,2.3,11.32,Excellent,High,5.35,4.56,No,Negative,Yes +USER-06732,39,Other,10.4,5.69,2.39,14.42,Fair,Low,8.14,5.98,Yes,Neutral,Yes +USER-06733,60,Female,1.88,1.56,3.7,1.05,Fair,Low,6.75,6.26,Yes,Positive,Yes +USER-06734,64,Other,4.59,4.55,2.82,14.9,Excellent,Low,7.71,0.64,Yes,Neutral,Yes +USER-06735,53,Male,9.72,6.13,3.29,7.0,Excellent,Low,8.5,1.96,No,Neutral,No +USER-06736,57,Other,9.74,5.6,0.42,4.66,Excellent,Medium,7.56,8.52,Yes,Neutral,No +USER-06737,27,Male,6.95,0.14,2.71,14.09,Excellent,Low,8.05,7.76,Yes,Positive,Yes +USER-06738,60,Male,6.09,2.44,0.61,9.63,Excellent,High,8.64,4.74,Yes,Negative,Yes +USER-06739,19,Other,11.49,1.19,1.82,6.78,Good,Medium,4.51,6.1,Yes,Negative,Yes +USER-06740,22,Other,8.37,2.31,1.15,9.6,Poor,Low,8.71,0.9,No,Neutral,Yes +USER-06741,33,Other,4.43,0.93,0.46,5.13,Fair,Low,8.36,3.92,Yes,Neutral,No +USER-06742,30,Other,8.06,2.24,3.48,7.28,Good,Medium,6.92,2.32,No,Negative,No +USER-06743,28,Male,9.83,0.28,1.17,9.97,Poor,High,6.15,2.2,Yes,Neutral,No +USER-06744,37,Female,10.95,6.59,3.17,4.15,Excellent,Medium,5.28,4.71,Yes,Negative,Yes +USER-06745,20,Other,11.15,3.36,3.59,7.82,Poor,High,7.61,5.75,Yes,Neutral,No +USER-06746,42,Other,10.43,3.67,3.74,7.94,Fair,High,6.93,8.85,No,Negative,No +USER-06747,48,Female,2.45,5.8,0.59,13.18,Excellent,Medium,6.5,4.14,Yes,Negative,No +USER-06748,34,Male,3.48,4.22,1.04,3.54,Excellent,High,8.19,2.49,Yes,Positive,No +USER-06749,57,Female,11.46,3.53,0.55,2.28,Fair,High,8.31,5.51,Yes,Positive,No +USER-06750,51,Female,6.23,6.91,0.3,7.46,Poor,High,7.34,0.78,No,Positive,Yes +USER-06751,24,Female,4.5,1.05,1.04,4.06,Fair,High,4.94,8.26,No,Positive,No +USER-06752,46,Male,8.16,1.06,1.57,1.9,Fair,High,4.11,8.77,No,Neutral,Yes +USER-06753,62,Female,11.97,0.29,2.22,1.18,Good,Low,7.49,1.39,Yes,Neutral,Yes +USER-06754,31,Male,5.57,0.2,4.28,10.92,Good,High,4.91,9.45,Yes,Positive,No +USER-06755,64,Male,2.38,2.58,1.28,3.45,Excellent,Low,8.58,2.02,Yes,Negative,Yes +USER-06756,20,Female,6.29,4.59,0.59,11.52,Good,High,8.11,7.58,No,Negative,Yes +USER-06757,38,Female,2.62,4.03,3.63,13.82,Poor,Low,7.55,1.76,No,Neutral,Yes +USER-06758,48,Female,5.27,2.27,3.4,5.68,Good,High,8.77,3.9,Yes,Positive,No +USER-06759,57,Male,8.16,7.8,1.49,4.22,Fair,Medium,6.81,5.59,No,Neutral,Yes +USER-06760,63,Male,10.79,6.22,4.02,13.44,Good,Low,6.52,8.68,No,Positive,No +USER-06761,21,Female,11.22,4.31,4.14,13.97,Fair,High,6.68,9.49,No,Neutral,Yes +USER-06762,33,Female,9.89,4.69,1.33,8.55,Fair,Low,6.51,9.7,Yes,Negative,No +USER-06763,56,Female,10.28,4.32,0.33,5.57,Poor,Low,7.85,7.4,Yes,Positive,No +USER-06764,28,Male,11.08,3.39,1.27,13.98,Fair,Medium,6.9,6.93,Yes,Negative,Yes +USER-06765,39,Male,6.95,7.88,2.31,5.46,Poor,Low,4.49,1.39,Yes,Positive,Yes +USER-06766,57,Male,10.88,3.22,0.48,8.9,Excellent,Medium,6.84,9.08,No,Positive,No +USER-06767,35,Female,5.38,5.53,3.0,3.69,Good,Medium,4.64,0.16,Yes,Positive,No +USER-06768,65,Male,2.26,2.55,3.2,5.96,Fair,Medium,6.67,7.78,No,Negative,No +USER-06769,39,Female,1.6,3.22,0.67,4.79,Good,Medium,5.48,4.61,No,Negative,Yes +USER-06770,41,Male,7.4,1.42,2.53,11.4,Good,High,7.18,1.48,No,Positive,Yes +USER-06771,21,Other,8.23,7.12,3.48,4.71,Poor,High,5.4,8.73,No,Neutral,Yes +USER-06772,49,Other,2.08,2.11,3.78,7.92,Excellent,Low,6.99,4.35,No,Negative,Yes +USER-06773,30,Other,4.09,6.13,3.71,7.18,Good,High,8.32,4.82,Yes,Positive,No +USER-06774,24,Male,6.1,4.03,1.62,14.1,Excellent,Low,5.87,0.71,No,Positive,No +USER-06775,23,Male,8.92,2.9,3.72,14.99,Fair,Low,7.17,4.41,No,Neutral,No +USER-06776,19,Male,2.36,3.52,0.32,1.55,Good,High,6.0,5.67,Yes,Neutral,Yes +USER-06777,45,Male,10.67,1.88,1.49,4.79,Fair,Low,7.63,7.69,No,Positive,No +USER-06778,41,Other,5.71,7.24,4.04,9.91,Good,Medium,4.65,4.61,No,Negative,No +USER-06779,24,Female,1.0,3.93,1.15,6.53,Excellent,Medium,6.89,7.52,No,Positive,No +USER-06780,18,Female,9.41,6.11,1.46,3.25,Poor,High,8.27,5.7,Yes,Positive,No +USER-06781,27,Male,11.95,1.16,1.7,2.27,Fair,Low,8.53,5.85,Yes,Positive,Yes +USER-06782,58,Male,11.89,4.11,0.63,12.79,Fair,High,7.87,6.74,No,Neutral,No +USER-06783,52,Male,8.76,3.7,2.25,1.07,Fair,Low,4.11,2.31,Yes,Neutral,No +USER-06784,57,Female,1.68,2.24,1.31,12.06,Excellent,Low,4.41,9.86,Yes,Negative,No +USER-06785,62,Other,1.22,3.87,1.38,3.62,Fair,High,7.85,7.91,Yes,Positive,No +USER-06786,55,Other,5.05,6.09,2.6,1.51,Fair,High,8.3,7.48,No,Negative,No +USER-06787,61,Female,5.77,4.21,4.87,7.15,Excellent,Low,6.78,8.17,No,Positive,Yes +USER-06788,29,Female,6.03,1.41,4.64,1.95,Excellent,Medium,5.34,3.6,Yes,Neutral,No +USER-06789,37,Male,11.28,0.14,2.36,5.98,Excellent,Low,8.92,9.48,No,Neutral,No +USER-06790,41,Other,10.05,7.23,0.46,3.67,Poor,High,7.95,5.33,Yes,Neutral,No +USER-06791,28,Male,1.83,3.37,1.42,1.2,Poor,Medium,5.87,7.54,No,Positive,Yes +USER-06792,51,Other,9.5,3.86,4.1,14.7,Fair,Low,5.61,9.03,No,Neutral,No +USER-06793,60,Other,1.14,0.27,2.49,4.57,Excellent,Medium,5.15,7.9,Yes,Negative,Yes +USER-06794,40,Female,7.07,3.89,1.72,3.85,Excellent,Low,8.91,3.38,Yes,Negative,No +USER-06795,36,Male,11.13,3.91,4.83,5.78,Good,High,5.51,4.5,Yes,Positive,Yes +USER-06796,57,Male,5.12,4.31,4.43,5.01,Fair,Medium,8.9,7.64,No,Negative,No +USER-06797,45,Male,7.15,0.77,2.46,8.91,Excellent,High,8.15,4.09,No,Negative,Yes +USER-06798,26,Male,2.29,6.7,1.45,1.24,Good,Low,7.12,3.87,No,Neutral,Yes +USER-06799,31,Male,10.78,2.65,2.01,8.72,Good,Low,4.09,5.15,No,Neutral,Yes +USER-06800,34,Male,8.76,3.59,3.39,2.79,Poor,High,5.83,9.52,Yes,Neutral,Yes +USER-06801,58,Male,3.4,7.11,3.21,13.24,Poor,Low,7.69,7.2,No,Neutral,No +USER-06802,36,Female,10.9,5.59,2.47,8.95,Poor,High,8.25,5.71,No,Neutral,No +USER-06803,39,Other,2.06,0.81,3.92,12.04,Poor,Medium,6.4,8.34,Yes,Positive,No +USER-06804,20,Male,10.42,4.83,4.38,5.44,Good,High,8.51,7.03,Yes,Positive,No +USER-06805,56,Other,4.48,2.63,2.07,9.15,Good,Medium,6.13,1.35,No,Negative,Yes +USER-06806,19,Male,9.81,0.27,1.38,4.75,Excellent,Low,7.45,8.39,No,Positive,Yes +USER-06807,47,Male,7.24,4.91,2.53,5.63,Fair,Medium,7.7,2.4,Yes,Neutral,No +USER-06808,20,Other,3.66,3.29,1.18,8.75,Fair,High,7.52,3.62,Yes,Neutral,No +USER-06809,38,Female,7.65,4.85,1.22,6.83,Good,Low,6.92,3.33,Yes,Negative,Yes +USER-06810,41,Female,2.79,1.29,2.73,3.32,Excellent,High,8.99,5.13,Yes,Negative,Yes +USER-06811,48,Other,10.79,0.54,1.84,10.25,Poor,Medium,7.0,2.66,Yes,Neutral,No +USER-06812,35,Other,10.3,6.56,2.07,11.94,Excellent,Medium,5.39,1.92,No,Positive,No +USER-06813,53,Female,11.07,2.3,4.53,8.65,Excellent,Medium,4.12,1.69,Yes,Negative,Yes +USER-06814,28,Female,5.13,7.46,2.29,4.35,Poor,High,5.78,5.02,No,Negative,Yes +USER-06815,62,Male,10.55,1.34,4.99,13.42,Fair,Medium,4.55,7.77,Yes,Negative,No +USER-06816,44,Male,7.74,1.53,4.55,10.62,Fair,Low,6.74,9.31,Yes,Positive,No +USER-06817,27,Female,10.35,6.92,4.27,13.06,Good,Low,5.8,0.5,Yes,Negative,Yes +USER-06818,42,Male,1.73,3.79,1.48,4.67,Fair,Low,5.97,6.44,Yes,Negative,No +USER-06819,46,Other,10.8,4.58,4.15,11.22,Good,Low,7.2,5.23,No,Positive,No +USER-06820,26,Female,6.67,4.84,0.22,6.56,Poor,High,5.48,1.35,Yes,Neutral,Yes +USER-06821,26,Other,2.29,3.2,4.95,14.08,Fair,Medium,4.54,8.43,No,Positive,No +USER-06822,55,Male,8.76,6.11,0.91,10.27,Fair,Low,5.84,6.69,Yes,Positive,Yes +USER-06823,24,Other,11.1,7.95,4.62,8.88,Fair,Low,7.08,3.82,Yes,Negative,Yes +USER-06824,22,Female,3.45,3.89,0.4,1.83,Excellent,Medium,8.77,0.8,No,Negative,No +USER-06825,47,Male,6.84,2.45,3.8,7.08,Fair,Medium,7.79,5.02,Yes,Negative,No +USER-06826,30,Male,1.33,6.85,3.42,13.74,Excellent,Low,6.68,9.09,No,Positive,No +USER-06827,22,Male,10.67,2.27,1.26,12.14,Excellent,High,4.08,0.29,No,Negative,No +USER-06828,59,Other,10.2,7.97,2.0,1.34,Poor,Low,7.6,1.37,Yes,Neutral,No +USER-06829,65,Male,1.87,5.28,0.28,1.16,Excellent,High,8.08,2.54,Yes,Neutral,No +USER-06830,65,Other,3.73,2.43,0.97,9.48,Good,Medium,6.48,6.98,Yes,Negative,Yes +USER-06831,62,Male,7.64,5.93,2.5,4.62,Fair,Medium,6.26,3.4,Yes,Neutral,No +USER-06832,51,Female,10.54,2.83,3.25,3.92,Excellent,High,7.38,6.32,No,Negative,No +USER-06833,49,Male,3.15,3.75,1.15,13.14,Poor,High,6.33,8.91,Yes,Positive,No +USER-06834,62,Other,3.34,4.07,4.16,2.9,Fair,Medium,5.31,5.65,No,Positive,No +USER-06835,57,Female,3.79,2.25,2.94,11.74,Good,Low,6.6,4.89,No,Neutral,Yes +USER-06836,19,Female,11.49,5.11,4.39,12.11,Excellent,Low,4.55,0.95,Yes,Positive,No +USER-06837,65,Female,9.47,7.84,1.55,5.08,Fair,High,6.75,8.22,No,Negative,No +USER-06838,40,Female,10.77,6.33,4.04,10.72,Fair,Low,7.84,6.24,No,Positive,Yes +USER-06839,29,Male,2.52,4.91,2.35,12.85,Fair,Low,4.09,1.69,No,Positive,Yes +USER-06840,29,Male,4.71,3.28,4.65,6.94,Poor,High,4.13,9.03,No,Positive,Yes +USER-06841,32,Other,3.61,3.91,0.27,6.19,Excellent,Low,4.22,0.65,No,Positive,Yes +USER-06842,42,Female,9.31,5.88,0.23,6.05,Excellent,Low,4.71,7.69,Yes,Positive,No +USER-06843,54,Male,9.66,4.42,2.24,2.17,Poor,Low,4.22,8.52,No,Negative,Yes +USER-06844,25,Other,6.05,2.78,0.64,10.46,Excellent,High,4.8,3.31,No,Positive,No +USER-06845,39,Other,1.4,2.63,3.35,8.56,Poor,High,8.21,6.83,Yes,Positive,Yes +USER-06846,41,Male,11.44,6.54,0.11,4.75,Good,High,5.31,1.64,Yes,Negative,Yes +USER-06847,40,Female,7.06,7.74,2.13,11.14,Poor,Medium,8.44,9.63,Yes,Negative,Yes +USER-06848,61,Male,1.01,5.13,4.36,4.96,Excellent,Medium,8.4,3.11,Yes,Neutral,Yes +USER-06849,55,Male,6.35,6.55,4.31,5.1,Poor,High,5.81,1.35,No,Neutral,No +USER-06850,64,Other,10.67,6.31,3.24,9.35,Poor,Low,4.63,4.73,Yes,Positive,No +USER-06851,20,Other,2.1,7.96,2.74,2.88,Excellent,Low,4.69,8.44,No,Positive,No +USER-06852,19,Male,4.04,0.93,4.77,1.94,Poor,High,5.27,7.21,Yes,Positive,Yes +USER-06853,21,Other,9.12,2.15,2.54,3.06,Good,Low,7.02,3.51,Yes,Positive,Yes +USER-06854,24,Other,5.52,7.7,0.48,8.79,Poor,Low,8.7,4.77,No,Negative,Yes +USER-06855,62,Female,10.32,5.34,1.97,9.42,Excellent,Low,7.54,2.52,No,Negative,Yes +USER-06856,29,Female,8.63,2.12,1.55,14.34,Poor,Low,5.81,1.65,No,Negative,Yes +USER-06857,32,Other,6.87,6.29,0.82,6.34,Excellent,High,4.08,0.32,No,Neutral,No +USER-06858,42,Male,8.3,1.8,3.22,9.56,Fair,High,7.19,9.06,No,Negative,No +USER-06859,27,Female,4.41,3.85,3.25,3.83,Good,Low,7.57,7.29,Yes,Negative,No +USER-06860,40,Other,3.33,7.66,1.13,1.53,Fair,Low,5.97,0.29,Yes,Positive,No +USER-06861,56,Female,9.62,0.33,1.37,6.73,Fair,Medium,4.86,3.66,No,Neutral,Yes +USER-06862,38,Female,1.77,7.59,4.31,2.83,Poor,Low,7.23,1.02,No,Positive,Yes +USER-06863,48,Female,11.76,5.69,1.1,12.64,Poor,Medium,7.56,7.12,No,Negative,Yes +USER-06864,34,Male,5.65,5.16,3.97,11.91,Good,Low,4.08,4.82,Yes,Neutral,No +USER-06865,57,Female,1.31,6.41,1.96,10.66,Poor,Medium,8.38,9.93,Yes,Neutral,Yes +USER-06866,35,Male,10.87,2.19,3.92,10.51,Good,Low,4.29,6.99,Yes,Negative,Yes +USER-06867,18,Male,4.98,3.54,4.19,12.97,Good,Medium,4.31,7.16,Yes,Neutral,Yes +USER-06868,42,Female,8.57,0.35,1.09,11.79,Excellent,Low,7.13,1.25,No,Negative,Yes +USER-06869,39,Female,2.14,7.35,1.82,9.64,Fair,High,8.41,1.01,No,Positive,No +USER-06870,20,Male,8.63,1.78,1.08,10.87,Good,High,6.89,4.85,Yes,Positive,Yes +USER-06871,61,Female,9.36,2.11,0.48,7.92,Good,High,8.52,4.23,No,Negative,Yes +USER-06872,22,Male,3.99,5.47,4.43,10.22,Excellent,Medium,4.76,1.01,Yes,Positive,Yes +USER-06873,62,Male,11.35,0.4,2.94,11.31,Poor,High,8.27,9.23,Yes,Negative,Yes +USER-06874,65,Female,4.29,0.39,3.11,13.79,Excellent,Medium,5.84,1.13,No,Neutral,Yes +USER-06875,46,Male,10.51,3.12,3.97,6.3,Poor,High,4.49,8.81,Yes,Negative,No +USER-06876,19,Other,2.32,2.21,0.36,7.42,Fair,Medium,4.23,0.2,No,Neutral,Yes +USER-06877,22,Other,8.38,5.2,0.52,13.77,Poor,Medium,5.53,0.02,No,Neutral,Yes +USER-06878,55,Other,4.82,4.18,3.93,11.82,Good,Low,6.07,9.26,No,Positive,Yes +USER-06879,46,Male,9.2,5.71,4.06,14.52,Excellent,High,8.74,8.69,Yes,Negative,No +USER-06880,49,Other,6.7,7.65,0.72,12.29,Good,High,7.55,4.13,Yes,Positive,Yes +USER-06881,26,Other,8.03,1.6,2.89,6.48,Poor,High,6.75,7.64,Yes,Neutral,Yes +USER-06882,42,Male,3.16,0.89,3.91,11.39,Poor,Low,7.14,1.12,No,Neutral,Yes +USER-06883,65,Other,6.13,4.15,0.51,8.59,Poor,High,8.64,1.76,Yes,Positive,Yes +USER-06884,63,Female,4.56,5.24,3.3,4.28,Fair,High,8.67,0.91,No,Negative,No +USER-06885,43,Female,2.64,4.56,0.44,4.54,Excellent,Low,7.55,9.1,No,Negative,Yes +USER-06886,43,Female,6.96,0.53,4.38,11.42,Good,High,8.5,2.48,No,Negative,Yes +USER-06887,21,Female,6.8,1.39,1.41,5.81,Poor,High,7.82,8.23,Yes,Neutral,Yes +USER-06888,46,Female,7.36,2.3,3.83,12.82,Poor,Medium,7.35,1.53,No,Negative,Yes +USER-06889,37,Male,1.26,3.15,1.35,1.24,Fair,Medium,6.73,1.03,No,Positive,Yes +USER-06890,38,Male,5.32,0.61,1.86,14.78,Fair,Low,8.85,7.78,Yes,Neutral,No +USER-06891,35,Male,11.17,2.31,0.3,13.8,Poor,High,5.47,8.35,Yes,Positive,Yes +USER-06892,48,Other,5.22,6.41,3.02,5.79,Good,Medium,6.2,3.21,No,Negative,Yes +USER-06893,28,Other,4.85,1.58,0.05,9.28,Poor,High,8.93,5.51,No,Positive,No +USER-06894,58,Other,9.66,4.52,2.16,6.39,Good,High,5.52,7.18,No,Neutral,Yes +USER-06895,20,Male,8.99,6.67,3.27,4.78,Fair,High,7.21,6.86,No,Neutral,Yes +USER-06896,37,Female,1.63,4.11,2.52,6.23,Good,Medium,5.62,4.67,Yes,Positive,No +USER-06897,52,Male,9.86,0.84,4.39,4.51,Good,Low,8.89,4.17,Yes,Positive,No +USER-06898,39,Male,10.72,3.75,2.39,10.53,Fair,Medium,4.17,6.24,No,Positive,Yes +USER-06899,26,Other,9.08,3.38,3.72,2.1,Fair,High,4.7,8.1,Yes,Positive,No +USER-06900,65,Other,5.87,2.59,3.18,13.39,Good,High,7.78,4.44,No,Negative,No +USER-06901,62,Female,9.56,4.87,0.79,5.5,Fair,Low,8.7,4.24,No,Neutral,No +USER-06902,27,Female,7.83,0.95,2.26,7.1,Fair,Low,7.83,4.3,Yes,Negative,No +USER-06903,39,Male,6.22,6.04,4.18,9.11,Fair,Low,5.77,7.56,Yes,Negative,Yes +USER-06904,30,Male,10.0,1.22,1.84,1.24,Fair,Medium,6.29,3.94,No,Neutral,Yes +USER-06905,42,Male,10.68,4.7,0.98,13.9,Poor,High,6.81,4.58,Yes,Negative,No +USER-06906,22,Other,9.92,3.66,0.88,2.43,Fair,Medium,7.31,4.56,Yes,Negative,Yes +USER-06907,37,Female,7.75,6.7,2.45,14.42,Good,High,8.62,4.73,Yes,Negative,No +USER-06908,22,Other,6.81,7.07,1.57,1.83,Poor,Medium,8.64,3.93,No,Neutral,Yes +USER-06909,51,Other,10.13,6.94,2.98,8.86,Good,High,6.35,7.68,No,Positive,Yes +USER-06910,22,Other,8.87,5.69,4.38,11.5,Poor,High,6.86,9.4,Yes,Positive,Yes +USER-06911,28,Other,8.38,7.66,3.98,7.35,Good,Low,8.83,7.84,Yes,Negative,Yes +USER-06912,65,Other,9.49,5.44,1.05,8.36,Good,Medium,6.02,2.03,Yes,Neutral,No +USER-06913,65,Other,1.86,4.43,4.9,11.77,Excellent,High,4.96,6.9,Yes,Neutral,No +USER-06914,43,Female,4.22,3.64,2.19,9.11,Good,High,6.99,6.54,Yes,Neutral,No +USER-06915,50,Other,11.65,5.06,2.94,13.34,Poor,High,5.7,7.46,No,Positive,No +USER-06916,30,Other,2.6,2.67,4.93,9.74,Poor,Medium,7.94,7.39,No,Positive,No +USER-06917,41,Other,10.57,1.79,4.28,9.83,Poor,High,4.45,4.45,Yes,Positive,Yes +USER-06918,44,Other,4.43,3.92,2.79,10.45,Excellent,Medium,7.44,2.25,Yes,Positive,No +USER-06919,65,Male,10.82,3.13,1.36,6.24,Good,Low,4.79,9.93,No,Neutral,No +USER-06920,53,Female,6.34,0.77,4.0,4.12,Fair,Low,7.91,7.67,Yes,Negative,No +USER-06921,26,Female,3.11,3.68,3.76,10.28,Fair,Medium,8.8,0.19,Yes,Neutral,No +USER-06922,47,Other,9.82,3.06,2.31,3.71,Good,Medium,6.38,6.44,No,Positive,Yes +USER-06923,61,Female,3.81,8.0,2.78,12.58,Good,Medium,5.32,6.03,Yes,Positive,No +USER-06924,43,Female,10.87,4.58,2.5,14.24,Poor,High,7.78,3.78,Yes,Neutral,No +USER-06925,20,Other,9.82,5.45,1.67,2.53,Excellent,High,4.12,6.68,No,Neutral,Yes +USER-06926,41,Female,3.22,3.53,2.46,12.29,Poor,Low,4.51,4.11,No,Positive,Yes +USER-06927,64,Other,3.76,4.58,1.01,2.02,Good,High,6.33,5.07,No,Neutral,Yes +USER-06928,36,Other,5.16,1.23,4.68,10.52,Fair,Medium,4.26,8.73,Yes,Positive,No +USER-06929,19,Female,11.82,1.82,1.79,5.54,Good,Low,5.21,7.56,Yes,Positive,No +USER-06930,24,Other,8.8,1.46,4.73,7.48,Good,Low,4.04,3.61,Yes,Neutral,No +USER-06931,42,Other,7.32,2.15,3.58,14.37,Good,Medium,5.49,3.36,No,Neutral,No +USER-06932,62,Male,10.8,6.61,1.45,6.53,Poor,Low,6.31,1.97,No,Positive,No +USER-06933,28,Male,10.4,3.68,4.7,13.47,Excellent,High,6.51,8.38,Yes,Positive,No +USER-06934,49,Male,7.71,6.91,2.85,6.25,Fair,High,7.53,9.79,Yes,Neutral,Yes +USER-06935,40,Other,11.61,4.12,1.01,9.76,Good,Medium,5.03,9.95,Yes,Positive,Yes +USER-06936,53,Female,9.27,0.48,1.38,9.64,Good,High,7.84,6.38,Yes,Positive,Yes +USER-06937,38,Male,5.75,0.01,4.33,9.04,Excellent,Low,6.02,4.08,No,Positive,Yes +USER-06938,23,Female,4.04,0.81,2.84,1.81,Poor,Low,8.06,0.62,No,Negative,Yes +USER-06939,59,Male,7.36,3.59,3.1,7.24,Poor,High,8.87,1.87,Yes,Positive,No +USER-06940,40,Female,9.42,0.39,0.9,13.32,Good,Medium,4.74,5.77,No,Negative,Yes +USER-06941,38,Female,9.8,4.12,2.39,3.87,Fair,Medium,8.71,2.94,Yes,Neutral,No +USER-06942,55,Other,8.39,1.69,1.58,9.61,Excellent,Low,6.94,5.4,Yes,Neutral,No +USER-06943,62,Female,5.33,3.68,1.13,10.09,Fair,Medium,4.59,8.2,Yes,Neutral,Yes +USER-06944,35,Female,3.78,0.58,3.97,12.67,Poor,Medium,8.76,9.16,No,Neutral,Yes +USER-06945,20,Male,4.62,3.83,4.37,11.97,Excellent,High,6.7,8.59,Yes,Positive,No +USER-06946,31,Other,1.9,1.51,0.2,9.78,Good,Low,7.34,2.83,Yes,Positive,Yes +USER-06947,20,Other,3.15,6.17,0.3,9.02,Fair,Medium,5.67,3.69,No,Negative,Yes +USER-06948,24,Female,9.17,5.45,2.19,10.66,Good,Medium,4.7,8.16,No,Neutral,Yes +USER-06949,44,Male,10.4,7.93,2.86,5.01,Fair,Low,7.6,7.27,No,Positive,No +USER-06950,60,Other,4.23,0.71,4.72,13.6,Fair,High,6.57,8.76,No,Negative,Yes +USER-06951,56,Other,3.03,4.87,0.03,4.62,Excellent,Low,4.77,7.65,Yes,Neutral,Yes +USER-06952,20,Male,4.97,0.63,1.53,5.46,Poor,Medium,8.86,7.6,No,Negative,No +USER-06953,64,Other,10.09,6.03,2.53,6.29,Fair,High,5.02,4.96,Yes,Positive,No +USER-06954,59,Male,11.17,5.16,2.53,13.54,Good,Low,6.54,3.52,No,Neutral,No +USER-06955,32,Female,2.48,6.56,2.37,13.33,Good,Medium,5.62,3.14,Yes,Negative,No +USER-06956,21,Other,8.47,3.64,0.35,4.92,Good,Medium,4.77,7.54,Yes,Negative,No +USER-06957,38,Male,2.7,0.22,3.59,7.36,Poor,Medium,7.79,0.95,No,Negative,Yes +USER-06958,46,Other,4.94,5.75,3.43,2.67,Excellent,High,6.81,6.57,Yes,Negative,No +USER-06959,36,Other,5.55,0.99,2.23,3.89,Poor,Medium,7.48,2.55,Yes,Neutral,Yes +USER-06960,59,Male,10.18,7.06,0.83,8.76,Good,Medium,8.13,7.82,No,Neutral,Yes +USER-06961,28,Other,1.11,0.54,2.45,6.46,Excellent,High,5.11,8.32,Yes,Negative,No +USER-06962,20,Female,4.72,4.26,0.53,11.62,Fair,Medium,4.82,9.49,Yes,Positive,No +USER-06963,20,Male,10.34,5.04,1.55,3.39,Fair,Medium,5.18,9.85,No,Negative,No +USER-06964,27,Male,10.15,6.28,3.85,6.92,Poor,Medium,6.02,8.1,Yes,Positive,Yes +USER-06965,40,Other,1.86,1.97,3.11,5.23,Fair,Low,7.74,8.89,Yes,Negative,Yes +USER-06966,32,Male,4.16,1.18,2.43,11.5,Fair,Low,5.09,3.63,Yes,Neutral,Yes +USER-06967,26,Other,2.85,4.65,0.72,1.31,Fair,High,7.58,8.63,Yes,Neutral,No +USER-06968,51,Female,9.42,2.4,2.68,5.28,Poor,High,7.18,8.27,No,Negative,No +USER-06969,26,Female,2.02,4.5,2.71,3.15,Poor,Low,5.6,4.0,No,Neutral,Yes +USER-06970,26,Male,7.03,4.23,2.5,2.09,Fair,Low,4.31,8.05,No,Neutral,No +USER-06971,37,Other,8.38,7.17,2.51,5.98,Fair,Medium,4.81,5.67,Yes,Positive,No +USER-06972,31,Female,2.46,5.78,3.03,14.34,Excellent,Low,6.43,2.09,No,Neutral,No +USER-06973,57,Female,3.4,1.68,1.92,13.09,Poor,Low,5.99,2.05,No,Neutral,Yes +USER-06974,65,Other,2.92,4.07,0.89,11.88,Poor,High,6.21,5.24,No,Negative,No +USER-06975,40,Female,5.81,6.32,2.22,7.49,Poor,Low,7.1,6.0,Yes,Negative,No +USER-06976,54,Female,4.06,4.06,4.72,13.34,Excellent,High,5.51,8.83,Yes,Positive,Yes +USER-06977,38,Other,6.78,1.54,0.15,1.94,Good,Low,8.14,1.02,Yes,Negative,Yes +USER-06978,24,Female,9.64,3.46,0.38,8.32,Fair,Medium,6.06,2.61,No,Neutral,Yes +USER-06979,37,Female,7.33,6.3,3.94,8.07,Good,High,7.53,2.21,Yes,Neutral,No +USER-06980,49,Male,7.08,3.21,3.52,1.1,Good,Low,8.87,3.33,No,Negative,No +USER-06981,40,Female,9.07,6.22,3.53,13.91,Good,Low,5.02,8.01,Yes,Positive,Yes +USER-06982,50,Male,4.56,6.04,0.61,10.27,Poor,Low,7.59,9.5,Yes,Negative,Yes +USER-06983,52,Female,6.66,0.24,1.55,8.46,Fair,Medium,7.09,3.62,No,Positive,Yes +USER-06984,29,Other,1.42,0.28,2.07,5.41,Fair,Low,8.78,9.3,No,Neutral,No +USER-06985,38,Male,1.83,1.26,2.5,3.27,Fair,Low,5.22,6.58,Yes,Negative,Yes +USER-06986,38,Other,2.35,1.53,4.9,11.35,Good,Medium,4.11,8.27,Yes,Positive,Yes +USER-06987,48,Male,2.44,7.0,2.12,4.98,Fair,Low,6.77,6.21,No,Neutral,No +USER-06988,26,Male,9.87,6.22,1.55,14.18,Good,Medium,8.36,2.73,Yes,Neutral,No +USER-06989,56,Male,6.36,4.18,0.27,12.31,Good,Low,7.69,7.38,Yes,Neutral,No +USER-06990,59,Male,5.31,2.33,2.21,12.74,Excellent,High,6.25,0.23,No,Positive,No +USER-06991,41,Other,11.63,2.15,1.06,10.09,Fair,High,6.71,0.79,Yes,Positive,No +USER-06992,56,Male,11.72,2.58,4.86,4.39,Excellent,Medium,6.61,2.05,Yes,Negative,No +USER-06993,26,Male,8.37,4.69,2.21,3.74,Good,Medium,7.51,3.07,Yes,Negative,Yes +USER-06994,53,Female,8.62,3.24,0.82,9.55,Excellent,High,8.1,6.9,No,Negative,Yes +USER-06995,59,Male,6.86,0.3,0.23,2.67,Poor,Low,8.15,8.73,No,Neutral,No +USER-06996,21,Male,1.7,1.72,2.59,2.4,Fair,Medium,6.51,1.84,No,Positive,Yes +USER-06997,30,Other,10.42,0.79,1.65,8.97,Good,Low,5.37,0.54,No,Negative,Yes +USER-06998,22,Male,11.06,4.11,1.92,13.57,Poor,Medium,4.31,8.88,Yes,Neutral,No +USER-06999,55,Male,9.05,7.85,2.22,9.8,Fair,Medium,7.99,2.18,No,Positive,Yes +USER-07000,32,Male,5.97,3.57,3.15,10.13,Good,High,7.79,2.19,No,Positive,No +USER-07001,49,Female,4.7,7.19,1.48,8.67,Excellent,Low,6.45,8.38,No,Positive,Yes +USER-07002,24,Male,4.72,3.68,4.87,3.15,Good,Low,4.8,4.11,No,Neutral,Yes +USER-07003,35,Female,6.2,7.64,1.56,1.65,Excellent,High,4.23,2.98,No,Negative,No +USER-07004,60,Male,10.82,1.75,2.98,11.43,Excellent,High,8.64,4.8,Yes,Positive,No +USER-07005,58,Female,10.93,4.21,0.65,3.43,Fair,Low,4.45,6.78,No,Neutral,Yes +USER-07006,57,Female,4.54,0.88,1.13,7.17,Fair,Low,5.4,4.09,Yes,Negative,No +USER-07007,57,Male,9.7,6.02,4.67,1.93,Excellent,Low,5.96,7.95,No,Negative,No +USER-07008,45,Female,7.43,3.2,3.8,9.64,Excellent,Low,5.24,3.24,No,Positive,Yes +USER-07009,41,Female,10.41,4.94,2.04,5.16,Fair,Medium,7.62,8.36,No,Negative,No +USER-07010,59,Male,4.39,6.44,0.82,13.17,Poor,Medium,7.03,6.8,No,Neutral,Yes +USER-07011,41,Female,2.89,2.78,1.57,4.83,Good,High,5.61,0.47,Yes,Negative,Yes +USER-07012,64,Female,10.74,3.2,3.13,11.83,Fair,Medium,7.53,7.08,No,Neutral,Yes +USER-07013,52,Male,3.08,4.18,0.93,1.72,Fair,High,8.36,4.32,Yes,Positive,Yes +USER-07014,53,Other,11.17,3.75,1.18,12.27,Excellent,High,5.39,2.11,No,Positive,No +USER-07015,25,Female,2.53,3.07,3.19,14.1,Good,Medium,8.96,5.68,Yes,Neutral,No +USER-07016,65,Male,9.25,5.45,3.16,14.92,Poor,Low,5.87,6.82,Yes,Positive,No +USER-07017,34,Male,2.45,2.82,4.16,7.04,Good,Medium,6.67,3.32,Yes,Negative,Yes +USER-07018,21,Other,10.49,5.73,3.8,12.99,Excellent,Medium,7.48,6.51,No,Neutral,Yes +USER-07019,39,Male,5.91,5.72,2.64,12.9,Fair,Low,4.46,6.51,No,Negative,Yes +USER-07020,33,Male,4.01,1.79,3.46,8.39,Poor,Low,5.45,6.96,Yes,Positive,No +USER-07021,28,Female,3.31,7.64,0.31,7.96,Fair,Medium,6.77,4.49,No,Positive,No +USER-07022,33,Other,3.01,0.35,1.39,5.8,Poor,Low,4.44,2.27,No,Positive,Yes +USER-07023,59,Male,4.83,6.4,1.24,9.71,Poor,High,4.1,5.17,Yes,Neutral,No +USER-07024,22,Male,5.53,0.21,4.47,14.44,Fair,Medium,5.42,8.37,Yes,Negative,No +USER-07025,49,Other,10.59,3.23,0.25,5.9,Poor,Low,6.78,1.34,No,Negative,Yes +USER-07026,42,Female,1.56,1.45,4.91,6.61,Poor,High,7.43,9.06,No,Negative,No +USER-07027,51,Other,11.37,6.18,0.97,12.72,Fair,Low,4.83,6.93,No,Negative,No +USER-07028,43,Male,11.15,2.21,2.91,11.87,Poor,Low,8.53,2.78,Yes,Negative,Yes +USER-07029,31,Female,2.96,2.31,1.09,13.8,Excellent,Medium,4.17,3.81,No,Positive,Yes +USER-07030,41,Other,7.52,7.04,3.93,5.21,Fair,High,5.56,8.36,No,Negative,No +USER-07031,33,Other,9.42,4.28,4.67,2.9,Excellent,Low,7.49,4.28,Yes,Negative,No +USER-07032,56,Female,2.13,5.17,0.64,13.42,Good,Low,8.82,7.86,Yes,Neutral,Yes +USER-07033,43,Male,5.39,1.15,4.22,14.05,Fair,Low,4.06,8.6,Yes,Positive,No +USER-07034,54,Female,9.47,5.29,3.2,6.61,Excellent,Low,7.74,6.39,Yes,Negative,Yes +USER-07035,49,Female,1.97,0.59,3.43,14.26,Excellent,High,4.37,1.65,No,Neutral,No +USER-07036,52,Female,8.8,0.21,1.29,3.92,Poor,High,5.53,4.3,Yes,Negative,Yes +USER-07037,62,Other,1.12,0.77,2.4,5.62,Poor,Low,7.53,0.19,Yes,Positive,No +USER-07038,37,Female,5.91,1.32,0.98,10.83,Good,Low,8.2,6.63,Yes,Positive,Yes +USER-07039,63,Female,7.92,5.26,4.37,5.59,Good,Low,4.93,7.78,Yes,Neutral,No +USER-07040,59,Other,9.37,0.28,2.83,1.97,Fair,Medium,6.31,4.08,No,Negative,No +USER-07041,18,Male,8.96,1.74,4.73,4.77,Good,High,8.42,0.06,No,Negative,No +USER-07042,18,Female,1.72,2.52,4.63,2.8,Poor,High,7.26,2.45,No,Positive,No +USER-07043,59,Other,8.43,2.37,2.43,4.54,Good,High,4.38,9.96,Yes,Negative,No +USER-07044,24,Female,8.27,3.77,0.81,3.42,Poor,High,7.86,0.66,No,Neutral,No +USER-07045,44,Female,7.98,7.28,2.84,5.21,Excellent,Medium,7.74,6.76,Yes,Negative,No +USER-07046,54,Male,1.42,7.32,3.06,8.76,Poor,Low,4.26,3.62,Yes,Negative,Yes +USER-07047,59,Female,1.97,5.15,3.14,5.32,Poor,Low,5.59,4.67,No,Neutral,Yes +USER-07048,22,Male,6.28,4.16,2.62,6.91,Fair,Low,4.22,3.91,Yes,Positive,Yes +USER-07049,41,Female,8.99,3.08,3.87,5.54,Good,Low,8.31,1.93,Yes,Neutral,No +USER-07050,59,Male,9.42,7.11,3.46,3.75,Fair,Medium,5.27,7.37,No,Negative,No +USER-07051,35,Female,10.49,4.24,2.77,13.48,Good,Low,6.57,9.78,No,Neutral,Yes +USER-07052,56,Female,6.8,2.0,4.86,10.8,Fair,Medium,5.34,6.4,Yes,Negative,No +USER-07053,34,Male,2.51,2.65,3.54,3.29,Poor,Medium,4.84,3.16,Yes,Positive,Yes +USER-07054,33,Female,3.08,6.92,1.83,6.19,Good,Low,7.07,5.77,No,Neutral,No +USER-07055,62,Male,3.28,2.61,0.46,1.88,Fair,Medium,7.61,1.76,Yes,Neutral,No +USER-07056,27,Other,8.95,7.08,2.86,1.93,Poor,High,5.14,9.46,Yes,Neutral,Yes +USER-07057,28,Other,1.32,6.87,0.71,3.35,Excellent,Low,6.6,0.04,Yes,Negative,No +USER-07058,35,Other,1.96,4.63,3.01,3.49,Excellent,Low,7.75,9.78,Yes,Neutral,No +USER-07059,43,Female,1.33,4.91,4.65,3.1,Fair,High,5.07,6.06,No,Positive,Yes +USER-07060,65,Other,3.18,4.53,1.3,2.98,Fair,Low,5.43,6.7,No,Negative,Yes +USER-07061,44,Other,2.7,7.91,1.53,11.68,Poor,High,8.44,9.2,No,Negative,Yes +USER-07062,20,Other,11.45,5.68,0.56,13.83,Fair,Low,6.38,0.36,Yes,Positive,No +USER-07063,60,Other,4.37,4.15,4.26,6.92,Excellent,Medium,7.69,1.16,Yes,Neutral,Yes +USER-07064,18,Other,11.68,6.7,4.71,7.39,Good,Medium,6.27,6.23,Yes,Negative,No +USER-07065,56,Male,5.76,4.72,3.86,2.89,Good,High,5.41,8.64,Yes,Negative,Yes +USER-07066,42,Other,8.9,5.77,2.18,3.29,Good,High,4.07,0.88,No,Positive,Yes +USER-07067,63,Female,5.39,2.93,4.93,7.08,Excellent,Medium,5.88,6.54,No,Neutral,No +USER-07068,42,Female,7.0,7.13,4.98,9.71,Good,Medium,7.93,1.8,Yes,Positive,No +USER-07069,26,Female,4.5,0.15,2.08,4.14,Excellent,Medium,8.73,7.7,No,Neutral,No +USER-07070,53,Male,10.12,0.02,3.24,8.24,Good,Medium,5.04,6.42,No,Negative,Yes +USER-07071,65,Male,11.07,7.25,2.4,4.96,Good,Low,6.38,1.89,Yes,Negative,No +USER-07072,53,Male,7.84,6.93,0.42,13.2,Excellent,Medium,7.34,1.26,No,Neutral,Yes +USER-07073,65,Male,2.53,1.42,2.23,11.97,Good,Low,8.58,1.0,No,Positive,No +USER-07074,43,Other,10.73,5.4,0.83,1.14,Good,Medium,4.44,8.66,No,Positive,Yes +USER-07075,18,Female,6.67,1.97,0.64,8.81,Good,High,5.21,9.81,No,Positive,Yes +USER-07076,42,Female,3.6,3.17,2.17,10.62,Poor,High,5.5,5.88,Yes,Negative,Yes +USER-07077,28,Female,5.53,7.76,1.48,12.08,Good,Low,4.75,4.47,No,Neutral,No +USER-07078,46,Other,11.79,6.84,4.8,12.28,Poor,Medium,6.49,1.91,No,Neutral,No +USER-07079,65,Male,9.31,5.13,3.38,2.67,Fair,Low,4.22,1.74,Yes,Neutral,Yes +USER-07080,55,Male,11.88,4.36,4.83,8.24,Excellent,High,6.05,5.78,No,Positive,No +USER-07081,65,Female,2.35,7.91,2.12,12.9,Fair,Medium,8.99,9.29,No,Negative,No +USER-07082,57,Male,2.68,7.2,4.95,5.23,Good,High,7.54,7.56,No,Positive,Yes +USER-07083,44,Other,3.33,7.61,4.64,10.38,Fair,High,6.07,1.46,Yes,Positive,Yes +USER-07084,32,Other,1.38,4.4,4.45,9.02,Fair,Low,4.12,0.74,Yes,Positive,Yes +USER-07085,36,Female,4.52,4.59,0.86,5.55,Excellent,Medium,5.96,7.25,No,Neutral,Yes +USER-07086,59,Female,3.5,2.84,4.9,2.07,Poor,Low,6.57,2.65,Yes,Negative,Yes +USER-07087,52,Other,3.02,5.89,1.48,2.72,Good,Medium,5.74,4.96,Yes,Neutral,No +USER-07088,45,Male,7.95,6.98,3.48,2.3,Excellent,Medium,7.07,4.98,Yes,Positive,No +USER-07089,24,Female,1.41,6.2,3.95,12.11,Fair,High,5.33,5.45,No,Neutral,No +USER-07090,62,Male,8.21,4.47,4.42,5.18,Fair,Medium,6.19,4.55,No,Negative,Yes +USER-07091,28,Other,9.03,7.29,1.82,14.46,Fair,Low,8.19,3.18,No,Neutral,Yes +USER-07092,45,Other,4.74,2.46,1.22,2.4,Excellent,Low,8.67,9.61,No,Positive,Yes +USER-07093,25,Female,4.34,1.86,2.05,11.76,Fair,High,6.63,6.13,No,Negative,No +USER-07094,26,Other,11.9,0.22,4.27,12.66,Good,Low,5.95,3.08,Yes,Negative,No +USER-07095,23,Male,9.45,2.23,3.7,14.0,Poor,Medium,8.3,7.36,Yes,Positive,No +USER-07096,65,Female,2.88,0.06,4.78,8.46,Fair,High,4.48,7.24,Yes,Negative,No +USER-07097,27,Other,8.58,1.96,2.81,10.29,Poor,Medium,6.38,5.91,No,Positive,Yes +USER-07098,57,Other,9.93,2.06,1.2,5.63,Fair,High,8.0,4.24,No,Positive,Yes +USER-07099,55,Male,3.84,3.32,2.11,1.69,Poor,Medium,8.83,0.89,No,Negative,No +USER-07100,38,Other,3.12,0.18,0.23,9.39,Good,High,6.84,5.97,Yes,Neutral,No +USER-07101,31,Other,5.0,7.16,0.08,7.92,Fair,High,6.85,3.28,Yes,Negative,No +USER-07102,35,Other,2.33,3.18,0.2,1.47,Excellent,Medium,8.49,7.93,Yes,Neutral,Yes +USER-07103,60,Other,4.61,3.01,3.64,10.45,Poor,Low,6.62,7.32,Yes,Negative,No +USER-07104,49,Male,4.53,7.16,4.5,12.16,Good,High,5.12,5.51,No,Positive,Yes +USER-07105,24,Male,5.46,0.65,4.25,1.16,Good,Low,6.74,6.62,No,Neutral,No +USER-07106,33,Other,1.93,5.08,0.18,10.52,Good,Low,4.71,7.23,No,Neutral,No +USER-07107,50,Female,4.97,6.51,3.73,3.38,Fair,Medium,7.73,8.69,No,Negative,No +USER-07108,18,Female,2.87,5.06,2.31,6.87,Good,Low,5.43,1.85,Yes,Negative,No +USER-07109,51,Male,4.71,1.13,4.46,11.72,Fair,Medium,6.43,3.26,No,Negative,No +USER-07110,36,Male,10.9,0.0,2.74,12.76,Fair,Low,7.1,6.22,No,Negative,Yes +USER-07111,38,Female,11.9,6.84,3.86,14.18,Excellent,Medium,8.19,3.26,No,Neutral,Yes +USER-07112,19,Other,2.04,3.53,4.44,7.0,Good,Medium,8.97,7.93,No,Neutral,Yes +USER-07113,60,Male,6.15,6.87,2.36,6.59,Poor,Low,7.35,3.8,Yes,Neutral,No +USER-07114,26,Female,7.86,3.57,0.51,7.76,Excellent,High,7.9,4.93,No,Negative,Yes +USER-07115,45,Male,6.68,5.37,4.07,12.23,Poor,Medium,4.69,9.17,Yes,Negative,Yes +USER-07116,27,Male,5.73,0.16,3.88,1.81,Good,Medium,8.71,0.03,Yes,Neutral,Yes +USER-07117,60,Male,6.4,5.65,3.83,5.07,Poor,High,5.75,7.69,No,Negative,No +USER-07118,54,Male,11.04,3.65,3.34,4.72,Fair,Low,4.72,2.35,No,Neutral,Yes +USER-07119,18,Male,11.74,0.57,2.07,2.96,Fair,Medium,6.57,2.82,Yes,Positive,Yes +USER-07120,50,Other,1.88,2.38,3.57,7.81,Poor,Medium,4.3,7.61,No,Positive,Yes +USER-07121,47,Other,4.71,7.37,4.25,5.82,Excellent,High,7.69,6.25,Yes,Positive,Yes +USER-07122,30,Female,4.72,4.13,0.03,1.58,Fair,Medium,8.08,1.05,Yes,Neutral,No +USER-07123,30,Female,9.19,7.09,3.81,3.88,Good,Medium,6.39,6.29,Yes,Positive,No +USER-07124,42,Female,5.72,0.31,2.57,8.86,Good,Low,6.95,5.28,Yes,Negative,Yes +USER-07125,58,Other,3.88,1.94,2.97,3.12,Fair,Medium,5.05,1.12,Yes,Positive,Yes +USER-07126,46,Other,8.64,0.42,2.94,11.96,Poor,High,8.41,8.24,Yes,Positive,No +USER-07127,59,Other,1.58,0.66,4.83,6.05,Poor,High,8.07,5.29,No,Negative,No +USER-07128,44,Other,9.01,3.03,1.25,5.35,Fair,Low,5.54,5.46,Yes,Neutral,No +USER-07129,38,Female,2.36,6.77,1.53,6.55,Excellent,Medium,4.54,9.23,No,Negative,No +USER-07130,33,Female,4.99,1.12,2.26,11.09,Excellent,Medium,8.12,5.38,No,Positive,Yes +USER-07131,35,Male,3.63,4.83,4.75,6.54,Poor,High,8.37,8.94,Yes,Neutral,Yes +USER-07132,41,Other,10.46,7.88,0.24,8.15,Fair,High,6.14,4.72,No,Neutral,Yes +USER-07133,42,Other,7.42,4.15,1.11,11.1,Poor,Low,7.07,2.38,Yes,Positive,No +USER-07134,34,Male,2.18,0.12,3.8,9.14,Good,High,5.21,2.47,No,Negative,No +USER-07135,34,Other,7.58,6.82,1.74,13.78,Poor,Low,6.22,7.6,Yes,Positive,No +USER-07136,27,Female,10.67,4.27,0.07,12.44,Poor,Low,6.82,0.55,Yes,Neutral,Yes +USER-07137,51,Other,6.24,6.88,3.35,4.79,Good,Medium,7.86,7.8,Yes,Positive,Yes +USER-07138,46,Other,1.57,7.1,2.64,1.77,Fair,Low,5.97,7.25,No,Neutral,Yes +USER-07139,27,Female,8.79,5.99,1.49,1.98,Fair,High,6.9,5.84,Yes,Negative,No +USER-07140,25,Female,4.38,7.81,2.67,11.06,Poor,High,8.72,8.86,No,Neutral,No +USER-07141,19,Female,10.8,7.65,4.54,3.12,Fair,High,5.1,9.56,Yes,Positive,Yes +USER-07142,36,Female,11.1,7.26,4.45,2.29,Poor,Low,7.06,6.42,No,Neutral,Yes +USER-07143,44,Male,7.89,6.51,2.99,11.25,Fair,Medium,5.67,4.77,Yes,Negative,No +USER-07144,25,Other,10.21,4.81,4.72,5.79,Fair,Medium,5.99,6.19,Yes,Neutral,Yes +USER-07145,20,Female,3.04,7.66,1.5,2.16,Good,Medium,7.59,0.74,No,Neutral,Yes +USER-07146,46,Male,10.15,5.48,1.16,7.97,Good,High,6.5,7.98,No,Neutral,Yes +USER-07147,37,Male,2.97,7.39,2.76,3.91,Good,Medium,5.1,6.69,Yes,Negative,Yes +USER-07148,57,Female,3.23,5.72,2.38,13.6,Poor,High,5.4,8.01,Yes,Neutral,Yes +USER-07149,25,Male,10.22,6.52,1.39,13.28,Poor,Medium,4.97,6.35,No,Positive,No +USER-07150,55,Other,6.17,7.14,4.25,5.43,Excellent,High,4.69,0.71,No,Negative,Yes +USER-07151,30,Female,8.99,4.0,2.19,3.15,Poor,Low,8.99,6.81,No,Neutral,Yes +USER-07152,63,Female,3.97,4.33,0.79,9.45,Fair,High,4.44,6.76,No,Neutral,Yes +USER-07153,42,Other,6.69,4.39,3.67,5.67,Excellent,High,6.24,0.01,No,Positive,Yes +USER-07154,24,Female,9.49,6.61,0.73,9.87,Excellent,Medium,4.3,9.14,No,Neutral,No +USER-07155,41,Male,7.25,1.79,2.9,14.62,Poor,High,5.69,3.58,Yes,Positive,Yes +USER-07156,33,Other,11.43,7.19,4.12,14.02,Poor,Low,7.69,8.37,No,Negative,No +USER-07157,64,Female,4.21,4.81,4.06,9.59,Excellent,Low,8.19,7.93,Yes,Neutral,No +USER-07158,27,Other,3.0,1.74,0.67,12.74,Poor,Medium,6.0,3.42,No,Positive,Yes +USER-07159,50,Other,8.18,7.42,0.22,4.32,Poor,Low,8.07,6.53,No,Neutral,Yes +USER-07160,45,Female,6.69,7.81,1.04,1.05,Poor,High,6.84,5.59,No,Positive,No +USER-07161,54,Other,5.97,7.83,1.88,13.28,Poor,Medium,6.72,3.26,Yes,Negative,Yes +USER-07162,46,Male,10.18,7.79,3.34,13.42,Fair,Medium,4.41,1.23,No,Positive,Yes +USER-07163,49,Male,1.36,1.24,2.16,10.28,Good,Medium,7.11,4.73,Yes,Positive,No +USER-07164,19,Other,2.27,6.75,4.43,14.54,Poor,High,5.81,1.87,No,Neutral,No +USER-07165,35,Male,3.61,4.15,2.24,6.46,Fair,Low,6.17,8.09,Yes,Positive,No +USER-07166,25,Other,8.85,6.52,3.87,10.81,Fair,Medium,7.69,6.32,Yes,Neutral,No +USER-07167,55,Male,8.6,5.86,0.57,4.17,Fair,Medium,7.72,3.69,Yes,Negative,Yes +USER-07168,36,Male,7.53,7.88,0.81,2.74,Excellent,Medium,6.05,0.06,Yes,Positive,No +USER-07169,28,Female,5.99,4.41,0.36,4.84,Good,High,6.28,1.23,Yes,Negative,No +USER-07170,36,Other,3.18,1.6,2.95,11.84,Good,Medium,7.31,9.7,No,Negative,Yes +USER-07171,48,Female,6.13,0.73,2.3,3.17,Excellent,High,4.72,2.39,No,Negative,No +USER-07172,29,Female,9.01,2.65,4.67,3.83,Excellent,Low,8.57,7.5,Yes,Positive,No +USER-07173,27,Female,2.87,4.35,3.46,6.62,Good,High,7.55,6.48,No,Neutral,No +USER-07174,46,Male,10.15,7.32,2.51,6.43,Poor,Low,7.86,6.13,Yes,Positive,Yes +USER-07175,20,Female,9.12,1.51,0.12,4.4,Excellent,Medium,4.62,6.73,Yes,Neutral,Yes +USER-07176,30,Other,1.84,1.98,0.24,14.74,Fair,Low,7.01,7.88,No,Neutral,No +USER-07177,39,Other,11.53,0.36,4.04,1.31,Good,Medium,6.03,1.79,No,Positive,Yes +USER-07178,43,Other,3.52,2.0,3.37,6.75,Excellent,Medium,8.45,9.44,Yes,Positive,No +USER-07179,50,Other,7.32,2.63,4.99,7.49,Excellent,High,8.47,6.92,Yes,Positive,No +USER-07180,33,Other,7.99,2.89,1.66,7.92,Poor,Low,6.93,5.97,Yes,Positive,Yes +USER-07181,29,Male,11.58,6.84,0.1,10.64,Poor,High,7.96,1.95,Yes,Negative,Yes +USER-07182,47,Male,2.53,3.54,3.54,9.51,Poor,High,7.05,7.35,No,Positive,Yes +USER-07183,24,Other,6.1,0.83,3.34,6.24,Good,High,6.05,9.27,No,Negative,Yes +USER-07184,57,Female,7.01,5.62,1.44,5.23,Excellent,Low,5.97,6.18,Yes,Positive,No +USER-07185,34,Female,8.22,6.72,2.02,13.98,Poor,Low,8.53,9.54,No,Positive,Yes +USER-07186,46,Female,7.36,2.0,2.26,2.66,Excellent,Low,6.0,4.7,No,Negative,No +USER-07187,56,Female,8.91,7.31,3.75,11.73,Fair,High,6.96,1.93,No,Negative,No +USER-07188,63,Other,3.07,7.76,0.18,5.53,Poor,Low,4.86,1.29,Yes,Negative,Yes +USER-07189,38,Male,10.13,5.57,1.29,8.03,Good,Medium,8.89,3.23,No,Negative,No +USER-07190,21,Other,8.19,6.0,2.48,10.24,Poor,Low,8.15,9.3,Yes,Negative,No +USER-07191,52,Other,7.69,5.28,3.98,10.51,Good,Medium,8.38,0.42,Yes,Positive,Yes +USER-07192,23,Male,4.05,3.45,1.62,12.26,Excellent,Medium,7.37,2.45,No,Neutral,Yes +USER-07193,30,Other,10.43,6.59,3.69,2.39,Poor,Medium,7.68,2.91,Yes,Positive,Yes +USER-07194,40,Male,11.03,2.17,3.64,2.02,Fair,High,4.22,1.94,No,Neutral,Yes +USER-07195,22,Other,6.55,3.7,3.95,8.31,Poor,Low,6.15,1.59,No,Positive,No +USER-07196,23,Other,6.55,4.73,0.7,11.5,Poor,High,7.65,5.51,No,Neutral,Yes +USER-07197,42,Female,1.96,0.03,3.78,10.71,Excellent,Medium,7.47,4.82,No,Neutral,Yes +USER-07198,58,Female,11.83,5.6,2.92,1.76,Excellent,High,4.1,6.75,Yes,Negative,No +USER-07199,39,Male,10.06,5.75,3.35,7.5,Excellent,High,5.51,0.28,No,Neutral,Yes +USER-07200,56,Male,11.4,3.97,1.87,3.39,Excellent,High,6.28,7.16,No,Positive,Yes +USER-07201,58,Other,8.85,0.46,1.03,9.8,Good,Medium,6.62,2.2,No,Positive,Yes +USER-07202,59,Other,8.12,2.03,4.13,1.93,Good,Medium,5.22,9.63,No,Neutral,No +USER-07203,49,Other,10.11,5.95,1.71,1.85,Poor,High,7.93,6.07,No,Positive,No +USER-07204,32,Female,4.15,3.32,1.81,14.75,Good,High,6.41,2.36,Yes,Negative,No +USER-07205,34,Female,3.79,2.72,2.53,8.56,Poor,Medium,5.99,0.8,Yes,Positive,No +USER-07206,20,Male,3.95,7.84,1.57,2.1,Poor,Medium,6.44,3.03,No,Neutral,Yes +USER-07207,22,Other,8.82,7.64,1.76,14.7,Poor,Medium,4.76,1.09,No,Positive,Yes +USER-07208,31,Female,5.98,0.88,3.5,9.55,Good,Medium,8.12,9.51,Yes,Negative,Yes +USER-07209,53,Other,11.39,3.01,4.44,5.38,Fair,Medium,5.97,0.37,No,Neutral,Yes +USER-07210,46,Male,7.97,4.68,1.85,13.89,Excellent,Medium,7.91,3.34,Yes,Positive,No +USER-07211,32,Other,4.16,8.0,1.59,6.21,Good,High,5.76,9.44,Yes,Negative,No +USER-07212,21,Male,6.67,1.5,2.86,12.19,Excellent,Medium,8.44,8.53,Yes,Negative,Yes +USER-07213,65,Male,6.16,3.39,0.73,13.23,Fair,Medium,5.86,0.71,No,Positive,Yes +USER-07214,33,Female,4.59,7.87,3.69,6.14,Excellent,Medium,6.67,5.64,No,Negative,No +USER-07215,59,Female,6.01,1.02,3.09,11.81,Poor,Low,6.57,5.27,No,Positive,Yes +USER-07216,62,Female,1.83,7.65,3.63,12.58,Good,Low,5.32,6.47,No,Positive,Yes +USER-07217,56,Female,1.65,7.53,3.12,5.34,Good,Low,6.38,5.98,No,Negative,Yes +USER-07218,55,Male,7.65,7.03,0.69,14.12,Good,Low,4.19,9.95,No,Neutral,No +USER-07219,59,Female,11.33,3.51,2.56,2.59,Poor,Medium,6.18,3.76,No,Negative,No +USER-07220,57,Male,6.91,1.04,2.84,3.64,Excellent,Medium,6.15,4.81,No,Positive,Yes +USER-07221,22,Other,4.77,1.12,3.99,12.4,Poor,High,7.38,5.78,Yes,Negative,No +USER-07222,57,Other,7.15,7.63,1.14,11.67,Poor,High,8.96,0.72,Yes,Neutral,No +USER-07223,40,Female,2.81,4.2,2.76,5.17,Poor,Low,6.82,7.53,No,Neutral,No +USER-07224,30,Other,7.11,6.71,4.58,14.11,Excellent,High,8.98,0.74,Yes,Neutral,No +USER-07225,48,Female,10.45,5.24,2.12,14.38,Poor,High,6.39,2.83,No,Positive,Yes +USER-07226,43,Other,10.29,0.84,4.39,11.92,Poor,Low,6.6,5.26,Yes,Positive,No +USER-07227,60,Male,3.06,5.15,0.72,1.33,Good,Medium,7.71,8.19,No,Negative,No +USER-07228,62,Other,10.78,7.67,3.53,5.22,Fair,Low,8.19,0.93,No,Negative,No +USER-07229,49,Male,9.5,4.08,2.5,7.56,Poor,High,7.23,2.59,Yes,Negative,No +USER-07230,36,Female,2.02,6.7,0.28,6.96,Fair,High,4.11,9.17,Yes,Neutral,Yes +USER-07231,39,Other,11.76,0.54,3.23,1.29,Fair,High,7.65,3.94,No,Negative,No +USER-07232,22,Other,2.49,1.06,3.1,9.39,Fair,High,6.66,8.15,Yes,Positive,Yes +USER-07233,46,Female,7.59,6.45,0.94,8.3,Good,Low,6.52,9.32,Yes,Negative,No +USER-07234,54,Male,7.4,0.4,3.49,14.5,Fair,Low,7.43,2.29,Yes,Negative,Yes +USER-07235,41,Other,6.27,6.26,3.07,5.84,Poor,Medium,8.33,1.72,No,Positive,No +USER-07236,34,Male,10.91,4.5,3.84,14.91,Good,Medium,5.12,4.39,No,Neutral,No +USER-07237,53,Male,10.63,1.17,1.44,11.52,Good,High,7.77,4.95,Yes,Negative,No +USER-07238,60,Female,5.28,7.11,4.28,1.16,Poor,High,5.76,4.03,Yes,Negative,Yes +USER-07239,23,Male,4.57,3.12,0.17,12.62,Excellent,High,5.66,3.47,No,Positive,Yes +USER-07240,64,Male,6.31,4.76,0.48,10.84,Poor,Medium,5.49,4.06,No,Negative,No +USER-07241,60,Male,6.54,2.05,4.09,10.16,Poor,Low,6.77,4.19,Yes,Negative,No +USER-07242,55,Male,4.03,0.08,4.76,7.41,Fair,Medium,6.6,7.76,Yes,Positive,No +USER-07243,32,Male,7.87,1.75,4.57,4.09,Excellent,Low,7.76,0.14,Yes,Negative,Yes +USER-07244,30,Male,11.34,5.53,1.82,8.58,Excellent,Low,4.83,4.99,Yes,Positive,No +USER-07245,41,Female,6.0,6.53,1.46,9.26,Excellent,Low,4.17,7.26,Yes,Negative,Yes +USER-07246,27,Female,1.87,4.54,1.17,14.83,Excellent,Low,5.35,8.43,No,Neutral,Yes +USER-07247,22,Male,6.97,4.14,2.6,8.23,Poor,Medium,4.86,0.12,No,Neutral,Yes +USER-07248,64,Other,2.19,2.85,0.61,8.41,Excellent,High,7.39,1.4,No,Neutral,Yes +USER-07249,51,Other,7.22,2.31,4.99,10.07,Excellent,Low,4.8,1.41,No,Neutral,Yes +USER-07250,21,Male,2.5,5.39,2.35,11.03,Poor,High,7.3,2.03,No,Neutral,No +USER-07251,32,Female,6.5,4.03,0.97,5.91,Fair,Low,8.0,1.88,No,Neutral,No +USER-07252,35,Other,1.7,3.99,3.23,9.8,Poor,Medium,4.56,0.87,Yes,Neutral,Yes +USER-07253,54,Female,4.44,0.93,0.98,13.18,Poor,Low,8.95,9.65,No,Positive,No +USER-07254,27,Male,3.64,5.66,4.95,13.15,Fair,Low,4.01,1.82,No,Negative,Yes +USER-07255,23,Other,3.61,4.5,3.55,13.38,Good,High,6.76,3.38,Yes,Neutral,No +USER-07256,60,Female,11.83,0.07,1.88,2.38,Poor,Medium,5.22,3.51,No,Negative,No +USER-07257,46,Female,9.22,7.24,1.84,12.59,Good,Medium,6.77,8.0,Yes,Positive,Yes +USER-07258,42,Male,2.41,3.07,2.1,12.03,Excellent,Low,6.28,8.46,No,Negative,Yes +USER-07259,21,Female,3.43,4.87,4.7,8.24,Excellent,Medium,8.75,3.25,Yes,Positive,Yes +USER-07260,53,Other,3.76,7.59,2.18,3.07,Excellent,Low,7.31,2.6,No,Neutral,Yes +USER-07261,54,Other,5.36,3.96,3.92,3.51,Fair,Low,5.27,8.63,No,Negative,No +USER-07262,59,Male,9.88,1.84,1.07,10.71,Fair,High,5.87,6.86,No,Negative,Yes +USER-07263,39,Female,11.3,3.84,1.73,7.3,Poor,Medium,8.57,3.68,No,Neutral,No +USER-07264,31,Female,7.19,0.04,1.27,14.97,Excellent,High,8.69,6.26,No,Neutral,Yes +USER-07265,48,Other,6.31,3.2,0.23,7.31,Poor,High,8.72,3.73,Yes,Positive,No +USER-07266,39,Other,6.4,1.41,2.49,14.39,Good,Low,4.37,4.66,No,Neutral,Yes +USER-07267,46,Other,7.47,0.52,2.73,4.36,Excellent,High,6.02,6.15,Yes,Neutral,No +USER-07268,48,Female,5.53,0.44,4.39,13.32,Fair,Medium,7.73,4.99,No,Neutral,No +USER-07269,37,Female,1.4,7.39,0.53,14.55,Excellent,Medium,4.85,0.91,No,Neutral,No +USER-07270,48,Female,10.28,5.8,3.64,4.87,Excellent,High,4.39,0.44,No,Negative,No +USER-07271,34,Other,9.24,2.69,4.35,8.14,Poor,High,4.71,3.87,Yes,Negative,No +USER-07272,57,Male,1.2,1.37,4.99,4.15,Good,High,5.43,4.22,No,Negative,Yes +USER-07273,25,Male,6.48,1.27,1.07,8.84,Poor,Low,6.45,1.51,No,Positive,Yes +USER-07274,36,Male,7.17,2.26,3.59,14.92,Excellent,Low,4.79,5.79,No,Neutral,Yes +USER-07275,50,Other,3.39,2.15,2.81,2.64,Good,High,8.85,4.01,Yes,Negative,Yes +USER-07276,55,Male,2.88,4.68,1.82,3.54,Poor,High,4.14,5.19,Yes,Negative,No +USER-07277,23,Male,4.41,5.81,2.01,6.24,Fair,Low,7.92,8.27,Yes,Neutral,Yes +USER-07278,61,Other,11.52,0.25,2.39,7.24,Poor,Low,4.63,8.75,No,Neutral,No +USER-07279,21,Male,11.18,2.33,1.33,10.81,Poor,Medium,4.89,4.64,No,Positive,Yes +USER-07280,20,Male,11.62,4.93,1.61,7.98,Fair,Low,6.71,2.29,Yes,Negative,Yes +USER-07281,65,Female,5.49,4.1,2.63,6.59,Good,Medium,6.62,0.07,Yes,Neutral,No +USER-07282,22,Male,11.33,6.68,1.02,10.64,Fair,High,7.11,9.59,No,Positive,No +USER-07283,28,Male,1.14,7.09,2.2,9.95,Excellent,Low,8.17,3.75,Yes,Positive,Yes +USER-07284,47,Female,11.21,7.58,0.79,14.69,Poor,High,8.34,7.19,No,Neutral,Yes +USER-07285,45,Other,9.7,6.82,2.01,13.12,Excellent,Medium,6.6,7.73,Yes,Negative,No +USER-07286,34,Male,1.83,1.82,4.25,3.43,Excellent,Medium,7.13,3.09,No,Negative,No +USER-07287,39,Male,6.64,2.91,2.99,6.64,Good,Low,6.27,9.26,Yes,Positive,No +USER-07288,60,Female,5.45,0.36,3.53,4.11,Poor,Low,5.02,2.21,No,Positive,No +USER-07289,20,Other,5.42,1.99,1.41,14.36,Fair,High,5.09,0.14,No,Negative,No +USER-07290,55,Female,5.07,5.52,3.05,12.58,Excellent,Medium,8.68,8.91,No,Negative,No +USER-07291,23,Male,4.98,6.74,0.89,4.27,Good,Low,7.18,8.3,No,Positive,No +USER-07292,52,Other,8.8,4.79,1.69,5.48,Excellent,Low,6.71,5.38,No,Positive,Yes +USER-07293,27,Male,10.96,0.9,3.71,13.68,Poor,Low,8.7,6.67,Yes,Neutral,No +USER-07294,34,Male,11.97,0.18,2.14,5.76,Poor,Low,4.14,8.61,Yes,Neutral,Yes +USER-07295,54,Female,10.27,5.29,0.17,9.69,Good,Low,6.98,8.17,No,Negative,No +USER-07296,29,Other,10.13,4.31,3.24,7.72,Poor,High,6.68,9.53,No,Positive,Yes +USER-07297,41,Female,7.8,4.13,0.13,5.01,Good,Medium,8.3,4.83,Yes,Positive,No +USER-07298,52,Male,7.48,4.54,3.89,11.71,Good,Low,7.4,5.57,No,Negative,No +USER-07299,18,Male,5.28,6.47,0.97,5.01,Excellent,High,6.69,8.1,No,Negative,Yes +USER-07300,56,Male,1.57,4.13,4.15,2.61,Excellent,Low,4.11,6.68,No,Positive,No +USER-07301,18,Male,7.47,3.08,2.95,5.08,Fair,Medium,7.65,7.44,Yes,Negative,No +USER-07302,34,Male,8.93,7.0,0.47,3.57,Fair,Medium,4.15,2.31,No,Negative,No +USER-07303,32,Female,5.55,2.77,2.27,9.08,Fair,Medium,4.9,8.48,No,Neutral,Yes +USER-07304,50,Other,9.07,6.68,1.04,9.9,Fair,High,8.33,6.95,Yes,Neutral,No +USER-07305,44,Male,2.45,4.93,0.95,12.05,Good,Medium,4.4,9.75,No,Neutral,No +USER-07306,56,Other,5.38,1.13,3.81,14.43,Poor,High,7.02,6.24,No,Positive,No +USER-07307,21,Male,2.9,3.64,3.9,7.01,Excellent,High,6.85,1.99,No,Positive,Yes +USER-07308,52,Other,2.92,2.66,1.54,14.41,Poor,High,4.28,5.24,Yes,Negative,Yes +USER-07309,34,Female,9.65,1.61,4.92,4.66,Fair,Low,5.56,8.92,Yes,Negative,Yes +USER-07310,23,Female,7.96,7.03,0.06,11.91,Excellent,High,7.99,4.93,No,Neutral,No +USER-07311,65,Other,8.92,7.8,1.74,11.78,Excellent,Low,8.39,8.15,Yes,Negative,No +USER-07312,39,Female,3.68,2.69,4.59,6.74,Good,High,8.89,1.33,No,Neutral,No +USER-07313,58,Other,6.6,1.6,4.53,3.16,Excellent,Medium,6.99,1.17,No,Positive,Yes +USER-07314,30,Other,3.13,5.66,0.11,1.74,Good,Low,4.05,0.47,Yes,Neutral,No +USER-07315,61,Other,6.64,1.81,4.46,5.73,Fair,Low,7.94,1.32,No,Neutral,Yes +USER-07316,40,Other,3.35,2.2,3.13,9.03,Good,Low,4.94,4.84,Yes,Neutral,Yes +USER-07317,19,Male,6.35,5.3,2.58,3.71,Excellent,Medium,4.53,9.43,No,Negative,No +USER-07318,36,Male,6.09,3.94,2.37,13.14,Good,Low,4.25,9.51,No,Neutral,No +USER-07319,55,Male,7.65,1.56,3.06,11.55,Good,High,7.72,3.75,Yes,Neutral,Yes +USER-07320,65,Male,11.35,0.59,3.99,4.61,Poor,High,6.9,9.18,Yes,Negative,Yes +USER-07321,31,Female,4.5,3.68,2.82,12.52,Poor,Medium,4.01,0.96,No,Negative,Yes +USER-07322,42,Male,3.18,5.37,2.17,1.9,Good,Medium,5.87,2.96,No,Neutral,Yes +USER-07323,56,Male,3.04,4.04,0.51,11.38,Good,Low,7.6,5.57,Yes,Neutral,Yes +USER-07324,41,Other,7.84,3.62,0.73,9.14,Poor,Low,4.81,7.03,Yes,Negative,No +USER-07325,45,Male,6.99,2.78,2.94,6.86,Good,Low,5.48,9.76,Yes,Neutral,No +USER-07326,64,Female,2.14,1.81,2.76,2.45,Poor,Low,5.02,9.11,No,Neutral,No +USER-07327,43,Female,4.39,1.07,4.08,14.15,Excellent,High,4.14,4.55,No,Positive,No +USER-07328,40,Male,1.98,1.71,2.09,11.78,Good,Medium,8.82,5.87,Yes,Negative,Yes +USER-07329,62,Male,7.95,5.78,0.84,12.55,Poor,Low,7.63,3.45,No,Positive,No +USER-07330,50,Other,10.7,5.29,2.19,2.81,Fair,High,8.03,4.3,Yes,Negative,Yes +USER-07331,57,Female,4.02,2.14,0.0,13.09,Fair,Low,6.73,0.82,No,Positive,Yes +USER-07332,59,Male,1.86,0.05,1.62,13.88,Fair,Medium,4.36,3.83,No,Neutral,No +USER-07333,50,Female,11.85,0.4,1.7,6.21,Good,High,4.82,0.65,Yes,Negative,No +USER-07334,35,Female,9.63,2.32,3.7,4.13,Fair,High,7.71,4.41,Yes,Positive,No +USER-07335,49,Male,2.29,4.46,3.9,6.53,Fair,Low,6.44,1.66,Yes,Positive,Yes +USER-07336,53,Male,3.11,2.3,3.33,13.15,Excellent,High,6.41,1.26,Yes,Positive,Yes +USER-07337,30,Other,6.88,2.76,0.05,12.84,Excellent,Medium,7.15,6.17,Yes,Negative,No +USER-07338,41,Male,10.47,3.11,1.33,2.6,Fair,Medium,5.57,2.21,No,Neutral,Yes +USER-07339,48,Other,1.12,6.56,4.44,2.0,Good,Low,6.62,1.45,No,Negative,Yes +USER-07340,34,Female,5.3,6.16,1.79,5.95,Fair,Low,6.07,2.75,No,Neutral,Yes +USER-07341,62,Female,3.92,0.71,4.63,10.83,Poor,High,8.84,7.72,Yes,Neutral,Yes +USER-07342,52,Other,5.55,1.34,3.26,6.74,Poor,High,5.88,8.72,Yes,Negative,No +USER-07343,44,Male,6.45,0.43,4.73,7.76,Fair,Medium,8.8,5.09,Yes,Positive,No +USER-07344,26,Other,7.52,7.18,4.23,1.81,Excellent,High,8.21,5.73,No,Positive,No +USER-07345,40,Male,7.12,1.36,4.99,10.31,Excellent,Low,6.15,5.34,No,Negative,No +USER-07346,51,Other,1.4,4.05,3.16,8.51,Fair,High,6.11,0.03,Yes,Neutral,No +USER-07347,44,Female,10.93,1.16,4.3,13.13,Fair,Medium,8.82,7.77,No,Neutral,No +USER-07348,28,Male,5.67,3.44,3.0,13.5,Excellent,Low,4.1,2.6,Yes,Positive,Yes +USER-07349,27,Female,2.16,4.58,4.81,13.99,Poor,Medium,5.25,7.37,Yes,Negative,No +USER-07350,51,Male,1.7,4.92,1.26,4.99,Good,High,6.67,1.8,Yes,Negative,Yes +USER-07351,30,Other,7.3,2.12,4.38,7.35,Excellent,Medium,6.31,1.87,Yes,Negative,Yes +USER-07352,29,Male,5.46,6.6,2.31,7.99,Fair,High,5.16,0.28,No,Positive,No +USER-07353,34,Female,5.55,5.06,1.68,1.5,Good,High,8.88,2.37,Yes,Negative,No +USER-07354,21,Female,1.84,1.67,4.36,1.59,Good,Low,4.86,2.3,Yes,Negative,No +USER-07355,22,Female,8.53,4.08,0.59,2.63,Excellent,Medium,5.79,0.41,Yes,Negative,No +USER-07356,58,Male,4.79,2.54,1.12,3.33,Excellent,Medium,6.7,5.51,Yes,Negative,Yes +USER-07357,32,Female,3.2,1.79,4.1,3.37,Excellent,Medium,5.71,7.15,Yes,Neutral,No +USER-07358,45,Female,8.41,0.77,3.36,2.24,Excellent,Low,8.38,2.27,No,Negative,No +USER-07359,59,Male,11.33,3.67,1.65,8.03,Poor,Medium,4.21,0.66,Yes,Positive,Yes +USER-07360,58,Other,2.1,6.87,2.05,13.36,Excellent,Medium,8.11,0.43,No,Positive,Yes +USER-07361,21,Female,6.53,0.98,2.97,8.63,Poor,High,4.88,3.0,Yes,Neutral,No +USER-07362,48,Other,11.08,7.22,4.59,3.32,Fair,High,8.39,4.79,Yes,Positive,No +USER-07363,50,Other,6.57,5.98,4.45,3.27,Good,Medium,8.84,9.54,Yes,Negative,No +USER-07364,54,Other,5.33,1.63,4.31,14.66,Good,High,8.08,3.54,No,Positive,No +USER-07365,29,Other,2.08,4.68,4.14,1.2,Poor,Medium,4.36,2.23,Yes,Neutral,No +USER-07366,24,Other,2.68,5.97,3.07,2.18,Poor,High,8.69,1.4,Yes,Negative,No +USER-07367,65,Female,5.16,0.11,0.03,9.63,Good,Medium,7.57,1.01,No,Neutral,Yes +USER-07368,33,Other,9.42,1.71,3.73,13.85,Fair,High,4.86,9.3,Yes,Positive,Yes +USER-07369,33,Male,5.06,1.23,3.66,4.54,Excellent,Medium,7.46,4.56,Yes,Neutral,No +USER-07370,49,Male,10.68,1.6,3.41,14.56,Poor,Low,4.72,6.01,Yes,Negative,Yes +USER-07371,43,Male,6.44,4.71,1.92,9.66,Fair,High,8.07,9.27,Yes,Neutral,Yes +USER-07372,20,Female,7.11,3.73,3.68,4.58,Poor,High,5.04,6.35,Yes,Negative,Yes +USER-07373,22,Other,11.24,6.37,4.29,5.81,Excellent,Medium,7.74,2.99,Yes,Negative,Yes +USER-07374,37,Male,7.39,3.41,0.41,10.94,Good,Medium,4.69,4.63,Yes,Positive,No +USER-07375,64,Female,7.14,2.34,4.57,5.61,Good,Low,7.23,3.75,Yes,Negative,Yes +USER-07376,57,Female,2.19,2.67,1.1,10.27,Poor,High,8.99,4.63,Yes,Positive,Yes +USER-07377,45,Male,10.84,2.58,4.64,4.35,Fair,Low,6.52,4.08,No,Negative,Yes +USER-07378,61,Female,3.41,2.07,1.95,11.74,Fair,High,7.77,1.89,No,Negative,No +USER-07379,26,Other,4.8,4.01,3.06,11.37,Good,Low,7.02,7.84,No,Negative,Yes +USER-07380,59,Other,3.46,3.19,3.97,13.38,Excellent,Low,4.02,0.65,Yes,Positive,Yes +USER-07381,25,Female,7.58,0.09,0.37,12.3,Poor,High,5.06,8.24,No,Neutral,No +USER-07382,25,Female,2.79,0.27,1.92,10.01,Fair,High,5.11,4.06,Yes,Negative,No +USER-07383,32,Female,11.76,2.79,2.07,4.32,Poor,Medium,8.94,7.6,Yes,Negative,No +USER-07384,38,Female,3.47,7.69,1.3,11.94,Poor,Medium,8.06,3.5,No,Positive,Yes +USER-07385,22,Male,9.58,5.27,2.04,5.75,Good,High,8.9,6.21,Yes,Neutral,Yes +USER-07386,26,Other,7.65,1.63,0.51,13.38,Excellent,High,8.13,8.09,No,Negative,Yes +USER-07387,43,Male,7.24,7.38,0.08,4.54,Good,Low,6.02,0.33,Yes,Neutral,Yes +USER-07388,36,Female,11.54,2.86,1.71,9.33,Good,Medium,5.45,8.03,No,Positive,Yes +USER-07389,58,Other,1.7,0.16,2.5,8.3,Poor,Low,6.9,9.14,Yes,Neutral,No +USER-07390,41,Other,11.3,4.59,1.77,1.81,Excellent,Medium,6.05,7.79,No,Negative,No +USER-07391,54,Other,2.65,0.43,2.93,14.1,Poor,Low,4.35,5.65,Yes,Positive,Yes +USER-07392,26,Male,4.93,0.5,1.43,13.93,Excellent,Medium,4.73,9.12,Yes,Positive,No +USER-07393,39,Female,8.71,1.02,1.81,10.74,Excellent,Low,6.16,6.21,Yes,Neutral,No +USER-07394,47,Other,9.82,1.95,1.39,10.69,Fair,Medium,4.65,7.98,No,Positive,Yes +USER-07395,36,Female,1.58,2.82,4.07,11.25,Excellent,Medium,7.15,9.7,No,Neutral,Yes +USER-07396,43,Male,7.46,6.78,1.45,1.51,Excellent,Medium,8.05,4.08,No,Neutral,No +USER-07397,27,Other,5.43,0.87,1.75,4.28,Fair,Low,5.19,5.3,No,Negative,Yes +USER-07398,40,Female,4.9,2.14,2.87,8.75,Fair,Low,8.16,7.58,No,Negative,Yes +USER-07399,51,Male,5.97,4.16,4.99,1.1,Poor,Low,5.43,2.61,No,Neutral,No +USER-07400,25,Female,5.69,7.68,0.25,2.48,Excellent,High,4.26,1.18,Yes,Positive,No +USER-07401,61,Male,6.3,0.05,0.35,8.15,Excellent,High,4.5,0.74,Yes,Positive,Yes +USER-07402,20,Other,5.21,3.6,0.15,10.23,Excellent,Low,8.42,9.61,Yes,Negative,Yes +USER-07403,36,Female,6.81,3.11,1.0,2.22,Good,Medium,5.89,7.24,No,Negative,No +USER-07404,58,Female,10.95,3.17,0.95,10.21,Good,Medium,4.19,6.96,Yes,Negative,No +USER-07405,34,Other,2.18,2.11,0.79,1.49,Poor,Medium,4.95,3.87,No,Negative,No +USER-07406,63,Other,9.67,6.04,3.52,9.81,Excellent,Medium,5.12,9.85,No,Positive,Yes +USER-07407,63,Female,7.89,1.51,0.65,7.68,Excellent,Low,4.66,4.53,Yes,Negative,No +USER-07408,53,Other,11.3,7.75,4.74,11.14,Fair,Medium,5.47,1.06,No,Neutral,Yes +USER-07409,45,Male,7.22,2.31,0.94,3.89,Fair,Low,5.98,7.29,No,Positive,Yes +USER-07410,24,Female,1.93,4.63,2.69,4.56,Poor,High,5.38,8.58,Yes,Positive,No +USER-07411,37,Male,8.3,3.04,2.05,14.14,Excellent,Low,6.0,2.86,No,Neutral,No +USER-07412,21,Other,11.16,1.95,1.26,4.62,Good,Medium,4.84,1.8,Yes,Negative,No +USER-07413,28,Male,4.53,2.75,1.77,3.94,Excellent,Medium,5.1,8.34,No,Positive,No +USER-07414,64,Male,8.71,3.44,2.83,8.17,Poor,Low,7.13,9.29,No,Positive,Yes +USER-07415,53,Other,11.08,3.69,0.06,12.69,Excellent,Medium,4.62,4.11,No,Negative,No +USER-07416,63,Male,4.24,0.55,3.83,5.23,Poor,High,8.92,0.48,Yes,Negative,Yes +USER-07417,18,Female,2.88,3.41,4.06,12.46,Poor,Low,4.97,5.8,No,Neutral,Yes +USER-07418,64,Male,6.95,5.03,4.53,2.3,Excellent,Medium,5.69,9.21,No,Neutral,Yes +USER-07419,61,Other,1.2,0.88,0.0,5.45,Good,Low,7.67,8.5,Yes,Negative,Yes +USER-07420,35,Other,3.4,5.91,0.4,9.2,Poor,Medium,4.53,9.54,No,Negative,No +USER-07421,45,Other,9.62,4.87,0.8,4.04,Excellent,Medium,4.74,4.4,No,Positive,Yes +USER-07422,32,Other,2.07,7.88,1.0,1.32,Poor,Low,4.7,0.38,No,Negative,Yes +USER-07423,29,Female,3.81,4.19,3.91,3.81,Fair,Medium,5.62,3.01,No,Positive,Yes +USER-07424,41,Other,6.63,5.79,2.61,8.58,Fair,Low,8.77,1.7,No,Negative,No +USER-07425,43,Other,2.05,7.09,4.44,5.92,Poor,High,4.69,5.02,Yes,Neutral,No +USER-07426,41,Male,3.11,0.38,4.51,6.54,Excellent,Low,7.41,1.57,No,Positive,No +USER-07427,47,Other,6.09,1.18,0.11,3.87,Fair,Low,7.38,5.85,No,Neutral,Yes +USER-07428,51,Male,4.74,1.52,0.42,13.96,Poor,Low,4.15,6.88,Yes,Negative,Yes +USER-07429,58,Male,6.31,3.93,4.34,6.53,Excellent,Medium,6.85,2.34,Yes,Positive,No +USER-07430,49,Female,7.22,5.98,2.14,14.53,Good,High,5.01,8.97,Yes,Neutral,Yes +USER-07431,33,Female,4.47,4.55,4.56,1.81,Fair,High,7.35,6.58,No,Positive,No +USER-07432,55,Female,6.29,0.87,3.13,5.6,Poor,Medium,8.32,2.39,Yes,Positive,No +USER-07433,61,Male,7.33,0.35,1.13,12.09,Excellent,Medium,8.83,0.83,Yes,Positive,No +USER-07434,30,Other,10.27,3.84,0.63,3.17,Good,Medium,4.38,1.12,Yes,Neutral,Yes +USER-07435,19,Female,9.24,7.38,4.82,12.21,Good,Medium,7.16,2.13,No,Positive,No +USER-07436,54,Other,11.23,6.64,0.31,9.52,Fair,High,4.08,7.9,Yes,Neutral,No +USER-07437,56,Other,3.39,0.57,2.82,11.71,Poor,High,4.15,7.89,No,Positive,Yes +USER-07438,53,Other,5.32,7.12,4.37,9.42,Fair,High,5.14,1.86,Yes,Positive,No +USER-07439,41,Male,4.68,5.26,0.84,2.9,Excellent,Medium,4.84,2.33,No,Positive,No +USER-07440,26,Male,1.37,1.21,4.08,9.09,Poor,High,4.29,6.48,No,Neutral,Yes +USER-07441,26,Male,10.65,7.76,0.35,2.8,Fair,High,6.56,6.27,Yes,Neutral,No +USER-07442,46,Female,11.9,6.76,1.48,13.33,Fair,Medium,5.89,9.75,No,Negative,No +USER-07443,64,Male,9.41,8.0,0.49,12.9,Good,Low,7.69,5.9,Yes,Negative,No +USER-07444,35,Male,7.84,4.31,3.0,4.55,Excellent,Medium,8.48,3.09,Yes,Neutral,Yes +USER-07445,42,Female,6.46,7.95,3.16,10.32,Good,High,7.36,5.85,No,Negative,No +USER-07446,49,Female,3.37,2.61,1.15,11.64,Good,Medium,7.59,0.84,Yes,Neutral,Yes +USER-07447,29,Female,5.98,4.66,0.0,10.25,Fair,High,7.56,7.92,No,Neutral,No +USER-07448,23,Male,1.91,3.05,0.61,1.69,Good,Low,6.49,3.08,Yes,Positive,Yes +USER-07449,53,Other,11.35,5.64,0.09,11.61,Excellent,Medium,8.46,0.69,Yes,Negative,Yes +USER-07450,50,Other,2.27,2.93,4.57,5.35,Excellent,Low,5.63,7.39,Yes,Positive,No +USER-07451,24,Female,4.76,4.67,3.9,10.72,Excellent,Medium,7.95,1.39,No,Neutral,No +USER-07452,59,Male,8.93,6.19,2.48,7.01,Fair,Medium,7.65,0.99,No,Positive,No +USER-07453,18,Male,3.01,6.16,2.22,1.53,Poor,Medium,7.57,6.28,No,Positive,Yes +USER-07454,23,Other,1.32,2.09,0.1,4.66,Excellent,Medium,4.86,5.2,No,Negative,No +USER-07455,57,Male,4.18,0.86,3.77,10.67,Excellent,High,5.03,5.06,Yes,Neutral,Yes +USER-07456,62,Female,7.49,1.24,2.88,2.95,Poor,High,7.55,3.07,Yes,Positive,No +USER-07457,57,Female,9.42,6.27,1.86,13.79,Fair,Medium,4.37,1.84,No,Negative,No +USER-07458,29,Other,8.25,2.43,0.28,14.88,Poor,Low,5.97,6.46,Yes,Positive,Yes +USER-07459,21,Male,3.28,0.47,3.91,9.88,Fair,Medium,6.88,5.76,Yes,Positive,No +USER-07460,22,Female,2.68,3.34,1.59,12.53,Good,High,4.19,0.89,Yes,Positive,Yes +USER-07461,63,Male,6.03,6.99,2.92,7.38,Excellent,Medium,5.44,3.66,Yes,Negative,No +USER-07462,43,Male,7.36,6.86,4.01,11.9,Good,High,5.79,6.73,Yes,Positive,No +USER-07463,23,Other,5.54,6.28,3.87,6.98,Fair,High,5.0,9.44,Yes,Negative,No +USER-07464,65,Female,2.23,5.66,4.44,12.04,Poor,High,4.11,6.76,No,Neutral,Yes +USER-07465,26,Other,3.4,3.85,0.12,2.32,Poor,High,7.12,1.48,No,Positive,Yes +USER-07466,47,Female,6.29,2.32,3.34,11.8,Fair,High,7.5,9.71,Yes,Positive,No +USER-07467,36,Female,6.08,5.44,1.54,4.22,Good,High,5.49,3.45,No,Positive,No +USER-07468,38,Other,2.93,2.91,4.38,10.37,Good,Low,6.16,2.76,Yes,Negative,No +USER-07469,59,Male,6.43,0.58,1.44,4.77,Fair,Medium,5.04,0.3,No,Negative,Yes +USER-07470,22,Male,1.51,0.24,2.77,5.86,Fair,Medium,6.6,4.48,No,Negative,Yes +USER-07471,46,Female,9.19,2.93,1.29,9.56,Good,Low,8.62,5.21,No,Neutral,Yes +USER-07472,55,Male,5.2,2.73,4.97,9.98,Good,High,4.11,2.85,No,Negative,Yes +USER-07473,63,Other,2.22,6.26,1.77,7.35,Fair,Medium,5.26,0.26,Yes,Positive,No +USER-07474,42,Other,5.89,3.96,4.36,6.2,Fair,High,6.89,6.62,No,Neutral,Yes +USER-07475,52,Male,3.24,7.03,2.08,5.34,Poor,High,5.98,9.55,No,Negative,No +USER-07476,30,Other,10.87,0.3,0.95,6.44,Fair,High,6.53,8.57,Yes,Positive,Yes +USER-07477,48,Other,2.11,7.33,2.58,14.87,Fair,High,7.89,6.67,Yes,Negative,Yes +USER-07478,35,Male,4.09,5.04,2.79,1.17,Excellent,High,5.6,0.05,No,Negative,Yes +USER-07479,25,Female,10.44,1.41,0.92,4.47,Fair,Medium,6.57,7.81,Yes,Positive,Yes +USER-07480,65,Other,9.99,3.61,4.78,8.46,Good,Medium,4.17,6.43,Yes,Negative,No +USER-07481,25,Male,6.84,1.86,3.13,2.01,Fair,Medium,4.59,0.9,No,Positive,Yes +USER-07482,45,Male,3.59,4.63,3.17,3.49,Excellent,High,6.49,5.11,No,Positive,No +USER-07483,60,Female,5.55,6.46,2.31,6.87,Poor,Medium,4.46,0.03,No,Neutral,Yes +USER-07484,37,Male,8.69,4.7,1.59,12.68,Good,Low,5.53,5.9,Yes,Negative,No +USER-07485,62,Female,4.28,6.22,2.31,14.81,Poor,High,5.7,4.67,No,Positive,No +USER-07486,38,Female,11.7,7.76,0.1,13.43,Excellent,Low,6.23,4.53,Yes,Negative,Yes +USER-07487,62,Male,6.85,5.06,3.9,3.05,Good,Low,8.63,4.45,Yes,Neutral,Yes +USER-07488,60,Other,7.61,1.27,1.53,13.43,Excellent,Low,5.7,5.72,Yes,Neutral,Yes +USER-07489,43,Female,8.06,0.51,2.37,2.7,Excellent,High,7.57,8.49,Yes,Positive,Yes +USER-07490,27,Female,5.98,2.8,3.69,1.02,Good,Low,7.59,1.51,Yes,Positive,Yes +USER-07491,51,Male,10.75,1.39,2.77,14.79,Excellent,Low,8.1,9.38,Yes,Neutral,No +USER-07492,33,Other,2.2,2.71,0.06,3.88,Good,Medium,8.11,6.98,Yes,Negative,Yes +USER-07493,48,Female,11.89,7.54,3.62,4.37,Excellent,High,5.6,9.24,Yes,Negative,No +USER-07494,32,Male,7.34,3.78,3.76,14.34,Excellent,Low,6.91,4.79,No,Negative,Yes +USER-07495,62,Male,7.09,6.93,2.42,2.24,Poor,High,5.33,0.68,No,Neutral,Yes +USER-07496,35,Female,1.91,1.44,0.57,3.83,Poor,Medium,4.59,1.27,Yes,Positive,Yes +USER-07497,63,Male,1.03,3.48,4.39,14.9,Good,High,5.81,4.24,Yes,Positive,Yes +USER-07498,29,Male,3.72,0.08,0.34,9.73,Fair,Medium,7.74,8.86,Yes,Neutral,Yes +USER-07499,53,Male,5.66,0.01,0.52,13.35,Good,Medium,5.78,9.53,Yes,Negative,No +USER-07500,63,Female,6.02,4.24,4.07,14.14,Excellent,Low,5.15,9.37,No,Negative,Yes +USER-07501,25,Female,1.75,5.91,4.36,7.81,Good,Low,6.75,2.89,No,Positive,Yes +USER-07502,59,Male,8.76,7.19,1.19,5.19,Good,High,7.94,5.65,Yes,Negative,No +USER-07503,31,Female,2.22,6.93,2.19,10.92,Poor,Medium,6.95,0.55,Yes,Positive,Yes +USER-07504,50,Female,7.46,6.04,0.33,7.11,Poor,High,8.98,0.76,Yes,Positive,No +USER-07505,50,Other,1.38,6.85,3.23,9.66,Poor,Medium,7.75,9.57,Yes,Negative,Yes +USER-07506,48,Other,7.05,3.12,2.05,4.54,Good,Low,8.33,6.84,No,Neutral,No +USER-07507,57,Male,1.26,1.54,1.18,3.98,Fair,Medium,6.18,4.29,No,Negative,Yes +USER-07508,27,Male,5.41,0.1,0.93,4.83,Poor,Low,5.66,4.24,Yes,Neutral,Yes +USER-07509,62,Female,2.76,6.75,2.14,7.06,Good,High,7.97,6.86,Yes,Neutral,Yes +USER-07510,19,Other,1.32,3.88,4.98,10.8,Fair,Low,4.62,4.94,Yes,Negative,Yes +USER-07511,46,Male,7.85,3.09,4.08,5.52,Good,High,6.39,0.45,Yes,Positive,No +USER-07512,29,Other,6.86,2.48,1.84,6.54,Excellent,Low,4.91,6.75,No,Neutral,Yes +USER-07513,38,Male,10.11,7.27,2.07,13.22,Excellent,High,7.49,3.21,No,Negative,No +USER-07514,64,Female,5.03,6.57,2.51,11.3,Excellent,High,7.72,5.31,No,Negative,Yes +USER-07515,22,Other,7.39,3.5,2.33,12.87,Excellent,Medium,6.23,6.13,Yes,Negative,Yes +USER-07516,46,Female,4.9,1.97,0.54,7.59,Fair,High,8.7,3.64,Yes,Negative,Yes +USER-07517,49,Male,6.64,0.62,1.71,14.66,Fair,High,6.73,2.02,Yes,Negative,No +USER-07518,34,Female,2.37,3.34,4.95,3.41,Good,Low,8.94,8.48,No,Positive,No +USER-07519,53,Male,4.1,2.46,3.7,8.4,Excellent,High,7.48,1.53,No,Positive,No +USER-07520,47,Other,4.63,6.41,3.45,5.06,Fair,High,7.38,9.16,No,Positive,No +USER-07521,25,Female,5.16,0.37,4.73,2.68,Excellent,High,4.4,9.72,Yes,Positive,No +USER-07522,64,Other,11.95,2.22,3.16,11.8,Fair,Medium,4.13,5.69,No,Neutral,Yes +USER-07523,20,Other,8.27,4.92,2.11,4.66,Fair,High,6.85,5.95,Yes,Neutral,Yes +USER-07524,23,Female,5.2,2.87,1.22,14.88,Poor,High,7.01,0.34,No,Positive,No +USER-07525,55,Male,9.23,0.62,3.2,5.63,Excellent,High,6.24,4.59,Yes,Positive,Yes +USER-07526,65,Female,1.21,3.77,3.54,9.93,Good,Low,8.07,2.16,No,Neutral,Yes +USER-07527,40,Other,5.87,6.81,1.96,3.49,Fair,Low,6.69,6.76,Yes,Neutral,Yes +USER-07528,35,Other,5.84,1.68,3.0,6.02,Fair,High,8.17,5.76,Yes,Negative,Yes +USER-07529,57,Other,8.48,3.86,2.19,13.45,Fair,High,8.82,5.37,Yes,Negative,No +USER-07530,56,Male,3.29,5.67,4.29,6.19,Good,Medium,4.38,6.46,Yes,Neutral,No +USER-07531,30,Male,6.3,6.65,4.23,12.22,Good,Medium,8.92,8.66,No,Positive,Yes +USER-07532,36,Female,1.1,7.34,3.93,8.98,Excellent,Medium,8.99,8.47,No,Positive,No +USER-07533,61,Other,11.72,1.06,4.0,11.92,Excellent,Medium,6.71,4.41,No,Neutral,Yes +USER-07534,61,Other,10.4,0.26,0.95,7.04,Fair,Medium,5.19,3.54,No,Neutral,No +USER-07535,50,Other,4.45,5.67,4.26,1.58,Fair,Low,7.27,8.21,No,Negative,Yes +USER-07536,45,Other,4.16,3.42,0.97,9.08,Good,High,5.07,4.61,Yes,Positive,Yes +USER-07537,62,Male,2.54,2.46,0.08,6.48,Poor,High,6.6,9.2,No,Negative,No +USER-07538,35,Female,4.79,0.73,4.75,2.82,Good,Low,8.45,8.36,No,Positive,Yes +USER-07539,42,Female,11.58,2.66,3.09,12.14,Poor,Medium,6.45,9.78,No,Positive,No +USER-07540,65,Male,2.59,2.1,2.03,5.46,Fair,High,7.43,1.31,No,Positive,No +USER-07541,47,Male,8.17,0.65,1.49,4.43,Poor,Medium,8.37,7.29,Yes,Positive,No +USER-07542,39,Male,1.96,3.21,1.4,1.95,Fair,High,6.61,8.88,No,Negative,Yes +USER-07543,27,Other,9.85,4.64,4.84,13.53,Fair,Low,8.26,9.75,No,Positive,Yes +USER-07544,29,Female,5.22,4.41,1.01,7.16,Poor,Medium,6.47,7.59,Yes,Neutral,Yes +USER-07545,34,Male,1.37,7.97,0.17,2.95,Poor,High,5.52,0.66,Yes,Negative,Yes +USER-07546,33,Other,10.18,7.73,3.47,12.83,Good,Medium,5.51,0.37,Yes,Negative,Yes +USER-07547,18,Other,11.47,3.74,2.48,13.99,Poor,Medium,8.28,3.45,No,Positive,Yes +USER-07548,63,Male,4.59,5.35,2.96,13.58,Excellent,Medium,4.58,7.43,Yes,Neutral,Yes +USER-07549,54,Other,4.26,0.87,1.44,13.75,Excellent,Low,4.78,6.22,No,Positive,Yes +USER-07550,36,Other,6.36,2.58,4.29,3.67,Fair,High,7.39,6.43,Yes,Positive,No +USER-07551,53,Male,5.52,2.68,1.61,8.78,Good,Medium,5.63,8.8,No,Positive,Yes +USER-07552,40,Male,9.86,5.86,4.38,10.75,Poor,High,6.02,4.8,No,Positive,Yes +USER-07553,23,Other,8.52,4.34,1.04,12.47,Poor,Low,5.97,8.67,Yes,Negative,Yes +USER-07554,40,Female,2.1,7.52,1.59,13.55,Excellent,Medium,7.45,6.86,Yes,Neutral,Yes +USER-07555,52,Other,7.29,0.71,4.51,12.51,Fair,Medium,4.91,4.04,Yes,Neutral,No +USER-07556,46,Female,10.12,6.67,3.32,2.45,Excellent,High,5.27,9.24,Yes,Neutral,Yes +USER-07557,41,Male,6.45,0.68,3.22,13.69,Poor,Medium,6.91,2.47,Yes,Negative,Yes +USER-07558,63,Male,8.11,5.82,0.05,10.78,Excellent,Medium,5.71,8.26,Yes,Positive,Yes +USER-07559,37,Female,3.77,2.77,3.56,11.45,Fair,Medium,5.92,7.61,No,Neutral,No +USER-07560,54,Other,5.63,7.91,3.79,8.9,Good,Medium,6.75,9.55,Yes,Negative,No +USER-07561,39,Male,7.95,4.3,1.73,3.31,Poor,Medium,8.72,1.76,Yes,Positive,Yes +USER-07562,44,Female,3.21,4.35,4.72,7.3,Fair,Medium,8.98,2.45,Yes,Neutral,Yes +USER-07563,23,Female,1.63,2.47,1.15,7.06,Good,Medium,4.6,7.83,No,Negative,No +USER-07564,54,Other,5.63,5.58,4.04,10.06,Good,Low,6.13,3.45,Yes,Negative,No +USER-07565,36,Female,7.66,2.02,2.26,9.7,Good,High,9.0,6.87,No,Negative,Yes +USER-07566,23,Female,7.8,5.78,2.12,8.49,Excellent,Low,6.71,4.29,No,Neutral,Yes +USER-07567,27,Female,7.47,6.75,1.02,5.97,Excellent,Medium,8.65,6.71,No,Negative,No +USER-07568,59,Male,2.29,7.93,4.0,1.53,Excellent,Medium,5.63,0.38,Yes,Neutral,No +USER-07569,24,Male,5.15,3.71,4.99,9.42,Poor,Medium,4.35,8.69,Yes,Neutral,No +USER-07570,52,Female,8.46,4.05,2.84,9.38,Poor,High,4.22,6.8,Yes,Negative,No +USER-07571,54,Other,10.13,0.04,3.65,14.7,Fair,Low,8.75,6.0,No,Negative,Yes +USER-07572,40,Other,7.08,4.1,3.28,8.82,Fair,Medium,6.81,4.45,Yes,Neutral,No +USER-07573,33,Female,7.66,7.8,4.82,13.67,Poor,Medium,6.87,8.99,No,Positive,No +USER-07574,53,Other,6.15,6.08,1.15,14.85,Good,High,6.0,1.22,Yes,Neutral,Yes +USER-07575,38,Female,8.58,0.69,2.01,10.44,Poor,High,7.92,7.67,No,Neutral,No +USER-07576,43,Female,3.19,0.92,2.01,7.58,Excellent,Medium,5.16,0.73,Yes,Positive,Yes +USER-07577,30,Other,3.85,6.69,3.5,10.37,Good,High,6.81,1.61,Yes,Negative,No +USER-07578,23,Male,2.72,2.26,3.0,7.62,Good,Medium,4.29,8.42,Yes,Neutral,No +USER-07579,29,Female,10.61,0.03,0.96,4.79,Poor,High,6.67,6.0,Yes,Neutral,Yes +USER-07580,36,Female,8.69,4.31,3.11,8.72,Fair,High,5.17,5.56,No,Positive,No +USER-07581,23,Female,2.41,4.67,3.72,8.03,Excellent,High,6.72,6.5,Yes,Negative,Yes +USER-07582,36,Male,1.57,2.73,2.27,2.12,Fair,Low,6.71,5.15,No,Negative,Yes +USER-07583,19,Other,6.97,6.92,4.31,3.8,Excellent,Low,5.69,7.99,Yes,Neutral,No +USER-07584,47,Female,9.92,6.22,0.43,12.23,Excellent,High,4.09,6.72,Yes,Positive,Yes +USER-07585,20,Other,1.01,4.24,2.33,7.58,Fair,Low,5.82,1.36,Yes,Negative,No +USER-07586,49,Other,1.74,6.1,4.81,1.0,Good,Medium,4.06,2.55,No,Negative,Yes +USER-07587,23,Male,6.09,6.37,3.82,7.06,Poor,High,5.66,6.57,Yes,Negative,No +USER-07588,19,Other,8.45,4.7,4.0,1.8,Excellent,High,5.49,5.51,No,Negative,Yes +USER-07589,41,Male,6.26,3.71,3.67,4.05,Excellent,Medium,4.58,6.14,No,Negative,Yes +USER-07590,51,Male,11.05,4.37,0.09,13.23,Poor,High,7.0,3.72,No,Neutral,No +USER-07591,24,Male,4.21,4.46,4.17,9.57,Good,High,7.9,7.51,Yes,Positive,No +USER-07592,58,Other,2.12,3.3,0.91,12.21,Good,Medium,6.38,9.13,No,Negative,Yes +USER-07593,54,Male,8.68,1.82,0.97,5.06,Excellent,Low,4.27,1.46,Yes,Negative,Yes +USER-07594,43,Female,10.77,2.41,1.42,1.76,Poor,High,8.95,7.87,Yes,Positive,Yes +USER-07595,37,Male,9.0,1.06,1.56,2.54,Good,Low,5.23,4.3,No,Positive,No +USER-07596,62,Male,3.22,6.87,0.15,6.18,Excellent,High,5.81,3.99,Yes,Negative,Yes +USER-07597,23,Other,7.07,1.9,4.91,4.28,Good,Medium,6.69,9.47,Yes,Positive,No +USER-07598,51,Female,9.15,5.99,1.69,4.85,Fair,High,4.61,3.76,Yes,Neutral,Yes +USER-07599,58,Male,6.76,3.26,1.44,10.12,Fair,High,8.4,0.8,Yes,Neutral,Yes +USER-07600,62,Other,11.66,7.5,1.87,14.74,Excellent,Medium,8.66,5.98,Yes,Negative,Yes +USER-07601,22,Female,4.48,1.89,0.24,5.83,Excellent,Medium,7.65,7.34,Yes,Neutral,No +USER-07602,61,Male,10.88,6.77,1.93,12.37,Excellent,High,6.71,2.91,Yes,Negative,Yes +USER-07603,65,Female,10.96,7.05,2.73,12.7,Good,Low,5.37,3.4,No,Neutral,No +USER-07604,64,Female,7.79,3.95,3.63,4.87,Excellent,Medium,8.33,7.73,Yes,Positive,Yes +USER-07605,44,Other,3.33,5.17,4.17,11.8,Good,Medium,4.84,7.97,Yes,Neutral,No +USER-07606,49,Other,10.77,7.61,2.01,6.58,Poor,High,8.42,6.96,Yes,Neutral,Yes +USER-07607,21,Male,11.67,2.97,1.22,14.22,Poor,Low,5.64,9.2,No,Positive,Yes +USER-07608,26,Other,5.43,6.07,4.61,14.14,Excellent,Low,7.89,0.14,Yes,Negative,Yes +USER-07609,27,Other,9.09,7.12,3.48,7.81,Fair,Medium,7.39,5.26,Yes,Neutral,No +USER-07610,50,Female,7.01,2.6,1.57,13.69,Good,High,8.66,4.05,Yes,Negative,No +USER-07611,20,Other,11.67,5.01,4.69,8.87,Fair,Medium,6.39,4.7,Yes,Neutral,No +USER-07612,46,Other,7.78,0.7,0.98,5.14,Good,High,6.59,2.41,No,Positive,No +USER-07613,53,Other,3.41,0.15,0.21,12.41,Good,Low,7.54,2.16,Yes,Negative,Yes +USER-07614,43,Male,9.03,1.82,3.5,10.89,Fair,Low,8.54,2.58,No,Positive,No +USER-07615,28,Other,1.18,2.68,3.79,14.08,Excellent,Medium,6.48,3.6,No,Positive,Yes +USER-07616,44,Other,11.36,5.66,0.78,9.15,Fair,High,7.3,7.73,No,Neutral,Yes +USER-07617,49,Female,11.63,4.92,3.52,10.75,Excellent,Low,4.98,8.98,No,Positive,No +USER-07618,53,Male,5.4,1.74,4.51,13.01,Poor,Medium,6.21,6.19,Yes,Neutral,No +USER-07619,57,Other,1.18,3.98,4.09,13.02,Poor,Low,8.82,8.48,Yes,Positive,Yes +USER-07620,50,Female,2.02,7.47,2.15,14.61,Fair,Medium,5.56,0.01,Yes,Neutral,Yes +USER-07621,41,Other,5.78,0.02,1.39,13.73,Good,Medium,4.31,3.02,Yes,Positive,Yes +USER-07622,51,Male,2.34,1.93,3.82,10.42,Fair,Medium,4.91,1.31,Yes,Neutral,Yes +USER-07623,19,Female,7.3,7.11,4.13,7.91,Good,High,5.31,6.31,No,Positive,Yes +USER-07624,56,Female,1.04,0.35,2.54,1.87,Fair,High,7.64,5.47,Yes,Positive,Yes +USER-07625,27,Male,4.63,2.28,0.05,9.53,Excellent,Medium,7.29,5.3,No,Positive,No +USER-07626,40,Male,7.7,0.82,4.12,9.23,Poor,Low,6.71,0.43,No,Neutral,No +USER-07627,46,Other,1.99,7.63,4.94,12.54,Excellent,Medium,7.37,1.43,No,Neutral,No +USER-07628,20,Other,1.28,4.03,4.38,8.63,Fair,Medium,5.62,1.58,No,Neutral,No +USER-07629,37,Female,11.96,2.98,1.25,7.65,Poor,Medium,5.3,3.0,Yes,Positive,Yes +USER-07630,60,Male,9.48,1.69,4.65,1.59,Good,Medium,9.0,4.79,Yes,Neutral,No +USER-07631,21,Male,1.36,3.84,1.42,8.91,Excellent,Medium,6.43,4.73,No,Neutral,No +USER-07632,51,Male,8.16,3.77,1.47,11.44,Excellent,Medium,7.45,4.79,No,Negative,No +USER-07633,33,Female,6.77,4.25,1.5,8.13,Excellent,High,4.43,4.62,Yes,Neutral,No +USER-07634,33,Male,6.21,5.22,1.49,14.66,Good,High,6.84,9.17,No,Positive,No +USER-07635,26,Female,8.82,1.67,2.55,3.58,Fair,High,7.35,8.75,Yes,Positive,No +USER-07636,29,Other,11.01,0.99,3.3,7.43,Fair,Medium,7.17,9.59,Yes,Negative,No +USER-07637,20,Female,11.64,5.89,1.83,14.21,Poor,High,5.39,9.06,No,Positive,Yes +USER-07638,41,Other,9.19,1.6,3.91,10.93,Fair,Medium,7.4,3.0,No,Neutral,Yes +USER-07639,36,Other,8.02,4.39,0.94,6.41,Good,High,6.0,4.89,Yes,Neutral,Yes +USER-07640,41,Male,7.59,5.1,0.44,3.5,Poor,Medium,5.29,4.5,No,Negative,Yes +USER-07641,35,Other,11.66,7.1,3.84,13.05,Excellent,Medium,6.14,2.89,No,Positive,No +USER-07642,65,Female,2.75,6.05,2.44,4.7,Poor,High,5.37,5.13,No,Neutral,No +USER-07643,19,Female,5.19,6.21,0.47,5.15,Poor,High,7.37,6.9,Yes,Neutral,Yes +USER-07644,41,Other,3.23,3.75,2.4,13.47,Good,High,7.81,9.38,No,Neutral,No +USER-07645,29,Other,5.41,1.3,1.86,6.5,Excellent,Medium,8.38,2.37,Yes,Negative,Yes +USER-07646,22,Male,2.87,4.4,0.0,1.66,Excellent,Medium,4.43,4.09,No,Negative,Yes +USER-07647,49,Other,7.01,0.09,0.29,3.36,Excellent,High,7.03,8.51,Yes,Neutral,Yes +USER-07648,36,Male,9.9,0.59,2.63,9.82,Excellent,High,5.97,5.88,No,Negative,Yes +USER-07649,47,Female,6.22,5.96,4.89,3.72,Good,High,6.39,6.54,Yes,Positive,No +USER-07650,25,Male,10.96,2.81,4.51,10.13,Poor,Low,7.47,1.7,No,Neutral,No +USER-07651,22,Male,4.15,5.24,4.24,7.43,Poor,Low,4.78,7.13,No,Negative,Yes +USER-07652,60,Other,3.23,2.55,0.92,1.17,Poor,Low,8.77,6.95,Yes,Negative,Yes +USER-07653,53,Other,8.96,6.48,1.92,6.16,Excellent,High,8.28,6.02,No,Neutral,No +USER-07654,47,Female,4.23,2.7,3.87,10.36,Fair,High,8.21,3.71,No,Neutral,No +USER-07655,33,Female,8.22,2.37,2.19,7.67,Poor,High,8.03,4.07,Yes,Positive,Yes +USER-07656,24,Other,6.84,0.13,0.86,2.43,Poor,Medium,5.25,2.62,Yes,Positive,No +USER-07657,42,Other,8.41,4.7,3.85,2.56,Poor,Medium,7.39,0.07,Yes,Neutral,Yes +USER-07658,58,Other,7.95,1.88,1.86,14.23,Fair,Medium,8.65,8.84,No,Neutral,No +USER-07659,22,Other,5.23,7.37,3.95,9.58,Excellent,High,5.59,6.48,Yes,Positive,Yes +USER-07660,51,Female,1.53,7.08,2.3,12.24,Fair,High,8.86,6.28,No,Neutral,No +USER-07661,63,Other,4.71,6.86,3.02,4.31,Fair,Low,6.04,4.24,Yes,Negative,Yes +USER-07662,46,Other,5.08,6.03,2.44,9.15,Good,High,5.38,3.26,No,Positive,Yes +USER-07663,30,Female,10.06,4.87,1.33,12.34,Good,Medium,7.43,7.86,Yes,Positive,Yes +USER-07664,59,Female,11.34,1.31,0.96,6.84,Poor,Medium,5.33,4.36,Yes,Neutral,Yes +USER-07665,46,Female,9.92,7.16,3.36,13.49,Excellent,High,4.8,4.11,No,Negative,Yes +USER-07666,59,Male,8.12,6.69,3.83,1.54,Fair,Medium,8.49,6.58,No,Neutral,No +USER-07667,32,Male,3.2,5.18,3.58,3.24,Poor,Medium,5.29,8.44,No,Negative,No +USER-07668,26,Female,2.42,7.96,1.59,13.17,Good,Medium,6.72,7.3,No,Neutral,Yes +USER-07669,35,Other,5.73,2.03,2.92,1.34,Excellent,Medium,8.43,2.47,No,Positive,Yes +USER-07670,27,Other,6.77,4.19,1.1,14.46,Fair,High,6.46,0.47,No,Positive,Yes +USER-07671,28,Male,1.61,0.05,3.28,6.08,Poor,Medium,4.25,8.61,No,Neutral,No +USER-07672,56,Male,2.68,1.05,0.94,7.08,Good,Medium,8.17,4.09,No,Positive,Yes +USER-07673,27,Other,10.57,7.13,2.86,9.8,Excellent,Low,7.71,0.84,No,Neutral,No +USER-07674,19,Female,1.48,0.98,3.36,5.63,Fair,Medium,6.74,2.81,Yes,Positive,Yes +USER-07675,51,Male,10.52,7.87,4.24,10.27,Poor,Medium,8.32,8.23,No,Neutral,No +USER-07676,22,Other,3.8,5.91,3.8,1.65,Good,Low,8.54,0.7,No,Positive,No +USER-07677,26,Female,11.51,4.52,4.0,14.24,Poor,Medium,4.53,3.92,No,Negative,No +USER-07678,65,Female,2.55,1.36,0.01,4.0,Fair,Low,4.77,1.02,No,Negative,Yes +USER-07679,44,Female,5.3,5.73,1.6,11.22,Excellent,Low,5.53,3.08,No,Positive,Yes +USER-07680,20,Other,7.07,5.29,3.73,9.44,Good,Medium,4.36,4.9,Yes,Negative,No +USER-07681,41,Other,3.32,2.23,1.47,8.39,Poor,Medium,7.14,1.56,No,Neutral,Yes +USER-07682,47,Male,9.55,4.78,2.74,3.04,Poor,Medium,5.87,6.63,Yes,Neutral,No +USER-07683,41,Other,3.34,1.04,0.66,8.96,Fair,High,8.0,4.07,Yes,Neutral,No +USER-07684,53,Male,5.36,3.52,2.86,4.79,Good,Medium,7.82,5.5,Yes,Neutral,No +USER-07685,31,Other,11.96,6.86,3.71,13.27,Fair,Low,8.43,1.71,Yes,Neutral,No +USER-07686,29,Other,7.41,0.01,4.81,9.59,Fair,Low,5.56,2.53,No,Negative,No +USER-07687,19,Male,7.58,2.72,5.0,13.73,Excellent,Low,7.2,2.47,No,Neutral,Yes +USER-07688,35,Other,7.67,5.79,0.85,6.37,Excellent,High,7.85,7.68,No,Neutral,No +USER-07689,64,Female,11.94,2.24,0.28,2.98,Good,High,7.03,2.37,No,Negative,Yes +USER-07690,39,Female,3.7,3.93,4.06,6.3,Poor,Low,6.42,1.78,Yes,Neutral,Yes +USER-07691,60,Other,6.79,5.67,2.3,12.39,Poor,High,7.78,8.01,Yes,Negative,No +USER-07692,51,Female,2.62,6.06,4.39,8.8,Good,Low,8.77,4.85,No,Negative,No +USER-07693,54,Male,8.29,5.34,1.55,11.26,Fair,High,5.29,4.27,No,Neutral,Yes +USER-07694,34,Male,9.01,0.94,3.12,10.83,Good,Medium,7.29,5.07,Yes,Positive,No +USER-07695,40,Female,11.28,4.26,0.22,12.86,Poor,High,5.34,0.93,No,Negative,Yes +USER-07696,58,Female,8.26,0.62,4.86,10.87,Excellent,Medium,6.14,7.62,Yes,Positive,Yes +USER-07697,45,Male,7.19,1.73,2.81,11.51,Excellent,High,5.99,1.15,Yes,Negative,Yes +USER-07698,28,Female,1.5,6.71,4.14,9.62,Fair,High,5.65,0.03,Yes,Negative,No +USER-07699,52,Male,4.66,1.63,3.02,10.21,Good,Low,8.34,2.09,Yes,Neutral,Yes +USER-07700,33,Other,9.03,2.58,2.22,4.44,Fair,Low,6.12,8.89,Yes,Neutral,Yes +USER-07701,50,Female,7.6,1.71,4.1,2.0,Fair,Low,7.09,3.61,Yes,Negative,No +USER-07702,47,Other,11.13,5.51,3.35,11.68,Poor,Low,4.43,5.62,No,Positive,Yes +USER-07703,46,Other,1.33,6.68,1.53,3.37,Good,Low,6.6,6.06,Yes,Neutral,No +USER-07704,63,Male,5.9,1.15,3.73,8.86,Fair,High,5.32,1.72,No,Positive,Yes +USER-07705,29,Male,1.23,3.59,3.92,4.47,Poor,Low,7.27,4.51,Yes,Negative,No +USER-07706,42,Female,10.29,4.08,1.77,13.92,Poor,Medium,8.69,5.63,No,Neutral,No +USER-07707,57,Female,9.49,6.99,1.86,9.35,Excellent,High,4.32,8.74,No,Negative,Yes +USER-07708,33,Male,3.08,7.32,0.15,8.02,Good,Low,7.26,3.46,No,Positive,No +USER-07709,55,Female,9.9,4.56,3.97,13.52,Fair,Low,8.84,6.47,Yes,Negative,No +USER-07710,23,Other,9.08,1.82,4.77,11.59,Poor,High,8.88,9.33,Yes,Neutral,Yes +USER-07711,21,Other,7.69,2.61,0.33,6.22,Fair,High,8.08,5.55,Yes,Positive,No +USER-07712,36,Female,1.05,1.89,0.23,7.73,Poor,Medium,4.12,7.88,No,Positive,No +USER-07713,63,Other,11.62,7.77,0.25,2.24,Fair,High,7.66,4.63,No,Negative,No +USER-07714,59,Female,2.21,7.16,1.37,1.53,Good,High,5.64,8.36,Yes,Positive,No +USER-07715,30,Female,2.75,1.42,0.46,9.46,Poor,High,6.99,8.46,Yes,Negative,Yes +USER-07716,31,Other,1.97,4.68,1.11,14.03,Good,Medium,4.27,5.26,Yes,Positive,Yes +USER-07717,20,Other,2.75,6.84,0.42,14.85,Poor,High,4.35,6.22,No,Positive,Yes +USER-07718,61,Male,1.12,6.17,3.84,11.19,Fair,Medium,7.07,7.07,Yes,Positive,Yes +USER-07719,36,Male,2.8,4.0,2.0,14.33,Good,High,6.67,5.59,Yes,Negative,Yes +USER-07720,32,Male,4.75,2.44,2.19,8.07,Excellent,Medium,4.48,5.89,Yes,Negative,No +USER-07721,32,Other,6.58,4.81,4.68,4.52,Good,Low,7.69,8.41,Yes,Negative,Yes +USER-07722,54,Female,3.51,6.84,1.56,3.86,Good,Medium,6.1,1.64,No,Positive,No +USER-07723,47,Female,10.59,2.57,0.99,13.29,Fair,Low,6.0,6.68,No,Positive,No +USER-07724,34,Male,2.45,1.62,0.97,14.15,Excellent,Low,6.03,2.03,Yes,Positive,No +USER-07725,33,Male,5.96,2.12,0.55,5.24,Excellent,Medium,7.72,0.4,No,Negative,No +USER-07726,57,Female,6.11,7.65,0.75,3.18,Good,Medium,5.36,0.8,No,Negative,No +USER-07727,20,Other,10.12,6.95,1.87,11.76,Good,Low,5.41,0.75,Yes,Neutral,No +USER-07728,65,Female,11.7,1.79,1.99,4.93,Good,High,7.83,4.69,No,Positive,No +USER-07729,44,Male,9.41,5.17,4.15,10.33,Excellent,Medium,7.04,3.34,No,Positive,No +USER-07730,56,Female,7.68,7.88,1.35,5.29,Good,High,5.58,3.8,No,Neutral,No +USER-07731,43,Female,5.72,2.23,0.88,1.25,Good,Medium,6.78,6.01,Yes,Negative,Yes +USER-07732,32,Other,1.05,4.87,3.25,4.55,Poor,High,5.9,3.26,Yes,Positive,Yes +USER-07733,32,Female,5.14,0.34,3.37,3.2,Fair,Low,7.85,1.7,No,Neutral,Yes +USER-07734,29,Female,10.7,6.4,2.01,5.85,Excellent,Medium,7.7,4.52,No,Neutral,Yes +USER-07735,57,Other,6.01,5.61,0.52,9.85,Fair,Medium,6.65,3.06,No,Positive,Yes +USER-07736,62,Female,3.27,7.35,4.25,2.54,Excellent,High,7.48,8.22,Yes,Negative,Yes +USER-07737,45,Male,7.61,2.09,1.67,14.65,Poor,High,4.01,9.69,No,Negative,No +USER-07738,40,Female,11.85,5.93,4.37,14.32,Poor,Low,6.36,8.5,No,Positive,No +USER-07739,51,Other,2.12,3.52,3.84,13.21,Poor,Low,4.29,2.49,No,Negative,Yes +USER-07740,19,Other,5.19,4.97,1.5,14.58,Excellent,High,5.23,7.01,No,Positive,No +USER-07741,43,Other,6.94,5.64,3.85,11.73,Poor,Low,4.82,9.31,No,Positive,No +USER-07742,23,Other,2.13,2.86,1.59,10.05,Fair,Low,4.62,0.69,No,Neutral,No +USER-07743,64,Male,9.99,7.42,1.94,9.58,Fair,Medium,7.64,2.63,No,Negative,No +USER-07744,52,Female,9.89,7.31,3.62,11.52,Excellent,Medium,8.14,6.94,Yes,Neutral,Yes +USER-07745,28,Male,11.78,5.98,2.44,7.4,Excellent,High,5.57,9.25,No,Neutral,No +USER-07746,39,Male,9.78,4.82,2.06,8.26,Poor,Medium,5.74,5.5,No,Neutral,Yes +USER-07747,62,Other,9.16,5.66,2.63,7.43,Good,High,5.28,3.24,No,Neutral,Yes +USER-07748,47,Male,6.62,3.66,2.77,9.09,Excellent,Medium,6.87,6.8,No,Positive,Yes +USER-07749,25,Male,5.92,4.78,3.29,7.15,Excellent,Medium,7.56,8.4,No,Positive,Yes +USER-07750,48,Female,7.06,5.19,4.03,6.82,Excellent,Low,7.51,4.69,Yes,Positive,Yes +USER-07751,65,Male,6.26,5.91,0.68,5.68,Good,Low,5.18,6.32,Yes,Negative,Yes +USER-07752,35,Female,9.11,5.88,3.52,1.09,Fair,Medium,6.44,6.86,Yes,Positive,No +USER-07753,47,Male,8.05,2.26,2.37,7.13,Excellent,Medium,4.65,7.17,No,Negative,Yes +USER-07754,48,Female,3.83,0.0,2.25,9.06,Fair,Low,7.74,1.51,No,Neutral,Yes +USER-07755,31,Male,3.02,2.26,1.4,14.65,Fair,Low,7.18,6.03,No,Positive,Yes +USER-07756,18,Male,11.98,7.57,0.49,13.45,Fair,Medium,6.08,9.56,Yes,Neutral,Yes +USER-07757,24,Male,10.22,5.45,0.14,10.83,Poor,High,4.7,8.38,No,Neutral,Yes +USER-07758,47,Other,10.13,0.43,4.34,8.1,Excellent,Low,5.81,6.01,No,Positive,Yes +USER-07759,44,Male,4.99,4.2,2.84,13.65,Excellent,Medium,5.35,1.08,No,Negative,Yes +USER-07760,42,Female,11.09,5.23,0.91,6.34,Excellent,Low,5.59,3.91,Yes,Positive,Yes +USER-07761,33,Male,7.69,5.18,3.73,3.05,Good,Low,6.78,3.71,No,Positive,No +USER-07762,21,Male,7.46,4.13,2.5,10.2,Excellent,High,5.13,6.62,Yes,Negative,No +USER-07763,60,Male,9.16,6.97,1.76,1.89,Poor,High,6.74,4.73,No,Neutral,No +USER-07764,47,Female,2.67,4.96,0.24,9.3,Excellent,High,6.43,8.43,Yes,Neutral,No +USER-07765,53,Female,4.43,2.25,2.31,4.34,Excellent,Low,6.5,8.86,No,Negative,No +USER-07766,50,Male,7.59,2.09,1.82,3.96,Poor,Medium,4.65,0.27,No,Positive,No +USER-07767,22,Female,1.18,3.99,4.86,11.71,Fair,Medium,5.46,4.2,Yes,Negative,Yes +USER-07768,21,Other,1.71,5.19,2.6,13.93,Excellent,Low,8.29,5.41,Yes,Negative,Yes +USER-07769,26,Other,11.84,5.92,2.55,10.46,Good,High,6.78,2.77,No,Neutral,Yes +USER-07770,37,Female,2.86,5.6,1.53,2.73,Fair,Medium,5.56,4.33,Yes,Positive,No +USER-07771,62,Male,5.52,6.79,0.02,5.6,Good,High,5.11,7.68,No,Negative,No +USER-07772,48,Other,1.96,3.55,3.54,6.86,Good,High,7.13,4.39,No,Positive,No +USER-07773,26,Other,2.62,2.48,1.39,4.44,Good,Medium,7.5,0.77,No,Negative,Yes +USER-07774,37,Other,6.48,1.43,1.07,8.06,Good,Medium,4.18,8.37,Yes,Neutral,No +USER-07775,48,Other,7.06,3.36,2.68,5.78,Excellent,High,8.48,7.36,No,Positive,Yes +USER-07776,28,Female,11.3,5.0,3.41,14.83,Poor,Low,7.42,6.62,No,Negative,No +USER-07777,54,Female,4.9,3.95,0.07,12.09,Fair,Medium,6.63,2.82,No,Positive,Yes +USER-07778,48,Female,7.87,6.29,3.67,12.94,Fair,Medium,4.57,6.4,No,Negative,Yes +USER-07779,63,Female,7.1,4.87,0.17,9.3,Fair,Medium,4.17,6.06,No,Neutral,Yes +USER-07780,39,Male,8.92,1.61,4.66,4.52,Fair,Medium,7.43,6.09,No,Positive,No +USER-07781,39,Male,6.25,6.49,3.16,1.74,Good,Low,7.58,8.64,No,Neutral,Yes +USER-07782,34,Male,9.53,0.26,0.57,11.49,Poor,Low,4.22,7.64,Yes,Negative,No +USER-07783,29,Male,4.99,4.7,0.68,13.64,Good,Low,8.21,4.5,No,Negative,No +USER-07784,58,Male,3.64,5.87,3.74,11.86,Fair,Medium,7.63,1.24,No,Negative,Yes +USER-07785,59,Male,2.55,1.65,1.16,14.67,Excellent,Medium,8.67,0.55,Yes,Positive,Yes +USER-07786,52,Male,10.41,0.84,3.87,11.12,Excellent,High,8.42,6.23,No,Neutral,Yes +USER-07787,18,Female,9.57,4.75,4.0,12.93,Poor,High,4.4,9.55,Yes,Negative,No +USER-07788,48,Male,6.22,0.81,1.87,4.23,Fair,High,5.14,9.3,No,Neutral,Yes +USER-07789,33,Female,6.92,2.41,4.72,10.1,Fair,Low,6.54,8.42,No,Neutral,No +USER-07790,56,Male,5.99,5.39,1.05,12.91,Fair,High,6.32,2.18,No,Negative,No +USER-07791,30,Other,7.55,1.15,4.44,1.73,Excellent,High,7.82,4.32,No,Negative,Yes +USER-07792,26,Male,2.73,1.38,0.56,6.93,Good,High,7.45,3.67,No,Negative,Yes +USER-07793,25,Other,10.04,1.41,1.64,10.58,Fair,Medium,5.13,7.51,No,Neutral,Yes +USER-07794,22,Female,11.78,1.65,1.88,14.97,Poor,Medium,6.94,7.48,No,Neutral,Yes +USER-07795,55,Female,3.11,6.86,0.9,14.09,Poor,High,6.81,5.1,No,Negative,Yes +USER-07796,22,Male,11.98,0.86,3.57,9.11,Excellent,Low,5.79,0.98,No,Neutral,No +USER-07797,23,Male,7.9,3.37,2.48,10.82,Poor,High,5.48,8.11,No,Positive,No +USER-07798,41,Female,10.49,1.08,4.57,13.07,Excellent,Medium,8.54,4.36,No,Positive,No +USER-07799,21,Other,3.05,1.18,1.96,2.92,Poor,Low,7.09,4.69,Yes,Neutral,Yes +USER-07800,41,Male,8.68,0.41,0.92,4.43,Poor,Low,4.6,3.92,Yes,Positive,Yes +USER-07801,65,Other,2.93,2.84,4.43,3.33,Fair,Medium,8.95,8.62,No,Neutral,Yes +USER-07802,55,Female,3.46,6.6,2.34,14.03,Fair,High,8.49,0.61,No,Positive,No +USER-07803,48,Other,4.62,0.11,3.06,3.4,Fair,High,6.58,8.89,Yes,Neutral,Yes +USER-07804,60,Other,4.51,3.19,2.64,14.88,Excellent,Low,7.75,0.43,No,Positive,Yes +USER-07805,25,Female,1.67,7.32,1.21,3.17,Fair,High,4.92,7.82,No,Neutral,No +USER-07806,64,Female,6.19,4.54,1.73,9.15,Excellent,High,4.49,7.77,Yes,Positive,Yes +USER-07807,32,Other,5.55,1.38,0.68,11.75,Poor,Medium,5.79,9.89,Yes,Negative,No +USER-07808,24,Female,6.28,5.27,1.24,4.87,Poor,High,4.62,8.38,No,Positive,Yes +USER-07809,40,Female,9.05,0.05,3.03,9.13,Fair,High,4.75,9.47,Yes,Positive,Yes +USER-07810,31,Other,4.7,2.78,3.55,9.2,Fair,Low,6.06,1.4,No,Neutral,No +USER-07811,25,Male,3.15,2.61,4.64,6.21,Excellent,Low,8.26,2.64,No,Positive,No +USER-07812,43,Other,8.68,5.78,1.38,8.24,Poor,Medium,8.71,1.06,Yes,Positive,Yes +USER-07813,30,Female,10.32,6.99,3.94,12.93,Good,Low,8.0,3.75,No,Negative,Yes +USER-07814,25,Other,6.11,6.62,1.13,6.73,Poor,High,8.92,9.71,No,Neutral,No +USER-07815,46,Other,6.88,7.58,3.82,6.55,Fair,High,8.19,9.8,Yes,Negative,No +USER-07816,60,Other,6.75,0.33,0.59,9.63,Poor,Medium,8.51,2.51,Yes,Positive,Yes +USER-07817,63,Male,6.89,7.44,3.82,1.17,Good,Medium,7.63,2.0,No,Positive,No +USER-07818,50,Male,2.55,1.68,0.55,1.63,Poor,Low,8.93,3.48,No,Neutral,No +USER-07819,57,Other,6.41,6.64,1.08,11.62,Fair,Medium,7.63,2.87,Yes,Neutral,Yes +USER-07820,58,Male,10.18,7.31,4.2,2.68,Poor,Medium,4.84,6.21,Yes,Neutral,Yes +USER-07821,58,Other,5.86,0.35,2.54,4.91,Poor,High,4.86,8.14,No,Negative,Yes +USER-07822,51,Female,2.98,3.28,2.85,4.0,Poor,High,7.95,2.15,Yes,Negative,No +USER-07823,46,Male,9.84,6.5,1.51,8.84,Poor,Low,5.84,4.82,Yes,Positive,Yes +USER-07824,38,Female,2.9,3.59,0.18,5.59,Fair,Medium,8.83,6.44,No,Positive,No +USER-07825,35,Male,2.81,4.51,4.04,1.91,Fair,Medium,6.35,8.41,No,Neutral,Yes +USER-07826,44,Male,10.42,7.41,2.19,3.73,Excellent,High,6.01,3.73,No,Positive,Yes +USER-07827,59,Male,2.36,7.02,3.03,5.81,Excellent,High,7.7,9.25,Yes,Neutral,No +USER-07828,29,Female,2.92,3.78,4.59,12.42,Good,Low,8.7,5.15,No,Positive,No +USER-07829,41,Female,1.25,5.01,2.15,6.31,Poor,High,6.55,8.64,No,Negative,Yes +USER-07830,65,Male,1.47,6.7,2.15,1.54,Excellent,High,8.21,0.6,Yes,Positive,Yes +USER-07831,25,Other,3.31,3.7,4.15,6.35,Poor,Low,6.65,9.93,No,Negative,Yes +USER-07832,25,Female,1.21,4.99,2.9,1.04,Good,Low,8.19,5.1,No,Neutral,No +USER-07833,48,Female,4.4,2.04,4.18,7.12,Good,High,4.64,5.19,Yes,Neutral,No +USER-07834,37,Other,3.1,1.24,1.47,11.53,Good,Medium,4.66,3.8,No,Negative,No +USER-07835,26,Female,10.01,6.56,1.01,14.07,Poor,Medium,7.92,0.18,No,Neutral,No +USER-07836,32,Other,3.95,7.08,0.4,12.87,Fair,Low,5.98,5.94,No,Neutral,No +USER-07837,32,Female,11.24,1.6,2.57,11.62,Good,High,6.67,1.09,No,Neutral,No +USER-07838,51,Other,9.13,1.31,1.39,9.74,Fair,High,8.23,9.15,No,Neutral,Yes +USER-07839,44,Female,3.84,5.26,1.46,13.29,Excellent,Low,4.19,5.46,No,Neutral,Yes +USER-07840,38,Female,11.02,5.69,0.45,3.81,Excellent,Medium,6.34,2.63,No,Positive,No +USER-07841,21,Other,3.66,5.06,4.97,2.98,Excellent,Medium,5.53,2.68,No,Negative,No +USER-07842,63,Other,5.17,0.59,2.7,14.72,Poor,Medium,8.12,3.16,Yes,Negative,No +USER-07843,29,Male,2.1,1.51,0.23,9.81,Good,Medium,4.08,8.24,No,Positive,No +USER-07844,36,Other,4.64,7.03,2.06,3.28,Good,High,5.83,9.99,No,Negative,Yes +USER-07845,32,Male,11.69,5.27,2.43,9.44,Good,High,7.15,4.18,Yes,Negative,Yes +USER-07846,39,Male,2.35,7.03,3.78,4.45,Fair,Low,6.88,6.71,Yes,Negative,No +USER-07847,21,Male,1.59,2.28,4.69,1.59,Fair,Low,5.51,5.79,No,Neutral,Yes +USER-07848,38,Other,6.77,1.18,3.96,11.54,Fair,Low,4.05,9.39,No,Negative,No +USER-07849,49,Male,11.86,1.71,0.94,2.41,Excellent,Low,8.16,2.96,No,Negative,Yes +USER-07850,26,Male,7.09,0.1,4.07,8.14,Excellent,Medium,5.56,8.43,Yes,Negative,No +USER-07851,30,Female,4.75,3.63,2.96,6.32,Poor,High,7.34,4.35,No,Positive,Yes +USER-07852,21,Female,6.97,7.58,2.35,7.36,Good,Medium,5.51,9.69,Yes,Negative,Yes +USER-07853,35,Female,8.35,3.91,1.11,13.78,Excellent,Low,4.5,5.1,No,Positive,No +USER-07854,64,Other,4.24,5.02,0.3,2.61,Fair,Low,8.31,2.53,Yes,Neutral,Yes +USER-07855,21,Male,8.15,0.1,4.25,10.29,Good,Low,8.18,9.43,No,Positive,No +USER-07856,22,Male,2.85,2.0,4.03,9.91,Good,High,8.32,8.04,No,Neutral,No +USER-07857,19,Other,10.26,6.14,1.82,5.99,Good,Low,8.57,8.74,Yes,Neutral,No +USER-07858,28,Male,7.23,1.29,3.87,1.11,Fair,Low,6.27,6.57,Yes,Neutral,Yes +USER-07859,62,Male,3.06,3.68,3.51,4.18,Poor,Low,6.14,4.78,No,Positive,No +USER-07860,43,Female,1.06,4.1,3.01,6.83,Excellent,High,6.34,8.39,Yes,Neutral,No +USER-07861,34,Male,2.59,6.59,4.39,5.63,Excellent,Low,7.67,9.84,No,Positive,No +USER-07862,62,Other,3.14,5.05,1.17,13.97,Excellent,Medium,6.23,4.74,Yes,Negative,No +USER-07863,65,Male,7.54,3.64,4.31,7.45,Fair,High,8.5,6.78,No,Negative,No +USER-07864,59,Other,8.31,4.06,4.01,11.38,Good,High,7.73,8.96,Yes,Neutral,No +USER-07865,41,Female,4.57,2.48,3.49,4.15,Excellent,Medium,5.8,8.7,No,Neutral,Yes +USER-07866,42,Female,8.74,4.11,0.52,13.45,Fair,High,7.58,3.88,No,Neutral,No +USER-07867,33,Male,9.12,2.99,2.6,3.1,Fair,Low,4.95,5.49,No,Positive,Yes +USER-07868,39,Male,8.41,6.29,4.06,6.6,Good,Low,4.77,2.13,Yes,Negative,No +USER-07869,45,Female,2.83,1.58,3.64,12.49,Good,Medium,7.62,6.66,No,Positive,No +USER-07870,34,Male,10.13,6.94,3.32,2.43,Excellent,Medium,4.09,0.88,No,Neutral,No +USER-07871,55,Other,10.56,6.18,3.86,6.59,Poor,Low,5.39,6.2,No,Positive,No +USER-07872,23,Female,10.19,1.22,2.13,3.02,Good,Medium,7.81,9.32,Yes,Negative,Yes +USER-07873,26,Male,10.07,3.89,1.25,2.74,Excellent,High,5.53,8.12,Yes,Neutral,No +USER-07874,59,Male,11.63,7.28,3.88,14.48,Good,Medium,5.61,9.14,Yes,Neutral,No +USER-07875,35,Female,3.78,2.56,2.59,12.99,Poor,Low,6.15,2.74,Yes,Positive,Yes +USER-07876,39,Other,6.97,2.78,4.38,8.28,Excellent,High,7.52,7.19,Yes,Negative,No +USER-07877,55,Female,7.35,1.18,3.96,3.93,Poor,High,5.52,5.58,No,Positive,No +USER-07878,54,Other,3.1,0.12,0.84,14.95,Excellent,Low,6.4,4.23,Yes,Neutral,No +USER-07879,45,Male,2.11,7.11,1.1,8.89,Fair,High,8.8,8.51,Yes,Positive,No +USER-07880,31,Other,9.59,5.32,2.11,9.03,Good,Medium,8.74,8.72,No,Negative,No +USER-07881,53,Male,9.47,6.05,4.32,10.38,Excellent,High,5.48,4.11,Yes,Negative,No +USER-07882,61,Female,3.28,7.61,3.55,11.95,Good,High,5.71,0.21,Yes,Neutral,Yes +USER-07883,28,Other,1.24,6.17,0.98,10.91,Good,High,7.53,7.44,Yes,Negative,No +USER-07884,50,Male,6.95,0.76,1.16,1.54,Good,Low,8.65,0.35,No,Positive,No +USER-07885,43,Other,8.55,3.31,0.16,1.49,Good,Medium,8.58,1.04,Yes,Neutral,No +USER-07886,29,Male,6.17,7.48,1.12,5.95,Fair,Medium,6.62,6.09,No,Positive,No +USER-07887,39,Other,5.73,6.47,4.72,11.91,Fair,Medium,7.0,5.21,No,Neutral,Yes +USER-07888,36,Female,4.89,1.9,2.52,3.31,Poor,Medium,4.71,8.43,Yes,Neutral,Yes +USER-07889,38,Other,1.14,0.15,0.46,8.74,Good,Low,4.1,3.32,No,Neutral,No +USER-07890,48,Other,11.55,3.98,3.4,13.8,Fair,Low,5.47,2.28,No,Positive,No +USER-07891,42,Other,11.33,3.4,3.81,6.03,Good,High,8.09,5.29,Yes,Neutral,Yes +USER-07892,40,Male,4.84,3.99,2.14,11.42,Poor,Low,6.54,9.23,Yes,Positive,No +USER-07893,41,Male,1.68,6.02,0.39,1.8,Fair,High,5.08,6.39,Yes,Positive,No +USER-07894,49,Female,1.87,6.49,4.76,11.38,Good,Medium,8.07,7.65,Yes,Neutral,No +USER-07895,30,Other,9.97,2.79,2.52,8.23,Fair,Low,8.19,2.61,Yes,Neutral,No +USER-07896,43,Male,1.51,1.52,0.65,8.06,Excellent,Low,7.21,3.9,Yes,Positive,Yes +USER-07897,44,Other,1.58,4.2,2.21,2.71,Poor,Medium,7.33,6.43,Yes,Neutral,No +USER-07898,45,Female,9.21,5.92,0.94,13.98,Good,High,8.9,5.12,Yes,Neutral,No +USER-07899,36,Male,2.98,1.08,0.03,11.3,Excellent,High,8.18,4.87,No,Negative,Yes +USER-07900,44,Male,10.33,7.14,3.64,6.99,Excellent,Medium,8.64,6.12,Yes,Positive,Yes +USER-07901,37,Male,8.94,7.59,0.1,9.89,Excellent,Low,4.26,3.18,No,Negative,No +USER-07902,23,Other,10.98,0.06,3.88,7.95,Poor,Medium,7.81,4.89,Yes,Negative,No +USER-07903,50,Female,2.58,1.57,3.92,12.3,Excellent,High,4.62,2.87,Yes,Negative,No +USER-07904,43,Male,6.81,1.38,0.41,8.35,Poor,Low,4.01,6.12,Yes,Positive,Yes +USER-07905,36,Other,3.93,5.12,2.86,13.07,Fair,Low,5.03,5.36,Yes,Negative,No +USER-07906,64,Female,8.82,6.86,0.66,4.2,Excellent,High,8.6,5.16,No,Neutral,Yes +USER-07907,58,Female,10.34,4.93,3.86,8.03,Excellent,Medium,4.89,7.47,No,Positive,Yes +USER-07908,24,Male,10.42,1.17,4.21,13.31,Poor,High,5.4,3.62,Yes,Positive,No +USER-07909,56,Female,2.93,1.9,3.97,3.75,Fair,High,5.34,5.16,No,Negative,Yes +USER-07910,24,Other,4.69,5.01,3.82,11.19,Good,Low,6.98,5.26,Yes,Neutral,Yes +USER-07911,42,Male,10.58,3.82,4.6,7.36,Good,High,8.95,3.53,No,Positive,No +USER-07912,33,Female,6.75,3.87,0.9,1.06,Poor,High,8.44,2.94,No,Neutral,Yes +USER-07913,43,Other,11.32,0.41,2.94,3.19,Good,High,5.38,1.8,No,Neutral,Yes +USER-07914,34,Other,3.28,5.33,2.75,4.88,Fair,High,8.06,0.01,No,Negative,No +USER-07915,46,Female,7.9,2.62,1.57,2.99,Fair,Medium,5.1,5.94,Yes,Neutral,Yes +USER-07916,58,Male,8.23,1.86,2.92,6.07,Poor,High,8.48,3.18,No,Neutral,Yes +USER-07917,34,Other,5.12,1.18,2.14,11.58,Fair,Medium,5.77,5.94,Yes,Positive,Yes +USER-07918,56,Other,1.93,1.26,3.91,7.62,Good,Medium,8.07,0.23,Yes,Positive,Yes +USER-07919,37,Other,4.34,3.28,0.15,11.21,Excellent,High,7.79,7.39,No,Negative,Yes +USER-07920,37,Other,7.69,7.42,0.07,12.22,Poor,Medium,8.75,1.75,No,Neutral,No +USER-07921,60,Female,2.04,2.82,0.71,4.95,Excellent,Low,5.9,4.93,Yes,Positive,No +USER-07922,46,Other,6.0,5.29,3.47,10.67,Good,High,5.65,3.58,Yes,Positive,No +USER-07923,60,Other,8.7,4.45,1.86,14.71,Good,High,6.97,8.01,Yes,Neutral,No +USER-07924,43,Female,8.28,2.69,2.68,3.63,Excellent,Low,6.64,1.65,Yes,Negative,No +USER-07925,58,Other,3.27,2.05,4.11,2.12,Poor,High,7.31,0.46,No,Negative,Yes +USER-07926,56,Other,10.54,0.43,3.61,12.22,Good,Medium,4.41,8.66,Yes,Negative,No +USER-07927,39,Male,8.45,3.52,3.79,10.04,Poor,High,8.67,4.38,No,Neutral,Yes +USER-07928,59,Male,11.41,2.27,4.45,13.15,Excellent,Low,6.35,0.19,No,Neutral,No +USER-07929,26,Other,8.97,0.05,1.69,7.48,Fair,Low,6.67,3.71,No,Negative,No +USER-07930,52,Female,2.44,2.12,0.62,6.46,Poor,High,4.71,8.55,Yes,Positive,Yes +USER-07931,33,Female,6.16,2.6,4.54,2.23,Good,High,8.69,6.17,Yes,Negative,Yes +USER-07932,40,Other,2.18,6.17,1.27,14.42,Good,High,5.95,5.13,No,Neutral,Yes +USER-07933,54,Female,2.17,3.87,3.37,4.56,Excellent,Medium,6.27,4.14,Yes,Neutral,No +USER-07934,22,Other,6.63,6.63,1.28,14.51,Poor,Medium,7.22,0.44,Yes,Negative,No +USER-07935,33,Female,7.61,6.24,0.14,12.14,Good,Medium,8.99,6.82,No,Neutral,No +USER-07936,46,Female,9.13,6.44,0.76,2.61,Poor,High,5.82,4.55,Yes,Negative,No +USER-07937,59,Female,9.07,4.05,1.86,1.2,Excellent,Low,6.16,8.9,No,Negative,Yes +USER-07938,55,Other,1.06,0.23,4.19,12.86,Good,Medium,8.75,5.82,Yes,Positive,No +USER-07939,35,Male,9.23,5.84,0.98,1.72,Poor,High,5.25,7.33,No,Negative,No +USER-07940,18,Other,7.31,5.32,2.02,5.72,Fair,Low,6.51,7.68,Yes,Neutral,No +USER-07941,49,Male,10.27,4.25,1.59,12.9,Good,Low,8.69,5.26,No,Negative,Yes +USER-07942,45,Female,1.54,4.25,4.73,7.48,Poor,Low,7.44,6.99,No,Negative,Yes +USER-07943,54,Male,7.03,7.08,1.37,13.23,Good,High,8.85,8.28,Yes,Positive,Yes +USER-07944,24,Male,8.05,7.36,0.97,5.45,Excellent,Low,8.32,3.41,Yes,Neutral,No +USER-07945,42,Male,7.9,7.19,3.6,12.09,Poor,Low,5.49,3.37,Yes,Negative,No +USER-07946,30,Female,9.95,7.89,1.65,12.57,Excellent,Low,6.26,7.54,No,Neutral,Yes +USER-07947,62,Other,4.31,6.09,0.46,3.28,Poor,Low,5.77,7.09,Yes,Negative,Yes +USER-07948,44,Other,11.01,5.78,3.21,12.83,Good,High,7.16,1.7,No,Neutral,No +USER-07949,52,Female,11.95,7.25,0.72,3.05,Poor,Low,7.39,9.15,No,Neutral,Yes +USER-07950,58,Other,11.83,6.58,3.41,2.3,Poor,Medium,6.37,7.74,No,Positive,Yes +USER-07951,28,Other,8.89,7.68,2.62,2.56,Excellent,High,5.31,5.41,Yes,Neutral,No +USER-07952,46,Other,8.7,5.28,4.46,7.32,Excellent,High,7.08,2.43,No,Neutral,Yes +USER-07953,27,Other,3.65,0.18,4.49,9.84,Poor,High,5.67,2.46,Yes,Neutral,No +USER-07954,39,Female,8.28,7.76,2.85,10.85,Fair,Medium,7.29,3.66,Yes,Positive,Yes +USER-07955,33,Other,5.43,6.71,3.79,7.83,Fair,Medium,4.36,3.41,No,Positive,Yes +USER-07956,27,Female,5.72,3.94,1.93,4.84,Poor,High,6.98,8.57,Yes,Negative,Yes +USER-07957,58,Male,2.12,2.79,0.82,12.55,Poor,Medium,7.73,5.3,No,Negative,Yes +USER-07958,22,Other,9.94,7.42,3.85,3.34,Excellent,Medium,5.71,0.35,Yes,Neutral,Yes +USER-07959,32,Female,9.06,4.43,0.4,5.57,Poor,Low,6.85,2.67,No,Positive,No +USER-07960,36,Male,7.99,7.87,2.54,4.21,Fair,Medium,8.62,9.74,Yes,Negative,No +USER-07961,41,Female,9.69,0.47,3.6,10.52,Good,Low,8.61,8.06,No,Negative,No +USER-07962,19,Other,6.0,0.94,2.52,1.76,Good,High,8.71,8.83,Yes,Negative,No +USER-07963,54,Male,5.51,5.91,4.15,14.81,Fair,Low,5.17,5.61,No,Positive,Yes +USER-07964,56,Other,10.58,7.01,1.47,3.57,Poor,Low,7.0,7.2,Yes,Neutral,Yes +USER-07965,62,Other,10.28,4.6,2.95,12.12,Poor,Low,7.71,4.94,Yes,Neutral,Yes +USER-07966,40,Male,11.86,4.85,3.58,8.07,Excellent,Medium,7.41,0.83,Yes,Neutral,No +USER-07967,21,Male,1.93,4.91,1.16,4.43,Excellent,Medium,7.79,2.52,Yes,Negative,No +USER-07968,37,Other,11.99,6.87,2.62,11.96,Fair,High,6.49,2.91,No,Neutral,No +USER-07969,35,Male,6.94,6.33,1.74,2.06,Excellent,High,8.88,5.14,No,Neutral,No +USER-07970,43,Other,10.28,1.72,1.95,9.63,Poor,Medium,6.93,0.52,Yes,Positive,No +USER-07971,35,Female,2.72,5.54,4.82,2.13,Excellent,Low,5.24,0.88,No,Positive,Yes +USER-07972,50,Other,3.83,4.03,1.72,10.29,Excellent,Low,6.59,7.76,Yes,Negative,No +USER-07973,55,Male,6.7,0.66,1.84,8.02,Good,High,4.36,2.72,Yes,Positive,Yes +USER-07974,29,Male,11.88,6.05,1.04,4.53,Poor,Medium,5.08,5.64,Yes,Positive,No +USER-07975,65,Female,4.69,0.27,0.24,6.09,Excellent,Medium,8.97,1.91,No,Positive,No +USER-07976,43,Other,2.46,1.3,0.69,4.33,Poor,High,8.72,6.39,Yes,Positive,No +USER-07977,31,Female,2.01,6.06,2.26,5.93,Fair,High,4.5,5.84,No,Positive,Yes +USER-07978,31,Other,7.56,6.45,3.31,7.03,Good,High,7.23,8.04,Yes,Negative,Yes +USER-07979,33,Male,7.82,3.92,4.17,14.2,Good,High,5.12,6.84,Yes,Positive,No +USER-07980,19,Male,5.15,1.58,4.55,1.49,Fair,Low,7.68,0.6,Yes,Positive,No +USER-07981,21,Male,4.96,2.11,3.72,11.24,Poor,Medium,7.67,6.17,Yes,Negative,Yes +USER-07982,60,Female,11.66,4.16,0.92,2.09,Fair,Medium,8.39,9.07,No,Positive,Yes +USER-07983,18,Other,1.75,5.4,3.81,4.29,Poor,Low,5.24,0.96,Yes,Negative,No +USER-07984,36,Male,6.27,1.9,2.58,2.63,Poor,High,6.65,9.65,Yes,Negative,Yes +USER-07985,47,Female,3.65,4.71,0.65,12.6,Good,Low,6.64,6.21,Yes,Neutral,No +USER-07986,21,Other,1.53,0.63,3.05,5.85,Poor,High,4.28,2.84,Yes,Neutral,No +USER-07987,25,Male,2.99,6.01,0.55,5.74,Good,Low,8.58,7.6,No,Positive,No +USER-07988,52,Other,10.71,1.6,2.47,13.58,Good,Medium,5.52,4.88,No,Negative,Yes +USER-07989,62,Male,10.09,5.69,3.47,2.74,Fair,Medium,5.42,8.68,Yes,Positive,Yes +USER-07990,29,Male,3.63,0.44,4.18,3.12,Excellent,High,6.6,5.15,No,Negative,Yes +USER-07991,38,Female,5.99,1.7,0.44,6.6,Poor,Medium,4.3,4.1,No,Negative,Yes +USER-07992,57,Other,2.54,0.61,2.7,11.02,Fair,High,5.92,8.4,No,Neutral,Yes +USER-07993,65,Female,6.56,3.04,2.77,3.9,Poor,Medium,5.93,5.32,No,Positive,Yes +USER-07994,49,Other,3.84,2.36,4.31,8.5,Excellent,Medium,7.42,6.62,No,Neutral,No +USER-07995,54,Male,3.63,3.18,4.56,11.35,Fair,Low,5.45,4.64,No,Positive,Yes +USER-07996,54,Female,7.07,0.92,4.76,12.01,Poor,Low,7.45,2.72,No,Negative,No +USER-07997,19,Other,4.55,1.6,0.77,1.3,Good,High,6.82,5.39,Yes,Negative,No +USER-07998,35,Male,11.04,3.4,3.51,10.02,Poor,Medium,8.83,0.75,No,Positive,No +USER-07999,63,Male,7.51,6.29,0.03,12.9,Good,Low,4.08,0.52,Yes,Negative,Yes +USER-08000,63,Other,2.75,7.15,0.4,1.69,Fair,High,5.25,1.34,No,Positive,Yes +USER-08001,41,Other,6.23,4.18,2.08,10.34,Good,High,4.29,9.56,No,Positive,Yes +USER-08002,28,Other,1.2,7.61,1.64,1.83,Fair,High,8.33,0.81,No,Positive,No +USER-08003,24,Other,4.93,3.09,0.23,6.73,Fair,Medium,6.29,9.39,Yes,Neutral,No +USER-08004,39,Male,2.11,1.92,4.21,5.77,Excellent,Medium,7.32,1.67,Yes,Neutral,No +USER-08005,54,Other,9.86,3.87,0.52,6.18,Fair,Medium,6.23,9.09,No,Neutral,No +USER-08006,28,Other,4.77,5.47,3.65,9.08,Excellent,Low,8.89,9.83,No,Positive,Yes +USER-08007,47,Other,10.63,1.67,4.1,3.26,Excellent,Medium,5.1,6.87,Yes,Negative,Yes +USER-08008,50,Female,9.21,0.89,4.49,3.97,Excellent,Low,7.22,5.53,Yes,Negative,Yes +USER-08009,21,Female,3.95,4.72,3.94,11.37,Fair,Medium,7.68,9.22,Yes,Negative,No +USER-08010,45,Female,11.65,6.08,3.86,14.56,Excellent,Medium,7.84,8.66,No,Neutral,Yes +USER-08011,43,Male,11.2,1.19,3.62,8.16,Good,Low,7.38,0.56,Yes,Neutral,Yes +USER-08012,33,Male,5.58,4.03,0.97,12.93,Excellent,High,5.07,5.51,No,Negative,Yes +USER-08013,65,Other,10.82,2.12,2.96,10.18,Excellent,Medium,8.12,7.89,Yes,Positive,No +USER-08014,31,Other,7.63,0.2,0.84,6.83,Excellent,Low,6.02,5.99,Yes,Positive,No +USER-08015,58,Male,10.69,3.26,0.87,11.8,Good,High,6.18,2.55,Yes,Positive,Yes +USER-08016,21,Other,3.4,5.47,2.9,5.31,Fair,Low,6.01,5.52,Yes,Negative,No +USER-08017,55,Male,1.73,1.94,0.99,8.44,Excellent,Medium,8.17,4.22,Yes,Negative,Yes +USER-08018,45,Other,5.24,7.13,4.56,13.01,Fair,Medium,8.66,9.37,Yes,Positive,Yes +USER-08019,47,Female,9.85,7.68,3.9,5.28,Good,Medium,7.3,3.95,Yes,Neutral,No +USER-08020,50,Other,6.85,6.46,4.5,11.38,Excellent,High,4.05,3.57,Yes,Negative,No +USER-08021,55,Other,7.22,5.86,0.52,4.08,Good,Medium,7.3,4.82,Yes,Neutral,Yes +USER-08022,30,Female,6.02,1.48,4.83,4.34,Good,High,5.98,2.79,Yes,Negative,No +USER-08023,27,Other,4.09,7.79,3.3,5.44,Good,Medium,7.85,7.62,No,Neutral,No +USER-08024,24,Female,6.48,0.46,4.56,5.7,Fair,High,6.57,9.26,Yes,Neutral,Yes +USER-08025,19,Other,5.63,4.4,0.55,4.15,Good,Medium,4.18,0.25,Yes,Negative,Yes +USER-08026,62,Other,8.49,3.64,1.76,5.43,Good,High,6.32,8.91,Yes,Negative,No +USER-08027,63,Female,6.29,5.15,1.12,5.2,Poor,High,5.14,8.2,Yes,Negative,No +USER-08028,26,Other,10.88,3.93,1.41,4.49,Excellent,Medium,8.08,4.39,Yes,Negative,Yes +USER-08029,44,Other,7.84,1.42,4.8,8.92,Poor,High,5.89,0.76,No,Neutral,No +USER-08030,63,Other,8.04,1.95,2.47,4.57,Excellent,High,6.18,1.27,Yes,Negative,Yes +USER-08031,21,Other,11.21,0.59,3.01,7.07,Poor,High,7.8,3.65,Yes,Positive,No +USER-08032,45,Female,1.92,3.73,3.49,6.92,Fair,Medium,5.03,5.26,No,Neutral,No +USER-08033,39,Other,6.53,0.47,3.32,11.88,Fair,Medium,5.44,6.04,Yes,Neutral,No +USER-08034,54,Other,2.77,3.79,1.87,8.57,Fair,Low,7.91,9.9,No,Neutral,Yes +USER-08035,25,Other,10.8,3.53,4.67,7.69,Poor,Low,8.18,1.22,No,Neutral,Yes +USER-08036,64,Female,6.93,1.69,2.1,10.49,Excellent,High,6.73,1.27,No,Neutral,No +USER-08037,34,Other,8.53,0.81,2.16,7.56,Excellent,High,6.15,0.37,No,Neutral,No +USER-08038,61,Other,11.59,2.97,4.72,4.03,Good,Low,7.8,5.24,No,Neutral,Yes +USER-08039,52,Other,9.88,7.19,3.37,2.94,Good,Medium,8.54,4.9,No,Positive,Yes +USER-08040,52,Other,5.41,4.8,4.34,11.05,Excellent,High,4.46,6.86,No,Negative,No +USER-08041,20,Male,1.85,4.97,4.72,14.55,Good,Medium,6.88,4.05,No,Negative,No +USER-08042,56,Other,3.34,7.17,3.45,9.59,Excellent,Medium,8.94,7.71,Yes,Neutral,No +USER-08043,32,Female,3.24,6.97,1.65,14.13,Fair,High,6.12,5.64,No,Negative,Yes +USER-08044,44,Female,1.63,5.96,1.6,13.05,Fair,High,7.71,9.07,No,Negative,Yes +USER-08045,33,Other,6.7,4.0,4.26,1.66,Good,High,5.18,5.12,No,Negative,No +USER-08046,38,Male,5.57,3.36,2.92,14.49,Fair,Medium,4.46,8.36,No,Negative,No +USER-08047,27,Male,4.79,5.56,4.25,4.34,Fair,Medium,4.42,4.41,No,Positive,No +USER-08048,21,Male,10.44,0.85,0.37,13.36,Poor,Low,5.13,3.99,Yes,Neutral,Yes +USER-08049,20,Male,1.49,3.23,1.61,2.8,Poor,High,8.79,1.5,No,Neutral,No +USER-08050,21,Other,1.13,1.52,3.66,13.69,Excellent,Medium,7.78,4.8,Yes,Negative,Yes +USER-08051,52,Other,10.59,2.94,4.0,4.71,Excellent,Low,8.83,1.86,No,Positive,Yes +USER-08052,18,Other,4.82,4.89,2.83,3.47,Good,High,5.59,0.1,Yes,Positive,Yes +USER-08053,26,Female,4.51,3.25,2.52,4.56,Fair,High,8.62,3.0,No,Neutral,No +USER-08054,23,Other,10.71,2.71,1.99,7.17,Fair,Low,6.31,5.35,Yes,Positive,Yes +USER-08055,63,Female,4.42,1.58,2.12,4.04,Good,Medium,5.23,9.66,Yes,Positive,Yes +USER-08056,52,Female,4.45,2.75,4.25,8.78,Fair,Medium,5.91,3.93,No,Positive,No +USER-08057,59,Female,4.08,2.14,1.01,9.47,Good,Medium,8.84,0.68,No,Negative,No +USER-08058,27,Female,6.54,4.51,4.62,3.52,Fair,Medium,8.72,2.24,No,Positive,No +USER-08059,23,Male,8.61,5.01,3.38,2.2,Excellent,High,6.48,6.97,Yes,Negative,No +USER-08060,23,Male,1.73,2.44,3.13,8.77,Fair,High,5.9,5.63,No,Negative,No +USER-08061,31,Female,6.42,5.38,4.24,11.83,Excellent,Low,8.97,5.98,No,Positive,No +USER-08062,41,Other,6.02,1.66,3.1,13.3,Poor,High,5.72,7.23,Yes,Negative,Yes +USER-08063,58,Male,9.4,7.64,0.39,14.08,Excellent,Low,7.21,8.49,No,Negative,No +USER-08064,31,Female,11.63,7.38,2.74,9.98,Poor,Low,5.25,7.04,No,Neutral,No +USER-08065,38,Male,6.04,3.98,3.77,14.35,Fair,Low,6.21,5.46,No,Negative,No +USER-08066,61,Male,2.7,2.89,1.02,13.01,Poor,High,7.29,9.86,Yes,Negative,Yes +USER-08067,41,Female,3.92,1.67,3.58,8.29,Poor,High,6.6,0.16,Yes,Negative,No +USER-08068,27,Other,6.95,7.74,2.7,7.95,Excellent,Low,8.29,6.21,Yes,Positive,Yes +USER-08069,48,Male,6.14,1.67,0.87,2.97,Fair,Medium,7.18,8.75,No,Negative,No +USER-08070,45,Other,10.93,0.62,0.46,10.35,Fair,Low,4.35,7.02,No,Positive,No +USER-08071,21,Male,5.7,7.05,0.35,6.64,Excellent,Medium,6.27,5.4,Yes,Negative,Yes +USER-08072,21,Female,5.58,0.25,1.93,8.75,Excellent,Medium,5.1,9.54,Yes,Negative,Yes +USER-08073,18,Other,8.47,7.89,0.78,6.12,Fair,Medium,4.27,8.09,Yes,Negative,Yes +USER-08074,46,Male,1.89,3.76,1.13,8.66,Fair,Medium,4.92,8.65,Yes,Neutral,Yes +USER-08075,33,Other,7.25,2.76,0.57,9.07,Fair,Medium,5.52,4.9,No,Positive,Yes +USER-08076,22,Female,8.03,3.98,1.22,3.79,Fair,High,4.81,7.69,Yes,Neutral,Yes +USER-08077,39,Male,4.15,2.62,3.65,13.06,Poor,Medium,7.94,1.78,Yes,Negative,Yes +USER-08078,63,Female,5.21,6.3,2.0,13.17,Excellent,High,5.62,7.65,Yes,Negative,No +USER-08079,45,Female,1.77,6.11,2.94,5.48,Poor,Low,7.66,8.19,No,Neutral,Yes +USER-08080,59,Other,9.65,7.41,4.54,14.96,Good,Medium,5.16,8.18,Yes,Positive,Yes +USER-08081,35,Female,10.33,5.68,1.35,6.19,Fair,High,5.38,1.09,No,Negative,Yes +USER-08082,32,Male,3.24,1.38,2.19,5.35,Excellent,High,7.7,2.9,Yes,Neutral,No +USER-08083,34,Male,4.58,7.4,4.97,14.72,Good,Low,8.69,2.14,Yes,Positive,Yes +USER-08084,45,Male,3.9,2.16,0.8,4.2,Excellent,Medium,8.88,9.03,Yes,Neutral,Yes +USER-08085,63,Female,8.93,6.26,3.07,5.62,Poor,Medium,8.5,2.48,No,Positive,Yes +USER-08086,29,Male,7.36,6.46,1.86,9.8,Good,Low,4.52,6.19,No,Negative,Yes +USER-08087,20,Other,4.46,6.08,4.32,10.2,Fair,Low,6.22,0.26,Yes,Positive,Yes +USER-08088,26,Other,6.26,6.14,0.38,5.04,Good,Low,4.85,8.63,No,Positive,Yes +USER-08089,28,Female,9.23,7.12,4.39,5.79,Excellent,High,6.31,8.9,Yes,Positive,No +USER-08090,23,Male,1.19,3.83,2.0,9.62,Poor,Low,7.87,3.69,No,Negative,Yes +USER-08091,43,Male,7.17,1.46,2.81,10.47,Excellent,Low,6.08,8.3,Yes,Positive,No +USER-08092,63,Female,6.84,2.3,0.26,4.32,Good,Low,6.16,9.46,No,Negative,Yes +USER-08093,58,Other,10.7,7.17,0.04,9.21,Poor,High,8.77,0.84,Yes,Neutral,No +USER-08094,22,Male,11.72,7.21,3.81,2.51,Good,Medium,6.79,6.0,Yes,Negative,Yes +USER-08095,25,Other,11.69,7.14,0.35,14.49,Poor,High,8.77,2.27,Yes,Neutral,Yes +USER-08096,52,Male,1.72,6.84,3.73,11.42,Good,Low,4.02,1.21,Yes,Positive,No +USER-08097,64,Female,3.06,4.21,4.22,11.97,Excellent,Low,8.25,0.83,No,Positive,No +USER-08098,42,Other,7.88,6.24,1.38,2.37,Excellent,Medium,7.72,8.93,No,Negative,No +USER-08099,46,Female,1.13,5.3,3.55,6.7,Excellent,Low,4.32,3.72,No,Negative,No +USER-08100,61,Male,10.57,7.13,3.53,3.15,Good,Medium,4.65,4.76,No,Neutral,Yes +USER-08101,48,Male,7.24,2.94,3.07,9.35,Poor,Medium,8.49,4.67,Yes,Negative,No +USER-08102,37,Other,3.03,0.77,3.55,2.87,Poor,Medium,7.82,6.54,Yes,Neutral,No +USER-08103,18,Other,11.75,5.81,0.01,9.1,Good,High,6.43,9.49,No,Positive,No +USER-08104,18,Female,3.23,7.85,3.51,7.79,Poor,High,6.42,9.54,No,Negative,No +USER-08105,46,Other,1.15,1.05,1.22,4.86,Poor,High,8.85,6.53,No,Positive,Yes +USER-08106,27,Female,1.42,3.31,4.75,3.96,Good,Medium,6.45,6.9,Yes,Positive,Yes +USER-08107,58,Other,10.1,6.39,2.19,3.16,Excellent,Medium,4.6,3.57,No,Neutral,Yes +USER-08108,37,Male,10.69,2.19,0.99,14.62,Fair,Low,8.77,0.74,Yes,Negative,No +USER-08109,61,Other,2.03,6.8,1.63,2.79,Excellent,Low,5.21,6.1,Yes,Positive,Yes +USER-08110,48,Male,1.79,3.31,2.05,11.03,Fair,Medium,6.44,9.55,No,Negative,Yes +USER-08111,36,Female,8.5,7.02,0.28,9.53,Good,High,8.22,1.85,Yes,Neutral,Yes +USER-08112,65,Male,6.13,4.04,3.58,3.74,Excellent,Medium,4.39,5.8,Yes,Neutral,No +USER-08113,35,Other,2.59,1.73,2.35,7.48,Excellent,High,5.41,1.29,Yes,Neutral,No +USER-08114,64,Other,9.8,7.43,1.55,7.82,Fair,Low,8.01,6.88,No,Negative,No +USER-08115,54,Male,6.86,2.36,3.75,14.42,Good,Medium,5.79,7.96,Yes,Negative,No +USER-08116,64,Other,11.01,7.92,3.4,4.2,Poor,Medium,4.45,8.04,No,Negative,No +USER-08117,48,Male,2.34,1.21,0.06,13.88,Good,Medium,7.46,5.29,Yes,Positive,No +USER-08118,44,Female,11.27,4.52,0.39,14.72,Excellent,Medium,7.39,6.4,Yes,Negative,Yes +USER-08119,36,Female,1.9,4.64,3.9,12.51,Poor,High,8.94,4.84,Yes,Negative,No +USER-08120,45,Female,1.41,6.98,1.3,13.68,Excellent,Medium,8.46,1.44,Yes,Neutral,No +USER-08121,49,Female,2.67,7.19,4.54,3.52,Fair,Medium,5.3,4.74,Yes,Negative,No +USER-08122,55,Male,3.77,6.07,0.17,3.33,Good,High,8.34,1.23,Yes,Negative,No +USER-08123,39,Other,9.7,6.29,4.75,9.02,Good,Medium,8.91,1.71,No,Neutral,No +USER-08124,52,Male,6.2,7.64,2.62,9.46,Poor,High,6.08,6.88,Yes,Positive,Yes +USER-08125,63,Female,8.59,1.8,2.42,7.55,Poor,High,8.45,6.1,Yes,Negative,No +USER-08126,57,Male,10.34,3.41,3.45,2.89,Poor,High,5.32,6.33,Yes,Negative,Yes +USER-08127,33,Male,4.63,0.11,0.44,13.15,Excellent,Low,5.79,8.66,Yes,Negative,Yes +USER-08128,52,Male,6.76,3.18,3.52,10.91,Good,Low,5.73,8.66,No,Neutral,No +USER-08129,65,Female,10.27,5.46,0.34,7.66,Fair,Medium,7.91,7.17,Yes,Negative,Yes +USER-08130,54,Male,5.33,3.21,2.26,12.16,Poor,High,5.74,4.74,No,Negative,No +USER-08131,20,Male,3.89,5.32,1.68,14.56,Poor,Low,7.15,9.07,Yes,Negative,No +USER-08132,39,Male,3.58,0.3,2.15,12.85,Good,High,8.1,6.73,No,Negative,No +USER-08133,22,Male,4.78,6.49,3.2,10.38,Good,Low,7.59,9.72,No,Negative,Yes +USER-08134,35,Female,9.21,4.86,3.29,2.03,Excellent,High,7.68,7.0,Yes,Negative,No +USER-08135,25,Male,9.26,4.06,1.77,10.12,Poor,Low,7.92,5.87,No,Neutral,Yes +USER-08136,26,Male,7.15,7.18,4.8,3.62,Poor,Medium,7.0,3.08,No,Negative,Yes +USER-08137,22,Other,10.2,6.11,4.47,10.08,Excellent,Low,5.42,3.73,Yes,Negative,No +USER-08138,49,Male,6.86,4.02,3.34,1.92,Fair,High,8.56,0.35,Yes,Positive,Yes +USER-08139,45,Male,8.15,7.27,3.37,9.37,Poor,Medium,6.57,6.38,No,Negative,No +USER-08140,46,Male,7.88,1.33,3.0,12.93,Excellent,Medium,8.55,1.8,No,Negative,Yes +USER-08141,53,Female,3.84,7.17,1.55,4.79,Fair,High,7.72,8.27,No,Negative,Yes +USER-08142,25,Female,6.68,2.78,4.04,14.58,Fair,High,7.09,6.52,Yes,Neutral,Yes +USER-08143,59,Other,5.06,1.69,4.26,7.55,Excellent,Low,5.49,3.77,Yes,Positive,Yes +USER-08144,51,Other,10.26,2.96,3.74,7.18,Excellent,High,5.05,6.67,Yes,Negative,No +USER-08145,29,Male,9.83,6.67,3.14,13.28,Good,High,8.0,8.83,Yes,Neutral,Yes +USER-08146,51,Female,8.05,5.2,2.35,5.32,Excellent,Low,7.43,7.29,Yes,Negative,Yes +USER-08147,28,Female,4.59,7.68,1.34,5.85,Poor,Low,4.71,7.36,No,Positive,No +USER-08148,54,Female,4.97,6.55,2.19,9.38,Fair,Medium,7.17,1.43,No,Positive,Yes +USER-08149,51,Male,8.71,7.0,4.2,4.93,Excellent,Medium,7.63,0.22,No,Positive,No +USER-08150,53,Other,4.74,5.49,1.05,2.95,Good,Medium,7.3,3.63,Yes,Positive,Yes +USER-08151,39,Male,6.09,3.23,2.9,1.16,Fair,Low,6.91,3.06,No,Neutral,No +USER-08152,31,Male,7.69,7.99,4.24,9.06,Poor,Low,5.83,0.57,No,Negative,No +USER-08153,32,Female,10.78,2.14,2.28,13.32,Excellent,High,4.86,6.09,Yes,Negative,Yes +USER-08154,44,Female,2.16,6.32,0.83,6.83,Good,Low,4.82,2.6,Yes,Negative,Yes +USER-08155,29,Other,11.61,2.8,2.94,2.02,Excellent,Low,6.53,5.89,Yes,Negative,Yes +USER-08156,57,Male,1.33,2.39,3.01,5.12,Excellent,High,6.28,5.83,No,Positive,No +USER-08157,18,Other,5.98,0.24,1.61,7.15,Good,Medium,6.01,1.13,Yes,Negative,Yes +USER-08158,36,Female,3.86,3.43,4.24,12.68,Good,High,6.81,2.91,Yes,Negative,No +USER-08159,35,Male,1.55,6.37,3.21,11.67,Poor,High,5.33,5.54,No,Positive,Yes +USER-08160,61,Other,9.11,4.27,4.64,7.81,Fair,Medium,8.95,4.35,No,Positive,No +USER-08161,32,Other,11.09,3.98,3.48,5.99,Poor,Medium,5.34,6.74,No,Neutral,No +USER-08162,51,Female,1.01,3.66,2.4,12.58,Excellent,High,6.99,4.81,Yes,Negative,Yes +USER-08163,30,Other,4.4,3.4,1.18,10.83,Good,Low,4.36,5.75,Yes,Neutral,No +USER-08164,27,Other,4.88,3.65,1.05,2.66,Excellent,Low,8.06,5.86,No,Negative,Yes +USER-08165,63,Other,9.21,1.61,4.9,5.25,Fair,Medium,4.86,0.35,Yes,Neutral,Yes +USER-08166,31,Male,9.97,7.11,1.02,13.49,Excellent,Medium,4.58,2.55,No,Negative,No +USER-08167,55,Female,3.19,0.97,4.73,12.1,Fair,Medium,5.91,0.36,No,Positive,No +USER-08168,38,Male,11.82,6.48,4.49,5.78,Excellent,High,6.16,0.49,No,Positive,No +USER-08169,62,Female,8.42,2.76,2.68,10.42,Good,High,8.32,2.56,No,Negative,Yes +USER-08170,43,Other,10.93,1.49,0.17,7.16,Poor,High,6.06,3.96,Yes,Positive,Yes +USER-08171,30,Female,5.1,7.37,4.34,2.56,Poor,High,4.52,7.06,No,Negative,Yes +USER-08172,59,Other,1.2,2.67,0.11,11.23,Poor,Medium,5.21,7.0,Yes,Negative,No +USER-08173,59,Female,10.83,0.31,3.69,14.56,Poor,Medium,6.52,6.57,No,Neutral,No +USER-08174,44,Other,2.99,3.68,0.24,4.92,Poor,High,7.57,2.2,Yes,Neutral,Yes +USER-08175,46,Male,11.65,0.12,4.44,12.04,Poor,Medium,8.81,5.63,No,Neutral,Yes +USER-08176,31,Other,10.69,3.87,1.91,11.65,Poor,High,5.93,4.25,No,Neutral,No +USER-08177,44,Male,10.01,3.32,2.26,2.77,Excellent,Low,4.4,7.24,Yes,Negative,Yes +USER-08178,64,Other,8.43,3.68,0.77,4.51,Good,High,6.8,0.65,Yes,Negative,No +USER-08179,34,Male,4.24,2.0,4.49,11.11,Fair,High,5.85,3.41,Yes,Negative,Yes +USER-08180,33,Other,1.01,7.25,0.99,9.04,Good,Low,7.91,7.98,No,Negative,Yes +USER-08181,35,Male,9.09,0.25,0.69,2.83,Poor,Low,6.5,3.16,Yes,Negative,Yes +USER-08182,27,Female,1.09,1.93,1.03,6.91,Excellent,Medium,5.29,5.62,Yes,Positive,Yes +USER-08183,46,Female,5.91,3.96,0.25,13.4,Poor,Low,6.4,3.01,No,Positive,Yes +USER-08184,56,Female,7.55,4.06,1.5,12.23,Good,Low,4.62,0.92,Yes,Positive,No +USER-08185,54,Female,1.12,2.69,3.15,9.86,Good,Low,7.96,8.26,Yes,Positive,Yes +USER-08186,57,Male,8.55,2.58,1.12,5.55,Good,Medium,4.78,2.37,No,Neutral,Yes +USER-08187,58,Female,8.37,2.49,1.3,12.4,Fair,Medium,4.24,4.06,Yes,Neutral,Yes +USER-08188,55,Male,11.82,1.7,3.61,8.44,Good,High,6.98,1.32,No,Negative,Yes +USER-08189,31,Male,1.31,2.0,1.57,4.6,Excellent,Low,5.62,5.28,No,Neutral,Yes +USER-08190,56,Other,8.37,7.25,1.68,6.63,Good,Medium,7.41,2.52,No,Negative,No +USER-08191,60,Other,9.26,0.39,1.29,1.96,Poor,High,6.2,6.93,No,Neutral,No +USER-08192,51,Male,3.37,1.42,1.19,10.61,Fair,Low,5.54,7.32,Yes,Positive,No +USER-08193,60,Female,9.19,4.7,4.57,7.33,Fair,Medium,8.94,1.18,Yes,Negative,Yes +USER-08194,37,Other,1.21,0.35,2.11,9.9,Good,Medium,5.49,7.85,Yes,Positive,Yes +USER-08195,48,Other,3.74,4.03,1.75,7.83,Good,High,5.79,5.38,Yes,Neutral,Yes +USER-08196,23,Male,5.74,3.41,1.13,11.48,Excellent,High,6.04,5.23,Yes,Positive,No +USER-08197,49,Other,4.8,4.54,4.35,9.3,Fair,Medium,4.29,7.18,No,Neutral,No +USER-08198,37,Male,2.87,3.43,0.15,3.69,Fair,Low,5.92,5.85,No,Neutral,Yes +USER-08199,44,Male,3.24,3.69,2.77,2.06,Excellent,High,6.46,2.6,Yes,Positive,Yes +USER-08200,35,Female,2.81,6.89,0.44,9.29,Fair,Medium,6.67,7.62,No,Neutral,Yes +USER-08201,47,Male,8.81,2.33,4.05,4.15,Fair,Medium,6.94,1.08,Yes,Positive,Yes +USER-08202,34,Other,10.43,4.51,3.94,13.14,Fair,Medium,8.37,2.84,Yes,Neutral,No +USER-08203,34,Other,7.15,5.23,0.89,5.74,Fair,Medium,7.28,3.52,Yes,Positive,No +USER-08204,20,Other,11.4,7.44,3.53,4.38,Good,Medium,8.32,2.78,Yes,Positive,No +USER-08205,25,Female,9.74,5.07,0.49,4.26,Excellent,Medium,6.26,1.44,No,Positive,Yes +USER-08206,45,Female,3.31,3.5,1.44,6.67,Fair,Low,4.54,1.04,Yes,Positive,No +USER-08207,64,Other,10.2,1.81,0.29,14.95,Fair,Low,7.38,3.15,No,Positive,Yes +USER-08208,24,Female,7.99,2.67,0.54,1.81,Excellent,High,7.29,2.03,Yes,Negative,No +USER-08209,22,Female,5.23,5.83,2.69,7.52,Fair,Low,8.49,8.92,No,Neutral,No +USER-08210,38,Other,11.94,3.99,1.24,2.01,Good,Low,7.25,3.71,No,Neutral,Yes +USER-08211,57,Other,3.21,2.44,2.01,11.49,Fair,Low,4.11,9.0,Yes,Neutral,No +USER-08212,35,Male,10.98,6.07,2.44,3.63,Excellent,Medium,4.11,8.7,No,Neutral,No +USER-08213,50,Other,3.79,6.59,3.91,9.82,Fair,High,6.34,4.56,No,Positive,Yes +USER-08214,49,Other,3.02,6.53,3.79,13.93,Good,Medium,5.05,8.99,Yes,Positive,No +USER-08215,24,Other,10.25,5.05,4.76,6.2,Good,Medium,8.91,6.66,Yes,Positive,Yes +USER-08216,58,Other,2.95,5.16,0.49,10.04,Good,Low,5.23,0.63,No,Positive,Yes +USER-08217,27,Female,2.27,7.41,1.01,10.18,Excellent,High,7.8,7.77,No,Positive,Yes +USER-08218,62,Female,4.54,5.6,2.79,14.81,Fair,Low,5.56,8.0,No,Positive,Yes +USER-08219,52,Male,1.22,0.59,1.51,11.39,Poor,Medium,5.98,8.2,No,Neutral,No +USER-08220,31,Male,6.91,6.67,3.05,3.58,Fair,Medium,6.7,8.66,No,Negative,Yes +USER-08221,52,Male,1.84,5.46,3.79,9.74,Poor,Low,4.2,9.74,No,Negative,Yes +USER-08222,29,Other,9.75,2.17,0.52,5.68,Good,Low,4.36,1.58,Yes,Positive,No +USER-08223,51,Male,6.99,1.83,0.42,14.68,Good,High,4.97,7.46,Yes,Neutral,Yes +USER-08224,61,Female,10.19,4.07,4.84,2.27,Poor,Low,7.28,4.92,No,Positive,Yes +USER-08225,32,Other,2.98,4.94,3.39,6.83,Poor,Low,6.84,2.9,No,Negative,Yes +USER-08226,41,Female,1.86,2.8,1.76,14.31,Excellent,High,4.06,4.38,Yes,Negative,Yes +USER-08227,26,Male,11.16,2.87,4.34,14.22,Poor,High,7.38,0.45,No,Neutral,Yes +USER-08228,61,Male,9.22,4.48,4.25,14.58,Excellent,High,5.46,0.61,No,Neutral,Yes +USER-08229,25,Other,5.28,2.55,1.59,6.86,Poor,Low,4.87,9.15,Yes,Positive,No +USER-08230,54,Female,10.08,7.21,2.26,12.87,Poor,Low,7.88,4.37,No,Neutral,No +USER-08231,43,Female,8.01,5.02,3.63,3.39,Poor,Medium,8.19,2.6,No,Negative,Yes +USER-08232,46,Female,5.31,7.98,3.39,11.78,Poor,Low,8.68,8.15,No,Neutral,Yes +USER-08233,23,Other,3.12,2.12,3.24,13.67,Fair,Medium,8.95,8.14,No,Negative,No +USER-08234,26,Other,10.79,4.65,0.78,1.6,Fair,Medium,6.9,6.89,Yes,Negative,Yes +USER-08235,54,Male,11.1,2.67,1.72,13.49,Excellent,Medium,5.24,9.75,Yes,Positive,Yes +USER-08236,24,Male,8.52,1.58,1.03,7.72,Good,High,8.78,7.75,No,Positive,No +USER-08237,28,Female,7.99,7.22,0.23,11.02,Fair,High,6.81,2.97,Yes,Positive,No +USER-08238,29,Male,8.63,5.89,0.55,3.62,Poor,Medium,8.55,2.36,Yes,Positive,No +USER-08239,19,Other,3.93,3.27,2.46,13.56,Good,High,5.75,5.01,No,Negative,No +USER-08240,18,Other,6.08,7.54,4.91,3.26,Good,Low,4.59,1.57,No,Negative,Yes +USER-08241,63,Other,7.87,1.99,3.23,7.73,Fair,Medium,5.62,8.45,Yes,Negative,Yes +USER-08242,40,Male,3.58,1.8,4.39,7.87,Good,Medium,5.37,6.6,No,Negative,No +USER-08243,60,Female,9.16,1.5,0.7,11.39,Fair,Low,4.71,1.72,Yes,Neutral,No +USER-08244,43,Female,5.52,0.1,4.29,9.27,Fair,Medium,4.3,1.16,Yes,Neutral,Yes +USER-08245,23,Female,5.78,1.16,0.51,12.07,Poor,Low,8.88,3.88,Yes,Neutral,No +USER-08246,60,Other,3.74,0.02,4.28,7.66,Fair,Low,6.48,2.08,No,Negative,Yes +USER-08247,20,Female,8.88,7.35,1.09,10.24,Poor,Medium,6.75,0.22,No,Positive,Yes +USER-08248,53,Male,5.41,6.53,2.39,8.04,Fair,High,6.76,3.19,Yes,Positive,Yes +USER-08249,36,Male,3.98,2.87,4.64,3.3,Poor,High,5.35,3.28,No,Neutral,Yes +USER-08250,38,Other,2.3,0.31,4.62,4.69,Fair,Low,8.87,9.82,No,Negative,Yes +USER-08251,42,Other,9.61,4.34,0.06,12.51,Poor,Medium,6.62,2.85,Yes,Neutral,No +USER-08252,46,Male,2.97,7.77,1.99,11.89,Good,High,8.71,2.13,Yes,Neutral,Yes +USER-08253,62,Other,7.59,4.97,3.95,11.95,Excellent,High,6.11,2.98,Yes,Positive,Yes +USER-08254,49,Female,7.24,1.15,0.11,4.14,Good,High,5.41,3.47,Yes,Neutral,No +USER-08255,32,Female,3.1,0.31,4.42,4.04,Fair,Low,6.71,6.75,No,Positive,No +USER-08256,22,Male,8.96,0.37,4.02,11.34,Poor,High,6.89,3.35,No,Negative,Yes +USER-08257,61,Male,7.08,4.96,1.8,13.12,Poor,Medium,7.48,2.04,Yes,Positive,Yes +USER-08258,33,Female,4.06,4.15,2.26,12.88,Excellent,Low,5.24,7.11,Yes,Negative,Yes +USER-08259,23,Other,2.73,4.98,4.68,5.05,Fair,Medium,7.5,7.38,Yes,Neutral,Yes +USER-08260,55,Other,8.75,6.24,2.91,6.05,Good,High,8.93,0.22,No,Negative,No +USER-08261,43,Male,2.74,6.49,0.68,2.37,Good,Medium,5.9,7.02,Yes,Neutral,No +USER-08262,38,Male,10.97,6.52,3.05,12.29,Fair,Medium,7.92,8.82,No,Negative,Yes +USER-08263,37,Female,8.53,3.76,3.11,8.91,Excellent,Low,8.1,6.78,No,Positive,Yes +USER-08264,65,Male,3.12,5.43,2.34,8.12,Poor,Medium,4.63,3.9,No,Neutral,Yes +USER-08265,53,Other,10.8,1.5,3.41,3.3,Excellent,Low,6.19,5.46,Yes,Negative,No +USER-08266,58,Other,3.14,2.36,2.5,11.73,Excellent,High,6.26,3.05,Yes,Neutral,No +USER-08267,56,Other,5.27,4.18,2.11,13.61,Poor,Low,8.42,5.76,Yes,Positive,Yes +USER-08268,55,Female,11.18,1.89,4.02,13.61,Excellent,Medium,5.3,5.92,Yes,Neutral,No +USER-08269,54,Female,7.65,6.89,2.43,2.79,Good,Low,7.88,9.88,Yes,Neutral,Yes +USER-08270,34,Other,7.15,7.4,3.25,10.47,Good,Medium,5.56,0.05,No,Positive,Yes +USER-08271,42,Other,2.14,4.7,4.94,8.84,Poor,Low,7.55,4.19,No,Positive,Yes +USER-08272,39,Female,10.84,6.0,4.61,13.07,Poor,Medium,6.97,8.32,Yes,Neutral,Yes +USER-08273,42,Female,5.36,1.07,4.79,1.47,Good,Low,6.61,0.47,Yes,Neutral,No +USER-08274,56,Male,3.97,0.79,1.7,8.44,Excellent,High,4.53,2.31,No,Negative,No +USER-08275,40,Female,7.49,2.74,0.77,13.27,Poor,Medium,5.45,3.49,No,Negative,Yes +USER-08276,40,Female,6.33,2.65,2.77,13.71,Good,High,7.61,9.9,Yes,Negative,No +USER-08277,55,Female,1.18,1.24,2.73,1.01,Poor,Medium,4.14,2.89,No,Negative,Yes +USER-08278,25,Female,11.49,2.67,1.81,1.02,Fair,High,6.58,8.72,No,Positive,Yes +USER-08279,51,Female,11.18,4.0,4.47,5.57,Excellent,High,7.13,0.91,Yes,Positive,Yes +USER-08280,62,Female,4.16,5.64,0.76,8.18,Excellent,Medium,6.8,6.27,Yes,Negative,No +USER-08281,38,Other,6.8,7.09,1.47,14.9,Fair,Medium,7.74,2.58,No,Negative,Yes +USER-08282,55,Female,11.51,3.28,4.68,6.17,Poor,Low,8.34,7.63,No,Positive,Yes +USER-08283,61,Female,7.86,1.88,2.22,8.01,Excellent,Low,6.08,3.55,No,Negative,Yes +USER-08284,32,Other,6.08,1.45,4.12,7.28,Good,High,7.79,5.97,Yes,Positive,No +USER-08285,63,Other,5.42,2.08,4.97,2.28,Good,High,7.23,3.43,Yes,Positive,Yes +USER-08286,49,Male,6.34,1.29,4.8,4.74,Good,Low,5.65,0.25,Yes,Positive,No +USER-08287,37,Female,1.3,5.36,1.98,13.23,Poor,High,5.08,5.14,No,Neutral,Yes +USER-08288,42,Female,5.02,1.39,1.79,4.47,Good,Low,7.37,3.81,Yes,Neutral,Yes +USER-08289,23,Female,5.23,7.86,0.45,2.88,Excellent,Low,7.09,2.79,Yes,Neutral,Yes +USER-08290,50,Male,7.04,1.1,4.97,14.42,Good,Low,4.53,5.76,Yes,Negative,No +USER-08291,36,Male,9.73,6.99,3.46,11.78,Good,Medium,4.71,2.05,Yes,Negative,Yes +USER-08292,37,Female,7.56,3.5,3.23,11.27,Fair,Low,6.78,3.96,Yes,Neutral,No +USER-08293,58,Female,11.17,2.74,2.72,11.68,Poor,Medium,4.71,1.82,Yes,Neutral,Yes +USER-08294,55,Male,11.12,4.62,3.57,5.78,Excellent,High,5.75,0.26,No,Neutral,Yes +USER-08295,35,Other,10.99,3.74,2.52,7.34,Poor,Medium,7.11,0.34,Yes,Positive,No +USER-08296,51,Other,9.53,1.87,0.67,5.72,Poor,High,6.41,8.22,No,Neutral,Yes +USER-08297,63,Male,9.04,2.01,4.2,4.25,Fair,Low,4.61,4.67,Yes,Neutral,Yes +USER-08298,42,Other,9.69,2.43,0.38,5.72,Excellent,High,6.26,4.48,No,Neutral,No +USER-08299,41,Female,4.68,5.75,1.05,4.5,Good,High,8.4,4.32,No,Negative,Yes +USER-08300,46,Female,9.97,2.78,1.66,5.54,Excellent,High,7.64,9.06,No,Neutral,No +USER-08301,52,Female,6.43,0.89,1.6,4.53,Excellent,Low,8.02,4.88,Yes,Negative,Yes +USER-08302,41,Other,3.15,5.34,3.89,12.67,Fair,High,4.04,7.38,No,Positive,Yes +USER-08303,57,Other,4.44,3.68,4.93,5.9,Fair,High,6.24,5.82,No,Positive,Yes +USER-08304,25,Male,10.69,7.24,3.47,12.07,Good,High,5.35,1.18,No,Negative,Yes +USER-08305,55,Female,11.23,1.96,4.44,1.97,Excellent,High,6.66,5.28,No,Negative,No +USER-08306,38,Other,3.45,6.0,1.26,14.13,Poor,Low,8.95,7.67,No,Negative,Yes +USER-08307,32,Male,4.76,3.86,2.1,5.09,Excellent,Low,8.15,7.54,No,Positive,Yes +USER-08308,30,Male,1.4,7.63,4.09,13.58,Fair,Low,5.03,10.0,No,Negative,No +USER-08309,37,Other,4.42,1.91,0.2,3.39,Poor,High,8.35,1.79,Yes,Negative,Yes +USER-08310,41,Female,10.57,1.26,3.09,6.72,Excellent,High,8.05,2.91,No,Positive,Yes +USER-08311,19,Male,2.76,1.52,1.98,13.78,Good,Low,6.73,6.62,Yes,Negative,No +USER-08312,26,Other,9.18,5.05,3.86,8.59,Good,Low,6.09,8.08,No,Negative,Yes +USER-08313,44,Other,5.96,4.13,2.06,3.89,Poor,Medium,5.51,9.87,Yes,Neutral,Yes +USER-08314,57,Female,5.03,4.02,1.28,2.62,Fair,Medium,6.26,0.34,No,Negative,No +USER-08315,40,Male,8.7,6.1,0.18,11.91,Good,High,4.03,1.48,No,Neutral,No +USER-08316,40,Male,11.39,2.0,4.94,10.2,Good,High,7.66,1.25,No,Positive,No +USER-08317,64,Female,2.84,5.17,3.43,11.95,Good,Medium,4.12,3.63,No,Positive,No +USER-08318,26,Other,3.06,5.24,4.56,9.51,Poor,High,6.16,9.14,No,Positive,Yes +USER-08319,63,Other,1.36,6.8,1.12,1.76,Good,Low,7.98,2.6,No,Negative,No +USER-08320,64,Male,9.3,0.05,1.3,1.52,Poor,High,6.39,7.52,No,Negative,No +USER-08321,58,Female,2.73,5.72,4.8,8.76,Poor,Medium,4.28,6.9,No,Negative,No +USER-08322,32,Other,1.99,1.56,4.64,10.86,Fair,High,4.74,1.78,Yes,Positive,No +USER-08323,34,Male,10.27,1.03,2.41,8.21,Good,High,6.67,8.27,No,Negative,Yes +USER-08324,35,Other,4.06,4.38,0.29,8.05,Excellent,Low,7.99,0.14,Yes,Negative,Yes +USER-08325,21,Female,10.03,0.25,2.12,13.61,Excellent,High,6.67,5.63,Yes,Positive,Yes +USER-08326,21,Male,10.39,4.71,4.55,12.93,Excellent,Medium,7.79,1.37,No,Negative,Yes +USER-08327,53,Other,11.46,3.98,3.9,9.38,Excellent,High,7.5,0.89,Yes,Neutral,No +USER-08328,52,Female,10.28,2.1,3.81,11.83,Poor,Medium,4.59,0.4,No,Positive,Yes +USER-08329,36,Male,3.84,7.89,1.87,13.45,Good,Medium,4.36,6.83,No,Positive,Yes +USER-08330,18,Male,10.93,2.52,4.07,4.62,Good,Low,4.23,0.53,No,Neutral,No +USER-08331,49,Male,9.62,2.59,0.01,14.98,Good,Low,8.03,5.41,No,Neutral,No +USER-08332,29,Male,6.19,4.34,1.84,1.75,Poor,Low,8.98,2.06,Yes,Negative,Yes +USER-08333,60,Other,5.38,3.13,3.14,2.87,Excellent,Medium,8.26,1.35,Yes,Positive,No +USER-08334,41,Other,5.96,4.55,1.55,14.96,Good,Medium,6.72,5.91,Yes,Neutral,No +USER-08335,32,Male,1.86,4.12,2.14,12.89,Poor,High,8.75,9.57,No,Positive,No +USER-08336,57,Other,11.54,7.47,2.46,6.63,Good,Medium,8.42,4.05,No,Positive,No +USER-08337,27,Other,8.05,0.21,0.47,12.56,Excellent,Low,8.62,7.11,Yes,Positive,No +USER-08338,51,Female,8.14,1.95,1.75,11.02,Excellent,High,8.41,2.82,Yes,Negative,No +USER-08339,48,Female,6.83,5.26,2.86,9.03,Poor,Low,7.02,2.95,Yes,Neutral,No +USER-08340,37,Female,1.53,5.59,0.08,2.15,Fair,Low,5.01,6.35,No,Negative,No +USER-08341,29,Female,2.4,1.96,4.05,6.33,Poor,Low,7.57,1.09,No,Negative,Yes +USER-08342,32,Female,6.44,2.67,1.27,10.09,Poor,Low,6.8,1.77,Yes,Positive,Yes +USER-08343,41,Male,11.35,1.41,2.44,12.74,Excellent,Medium,5.22,5.44,Yes,Neutral,Yes +USER-08344,49,Other,10.04,1.11,3.71,1.57,Poor,Low,7.88,8.41,Yes,Neutral,No +USER-08345,53,Other,10.73,7.58,2.65,13.06,Good,High,9.0,6.74,Yes,Neutral,Yes +USER-08346,20,Male,5.92,3.1,4.99,6.37,Good,Medium,6.54,3.82,No,Neutral,No +USER-08347,39,Female,11.15,5.71,4.31,5.22,Good,Medium,8.19,9.65,Yes,Positive,No +USER-08348,53,Female,7.0,7.3,4.01,13.77,Good,High,6.99,9.44,No,Positive,Yes +USER-08349,62,Male,2.48,2.68,1.02,5.73,Good,High,4.53,4.52,No,Neutral,Yes +USER-08350,57,Female,3.72,1.77,3.64,3.07,Excellent,Low,7.74,3.68,Yes,Positive,No +USER-08351,48,Female,10.86,7.19,4.3,8.89,Excellent,Medium,6.27,0.32,No,Negative,No +USER-08352,31,Male,10.7,5.98,0.32,1.38,Poor,High,5.29,5.21,No,Positive,No +USER-08353,61,Female,2.97,5.19,2.99,6.74,Fair,Low,7.24,1.5,Yes,Negative,No +USER-08354,60,Other,1.46,0.86,0.65,12.94,Poor,Medium,7.04,9.6,No,Neutral,Yes +USER-08355,28,Other,4.89,4.13,1.86,1.58,Excellent,Medium,5.57,4.42,No,Negative,No +USER-08356,54,Male,10.95,7.2,0.32,14.66,Excellent,Low,8.94,5.24,Yes,Positive,No +USER-08357,55,Male,3.81,7.52,4.22,2.45,Poor,High,5.4,8.5,Yes,Neutral,No +USER-08358,48,Male,1.6,5.37,2.83,9.61,Poor,High,7.72,5.47,No,Neutral,Yes +USER-08359,42,Female,1.3,2.6,2.66,3.57,Poor,High,7.36,2.61,Yes,Positive,No +USER-08360,22,Other,11.52,0.52,0.46,2.22,Good,High,8.98,0.94,Yes,Neutral,Yes +USER-08361,22,Female,6.41,3.43,3.55,11.16,Good,Low,5.64,2.09,Yes,Neutral,No +USER-08362,39,Female,8.21,3.61,2.14,1.1,Good,Medium,7.9,6.11,No,Neutral,Yes +USER-08363,52,Female,5.44,7.38,4.82,1.91,Poor,Low,8.51,0.76,Yes,Neutral,No +USER-08364,56,Female,8.94,5.47,0.18,14.2,Fair,Low,4.56,8.81,No,Neutral,No +USER-08365,52,Female,3.44,3.22,2.68,5.52,Poor,Medium,8.26,5.71,No,Positive,No +USER-08366,44,Female,10.72,2.6,0.95,5.13,Poor,Low,7.48,3.61,Yes,Negative,Yes +USER-08367,18,Other,1.85,2.56,3.09,9.88,Excellent,Medium,6.69,3.22,No,Neutral,Yes +USER-08368,20,Other,4.45,0.85,1.32,2.26,Poor,High,7.89,8.62,No,Neutral,No +USER-08369,24,Male,4.29,2.56,1.22,11.15,Excellent,Medium,6.88,8.83,Yes,Positive,No +USER-08370,26,Male,8.84,2.96,0.04,3.07,Good,Medium,5.14,9.47,No,Neutral,No +USER-08371,39,Female,3.82,4.6,4.41,14.19,Excellent,High,6.46,4.2,Yes,Neutral,No +USER-08372,37,Male,1.71,5.22,2.51,12.63,Poor,High,7.3,3.63,No,Positive,No +USER-08373,30,Other,3.5,0.82,0.22,8.77,Excellent,Medium,6.55,5.23,No,Neutral,Yes +USER-08374,23,Male,2.8,3.46,2.38,11.19,Fair,High,7.16,7.54,Yes,Negative,Yes +USER-08375,36,Other,10.79,3.77,2.03,4.2,Fair,Low,5.97,6.52,Yes,Neutral,Yes +USER-08376,34,Other,8.31,4.74,1.33,4.43,Fair,High,5.99,1.28,Yes,Neutral,No +USER-08377,18,Female,3.12,0.1,0.54,13.52,Poor,Medium,8.15,1.14,Yes,Negative,Yes +USER-08378,33,Female,3.84,5.51,4.68,8.44,Good,Medium,8.01,1.67,Yes,Positive,Yes +USER-08379,63,Other,1.44,5.24,0.33,3.87,Fair,High,7.24,0.3,Yes,Neutral,Yes +USER-08380,61,Male,5.79,3.51,4.38,7.81,Poor,Low,5.66,6.36,No,Negative,Yes +USER-08381,31,Female,2.46,3.17,1.71,14.51,Excellent,Low,7.19,3.82,No,Negative,No +USER-08382,30,Female,1.88,1.51,2.01,10.88,Excellent,Medium,4.13,0.55,No,Negative,No +USER-08383,55,Female,10.46,5.05,2.04,10.77,Good,Low,4.47,2.47,Yes,Neutral,Yes +USER-08384,31,Other,5.2,0.18,3.0,10.94,Poor,Medium,5.51,5.69,Yes,Positive,No +USER-08385,46,Male,8.21,4.25,1.54,14.78,Good,Medium,7.89,7.42,No,Negative,No +USER-08386,53,Female,7.63,2.93,0.98,1.42,Fair,Low,7.84,7.76,No,Negative,Yes +USER-08387,59,Female,5.3,7.51,3.98,7.67,Excellent,High,5.28,8.42,No,Neutral,Yes +USER-08388,59,Other,4.96,4.97,4.24,7.16,Fair,High,4.03,9.35,No,Negative,No +USER-08389,18,Other,2.38,2.45,0.65,10.38,Fair,Low,6.07,0.68,No,Neutral,Yes +USER-08390,24,Other,9.96,6.64,2.92,8.42,Good,Medium,5.51,8.43,No,Neutral,Yes +USER-08391,34,Female,6.0,1.33,3.0,13.79,Excellent,High,7.02,5.38,Yes,Neutral,No +USER-08392,54,Female,11.2,1.73,3.57,10.71,Poor,High,4.02,3.32,No,Negative,Yes +USER-08393,23,Male,11.72,2.38,0.57,9.53,Fair,Medium,5.34,2.79,Yes,Neutral,Yes +USER-08394,27,Female,1.24,2.42,2.92,6.21,Fair,High,8.64,2.98,Yes,Positive,Yes +USER-08395,43,Male,11.02,4.03,3.49,9.7,Excellent,High,4.65,7.02,No,Positive,Yes +USER-08396,26,Other,8.8,3.25,2.01,7.75,Fair,Medium,6.79,2.81,Yes,Positive,Yes +USER-08397,63,Male,8.03,6.9,0.84,5.47,Fair,Low,8.18,2.79,No,Negative,No +USER-08398,36,Other,10.26,0.28,4.59,4.47,Good,Medium,6.92,2.97,No,Negative,Yes +USER-08399,22,Other,11.91,7.59,1.78,7.19,Good,Low,4.16,8.18,No,Neutral,Yes +USER-08400,43,Male,2.95,1.77,3.86,10.78,Fair,Medium,6.03,0.02,Yes,Positive,Yes +USER-08401,21,Female,11.15,5.67,3.95,11.28,Fair,Low,7.62,2.71,No,Neutral,Yes +USER-08402,50,Female,6.22,5.98,0.78,2.59,Excellent,High,7.57,0.78,No,Neutral,No +USER-08403,37,Female,3.63,4.73,3.06,1.53,Poor,Medium,4.93,9.58,No,Negative,Yes +USER-08404,32,Male,4.7,6.55,1.79,5.21,Good,Medium,4.86,9.88,No,Neutral,No +USER-08405,60,Female,9.41,4.56,0.18,11.12,Excellent,Low,6.22,2.24,No,Negative,Yes +USER-08406,21,Male,2.79,7.66,3.01,10.35,Poor,Low,4.43,4.12,No,Neutral,Yes +USER-08407,22,Other,3.99,1.96,4.22,8.76,Excellent,Medium,5.51,9.5,No,Positive,No +USER-08408,35,Male,1.88,0.65,0.25,2.86,Poor,Medium,8.27,4.39,Yes,Negative,Yes +USER-08409,43,Other,6.95,4.54,4.1,4.66,Good,Low,8.29,0.68,No,Negative,Yes +USER-08410,29,Female,4.46,1.87,1.08,2.55,Poor,Low,6.53,2.52,No,Neutral,Yes +USER-08411,57,Other,1.69,0.57,3.22,10.27,Fair,Medium,4.96,6.95,No,Negative,Yes +USER-08412,31,Male,5.13,0.13,4.97,1.31,Good,Low,6.21,0.3,No,Negative,Yes +USER-08413,45,Male,11.93,5.46,0.82,11.91,Excellent,Medium,5.46,2.06,No,Negative,Yes +USER-08414,24,Female,4.39,4.25,0.38,14.74,Fair,Medium,4.74,0.76,No,Positive,No +USER-08415,30,Other,2.0,2.11,0.68,11.63,Fair,Low,8.26,7.31,Yes,Neutral,Yes +USER-08416,53,Female,6.46,2.41,3.64,2.85,Excellent,High,7.14,2.77,Yes,Negative,No +USER-08417,53,Male,6.32,0.06,0.9,7.23,Good,Medium,6.3,6.75,No,Negative,Yes +USER-08418,48,Female,2.88,5.71,2.52,1.5,Fair,Medium,8.36,2.74,No,Negative,No +USER-08419,20,Male,7.02,6.83,4.94,12.33,Fair,Low,8.48,5.96,Yes,Neutral,Yes +USER-08420,29,Other,5.54,6.11,2.21,5.3,Excellent,Low,6.39,4.31,No,Positive,No +USER-08421,18,Female,9.89,3.83,3.04,13.71,Fair,Low,6.45,4.75,Yes,Negative,Yes +USER-08422,20,Male,5.44,7.79,0.02,2.18,Excellent,Medium,6.55,9.82,Yes,Positive,Yes +USER-08423,51,Female,6.58,3.6,0.29,13.24,Good,Low,5.56,2.62,Yes,Positive,Yes +USER-08424,59,Other,3.17,1.76,4.89,7.5,Good,Medium,7.9,8.29,Yes,Neutral,Yes +USER-08425,30,Female,10.0,3.82,1.94,7.01,Good,Low,6.4,3.39,No,Negative,No +USER-08426,18,Other,4.22,2.55,4.74,3.45,Fair,Medium,7.55,6.41,Yes,Negative,No +USER-08427,28,Male,5.04,1.9,4.49,3.34,Poor,Low,7.38,0.56,No,Neutral,No +USER-08428,57,Male,11.63,6.45,2.57,6.03,Good,Medium,6.49,2.22,No,Neutral,Yes +USER-08429,57,Other,1.92,1.03,2.66,3.24,Fair,Low,4.69,7.27,Yes,Neutral,Yes +USER-08430,52,Other,11.51,3.82,0.8,2.72,Excellent,High,6.14,3.74,Yes,Positive,No +USER-08431,34,Female,7.35,4.82,0.46,8.07,Good,High,7.23,2.17,No,Neutral,No +USER-08432,61,Other,2.17,6.04,2.65,4.47,Excellent,Medium,5.8,4.35,No,Negative,No +USER-08433,52,Male,4.61,5.2,1.1,10.87,Excellent,High,4.23,4.32,Yes,Positive,No +USER-08434,45,Male,7.8,4.95,3.04,4.26,Good,Medium,8.79,8.7,No,Neutral,No +USER-08435,28,Male,7.01,2.91,3.85,6.79,Good,Medium,5.53,3.24,No,Neutral,No +USER-08436,25,Other,5.88,1.71,4.81,2.03,Fair,Low,5.89,8.05,Yes,Neutral,Yes +USER-08437,56,Female,6.88,7.73,3.17,2.99,Excellent,Medium,4.22,6.52,Yes,Negative,No +USER-08438,44,Male,8.54,3.84,4.2,8.19,Excellent,Medium,8.62,3.1,No,Negative,No +USER-08439,59,Other,2.04,5.16,0.59,12.67,Good,Low,5.64,9.12,No,Neutral,Yes +USER-08440,61,Other,1.88,1.2,3.91,1.85,Good,Low,6.76,1.74,No,Neutral,Yes +USER-08441,28,Female,4.24,5.0,0.52,13.43,Good,Low,4.62,7.85,No,Positive,No +USER-08442,25,Other,5.5,3.95,1.71,3.21,Fair,Medium,7.2,1.87,No,Negative,Yes +USER-08443,37,Female,2.47,7.79,0.61,13.99,Excellent,Medium,5.09,7.09,No,Negative,Yes +USER-08444,31,Male,11.05,7.08,3.96,4.88,Poor,Medium,4.05,8.9,No,Neutral,Yes +USER-08445,38,Other,8.95,6.81,3.4,14.49,Good,Low,4.6,4.14,No,Neutral,No +USER-08446,18,Female,1.04,5.85,4.88,9.56,Good,Low,7.39,4.25,No,Neutral,Yes +USER-08447,36,Male,9.11,5.11,0.18,5.94,Poor,Medium,6.15,9.1,Yes,Negative,Yes +USER-08448,61,Other,7.74,5.26,3.17,8.46,Fair,Low,5.19,7.48,Yes,Positive,No +USER-08449,39,Male,4.59,5.45,1.3,3.06,Fair,Low,8.61,0.04,Yes,Negative,Yes +USER-08450,35,Female,1.2,6.12,0.61,12.48,Good,High,6.43,5.24,Yes,Neutral,Yes +USER-08451,54,Female,11.62,0.96,3.29,11.47,Good,High,7.99,2.95,No,Neutral,No +USER-08452,56,Other,10.82,1.74,3.93,5.04,Excellent,Low,6.89,9.98,Yes,Positive,No +USER-08453,47,Female,10.39,6.38,2.58,4.34,Good,Medium,8.34,3.55,Yes,Neutral,No +USER-08454,63,Other,3.65,5.43,2.73,4.15,Fair,Medium,6.23,9.97,Yes,Negative,Yes +USER-08455,29,Other,4.05,1.9,0.03,4.24,Excellent,Medium,6.36,4.56,Yes,Negative,Yes +USER-08456,36,Male,3.6,0.45,0.56,3.21,Fair,Low,5.02,9.11,Yes,Positive,Yes +USER-08457,23,Female,4.17,3.73,0.34,11.75,Poor,Low,8.48,9.41,No,Positive,Yes +USER-08458,42,Female,1.36,7.23,1.84,12.08,Fair,Medium,6.78,2.69,Yes,Negative,Yes +USER-08459,32,Other,2.42,1.45,0.4,2.74,Good,Low,5.09,9.9,Yes,Negative,No +USER-08460,46,Male,3.53,5.92,4.48,9.56,Fair,Medium,5.58,4.25,Yes,Positive,Yes +USER-08461,39,Other,2.71,5.89,3.38,4.25,Poor,High,7.34,9.13,No,Negative,No +USER-08462,34,Female,2.26,3.23,4.11,12.99,Excellent,Medium,5.3,5.35,No,Positive,Yes +USER-08463,45,Other,2.67,4.6,3.48,11.57,Fair,High,4.82,9.25,Yes,Negative,No +USER-08464,60,Other,2.93,6.79,3.56,2.22,Good,Medium,5.48,0.46,Yes,Positive,No +USER-08465,27,Female,11.32,2.84,0.92,14.47,Poor,High,8.0,0.93,No,Negative,No +USER-08466,29,Female,6.43,4.97,4.75,7.75,Good,Medium,7.83,5.28,Yes,Positive,No +USER-08467,48,Female,5.6,0.26,4.96,5.46,Fair,High,7.79,0.46,No,Positive,Yes +USER-08468,65,Male,9.85,2.3,4.22,2.23,Excellent,High,4.47,4.92,Yes,Positive,Yes +USER-08469,39,Female,6.71,7.99,2.73,8.73,Fair,Low,6.43,2.88,Yes,Positive,Yes +USER-08470,65,Male,6.48,2.41,4.16,6.04,Fair,High,5.87,1.01,Yes,Neutral,No +USER-08471,49,Other,5.49,1.85,4.72,11.99,Poor,Low,4.68,1.2,Yes,Negative,Yes +USER-08472,34,Female,10.95,4.78,4.1,1.52,Excellent,Low,6.85,2.87,Yes,Negative,Yes +USER-08473,27,Other,10.32,1.46,3.9,2.36,Fair,Low,7.51,9.8,Yes,Negative,No +USER-08474,30,Other,11.94,7.45,0.14,9.1,Good,High,8.16,8.41,Yes,Neutral,Yes +USER-08475,61,Other,5.56,4.79,1.39,2.24,Fair,High,7.62,9.16,Yes,Positive,Yes +USER-08476,18,Other,3.61,2.56,1.43,1.91,Good,Medium,5.11,1.57,No,Negative,No +USER-08477,60,Other,8.65,7.8,2.03,3.66,Fair,High,4.79,8.4,Yes,Negative,Yes +USER-08478,32,Male,5.85,5.93,1.32,7.82,Excellent,High,6.65,2.36,No,Negative,Yes +USER-08479,51,Male,3.71,7.08,0.23,6.6,Poor,High,7.72,8.01,Yes,Positive,No +USER-08480,22,Female,8.33,1.7,4.65,13.68,Good,Medium,6.73,5.76,Yes,Negative,Yes +USER-08481,38,Female,3.16,6.8,0.74,11.2,Poor,High,4.16,4.14,No,Positive,Yes +USER-08482,52,Female,5.54,1.18,2.64,6.11,Poor,High,8.85,2.85,Yes,Negative,No +USER-08483,27,Male,5.2,6.32,0.76,3.8,Excellent,Low,4.29,0.0,No,Neutral,Yes +USER-08484,43,Other,10.86,7.32,4.77,13.68,Fair,Low,6.52,4.13,No,Positive,No +USER-08485,18,Other,3.02,5.67,0.59,12.89,Excellent,High,5.37,8.52,No,Positive,No +USER-08486,45,Other,2.51,1.12,0.64,14.54,Excellent,Low,5.28,3.77,Yes,Neutral,Yes +USER-08487,35,Female,10.13,4.91,1.79,7.66,Fair,Medium,7.05,8.91,Yes,Neutral,No +USER-08488,58,Female,10.97,4.59,2.0,10.47,Poor,High,8.04,9.81,No,Neutral,Yes +USER-08489,20,Male,3.17,4.69,2.83,5.82,Poor,Low,5.49,6.89,No,Negative,Yes +USER-08490,20,Other,3.45,1.1,0.73,7.14,Good,Low,6.81,9.21,No,Positive,Yes +USER-08491,34,Male,10.23,7.62,1.92,11.25,Good,Medium,8.84,4.36,No,Neutral,No +USER-08492,35,Male,10.9,5.02,3.57,11.53,Excellent,Low,8.08,2.28,No,Negative,No +USER-08493,52,Female,10.25,4.22,4.59,4.74,Poor,Low,7.08,9.9,Yes,Positive,Yes +USER-08494,25,Other,7.8,1.44,1.2,11.38,Good,Medium,5.58,3.94,Yes,Neutral,No +USER-08495,49,Other,5.79,5.69,1.52,11.77,Fair,High,7.05,4.2,No,Negative,No +USER-08496,58,Other,1.9,2.18,3.3,1.41,Poor,Low,5.58,8.91,No,Positive,Yes +USER-08497,56,Male,7.38,3.41,4.36,7.22,Fair,High,4.95,7.11,No,Positive,No +USER-08498,33,Female,8.23,1.73,1.81,13.44,Good,Medium,8.19,5.98,Yes,Negative,Yes +USER-08499,48,Other,4.93,3.62,3.31,7.38,Good,Medium,6.73,6.45,Yes,Negative,No +USER-08500,56,Female,2.72,0.11,2.36,11.76,Excellent,Low,8.19,6.66,Yes,Neutral,No +USER-08501,29,Male,9.39,5.1,4.64,14.76,Excellent,Medium,7.24,4.32,No,Negative,No +USER-08502,29,Female,1.82,1.15,0.93,1.94,Fair,Medium,7.09,1.7,No,Positive,Yes +USER-08503,41,Other,2.22,7.96,3.85,9.61,Fair,High,4.86,4.67,Yes,Negative,Yes +USER-08504,21,Male,11.37,0.71,3.31,14.67,Excellent,Low,7.57,3.01,No,Neutral,No +USER-08505,65,Male,6.17,2.94,4.54,3.65,Excellent,Low,8.96,1.43,Yes,Neutral,Yes +USER-08506,49,Other,2.24,4.09,1.58,12.34,Fair,High,5.42,4.56,Yes,Negative,Yes +USER-08507,54,Female,10.12,0.94,4.0,14.14,Poor,High,6.31,2.71,No,Negative,No +USER-08508,60,Other,6.07,7.78,4.51,7.48,Good,Low,7.49,1.83,Yes,Positive,No +USER-08509,22,Male,5.37,2.98,1.35,11.82,Good,Medium,4.23,3.83,Yes,Positive,Yes +USER-08510,44,Male,2.84,2.66,2.72,13.77,Good,Medium,5.4,7.79,No,Positive,Yes +USER-08511,26,Male,6.16,2.66,4.52,2.15,Poor,High,7.56,2.22,Yes,Negative,No +USER-08512,58,Female,10.03,4.6,4.28,14.92,Good,High,5.6,4.7,No,Neutral,No +USER-08513,20,Other,8.65,7.01,3.1,11.58,Fair,Low,5.43,8.56,No,Neutral,Yes +USER-08514,37,Male,11.32,2.52,3.46,4.13,Excellent,High,4.08,1.57,Yes,Negative,Yes +USER-08515,49,Male,1.52,5.42,0.88,13.44,Poor,Medium,5.09,4.21,No,Negative,No +USER-08516,65,Other,1.36,2.55,2.95,14.59,Good,Low,8.38,9.6,Yes,Neutral,No +USER-08517,55,Other,4.33,3.53,4.03,12.61,Poor,Medium,7.79,1.12,No,Positive,No +USER-08518,50,Other,5.53,6.82,3.7,5.51,Poor,Low,8.16,4.54,Yes,Neutral,No +USER-08519,25,Female,4.4,5.38,4.3,8.05,Excellent,Medium,8.96,9.78,No,Positive,Yes +USER-08520,46,Other,9.52,5.08,4.44,3.02,Excellent,Medium,5.96,6.48,No,Negative,No +USER-08521,52,Other,8.54,1.02,2.0,13.48,Poor,Low,8.38,1.11,No,Positive,No +USER-08522,50,Female,5.36,6.98,0.45,1.22,Poor,High,6.8,1.24,No,Positive,No +USER-08523,46,Other,2.81,5.27,1.36,4.19,Excellent,Medium,6.43,1.69,Yes,Positive,Yes +USER-08524,51,Female,6.42,1.99,1.46,7.02,Poor,High,6.44,8.29,Yes,Neutral,No +USER-08525,58,Female,11.61,2.24,2.81,10.53,Fair,Medium,5.2,9.81,Yes,Neutral,No +USER-08526,57,Male,6.97,0.19,4.74,10.03,Good,High,5.36,5.84,Yes,Positive,No +USER-08527,38,Female,11.51,4.8,2.04,5.04,Good,Low,5.12,9.01,Yes,Neutral,No +USER-08528,65,Male,7.64,5.61,3.57,3.63,Fair,Medium,5.92,9.7,Yes,Neutral,No +USER-08529,20,Female,8.04,0.03,2.87,14.75,Good,Medium,5.3,9.69,No,Neutral,Yes +USER-08530,19,Other,9.84,3.5,1.6,1.33,Poor,High,6.69,4.26,No,Positive,Yes +USER-08531,65,Male,8.14,2.65,2.31,4.34,Good,High,7.67,6.95,No,Negative,Yes +USER-08532,21,Female,7.32,1.33,3.51,14.45,Excellent,Medium,4.75,3.63,No,Negative,Yes +USER-08533,46,Female,8.03,7.93,3.98,7.82,Excellent,Low,8.62,5.6,Yes,Neutral,Yes +USER-08534,50,Male,11.87,4.29,0.6,5.0,Excellent,Low,8.87,9.29,No,Positive,Yes +USER-08535,65,Female,4.93,0.35,3.75,4.51,Poor,Low,6.73,1.56,Yes,Negative,Yes +USER-08536,35,Female,9.73,3.86,0.04,11.84,Poor,Medium,7.57,7.11,Yes,Positive,No +USER-08537,46,Other,11.1,4.9,2.06,7.12,Good,Medium,4.71,0.18,Yes,Negative,Yes +USER-08538,29,Male,10.29,0.25,2.36,14.79,Good,Low,5.98,8.17,No,Neutral,No +USER-08539,19,Male,4.67,2.71,4.09,5.0,Poor,High,6.61,1.69,Yes,Neutral,No +USER-08540,61,Female,4.16,7.82,2.72,13.23,Poor,High,6.73,8.01,No,Positive,Yes +USER-08541,42,Other,6.28,3.87,1.69,4.53,Excellent,High,5.83,3.84,No,Negative,Yes +USER-08542,22,Male,8.12,5.55,0.65,11.72,Fair,High,4.19,4.38,No,Negative,No +USER-08543,47,Female,11.44,0.71,0.38,12.9,Excellent,High,6.99,8.66,No,Positive,Yes +USER-08544,32,Male,3.19,1.52,2.19,5.72,Excellent,Low,7.08,5.49,Yes,Neutral,No +USER-08545,35,Male,5.52,7.44,3.12,3.4,Good,Medium,8.72,4.25,Yes,Negative,Yes +USER-08546,29,Male,7.01,4.63,1.21,5.97,Poor,Low,5.66,5.97,No,Negative,Yes +USER-08547,54,Male,4.64,1.47,5.0,8.09,Fair,High,8.0,0.66,Yes,Negative,Yes +USER-08548,30,Male,8.08,6.16,2.97,13.34,Excellent,Medium,4.63,3.51,Yes,Positive,No +USER-08549,37,Female,8.21,4.68,3.79,9.97,Excellent,Medium,8.2,1.02,Yes,Positive,Yes +USER-08550,54,Other,2.21,3.2,3.35,12.48,Good,Low,6.2,2.59,No,Positive,Yes +USER-08551,42,Other,4.54,2.63,4.35,7.31,Poor,High,6.62,7.73,Yes,Neutral,No +USER-08552,42,Male,2.41,0.36,0.64,2.46,Fair,Low,4.7,5.01,Yes,Positive,Yes +USER-08553,63,Male,2.59,4.32,3.95,12.59,Excellent,Low,6.82,2.01,Yes,Negative,Yes +USER-08554,34,Other,1.18,1.13,4.87,5.23,Excellent,Medium,4.14,3.36,Yes,Neutral,No +USER-08555,45,Other,5.94,7.11,3.27,7.96,Good,High,5.72,2.56,Yes,Positive,Yes +USER-08556,52,Other,4.94,3.54,2.49,4.88,Poor,High,5.05,3.11,Yes,Negative,No +USER-08557,36,Other,10.01,0.34,0.92,1.44,Excellent,Low,5.04,3.62,Yes,Negative,Yes +USER-08558,35,Other,11.77,5.04,3.62,10.62,Good,Low,5.16,5.56,Yes,Neutral,Yes +USER-08559,40,Male,11.58,5.21,2.97,12.03,Fair,Medium,7.04,3.21,No,Negative,Yes +USER-08560,63,Other,3.48,7.91,4.67,10.45,Poor,Medium,8.81,2.19,Yes,Negative,Yes +USER-08561,36,Male,11.14,1.87,4.89,6.23,Poor,High,6.14,2.28,Yes,Negative,Yes +USER-08562,63,Male,4.33,4.56,3.75,12.07,Good,High,6.05,0.55,Yes,Neutral,Yes +USER-08563,61,Female,3.02,0.26,4.58,3.58,Excellent,Low,7.3,8.34,No,Positive,No +USER-08564,51,Other,7.03,0.41,2.17,10.34,Poor,Medium,7.29,1.28,No,Positive,Yes +USER-08565,40,Male,9.63,4.16,0.35,9.78,Excellent,Medium,5.06,6.82,Yes,Neutral,No +USER-08566,29,Male,7.28,1.72,2.25,6.07,Poor,Medium,5.37,1.53,Yes,Negative,No +USER-08567,63,Male,6.44,3.44,2.2,4.64,Excellent,Medium,7.51,7.93,No,Negative,Yes +USER-08568,55,Male,1.3,5.51,2.96,1.95,Excellent,Low,7.05,5.07,Yes,Negative,No +USER-08569,35,Other,10.51,7.15,0.99,13.63,Good,High,4.2,0.47,Yes,Neutral,Yes +USER-08570,34,Female,6.14,2.3,1.02,7.17,Poor,Medium,5.34,9.88,No,Positive,No +USER-08571,56,Other,5.5,1.51,1.15,3.89,Fair,Medium,4.5,8.97,Yes,Negative,Yes +USER-08572,40,Male,3.72,5.74,2.11,5.34,Poor,Low,7.58,5.41,No,Negative,Yes +USER-08573,27,Other,4.44,5.97,3.79,3.06,Good,High,6.79,5.85,No,Positive,No +USER-08574,60,Other,1.3,7.64,0.12,11.18,Poor,Medium,5.04,3.59,No,Neutral,No +USER-08575,53,Female,10.37,1.06,0.33,10.71,Excellent,Low,7.35,3.83,Yes,Neutral,No +USER-08576,32,Female,11.41,0.59,2.36,11.01,Excellent,Low,5.05,3.39,No,Positive,Yes +USER-08577,34,Other,8.78,5.83,1.42,1.83,Fair,Low,6.69,3.97,No,Neutral,Yes +USER-08578,35,Other,9.22,6.81,0.68,3.91,Good,Medium,8.99,1.99,No,Negative,Yes +USER-08579,42,Other,1.9,5.69,0.76,4.32,Fair,High,8.67,5.81,Yes,Positive,No +USER-08580,27,Male,3.72,7.44,1.8,9.56,Fair,Medium,7.67,0.96,No,Negative,Yes +USER-08581,28,Other,6.84,0.46,0.05,10.1,Excellent,High,4.4,0.14,No,Negative,Yes +USER-08582,26,Other,8.81,4.5,2.64,2.4,Poor,Medium,6.94,7.5,No,Neutral,Yes +USER-08583,53,Other,3.51,2.3,4.56,5.27,Excellent,Low,4.72,3.66,No,Negative,Yes +USER-08584,56,Male,11.61,5.98,4.95,6.08,Fair,Low,5.19,0.33,Yes,Neutral,Yes +USER-08585,25,Male,10.0,6.73,2.4,3.05,Fair,Low,8.48,2.81,Yes,Negative,Yes +USER-08586,26,Female,3.99,7.19,1.82,2.59,Excellent,High,7.84,1.53,No,Negative,Yes +USER-08587,46,Female,11.6,3.08,0.35,9.99,Fair,Low,4.1,1.47,Yes,Neutral,No +USER-08588,62,Female,3.38,5.47,2.54,8.99,Poor,Medium,6.84,0.74,Yes,Negative,Yes +USER-08589,32,Other,4.18,7.59,2.46,7.52,Fair,Medium,7.59,4.29,No,Positive,Yes +USER-08590,42,Male,10.28,2.84,2.17,9.39,Good,Medium,6.2,1.31,Yes,Negative,Yes +USER-08591,63,Other,5.9,6.83,3.71,2.83,Poor,Low,6.32,0.41,Yes,Neutral,No +USER-08592,43,Other,8.38,0.24,2.0,5.04,Fair,Medium,7.48,4.96,Yes,Neutral,Yes +USER-08593,33,Female,10.05,0.54,1.23,1.62,Excellent,Low,4.21,9.11,No,Negative,Yes +USER-08594,21,Other,7.23,0.39,3.5,9.39,Excellent,Medium,7.82,7.3,Yes,Neutral,No +USER-08595,64,Other,4.95,0.27,4.24,9.81,Fair,Medium,5.96,0.62,Yes,Neutral,No +USER-08596,43,Female,3.4,3.74,0.83,10.95,Excellent,Medium,6.56,0.75,No,Negative,No +USER-08597,28,Female,8.98,5.02,3.6,4.5,Fair,High,8.6,1.11,No,Neutral,No +USER-08598,59,Female,9.2,3.5,2.67,12.24,Poor,Medium,5.68,9.58,No,Neutral,No +USER-08599,43,Other,6.49,6.49,2.17,2.85,Excellent,Low,8.32,0.82,Yes,Negative,Yes +USER-08600,40,Female,11.8,4.62,2.01,1.9,Excellent,Medium,5.49,1.63,No,Positive,No +USER-08601,35,Other,9.23,4.6,1.16,8.12,Fair,Low,4.62,6.26,Yes,Negative,Yes +USER-08602,54,Male,1.97,3.26,3.48,3.72,Fair,Medium,7.9,3.18,No,Neutral,No +USER-08603,42,Other,7.25,4.35,2.2,9.11,Fair,Medium,7.18,6.2,No,Positive,No +USER-08604,52,Other,9.1,0.94,4.56,12.59,Poor,Medium,4.67,7.27,Yes,Neutral,Yes +USER-08605,26,Male,3.09,5.4,3.04,10.16,Poor,Low,6.25,0.49,Yes,Neutral,Yes +USER-08606,65,Female,2.52,3.53,4.03,13.51,Good,Low,4.26,2.83,No,Positive,Yes +USER-08607,24,Female,1.44,3.12,4.56,4.38,Poor,Low,8.64,8.94,No,Positive,No +USER-08608,27,Male,1.94,1.48,4.14,9.0,Poor,High,4.23,1.19,No,Negative,No +USER-08609,61,Female,9.57,0.57,1.73,6.39,Excellent,Low,7.53,8.75,No,Neutral,No +USER-08610,23,Male,3.55,3.5,2.38,7.35,Fair,Low,5.43,3.0,Yes,Positive,No +USER-08611,34,Female,10.81,1.64,4.59,4.61,Good,High,6.01,2.16,Yes,Negative,No +USER-08612,29,Other,7.89,1.84,0.95,4.04,Poor,Low,7.84,5.0,No,Negative,No +USER-08613,31,Other,11.95,0.32,1.08,1.48,Fair,Medium,8.45,0.72,No,Negative,No +USER-08614,28,Female,4.21,0.75,1.84,13.98,Excellent,Medium,5.7,5.03,No,Neutral,No +USER-08615,28,Other,9.5,3.14,3.11,8.92,Fair,Medium,4.06,1.71,No,Neutral,No +USER-08616,33,Female,4.03,7.4,2.19,4.64,Fair,Low,7.77,5.71,No,Positive,Yes +USER-08617,62,Other,11.21,3.44,1.0,6.6,Excellent,Medium,4.7,4.1,Yes,Positive,Yes +USER-08618,62,Male,5.31,3.07,4.03,11.54,Good,High,7.16,6.0,Yes,Positive,No +USER-08619,28,Male,9.36,2.88,2.91,11.16,Poor,Low,5.85,3.58,No,Neutral,Yes +USER-08620,63,Male,9.09,5.32,2.34,1.68,Excellent,Medium,8.27,0.94,Yes,Positive,No +USER-08621,44,Other,1.54,3.37,3.96,5.61,Good,High,6.88,7.39,Yes,Negative,Yes +USER-08622,41,Male,7.38,4.78,4.51,3.29,Poor,High,7.34,0.03,No,Neutral,No +USER-08623,41,Female,8.72,2.89,1.98,6.08,Excellent,Medium,8.67,3.43,No,Neutral,No +USER-08624,65,Female,10.13,2.26,1.59,12.38,Poor,Medium,6.73,1.1,No,Neutral,No +USER-08625,62,Male,11.39,6.93,1.98,5.96,Excellent,Low,4.2,4.31,No,Negative,No +USER-08626,42,Other,9.37,3.21,4.05,8.79,Fair,High,6.26,0.97,No,Positive,No +USER-08627,39,Female,3.31,0.73,3.48,10.55,Excellent,Medium,4.31,7.71,No,Negative,Yes +USER-08628,19,Female,9.73,0.63,0.72,1.22,Good,Medium,6.73,9.71,No,Negative,No +USER-08629,64,Other,6.62,6.18,2.98,13.79,Poor,Low,7.48,9.06,No,Negative,Yes +USER-08630,38,Female,8.66,5.68,4.74,6.9,Good,High,5.43,0.93,No,Negative,Yes +USER-08631,41,Female,1.32,1.45,3.32,5.06,Excellent,Low,7.78,5.62,No,Positive,No +USER-08632,37,Female,6.14,7.66,2.85,10.01,Excellent,Medium,5.44,2.96,No,Positive,No +USER-08633,21,Other,9.94,7.34,1.17,7.85,Good,Medium,5.24,5.0,Yes,Neutral,Yes +USER-08634,36,Female,5.42,6.11,3.04,4.51,Fair,High,4.47,3.5,Yes,Neutral,Yes +USER-08635,40,Male,4.63,0.96,1.45,2.64,Excellent,High,8.36,3.4,No,Positive,Yes +USER-08636,56,Male,10.63,2.36,1.35,12.19,Excellent,Medium,4.14,2.19,No,Neutral,No +USER-08637,59,Female,1.34,0.14,2.74,10.39,Good,Medium,5.06,7.73,Yes,Neutral,Yes +USER-08638,21,Male,10.08,0.28,2.19,10.47,Fair,Low,7.53,3.37,No,Neutral,Yes +USER-08639,32,Male,7.65,7.72,0.71,9.08,Poor,Medium,8.81,7.58,Yes,Neutral,No +USER-08640,36,Male,6.1,5.05,2.5,8.93,Poor,Medium,5.11,1.3,Yes,Negative,Yes +USER-08641,48,Female,2.84,3.67,2.45,1.65,Excellent,Medium,5.51,8.37,No,Positive,No +USER-08642,31,Female,9.19,7.27,4.07,3.7,Good,Medium,7.46,7.38,Yes,Negative,Yes +USER-08643,43,Other,9.07,1.98,2.96,8.25,Fair,Low,6.34,5.07,No,Positive,Yes +USER-08644,24,Other,6.7,5.7,0.51,9.04,Fair,High,6.78,5.14,No,Neutral,No +USER-08645,50,Female,5.47,5.35,1.79,11.74,Poor,High,8.91,6.42,Yes,Positive,No +USER-08646,50,Other,11.97,4.83,2.73,9.75,Good,Low,6.7,5.81,Yes,Negative,No +USER-08647,56,Female,5.28,1.67,2.16,5.64,Fair,High,4.46,2.93,No,Negative,Yes +USER-08648,20,Male,6.48,4.22,0.41,11.82,Fair,Medium,4.42,1.35,Yes,Neutral,Yes +USER-08649,20,Female,8.04,3.6,4.28,7.61,Good,Medium,4.64,8.33,Yes,Positive,No +USER-08650,59,Female,2.8,0.23,1.75,12.49,Fair,High,8.88,9.29,No,Negative,No +USER-08651,64,Other,6.63,5.93,1.63,12.12,Excellent,High,7.15,7.35,Yes,Neutral,No +USER-08652,50,Female,9.75,3.08,2.86,9.07,Excellent,Low,6.99,6.53,No,Negative,No +USER-08653,37,Male,3.69,7.23,1.18,14.95,Good,Medium,8.11,4.92,No,Positive,No +USER-08654,49,Female,5.49,5.04,1.18,8.23,Fair,Medium,6.54,1.53,Yes,Negative,No +USER-08655,36,Other,11.25,4.35,1.6,3.78,Poor,Low,5.58,3.42,No,Neutral,Yes +USER-08656,18,Male,1.38,4.36,0.16,10.49,Fair,Medium,5.4,7.95,Yes,Negative,Yes +USER-08657,26,Female,5.68,5.72,4.61,4.29,Good,High,5.06,1.32,No,Negative,No +USER-08658,36,Male,3.99,7.7,3.0,3.61,Fair,High,8.74,7.66,Yes,Negative,No +USER-08659,39,Male,10.45,6.43,2.47,3.98,Excellent,Low,7.84,2.74,Yes,Negative,No +USER-08660,21,Other,11.65,4.55,4.32,6.43,Poor,Medium,6.51,3.88,Yes,Positive,No +USER-08661,54,Male,11.86,0.16,0.78,14.29,Excellent,Medium,6.66,8.71,Yes,Positive,No +USER-08662,22,Male,10.99,5.97,2.55,2.92,Excellent,High,6.78,3.85,Yes,Negative,Yes +USER-08663,27,Other,1.08,7.12,0.64,3.65,Poor,Medium,8.21,8.05,No,Positive,Yes +USER-08664,19,Male,3.52,2.51,0.98,13.76,Good,High,5.45,6.02,Yes,Neutral,Yes +USER-08665,48,Other,11.68,2.38,3.14,8.14,Good,Low,7.79,5.53,Yes,Positive,Yes +USER-08666,26,Other,3.3,4.85,4.82,2.79,Fair,High,4.18,7.38,No,Positive,No +USER-08667,46,Male,2.15,3.87,3.76,6.85,Good,High,6.83,3.46,No,Negative,Yes +USER-08668,46,Other,8.99,6.3,0.21,1.98,Fair,High,8.3,1.69,Yes,Positive,Yes +USER-08669,57,Female,9.38,1.18,2.23,4.17,Excellent,Medium,4.52,1.02,No,Negative,No +USER-08670,44,Male,5.77,5.21,1.06,9.53,Excellent,Low,5.19,9.32,Yes,Positive,Yes +USER-08671,44,Other,1.63,2.82,3.02,9.03,Fair,Low,8.26,9.04,Yes,Positive,No +USER-08672,55,Male,4.8,0.74,4.33,13.43,Good,Low,8.8,8.32,Yes,Positive,No +USER-08673,18,Male,3.15,5.99,2.65,4.66,Excellent,Low,7.43,4.33,No,Positive,No +USER-08674,43,Male,8.92,2.22,4.31,11.3,Good,High,4.7,4.63,Yes,Neutral,Yes +USER-08675,18,Male,8.45,3.38,0.05,14.67,Good,Low,7.22,2.59,Yes,Positive,No +USER-08676,24,Other,1.07,6.59,4.97,9.94,Fair,High,5.27,2.83,Yes,Negative,Yes +USER-08677,42,Female,5.15,6.33,3.8,13.18,Fair,Medium,8.73,6.21,No,Neutral,Yes +USER-08678,42,Other,5.75,7.99,3.24,8.63,Fair,Medium,4.44,9.07,No,Neutral,Yes +USER-08679,60,Female,1.71,6.36,4.45,6.77,Fair,High,5.94,4.84,No,Positive,No +USER-08680,46,Female,5.0,4.25,1.89,12.99,Fair,Low,4.13,6.15,Yes,Negative,Yes +USER-08681,55,Other,5.51,0.96,3.57,6.87,Poor,Medium,4.74,4.29,Yes,Neutral,No +USER-08682,21,Female,5.93,3.09,0.81,4.21,Excellent,High,6.85,0.9,No,Negative,No +USER-08683,49,Female,9.72,1.01,1.98,11.99,Good,Medium,8.87,0.45,No,Negative,No +USER-08684,49,Other,2.38,3.72,2.61,1.01,Good,Low,7.86,0.72,Yes,Negative,Yes +USER-08685,40,Male,2.75,2.11,3.1,8.11,Poor,Medium,5.91,6.48,Yes,Positive,No +USER-08686,45,Female,1.11,6.9,0.26,11.15,Excellent,Low,8.06,7.78,Yes,Negative,Yes +USER-08687,25,Other,4.43,5.78,1.59,4.78,Poor,Medium,6.37,2.04,Yes,Positive,Yes +USER-08688,57,Male,5.02,4.19,4.09,12.09,Poor,Low,5.49,1.02,Yes,Neutral,Yes +USER-08689,36,Male,11.56,3.62,0.43,7.51,Fair,Medium,5.59,1.21,No,Negative,Yes +USER-08690,29,Male,9.86,1.7,4.79,2.95,Good,High,6.67,1.9,Yes,Neutral,No +USER-08691,24,Male,8.0,1.15,3.42,9.58,Good,Medium,7.32,0.07,Yes,Positive,Yes +USER-08692,36,Male,11.81,2.23,3.69,3.24,Fair,High,5.56,6.45,No,Neutral,Yes +USER-08693,39,Female,6.6,7.0,4.0,12.17,Poor,Medium,5.18,3.36,Yes,Negative,No +USER-08694,55,Other,10.98,4.22,0.03,3.48,Good,Low,5.89,1.54,Yes,Neutral,No +USER-08695,49,Other,7.01,6.71,2.47,3.01,Fair,High,4.96,8.64,No,Negative,Yes +USER-08696,39,Female,4.71,6.45,3.99,6.05,Poor,High,6.0,3.39,Yes,Neutral,No +USER-08697,33,Other,7.7,0.7,5.0,11.27,Good,High,8.13,7.03,No,Negative,No +USER-08698,46,Male,10.51,2.31,2.41,9.86,Good,Medium,6.4,4.29,Yes,Positive,No +USER-08699,59,Male,4.29,0.38,4.87,2.04,Fair,Low,7.03,2.08,Yes,Negative,Yes +USER-08700,43,Other,2.25,2.72,2.29,3.54,Excellent,Medium,6.01,6.31,Yes,Positive,No +USER-08701,64,Male,6.9,3.6,4.55,6.02,Excellent,Medium,8.24,4.17,Yes,Positive,Yes +USER-08702,19,Other,10.36,3.15,3.44,6.24,Good,Medium,6.82,5.17,Yes,Positive,No +USER-08703,37,Other,11.62,1.72,0.29,8.51,Good,Medium,4.54,4.95,Yes,Neutral,Yes +USER-08704,26,Female,2.69,7.49,0.03,12.46,Good,High,4.18,5.58,Yes,Positive,No +USER-08705,61,Other,10.07,6.99,0.07,14.43,Good,Medium,5.05,9.54,Yes,Positive,Yes +USER-08706,50,Male,1.79,0.58,4.55,13.91,Fair,Low,8.53,9.52,No,Neutral,Yes +USER-08707,54,Other,1.6,3.26,2.16,12.6,Good,Medium,6.61,6.06,Yes,Neutral,No +USER-08708,18,Male,3.26,5.59,4.21,2.2,Poor,Low,5.21,1.08,No,Negative,No +USER-08709,55,Male,8.34,0.43,0.19,13.31,Poor,High,6.3,7.48,No,Negative,Yes +USER-08710,42,Female,5.46,6.36,0.58,13.87,Poor,Medium,4.7,8.5,Yes,Negative,Yes +USER-08711,19,Male,6.92,5.58,2.85,2.57,Good,High,5.19,5.75,No,Negative,No +USER-08712,50,Male,1.36,2.05,3.48,6.68,Excellent,High,4.83,2.47,Yes,Neutral,No +USER-08713,52,Female,2.73,4.67,1.19,1.38,Fair,Medium,4.41,0.37,No,Negative,Yes +USER-08714,46,Female,11.13,2.62,2.95,2.92,Poor,High,7.09,8.53,Yes,Negative,Yes +USER-08715,18,Female,7.53,4.0,1.89,5.23,Excellent,Medium,6.4,6.27,No,Negative,Yes +USER-08716,48,Female,7.84,4.79,3.71,11.49,Poor,High,4.12,9.96,No,Neutral,Yes +USER-08717,56,Female,8.11,1.37,0.97,10.11,Excellent,Low,6.24,7.84,Yes,Negative,Yes +USER-08718,23,Male,1.76,3.31,0.6,7.86,Fair,Medium,8.75,3.56,Yes,Negative,No +USER-08719,22,Male,5.15,5.89,3.26,1.34,Good,High,6.43,2.53,No,Neutral,Yes +USER-08720,26,Other,7.59,3.63,4.25,13.12,Poor,Low,8.81,8.35,No,Neutral,Yes +USER-08721,29,Female,8.65,5.72,3.82,1.98,Good,Low,6.13,0.4,Yes,Negative,No +USER-08722,62,Female,5.31,2.28,2.16,14.63,Excellent,High,5.24,0.23,Yes,Positive,No +USER-08723,49,Other,5.81,2.37,3.08,7.18,Fair,Medium,4.99,9.87,Yes,Positive,Yes +USER-08724,59,Female,2.46,7.68,1.72,4.93,Poor,Medium,8.34,3.12,No,Neutral,Yes +USER-08725,58,Female,11.79,0.8,4.06,11.26,Fair,High,7.97,1.38,Yes,Positive,Yes +USER-08726,56,Other,8.2,4.03,0.49,11.22,Fair,High,7.16,8.92,No,Neutral,No +USER-08727,37,Female,11.84,2.72,0.48,4.14,Poor,Low,6.23,7.0,No,Neutral,Yes +USER-08728,31,Female,10.0,3.97,2.87,5.61,Good,High,5.24,1.75,Yes,Negative,Yes +USER-08729,65,Female,9.55,2.17,4.1,4.95,Excellent,Low,7.12,3.57,No,Positive,No +USER-08730,26,Male,5.48,0.69,2.88,4.43,Poor,High,6.02,6.39,Yes,Neutral,Yes +USER-08731,41,Other,11.64,1.23,1.78,9.65,Excellent,Low,8.27,2.42,No,Negative,Yes +USER-08732,26,Female,3.61,3.15,2.75,8.27,Poor,High,5.65,2.01,No,Positive,Yes +USER-08733,49,Male,10.16,0.42,0.26,13.22,Good,High,7.23,8.79,Yes,Negative,Yes +USER-08734,29,Male,2.51,4.49,1.51,6.66,Excellent,Medium,5.76,7.23,Yes,Negative,Yes +USER-08735,30,Other,6.16,2.13,4.14,13.37,Excellent,Low,6.14,0.43,Yes,Neutral,Yes +USER-08736,33,Male,11.14,4.54,4.01,11.02,Fair,Low,8.66,2.38,No,Neutral,Yes +USER-08737,45,Other,10.07,3.11,0.06,13.19,Good,Medium,5.53,8.17,Yes,Positive,No +USER-08738,34,Male,7.93,6.31,0.34,1.39,Poor,Low,5.15,3.72,Yes,Positive,Yes +USER-08739,61,Other,11.65,1.07,3.25,12.71,Poor,High,8.21,8.47,No,Neutral,Yes +USER-08740,19,Other,10.66,1.7,1.14,12.86,Fair,High,6.41,9.4,No,Positive,Yes +USER-08741,39,Male,5.66,5.78,4.81,10.64,Good,Medium,6.09,7.34,No,Neutral,Yes +USER-08742,63,Other,7.81,2.6,4.79,7.68,Fair,Medium,5.99,3.57,Yes,Positive,No +USER-08743,40,Male,4.87,5.62,3.85,2.46,Poor,Medium,7.48,0.15,No,Positive,Yes +USER-08744,61,Female,11.43,1.68,4.01,8.37,Good,High,4.34,9.93,Yes,Neutral,No +USER-08745,18,Other,4.81,5.76,3.12,2.79,Excellent,High,4.23,4.73,No,Neutral,Yes +USER-08746,32,Female,1.41,4.12,2.15,14.28,Poor,Low,4.18,7.38,No,Negative,Yes +USER-08747,26,Other,8.7,5.93,4.29,9.87,Excellent,Medium,4.65,4.61,Yes,Positive,Yes +USER-08748,52,Female,2.45,5.73,4.69,9.45,Excellent,High,6.94,1.42,No,Negative,No +USER-08749,21,Female,6.75,1.42,1.44,4.89,Good,Medium,4.69,9.6,No,Positive,No +USER-08750,30,Male,5.71,2.11,1.39,10.81,Poor,Low,8.84,2.59,No,Neutral,Yes +USER-08751,34,Female,3.92,4.25,3.07,11.13,Poor,Low,7.67,1.56,No,Positive,No +USER-08752,33,Male,11.53,7.81,0.35,1.89,Good,High,8.55,5.17,No,Negative,No +USER-08753,29,Male,5.29,7.96,3.11,6.47,Good,Medium,8.74,5.44,No,Positive,No +USER-08754,60,Male,10.17,5.13,2.71,5.52,Fair,Medium,4.32,2.1,No,Neutral,Yes +USER-08755,30,Male,8.44,7.36,1.61,6.17,Excellent,Low,8.81,4.67,Yes,Neutral,Yes +USER-08756,39,Other,8.38,7.48,3.07,5.27,Fair,Low,8.94,4.72,Yes,Negative,Yes +USER-08757,29,Male,7.36,7.02,2.49,9.26,Excellent,Low,4.31,7.35,No,Neutral,Yes +USER-08758,20,Male,2.8,1.73,2.83,8.74,Poor,Medium,8.78,9.39,Yes,Neutral,No +USER-08759,43,Male,3.37,6.72,4.83,12.36,Poor,High,4.98,6.96,Yes,Positive,No +USER-08760,31,Other,6.93,7.83,4.16,4.79,Good,Medium,5.9,4.68,No,Negative,No +USER-08761,32,Female,7.83,5.86,1.47,14.23,Poor,Low,5.7,7.28,Yes,Neutral,No +USER-08762,40,Other,1.29,7.35,1.14,8.97,Excellent,Medium,8.99,8.99,No,Positive,No +USER-08763,46,Other,10.52,2.92,0.98,1.61,Good,Medium,5.64,3.09,No,Negative,No +USER-08764,53,Female,5.72,1.71,2.11,7.14,Fair,Low,7.49,0.45,Yes,Positive,Yes +USER-08765,26,Male,2.63,5.85,3.49,10.95,Fair,Low,4.44,8.3,Yes,Negative,No +USER-08766,52,Female,1.93,1.15,1.17,14.47,Excellent,Low,6.64,1.51,No,Positive,Yes +USER-08767,33,Other,9.87,2.24,1.06,4.8,Fair,High,8.68,5.81,Yes,Negative,No +USER-08768,49,Female,7.01,6.68,1.44,8.46,Good,Medium,4.27,8.14,No,Negative,No +USER-08769,32,Other,10.69,4.31,0.11,3.95,Fair,High,4.9,2.15,No,Positive,Yes +USER-08770,23,Other,10.54,1.39,1.23,8.49,Poor,Low,4.4,5.81,No,Positive,Yes +USER-08771,37,Other,4.09,6.68,4.54,12.8,Poor,Low,4.69,5.84,Yes,Negative,Yes +USER-08772,32,Other,6.79,7.67,4.42,5.16,Poor,High,6.04,1.9,No,Negative,No +USER-08773,36,Male,6.32,2.48,2.5,8.1,Excellent,Medium,6.27,6.56,Yes,Positive,No +USER-08774,48,Female,5.02,4.17,0.6,8.35,Poor,Low,8.58,5.91,Yes,Negative,No +USER-08775,18,Female,8.85,3.54,0.36,11.93,Fair,Medium,5.51,5.55,Yes,Neutral,No +USER-08776,33,Male,4.28,3.05,2.63,14.38,Fair,Medium,5.02,0.95,Yes,Negative,Yes +USER-08777,18,Other,7.81,6.81,4.13,3.46,Poor,High,4.91,2.03,Yes,Negative,Yes +USER-08778,55,Male,10.58,2.99,0.24,7.03,Fair,Medium,5.21,4.75,Yes,Positive,Yes +USER-08779,61,Other,9.97,2.38,1.07,14.04,Poor,Low,7.55,3.12,No,Negative,Yes +USER-08780,65,Male,10.59,4.07,3.52,1.06,Fair,High,8.15,6.12,No,Neutral,No +USER-08781,62,Other,10.65,0.25,0.28,3.27,Fair,Low,8.79,2.08,No,Neutral,No +USER-08782,43,Male,9.54,0.93,1.94,9.31,Excellent,High,7.59,6.24,Yes,Negative,Yes +USER-08783,45,Male,3.99,4.58,1.88,2.25,Fair,Low,6.73,5.52,Yes,Negative,Yes +USER-08784,29,Male,11.28,7.79,3.93,4.95,Fair,Low,5.58,5.59,Yes,Neutral,No +USER-08785,40,Other,8.11,0.04,3.68,3.59,Poor,High,6.77,0.47,No,Negative,No +USER-08786,54,Male,8.87,4.37,3.69,7.59,Fair,High,7.83,3.93,No,Negative,No +USER-08787,25,Other,6.6,6.97,0.37,12.65,Poor,High,6.25,0.06,No,Negative,Yes +USER-08788,23,Female,2.42,5.63,4.51,4.4,Poor,High,4.76,8.77,No,Positive,No +USER-08789,64,Female,6.43,3.54,2.05,7.19,Excellent,Medium,4.98,0.18,No,Negative,No +USER-08790,36,Male,1.32,7.62,0.91,2.65,Poor,High,8.64,4.63,Yes,Neutral,Yes +USER-08791,58,Female,2.69,7.86,0.29,13.3,Fair,High,6.9,1.12,Yes,Negative,No +USER-08792,50,Male,5.81,3.89,3.56,1.36,Poor,Medium,5.26,9.62,No,Neutral,Yes +USER-08793,45,Female,3.17,4.75,4.62,8.79,Fair,High,5.12,2.68,No,Positive,No +USER-08794,53,Female,9.98,3.05,2.73,8.08,Excellent,High,5.92,7.9,Yes,Positive,No +USER-08795,64,Male,6.71,0.44,1.86,11.62,Good,High,7.15,4.33,Yes,Negative,No +USER-08796,22,Male,10.41,2.81,3.6,10.89,Excellent,Medium,7.41,7.54,No,Positive,No +USER-08797,26,Male,1.65,4.21,1.29,8.57,Poor,Medium,5.46,5.57,No,Negative,Yes +USER-08798,38,Female,6.58,3.35,1.34,3.17,Good,Medium,5.78,5.57,No,Neutral,No +USER-08799,50,Other,11.44,1.39,4.75,11.75,Fair,Low,8.25,2.03,No,Negative,No +USER-08800,31,Female,2.56,7.09,4.04,5.23,Fair,Low,7.95,2.12,No,Neutral,No +USER-08801,61,Other,7.71,3.63,1.26,3.51,Good,Low,4.44,2.8,No,Neutral,Yes +USER-08802,54,Other,2.26,0.86,0.34,7.1,Poor,Medium,8.48,7.08,Yes,Neutral,Yes +USER-08803,41,Other,11.16,6.87,3.27,7.36,Good,High,7.74,6.38,Yes,Neutral,No +USER-08804,18,Male,6.54,6.07,2.05,4.26,Excellent,Low,8.32,3.34,Yes,Neutral,Yes +USER-08805,48,Female,1.21,1.36,2.67,8.16,Good,Low,4.11,0.09,No,Positive,Yes +USER-08806,38,Other,9.3,3.27,0.26,3.37,Excellent,Low,8.97,6.61,Yes,Positive,Yes +USER-08807,24,Male,6.51,6.61,2.88,13.61,Excellent,Medium,4.44,7.08,No,Neutral,Yes +USER-08808,34,Male,2.51,2.05,3.94,12.19,Fair,High,4.67,2.75,Yes,Positive,No +USER-08809,40,Male,10.36,2.96,4.38,8.06,Fair,Medium,6.59,7.74,Yes,Neutral,No +USER-08810,27,Male,2.32,6.76,1.49,2.91,Poor,High,5.44,9.47,No,Positive,No +USER-08811,21,Male,5.29,1.28,0.79,14.88,Good,High,7.95,9.78,Yes,Positive,Yes +USER-08812,45,Female,1.1,4.29,2.04,9.01,Excellent,Low,6.29,5.8,No,Negative,Yes +USER-08813,18,Female,5.49,5.72,4.37,4.84,Good,High,6.0,9.81,Yes,Positive,Yes +USER-08814,41,Other,4.08,6.45,1.44,9.43,Fair,Medium,7.87,5.11,No,Positive,Yes +USER-08815,38,Male,7.84,0.39,1.79,8.85,Fair,High,7.63,5.69,No,Positive,No +USER-08816,37,Male,2.18,1.7,0.0,5.31,Poor,High,4.13,5.7,No,Positive,No +USER-08817,48,Other,11.76,6.83,3.68,7.04,Poor,Low,6.41,6.13,Yes,Positive,Yes +USER-08818,65,Male,8.12,2.47,3.9,9.66,Poor,Low,4.63,8.56,Yes,Positive,No +USER-08819,35,Other,8.7,5.28,1.4,3.74,Excellent,Medium,7.91,8.41,No,Negative,No +USER-08820,33,Male,7.64,6.2,1.53,10.18,Poor,High,5.3,3.52,No,Neutral,Yes +USER-08821,62,Male,9.29,7.02,1.69,1.11,Good,High,8.42,5.34,Yes,Neutral,No +USER-08822,26,Male,7.76,7.67,0.54,10.37,Excellent,Medium,6.37,8.47,Yes,Negative,No +USER-08823,55,Female,1.55,6.99,4.73,6.36,Poor,Low,7.99,1.99,Yes,Neutral,Yes +USER-08824,46,Male,2.8,0.29,1.01,7.38,Excellent,Medium,6.8,6.36,No,Neutral,No +USER-08825,60,Female,3.09,1.52,0.42,4.24,Excellent,Low,5.41,0.41,Yes,Positive,Yes +USER-08826,33,Other,7.84,1.58,0.1,7.86,Good,High,6.47,7.46,No,Negative,Yes +USER-08827,52,Female,4.95,1.9,3.15,1.74,Poor,High,6.07,0.51,No,Positive,Yes +USER-08828,22,Other,2.26,7.14,3.85,12.89,Fair,Low,7.09,7.18,Yes,Negative,Yes +USER-08829,36,Other,1.93,5.68,4.75,12.05,Poor,Medium,7.11,1.28,Yes,Negative,No +USER-08830,49,Male,5.17,6.92,3.54,9.32,Excellent,Low,8.06,3.36,Yes,Negative,Yes +USER-08831,53,Female,1.39,7.7,0.2,7.22,Excellent,Low,5.38,3.86,No,Neutral,No +USER-08832,57,Male,9.45,5.34,3.17,6.21,Excellent,Low,5.91,5.38,Yes,Positive,No +USER-08833,18,Male,6.9,2.82,3.78,1.45,Fair,High,5.37,3.62,No,Negative,No +USER-08834,46,Other,4.84,5.33,0.94,13.83,Good,High,8.71,3.01,Yes,Neutral,No +USER-08835,25,Male,8.57,1.77,4.06,12.21,Excellent,Low,4.64,4.32,Yes,Neutral,No +USER-08836,47,Other,7.24,5.3,0.35,6.03,Fair,Medium,5.39,0.55,No,Neutral,Yes +USER-08837,38,Other,3.59,2.68,2.51,5.55,Good,High,6.39,2.82,Yes,Negative,Yes +USER-08838,39,Other,10.02,7.23,2.56,8.01,Good,Low,4.37,5.43,No,Neutral,Yes +USER-08839,47,Male,11.81,4.32,0.79,4.88,Excellent,High,8.57,8.81,No,Negative,No +USER-08840,47,Male,3.2,2.34,0.34,9.14,Good,Low,8.81,1.84,Yes,Neutral,No +USER-08841,42,Female,3.02,5.84,2.12,14.12,Fair,Medium,8.78,5.2,Yes,Negative,No +USER-08842,45,Female,10.12,7.38,4.97,10.44,Fair,High,7.9,1.0,No,Neutral,Yes +USER-08843,60,Other,10.82,7.9,3.77,12.63,Excellent,Low,6.47,9.56,No,Negative,Yes +USER-08844,30,Other,10.18,1.92,2.32,6.04,Good,High,4.96,3.22,No,Neutral,Yes +USER-08845,38,Female,10.89,5.55,4.38,11.61,Poor,High,6.15,7.39,Yes,Positive,Yes +USER-08846,34,Male,4.46,4.46,0.18,3.66,Good,Low,4.14,7.29,Yes,Neutral,No +USER-08847,53,Other,5.39,1.01,4.19,12.43,Excellent,Low,4.56,2.91,No,Neutral,No +USER-08848,63,Other,2.77,7.46,3.3,10.67,Fair,High,6.57,3.35,No,Positive,No +USER-08849,59,Other,2.69,3.27,4.52,8.29,Excellent,Medium,4.95,3.16,No,Negative,No +USER-08850,23,Male,1.43,7.63,0.97,1.45,Poor,High,7.62,3.97,No,Negative,Yes +USER-08851,52,Other,8.57,1.72,1.05,5.43,Excellent,High,4.67,2.74,No,Negative,No +USER-08852,51,Female,9.04,6.96,3.52,1.15,Excellent,Low,6.49,8.77,Yes,Negative,Yes +USER-08853,25,Male,6.98,6.99,2.99,11.59,Poor,High,8.02,9.2,No,Negative,No +USER-08854,57,Female,9.3,4.15,2.88,6.43,Poor,Medium,5.1,2.42,Yes,Positive,Yes +USER-08855,51,Female,1.96,1.39,0.45,3.9,Good,High,8.68,5.95,No,Neutral,Yes +USER-08856,47,Male,10.57,2.21,3.07,6.32,Poor,High,6.51,9.62,Yes,Neutral,No +USER-08857,54,Male,4.74,7.77,0.91,10.14,Poor,High,4.63,0.09,No,Negative,Yes +USER-08858,38,Female,3.6,4.11,2.61,1.21,Poor,Low,6.14,5.07,Yes,Neutral,No +USER-08859,32,Female,4.6,7.78,2.39,10.36,Excellent,High,7.48,1.49,Yes,Negative,No +USER-08860,60,Male,5.07,5.68,2.91,3.56,Fair,High,5.73,2.98,Yes,Neutral,No +USER-08861,37,Female,4.05,5.46,3.74,1.26,Fair,Low,5.36,1.73,Yes,Negative,No +USER-08862,35,Other,2.52,4.41,2.17,8.23,Poor,Medium,7.92,6.81,Yes,Neutral,Yes +USER-08863,53,Other,5.85,4.66,1.67,2.73,Fair,Medium,5.63,4.41,No,Neutral,Yes +USER-08864,24,Male,4.79,4.47,0.65,2.46,Fair,Low,7.83,0.56,Yes,Positive,Yes +USER-08865,47,Female,4.84,2.73,0.11,8.22,Fair,Low,4.1,7.22,Yes,Positive,Yes +USER-08866,26,Other,9.69,7.48,2.97,13.19,Excellent,Medium,8.72,4.03,Yes,Neutral,Yes +USER-08867,44,Female,6.42,5.78,1.41,8.84,Poor,Low,6.81,0.84,Yes,Positive,No +USER-08868,57,Other,11.85,2.59,2.78,14.09,Good,Medium,4.11,7.19,No,Negative,No +USER-08869,30,Other,3.82,3.95,4.18,14.37,Fair,High,6.39,3.49,Yes,Positive,No +USER-08870,33,Female,1.44,6.59,3.66,13.11,Excellent,Low,8.25,3.63,Yes,Negative,No +USER-08871,54,Male,8.77,3.29,1.07,9.34,Good,Medium,7.35,0.36,Yes,Positive,Yes +USER-08872,65,Male,1.78,1.61,4.51,11.0,Excellent,Medium,4.01,4.17,Yes,Neutral,Yes +USER-08873,39,Male,10.89,4.7,3.05,13.16,Poor,Low,8.32,3.92,No,Negative,Yes +USER-08874,24,Other,10.2,2.53,3.07,13.7,Good,High,6.25,7.16,Yes,Neutral,No +USER-08875,62,Male,11.8,6.01,3.85,4.03,Good,High,8.74,1.95,No,Neutral,No +USER-08876,46,Female,5.43,6.44,3.72,12.0,Excellent,High,6.62,2.06,Yes,Positive,Yes +USER-08877,31,Female,5.76,2.12,0.13,3.75,Excellent,Low,6.95,4.56,Yes,Positive,Yes +USER-08878,62,Female,11.43,3.96,3.67,12.6,Good,High,7.87,2.9,Yes,Negative,Yes +USER-08879,52,Female,3.04,7.05,3.67,4.79,Excellent,High,8.9,4.0,Yes,Positive,No +USER-08880,51,Other,5.26,7.51,1.5,6.29,Good,Low,5.45,6.03,Yes,Negative,No +USER-08881,63,Female,9.74,1.16,1.04,6.48,Poor,Low,5.62,6.6,No,Positive,No +USER-08882,36,Other,8.76,0.04,1.52,10.98,Fair,Low,4.93,7.0,No,Negative,Yes +USER-08883,59,Male,9.24,0.58,0.87,3.32,Excellent,Low,4.48,2.72,No,Positive,No +USER-08884,54,Other,5.69,6.12,2.93,7.79,Fair,Low,4.9,7.63,Yes,Positive,No +USER-08885,65,Other,10.77,4.85,3.85,12.1,Excellent,High,4.67,4.83,No,Positive,Yes +USER-08886,49,Other,10.08,3.83,0.35,12.03,Good,Low,5.92,5.57,No,Positive,Yes +USER-08887,29,Other,8.75,0.53,1.71,3.63,Fair,Medium,6.52,3.47,No,Neutral,No +USER-08888,18,Other,3.99,6.17,2.04,3.09,Excellent,Low,6.14,4.43,Yes,Positive,Yes +USER-08889,63,Male,6.47,2.95,0.93,13.06,Fair,Low,7.88,1.69,No,Neutral,Yes +USER-08890,50,Male,10.26,7.24,3.69,8.25,Excellent,High,5.93,3.13,Yes,Positive,No +USER-08891,59,Other,6.06,2.93,1.18,6.22,Fair,Medium,6.03,1.17,Yes,Neutral,No +USER-08892,38,Female,8.94,0.68,3.98,2.71,Poor,Medium,8.02,6.02,Yes,Negative,No +USER-08893,60,Other,9.43,6.48,1.54,4.81,Good,Medium,7.83,3.86,No,Positive,No +USER-08894,65,Male,4.39,1.96,3.71,5.49,Good,Medium,5.44,6.17,Yes,Neutral,Yes +USER-08895,30,Female,1.74,0.57,1.96,7.75,Good,Medium,8.27,9.58,No,Negative,No +USER-08896,44,Other,3.2,7.85,3.88,11.44,Good,Low,7.34,9.64,Yes,Negative,Yes +USER-08897,48,Male,5.26,3.86,2.99,1.44,Fair,Medium,7.67,9.92,No,Neutral,Yes +USER-08898,20,Other,8.92,6.41,2.64,11.86,Poor,Low,4.41,7.07,Yes,Positive,No +USER-08899,39,Female,11.01,3.44,1.16,14.55,Fair,Low,6.87,1.58,No,Positive,No +USER-08900,49,Female,1.02,0.75,1.67,8.3,Fair,High,4.61,3.65,No,Negative,Yes +USER-08901,65,Other,11.07,6.69,2.93,8.1,Fair,High,8.24,9.25,No,Positive,No +USER-08902,26,Male,9.48,7.78,4.8,11.3,Excellent,Medium,5.19,7.1,Yes,Negative,Yes +USER-08903,23,Female,2.43,6.55,3.0,7.86,Excellent,Low,5.92,9.42,No,Positive,Yes +USER-08904,43,Other,9.13,4.24,4.39,1.68,Fair,Low,4.1,6.35,No,Positive,Yes +USER-08905,18,Male,8.15,7.82,4.23,11.8,Good,High,7.79,0.18,Yes,Neutral,No +USER-08906,27,Female,9.45,5.17,1.7,11.94,Excellent,Low,8.05,7.12,Yes,Positive,Yes +USER-08907,36,Other,4.92,6.19,0.38,1.64,Good,Medium,6.3,2.27,Yes,Neutral,No +USER-08908,18,Other,1.44,1.12,2.72,3.87,Excellent,High,8.07,7.5,Yes,Neutral,Yes +USER-08909,27,Female,7.24,6.28,2.29,2.38,Good,Low,6.33,0.34,No,Neutral,Yes +USER-08910,59,Female,6.67,3.74,3.8,8.26,Good,High,8.41,4.33,Yes,Positive,Yes +USER-08911,60,Other,10.04,7.63,3.59,9.12,Excellent,High,4.83,7.67,No,Neutral,No +USER-08912,42,Female,1.53,0.21,4.81,4.03,Poor,Medium,7.23,8.89,No,Neutral,No +USER-08913,64,Male,6.94,5.76,1.79,14.93,Poor,High,8.61,7.09,No,Neutral,No +USER-08914,47,Female,5.84,3.65,2.84,5.57,Excellent,High,7.03,9.94,Yes,Neutral,No +USER-08915,28,Male,1.61,6.56,2.9,1.49,Fair,High,5.16,3.77,No,Negative,No +USER-08916,21,Other,2.88,3.64,3.43,14.97,Poor,Low,4.29,3.33,No,Negative,No +USER-08917,33,Male,2.78,0.58,0.24,10.93,Excellent,Low,6.23,4.3,No,Neutral,No +USER-08918,39,Female,3.6,3.74,3.63,3.52,Poor,High,6.34,5.59,No,Neutral,Yes +USER-08919,65,Female,9.56,4.02,3.48,9.33,Excellent,Medium,7.16,3.57,No,Neutral,No +USER-08920,58,Other,2.32,3.78,4.83,2.93,Poor,High,6.73,0.54,No,Positive,Yes +USER-08921,59,Male,6.04,5.16,3.82,2.9,Poor,Low,6.66,4.41,No,Neutral,Yes +USER-08922,36,Male,8.46,7.25,0.35,2.35,Fair,High,8.14,7.56,No,Negative,Yes +USER-08923,41,Male,4.46,6.26,1.78,3.08,Fair,Medium,7.54,2.27,No,Neutral,Yes +USER-08924,22,Female,5.87,4.64,1.96,9.97,Fair,Medium,5.68,1.52,No,Negative,No +USER-08925,57,Female,2.31,6.25,4.2,12.09,Fair,Low,4.34,1.11,No,Neutral,Yes +USER-08926,40,Female,8.04,0.85,3.5,5.32,Fair,High,7.46,3.7,Yes,Positive,Yes +USER-08927,35,Male,5.0,7.24,1.34,12.54,Excellent,High,8.33,6.56,No,Positive,No +USER-08928,31,Male,9.64,7.75,2.91,13.52,Excellent,Medium,8.97,0.25,Yes,Neutral,Yes +USER-08929,37,Other,4.27,0.12,2.83,4.5,Excellent,Low,5.34,9.3,No,Positive,Yes +USER-08930,18,Male,1.77,7.0,4.52,7.26,Poor,Medium,8.32,7.6,No,Positive,Yes +USER-08931,27,Female,6.19,7.59,3.77,6.93,Good,High,8.95,5.53,No,Neutral,Yes +USER-08932,38,Other,9.35,3.19,3.93,5.33,Good,Medium,8.61,1.39,Yes,Positive,Yes +USER-08933,53,Male,5.87,0.59,0.69,8.47,Good,Medium,6.32,5.52,Yes,Positive,Yes +USER-08934,61,Female,5.61,2.64,2.0,8.39,Fair,Low,8.49,7.43,No,Positive,Yes +USER-08935,29,Female,9.98,4.73,3.3,9.01,Fair,Low,4.29,4.83,Yes,Positive,No +USER-08936,47,Female,4.79,6.71,0.65,14.44,Excellent,Medium,4.56,2.4,No,Positive,Yes +USER-08937,47,Other,7.77,0.4,3.57,9.88,Poor,High,8.6,1.71,Yes,Negative,No +USER-08938,42,Female,8.13,5.17,4.44,12.2,Poor,Low,7.66,5.72,No,Positive,Yes +USER-08939,46,Female,8.14,6.39,4.34,11.81,Good,High,7.87,4.75,Yes,Neutral,No +USER-08940,54,Male,5.06,0.33,3.26,12.81,Poor,Medium,4.24,1.12,Yes,Negative,No +USER-08941,64,Male,4.24,4.88,2.29,10.51,Good,Medium,5.65,2.39,No,Neutral,Yes +USER-08942,24,Other,4.25,3.21,0.75,1.13,Good,Medium,8.84,8.28,No,Negative,No +USER-08943,28,Female,11.01,0.26,0.2,11.78,Excellent,Low,6.55,7.07,Yes,Negative,No +USER-08944,38,Other,3.72,4.12,3.52,7.57,Fair,Low,4.02,3.63,Yes,Positive,Yes +USER-08945,33,Other,5.57,3.71,0.86,1.31,Good,Low,4.88,3.36,Yes,Neutral,No +USER-08946,20,Other,1.4,3.02,0.74,11.96,Excellent,High,8.57,5.05,Yes,Positive,Yes +USER-08947,46,Male,4.09,0.19,4.1,5.42,Good,Low,6.49,2.89,No,Neutral,No +USER-08948,20,Male,5.09,5.09,0.36,8.39,Poor,High,7.0,4.05,Yes,Neutral,Yes +USER-08949,60,Female,6.2,0.91,0.95,12.11,Poor,Low,5.82,6.53,Yes,Positive,Yes +USER-08950,26,Other,4.69,2.56,1.95,14.42,Good,Low,5.43,5.55,Yes,Neutral,Yes +USER-08951,58,Female,9.13,2.51,3.28,14.59,Excellent,Low,6.49,8.9,Yes,Negative,Yes +USER-08952,25,Female,5.01,6.86,3.99,14.34,Poor,Low,8.29,2.53,No,Negative,Yes +USER-08953,25,Male,6.74,6.84,2.47,13.18,Excellent,High,4.73,6.02,No,Neutral,No +USER-08954,60,Other,8.17,5.22,4.99,2.48,Poor,Low,4.58,1.05,No,Negative,No +USER-08955,35,Female,5.5,7.33,3.25,13.02,Good,High,6.23,0.63,No,Negative,Yes +USER-08956,19,Male,5.43,3.63,1.39,4.01,Good,Low,7.88,3.63,No,Neutral,No +USER-08957,50,Female,3.17,3.09,0.41,14.16,Fair,Low,4.65,1.32,Yes,Positive,Yes +USER-08958,18,Other,11.72,1.53,4.4,14.16,Good,Medium,7.1,3.43,No,Neutral,No +USER-08959,21,Other,5.96,4.66,2.23,8.87,Excellent,Medium,6.22,8.02,No,Positive,Yes +USER-08960,31,Female,7.06,0.69,0.47,12.58,Poor,Low,6.77,4.38,No,Positive,Yes +USER-08961,37,Female,4.25,5.31,3.79,7.52,Good,Medium,8.81,9.58,Yes,Negative,No +USER-08962,57,Male,11.56,2.52,2.42,7.08,Excellent,High,7.74,6.31,Yes,Neutral,No +USER-08963,40,Other,10.8,0.06,2.37,13.04,Good,Medium,6.4,5.92,Yes,Neutral,No +USER-08964,62,Female,6.21,4.78,4.38,7.85,Poor,High,4.58,6.21,Yes,Positive,No +USER-08965,59,Male,7.3,1.99,4.11,13.56,Fair,Low,8.84,8.85,No,Neutral,Yes +USER-08966,28,Female,1.21,7.27,4.29,11.2,Fair,Medium,7.37,2.34,Yes,Negative,Yes +USER-08967,22,Female,9.33,3.32,1.23,4.53,Excellent,High,7.43,9.52,Yes,Negative,No +USER-08968,54,Male,10.23,4.6,3.53,12.63,Fair,Medium,7.98,8.34,Yes,Negative,Yes +USER-08969,30,Other,4.5,6.81,4.84,7.99,Fair,Medium,4.01,8.71,Yes,Negative,Yes +USER-08970,48,Female,11.82,6.71,1.73,7.69,Excellent,High,8.45,9.16,No,Neutral,No +USER-08971,53,Female,3.36,5.96,2.55,4.02,Good,Medium,6.24,4.99,Yes,Neutral,Yes +USER-08972,27,Other,7.17,3.93,3.24,3.5,Good,Medium,7.75,3.15,Yes,Positive,No +USER-08973,58,Other,2.98,5.09,0.3,3.03,Poor,Low,6.95,4.11,No,Negative,No +USER-08974,30,Other,2.29,5.09,3.95,2.33,Good,High,6.98,5.77,No,Positive,No +USER-08975,42,Female,9.56,0.3,0.68,8.96,Excellent,High,7.17,5.81,Yes,Positive,Yes +USER-08976,39,Other,3.54,4.76,2.08,1.15,Excellent,High,4.05,3.62,Yes,Neutral,No +USER-08977,37,Male,2.88,3.9,2.5,4.93,Poor,Medium,8.94,4.16,Yes,Negative,Yes +USER-08978,38,Male,1.67,2.14,2.11,7.41,Fair,Medium,4.95,0.04,Yes,Positive,No +USER-08979,55,Male,10.42,0.81,4.08,8.61,Fair,Medium,8.57,4.03,No,Positive,Yes +USER-08980,25,Other,1.54,1.7,0.85,4.19,Poor,High,6.87,1.97,Yes,Neutral,No +USER-08981,22,Male,11.99,6.95,3.11,2.96,Poor,Low,6.92,2.58,Yes,Neutral,No +USER-08982,19,Male,5.37,7.81,4.16,13.76,Good,Low,6.2,1.41,No,Positive,No +USER-08983,55,Female,4.52,4.28,0.51,11.16,Poor,High,4.79,8.91,Yes,Positive,Yes +USER-08984,60,Female,8.09,7.13,1.61,9.09,Poor,Medium,6.44,5.06,Yes,Negative,Yes +USER-08985,20,Female,4.01,5.85,4.82,7.38,Excellent,Medium,4.05,3.78,Yes,Negative,No +USER-08986,22,Male,5.11,1.5,0.58,8.15,Excellent,Low,4.33,4.9,Yes,Neutral,No +USER-08987,44,Other,1.82,0.07,2.34,10.7,Poor,High,8.05,6.02,No,Positive,No +USER-08988,49,Male,7.79,2.48,4.93,7.58,Poor,High,7.49,4.83,Yes,Positive,Yes +USER-08989,64,Male,3.52,0.35,3.35,13.14,Good,Low,5.78,7.45,Yes,Negative,Yes +USER-08990,34,Male,11.09,7.73,1.34,14.55,Good,Medium,6.57,3.39,Yes,Neutral,No +USER-08991,18,Female,11.31,7.09,2.02,3.63,Poor,Medium,8.21,2.32,Yes,Neutral,No +USER-08992,60,Male,10.61,6.8,2.43,1.14,Poor,Low,8.74,2.68,Yes,Negative,Yes +USER-08993,63,Female,7.43,7.32,2.03,14.31,Poor,High,7.01,3.76,Yes,Positive,No +USER-08994,19,Other,11.46,2.37,3.79,3.44,Poor,High,7.88,1.35,No,Negative,Yes +USER-08995,34,Other,11.7,6.31,4.58,9.35,Poor,Medium,8.18,2.38,Yes,Neutral,Yes +USER-08996,58,Other,1.74,3.6,1.15,7.73,Excellent,Low,5.59,6.42,No,Neutral,No +USER-08997,39,Male,1.85,4.6,4.6,6.15,Excellent,High,6.87,3.07,No,Negative,No +USER-08998,40,Female,11.44,2.61,2.82,5.95,Fair,High,7.29,2.54,No,Positive,No +USER-08999,59,Male,10.25,1.75,3.7,11.26,Good,Medium,8.03,5.55,Yes,Negative,No +USER-09000,58,Female,6.82,3.44,4.86,13.28,Good,Medium,6.36,9.63,No,Negative,No +USER-09001,42,Female,10.0,2.66,3.59,5.76,Good,High,8.83,1.92,Yes,Neutral,No +USER-09002,37,Female,11.5,1.82,3.93,6.41,Fair,High,4.56,7.34,No,Negative,No +USER-09003,59,Female,9.72,1.84,3.72,1.24,Good,Medium,5.27,8.39,Yes,Positive,Yes +USER-09004,53,Male,11.3,1.04,1.01,13.3,Excellent,Low,8.23,9.75,Yes,Neutral,No +USER-09005,51,Female,2.76,0.03,2.41,11.02,Fair,High,5.89,2.92,No,Neutral,Yes +USER-09006,56,Female,5.47,1.27,4.78,3.86,Fair,Low,5.94,0.37,No,Neutral,No +USER-09007,40,Male,2.44,2.84,1.83,6.8,Excellent,Low,6.29,7.87,No,Neutral,No +USER-09008,45,Male,6.82,5.26,0.25,2.82,Fair,High,8.32,3.59,Yes,Neutral,Yes +USER-09009,30,Male,10.76,2.77,3.4,10.47,Good,Medium,8.83,0.26,No,Positive,No +USER-09010,57,Male,4.09,7.92,3.29,3.29,Poor,Medium,8.87,8.07,Yes,Positive,No +USER-09011,57,Male,6.04,4.62,3.65,14.5,Poor,High,5.9,4.01,No,Neutral,No +USER-09012,59,Other,2.07,5.97,2.2,14.34,Excellent,High,7.69,5.96,Yes,Neutral,No +USER-09013,39,Male,1.92,5.92,1.39,1.03,Good,Low,6.9,4.68,Yes,Positive,Yes +USER-09014,50,Male,11.02,1.85,4.42,14.6,Good,High,4.78,3.34,Yes,Negative,No +USER-09015,33,Other,1.33,6.63,0.45,1.91,Fair,Low,7.07,4.19,No,Neutral,No +USER-09016,27,Other,1.95,6.26,0.17,2.24,Fair,Low,6.08,2.45,No,Neutral,No +USER-09017,18,Other,8.12,7.53,0.31,11.22,Fair,Low,4.46,8.69,No,Negative,Yes +USER-09018,42,Other,1.73,3.57,0.65,8.82,Good,Low,5.59,9.91,No,Neutral,Yes +USER-09019,57,Male,8.88,1.26,2.55,2.94,Poor,Low,7.88,1.89,Yes,Negative,No +USER-09020,49,Female,10.64,2.7,0.4,12.15,Good,High,5.7,1.01,No,Negative,Yes +USER-09021,62,Female,10.46,7.31,4.93,13.2,Excellent,Medium,4.52,9.87,Yes,Positive,Yes +USER-09022,35,Male,3.61,7.14,4.14,3.53,Good,High,5.72,0.27,No,Positive,Yes +USER-09023,44,Male,3.28,6.02,2.59,6.5,Good,High,7.24,7.98,Yes,Negative,No +USER-09024,41,Female,10.84,7.62,0.57,13.12,Excellent,Low,5.54,8.58,No,Negative,Yes +USER-09025,44,Male,2.2,6.58,2.98,11.22,Fair,Medium,8.77,7.26,Yes,Neutral,Yes +USER-09026,55,Other,4.8,0.0,1.21,3.62,Good,Medium,7.52,9.9,No,Negative,No +USER-09027,38,Male,9.29,0.86,4.47,6.51,Good,Low,5.35,9.87,No,Positive,Yes +USER-09028,31,Male,4.49,2.61,1.68,7.8,Fair,Medium,4.76,1.86,Yes,Positive,Yes +USER-09029,51,Female,4.19,1.14,4.1,10.27,Fair,Medium,5.59,6.93,No,Positive,No +USER-09030,64,Male,2.86,4.41,4.16,13.21,Excellent,Low,4.13,8.55,Yes,Neutral,Yes +USER-09031,34,Male,6.23,4.64,2.09,8.95,Poor,Low,4.13,6.84,Yes,Neutral,No +USER-09032,48,Other,4.18,0.73,4.96,3.48,Excellent,Low,5.81,8.32,No,Neutral,No +USER-09033,58,Other,11.6,1.53,1.22,7.84,Excellent,Low,7.12,6.01,Yes,Neutral,Yes +USER-09034,52,Male,3.53,6.51,0.85,11.25,Fair,High,6.27,8.01,No,Negative,Yes +USER-09035,18,Male,10.22,2.73,1.67,9.39,Poor,High,4.44,5.32,No,Neutral,Yes +USER-09036,65,Other,7.09,6.46,1.75,8.93,Poor,Low,8.98,3.18,Yes,Negative,No +USER-09037,26,Male,5.07,4.34,4.09,10.05,Poor,Low,5.75,4.2,Yes,Positive,Yes +USER-09038,34,Male,4.04,7.27,0.14,3.83,Good,Medium,4.23,8.86,No,Negative,No +USER-09039,33,Female,9.73,6.56,0.37,5.61,Good,Low,5.82,5.14,Yes,Positive,No +USER-09040,29,Other,1.3,6.05,0.43,1.57,Good,Low,4.7,9.99,Yes,Negative,Yes +USER-09041,50,Male,4.19,1.87,3.94,4.28,Poor,Medium,4.0,9.25,No,Neutral,Yes +USER-09042,53,Female,9.22,3.59,0.04,9.84,Good,Low,6.67,4.33,Yes,Neutral,No +USER-09043,35,Female,7.22,6.81,3.8,5.33,Good,Low,4.46,4.29,Yes,Neutral,Yes +USER-09044,24,Female,5.34,7.36,3.84,9.83,Good,Medium,6.93,6.12,No,Positive,No +USER-09045,61,Female,5.64,4.62,0.17,3.77,Fair,Low,5.01,3.8,Yes,Positive,No +USER-09046,44,Male,11.01,3.52,3.59,5.07,Poor,Low,4.25,3.35,No,Neutral,Yes +USER-09047,45,Female,4.53,3.64,3.69,9.56,Excellent,High,4.11,4.19,Yes,Positive,Yes +USER-09048,62,Other,4.11,0.34,4.0,11.62,Poor,Low,7.09,8.81,No,Neutral,No +USER-09049,59,Other,6.46,3.62,3.86,8.1,Fair,Medium,4.47,9.86,Yes,Positive,No +USER-09050,61,Other,11.45,5.02,0.94,13.37,Fair,Low,5.49,8.64,Yes,Negative,Yes +USER-09051,36,Female,8.46,7.81,4.43,8.24,Fair,Low,6.21,8.93,No,Neutral,Yes +USER-09052,29,Female,3.1,0.88,1.23,12.0,Poor,Low,6.65,4.84,Yes,Negative,No +USER-09053,53,Female,1.75,7.79,0.5,4.33,Excellent,High,4.78,3.94,Yes,Positive,Yes +USER-09054,39,Male,8.25,2.45,1.15,1.34,Poor,High,4.27,9.05,Yes,Neutral,Yes +USER-09055,62,Female,11.86,1.24,3.06,8.22,Fair,Medium,7.12,8.91,Yes,Positive,No +USER-09056,21,Other,6.67,5.06,3.54,4.47,Fair,Low,6.23,8.47,No,Negative,No +USER-09057,49,Male,11.99,4.67,3.71,8.09,Fair,Medium,6.27,2.39,Yes,Positive,No +USER-09058,53,Male,2.41,3.86,3.23,5.37,Excellent,High,4.6,5.98,Yes,Neutral,Yes +USER-09059,59,Other,3.27,0.91,1.48,8.31,Good,High,5.94,0.09,Yes,Negative,Yes +USER-09060,59,Female,7.69,7.54,2.42,9.49,Poor,Low,8.06,9.42,Yes,Negative,Yes +USER-09061,24,Other,4.95,2.15,4.48,6.76,Poor,High,8.81,7.47,Yes,Positive,Yes +USER-09062,46,Other,2.24,2.45,3.41,5.85,Excellent,Medium,8.55,5.6,Yes,Neutral,No +USER-09063,38,Female,2.42,3.1,1.02,6.87,Poor,Medium,5.87,8.83,No,Positive,No +USER-09064,50,Other,4.26,4.92,3.57,10.17,Good,Medium,5.28,6.13,No,Neutral,No +USER-09065,56,Male,11.38,5.79,4.62,12.51,Excellent,Low,4.09,5.57,No,Positive,No +USER-09066,38,Male,2.7,6.98,2.9,12.16,Fair,Low,5.44,1.66,Yes,Negative,Yes +USER-09067,62,Male,2.1,4.7,2.8,3.43,Excellent,Medium,4.52,9.37,No,Neutral,No +USER-09068,58,Male,1.59,6.96,2.99,7.67,Poor,Low,7.51,1.43,Yes,Negative,No +USER-09069,23,Female,3.61,7.03,2.22,9.54,Poor,Low,6.35,2.14,No,Negative,No +USER-09070,43,Other,11.98,3.02,3.33,6.79,Fair,Medium,4.18,8.33,Yes,Positive,Yes +USER-09071,20,Other,8.33,4.9,3.12,5.32,Fair,Low,7.72,3.5,Yes,Negative,Yes +USER-09072,56,Female,9.54,4.01,3.16,11.09,Poor,Medium,4.99,8.05,No,Positive,Yes +USER-09073,22,Female,2.53,7.06,2.63,6.35,Excellent,High,8.11,8.62,No,Neutral,Yes +USER-09074,27,Other,11.98,5.92,2.94,4.58,Good,High,7.29,5.05,No,Positive,No +USER-09075,20,Male,3.35,6.31,1.7,1.39,Fair,Medium,4.56,4.83,No,Neutral,No +USER-09076,25,Other,5.51,1.88,0.3,14.79,Excellent,Low,8.28,0.65,Yes,Positive,Yes +USER-09077,61,Other,4.95,7.32,2.8,9.99,Good,Medium,6.68,5.74,Yes,Positive,Yes +USER-09078,62,Male,9.53,1.18,1.19,6.41,Fair,Low,8.71,1.2,Yes,Neutral,No +USER-09079,32,Male,5.21,7.49,1.33,1.63,Poor,Medium,8.8,3.8,No,Neutral,Yes +USER-09080,43,Other,6.65,1.27,3.92,1.61,Good,Medium,6.01,5.79,Yes,Negative,Yes +USER-09081,39,Female,7.35,6.61,0.7,12.74,Poor,Medium,5.1,6.35,Yes,Neutral,Yes +USER-09082,45,Other,11.01,3.67,2.84,14.81,Excellent,Medium,5.12,0.43,No,Positive,Yes +USER-09083,41,Other,8.64,4.85,0.23,11.12,Good,Low,6.22,1.57,Yes,Neutral,No +USER-09084,44,Male,3.94,7.41,2.29,3.69,Excellent,High,5.94,0.99,No,Negative,No +USER-09085,40,Female,7.03,6.08,4.26,6.54,Fair,Medium,6.44,0.17,Yes,Positive,No +USER-09086,52,Male,6.35,4.68,1.13,7.61,Fair,Medium,4.4,8.17,Yes,Neutral,No +USER-09087,35,Female,8.13,2.23,2.74,14.91,Fair,High,6.46,9.26,No,Positive,Yes +USER-09088,52,Other,9.05,6.67,3.94,11.73,Poor,Low,5.93,3.67,Yes,Positive,No +USER-09089,42,Female,2.74,2.79,0.26,4.34,Good,Low,5.53,1.16,No,Positive,No +USER-09090,53,Male,10.57,7.28,3.45,1.4,Fair,Low,5.65,9.81,No,Neutral,No +USER-09091,36,Male,1.75,2.86,2.94,5.11,Good,Low,4.2,3.97,No,Positive,No +USER-09092,47,Other,6.12,2.91,1.85,14.41,Poor,Low,4.26,3.38,Yes,Neutral,Yes +USER-09093,39,Male,3.5,0.56,1.44,7.47,Poor,Low,7.63,9.93,No,Neutral,No +USER-09094,22,Female,6.45,3.54,2.62,2.63,Excellent,Medium,5.57,9.23,No,Positive,No +USER-09095,57,Other,7.81,0.99,2.57,2.31,Good,Medium,7.52,5.7,No,Neutral,Yes +USER-09096,21,Other,3.19,2.94,0.51,7.75,Good,Medium,6.4,8.02,Yes,Neutral,Yes +USER-09097,64,Female,2.21,6.98,3.18,14.38,Excellent,Low,8.94,3.01,No,Neutral,No +USER-09098,41,Male,11.34,0.58,2.19,8.24,Excellent,Low,5.48,1.09,No,Positive,Yes +USER-09099,45,Female,5.03,3.32,2.55,12.0,Poor,Low,6.99,5.56,No,Positive,Yes +USER-09100,21,Other,4.87,2.09,2.92,6.49,Poor,Low,5.01,0.07,Yes,Neutral,Yes +USER-09101,41,Female,4.41,7.59,4.93,10.07,Fair,High,4.05,8.26,Yes,Neutral,No +USER-09102,64,Female,10.34,6.23,0.29,1.28,Poor,High,8.17,6.56,Yes,Negative,No +USER-09103,30,Female,7.78,2.64,1.87,2.44,Fair,Low,6.78,7.0,No,Neutral,No +USER-09104,29,Other,2.48,2.85,3.6,6.16,Fair,High,6.0,1.91,Yes,Positive,Yes +USER-09105,45,Female,9.54,6.33,1.5,13.02,Good,High,4.9,7.82,Yes,Negative,No +USER-09106,50,Male,4.64,3.23,3.55,12.75,Good,Low,5.67,1.72,No,Positive,Yes +USER-09107,37,Male,1.36,2.67,4.65,14.48,Excellent,Low,7.52,4.94,Yes,Neutral,Yes +USER-09108,29,Female,5.01,0.05,2.39,5.92,Excellent,High,7.54,0.92,Yes,Neutral,Yes +USER-09109,20,Male,4.73,0.92,3.75,11.82,Good,Low,6.52,7.07,No,Negative,No +USER-09110,58,Other,6.28,6.92,4.14,10.52,Poor,Low,8.59,4.4,No,Positive,Yes +USER-09111,65,Other,6.98,1.63,3.47,4.05,Good,High,7.88,2.31,No,Negative,Yes +USER-09112,46,Other,8.62,1.41,0.96,8.23,Good,Medium,7.44,2.02,Yes,Negative,Yes +USER-09113,34,Female,8.82,0.94,4.8,12.7,Good,High,8.54,6.71,No,Negative,Yes +USER-09114,61,Female,8.52,2.03,2.2,9.48,Good,Low,6.93,5.89,No,Positive,No +USER-09115,26,Male,6.9,6.3,2.76,12.29,Poor,High,4.6,9.55,No,Positive,Yes +USER-09116,48,Other,3.63,0.23,3.59,10.04,Poor,Low,6.32,6.1,Yes,Negative,Yes +USER-09117,37,Male,10.84,4.39,4.82,4.26,Good,High,5.72,3.39,No,Neutral,Yes +USER-09118,50,Other,7.41,6.84,5.0,9.96,Poor,Medium,8.04,2.41,Yes,Negative,Yes +USER-09119,19,Female,9.24,5.17,4.44,12.63,Good,Low,5.97,7.94,Yes,Neutral,No +USER-09120,58,Male,1.51,4.33,0.36,6.71,Good,High,4.3,1.59,No,Positive,No +USER-09121,27,Male,9.73,6.89,2.92,5.25,Fair,Medium,8.23,8.77,Yes,Negative,Yes +USER-09122,30,Male,4.05,3.75,4.0,11.99,Good,High,4.88,8.04,No,Positive,Yes +USER-09123,25,Other,3.28,2.21,3.4,14.83,Fair,High,6.54,9.75,No,Negative,Yes +USER-09124,62,Female,4.97,3.76,1.35,11.85,Excellent,Medium,4.2,3.44,No,Neutral,No +USER-09125,24,Male,9.14,5.35,4.83,5.94,Excellent,Low,8.44,9.16,Yes,Neutral,Yes +USER-09126,33,Male,7.85,2.0,2.18,2.19,Good,High,8.38,2.16,Yes,Positive,No +USER-09127,43,Female,11.81,4.24,4.08,7.8,Fair,Medium,8.3,4.61,Yes,Positive,Yes +USER-09128,28,Female,2.02,0.67,4.96,3.4,Fair,High,5.83,4.86,No,Positive,No +USER-09129,34,Female,6.99,1.91,0.04,1.16,Poor,Medium,6.53,6.78,Yes,Negative,No +USER-09130,44,Male,11.37,0.38,4.54,14.81,Good,Medium,5.06,5.6,Yes,Neutral,Yes +USER-09131,61,Other,8.71,7.6,3.39,13.17,Excellent,High,5.56,9.84,No,Negative,No +USER-09132,57,Male,8.63,3.14,3.18,4.51,Good,Low,5.91,8.9,Yes,Negative,Yes +USER-09133,50,Female,2.11,2.5,4.91,11.19,Excellent,Medium,5.77,3.36,Yes,Positive,Yes +USER-09134,39,Female,3.27,4.22,3.17,10.27,Poor,Low,4.61,4.08,No,Negative,No +USER-09135,65,Male,8.84,7.54,2.07,5.54,Fair,Medium,5.29,7.55,No,Negative,No +USER-09136,38,Male,1.7,2.13,1.1,12.59,Poor,Medium,6.91,9.17,Yes,Negative,No +USER-09137,64,Other,4.57,1.27,2.93,9.83,Good,Medium,4.73,5.09,Yes,Positive,Yes +USER-09138,64,Male,1.32,6.59,2.86,12.75,Poor,High,5.42,1.82,Yes,Negative,Yes +USER-09139,27,Other,2.07,4.85,0.22,1.66,Poor,Low,7.57,8.17,No,Neutral,No +USER-09140,36,Other,2.69,6.63,0.48,8.66,Poor,High,8.68,5.84,Yes,Neutral,No +USER-09141,23,Female,11.67,6.05,2.96,9.04,Fair,Low,6.22,1.93,No,Negative,Yes +USER-09142,59,Female,4.79,1.61,2.64,9.04,Good,Medium,8.14,2.29,Yes,Negative,No +USER-09143,45,Male,10.14,5.87,1.72,12.42,Good,Low,4.2,2.56,No,Positive,Yes +USER-09144,60,Female,7.06,3.86,0.02,2.26,Fair,Low,6.4,9.22,No,Positive,No +USER-09145,26,Other,7.54,7.75,4.88,4.3,Excellent,High,4.87,4.74,No,Positive,Yes +USER-09146,53,Other,3.85,0.62,2.48,10.47,Good,Low,7.88,6.21,Yes,Negative,No +USER-09147,40,Other,10.13,3.93,1.68,3.39,Good,Low,7.4,4.19,No,Neutral,Yes +USER-09148,20,Other,2.75,0.55,3.65,10.34,Poor,Low,7.24,7.54,Yes,Neutral,Yes +USER-09149,28,Male,3.19,0.95,4.5,7.83,Poor,Medium,6.17,6.42,Yes,Neutral,No +USER-09150,52,Male,5.16,5.47,0.43,6.03,Poor,High,7.39,1.79,Yes,Negative,No +USER-09151,53,Male,8.23,4.0,3.91,5.54,Fair,High,6.7,1.87,No,Neutral,Yes +USER-09152,23,Other,3.56,5.99,3.46,7.53,Poor,High,8.67,6.81,Yes,Negative,Yes +USER-09153,65,Other,6.98,7.66,1.34,11.13,Fair,Low,5.53,6.86,No,Neutral,Yes +USER-09154,29,Male,3.76,7.5,1.59,13.78,Excellent,Medium,4.76,3.61,No,Positive,No +USER-09155,30,Female,11.74,4.69,1.34,3.03,Good,High,4.75,3.07,Yes,Negative,Yes +USER-09156,33,Male,9.75,1.98,3.58,4.18,Fair,Low,8.29,5.94,No,Positive,No +USER-09157,44,Other,8.94,2.11,1.77,9.03,Good,High,4.2,0.32,No,Neutral,No +USER-09158,30,Female,10.01,2.12,3.41,11.61,Fair,Low,4.1,5.08,Yes,Neutral,Yes +USER-09159,57,Male,8.79,7.82,1.53,7.84,Good,Low,8.63,0.97,Yes,Negative,No +USER-09160,47,Other,6.24,3.22,1.36,12.72,Good,Medium,5.51,2.57,No,Positive,No +USER-09161,25,Other,5.15,0.93,1.84,11.23,Excellent,High,7.42,8.22,No,Negative,Yes +USER-09162,61,Male,7.55,1.14,4.87,11.09,Good,High,4.02,7.97,No,Negative,No +USER-09163,18,Female,2.95,6.52,0.15,9.53,Fair,High,6.27,8.5,No,Negative,Yes +USER-09164,22,Other,9.82,7.84,1.47,4.17,Excellent,High,8.13,2.97,No,Neutral,No +USER-09165,19,Male,6.42,5.48,2.58,11.52,Fair,Medium,8.14,8.8,No,Positive,No +USER-09166,19,Male,1.74,0.72,1.55,13.04,Excellent,Medium,5.76,2.23,No,Neutral,Yes +USER-09167,40,Male,10.92,6.94,4.03,7.28,Excellent,High,5.98,6.82,Yes,Negative,No +USER-09168,61,Other,6.46,0.79,3.43,13.65,Good,High,6.03,0.34,No,Neutral,Yes +USER-09169,39,Male,8.64,0.14,4.13,3.08,Poor,High,4.11,5.41,No,Neutral,No +USER-09170,27,Male,10.16,0.31,2.45,11.65,Excellent,High,7.87,5.38,No,Positive,No +USER-09171,65,Other,10.15,6.16,3.75,13.12,Fair,High,6.47,3.54,No,Negative,Yes +USER-09172,57,Male,8.44,3.55,4.8,2.49,Poor,High,6.72,7.48,Yes,Negative,No +USER-09173,42,Female,11.82,4.99,3.6,3.73,Good,High,5.54,9.57,Yes,Positive,Yes +USER-09174,31,Other,4.7,4.46,0.12,8.09,Poor,Low,8.34,4.06,No,Neutral,Yes +USER-09175,48,Other,4.41,3.33,2.45,11.82,Poor,High,8.28,5.96,Yes,Neutral,Yes +USER-09176,36,Other,7.61,1.59,2.74,12.62,Excellent,Low,5.4,9.65,Yes,Positive,No +USER-09177,27,Female,8.88,4.82,0.62,9.91,Poor,High,8.66,4.89,No,Positive,No +USER-09178,41,Other,7.11,3.32,1.64,4.99,Fair,Medium,6.2,7.36,No,Positive,Yes +USER-09179,34,Male,6.74,7.49,3.51,10.71,Fair,Medium,6.08,3.78,No,Negative,No +USER-09180,49,Female,10.55,0.02,0.43,5.56,Poor,High,6.29,2.95,Yes,Negative,Yes +USER-09181,59,Female,7.59,6.59,3.59,9.56,Excellent,Medium,7.74,7.29,No,Neutral,Yes +USER-09182,59,Other,10.7,5.87,4.71,1.09,Poor,Low,5.66,6.25,No,Positive,No +USER-09183,54,Other,7.4,5.45,4.04,2.97,Fair,Medium,5.53,3.95,Yes,Negative,No +USER-09184,31,Other,10.04,3.16,1.32,1.13,Poor,Low,5.37,9.61,Yes,Negative,No +USER-09185,26,Female,6.95,2.44,3.84,5.33,Poor,Medium,5.36,2.62,Yes,Positive,Yes +USER-09186,57,Female,6.28,1.79,1.81,10.84,Fair,Low,7.56,8.75,Yes,Negative,Yes +USER-09187,45,Male,3.28,5.77,1.63,1.19,Good,High,6.84,1.07,Yes,Positive,No +USER-09188,23,Female,11.36,6.79,3.76,10.24,Poor,Low,6.91,5.87,Yes,Negative,Yes +USER-09189,40,Male,3.43,0.36,4.11,10.27,Good,Medium,5.87,9.87,Yes,Neutral,Yes +USER-09190,43,Male,7.58,3.09,4.3,2.94,Fair,Medium,8.84,4.59,No,Neutral,Yes +USER-09191,19,Other,3.49,5.08,4.67,4.9,Good,Low,7.93,3.08,Yes,Positive,Yes +USER-09192,18,Other,1.01,6.9,0.24,9.9,Fair,Medium,7.2,0.84,No,Negative,Yes +USER-09193,38,Other,4.48,4.29,2.61,6.49,Poor,Low,4.4,5.05,Yes,Negative,Yes +USER-09194,64,Male,5.04,5.58,1.92,4.94,Fair,Medium,4.71,0.24,Yes,Positive,No +USER-09195,21,Female,7.7,7.41,0.98,11.56,Fair,High,7.75,4.42,Yes,Negative,No +USER-09196,40,Female,6.27,2.32,2.2,4.84,Good,Medium,7.19,6.12,No,Positive,No +USER-09197,64,Other,1.97,3.7,1.64,6.2,Fair,Low,5.03,7.65,No,Positive,Yes +USER-09198,51,Other,9.95,7.22,1.24,7.03,Poor,Low,5.44,3.55,No,Neutral,No +USER-09199,60,Other,9.17,6.73,0.37,5.14,Poor,Low,8.49,2.92,Yes,Neutral,No +USER-09200,19,Female,8.93,4.97,3.23,5.65,Excellent,Medium,7.53,5.55,No,Positive,Yes +USER-09201,43,Other,9.48,1.17,0.63,3.73,Fair,High,8.4,6.63,No,Negative,No +USER-09202,64,Other,6.72,3.53,3.16,12.55,Fair,Medium,8.22,8.61,Yes,Positive,No +USER-09203,31,Female,11.16,6.57,2.51,7.82,Poor,Low,6.2,2.88,Yes,Positive,Yes +USER-09204,57,Male,5.67,4.87,2.2,11.29,Fair,Medium,8.13,6.2,No,Negative,Yes +USER-09205,60,Other,10.05,3.38,2.25,1.58,Fair,Medium,8.61,2.06,No,Positive,No +USER-09206,46,Other,1.47,7.23,2.26,1.19,Fair,Low,4.98,9.95,No,Neutral,No +USER-09207,64,Other,11.1,4.1,0.83,11.44,Fair,High,7.95,4.31,No,Negative,Yes +USER-09208,55,Male,11.62,0.69,1.44,12.01,Poor,Low,5.57,3.2,No,Positive,Yes +USER-09209,23,Other,6.87,2.9,2.07,4.34,Fair,Low,5.41,7.51,No,Positive,No +USER-09210,31,Male,10.61,5.62,0.36,14.37,Poor,Low,4.37,4.26,Yes,Negative,No +USER-09211,19,Male,8.42,2.92,2.67,10.58,Poor,Low,6.48,5.72,No,Negative,No +USER-09212,64,Female,8.33,2.61,1.5,10.76,Poor,High,4.24,2.5,No,Neutral,Yes +USER-09213,45,Female,8.33,4.66,1.79,1.5,Fair,Low,4.6,2.02,No,Neutral,Yes +USER-09214,37,Other,3.02,7.07,1.79,3.22,Good,High,5.52,6.33,Yes,Negative,No +USER-09215,36,Other,7.68,5.56,3.6,4.15,Fair,Low,8.42,3.85,No,Neutral,No +USER-09216,42,Male,6.86,6.77,0.02,9.25,Good,Low,7.49,0.69,No,Positive,Yes +USER-09217,56,Female,10.09,3.82,1.23,14.83,Excellent,Medium,4.17,1.38,Yes,Neutral,No +USER-09218,59,Female,7.3,6.08,2.95,7.16,Fair,High,5.31,5.32,Yes,Positive,Yes +USER-09219,62,Other,1.75,4.5,3.1,6.86,Excellent,Medium,4.74,4.31,Yes,Positive,Yes +USER-09220,38,Male,2.14,2.85,0.23,8.68,Poor,Low,8.92,5.76,No,Positive,Yes +USER-09221,61,Male,8.14,5.82,4.09,7.37,Good,Low,8.42,6.55,No,Negative,No +USER-09222,60,Other,9.14,5.72,4.4,2.27,Excellent,High,5.48,0.12,Yes,Neutral,Yes +USER-09223,44,Other,6.68,0.44,1.99,9.12,Poor,High,7.64,6.32,No,Negative,No +USER-09224,44,Female,5.71,4.44,0.14,4.27,Excellent,Medium,6.67,5.7,No,Neutral,Yes +USER-09225,49,Other,7.76,5.58,4.92,7.67,Excellent,High,5.96,1.49,No,Positive,Yes +USER-09226,63,Female,5.29,7.05,1.49,7.48,Good,Low,7.34,6.59,Yes,Neutral,No +USER-09227,54,Female,11.74,7.06,0.3,6.05,Fair,Low,8.43,5.44,Yes,Neutral,Yes +USER-09228,42,Female,10.68,0.27,1.35,2.19,Good,Medium,8.72,1.17,No,Positive,Yes +USER-09229,19,Other,9.6,4.46,2.21,10.13,Excellent,Low,8.96,4.85,No,Neutral,Yes +USER-09230,30,Female,11.3,5.08,3.15,3.87,Excellent,High,7.93,4.51,Yes,Neutral,Yes +USER-09231,56,Male,7.43,4.28,3.73,8.36,Poor,High,7.33,9.76,No,Positive,No +USER-09232,26,Other,3.93,3.24,0.04,8.25,Fair,Medium,6.32,3.09,No,Neutral,Yes +USER-09233,43,Other,2.54,6.74,2.13,2.42,Fair,Medium,4.11,6.1,Yes,Negative,Yes +USER-09234,25,Female,8.16,0.9,2.52,9.4,Poor,Low,8.69,9.05,No,Neutral,No +USER-09235,18,Other,11.64,7.19,0.52,8.63,Excellent,Low,8.44,4.48,No,Positive,Yes +USER-09236,61,Other,1.25,2.86,1.16,14.02,Good,High,8.5,8.23,Yes,Positive,No +USER-09237,21,Male,1.83,2.4,3.54,10.35,Good,Medium,7.28,1.06,Yes,Neutral,Yes +USER-09238,26,Other,4.38,3.78,4.42,10.2,Excellent,Low,8.93,4.59,No,Negative,Yes +USER-09239,61,Male,5.33,4.96,1.57,14.34,Poor,Low,4.8,8.73,Yes,Neutral,No +USER-09240,19,Female,4.71,2.56,1.79,11.74,Excellent,Low,6.5,8.62,Yes,Positive,Yes +USER-09241,57,Other,2.63,4.07,0.65,1.41,Good,Medium,5.16,9.15,Yes,Positive,No +USER-09242,19,Other,6.78,4.42,3.16,9.32,Fair,Medium,8.99,3.28,No,Negative,No +USER-09243,39,Female,9.22,4.89,1.87,13.7,Poor,Medium,4.89,9.58,No,Positive,Yes +USER-09244,46,Female,11.0,4.21,4.46,12.53,Poor,Medium,6.2,1.33,Yes,Positive,Yes +USER-09245,50,Other,1.35,0.91,2.73,9.93,Fair,High,8.8,9.76,Yes,Positive,Yes +USER-09246,38,Other,11.85,3.67,0.33,5.94,Excellent,Medium,5.93,5.59,No,Neutral,Yes +USER-09247,56,Other,3.98,2.15,0.65,9.47,Excellent,Medium,5.31,9.77,No,Positive,No +USER-09248,60,Female,9.05,6.11,4.5,6.94,Excellent,Medium,5.29,9.27,Yes,Negative,No +USER-09249,41,Other,4.21,7.19,3.03,2.45,Fair,Medium,4.95,0.75,No,Neutral,Yes +USER-09250,23,Female,6.68,6.31,3.44,7.52,Excellent,Medium,7.79,0.19,Yes,Neutral,No +USER-09251,60,Other,2.21,2.1,0.78,3.42,Excellent,Medium,7.09,2.08,Yes,Positive,Yes +USER-09252,60,Other,9.08,5.38,0.09,10.27,Good,High,8.43,3.64,Yes,Negative,No +USER-09253,49,Male,2.0,4.77,0.95,7.73,Good,Low,4.9,0.24,No,Neutral,Yes +USER-09254,31,Male,4.66,3.53,1.91,13.31,Poor,Medium,4.48,0.48,No,Neutral,No +USER-09255,44,Female,11.13,1.07,2.49,11.18,Good,Low,6.24,4.22,Yes,Negative,No +USER-09256,28,Other,10.72,6.5,1.35,6.92,Good,Low,6.4,7.64,Yes,Neutral,No +USER-09257,50,Female,2.77,5.18,1.27,7.02,Poor,High,7.59,0.21,Yes,Negative,Yes +USER-09258,63,Male,7.11,2.26,0.06,7.53,Good,High,7.71,5.04,No,Negative,No +USER-09259,64,Other,5.13,7.06,3.85,10.52,Poor,Medium,5.08,2.71,Yes,Positive,Yes +USER-09260,33,Female,2.34,2.85,2.25,4.58,Poor,Low,5.97,8.79,Yes,Neutral,No +USER-09261,40,Other,8.49,2.58,2.58,5.89,Good,Low,8.36,6.9,No,Neutral,Yes +USER-09262,43,Male,1.77,4.05,0.72,2.81,Good,Medium,4.26,5.73,Yes,Negative,Yes +USER-09263,51,Male,3.32,2.78,4.63,1.78,Poor,Medium,5.18,8.46,Yes,Negative,No +USER-09264,42,Male,5.22,6.86,3.27,1.86,Excellent,Medium,6.16,0.76,No,Positive,Yes +USER-09265,61,Female,2.78,6.59,1.05,1.42,Fair,Medium,8.34,3.94,Yes,Negative,No +USER-09266,49,Other,1.95,7.07,0.06,14.74,Excellent,High,5.53,9.01,No,Negative,Yes +USER-09267,42,Male,11.24,6.97,1.23,8.23,Poor,Medium,8.91,5.44,Yes,Negative,Yes +USER-09268,63,Female,10.74,7.13,2.66,3.53,Excellent,Medium,4.37,1.39,No,Neutral,No +USER-09269,22,Other,7.06,0.66,0.12,14.49,Good,Medium,5.45,2.24,No,Positive,No +USER-09270,39,Other,7.69,6.95,1.28,12.65,Good,High,6.99,5.57,Yes,Negative,Yes +USER-09271,58,Female,3.18,1.84,3.98,8.05,Fair,Medium,6.8,5.91,Yes,Negative,Yes +USER-09272,62,Male,2.06,2.4,4.38,11.32,Fair,Medium,4.46,7.54,Yes,Neutral,No +USER-09273,38,Female,4.23,1.39,4.11,2.62,Excellent,Medium,4.11,3.53,Yes,Positive,No +USER-09274,43,Male,8.9,7.46,4.03,3.82,Excellent,High,4.1,7.28,No,Neutral,Yes +USER-09275,20,Other,1.32,3.07,3.41,9.14,Fair,Low,7.59,8.91,Yes,Neutral,No +USER-09276,41,Female,5.03,2.23,2.94,5.03,Poor,Medium,8.16,9.3,No,Positive,Yes +USER-09277,24,Other,9.2,3.04,3.95,1.83,Fair,Medium,7.09,2.11,Yes,Negative,Yes +USER-09278,57,Male,3.83,2.11,3.53,1.89,Poor,Medium,6.14,0.41,Yes,Negative,No +USER-09279,53,Male,5.34,5.07,3.96,6.27,Good,Low,6.52,2.59,Yes,Positive,No +USER-09280,35,Female,3.08,3.73,4.99,4.96,Excellent,Medium,8.6,1.61,No,Positive,Yes +USER-09281,22,Female,5.41,1.76,2.43,5.23,Good,Low,7.0,0.23,Yes,Neutral,No +USER-09282,57,Male,1.01,5.93,4.5,12.14,Poor,Medium,8.76,6.19,Yes,Positive,Yes +USER-09283,22,Other,7.39,4.09,1.31,2.7,Good,Low,4.19,0.87,Yes,Neutral,Yes +USER-09284,37,Female,1.1,3.18,4.14,14.92,Fair,Medium,8.03,0.93,No,Neutral,No +USER-09285,58,Other,4.88,7.47,0.6,7.92,Good,Medium,6.94,9.54,Yes,Negative,Yes +USER-09286,39,Female,7.23,0.33,1.93,10.32,Excellent,Low,6.56,4.13,No,Negative,No +USER-09287,23,Male,8.27,7.43,3.18,11.26,Fair,High,5.11,2.67,Yes,Neutral,Yes +USER-09288,24,Other,7.69,6.28,2.49,14.88,Poor,Medium,4.94,1.06,No,Neutral,No +USER-09289,50,Female,8.61,1.4,3.15,7.27,Poor,High,6.03,3.94,No,Neutral,No +USER-09290,62,Other,10.51,0.71,4.62,4.81,Fair,High,7.46,8.2,Yes,Positive,No +USER-09291,37,Female,2.58,3.09,2.08,10.55,Good,Medium,7.84,7.38,No,Neutral,No +USER-09292,54,Male,3.66,3.95,3.71,3.36,Fair,High,7.79,8.76,No,Negative,Yes +USER-09293,43,Male,1.26,2.53,1.19,11.03,Excellent,Medium,6.85,0.23,Yes,Neutral,No +USER-09294,22,Male,5.23,6.39,2.37,12.25,Poor,Low,8.24,3.57,Yes,Neutral,Yes +USER-09295,48,Male,5.37,2.07,3.17,14.47,Excellent,High,8.67,1.41,No,Negative,Yes +USER-09296,36,Male,3.12,4.32,3.55,7.44,Poor,High,5.14,8.97,Yes,Negative,Yes +USER-09297,64,Female,7.16,2.24,0.27,14.9,Excellent,High,5.46,1.67,Yes,Positive,No +USER-09298,65,Female,10.15,1.05,1.67,9.22,Excellent,Low,6.96,8.81,No,Negative,No +USER-09299,32,Male,6.91,0.88,2.49,3.05,Good,High,7.34,7.78,Yes,Positive,Yes +USER-09300,51,Male,8.93,2.78,4.58,2.32,Excellent,Low,6.9,4.25,Yes,Positive,Yes +USER-09301,29,Male,8.39,0.85,2.26,8.79,Excellent,High,6.71,2.84,Yes,Negative,No +USER-09302,18,Male,10.53,3.73,2.48,4.36,Excellent,Medium,5.49,7.84,No,Negative,No +USER-09303,39,Male,3.95,0.02,4.22,8.55,Excellent,Medium,8.76,8.75,No,Negative,No +USER-09304,28,Female,9.24,4.89,0.44,12.15,Fair,Medium,7.32,6.5,Yes,Positive,Yes +USER-09305,32,Other,4.55,7.62,2.11,9.92,Fair,High,6.25,8.35,No,Neutral,No +USER-09306,62,Other,11.65,3.33,3.46,9.04,Excellent,High,7.1,2.55,No,Positive,Yes +USER-09307,54,Other,2.93,3.17,0.14,7.37,Fair,High,4.05,9.44,No,Positive,Yes +USER-09308,37,Male,8.39,5.54,2.62,1.91,Excellent,Medium,4.11,4.22,No,Negative,No +USER-09309,57,Other,10.16,1.04,3.98,2.3,Excellent,High,8.9,0.1,No,Neutral,Yes +USER-09310,18,Female,5.24,5.04,0.72,9.89,Fair,Medium,6.27,5.4,No,Negative,Yes +USER-09311,45,Other,1.75,6.17,0.86,14.87,Excellent,Low,8.48,6.83,No,Neutral,No +USER-09312,59,Other,8.58,4.93,2.86,3.59,Good,High,8.77,5.45,No,Positive,Yes +USER-09313,20,Female,9.38,3.36,3.49,12.26,Poor,High,7.84,7.73,Yes,Negative,Yes +USER-09314,40,Other,4.45,3.76,4.02,8.62,Excellent,High,7.27,6.84,No,Negative,Yes +USER-09315,58,Female,4.1,7.66,3.69,7.02,Fair,Medium,8.35,2.08,No,Negative,Yes +USER-09316,56,Female,9.85,5.2,0.82,11.83,Poor,Medium,6.58,7.42,No,Negative,No +USER-09317,24,Male,2.66,4.45,1.14,14.73,Fair,Medium,7.72,1.21,Yes,Negative,No +USER-09318,57,Female,8.41,1.31,0.28,11.1,Excellent,Medium,5.78,1.66,Yes,Positive,No +USER-09319,52,Other,2.6,0.82,1.58,11.9,Fair,Low,4.52,6.31,No,Positive,Yes +USER-09320,37,Female,2.52,2.8,0.95,8.5,Good,Medium,4.56,3.99,Yes,Positive,Yes +USER-09321,44,Other,9.76,4.04,3.62,5.87,Fair,Medium,7.32,1.67,Yes,Positive,No +USER-09322,41,Other,1.15,6.06,2.18,9.31,Fair,High,8.99,3.41,Yes,Negative,No +USER-09323,62,Male,10.78,1.72,3.6,9.09,Excellent,High,5.8,1.14,Yes,Negative,No +USER-09324,60,Other,3.27,7.31,4.0,2.45,Poor,High,8.87,9.88,Yes,Positive,No +USER-09325,28,Female,6.85,1.34,4.09,1.52,Good,Medium,4.06,9.03,Yes,Positive,No +USER-09326,62,Female,9.62,7.52,4.33,8.69,Poor,High,7.03,2.64,No,Negative,Yes +USER-09327,65,Other,7.1,2.42,4.29,8.49,Excellent,Low,8.23,3.83,No,Positive,Yes +USER-09328,38,Male,6.1,4.33,2.8,3.11,Poor,Medium,7.58,7.12,No,Negative,No +USER-09329,50,Other,7.76,0.82,4.95,10.27,Poor,Low,6.36,9.47,No,Positive,Yes +USER-09330,58,Other,1.18,4.03,1.56,12.62,Poor,Low,8.81,9.52,Yes,Positive,Yes +USER-09331,57,Female,5.14,5.87,2.99,5.51,Excellent,Low,5.29,4.33,No,Negative,Yes +USER-09332,44,Female,3.95,0.37,0.27,13.63,Good,Low,7.19,7.13,Yes,Neutral,No +USER-09333,30,Other,1.38,5.24,4.66,9.08,Poor,Medium,4.88,3.42,Yes,Negative,Yes +USER-09334,57,Male,3.12,0.32,3.44,5.5,Poor,Medium,8.97,2.85,No,Positive,No +USER-09335,23,Male,2.31,0.76,4.19,8.53,Excellent,Medium,4.25,3.12,Yes,Negative,Yes +USER-09336,28,Female,2.14,3.6,4.54,11.31,Good,Medium,4.55,4.03,Yes,Positive,No +USER-09337,37,Female,7.29,1.23,2.85,11.43,Fair,Low,8.64,9.24,No,Negative,Yes +USER-09338,64,Other,6.09,5.41,2.37,1.38,Fair,High,5.83,2.62,No,Neutral,Yes +USER-09339,41,Male,5.0,3.04,3.73,2.98,Poor,Medium,4.04,6.09,Yes,Neutral,No +USER-09340,52,Male,10.11,4.73,4.84,9.92,Good,Medium,4.28,4.32,Yes,Positive,Yes +USER-09341,21,Female,7.31,5.1,0.93,2.48,Good,Low,5.84,5.45,No,Positive,Yes +USER-09342,58,Other,8.61,4.86,4.95,7.78,Fair,High,8.98,5.47,No,Positive,Yes +USER-09343,30,Female,9.41,7.65,4.04,3.58,Good,High,7.55,4.27,Yes,Negative,Yes +USER-09344,39,Female,6.94,0.42,2.12,3.35,Good,High,6.47,4.77,Yes,Positive,No +USER-09345,20,Other,11.54,4.56,3.23,13.63,Poor,Low,8.01,2.45,Yes,Negative,Yes +USER-09346,30,Female,1.49,5.68,2.93,11.78,Excellent,High,5.64,3.56,Yes,Positive,Yes +USER-09347,60,Male,9.62,3.38,1.45,12.11,Poor,Low,4.83,8.25,Yes,Negative,No +USER-09348,65,Other,10.41,0.53,4.76,8.27,Excellent,Low,8.73,9.29,Yes,Negative,Yes +USER-09349,20,Female,4.69,2.72,1.68,7.31,Excellent,Low,5.22,3.16,Yes,Negative,Yes +USER-09350,50,Female,5.14,4.57,4.39,1.48,Fair,High,4.58,9.02,Yes,Negative,No +USER-09351,57,Female,1.16,5.72,4.26,13.06,Fair,Medium,4.99,5.02,No,Negative,Yes +USER-09352,54,Other,10.29,2.54,0.74,8.3,Good,Medium,6.44,2.95,No,Negative,Yes +USER-09353,51,Male,4.7,3.12,1.5,7.15,Poor,Low,6.62,3.68,No,Negative,Yes +USER-09354,46,Male,1.73,4.39,0.51,2.66,Poor,Low,5.39,2.06,No,Negative,No +USER-09355,49,Other,4.59,2.65,4.52,7.79,Excellent,Medium,8.68,2.24,No,Neutral,No +USER-09356,36,Male,10.25,6.2,1.14,10.56,Poor,Low,6.9,9.3,Yes,Neutral,Yes +USER-09357,47,Female,5.19,2.2,4.05,11.62,Fair,Low,8.51,5.34,No,Neutral,No +USER-09358,46,Other,4.37,2.95,4.76,10.3,Fair,Low,4.42,4.96,No,Negative,Yes +USER-09359,30,Male,9.39,1.18,2.12,8.97,Fair,High,5.79,7.07,Yes,Positive,No +USER-09360,31,Male,6.11,3.79,3.28,7.48,Good,High,4.29,1.04,Yes,Positive,No +USER-09361,25,Female,3.57,6.19,4.37,2.69,Fair,Medium,6.84,9.56,No,Negative,Yes +USER-09362,20,Female,10.0,7.29,2.05,8.04,Poor,High,4.12,3.14,Yes,Negative,No +USER-09363,36,Female,9.68,5.89,2.67,5.71,Poor,Medium,7.6,6.52,Yes,Negative,No +USER-09364,25,Male,6.84,4.94,4.8,7.38,Poor,Medium,6.4,5.75,No,Negative,No +USER-09365,57,Female,6.58,4.79,3.81,11.81,Fair,Medium,4.76,7.54,No,Negative,Yes +USER-09366,30,Other,2.87,4.88,0.14,5.81,Poor,High,8.2,1.39,Yes,Neutral,No +USER-09367,25,Female,8.06,1.28,1.06,11.75,Excellent,Low,8.77,1.34,No,Neutral,Yes +USER-09368,22,Male,8.21,6.63,2.52,14.71,Poor,Low,8.01,1.8,Yes,Negative,No +USER-09369,62,Female,5.12,2.25,1.09,7.67,Poor,Medium,5.63,4.19,Yes,Positive,No +USER-09370,19,Other,11.23,1.28,3.2,5.49,Poor,Low,4.76,8.06,No,Negative,No +USER-09371,62,Other,1.87,4.69,0.13,7.89,Fair,Low,6.12,0.26,Yes,Positive,Yes +USER-09372,22,Female,2.97,6.31,3.15,2.7,Poor,Low,4.74,0.29,No,Neutral,No +USER-09373,56,Other,6.7,3.29,3.8,3.52,Good,High,7.34,6.94,No,Neutral,Yes +USER-09374,45,Female,10.19,3.71,3.99,1.27,Good,High,7.85,1.34,Yes,Negative,Yes +USER-09375,41,Female,10.59,3.87,1.4,7.77,Good,High,6.46,9.35,No,Positive,No +USER-09376,59,Female,7.03,4.5,4.91,2.68,Excellent,Low,6.56,1.39,No,Positive,No +USER-09377,52,Female,2.9,7.45,0.62,9.34,Poor,Medium,6.18,6.11,No,Negative,No +USER-09378,41,Other,2.06,1.4,1.44,5.87,Fair,Medium,5.39,9.04,Yes,Negative,Yes +USER-09379,30,Other,4.1,6.34,1.07,10.35,Good,Medium,5.37,8.4,Yes,Positive,No +USER-09380,50,Male,10.16,0.37,0.21,9.35,Good,Low,4.63,3.69,Yes,Positive,Yes +USER-09381,45,Male,10.97,5.62,4.16,8.2,Fair,High,9.0,0.47,Yes,Negative,No +USER-09382,25,Male,5.93,3.3,1.83,5.45,Fair,High,5.63,5.83,No,Neutral,Yes +USER-09383,18,Other,1.78,6.87,2.26,3.9,Excellent,Low,7.52,2.7,No,Negative,No +USER-09384,53,Other,1.02,0.05,3.35,3.08,Good,Low,5.45,2.06,No,Positive,No +USER-09385,30,Other,6.11,4.42,3.67,7.02,Good,Low,8.3,3.74,Yes,Negative,Yes +USER-09386,44,Other,1.41,6.61,3.32,6.44,Poor,Medium,6.17,0.4,No,Negative,No +USER-09387,56,Male,11.92,4.17,4.64,9.0,Fair,High,6.51,6.49,Yes,Negative,Yes +USER-09388,37,Female,6.93,2.91,4.62,7.2,Poor,Low,8.19,0.91,No,Negative,No +USER-09389,25,Female,9.03,4.31,0.48,5.13,Fair,High,8.71,1.5,Yes,Negative,No +USER-09390,46,Female,2.07,4.23,3.3,12.35,Poor,High,7.79,1.52,Yes,Negative,Yes +USER-09391,60,Female,5.03,0.9,1.82,2.98,Excellent,Medium,7.06,1.19,No,Negative,Yes +USER-09392,49,Other,9.53,2.54,1.54,10.97,Excellent,Medium,4.49,9.78,No,Neutral,Yes +USER-09393,38,Male,3.62,6.9,0.97,5.36,Poor,High,4.84,7.06,No,Negative,Yes +USER-09394,50,Other,6.46,6.65,1.69,7.11,Excellent,Low,5.05,0.24,No,Positive,Yes +USER-09395,64,Other,9.73,3.11,2.51,6.85,Poor,High,7.71,7.19,No,Negative,No +USER-09396,42,Female,10.37,0.54,3.95,7.75,Excellent,Medium,6.94,9.18,No,Neutral,No +USER-09397,32,Other,2.64,4.35,0.04,14.78,Good,Low,7.49,4.07,No,Positive,Yes +USER-09398,20,Female,2.87,2.73,0.62,13.32,Poor,Medium,7.66,7.78,Yes,Negative,No +USER-09399,23,Female,7.63,0.09,2.76,13.37,Excellent,High,8.59,1.78,No,Neutral,No +USER-09400,22,Male,4.11,5.96,1.84,1.74,Fair,Medium,7.73,5.96,No,Neutral,No +USER-09401,30,Female,11.54,0.26,0.92,3.97,Good,Low,6.59,5.47,No,Negative,Yes +USER-09402,18,Female,5.21,6.42,4.62,7.86,Excellent,High,7.0,2.89,Yes,Negative,Yes +USER-09403,28,Female,5.81,0.3,0.18,10.21,Poor,High,7.13,9.16,No,Neutral,Yes +USER-09404,65,Female,6.38,7.08,4.36,9.21,Good,High,6.72,9.67,No,Positive,No +USER-09405,23,Male,9.8,7.84,3.85,2.77,Fair,Medium,8.81,3.4,Yes,Neutral,Yes +USER-09406,18,Female,6.92,0.34,1.52,13.75,Excellent,Low,7.03,9.63,Yes,Positive,No +USER-09407,48,Female,5.09,4.65,2.61,12.14,Fair,Low,8.06,6.31,No,Negative,Yes +USER-09408,65,Other,7.93,6.43,4.15,11.01,Excellent,High,8.01,0.92,Yes,Positive,No +USER-09409,53,Female,2.1,2.75,3.98,11.92,Fair,High,8.18,1.08,No,Positive,Yes +USER-09410,63,Female,2.55,2.88,4.21,11.48,Poor,Low,4.53,3.01,No,Positive,Yes +USER-09411,62,Other,8.34,0.87,0.85,12.3,Fair,High,4.2,4.94,Yes,Positive,No +USER-09412,38,Male,3.96,3.27,3.22,1.98,Excellent,High,6.9,8.38,No,Negative,No +USER-09413,63,Other,4.2,5.89,0.05,2.76,Good,Low,5.91,7.19,No,Neutral,Yes +USER-09414,23,Other,3.25,0.71,4.75,11.98,Poor,High,7.33,8.5,Yes,Negative,Yes +USER-09415,51,Female,11.58,5.27,0.36,10.73,Excellent,Medium,5.26,7.17,No,Positive,Yes +USER-09416,34,Other,11.64,7.57,4.68,11.06,Excellent,Medium,5.27,3.96,Yes,Positive,No +USER-09417,35,Female,7.04,0.77,0.88,12.99,Poor,Low,5.43,4.77,Yes,Negative,No +USER-09418,40,Other,7.65,0.4,2.52,9.35,Poor,High,5.74,0.57,No,Positive,Yes +USER-09419,65,Female,8.78,3.81,0.88,10.73,Excellent,Low,6.69,3.33,No,Negative,Yes +USER-09420,57,Other,1.81,6.38,3.94,6.16,Fair,High,4.49,9.85,No,Positive,Yes +USER-09421,43,Male,11.92,5.16,0.13,3.73,Excellent,Low,7.69,8.31,Yes,Positive,No +USER-09422,18,Female,1.17,2.46,3.75,4.37,Good,High,6.06,1.29,No,Positive,Yes +USER-09423,54,Other,2.9,4.48,3.61,1.91,Good,Low,7.74,9.99,No,Positive,Yes +USER-09424,24,Male,4.57,1.6,2.41,14.87,Good,High,8.6,7.48,Yes,Negative,No +USER-09425,58,Female,3.97,0.79,0.43,1.91,Poor,High,5.76,8.33,No,Negative,No +USER-09426,33,Male,11.81,1.2,1.75,10.95,Fair,Low,4.45,8.96,Yes,Neutral,No +USER-09427,47,Other,1.64,3.47,2.46,13.2,Poor,Low,7.51,8.86,Yes,Positive,Yes +USER-09428,56,Other,3.77,2.59,2.87,9.51,Poor,Medium,4.66,3.72,No,Negative,Yes +USER-09429,28,Male,1.82,4.79,3.52,1.69,Excellent,Medium,8.4,6.43,No,Positive,No +USER-09430,58,Female,9.16,0.89,0.12,10.72,Fair,High,6.38,9.32,No,Positive,Yes +USER-09431,34,Female,2.56,4.71,1.01,3.25,Fair,Low,8.38,2.45,Yes,Neutral,No +USER-09432,39,Male,8.4,3.04,2.43,13.83,Poor,Low,5.06,0.39,No,Negative,No +USER-09433,25,Female,6.92,1.52,2.0,13.97,Excellent,Low,5.68,0.91,Yes,Negative,No +USER-09434,51,Female,2.49,6.86,2.22,1.25,Fair,High,8.13,5.24,No,Neutral,Yes +USER-09435,49,Male,10.26,7.98,3.38,14.24,Poor,High,6.97,6.83,Yes,Positive,Yes +USER-09436,35,Male,11.87,4.81,4.16,7.15,Good,High,4.09,1.89,Yes,Positive,No +USER-09437,57,Male,3.46,5.3,4.37,3.78,Fair,Low,4.22,2.73,Yes,Neutral,No +USER-09438,51,Other,11.74,0.53,4.66,7.73,Excellent,High,4.41,7.53,Yes,Neutral,No +USER-09439,58,Male,2.64,5.53,1.86,1.19,Excellent,High,6.42,2.91,Yes,Neutral,No +USER-09440,63,Other,2.03,2.76,3.88,11.6,Excellent,Medium,8.76,6.39,Yes,Negative,Yes +USER-09441,61,Female,4.26,3.23,0.43,10.24,Poor,Low,8.2,1.96,Yes,Positive,No +USER-09442,62,Other,4.94,2.87,3.96,10.4,Excellent,Low,6.34,7.15,Yes,Negative,No +USER-09443,56,Female,9.26,0.25,2.49,6.56,Fair,High,7.73,2.21,Yes,Positive,Yes +USER-09444,39,Male,6.5,1.95,1.56,2.74,Fair,High,6.6,7.64,Yes,Positive,No +USER-09445,38,Other,11.38,7.58,4.3,9.62,Excellent,Low,7.31,6.97,Yes,Neutral,Yes +USER-09446,51,Male,3.93,5.7,2.06,13.74,Fair,Low,5.82,2.49,Yes,Neutral,No +USER-09447,55,Other,8.78,1.22,1.84,7.26,Excellent,Low,4.59,3.8,No,Negative,Yes +USER-09448,45,Female,2.83,2.65,3.27,8.01,Excellent,High,7.91,0.64,Yes,Positive,Yes +USER-09449,24,Female,6.79,1.78,2.81,3.8,Excellent,High,4.42,4.91,Yes,Positive,Yes +USER-09450,36,Male,3.23,3.83,0.74,9.92,Fair,Medium,4.67,0.32,Yes,Neutral,No +USER-09451,37,Male,2.7,0.56,4.09,3.34,Poor,Medium,8.47,2.14,Yes,Negative,Yes +USER-09452,45,Female,8.46,0.11,1.34,11.77,Excellent,Low,7.11,9.49,No,Positive,No +USER-09453,41,Male,2.46,3.81,0.55,14.97,Good,Low,7.22,7.57,Yes,Neutral,Yes +USER-09454,55,Female,8.86,3.25,1.79,10.97,Excellent,Medium,8.03,8.35,Yes,Positive,No +USER-09455,64,Other,2.22,0.57,1.15,11.91,Poor,Low,6.04,9.91,Yes,Negative,No +USER-09456,65,Male,4.97,7.13,3.99,13.44,Excellent,Medium,4.91,2.19,Yes,Positive,No +USER-09457,54,Male,3.07,6.47,0.82,3.1,Excellent,Medium,6.27,7.84,No,Neutral,Yes +USER-09458,39,Other,1.44,4.52,2.94,12.66,Good,Low,5.4,6.61,Yes,Negative,Yes +USER-09459,62,Other,5.8,6.35,3.17,13.72,Fair,Medium,5.36,2.01,No,Neutral,Yes +USER-09460,65,Other,5.59,1.08,0.41,13.83,Fair,High,5.64,8.8,Yes,Neutral,No +USER-09461,42,Male,2.07,7.23,0.1,4.48,Fair,Low,8.55,4.72,No,Neutral,Yes +USER-09462,57,Female,2.12,2.51,4.02,10.43,Fair,Medium,7.99,1.79,Yes,Negative,Yes +USER-09463,47,Male,6.79,6.78,0.16,7.98,Good,Low,7.95,5.86,Yes,Positive,No +USER-09464,54,Other,6.77,6.18,4.83,10.48,Good,High,5.56,8.45,Yes,Negative,Yes +USER-09465,36,Male,3.41,4.23,0.43,8.39,Excellent,Medium,7.19,8.7,Yes,Neutral,No +USER-09466,42,Female,9.27,1.85,1.31,6.25,Good,Medium,6.24,1.13,Yes,Neutral,No +USER-09467,45,Male,9.16,0.1,2.24,5.74,Poor,Medium,6.24,6.96,Yes,Negative,No +USER-09468,62,Female,1.61,2.88,3.13,10.29,Poor,Low,6.36,8.23,No,Negative,No +USER-09469,54,Other,10.42,4.73,2.65,10.26,Excellent,High,8.99,6.37,Yes,Negative,No +USER-09470,25,Male,4.33,5.97,2.34,6.49,Fair,Low,6.86,5.17,No,Negative,No +USER-09471,64,Female,1.36,4.78,3.94,11.08,Excellent,High,7.37,7.81,No,Positive,Yes +USER-09472,31,Male,6.25,1.96,3.36,5.82,Poor,Medium,7.38,3.28,Yes,Neutral,Yes +USER-09473,36,Other,6.27,3.75,0.19,4.3,Fair,Low,4.96,3.92,No,Neutral,Yes +USER-09474,58,Male,3.8,3.54,1.8,2.06,Fair,High,6.52,4.7,No,Neutral,No +USER-09475,59,Female,7.62,2.43,1.61,13.7,Fair,High,5.4,7.78,No,Neutral,Yes +USER-09476,40,Other,6.71,7.53,1.65,2.0,Excellent,Medium,7.31,3.2,Yes,Negative,Yes +USER-09477,41,Other,11.54,6.74,0.02,10.01,Fair,Medium,6.56,2.98,Yes,Positive,Yes +USER-09478,28,Other,11.78,5.33,2.12,8.42,Good,Medium,6.8,9.84,No,Neutral,No +USER-09479,36,Male,1.55,4.92,0.03,7.45,Good,High,4.21,0.86,Yes,Negative,Yes +USER-09480,52,Male,10.18,4.33,4.54,8.22,Poor,Medium,6.23,6.28,Yes,Negative,Yes +USER-09481,48,Other,7.85,2.2,3.84,12.13,Poor,High,8.32,4.51,No,Neutral,Yes +USER-09482,35,Male,5.82,4.85,4.6,9.39,Fair,Low,5.34,6.41,No,Positive,Yes +USER-09483,35,Male,8.55,0.81,3.12,9.4,Poor,High,7.66,8.84,Yes,Positive,No +USER-09484,49,Male,6.98,2.02,4.01,2.73,Excellent,Low,4.96,0.68,No,Negative,Yes +USER-09485,34,Female,8.48,1.79,1.3,13.55,Fair,High,5.96,8.01,Yes,Negative,Yes +USER-09486,55,Male,9.54,7.59,4.56,13.26,Fair,Low,7.57,1.1,No,Negative,Yes +USER-09487,25,Other,1.24,7.16,0.79,4.26,Poor,Medium,4.34,1.54,Yes,Positive,Yes +USER-09488,19,Male,6.82,0.54,3.43,12.77,Good,Medium,6.39,2.25,Yes,Positive,Yes +USER-09489,46,Other,3.04,4.83,1.27,14.28,Poor,High,4.09,5.82,No,Neutral,No +USER-09490,28,Male,11.38,5.05,1.2,5.28,Fair,High,7.67,1.99,No,Negative,No +USER-09491,44,Female,11.62,1.53,1.84,1.35,Good,Low,5.79,9.64,Yes,Positive,Yes +USER-09492,44,Female,7.36,2.27,0.4,5.92,Excellent,Medium,5.73,4.14,No,Neutral,Yes +USER-09493,25,Female,8.52,2.6,2.75,11.7,Good,Medium,4.25,3.96,No,Positive,No +USER-09494,40,Male,8.19,4.6,4.84,4.46,Poor,Low,8.63,7.04,Yes,Negative,Yes +USER-09495,18,Male,1.49,7.98,2.86,3.09,Fair,Medium,8.43,5.16,Yes,Negative,No +USER-09496,60,Female,4.06,0.81,1.83,9.28,Poor,Low,4.39,7.94,No,Positive,Yes +USER-09497,50,Female,8.89,7.08,2.63,9.47,Excellent,High,8.13,6.37,Yes,Negative,No +USER-09498,56,Other,6.1,1.5,2.13,13.37,Good,Medium,4.91,5.29,Yes,Negative,No +USER-09499,55,Male,9.93,5.44,0.31,1.73,Good,Low,7.87,0.91,No,Neutral,Yes +USER-09500,33,Male,2.81,7.98,0.84,1.09,Good,Low,6.28,0.31,Yes,Negative,No +USER-09501,63,Male,6.5,6.81,3.59,6.09,Poor,Low,7.01,1.89,Yes,Negative,No +USER-09502,40,Other,6.01,0.65,4.59,3.84,Good,Low,7.17,3.73,Yes,Positive,No +USER-09503,56,Female,11.29,6.01,3.14,5.84,Excellent,Low,7.55,2.69,No,Positive,No +USER-09504,37,Female,5.97,6.73,4.21,8.09,Poor,High,6.49,4.28,No,Positive,No +USER-09505,33,Male,10.76,7.29,0.66,12.11,Excellent,Medium,4.72,2.27,Yes,Positive,No +USER-09506,60,Other,9.8,5.88,2.72,10.22,Poor,High,7.22,7.06,No,Positive,No +USER-09507,28,Male,11.43,6.65,3.67,6.16,Excellent,Low,7.97,0.59,No,Neutral,No +USER-09508,29,Male,7.7,1.0,0.06,11.81,Poor,Low,6.67,5.8,Yes,Positive,No +USER-09509,63,Female,10.82,5.15,4.37,8.37,Poor,High,7.87,2.88,Yes,Neutral,No +USER-09510,32,Male,2.04,7.64,2.41,5.66,Good,High,4.93,9.27,No,Positive,No +USER-09511,19,Male,10.41,6.16,2.82,9.0,Good,High,4.64,7.36,No,Positive,No +USER-09512,25,Male,3.73,3.26,1.8,10.18,Fair,Low,6.93,9.86,No,Neutral,No +USER-09513,37,Other,1.22,5.39,2.99,4.26,Excellent,High,5.08,4.91,No,Neutral,Yes +USER-09514,37,Female,8.36,0.06,3.89,14.88,Fair,Medium,4.07,1.76,Yes,Negative,No +USER-09515,46,Male,1.23,3.17,1.11,7.24,Excellent,Medium,7.18,8.96,No,Neutral,No +USER-09516,47,Other,4.75,7.05,4.62,9.59,Poor,Low,4.04,1.12,Yes,Positive,Yes +USER-09517,64,Male,11.96,3.2,1.64,12.7,Fair,High,4.03,4.99,No,Neutral,Yes +USER-09518,65,Female,7.54,6.4,0.0,9.01,Excellent,Low,7.11,9.4,No,Positive,No +USER-09519,52,Other,4.44,3.23,3.46,14.13,Fair,High,5.01,8.47,Yes,Neutral,No +USER-09520,61,Female,4.15,3.06,0.22,12.86,Excellent,Low,5.2,3.26,No,Neutral,Yes +USER-09521,46,Other,2.55,0.48,0.31,13.83,Poor,Low,5.66,5.44,Yes,Neutral,Yes +USER-09522,52,Other,3.83,5.99,0.84,2.67,Good,Low,5.82,6.15,No,Neutral,Yes +USER-09523,42,Female,11.98,4.11,0.39,13.07,Excellent,Medium,4.41,2.64,No,Neutral,No +USER-09524,53,Other,8.7,1.65,1.31,5.91,Good,Low,5.39,2.54,Yes,Positive,No +USER-09525,46,Other,5.23,5.23,2.83,10.74,Good,High,7.17,0.25,No,Neutral,Yes +USER-09526,32,Female,6.17,5.95,2.01,9.65,Excellent,Medium,7.12,4.06,No,Negative,Yes +USER-09527,59,Male,11.65,7.79,3.34,5.77,Poor,Low,7.05,2.67,No,Positive,Yes +USER-09528,62,Male,2.16,2.59,3.89,3.35,Fair,High,4.79,8.15,No,Positive,Yes +USER-09529,23,Female,8.08,1.25,4.78,13.67,Poor,Medium,5.47,4.52,Yes,Negative,Yes +USER-09530,64,Female,5.56,2.37,4.81,2.01,Good,Medium,8.1,1.64,No,Positive,No +USER-09531,51,Male,10.01,4.1,0.95,1.53,Good,Medium,4.83,4.2,Yes,Positive,Yes +USER-09532,24,Other,2.16,7.53,3.61,6.64,Excellent,High,5.36,9.42,Yes,Neutral,No +USER-09533,64,Female,5.29,6.59,4.49,8.67,Good,Medium,5.01,1.51,Yes,Positive,Yes +USER-09534,31,Male,4.98,0.46,2.56,12.39,Good,Medium,7.01,8.76,No,Positive,No +USER-09535,54,Other,10.6,4.08,1.84,13.07,Poor,Low,4.58,6.47,No,Positive,No +USER-09536,22,Female,10.33,4.14,2.59,5.54,Poor,Medium,8.19,9.54,Yes,Positive,No +USER-09537,60,Other,4.0,2.98,2.52,2.05,Excellent,Medium,6.91,3.75,No,Positive,No +USER-09538,36,Other,3.54,7.71,3.31,8.0,Fair,Medium,8.32,8.83,Yes,Positive,No +USER-09539,36,Female,1.79,7.72,1.18,3.27,Fair,High,7.72,8.76,No,Positive,Yes +USER-09540,53,Male,3.54,7.77,2.0,5.1,Poor,Medium,5.99,2.18,Yes,Neutral,No +USER-09541,34,Other,10.39,4.86,2.86,2.53,Fair,Low,8.55,4.25,No,Positive,Yes +USER-09542,45,Male,1.64,3.19,1.4,10.93,Poor,Medium,7.99,9.42,Yes,Negative,No +USER-09543,31,Female,8.64,4.43,1.34,11.63,Good,Medium,5.97,8.82,Yes,Neutral,Yes +USER-09544,34,Other,2.96,5.83,4.92,6.36,Fair,High,4.94,9.87,Yes,Neutral,Yes +USER-09545,57,Other,7.76,1.34,1.96,3.12,Poor,Medium,5.65,4.45,Yes,Positive,No +USER-09546,65,Male,4.32,5.72,2.76,12.49,Poor,Medium,6.3,3.87,Yes,Positive,Yes +USER-09547,50,Other,1.86,3.16,3.4,11.97,Excellent,High,4.84,8.42,Yes,Negative,Yes +USER-09548,48,Female,8.01,7.19,2.98,13.03,Good,Medium,7.51,9.23,No,Negative,Yes +USER-09549,59,Female,11.42,0.97,1.87,11.53,Poor,Low,7.65,1.33,No,Neutral,Yes +USER-09550,57,Female,2.27,3.0,1.51,5.23,Good,High,7.63,7.61,No,Neutral,No +USER-09551,37,Male,2.4,6.99,3.87,9.51,Poor,Low,6.62,8.29,Yes,Negative,Yes +USER-09552,23,Other,11.27,7.83,0.04,6.62,Poor,Medium,6.93,7.24,No,Neutral,No +USER-09553,53,Female,10.32,7.35,4.58,9.72,Fair,Low,7.3,5.92,No,Negative,No +USER-09554,18,Female,4.4,4.83,4.08,7.46,Poor,Low,8.23,7.54,No,Neutral,Yes +USER-09555,61,Male,11.82,5.31,1.94,9.72,Fair,Low,7.19,3.75,No,Negative,No +USER-09556,29,Other,2.16,3.97,3.61,11.9,Fair,Low,5.78,4.59,Yes,Positive,No +USER-09557,65,Female,1.07,6.32,1.23,3.32,Fair,Low,8.7,9.76,Yes,Negative,No +USER-09558,52,Female,6.85,4.69,2.28,11.16,Excellent,Medium,4.39,5.2,No,Neutral,Yes +USER-09559,20,Male,3.56,2.71,0.23,6.06,Poor,Medium,7.02,9.63,No,Neutral,No +USER-09560,64,Female,1.48,5.4,4.29,6.7,Fair,Medium,8.67,6.14,Yes,Negative,Yes +USER-09561,51,Female,8.38,0.14,0.64,4.41,Poor,Low,7.2,7.23,No,Negative,No +USER-09562,62,Female,5.59,4.22,1.52,7.33,Poor,Low,4.19,7.14,No,Neutral,No +USER-09563,58,Female,4.34,6.1,3.55,14.91,Poor,High,5.8,1.5,No,Neutral,Yes +USER-09564,43,Female,1.47,3.77,3.25,9.28,Poor,Low,6.92,1.19,Yes,Positive,Yes +USER-09565,32,Male,2.37,0.53,4.41,2.4,Poor,Medium,4.2,2.76,No,Negative,No +USER-09566,38,Female,10.16,4.89,0.37,4.57,Fair,High,7.59,1.1,Yes,Neutral,No +USER-09567,28,Other,1.67,6.28,1.75,11.3,Poor,High,7.78,9.73,No,Neutral,No +USER-09568,25,Other,2.85,6.92,1.64,8.02,Poor,Medium,7.29,6.42,No,Negative,Yes +USER-09569,60,Other,10.57,7.0,2.47,3.94,Excellent,Medium,4.92,3.15,No,Negative,Yes +USER-09570,19,Female,2.39,4.59,2.78,2.79,Fair,High,8.19,5.87,Yes,Positive,No +USER-09571,25,Other,8.27,1.98,2.29,14.35,Good,High,4.95,9.24,Yes,Negative,Yes +USER-09572,61,Other,6.78,2.19,2.98,8.96,Good,Low,8.09,5.63,Yes,Negative,Yes +USER-09573,19,Other,7.2,5.05,3.49,1.45,Fair,High,5.18,0.44,Yes,Negative,No +USER-09574,48,Other,1.02,1.77,1.02,3.64,Good,High,5.07,4.95,Yes,Neutral,No +USER-09575,65,Other,6.47,6.28,1.67,10.12,Fair,Medium,6.64,2.11,No,Positive,No +USER-09576,24,Male,3.3,1.21,0.59,2.81,Good,Medium,8.95,8.21,No,Positive,No +USER-09577,38,Other,2.59,7.0,1.39,9.5,Excellent,High,7.26,2.25,No,Negative,Yes +USER-09578,48,Female,4.69,3.28,1.11,8.12,Poor,High,6.33,4.15,No,Negative,Yes +USER-09579,43,Other,4.8,2.21,2.69,4.17,Good,High,6.45,2.82,No,Neutral,Yes +USER-09580,29,Other,3.6,4.29,1.76,8.49,Excellent,High,8.68,9.41,No,Positive,No +USER-09581,58,Other,7.58,5.42,1.04,10.88,Good,Low,6.0,2.82,Yes,Negative,Yes +USER-09582,57,Other,9.98,7.73,4.62,4.59,Good,High,6.02,5.18,No,Negative,No +USER-09583,59,Female,9.41,5.27,0.3,9.73,Excellent,Medium,4.03,1.88,Yes,Positive,Yes +USER-09584,21,Other,8.05,0.22,1.13,7.88,Excellent,High,4.07,8.73,No,Negative,Yes +USER-09585,59,Other,3.49,2.0,1.58,7.31,Fair,Medium,8.32,7.32,Yes,Positive,No +USER-09586,55,Male,4.45,0.0,4.97,11.36,Excellent,Low,6.12,7.23,No,Negative,No +USER-09587,39,Female,4.23,5.17,2.57,5.32,Excellent,Low,4.84,8.07,No,Neutral,Yes +USER-09588,51,Other,5.49,7.54,2.72,1.73,Poor,Low,8.39,0.97,No,Negative,No +USER-09589,27,Female,4.53,0.07,0.34,9.08,Excellent,Low,4.47,5.18,No,Negative,Yes +USER-09590,23,Male,3.93,5.27,4.6,11.94,Good,Medium,8.41,3.22,No,Negative,Yes +USER-09591,48,Other,5.8,3.74,2.47,10.77,Good,Low,6.81,1.89,No,Negative,No +USER-09592,18,Other,10.22,7.12,4.72,11.4,Fair,High,8.91,8.01,Yes,Positive,No +USER-09593,44,Female,8.72,5.54,4.54,14.38,Poor,High,7.38,6.43,Yes,Positive,No +USER-09594,30,Female,6.7,0.48,3.23,9.95,Good,High,6.31,3.39,No,Neutral,Yes +USER-09595,20,Male,11.99,2.87,2.95,7.11,Good,Medium,6.44,5.17,Yes,Positive,Yes +USER-09596,55,Female,9.36,2.76,3.33,12.98,Good,High,5.93,6.03,Yes,Negative,Yes +USER-09597,65,Male,3.22,0.32,1.4,10.74,Excellent,High,4.05,6.79,Yes,Neutral,No +USER-09598,61,Female,2.86,1.69,3.06,7.57,Excellent,Medium,6.61,7.91,No,Neutral,Yes +USER-09599,24,Male,3.78,1.25,0.14,5.48,Excellent,Medium,8.04,2.96,No,Negative,No +USER-09600,64,Male,8.99,4.25,1.19,13.92,Fair,Low,7.19,7.56,No,Negative,No +USER-09601,41,Other,10.36,4.55,1.89,5.68,Poor,High,5.11,0.32,No,Neutral,No +USER-09602,18,Male,1.29,5.25,0.59,10.08,Good,Low,7.08,4.24,Yes,Positive,Yes +USER-09603,52,Female,10.19,6.83,1.11,3.53,Good,Medium,8.76,1.89,No,Negative,No +USER-09604,37,Other,4.46,1.06,2.92,2.76,Excellent,High,5.44,3.38,No,Negative,Yes +USER-09605,36,Other,4.07,7.18,2.83,8.16,Fair,High,4.04,6.75,No,Negative,No +USER-09606,41,Male,1.86,6.93,2.35,8.9,Good,Medium,8.52,3.93,Yes,Negative,No +USER-09607,23,Other,3.06,5.64,0.19,11.97,Excellent,Low,8.76,9.41,Yes,Negative,No +USER-09608,64,Male,10.84,7.1,3.64,5.81,Poor,Low,6.8,7.7,Yes,Neutral,Yes +USER-09609,35,Male,9.09,1.07,2.07,9.72,Fair,Medium,6.71,2.97,No,Neutral,No +USER-09610,24,Male,5.05,0.04,3.81,14.01,Poor,Medium,7.87,7.91,Yes,Neutral,No +USER-09611,65,Female,2.25,0.51,2.18,1.06,Fair,Medium,5.45,4.57,No,Negative,No +USER-09612,44,Other,10.52,5.5,4.39,1.46,Excellent,High,6.32,2.57,No,Negative,No +USER-09613,32,Other,2.18,3.87,0.96,3.03,Poor,High,8.57,7.59,Yes,Negative,Yes +USER-09614,40,Female,9.32,4.1,4.6,1.58,Good,Low,6.9,5.35,No,Positive,Yes +USER-09615,49,Other,11.08,2.77,3.18,5.26,Fair,High,5.77,4.08,No,Negative,No +USER-09616,19,Male,10.92,5.43,1.43,8.76,Fair,Low,8.56,2.69,Yes,Positive,No +USER-09617,20,Male,11.9,4.15,2.48,8.85,Fair,High,7.22,1.05,Yes,Neutral,Yes +USER-09618,46,Other,5.49,1.67,0.9,2.07,Excellent,High,7.17,5.71,Yes,Neutral,No +USER-09619,50,Female,9.45,2.28,3.17,13.23,Good,High,8.04,2.57,No,Negative,Yes +USER-09620,44,Other,4.76,7.41,0.02,1.28,Fair,Medium,4.02,3.89,Yes,Negative,No +USER-09621,31,Male,8.21,0.72,2.06,7.38,Poor,Low,4.88,7.27,Yes,Positive,Yes +USER-09622,24,Other,3.81,3.13,0.69,6.3,Poor,High,6.15,4.22,No,Negative,Yes +USER-09623,31,Other,1.65,4.64,4.7,13.06,Fair,Low,6.89,5.37,No,Negative,Yes +USER-09624,52,Female,11.55,3.06,3.76,1.47,Good,Low,5.98,0.46,No,Negative,Yes +USER-09625,46,Female,6.8,4.94,2.41,7.85,Good,Low,4.29,8.62,No,Neutral,Yes +USER-09626,58,Other,1.16,3.64,3.97,8.91,Fair,High,6.62,4.76,Yes,Negative,No +USER-09627,22,Female,5.28,7.6,4.87,13.41,Good,Medium,5.55,7.71,No,Neutral,No +USER-09628,18,Other,2.29,3.54,1.1,14.53,Good,Medium,5.38,2.83,No,Neutral,Yes +USER-09629,45,Female,1.13,2.89,2.17,6.82,Fair,Medium,7.67,0.76,Yes,Neutral,Yes +USER-09630,40,Other,1.31,7.25,3.83,14.98,Fair,Low,5.54,7.54,No,Positive,No +USER-09631,35,Other,8.68,0.22,1.81,2.39,Poor,Low,6.38,0.3,Yes,Neutral,Yes +USER-09632,38,Male,2.91,1.68,0.08,9.32,Excellent,Medium,8.93,0.29,No,Neutral,No +USER-09633,39,Male,5.77,1.23,2.64,3.43,Excellent,High,7.24,5.34,Yes,Neutral,Yes +USER-09634,20,Male,6.13,5.83,2.58,10.35,Good,High,5.99,8.63,Yes,Negative,Yes +USER-09635,23,Female,4.55,0.92,4.04,2.47,Fair,Low,4.35,2.14,No,Positive,Yes +USER-09636,36,Other,7.49,0.89,2.84,2.78,Poor,Medium,7.26,6.11,No,Positive,Yes +USER-09637,19,Other,1.45,4.17,4.28,1.99,Excellent,Medium,6.73,0.98,No,Positive,No +USER-09638,23,Other,9.01,7.62,4.08,5.1,Fair,Medium,7.5,0.02,Yes,Negative,Yes +USER-09639,53,Male,3.49,5.53,0.45,9.36,Excellent,Medium,7.22,1.97,Yes,Positive,Yes +USER-09640,53,Male,5.25,2.92,1.11,7.64,Fair,Medium,4.33,3.11,No,Negative,No +USER-09641,20,Other,1.1,5.67,1.47,11.55,Fair,High,8.15,8.65,Yes,Neutral,No +USER-09642,38,Other,5.51,1.92,0.73,9.43,Poor,High,8.78,4.25,No,Positive,Yes +USER-09643,22,Male,2.12,2.2,2.46,13.45,Poor,Medium,4.76,3.77,No,Negative,No +USER-09644,49,Female,5.82,1.81,1.4,6.86,Fair,High,5.77,2.13,No,Negative,No +USER-09645,50,Other,1.81,7.82,1.53,3.82,Excellent,High,5.72,6.93,No,Negative,Yes +USER-09646,60,Male,9.07,1.12,2.66,4.18,Poor,Low,4.12,6.08,No,Neutral,No +USER-09647,32,Male,1.17,0.93,1.44,6.22,Poor,High,8.5,8.73,Yes,Neutral,No +USER-09648,25,Other,8.88,3.3,4.28,2.05,Good,Low,6.41,7.27,No,Neutral,Yes +USER-09649,46,Male,9.33,5.65,3.23,4.84,Good,High,8.24,6.98,Yes,Neutral,No +USER-09650,39,Other,9.45,3.03,2.34,11.34,Poor,Medium,6.1,1.73,No,Negative,No +USER-09651,49,Other,3.35,7.53,4.26,3.53,Fair,Low,7.63,2.6,Yes,Positive,Yes +USER-09652,33,Female,5.52,0.87,4.49,8.38,Excellent,Medium,4.82,9.57,No,Neutral,No +USER-09653,51,Other,7.45,3.34,2.39,4.21,Excellent,Low,4.16,9.09,No,Negative,Yes +USER-09654,58,Male,4.34,5.36,2.07,13.05,Fair,High,4.28,1.71,Yes,Positive,No +USER-09655,46,Female,2.79,7.15,0.38,6.55,Fair,Low,4.19,3.51,Yes,Negative,Yes +USER-09656,31,Female,2.38,3.43,2.57,5.56,Fair,Medium,8.05,1.74,Yes,Negative,No +USER-09657,36,Female,2.26,7.17,4.77,8.12,Fair,High,8.16,0.14,No,Negative,No +USER-09658,64,Male,7.8,7.69,3.8,1.01,Good,Low,7.59,5.51,Yes,Negative,Yes +USER-09659,48,Male,7.71,5.73,2.3,9.17,Excellent,Low,7.16,9.46,No,Positive,No +USER-09660,42,Other,11.74,4.1,4.43,4.5,Fair,Low,6.27,1.36,Yes,Neutral,Yes +USER-09661,18,Female,7.49,7.41,3.76,9.26,Excellent,Low,8.13,9.02,No,Neutral,Yes +USER-09662,57,Other,2.26,2.51,0.23,9.27,Good,High,5.43,7.52,No,Positive,Yes +USER-09663,21,Other,11.49,6.79,4.48,14.74,Excellent,Low,7.78,8.39,Yes,Negative,No +USER-09664,42,Female,6.79,2.2,0.63,14.62,Poor,High,5.96,4.5,Yes,Positive,No +USER-09665,29,Female,1.81,7.42,1.16,4.75,Fair,High,6.69,7.39,Yes,Negative,Yes +USER-09666,24,Male,11.52,3.79,1.29,11.56,Poor,High,5.81,9.95,Yes,Neutral,No +USER-09667,25,Female,9.44,0.6,1.46,7.12,Fair,Medium,8.91,7.25,No,Neutral,Yes +USER-09668,63,Male,5.79,0.63,1.27,13.13,Poor,Low,8.64,4.15,No,Neutral,Yes +USER-09669,45,Female,10.36,1.21,4.17,2.63,Poor,Low,5.94,1.61,Yes,Neutral,No +USER-09670,53,Female,5.48,2.57,1.13,13.23,Good,Low,4.81,6.48,Yes,Negative,No +USER-09671,63,Other,11.31,0.84,0.28,1.81,Good,Low,6.38,4.05,Yes,Negative,No +USER-09672,54,Male,11.28,4.97,0.51,2.97,Good,High,8.43,7.5,Yes,Neutral,Yes +USER-09673,57,Other,7.71,4.25,3.09,6.77,Good,Low,5.6,6.35,Yes,Negative,No +USER-09674,47,Male,7.27,3.09,3.76,13.21,Excellent,High,6.82,7.14,Yes,Negative,No +USER-09675,28,Male,1.77,7.71,2.94,9.54,Fair,High,8.05,5.69,Yes,Positive,No +USER-09676,22,Male,5.69,5.94,1.2,11.78,Poor,Medium,4.15,2.2,No,Positive,No +USER-09677,22,Other,5.91,3.25,3.75,14.99,Good,High,6.76,7.18,Yes,Neutral,Yes +USER-09678,39,Other,11.04,1.49,0.32,8.69,Fair,High,6.78,8.06,Yes,Positive,No +USER-09679,63,Male,8.31,3.87,0.96,9.72,Excellent,High,7.68,7.54,Yes,Neutral,No +USER-09680,57,Female,10.77,4.09,0.37,6.62,Excellent,Low,8.55,7.44,Yes,Neutral,Yes +USER-09681,61,Male,6.7,0.06,2.88,6.53,Fair,Low,7.63,4.68,Yes,Negative,No +USER-09682,65,Female,8.91,7.15,4.58,12.72,Excellent,Medium,5.77,9.98,No,Negative,No +USER-09683,33,Male,4.16,6.29,2.85,9.49,Excellent,Medium,5.33,9.75,No,Neutral,Yes +USER-09684,50,Female,6.59,1.69,0.95,9.04,Good,Low,6.12,0.09,Yes,Positive,No +USER-09685,64,Female,3.78,5.55,1.21,1.79,Excellent,High,4.79,7.02,Yes,Negative,No +USER-09686,51,Other,3.98,3.13,0.13,7.86,Fair,Low,4.08,4.06,No,Neutral,Yes +USER-09687,26,Male,5.71,1.48,2.35,9.85,Good,High,6.72,7.34,No,Neutral,No +USER-09688,52,Other,2.16,5.81,0.52,7.7,Poor,High,4.78,0.96,No,Neutral,Yes +USER-09689,38,Other,2.4,2.91,0.32,11.14,Good,Medium,4.59,1.26,Yes,Neutral,No +USER-09690,52,Female,4.95,7.1,1.16,6.9,Good,Low,7.73,9.27,Yes,Negative,Yes +USER-09691,63,Male,6.95,5.35,1.94,10.66,Poor,Medium,8.81,2.42,No,Positive,No +USER-09692,38,Male,5.76,6.38,3.1,5.54,Good,High,4.79,2.12,Yes,Positive,Yes +USER-09693,23,Female,10.42,6.26,4.03,13.2,Good,Low,4.93,6.88,No,Positive,Yes +USER-09694,23,Male,6.67,0.44,2.88,11.91,Good,High,8.12,6.45,Yes,Negative,No +USER-09695,21,Male,2.15,7.25,2.75,3.33,Poor,High,5.48,9.19,Yes,Neutral,No +USER-09696,28,Female,7.94,5.68,3.08,2.03,Poor,Medium,4.66,2.82,Yes,Neutral,Yes +USER-09697,34,Female,6.4,0.69,3.42,12.54,Excellent,High,6.87,7.7,Yes,Positive,No +USER-09698,65,Male,2.89,0.08,2.83,3.21,Good,Low,8.11,5.58,No,Negative,No +USER-09699,25,Female,7.54,4.02,4.36,8.79,Good,High,7.89,3.86,Yes,Negative,Yes +USER-09700,50,Female,7.92,7.9,4.16,10.7,Excellent,Low,6.4,8.01,Yes,Positive,No +USER-09701,31,Male,11.7,1.81,2.21,2.92,Poor,Medium,7.06,5.6,No,Neutral,Yes +USER-09702,39,Male,5.76,4.4,4.98,9.26,Fair,Low,6.66,6.99,No,Negative,Yes +USER-09703,61,Female,6.99,2.01,4.17,14.83,Excellent,Medium,6.29,1.44,No,Negative,No +USER-09704,30,Male,2.27,2.76,0.0,4.53,Fair,Low,5.51,4.42,No,Negative,No +USER-09705,22,Other,4.75,4.62,4.83,1.91,Good,Low,4.79,0.01,No,Positive,Yes +USER-09706,28,Other,8.22,4.92,3.82,4.43,Good,Medium,4.64,1.56,No,Neutral,Yes +USER-09707,44,Male,8.34,4.09,0.83,12.67,Fair,Low,8.57,3.24,Yes,Positive,No +USER-09708,34,Other,11.81,1.8,4.06,12.27,Poor,Low,7.52,4.08,Yes,Neutral,No +USER-09709,34,Other,2.08,0.25,1.57,8.18,Excellent,Medium,6.4,9.61,No,Negative,Yes +USER-09710,49,Other,2.93,0.48,4.54,1.5,Poor,High,8.31,6.98,Yes,Neutral,No +USER-09711,52,Other,8.6,7.58,1.96,2.73,Good,Low,8.74,8.17,No,Positive,No +USER-09712,23,Other,8.36,6.13,0.55,8.77,Excellent,Medium,6.22,9.26,Yes,Neutral,No +USER-09713,65,Other,4.78,6.91,3.65,9.19,Poor,Medium,7.86,8.82,No,Neutral,Yes +USER-09714,36,Male,5.19,3.52,2.63,13.12,Good,Medium,8.91,9.07,Yes,Neutral,No +USER-09715,32,Female,3.87,0.25,1.66,13.22,Excellent,High,5.04,3.07,No,Neutral,Yes +USER-09716,57,Female,10.61,2.35,0.83,9.96,Excellent,High,5.71,3.74,Yes,Negative,No +USER-09717,61,Male,10.87,5.3,4.82,11.01,Fair,High,7.64,9.36,Yes,Positive,Yes +USER-09718,39,Male,1.28,4.94,2.87,2.4,Fair,Medium,8.15,6.09,No,Neutral,No +USER-09719,52,Female,7.42,2.46,2.31,9.26,Excellent,Low,8.4,1.9,No,Negative,No +USER-09720,38,Female,10.2,2.13,0.01,14.78,Excellent,Medium,8.39,3.8,Yes,Negative,No +USER-09721,63,Other,2.11,2.61,0.44,2.95,Fair,Medium,8.17,9.54,Yes,Neutral,Yes +USER-09722,50,Male,6.79,4.47,1.21,12.82,Poor,High,5.97,6.36,No,Neutral,Yes +USER-09723,42,Other,4.46,6.14,2.21,6.71,Good,Medium,6.31,7.34,Yes,Neutral,No +USER-09724,44,Other,8.28,5.65,1.8,8.15,Good,Low,6.71,4.6,No,Negative,No +USER-09725,57,Male,6.69,1.52,2.65,5.17,Fair,Low,5.29,3.51,No,Negative,No +USER-09726,54,Male,1.36,1.98,4.04,5.77,Poor,Low,6.17,6.87,Yes,Neutral,Yes +USER-09727,60,Male,2.53,2.66,4.45,4.68,Excellent,High,6.73,1.37,No,Neutral,No +USER-09728,22,Other,1.68,3.49,4.51,11.46,Good,Low,6.51,1.32,No,Negative,Yes +USER-09729,25,Other,6.35,2.21,0.21,3.6,Good,Low,6.36,0.21,No,Negative,Yes +USER-09730,25,Male,9.95,6.48,0.28,13.0,Excellent,Medium,4.58,2.33,Yes,Neutral,No +USER-09731,40,Other,3.47,5.99,3.03,2.19,Fair,Low,5.63,4.41,No,Negative,No +USER-09732,58,Male,2.81,3.64,4.11,6.79,Excellent,Low,4.75,8.09,No,Neutral,No +USER-09733,36,Male,3.45,0.0,0.32,12.28,Poor,Medium,6.78,2.7,No,Neutral,Yes +USER-09734,50,Female,1.18,5.53,0.29,13.74,Fair,Medium,4.62,9.81,Yes,Negative,Yes +USER-09735,41,Male,10.32,4.31,4.36,12.39,Fair,Low,6.03,5.62,No,Neutral,No +USER-09736,52,Male,7.36,5.36,3.49,8.86,Fair,Medium,6.36,7.14,Yes,Positive,No +USER-09737,23,Male,10.78,7.07,3.85,8.96,Excellent,Medium,7.11,2.43,No,Neutral,No +USER-09738,30,Female,1.88,7.9,2.04,6.14,Excellent,Medium,4.37,9.85,Yes,Positive,No +USER-09739,46,Other,4.32,5.96,4.09,1.27,Good,Low,8.32,0.83,No,Positive,No +USER-09740,48,Other,7.87,0.66,3.73,4.24,Fair,High,6.45,0.11,Yes,Negative,Yes +USER-09741,63,Male,3.21,6.49,0.86,7.26,Poor,High,7.55,2.72,No,Negative,No +USER-09742,51,Other,8.13,4.47,2.78,3.17,Poor,Medium,4.81,1.72,No,Negative,No +USER-09743,33,Other,11.21,7.04,1.6,9.51,Excellent,Medium,8.34,2.34,No,Neutral,No +USER-09744,57,Other,6.28,4.43,1.07,2.06,Fair,High,5.29,9.83,No,Negative,No +USER-09745,42,Male,9.6,3.8,1.72,2.92,Poor,Medium,4.66,5.87,No,Negative,No +USER-09746,39,Male,4.44,4.39,4.38,8.19,Good,Medium,4.7,3.51,Yes,Neutral,Yes +USER-09747,42,Male,10.19,2.18,2.55,4.24,Poor,Medium,4.24,4.53,Yes,Positive,No +USER-09748,33,Other,8.05,4.29,0.7,14.92,Poor,Low,5.03,9.02,Yes,Neutral,Yes +USER-09749,65,Other,9.44,5.59,2.6,5.66,Excellent,Medium,6.7,0.63,No,Negative,Yes +USER-09750,48,Other,7.69,1.9,0.94,9.3,Fair,Medium,4.32,9.83,No,Negative,Yes +USER-09751,63,Male,7.37,2.63,0.64,13.28,Excellent,Low,5.16,8.68,Yes,Positive,Yes +USER-09752,22,Female,5.7,4.95,3.36,14.95,Fair,Medium,8.95,6.58,Yes,Neutral,No +USER-09753,46,Other,7.55,7.22,4.31,4.22,Fair,High,7.83,5.87,Yes,Neutral,Yes +USER-09754,36,Other,9.23,6.26,2.84,5.07,Excellent,Low,8.22,0.27,Yes,Positive,Yes +USER-09755,25,Male,1.66,3.67,2.66,2.48,Fair,High,4.16,4.25,Yes,Positive,No +USER-09756,32,Other,7.79,0.81,0.27,8.63,Fair,Medium,7.21,6.48,Yes,Negative,No +USER-09757,18,Male,1.14,7.83,0.24,14.1,Excellent,Low,4.25,7.63,No,Neutral,Yes +USER-09758,29,Male,1.42,1.13,4.11,11.75,Poor,Medium,8.27,6.9,Yes,Neutral,No +USER-09759,24,Male,10.35,5.01,1.65,9.9,Excellent,Low,6.97,7.6,Yes,Negative,No +USER-09760,37,Other,8.4,7.44,1.44,4.56,Fair,Medium,6.91,8.82,Yes,Negative,Yes +USER-09761,56,Male,9.86,5.6,4.34,8.98,Good,Medium,8.72,0.5,Yes,Positive,Yes +USER-09762,62,Other,5.67,6.14,4.59,9.11,Poor,High,4.66,5.89,Yes,Neutral,Yes +USER-09763,21,Other,8.74,5.68,3.65,6.8,Fair,High,7.72,1.32,Yes,Negative,No +USER-09764,29,Male,3.4,2.75,4.01,3.76,Good,Medium,6.65,8.12,Yes,Neutral,No +USER-09765,53,Other,1.66,1.8,1.02,8.39,Excellent,High,7.53,8.54,Yes,Neutral,No +USER-09766,34,Other,8.45,3.94,2.08,15.0,Excellent,Low,4.41,0.02,Yes,Positive,No +USER-09767,26,Female,6.24,4.58,2.21,8.94,Good,High,8.88,5.42,Yes,Negative,No +USER-09768,61,Female,1.42,3.08,4.42,4.1,Poor,Medium,6.64,3.51,No,Positive,Yes +USER-09769,50,Male,11.03,6.1,4.53,11.53,Good,Medium,6.51,7.79,Yes,Positive,No +USER-09770,27,Other,11.74,6.73,4.61,10.52,Good,High,7.3,1.77,No,Neutral,No +USER-09771,56,Female,7.52,4.64,4.83,5.55,Good,Low,7.17,3.0,Yes,Negative,No +USER-09772,56,Other,2.64,4.47,3.59,4.69,Fair,Low,8.87,1.42,No,Neutral,Yes +USER-09773,52,Female,11.31,3.47,1.16,11.96,Excellent,Medium,8.09,4.49,No,Negative,Yes +USER-09774,57,Female,10.04,3.88,4.86,5.78,Poor,Medium,7.61,9.31,Yes,Neutral,Yes +USER-09775,18,Female,2.83,0.62,3.34,10.64,Good,Low,8.38,8.96,No,Positive,No +USER-09776,27,Female,2.88,0.32,1.14,9.58,Poor,Low,7.43,9.54,Yes,Positive,Yes +USER-09777,54,Other,6.94,5.42,3.49,13.13,Excellent,High,5.2,8.59,No,Neutral,No +USER-09778,32,Female,3.43,5.88,4.84,1.7,Fair,Low,6.42,9.1,No,Neutral,Yes +USER-09779,59,Male,5.33,5.23,1.34,10.71,Fair,Low,7.03,5.44,No,Neutral,No +USER-09780,53,Female,11.98,3.17,4.39,7.25,Good,Low,6.8,0.86,No,Positive,Yes +USER-09781,19,Other,2.05,4.12,4.93,8.64,Good,Medium,7.8,9.09,Yes,Negative,No +USER-09782,59,Female,2.54,4.75,2.75,7.01,Good,Low,6.32,8.26,Yes,Positive,Yes +USER-09783,33,Female,4.06,0.86,2.28,3.9,Poor,High,5.67,6.41,Yes,Neutral,No +USER-09784,38,Other,8.2,3.92,2.11,2.85,Poor,Low,7.1,5.85,Yes,Neutral,Yes +USER-09785,39,Male,6.0,6.38,4.48,7.0,Poor,Medium,4.98,4.16,Yes,Negative,Yes +USER-09786,65,Other,8.57,2.67,4.57,7.37,Excellent,Medium,5.02,3.51,Yes,Neutral,Yes +USER-09787,52,Female,11.6,1.21,4.6,10.99,Excellent,Medium,5.87,7.0,Yes,Negative,No +USER-09788,22,Female,8.63,6.41,1.56,11.43,Excellent,High,7.99,1.47,No,Positive,No +USER-09789,54,Male,10.33,6.18,4.04,6.76,Excellent,High,6.19,0.03,No,Neutral,No +USER-09790,64,Male,3.98,4.52,4.01,8.55,Excellent,High,6.98,5.21,Yes,Positive,No +USER-09791,56,Female,2.31,1.48,2.01,12.63,Excellent,Medium,7.98,2.33,Yes,Positive,No +USER-09792,48,Other,5.66,4.17,3.06,8.81,Excellent,Low,7.39,6.37,Yes,Positive,No +USER-09793,52,Other,5.74,7.67,0.42,5.01,Excellent,Low,6.21,9.05,No,Neutral,No +USER-09794,19,Other,5.62,5.77,2.35,13.41,Good,Low,6.55,3.1,No,Negative,No +USER-09795,39,Female,4.68,3.9,4.23,2.09,Good,High,5.05,4.82,Yes,Neutral,No +USER-09796,29,Male,11.58,1.86,2.19,6.29,Fair,Low,7.53,2.73,Yes,Positive,Yes +USER-09797,23,Other,6.32,6.81,2.7,6.29,Poor,High,5.14,6.33,Yes,Positive,No +USER-09798,21,Male,9.88,0.09,0.48,8.07,Good,Medium,8.77,5.28,No,Neutral,No +USER-09799,26,Male,10.46,0.49,3.01,2.2,Excellent,High,5.54,6.5,No,Negative,Yes +USER-09800,36,Female,11.93,5.6,3.58,9.04,Excellent,Low,4.8,3.04,Yes,Negative,No +USER-09801,34,Male,5.38,1.57,0.86,14.22,Good,Low,4.37,0.48,No,Positive,No +USER-09802,58,Female,8.94,1.42,1.01,8.74,Poor,Medium,8.32,5.96,No,Positive,Yes +USER-09803,25,Female,8.38,6.41,3.25,2.59,Poor,High,6.69,4.39,No,Positive,Yes +USER-09804,22,Other,7.06,3.77,4.99,3.52,Poor,High,7.03,8.46,No,Negative,No +USER-09805,57,Other,10.39,4.05,5.0,11.05,Fair,High,6.15,7.34,Yes,Positive,No +USER-09806,25,Other,4.28,4.78,4.85,14.02,Excellent,Medium,8.18,9.08,No,Neutral,Yes +USER-09807,34,Female,2.1,7.74,4.9,3.91,Good,Medium,4.48,5.6,No,Neutral,Yes +USER-09808,27,Male,7.67,6.1,2.95,13.07,Poor,Low,6.09,7.89,No,Negative,Yes +USER-09809,60,Other,9.78,2.5,3.13,8.84,Good,High,6.99,0.19,No,Positive,Yes +USER-09810,49,Other,4.56,7.22,2.61,3.0,Good,High,6.37,0.07,No,Neutral,Yes +USER-09811,21,Male,9.24,5.72,3.38,4.02,Good,High,8.91,5.53,No,Neutral,No +USER-09812,52,Male,8.63,5.11,3.02,2.6,Fair,High,4.04,1.56,No,Neutral,No +USER-09813,40,Female,8.31,4.7,0.65,2.12,Excellent,Medium,8.18,0.74,No,Negative,No +USER-09814,22,Other,8.52,5.1,0.74,7.14,Excellent,Medium,5.96,8.99,No,Neutral,Yes +USER-09815,33,Other,4.52,0.88,1.11,3.91,Excellent,High,7.94,9.84,Yes,Neutral,No +USER-09816,49,Female,3.02,5.67,3.75,11.62,Good,Low,7.04,7.22,Yes,Neutral,No +USER-09817,24,Female,3.81,7.22,4.7,7.62,Excellent,Low,7.2,3.23,Yes,Neutral,Yes +USER-09818,64,Other,2.52,3.61,4.2,2.43,Poor,Medium,7.37,8.57,No,Negative,No +USER-09819,26,Male,4.29,1.44,0.86,14.72,Good,Medium,6.47,6.55,No,Neutral,No +USER-09820,24,Other,7.5,5.01,0.18,3.21,Poor,Low,4.31,9.0,Yes,Negative,No +USER-09821,60,Other,8.36,2.59,0.99,14.61,Good,Medium,4.12,6.72,Yes,Positive,No +USER-09822,62,Male,6.16,4.78,2.42,5.81,Fair,Low,4.42,8.8,Yes,Neutral,No +USER-09823,32,Male,9.8,3.45,3.68,12.48,Poor,Low,8.94,4.05,Yes,Positive,Yes +USER-09824,36,Other,4.97,2.93,4.82,10.54,Good,Medium,5.19,6.34,No,Positive,No +USER-09825,42,Female,9.64,2.4,1.82,14.19,Good,Low,7.81,3.53,No,Negative,No +USER-09826,22,Other,10.6,4.66,1.68,10.16,Poor,Low,5.28,2.83,Yes,Positive,Yes +USER-09827,23,Female,6.91,1.12,3.93,2.81,Poor,High,6.85,2.52,No,Positive,No +USER-09828,60,Female,6.81,5.71,2.66,9.95,Fair,Low,5.2,4.03,Yes,Negative,Yes +USER-09829,54,Other,10.1,3.37,0.82,10.52,Good,Low,5.55,3.07,Yes,Neutral,Yes +USER-09830,58,Other,4.99,5.92,2.42,14.1,Excellent,Low,8.36,7.03,No,Negative,No +USER-09831,37,Other,3.44,2.48,0.61,2.27,Good,High,6.42,1.73,Yes,Neutral,No +USER-09832,45,Male,10.49,1.9,2.21,12.08,Poor,High,7.15,6.05,Yes,Neutral,No +USER-09833,30,Other,10.53,1.61,0.51,14.73,Good,High,4.13,5.26,No,Negative,No +USER-09834,25,Female,11.38,6.6,1.47,13.96,Poor,Medium,4.22,9.11,Yes,Negative,Yes +USER-09835,61,Other,3.14,2.83,2.09,9.95,Fair,Low,6.61,9.5,No,Neutral,Yes +USER-09836,55,Other,10.84,0.32,2.38,13.85,Poor,Low,5.71,4.33,No,Negative,No +USER-09837,20,Female,11.62,7.24,2.13,10.69,Fair,Low,5.57,8.78,No,Positive,Yes +USER-09838,44,Female,6.0,6.54,1.9,7.26,Good,High,8.04,3.51,Yes,Positive,No +USER-09839,29,Male,9.56,5.04,0.29,5.06,Fair,Medium,7.31,6.43,No,Negative,No +USER-09840,53,Other,4.05,7.3,3.78,1.04,Fair,High,8.66,0.58,No,Positive,No +USER-09841,40,Female,1.27,5.6,4.2,2.46,Poor,High,6.7,9.02,No,Positive,No +USER-09842,34,Male,8.04,7.74,1.29,13.45,Poor,Low,7.31,2.98,No,Neutral,No +USER-09843,46,Female,4.47,7.89,1.27,11.14,Fair,High,6.37,1.65,No,Negative,No +USER-09844,45,Male,9.24,6.24,2.24,9.45,Good,Medium,8.73,4.83,Yes,Neutral,No +USER-09845,32,Other,8.99,0.71,4.25,12.78,Excellent,Medium,8.68,2.49,Yes,Negative,Yes +USER-09846,44,Other,8.47,5.73,4.78,9.73,Fair,Low,8.02,8.98,No,Neutral,Yes +USER-09847,48,Male,7.48,6.75,0.22,10.43,Good,Medium,6.32,5.85,No,Neutral,Yes +USER-09848,41,Female,2.84,7.71,0.72,10.65,Good,Medium,6.38,8.61,Yes,Positive,Yes +USER-09849,21,Male,6.58,0.45,0.85,8.4,Poor,Low,5.88,7.19,Yes,Negative,Yes +USER-09850,41,Female,9.57,4.81,1.05,5.73,Fair,High,6.9,2.54,No,Positive,No +USER-09851,50,Other,11.34,7.12,4.19,12.96,Fair,Low,7.4,3.81,Yes,Positive,Yes +USER-09852,48,Other,4.26,5.87,0.93,5.1,Good,Medium,5.29,5.91,Yes,Negative,No +USER-09853,49,Other,8.17,5.37,0.53,11.51,Good,High,4.82,7.07,No,Negative,No +USER-09854,41,Male,3.65,3.06,1.46,4.91,Excellent,High,8.39,7.24,No,Neutral,Yes +USER-09855,40,Other,4.8,1.56,3.43,14.79,Fair,High,6.74,7.22,Yes,Positive,No +USER-09856,30,Female,6.61,4.34,0.51,4.57,Excellent,Low,6.12,4.43,Yes,Positive,No +USER-09857,24,Other,6.96,1.74,0.48,8.91,Fair,High,5.14,1.84,No,Neutral,No +USER-09858,47,Female,11.88,0.39,4.99,13.34,Excellent,High,7.03,9.73,No,Negative,No +USER-09859,36,Other,5.69,0.49,1.13,4.28,Excellent,Medium,5.44,1.67,Yes,Neutral,Yes +USER-09860,27,Male,6.75,6.4,4.3,4.11,Excellent,High,7.95,5.36,No,Positive,No +USER-09861,54,Other,7.87,3.29,3.81,14.0,Good,Low,4.99,0.45,No,Positive,No +USER-09862,26,Male,11.56,7.31,3.24,10.76,Good,High,4.86,3.18,Yes,Negative,No +USER-09863,21,Other,4.88,2.1,2.13,3.44,Good,Low,8.18,3.05,Yes,Negative,No +USER-09864,64,Female,8.29,6.99,0.11,4.08,Poor,High,4.55,9.33,No,Negative,Yes +USER-09865,43,Other,11.9,5.18,0.72,2.21,Excellent,Medium,6.93,6.79,Yes,Positive,Yes +USER-09866,64,Other,8.32,6.24,1.58,14.89,Poor,Medium,5.41,5.89,No,Negative,Yes +USER-09867,40,Female,10.82,1.78,3.95,8.78,Good,Medium,6.43,7.22,No,Positive,No +USER-09868,20,Female,5.58,5.49,0.27,14.43,Poor,High,7.87,1.71,Yes,Positive,No +USER-09869,57,Male,1.92,6.58,2.16,7.59,Poor,High,4.47,3.32,No,Positive,No +USER-09870,32,Male,2.85,3.74,1.6,2.32,Fair,Medium,5.57,6.52,Yes,Neutral,No +USER-09871,30,Female,9.65,7.34,4.45,3.99,Good,Medium,8.86,3.3,Yes,Neutral,Yes +USER-09872,45,Male,5.71,5.22,4.36,8.28,Excellent,High,6.13,0.94,Yes,Negative,No +USER-09873,53,Female,7.46,7.27,4.0,1.98,Poor,High,5.9,7.21,No,Neutral,No +USER-09874,23,Other,7.71,6.2,4.2,8.55,Excellent,Medium,7.61,5.92,Yes,Negative,No +USER-09875,49,Other,2.25,4.93,0.34,13.54,Good,High,8.9,7.67,Yes,Neutral,Yes +USER-09876,43,Female,2.43,5.89,4.29,5.39,Fair,High,7.34,0.88,Yes,Positive,Yes +USER-09877,33,Female,6.77,1.12,1.15,10.04,Excellent,High,7.62,0.02,Yes,Neutral,Yes +USER-09878,21,Female,9.36,2.43,2.53,6.7,Poor,Low,6.95,5.57,Yes,Negative,Yes +USER-09879,57,Male,10.93,1.61,2.98,7.62,Fair,Medium,5.44,0.85,No,Positive,Yes +USER-09880,28,Other,4.66,0.93,2.89,6.62,Fair,Low,5.29,0.95,Yes,Neutral,Yes +USER-09881,49,Male,3.35,7.37,1.23,11.78,Good,Medium,6.02,0.8,Yes,Negative,Yes +USER-09882,50,Male,1.24,6.78,3.86,12.46,Good,Medium,4.18,0.51,No,Positive,Yes +USER-09883,64,Female,5.38,2.1,3.41,11.92,Poor,Medium,6.97,1.65,No,Positive,No +USER-09884,39,Male,2.71,3.93,3.85,9.91,Fair,Low,6.08,4.9,Yes,Neutral,Yes +USER-09885,59,Male,11.24,1.7,3.91,9.44,Fair,Low,8.34,8.26,Yes,Neutral,No +USER-09886,18,Male,7.25,1.62,0.61,11.0,Poor,Medium,6.22,5.56,Yes,Negative,Yes +USER-09887,50,Male,7.28,0.1,1.13,14.61,Excellent,Low,8.08,4.9,Yes,Negative,No +USER-09888,26,Male,9.18,4.99,0.78,1.4,Excellent,High,5.39,4.62,Yes,Neutral,No +USER-09889,50,Other,10.07,0.78,1.51,5.4,Poor,Medium,7.53,7.87,Yes,Neutral,No +USER-09890,25,Male,9.75,6.43,2.82,3.75,Fair,Medium,7.01,0.14,No,Negative,Yes +USER-09891,24,Male,10.12,4.25,1.4,10.76,Fair,High,5.31,2.3,No,Positive,Yes +USER-09892,38,Female,1.08,4.19,1.52,9.01,Fair,Medium,7.47,3.72,No,Neutral,Yes +USER-09893,63,Female,8.41,6.91,1.55,9.58,Excellent,High,4.55,9.57,No,Neutral,No +USER-09894,20,Female,1.39,1.86,3.21,5.88,Poor,Medium,7.73,5.78,No,Positive,Yes +USER-09895,37,Other,4.28,0.67,0.75,1.35,Fair,High,4.61,8.46,No,Positive,Yes +USER-09896,18,Male,3.24,2.28,0.34,1.9,Good,Low,5.54,7.9,No,Neutral,No +USER-09897,46,Other,11.17,7.0,1.93,9.39,Poor,Low,5.68,3.33,No,Negative,No +USER-09898,29,Other,8.41,2.17,3.0,7.7,Poor,Low,4.87,2.16,No,Negative,No +USER-09899,34,Male,2.95,7.44,1.21,7.7,Good,High,5.3,0.31,Yes,Positive,No +USER-09900,48,Other,2.89,6.22,3.69,12.06,Excellent,High,5.75,7.51,No,Positive,No +USER-09901,28,Other,10.51,1.85,4.67,4.58,Fair,Medium,5.74,0.36,Yes,Positive,Yes +USER-09902,27,Other,1.68,3.66,3.84,5.32,Excellent,Medium,5.72,6.65,Yes,Positive,No +USER-09903,33,Female,6.16,5.89,3.87,8.5,Excellent,High,5.85,3.36,No,Negative,Yes +USER-09904,49,Female,4.98,0.09,4.8,9.16,Good,Medium,5.37,7.73,No,Negative,No +USER-09905,56,Other,7.5,6.46,4.29,7.04,Good,Low,8.28,2.61,No,Neutral,No +USER-09906,56,Other,2.09,0.84,1.27,2.69,Fair,Low,7.51,1.6,Yes,Positive,Yes +USER-09907,47,Other,10.41,5.28,1.76,13.61,Poor,Low,4.87,9.6,Yes,Positive,No +USER-09908,54,Male,5.08,6.95,1.64,5.59,Good,Medium,8.74,1.09,Yes,Negative,No +USER-09909,62,Female,3.56,0.23,0.81,14.33,Fair,High,6.24,8.54,Yes,Neutral,Yes +USER-09910,21,Female,9.6,1.58,2.56,6.64,Good,Low,4.61,9.03,No,Neutral,No +USER-09911,36,Other,2.98,0.3,1.04,1.01,Excellent,Medium,6.25,1.8,No,Neutral,Yes +USER-09912,63,Other,10.66,6.71,4.81,9.96,Fair,High,5.66,5.82,No,Neutral,Yes +USER-09913,24,Other,9.84,7.37,0.82,4.33,Poor,High,8.96,1.89,No,Negative,Yes +USER-09914,28,Female,3.13,2.43,2.64,1.56,Excellent,Medium,5.1,5.73,No,Neutral,Yes +USER-09915,34,Other,6.72,7.5,4.52,10.22,Poor,Medium,6.99,4.93,No,Negative,Yes +USER-09916,45,Female,1.27,6.71,0.04,14.71,Fair,High,4.99,1.5,No,Positive,No +USER-09917,24,Other,1.07,2.95,4.68,13.12,Fair,Low,4.94,2.11,No,Neutral,Yes +USER-09918,33,Male,9.54,2.42,0.33,4.71,Excellent,High,4.95,2.04,Yes,Negative,No +USER-09919,45,Male,7.04,2.93,0.97,5.09,Good,Medium,8.58,9.45,Yes,Positive,No +USER-09920,37,Other,6.04,5.85,0.13,10.61,Poor,Low,8.1,5.68,No,Neutral,Yes +USER-09921,47,Other,4.76,4.94,4.81,4.68,Good,Medium,4.82,5.63,No,Neutral,No +USER-09922,50,Other,5.48,5.83,3.19,9.55,Fair,Medium,7.92,2.86,Yes,Positive,No +USER-09923,29,Female,8.01,6.42,4.27,6.87,Excellent,Medium,7.6,8.49,No,Neutral,No +USER-09924,24,Other,1.67,0.48,2.87,7.6,Fair,Low,5.44,0.33,Yes,Positive,Yes +USER-09925,27,Female,1.53,0.87,4.15,11.29,Excellent,Low,6.2,4.86,No,Negative,No +USER-09926,45,Female,8.2,5.77,4.44,14.77,Excellent,High,8.26,9.3,No,Neutral,Yes +USER-09927,24,Male,4.87,6.29,2.1,9.32,Excellent,Medium,5.26,0.11,Yes,Negative,Yes +USER-09928,18,Other,8.19,1.64,3.97,8.14,Excellent,High,5.36,0.16,No,Negative,Yes +USER-09929,45,Other,2.25,6.77,2.13,10.54,Fair,Medium,5.0,5.16,Yes,Positive,No +USER-09930,30,Other,6.73,3.18,4.7,5.11,Poor,High,8.73,9.62,Yes,Positive,No +USER-09931,58,Female,9.88,3.4,3.89,6.41,Poor,High,7.47,9.67,Yes,Positive,No +USER-09932,54,Male,11.6,3.16,0.98,5.25,Good,Low,7.5,4.06,No,Neutral,No +USER-09933,42,Other,2.89,1.05,0.37,12.62,Excellent,Medium,8.9,2.1,No,Negative,No +USER-09934,40,Other,1.8,3.8,0.55,7.46,Good,High,4.89,9.3,Yes,Negative,No +USER-09935,57,Male,3.54,5.77,3.24,1.83,Good,High,8.59,2.21,No,Negative,Yes +USER-09936,46,Male,9.54,5.05,1.83,1.65,Excellent,Low,4.9,7.62,Yes,Positive,Yes +USER-09937,22,Male,10.19,5.05,4.22,11.2,Fair,Medium,8.38,7.01,No,Positive,Yes +USER-09938,21,Other,8.12,6.42,1.42,1.98,Excellent,Medium,4.18,0.69,No,Negative,No +USER-09939,65,Male,5.09,3.95,4.42,14.03,Poor,Medium,5.69,7.08,No,Positive,No +USER-09940,32,Other,9.1,7.91,4.25,6.84,Fair,Low,6.29,3.83,Yes,Neutral,Yes +USER-09941,56,Female,2.78,7.26,4.1,10.04,Fair,Low,4.69,4.09,No,Neutral,No +USER-09942,48,Female,3.29,4.75,0.37,11.34,Good,Low,6.47,3.47,No,Positive,Yes +USER-09943,29,Female,10.81,6.88,2.79,1.99,Good,Low,4.18,8.83,Yes,Negative,Yes +USER-09944,42,Female,3.14,7.64,3.74,10.18,Excellent,High,6.85,9.99,Yes,Neutral,Yes +USER-09945,20,Other,8.22,3.12,0.7,8.11,Fair,High,4.67,6.03,Yes,Negative,No +USER-09946,30,Male,9.91,3.22,1.52,14.99,Fair,High,8.82,4.97,Yes,Neutral,Yes +USER-09947,40,Female,11.72,0.38,1.98,1.69,Good,High,4.03,2.2,No,Neutral,No +USER-09948,28,Male,11.12,5.55,0.96,5.03,Poor,High,5.97,6.29,Yes,Positive,No +USER-09949,40,Female,5.39,3.87,2.86,9.69,Fair,High,5.98,6.07,Yes,Neutral,Yes +USER-09950,65,Female,8.0,4.43,3.82,6.37,Excellent,Low,5.73,7.17,No,Neutral,Yes +USER-09951,64,Female,10.79,7.64,1.74,3.56,Fair,High,8.13,8.68,No,Neutral,Yes +USER-09952,62,Female,2.13,0.59,3.0,1.11,Good,High,6.4,8.29,No,Positive,Yes +USER-09953,23,Other,7.27,5.86,3.91,4.72,Good,Low,4.41,4.95,Yes,Neutral,No +USER-09954,28,Male,1.35,5.93,0.28,12.09,Fair,Low,5.07,9.16,No,Negative,No +USER-09955,35,Male,4.7,0.05,0.17,4.68,Excellent,Medium,7.03,1.83,Yes,Positive,No +USER-09956,23,Female,4.93,6.59,3.55,6.15,Fair,Low,5.23,8.82,No,Positive,No +USER-09957,28,Other,11.5,1.54,2.87,9.32,Poor,Low,4.51,4.87,Yes,Negative,Yes +USER-09958,22,Female,2.78,3.17,0.55,4.01,Fair,Medium,7.06,4.4,No,Neutral,Yes +USER-09959,49,Other,7.15,3.33,1.54,4.96,Excellent,Medium,5.32,5.87,Yes,Neutral,No +USER-09960,33,Male,3.18,5.58,3.87,12.88,Excellent,Medium,5.47,8.63,No,Negative,No +USER-09961,64,Female,3.34,5.64,1.58,10.56,Good,High,7.59,1.98,Yes,Positive,Yes +USER-09962,35,Other,7.54,2.12,1.5,8.94,Excellent,Medium,8.3,8.68,Yes,Positive,No +USER-09963,26,Other,11.73,3.4,2.56,8.76,Excellent,Low,5.94,2.56,Yes,Positive,Yes +USER-09964,39,Other,7.03,0.45,3.72,4.98,Poor,High,5.48,9.68,Yes,Positive,Yes +USER-09965,39,Male,9.97,7.86,1.91,2.62,Fair,Medium,5.49,5.09,No,Negative,No +USER-09966,41,Other,4.48,7.11,0.43,11.27,Good,Medium,8.65,3.08,No,Negative,Yes +USER-09967,21,Other,2.42,3.67,1.17,12.96,Good,High,7.9,8.27,Yes,Negative,Yes +USER-09968,49,Female,1.43,1.14,3.97,12.65,Fair,Medium,4.65,0.39,No,Positive,Yes +USER-09969,32,Female,6.13,5.76,1.77,10.37,Fair,Medium,6.18,3.71,No,Negative,No +USER-09970,28,Male,5.29,1.48,0.94,3.34,Poor,Low,4.5,1.3,Yes,Neutral,Yes +USER-09971,26,Female,5.74,5.04,4.51,2.83,Fair,Low,4.06,5.64,Yes,Positive,Yes +USER-09972,36,Male,9.8,1.46,3.89,10.52,Poor,Low,6.81,8.33,Yes,Negative,Yes +USER-09973,34,Male,8.04,5.59,4.98,13.57,Good,Low,6.47,1.59,Yes,Neutral,No +USER-09974,32,Female,8.8,4.56,1.36,3.66,Fair,Low,5.03,0.2,No,Negative,Yes +USER-09975,31,Male,7.38,0.32,1.93,10.96,Excellent,Medium,8.54,5.74,No,Negative,No +USER-09976,36,Other,5.66,3.62,0.51,14.91,Fair,Medium,8.74,2.59,Yes,Positive,No +USER-09977,27,Male,9.27,2.21,1.76,5.67,Good,Medium,6.99,1.69,Yes,Neutral,Yes +USER-09978,65,Male,1.19,0.88,0.15,11.19,Excellent,High,5.45,9.64,No,Positive,No +USER-09979,38,Male,4.82,1.81,1.12,10.68,Excellent,High,7.54,3.77,No,Neutral,Yes +USER-09980,42,Male,8.91,4.56,4.09,8.77,Excellent,Low,5.87,5.57,No,Negative,No +USER-09981,47,Other,6.18,7.35,2.47,1.27,Fair,High,6.64,1.57,No,Negative,No +USER-09982,61,Other,1.8,5.62,1.33,2.58,Excellent,High,4.91,4.5,Yes,Positive,No +USER-09983,63,Other,4.81,4.79,0.81,12.53,Excellent,Medium,4.81,8.61,Yes,Neutral,Yes +USER-09984,19,Female,4.64,3.37,0.28,5.74,Good,Low,5.24,9.54,Yes,Negative,Yes +USER-09985,46,Other,3.11,1.28,4.17,14.99,Good,High,8.18,6.36,Yes,Negative,No +USER-09986,27,Female,11.16,4.73,4.75,4.1,Good,Medium,6.39,0.14,Yes,Neutral,Yes +USER-09987,43,Male,9.51,5.36,3.08,4.45,Fair,High,5.01,3.59,No,Neutral,Yes +USER-09988,19,Female,3.93,1.45,3.89,5.82,Good,High,8.38,9.0,Yes,Neutral,Yes +USER-09989,42,Other,5.79,0.5,4.72,8.25,Excellent,Low,6.62,0.29,Yes,Negative,No +USER-09990,24,Other,5.63,7.05,0.91,9.0,Good,Low,6.97,0.2,No,Negative,Yes +USER-09991,40,Male,8.91,5.91,4.25,13.73,Good,Low,5.87,7.67,No,Negative,Yes +USER-09992,63,Female,7.32,6.39,0.13,13.57,Good,Low,6.99,7.9,Yes,Negative,Yes +USER-09993,49,Male,1.66,6.36,4.24,4.55,Good,Medium,6.33,0.12,No,Neutral,No +USER-09994,22,Female,11.58,5.42,0.75,11.88,Good,High,5.98,2.08,No,Positive,No +USER-09995,51,Female,10.71,1.89,3.35,8.03,Fair,Medium,7.77,6.87,No,Neutral,No +USER-09996,42,Male,7.05,0.41,0.53,13.9,Good,Medium,7.37,5.02,Yes,Neutral,No +USER-09997,31,Other,3.12,6.79,0.8,1.17,Fair,Medium,8.92,9.78,No,Neutral,Yes +USER-09998,23,Male,4.38,3.98,0.52,7.81,Poor,High,7.59,2.99,No,Positive,No +USER-09999,38,Male,4.44,1.48,3.28,13.95,Poor,Medium,7.26,2.24,Yes,Neutral,Yes +USER-10000,41,Male,2.5,4.8,0.25,8.82,Fair,Low,4.62,5.09,Yes,Positive,Yes From d81fb9ece8919dfe1fff0bb530283d385ae3ee54 Mon Sep 17 00:00:00 2001 From: Manuelli Martins Date: Fri, 4 Oct 2024 13:07:47 -0300 Subject: [PATCH 2/9] Delete README.md --- README.md | 98 ------------------------------------------------------- 1 file changed, 98 deletions(-) delete mode 100644 README.md diff --git a/README.md b/README.md deleted file mode 100644 index 638127c..0000000 --- a/README.md +++ /dev/null @@ -1,98 +0,0 @@ -

- logo reprograma -

- -# Tema da Aula - -Turma Online 34 | Python | Semanas 17 e 18 | 2024 | [Daniele Junior](https://travatech.com.br?router=danijr) - -### Instruções -Antes de começar, vamos organizar nosso setup. -* Fork esse repositório -* Clone o fork na sua máquina (Para isso basta abrir o seu terminal e digitar `git clone url-do-seu-repositorio-forkado`) -* Entre na pasta do seu repositório (Para isso basta abrir o seu terminal e digitar `cd nome-do-seu-repositorio-forkado`) -* [Add outras instruções caso necessário] - -### Resumo -O que veremos na aula de hoje? -* [Slide Semana 17](https://docs.google.com/presentation/d/1axo2Dlm0Hx35ahKdZW6s-UAdG61L41QXdete8ZcQV0w/edit?usp=sharing) -* Slide Semana 18 - -* [fonte de dados escolhida](#https://www.kaggle.com/datasets/waqi786/mental-health-and-technology-usage-dataset?resource=download ) -* Análise exploratória - Semana destinada a esse tipo de análise para entendimento da base. - - Nessa etapa foi usado comandos da biblioteca pandas e matplotlib - Foram usados funções como: - DataFrame é uma estrutura de dados bidimensional amplamente usada na biblioteca pandas do Python. Ele se assemelha a uma tabela (como em uma planilha do Excel ou uma tabela SQL), onde os dados são organizados em linhas e colunas. - A função value_counts() é muito usada em Pandas para contar a frequência de valores únicos em uma coluna de um DataFrame. - A função sort_index(): é utilizada para ordenar os dados de uma Series ou DataFrame de acordo com o índice. - A função groupby() do pandas é usada para agrupar dados com base em uma ou mais colunas e realizar operações agregadas, como somas, médias, contagens, etc., em cada grupo - A função crosstab() do pandas é usada para criar uma tabela de frequência cruzada entre duas ou mais colunas. Ela é útil para gerar tabelas de contingência que mostram a relação entre variáveis categóricas, como a contagem de ocorrências entre elas. - - - - -* Criando uma história com dados - -## Conteúdo - -### O que é um projeto de análise de dados? -Nesse ponto vocês já aprenderam que ter dados não é a mesma coisa que ter informação. -**Dados:** são elementos brutos e não processados, como números, palavras, ou símbolos que precisam ser interpretados para se tornarem úteis. -**Informação:** é o resultado do processamento, organização e interpretação dos dados, fornecendo significado e contexto para tomar decisões ou entender situações. -Assim, dados são a matéria-prima da informação, que é o produto final após análise e interpretação dos dados. - -Por isso a importância de nós contarmos uma história estruturada a partir dos dados que conseguimos coletar. E é exatamente sobre isso, que se trata um projeto de análise de dados: **gerar informação útil a partir da construção de uma perspectiva contextualizada!** - -Então aqui vão algumas perguntas gerais que devemos nos fazer ao iniciar um projeto como esse: - -- **Conteúdo** - - O que eu quero informar? - compreender a percepção dos entrevistados sobre seu estado mental em relação ao tempo dedicada a telas. -- **Público** - - Para quem eu estou contando essa história? Com quem vou compartilhar essa informação? - Projeto destinado a conclusão de curso do Análise de dados Reprograma - O contéudo da base é relevante para compreender qual a percepção dos entrevistados frente ao uso de telas -- **Transformação** - - Por que essa informação é relevante? - O conteúdo é relevante para analisar o nível de aprendizado, bem como ter acesso as informações relacionadas a base de dados - - - * **Escolha do tema** - Saúde mental e uso de tecnologia - - * **Escolha da Base de Dados** - - https://www.kaggle.com/datasets/waqi786/mental-health-and-technology-usage-dataset?resource=download - -* **Definindo nossas perguntas** - - O objetivo da análise é compreender a percepção dos entrevistados sobre seu estado mental em relação ao tempo dedicada a telas. - - Verificar o padrão de horas dedicadas a horas de sono e atividade física. - - Verificar a percepção sobre o impacto no trabalho em relação ao uso de telas. - -*** - -### Material da aula - -* [Slides](https://docs.google.com/presentation/d/1axo2Dlm0Hx35ahKdZW6s-UAdG61L41QXdete8ZcQV0w/edit?usp=sharing) - -### Links Úteis -- [Documentação Pandas](https://pandas.pydata.org/docs/user_guide/index.html#user-guide) -- [Introdução ao Pandas](https://medium.com/tech-grupozap/introdu%C3%A7%C3%A3o-a-biblioteca-pandas-89fa8ed4fa38) -- [Análise Exploratória de Dados I](https://escoladedados.org/tutoriais/analise-exploratoria-de-dados/) -- [Análise Exploratória de Dados II](https://www.alura.com.br/artigos/analise-exploratoria) -- [Storytelling com Dados](https://medium.com/resumos-resenhas/storytelling-com-dados-resumo-fd63ebe4f704) -- [Markdown Cheastsheet](https://www.ibm.com/docs/en/watson-studio-local/1.2.3?topic=notebooks-markdown-jupyter-cheatsheet) - - #### Base de Dados -- [Kaggle](https://www.kaggle.com/datasets) -- -

-Desenvolvido com :purple_heart: -

- - From af39307867c7fa83a4d50324e4f547fa99b2ab30 Mon Sep 17 00:00:00 2001 From: manuellimartins Date: Fri, 4 Oct 2024 13:38:52 -0300 Subject: [PATCH 3/9] =?UTF-8?q?Atualiza=C3=A7=C3=A3o=20do=20projeto?= MIME-Version: 1.0 Content-Type: text/plain; charset=UTF-8 Content-Transfer-Encoding: 8bit --- README_Manuelli.md | 98 ++++++++++++++++++++++++++++++++++++++++++++++ 1 file changed, 98 insertions(+) create mode 100644 README_Manuelli.md diff --git a/README_Manuelli.md b/README_Manuelli.md new file mode 100644 index 0000000..638127c --- /dev/null +++ b/README_Manuelli.md @@ -0,0 +1,98 @@ +

+ logo reprograma +

+ +# Tema da Aula + +Turma Online 34 | Python | Semanas 17 e 18 | 2024 | [Daniele Junior](https://travatech.com.br?router=danijr) + +### Instruções +Antes de começar, vamos organizar nosso setup. +* Fork esse repositório +* Clone o fork na sua máquina (Para isso basta abrir o seu terminal e digitar `git clone url-do-seu-repositorio-forkado`) +* Entre na pasta do seu repositório (Para isso basta abrir o seu terminal e digitar `cd nome-do-seu-repositorio-forkado`) +* [Add outras instruções caso necessário] + +### Resumo +O que veremos na aula de hoje? +* [Slide Semana 17](https://docs.google.com/presentation/d/1axo2Dlm0Hx35ahKdZW6s-UAdG61L41QXdete8ZcQV0w/edit?usp=sharing) +* Slide Semana 18 + +* [fonte de dados escolhida](#https://www.kaggle.com/datasets/waqi786/mental-health-and-technology-usage-dataset?resource=download ) +* Análise exploratória + Semana destinada a esse tipo de análise para entendimento da base. + + Nessa etapa foi usado comandos da biblioteca pandas e matplotlib + Foram usados funções como: + DataFrame é uma estrutura de dados bidimensional amplamente usada na biblioteca pandas do Python. Ele se assemelha a uma tabela (como em uma planilha do Excel ou uma tabela SQL), onde os dados são organizados em linhas e colunas. + A função value_counts() é muito usada em Pandas para contar a frequência de valores únicos em uma coluna de um DataFrame. + A função sort_index(): é utilizada para ordenar os dados de uma Series ou DataFrame de acordo com o índice. + A função groupby() do pandas é usada para agrupar dados com base em uma ou mais colunas e realizar operações agregadas, como somas, médias, contagens, etc., em cada grupo + A função crosstab() do pandas é usada para criar uma tabela de frequência cruzada entre duas ou mais colunas. Ela é útil para gerar tabelas de contingência que mostram a relação entre variáveis categóricas, como a contagem de ocorrências entre elas. + + + + +* Criando uma história com dados + +## Conteúdo + +### O que é um projeto de análise de dados? +Nesse ponto vocês já aprenderam que ter dados não é a mesma coisa que ter informação. +**Dados:** são elementos brutos e não processados, como números, palavras, ou símbolos que precisam ser interpretados para se tornarem úteis. +**Informação:** é o resultado do processamento, organização e interpretação dos dados, fornecendo significado e contexto para tomar decisões ou entender situações. +Assim, dados são a matéria-prima da informação, que é o produto final após análise e interpretação dos dados. + +Por isso a importância de nós contarmos uma história estruturada a partir dos dados que conseguimos coletar. E é exatamente sobre isso, que se trata um projeto de análise de dados: **gerar informação útil a partir da construção de uma perspectiva contextualizada!** + +Então aqui vão algumas perguntas gerais que devemos nos fazer ao iniciar um projeto como esse: + +- **Conteúdo** + - O que eu quero informar? + compreender a percepção dos entrevistados sobre seu estado mental em relação ao tempo dedicada a telas. +- **Público** + - Para quem eu estou contando essa história? Com quem vou compartilhar essa informação? + Projeto destinado a conclusão de curso do Análise de dados Reprograma + O contéudo da base é relevante para compreender qual a percepção dos entrevistados frente ao uso de telas +- **Transformação** + - Por que essa informação é relevante? + O conteúdo é relevante para analisar o nível de aprendizado, bem como ter acesso as informações relacionadas a base de dados + + + * **Escolha do tema** + Saúde mental e uso de tecnologia + + * **Escolha da Base de Dados** + + https://www.kaggle.com/datasets/waqi786/mental-health-and-technology-usage-dataset?resource=download + +* **Definindo nossas perguntas** + + O objetivo da análise é compreender a percepção dos entrevistados sobre seu estado mental em relação ao tempo dedicada a telas. + + Verificar o padrão de horas dedicadas a horas de sono e atividade física. + + Verificar a percepção sobre o impacto no trabalho em relação ao uso de telas. + +*** + +### Material da aula + +* [Slides](https://docs.google.com/presentation/d/1axo2Dlm0Hx35ahKdZW6s-UAdG61L41QXdete8ZcQV0w/edit?usp=sharing) + +### Links Úteis +- [Documentação Pandas](https://pandas.pydata.org/docs/user_guide/index.html#user-guide) +- [Introdução ao Pandas](https://medium.com/tech-grupozap/introdu%C3%A7%C3%A3o-a-biblioteca-pandas-89fa8ed4fa38) +- [Análise Exploratória de Dados I](https://escoladedados.org/tutoriais/analise-exploratoria-de-dados/) +- [Análise Exploratória de Dados II](https://www.alura.com.br/artigos/analise-exploratoria) +- [Storytelling com Dados](https://medium.com/resumos-resenhas/storytelling-com-dados-resumo-fd63ebe4f704) +- [Markdown Cheastsheet](https://www.ibm.com/docs/en/watson-studio-local/1.2.3?topic=notebooks-markdown-jupyter-cheatsheet) + + #### Base de Dados +- [Kaggle](https://www.kaggle.com/datasets) +- +

+Desenvolvido com :purple_heart: +

+ + From 63a5d78262571812dc8947670d0188b22a6317d5 Mon Sep 17 00:00:00 2001 From: manuellimartins Date: Fri, 4 Oct 2024 14:19:12 -0300 Subject: [PATCH 4/9] =?UTF-8?q?Atualiza=C3=A7=C3=A3o?= MIME-Version: 1.0 Content-Type: text/plain; charset=UTF-8 Content-Transfer-Encoding: 8bit --- Projeto_final_S17_ipynb.ipynb | 1644 +++++++++++++++++++++++++++++++++ README.md | 73 +- README_Manuelli.md | 98 -- 3 files changed, 1658 insertions(+), 157 deletions(-) create mode 100644 Projeto_final_S17_ipynb.ipynb delete mode 100644 README_Manuelli.md diff --git a/Projeto_final_S17_ipynb.ipynb b/Projeto_final_S17_ipynb.ipynb new file mode 100644 index 0000000..d693e09 --- /dev/null +++ b/Projeto_final_S17_ipynb.ipynb @@ -0,0 +1,1644 @@ +{ + "nbformat": 4, + "nbformat_minor": 0, + "metadata": { + "colab": { + "provenance": [] + }, + "kernelspec": { + "name": "python3", + "display_name": "Python 3" + }, + "language_info": { + "name": "python" + } + }, + "cells": [ + { + "cell_type": "markdown", + "source": [ + "Base de dados:\n", + "https://www.kaggle.com/datasets/waqi786/mental-health-and-technology-usage-dataset?resource=download\n", + "Conjunto de dados sobre saúde mental e uso de tecnologia 🌱\n", + "Explorando o impacto do tempo de tela no bem-estar 🧠\n", + "\n", + "Conjunto de dados sobre saúde mental e uso de tecnologia 🌱\n", + "\n", + "\n", + "O objetivo da análise é compreender a percepção dos entrevistados sobre seu estado mental em relação ao tempo dedicada a telas.\n", + "\n", + "Verificar o padrão de horas dedicadas a horas de sono e atividade física.\n", + "\n", + "Verificar a percepção sobre o impacto no trabalho em relação ao uso de telas.\n" + ], + "metadata": { + "id": "ehsYCT0aRQV_" + } + }, + { + "cell_type": "markdown", + "source": [ + "Imports\n", + "Para fazer a análise, primeiro precisamos importar as bibliotecas de Python: Pandas." + ], + "metadata": { + "id": "-ccf6wkBSJHM" + } + }, + { + "cell_type": "code", + "source": [ + "import pandas as pd\n", + "import matplotlib.pyplot as plt\n", + "\n", + "\n" + ], + "metadata": { + "id": "GMC_maMISM-n" + }, + "execution_count": 33, + "outputs": [] + }, + { + "cell_type": "markdown", + "source": [ + "Criação do Dataframe\n", + "Etapa de coleta de dados\n", + "Vamos análisar a fonte de dados em csv, assim precisamos criar um dataframe e ler o arquivos arquivos csv(s)." + ], + "metadata": { + "id": "Bx-PZi-JSV1A" + } + }, + { + "cell_type": "code", + "source": [ + "dataframe = pd.read_csv(\"mental_health_and_technology_usage_2024.csv\")\n", + "dataframe\n", + "#visualização de tabela completa\n", + "#DataFrame é uma estrutura de dados bidimensional amplamente usada na biblioteca pandas do Python.\n", + "#Ele se assemelha a uma tabela (como em uma planilha do Excel ou uma tabela SQL), onde os dados são organizados em linhas e colunas." + ], + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/", + "height": 617 + }, + "id": "_IxsKqaCZ4UN", + "outputId": "45482164-1ab0-4e91-8590-5c9be971b384" + }, + "execution_count": 38, + "outputs": [ + { + "output_type": "execute_result", + "data": { + "text/plain": [ + " User_ID Age Gender Technology_Usage_Hours \\\n", + "0 USER-00001 23 Female 6.57 \n", + "1 USER-00002 21 Male 3.01 \n", + "2 USER-00003 51 Male 3.04 \n", + "3 USER-00004 25 Female 3.84 \n", + "4 USER-00005 53 Male 1.20 \n", + "... ... ... ... ... \n", + "9995 USER-09996 42 Male 7.05 \n", + "9996 USER-09997 31 Other 3.12 \n", + "9997 USER-09998 23 Male 4.38 \n", + "9998 USER-09999 38 Male 4.44 \n", + "9999 USER-10000 41 Male 2.50 \n", + "\n", + " Social_Media_Usage_Hours Gaming_Hours Screen_Time_Hours \\\n", + "0 6.00 0.68 12.36 \n", + "1 2.57 3.74 7.61 \n", + "2 6.14 1.26 3.16 \n", + "3 4.48 2.59 13.08 \n", + "4 0.56 0.29 12.63 \n", + "... ... ... ... \n", + "9995 0.41 0.53 13.90 \n", + "9996 6.79 0.80 1.17 \n", + "9997 3.98 0.52 7.81 \n", + "9998 1.48 3.28 13.95 \n", + "9999 4.80 0.25 8.82 \n", + "\n", + " Mental_Health_Status Stress_Level Sleep_Hours Physical_Activity_Hours \\\n", + "0 Good Low 8.01 6.71 \n", + "1 Poor High 7.28 5.88 \n", + "2 Fair High 8.04 9.81 \n", + "3 Excellent Medium 5.62 5.28 \n", + "4 Good Low 5.55 4.00 \n", + "... ... ... ... ... \n", + "9995 Good Medium 7.37 5.02 \n", + "9996 Fair Medium 8.92 9.78 \n", + "9997 Poor High 7.59 2.99 \n", + "9998 Poor Medium 7.26 2.24 \n", + "9999 Fair Low 4.62 5.09 \n", + "\n", + " Support_Systems_Access Work_Environment_Impact Online_Support_Usage \n", + "0 No Negative Yes \n", + "1 Yes Positive No \n", + "2 No Negative No \n", + "3 Yes Negative Yes \n", + "4 No Positive Yes \n", + "... ... ... ... \n", + "9995 Yes Neutral No \n", + "9996 No Neutral Yes \n", + "9997 No Positive No \n", + "9998 Yes Neutral Yes \n", + "9999 Yes Positive Yes \n", + "\n", + "[10000 rows x 14 columns]" + ], + "text/html": [ + "\n", + "
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],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Mental_Health_Status\",\n \"properties\": {\n \"dtype\": \"category\",\n \"num_unique_values\": 4,\n \"samples\": [\n \"Poor\",\n \"Excellent\",\n \"Good\"\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Stress_Level\",\n \"properties\": {\n \"dtype\": \"category\",\n \"num_unique_values\": 3,\n \"samples\": [\n \"Low\",\n \"High\",\n \"Medium\"\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Sleep_Hours\",\n \"properties\": {\n \"dtype\": \"number\",\n \"std\": 1.450933133028419,\n \"min\": 4.0,\n \"max\": 9.0,\n \"num_unique_values\": 501,\n \"samples\": [\n 8.06,\n 7.54,\n 6.86\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Physical_Activity_Hours\",\n \"properties\": {\n \"dtype\": \"number\",\n \"std\": 2.9050439116152496,\n \"min\": 0.0,\n \"max\": 10.0,\n \"num_unique_values\": 1001,\n \"samples\": [\n 0.92,\n 1.0,\n 4.76\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Support_Systems_Access\",\n \"properties\": {\n \"dtype\": \"category\",\n \"num_unique_values\": 2,\n \"samples\": [\n \"Yes\",\n \"No\"\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Work_Environment_Impact\",\n \"properties\": {\n \"dtype\": \"category\",\n \"num_unique_values\": 3,\n \"samples\": [\n \"Negative\",\n \"Positive\"\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Online_Support_Usage\",\n \"properties\": {\n \"dtype\": \"category\",\n \"num_unique_values\": 2,\n \"samples\": [\n \"No\",\n \"Yes\"\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n }\n ]\n}" + } + }, + "metadata": {}, + "execution_count": 38 + } + ] + }, + { + "cell_type": "markdown", + "source": [ + " Visualização e Limpeza dos dados\n", + "\n" + ], + "metadata": { + "id": "MV90Tz5qHjz-" + } + }, + { + "cell_type": "code", + "source": [ + "#identificar as quantidades de linhas e colunas\n", + "num_linhas = dataframe.shape[0]\n", + "num_colunas = dataframe.shape[1]\n", + "colunas = dataframe.columns.values\n", + "\n", + "print(f\"Número de linhas: {num_linhas} \\n\"\n", + " f\"Número de colunas: {num_colunas} \\n\"\n", + " f\"Colunas: {colunas} \\n\")" + ], + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "1S5_6JAMHfwO", + "outputId": "6ed7dad6-8d20-471f-f6b4-93f66df80729" + }, + "execution_count": 4, + "outputs": [ + { + "output_type": "stream", + "name": "stdout", + "text": [ + "Número de linhas: 10000 \n", + "Número de colunas: 14 \n", + "Colunas: ['User_ID' 'Age' 'Gender' 'Technology_Usage_Hours'\n", + " 'Social_Media_Usage_Hours' 'Gaming_Hours' 'Screen_Time_Hours'\n", + " 'Mental_Health_Status' 'Stress_Level' 'Sleep_Hours'\n", + " 'Physical_Activity_Hours' 'Support_Systems_Access'\n", + " 'Work_Environment_Impact' 'Online_Support_Usage'] \n", + "\n" + ] + } + ] + }, + { + "cell_type": "code", + "source": [ + "# Informações do dataframe\n", + "dataframe.info()" + ], + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "outputId": "3a0e4823-abda-4104-a7ff-c4225633453f", + "id": "W481EZZjH7kx" + }, + "execution_count": 5, + "outputs": [ + { + "output_type": "stream", + "name": "stdout", + "text": [ + "\n", + "RangeIndex: 10000 entries, 0 to 9999\n", + "Data columns (total 14 columns):\n", + " # Column Non-Null Count Dtype \n", + "--- ------ -------------- ----- \n", + " 0 User_ID 10000 non-null object \n", + " 1 Age 10000 non-null int64 \n", + " 2 Gender 10000 non-null object \n", + " 3 Technology_Usage_Hours 10000 non-null float64\n", + " 4 Social_Media_Usage_Hours 10000 non-null float64\n", + " 5 Gaming_Hours 10000 non-null float64\n", + " 6 Screen_Time_Hours 10000 non-null float64\n", + " 7 Mental_Health_Status 10000 non-null object \n", + " 8 Stress_Level 10000 non-null object \n", + " 9 Sleep_Hours 10000 non-null float64\n", + " 10 Physical_Activity_Hours 10000 non-null float64\n", + " 11 Support_Systems_Access 10000 non-null object \n", + " 12 Work_Environment_Impact 10000 non-null object \n", + " 13 Online_Support_Usage 10000 non-null object \n", + "dtypes: float64(6), int64(1), object(7)\n", + "memory usage: 1.1+ MB\n" + ] + } + ] + }, + { + "cell_type": "code", + "source": [ + "# Quantidade de nulos por coluna\n", + "dataframe.isnull().sum()" + ], + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/", + "height": 523 + }, + "id": "ydO0XiVbIIE0", + "outputId": "fe9c4b78-04c2-4cd6-8bb8-310fa676310b" + }, + "execution_count": 6, + "outputs": [ + { + "output_type": "execute_result", + "data": { + "text/plain": [ + "User_ID 0\n", + "Age 0\n", + "Gender 0\n", + "Technology_Usage_Hours 0\n", + "Social_Media_Usage_Hours 0\n", + "Gaming_Hours 0\n", + "Screen_Time_Hours 0\n", + "Mental_Health_Status 0\n", + "Stress_Level 0\n", + "Sleep_Hours 0\n", + 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" + ] + }, + "metadata": {}, + "execution_count": 6 + } + ] + }, + { + "cell_type": "code", + "source": [ + "# Etapa de Transformação: dados renomeados para identificar o significado das colunas melhorar a análise\n", + "dataframe_renomeado = dataframe.rename(columns={'User_ID': 'Usuario_ID', 'Age': 'Idade','Gender': 'Gênero', 'Technology_Usage_Hours': 'Horas_de_uso_da_tecnologia',\n", + " 'Social_Media_Usage_Hours': 'Horas de uso de mídias sociais', 'Gaming_Hours': 'Horas de jogo','Screen_Time_Hours': 'Horas_de_Tempo_de_Tela', 'Mental_Health_Status': 'Estado_de_Saúde_Mental', 'Stress_Level': 'Nível_de_estresse', 'Sleep_Hours': 'Horas de sono', 'Physical_Activity_Hours': 'Horas_de_Atividade_Física',\n", + " 'Support_Systems_Access': 'Suporte_Sistemas_Acesso', 'Work_Environment_Impact': 'Impacto_no_ambiente_de_trabalho', 'Online_Support_Usage': 'Uso_do_suporte_online', })\n", + "\n", + "colunas_atualizadas = dataframe_renomeado.columns.values\n", + "\n", + "print(f\"Colunas Atualizadas: {colunas_atualizadas} \\n\")" + ], + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "lMkkRx7gRvar", + "outputId": "f2a85ad1-9006-4637-9f25-7308dfc3bcfc" + }, + "execution_count": 28, + "outputs": [ + { + "output_type": "stream", + "name": "stdout", + "text": [ + "Colunas Atualizadas: ['Usuario_ID' 'Idade' 'Gênero' 'Horas_de_uso_da_tecnologia'\n", + " 'Horas de uso de mídias sociais' 'Horas de jogo' 'Horas_de_Tempo_de_Tela'\n", + " 'Estado_de_Saúde_Mental' 'Nível_de_estresse' 'Horas de sono'\n", + " 'Horas_de_Atividade_Física' 'Suporte_Sistemas_Acesso'\n", + " 'Impacto_no_ambiente_de_trabalho' 'Uso_do_suporte_online'] \n", + "\n" + ] + } + ] + }, + { + "cell_type": "code", + "source": [ + "# Quantidade de pessoas por Gênero\n", + "#do pandas é utilizada para contar a quantidade de ocorrências de cada valor em uma coluna.\n", + "#A coluna Gender será contada e retornará a quantidade de pessoas por gênero.\n", + "contagem_genero = dataframe['Gender'].value_counts()\n", + "contagem_genero\n", + "\n" + ], + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/", + "height": 210 + }, + "id": "_Ir0JYOcR99L", + "outputId": "3355b86a-7a58-42d6-d520-5d669821137b" + }, + "execution_count": 29, + "outputs": [ + { + "output_type": "execute_result", + "data": { + "text/plain": [ + "Gender\n", + "Other 3364\n", + "Male 3350\n", + "Female 3286\n", + "Name: count, dtype: int64" + ], + "text/html": [ + "
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" + ] + }, + "metadata": {}, + "execution_count": 29 + } + ] + }, + { + "cell_type": "code", + "source": [ + "# Quantidade de pessoas por idade\n", + "#value_conts(): do pandas é utilizada para contar a quantidade de ocorrências de cada valor em uma coluna.\n", + "#a coluna Age será contada e retornará a quantidade de pessoas por idade.\n", + "# sort_index(): é utilizada para ordenar os dados de uma Series ou DataFrame de acordo com o índice.\n", + "# contagem_idade será ordenada pelos valores do índice, que contém faixas etárias ou valores de idade.\n", + "# groupby() do pandas é usada para agrupar dados com base em uma ou mais colunas e realizar operações agregadas, como somas, médias, contagens, etc., em cada grupo\n", + "contagem_idade= dataframe['Age'].value_counts()\n", + "contagem_idade\n", + "order_idade = contagem_idade.sort_index()\n", + "order_idade\n", + "groupby_idade = dataframe.groupby('Age')['Gender'].value_counts()\n", + "groupby_idade" + ], + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/", + "height": 490 + }, + "id": "HS1a5QplSTd7", + "outputId": "0e8fdc48-8dea-4d31-fad2-13c30fd6ada5" + }, + "execution_count": 30, + "outputs": [ + { + "output_type": "execute_result", + "data": { + "text/plain": [ + "Age Gender\n", + "18 Other 78\n", + " Female 75\n", + " Male 67\n", + "19 Male 63\n", + " Other 63\n", + " ..\n", + "64 Female 72\n", + " Male 62\n", + "65 Male 80\n", + " Other 78\n", + " Female 72\n", + "Name: count, Length: 144, dtype: int64" + ], + "text/html": [ + "
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" + ] + }, + "metadata": {}, + "execution_count": 30 + } + ] + }, + { + "cell_type": "code", + "source": [ + "#quantidade de respostas de acordo com a percepção de nível de estresse em relação ao gênero\n", + "#A função crosstab() do pandas é usada para criar uma tabela de frequência cruzada entre duas ou mais colunas.\n", + "# Ela é útil para gerar tabelas de contingência que mostram a relação entre variáveis categóricas, como a contagem de ocorrências entre elas.\n", + "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Stress_Level'])\n", + "print(dataframe_crosstab)" + ], + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "2px9ffYGRKuq", + "outputId": "ae8aada2-0f92-4478-b36d-c4ef68d6aaf1" + }, + "execution_count": 26, + "outputs": [ + { + "output_type": "stream", + "name": "stdout", + "text": [ + "Stress_Level High Low Medium\n", + "Gender \n", + "Female 1107 1099 1080\n", + "Male 1110 1120 1120\n", + "Other 1113 1113 1138\n" + ] + } + ] + }, + { + "cell_type": "markdown", + "source": [ + "De acordo com o resultado os niveis de estresse para o gênero feminino como alto teve maior incidência.\n", + "Para o gênero masculino o nível médio e baixo teve a mesma quantidade.\n", + "Para o gênero outros o nível de stress médio teve maior incidência.\n" + ], + "metadata": { + "id": "ghnh8pKpd_Xc" + } + }, + { + "cell_type": "code", + "source": [ + "#quantidade de respostas de acordo com a percepção a sensação do estado mental em relação ao gênero\n", + "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Mental_Health_Status'])\n", + "print(dataframe_crosstab)" + ], + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "Id2zBo6XRTVT", + "outputId": "828411a7-32d0-48f4-eb78-21268e41d0f9" + }, + "execution_count": 27, + "outputs": [ + { + "output_type": "stream", + "name": "stdout", + "text": [ + "Mental_Health_Status Excellent Fair Good Poor\n", + "Gender \n", + "Female 846 779 847 814\n", + "Male 840 833 823 854\n", + "Other 832 878 838 816\n" + ] + } + ] + }, + { + "cell_type": "markdown", + "source": [ + "De acordo com o resultado o estado de saúde mental para o gênero feminino como 'Excelente\" teve maior incidência. Para o gênero masculino o estado de saúde mental ruim teve maior incidência. Para o gênero outros o estado de saúde razoável maior incidência.\n", + "É possivel notar resultados interessantes pois a exemplo: apesar das mulheres em sua maioria descrevem estarem estressadas, a maioria classifica seu estado mental como Excelente.\n", + "Para o gênero masculino os resultados possuem mais relação entre o nível de strees entre médio e baixo com a percepção do estado mental(ruim).\n", + "Para o gênero outros os resultados possuem mais relação entre o nível de strees entre médio com a percepção do estado mental(razoável).\n" + ], + "metadata": { + "id": "o9EGG5oUhYe7" + } + }, + { + "cell_type": "code", + "source": [ + "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Work_Environment_Impact'])\n", + "print(dataframe_crosstab)" + ], + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "LPs9IR8yVQKm", + "outputId": "d1649fb0-6fa9-412f-8356-4fe82bda24fa" + }, + "execution_count": 24, + "outputs": [ + { + "output_type": "stream", + "name": "stdout", + "text": [ + "Work_Environment_Impact Negative Neutral Positive\n", + "Gender \n", + "Female 1112 1069 1105\n", + "Male 1129 1119 1102\n", + "Other 1137 1124 1103\n" + ] + } + ] + }, + { + "cell_type": "markdown", + "source": [ + "Nessa tabela é possível identificar a quantidade de respostas sobre a sensação ao impacto no ambiente de trabalho em relação ao uso de tecnologias(telas, redes sociais, jogos, videogames).\n", + "A maioria acreditar ter impacto negativo, mas há uma variação pequena nas quantidade das respostas.\n" + ], + "metadata": { + "id": "_6jmEHfeFw7u" + } + }, + { + "cell_type": "code", + "source": [ + "# Aplicar uma função que classifica os genêros a média de horas de sono\n", + "dataframe_horas_sono = dataframe.groupby('Gender')['Sleep_Hours'].mean()\n", + "print(dataframe_horas_sono)\n" + ], + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "keSd5dKjdDLC", + "outputId": "7f32aac6-113b-49b3-e5fd-e86453a240cf" + }, + "execution_count": 37, + "outputs": [ + { + "output_type": "stream", + "name": "stdout", + "text": [ + "Gender\n", + "Female 6.502684\n", + "Male 6.497627\n", + "Other 6.501894\n", + "Name: Sleep_Hours, dtype: float64\n" + ] + } + ] + }, + { + "cell_type": "markdown", + "source": [ + "Os grupos de genêro apresentam uma média de horas de sono aproximadas.\n", + "\n", + "> Adicionar aspas\n", + "\n" + ], + "metadata": { + "id": "W6MVupGdmhUG" + } + }, + { + "source": [ + "# Aplicar uma função que classifica os generos a atividade física\n", + "dataframe_horas_at = dataframe.groupby('Gender')['Physical_Activity_Hours'].mean() # Define dataframe_horas_at and assign the result to the variable itself, not an attribute.\n", + "print(dataframe_horas_at)\n" + ], + "cell_type": "code", + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "59uQmKatEmXW", + "outputId": "501d57a1-7739-4d34-909b-6f8690353850" + }, + "execution_count": 25, + "outputs": [ + { + "output_type": "stream", + "name": "stdout", + "text": [ + "Gender\n", + "Female 5.011625\n", + "Male 5.003287\n", + "Other 4.996846\n", + "Name: Physical_Activity_Hours, dtype: float64\n" + ] + } + ] + }, + { + "cell_type": "markdown", + "source": [ + "Os grupos de genêro apresentam uma média de horas praticando atividade físicas aproximadas." + ], + "metadata": { + "id": "-94G5cAmm1PG" + } + }, + { + "cell_type": "code", + "source": [ + "dataframe_horas_tela = dataframe.groupby('Gender')['Screen_Time_Hours'].mean()\n", + "print(dataframe_horas_tela)\n", + "\n" + ], + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "-vf2PcW-Vx_5", + "outputId": "5244ed53-7f38-4cf6-f9f6-1db7475553f8" + }, + "execution_count": 22, + "outputs": [ + { + "output_type": "stream", + "name": "stdout", + "text": [ + "Gender\n", + "Female 8.078010\n", + "Male 7.868096\n", + "Other 7.983112\n", + "Name: Screen_Time_Hours, dtype: float64\n" + ] + } + ] + }, + { + "cell_type": "markdown", + "source": [ + "O grupo do gênero feminimo passa mais tem nas telas." + ], + "metadata": { + "id": "oSm28K7onBxE" + } + }, + { + "cell_type": "code", + "source": [ + "dataframe_saude_mental = dataframe.groupby('Gender')['Mental_Health_Status'].value_counts()\n", + "print(dataframe_saude_mental)" + ], + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "mXbcmaOgWGo1", + "outputId": "bf3a9568-85b1-41a0-a9b7-38523b69a656" + }, + "execution_count": 11, + "outputs": [ + { + "output_type": "stream", + "name": "stdout", + "text": [ + "Gender Mental_Health_Status\n", + "Female Good 847\n", + " Excellent 846\n", + " Poor 814\n", + " Fair 779\n", + "Male Poor 854\n", + " Excellent 840\n", + " Fair 833\n", + " Good 823\n", + "Other Fair 878\n", + " Good 838\n", + " Excellent 832\n", + " Poor 816\n", + "Name: count, dtype: int64\n" + ] + } + ] + }, + { + "cell_type": "code", + "source": [ + "# Criando uma tabela cruzada\n", + "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Age'])\n", + "print(dataframe_crosstab)\n", + "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Screen_Time_Hours'],)\n", + "print(dataframe_crosstab)\n", + "groupby_gender = dataframe.groupby('Gender')['Screen_Time_Hours'].mean()\n", + "print(groupby_gender)\n", + "# aqui é possivel notar que os entrevistados possuem a faixa etária de 18 as 65, com uma quantidade homogênea entre as idades.\n", + "# e as horas de tela varia de 1 a 15 horas\n", + "#identicação de gênero: feminino, masculino, outros." + ], + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "0-mQoAiXKa0X", + "outputId": "89d9fadd-afb5-429e-c39d-08cc5b24b67c" + }, + "execution_count": 15, + "outputs": [ + { + "output_type": "stream", + "name": "stdout", + "text": [ + "Age 18 19 20 21 22 23 24 25 26 27 ... 56 57 58 59 60 61 \\\n", + "Gender ... \n", + "Female 75 52 58 67 65 67 62 70 77 71 ... 71 73 64 78 63 66 \n", + "Male 67 63 74 81 71 84 71 70 75 64 ... 65 68 59 82 54 60 \n", + "Other 78 63 82 68 80 65 79 82 68 75 ... 67 77 73 75 69 61 \n", + "\n", + "Age 62 63 64 65 \n", + "Gender \n", + "Female 79 72 72 72 \n", + "Male 81 70 62 80 \n", + "Other 85 65 74 78 \n", + "\n", + "[3 rows x 48 columns]\n", + "Screen_Time_Hours 1.00 1.01 1.02 1.03 1.04 1.05 1.06 1.07 \\\n", + "Gender \n", + "Female 0 1 4 2 1 4 3 1 \n", + "Male 2 2 1 2 2 3 1 3 \n", + "Other 1 4 0 2 2 1 1 1 \n", + "\n", + "Screen_Time_Hours 1.08 1.09 ... 14.91 14.92 14.93 14.94 14.95 \\\n", + "Gender ... \n", + "Female 2 2 ... 6 5 2 2 4 \n", + "Male 2 5 ... 2 3 1 2 2 \n", + "Other 1 3 ... 3 2 1 2 5 \n", + "\n", + "Screen_Time_Hours 14.96 14.97 14.98 14.99 15.00 \n", + "Gender \n", + "Female 4 3 1 0 1 \n", + "Male 1 1 3 2 3 \n", + "Other 2 1 2 3 4 \n", + "\n", + "[3 rows x 1400 columns]\n", + "Gender\n", + "Female 8.078010\n", + "Male 7.868096\n", + "Other 7.983112\n", + "Name: Screen_Time_Hours, dtype: float64\n" + ] + } + ] + }, + { + "cell_type": "code", + "source": [ + "# Calcular a tabulação cruzada de Gênero e Status de Saúde Mental,\n", + "# agregando Horas de Uso de Tecnologia com a função média\n", + "\n", + "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Mental_Health_Status'], values=dataframe['Technology_Usage_Hours'], aggfunc='mean')\n", + "print(dataframe_crosstab)\n", + "\n", + "\n" + ], + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "HitPidcZAqrC", + "outputId": "3cc5e41b-aded-400c-cb60-3934f79854bc" + }, + "execution_count": 16, + "outputs": [ + { + "output_type": "stream", + "name": "stdout", + "text": [ + "Mental_Health_Status Excellent Fair Good Poor\n", + "Gender \n", + "Female 6.439634 6.174326 6.608654 6.772948\n", + "Male 6.455131 6.374454 6.427023 6.419180\n", + "Other 6.422055 6.488747 6.570501 6.525699\n" + ] + } + ] + }, + { + "cell_type": "code", + "source": [ + "data = {\n", + " 'Mental_Health_Status': ['Excellent', 'Fair', 'Good', 'Poor'],\n", + " 'Female': [6.439634, 6.174326, 6.608654, 6.772948],\n", + " 'Male': [6.455131, 6.374454, 6.427023, 6.419180],\n", + " 'Other': [6.422055, 6.488747, 6.570501, 6.525699]\n", + "}\n", + "\n", + "# Criando um DataFrame com os dados\n", + "df = pd.DataFrame(data)\n", + "\n", + "# Definindo o gráfico de barras\n", + "df.set_index('Mental_Health_Status').plot(kind='bar', figsize=(10,6))\n", + "\n", + "# Adicionando rótulos e título\n", + "plt.title('Mental Health Status by Gender')\n", + "plt.xlabel('Mental Health Status')\n", + "plt.ylabel('Mean Score')\n", + "plt.xticks(rotation=0) # Rotaciona os labels do eixo x\n", + "\n", + "# Exibindo o gráfico\n", + "plt.legend(title='Gender')\n", + "plt.show()\n" + ], + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/", + "height": 564 + }, + "id": "0x66XwX0bz5a", + "outputId": "9e447960-7e19-4394-b63b-59f41b6cd266" + }, + "execution_count": 35, + "outputs": [ + { + "output_type": "display_data", + "data": { + "text/plain": [ + "
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L1KJFCxUuXPimxx8wYICKFi2qZ555xu6DZq/792yNq6urHnvsMS1dutQucF53/vz5m57z32rWrKmgoCDNnj3b7nOe4uLiMr32HTt21G+//aZ3330303EuX76sS5cu5fr8AHAdM0EA8o3sLtn5p4YNG6p///6aOHGi9uzZo4ceekju7u46fPiwlixZounTp2d7P1F2qlatKldXV02ePFmJiYmyWq1q3Lix6tatqwIFCqhnz54aPHiwLBaL5s+ff0uXBt2q559/Xp9//rlat25tW5b60qVL2rdvnz799FOdOHFChQsXVqtWrTR16lS1aNFCXbt2VXx8vN555x1FRkba/fGflezGn919Vzm1du1ajRo1So888ojuv/9++fr66tixY5o3b55SU1M1evRoW9/rCwoMHjxYzZs3l6urqzp37pyrcdWoUUPr1q3T1KlTFRoaqlKlSql27drq3LmzRowYofbt22vw4MFKSUnRrFmzVLZsWbvQMnbsWG3evFmtWrVSyZIlFR8fr5kzZ6p48eJ64IEHbjre6OhoNW/e3G6JbEkaM2ZMpr49evSw/ZxmFeizUrBgQS1fvlxt2rRRlSpV1LlzZ9WqVUvu7u46ffq0lixZIsn+vp5JkyZpw4YNql27tvr166eoqCj9+eef+uGHH7Ru3bosg9+NuLu769VXX1X//v3VuHFjderUScePH1dsbGyme4KeeOIJLV68WE8//bQ2bNigevXqKT09Xb/88osWL16sNWvWqGbNmrk6PwDYOG9hOgC4df9cIvtG/r1E9nVz5841atSoYXh5eRl+fn5GpUqVjOHDhxtnzpy56b4NGza0W8rXMAzj3XffNSIiIgxXV1e75aK3bdtm3H///YaXl5cRGhpqDB8+3FizZk2mJaVzs0R2xYoVs9x2/PjxTEtkG4ZhXLx40Rg5cqQRGRlpeHh4GIULFzbq1q1rTJkyxUhLS7P1e//9940yZcoYVqvVKF++vBEbG5tpGejrr8u/l5LObvy5eQ3/7dixY8Yrr7xi3H///UaRIkUMNzc3IygoyGjVqpXx9ddf2/W9du2a8Z///McICgoyLBaLXc05Hdcvv/xiNGjQwPDy8jIk2Y3xq6++MqKjow0PDw+jXLlyxkcffZTpGOvXrzfatm1rhIaGGh4eHkZoaKjRpUuXTMuTZ0WSERMTY3z00Ue2WqtVq5blsuOGYRipqalGgQIFjICAAOPy5cs3Pf4/nT171nj++eeNqKgow8vLy7BarUZERITRo0cPu6XMr/v999+NmJgYIywszHB3dzeCg4ONJk2aGHPnzrX1ub5E9pIlS+z2vf4zGRsba9c+c+ZMo1SpUobVajVq1qxpbN68OcufibS0NGPy5MlGxYoVDavVahQoUMCoUaOGMWbMGCMxMTHT6wcAOWUxjDv4T5IAAOC2Xbt2TaGhoWrTpo3ef/99Z5cDAPcc7gkCAOAes2LFCp0/f149evRwdikAcE9iJggAgHvE9u3b9eOPP2rcuHEqXLiwwz/wFQDMgpkgAADuEbNmzdKAAQNUpEgRffjhh84uBwDuWcwEAQAAADAVZoIAAAAAmAohCAAAAICp3NMflpqRkaEzZ87Iz89PFovF2eUAAAAAcBLDMHTx4kWFhobKxeXGcz33dAg6c+aMwsLCnF0GAAAAgLvE6dOnVbx48Rv2uadDkJ+fn6S/B+rv7+/kagAAAAA4S1JSksLCwmwZ4Ubu6RB0/RI4f39/QhAAAACAHN0m49SFEcLDw2WxWDI9YmJinFkWAAAAgHzMqTNB33//vdLT023Pf/rpJzVr1kwdOnRwYlUAAAAA8jOnhqCgoCC755MmTVLp0qXVsGFDJ1UEAAAAIL+7a+4JSktL00cffaRnn3022+v4UlNTlZqaanuelJR0p8oDAACAiRmGoWvXrtldxYQ7y9XVVW5ubg75aJy7JgStWLFCCQkJ6tWrV7Z9Jk6cqDFjxty5ogAAAGB6aWlpOnv2rFJSUpxdiul5e3srJCREHh4et3Uci2EYhoNqui3NmzeXh4eH/ve//2XbJ6uZoLCwMCUmJrI6HAAAABwuIyNDhw8flqurq4KCguTh4eGQmQjkjmEYSktL0/nz55Wenq4yZcpk+kDUpKQkBQQE5Cgb3BUzQSdPntS6deu0bNmyG/azWq2yWq13qCoAAACYXVpamjIyMhQWFiZvb29nl2NqXl5ecnd318mTJ5WWliZPT89bPpZTl8i+LjY2VkWKFFGrVq2cXQoAAACQyb9nHeAcjvo+OP27mZGRodjYWPXs2VNubnfFxBQAAACAfMzpIWjdunU6deqU+vTp4+xSAAAAAJiA00PQQw89JMMwVLZsWWeXAgAAAJhWo0aNNHToUGeXcUc4PQQBAAAA+Nu5c+c0ZMgQRUZGytPTU0WLFlW9evU0a9Ysluh2IG7CAQAAAO4Cx44dU7169RQYGKgJEyaoUqVKslqt2rdvn+bOnatixYrpkUcecXaZ2UpPT5fFYrknFpG4+ysEAAAATGDgwIFyc3PTzp071bFjR1WoUEERERFq27atvvjiC7Vp00aSlJCQoCeffFJBQUHy9/dX48aNtXfvXttxRo8erapVq2r+/PkKDw9XQECAOnfurIsXL9r6XLp0ST169JCvr69CQkL0xhtvZKonNTVVw4YNU7FixeTj46PatWtr48aNtu1xcXEKDAzU559/rqioKFmtVp06dSrvXiAHIgQBAAAATvbHH3/oq6++UkxMjHx8fLLsc/1DWjt06KD4+HitWrVKu3btUvXq1dWkSRP9+eeftr5Hjx7VihUrtHLlSq1cuVKbNm3SpEmTbNuff/55bdq0SZ999pm++uorbdy4UT/88IPd+QYNGqRvv/1WCxcu1I8//qgOHTqoRYsWOnz4sK1PSkqKJk+erPfee0/79+9XkSJFHPmy5BkuhwMAAACc7MiRIzIMQ+XKlbNrL1y4sK5cuSJJiomJUZs2bbRjxw7Fx8fLarVKkqZMmaIVK1bo008/1VNPPSXp74+hiYuLk5+fnyTpiSee0Pr16zV+/HglJyfr/fff10cffaQmTZpIkj744AMVL17cdt5Tp04pNjZWp06dUmhoqCRp2LBhWr16tWJjYzVhwgRJ0tWrVzVz5kxVqVIlD18dxyMEAQAAAHepHTt2KCMjQ926dVNqaqr27t2r5ORkFSpUyK7f5cuXdfToUdvz8PBwWwCSpJCQEMXHx0v6e5YoLS1NtWvXtm0vWLCgXQDbt2+f0tPTM63gnJqaanduDw8PVa5c2TGDvYMIQQAAAICTRUZGymKx6ODBg3btERERkiQvLy9JUnJyskJCQuzuzbkuMDDQ9rW7u7vdNovFooyMjBzXk5ycLFdXV+3atUuurq5223x9fW1fe3l52S7Tu5cQggAAAAAnK1SokJo1a6YZM2boP//5T7b3BVWvXl3nzp2Tm5ubwsPDb+lcpUuXlru7u7Zv364SJUpIkv766y8dOnRIDRs2lCRVq1ZN6enpio+PV/369W/pPHczQhAAAADuCuEvfOHU85+Y1Mqp5585c6bq1aunmjVravTo0apcubJcXFz0/fff65dfflGNGjXUtGlT1alTR+3atdNrr72msmXL6syZM/riiy/Uvn171axZ86bn8fX1Vd++ffX888+rUKFCKlKkiF566SW7pa3Lli2rbt26qUePHnrjjTdUrVo1nT9/XuvXr1flypXVqpVzX6vbRQgCAAAA7gKlS5fW7t27NWHCBI0cOVK//vqrrFaroqKiNGzYMA0cOFAWi0VffvmlXnrpJfXu3Vvnz59XcHCwGjRooKJFi+b4XK+//rqSk5PVpk0b+fn56bnnnlNiYqJdn9jYWL366qt67rnn9Ntvv6lw4cK6//771bp1a0cP/Y6zGIZhOLuIW5WUlKSAgAAlJibK39/f2eUAAADgNtyNM0FXrlzR8ePHVapUKXl6ejqhKvzTjb4fuckGfE4QAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFPhw1IBALgL3I2fjwIA+RUzQQAAAABMhZkgAAAA4BbcyRnc/DJbGx4erqFDh2ro0KFOrYMQBAAA7gqVPqjk1PPv67nPqecHHK1Xr1764IMPMrUfPnxYkZGRTqjo7kEIAgAAAPKpFi1aKDY21q4tKCjISdXcPbgnCAAAAMinrFargoOD7R6urq767LPPVL16dXl6eioiIkJjxozRtWvXbPtZLBbNmTNHrVu3lre3typUqKBvv/1WR44cUaNGjeTj46O6devq6NGjtn2OHj2qtm3bqmjRovL19VWtWrW0bt26G9aXkJCgJ598UkFBQfL391fjxo21d+/ePHs9rmMmCAAAALjL7b+wP9f7JFxJ0MW0i5n23fXtLsU8EaORE0aq+v3VdfrEaY15boziU+L1zuR3bP3GjRunqVOnaurUqRoxYoS6du2qiIgIjRw5UiVKlFCfPn00aNAgrVq1SpKUnJyshx9+WOPHj5fVatWHH36oNm3a6ODBgypRokSWNXbo0EFeXl5atWqVAgICNGfOHDVp0kSHDh1SwYIFcz3mnCIEAQAAAPnUpq82qVbJWrbn9ZvUV1JikvoO7qu2ndtKksLCwzTohUGaOmaqXQjq3bu3OnbsKEkaMWKE6tSpo5dfflnNmzeXJA0ZMkS9e/e29a9SpYqqVKliez5u3DgtX75cn3/+uQYNGpSptq1bt2rHjh2Kj4+X1WqVJE2ZMkUrVqzQp59+qqeeesqBr4Q9QhAA3AW4IRwAkBdqPVBLr7z2iu25l7eXHm30qHbv2K25b861tWdkZCj1SqpSUlLk7e0tSapcubJte9GiRSVJlSpVsmu7cuWKkpKS5O/vr+TkZI0ePVpffPGFzp49q2vXruny5cs6depUlrXt3btXycnJKlSokF375cuX7S6zywuEIAAAACCf8vb2VokI+0vRUi6lKGZ4jJq2apqpv6enp+1rd3d329cWiyXbtoyMDEnSsGHDtHbtWk2ZMkWRkZHy8vLS448/rrS0tCxrS05OVkhIiDZu3JhpW2BgYM4GeIsIQZBGBzj5/InOPT8AAICJVKhUQcePHM8UjiTJxeXW103btm2bevXqpfbt20v6O+ScOHEi2/7Vq1fXuXPn5ObmpvDw8Fs+760gBN0F7uQHbWXlhOfN+wAAACB/GDBsgGK6xSikeIgeavOQLC4WHdx/UEd+PqI5U+fc8nHLlCmjZcuWqU2bNrJYLHr55Zdts0RZadq0qerUqaN27drptddeU9myZXXmzBl98cUXat++vWrWrHnLtdwMIQgAADj/qgBJKpX16lHA3erEpFYOPd6trAB3K+o1rqd3FryjWVNmad7b8+Tm5qZSZUrpse6P3dZxp06dqj59+qhu3boqXLiwRowYoaSkpGz7WywWffnll3rppZfUu3dvnT9/XsHBwWrQoIHtHqS8YjEMw8jTM+ShpKQkBQQEKDExUf7+/s4u55Y5fyaoq1PPX8nJv/S4IRx3AxZGgNl/F0j8PsDd+T644hum4/XeUKliQfJ0s+Tp+fd7eOTp8XOiYuGKzi7hhq5cuaLjx4+rVKlSdvcvSbnLBnxYKgAAAABTIQQBAAAAMBXuCQIAyfn3Q3AvBAAAdwwzQQAAAABMhRAEAAAAwFQIQQAAAABMhRAEAAAAwFQIQQAAAABMhRAEAAAAwFRYIhsAAAC4FXMbOfRwFW+wbf+gbxx6rtw6ceKESpUqpd27d6tq1apOrcURmAkCAAAA8qGXBr2k6KBojRk2JtO2V4e/quigaL006CUnVOZ8hCAAAAAgnwouFqzVy1fryuUrtrbUK6n6ctmXCike4sTKnIsQBAAAAORTUZWjFFwsWOu+WGdrW/fFOgUXD1aFShVsbVvXb9UTrZ5QYGCgChUqpNatW+vo0aM3PPZPP/2kli1bytfXV0WLFtUTTzyhCxcu5NlYHIkQBAAAAORj7bu214pPVtieL/94udp3bm/X53LKZfUY0EM7d+7U+vXr5eLiovbt2ysjIyPLYyYkJKhx48aqVq2adu7cqdWrV+v3339Xx44d83IoDsPCCAAAAEA+1vrx1pr26jSdOX1GkrR7x269Pvd1ff/N97Y+zdo0kyRFFo6UJM2bN09BQUE6cOCAoqOjMx1zxowZqlatmiZMmGBrmzdvnsLCwnTo0CGVLVs2L4d02whBAJwu/IUvnF2CTng6uwIAAPJGwcIF1aBpA61YuEKGYahB0wYqUKiAXZ+TR09qxuQZ+mXPL7pw4YJtBujUqVNZhqC9e/dqw4YN8vX1zbTt6NGjhCAAAAAAztW+a3tNGPn3rM1LkzKvCDeo+yCFFA/Ru+++q9DQUGVkZCg6OlppaWlZHi85OVlt2rTR5MmTM20LCbn7F1wgBAEAAAD53ANNHtDVtKuyWCyq17ie3baEPxN0/MhxjZ46Wk2aNJEkbd269YbHq169upYuXarw8HC5ud17kYKFEQAAAIB8ztXVVZ9/87k+2/aZXF1d7bb5B/orsGCglsxfoiNHjujrr7/Ws88+e8PjxcTE6M8//1SXLl30/fff6+jRo1qzZo169+6t9PT0vByKQ9x7sQ0AAAC4Gzy10aGH2+/h4dDj/ZuvX+b7dyTJxcVFr899XRNfnKjo6GiVK1dOb731lho1apTtsUJDQ7Vt2zaNGDFCDz30kFJTU1WyZEm1aNFCLi53/zwLIQgAAADIh8bPGH/D7W99+Jbt6zoN6+jzbZ+rYuGKtjbDMGxfh4eH2z2XpDJlymjZsmUOqvbOuvtjGgAAAAA4kNND0G+//abu3burUKFC8vLyUqVKlbRz505nlwUAAAAgn3Lq5XB//fWX6tWrpwcffFCrVq1SUFCQDh8+rAIFCtx8ZwAAAAC4BU4NQZMnT1ZYWJhiY2NtbaVKlXJiRQAAAADyO6deDvf555+rZs2a6tChg4oUKaJq1arp3XffzbZ/amqqkpKS7B4AAAAAkBtODUHHjh3TrFmzVKZMGa1Zs0YDBgzQ4MGD9cEHH2TZf+LEiQoICLA9wsLC7nDFAAAAAO51Tg1BGRkZql69uiZMmKBq1arpqaeeUr9+/TR79uws+48cOVKJiYm2x+nTp+9wxQAAAADudU4NQSEhIYqKirJrq1Chgk6dOpVlf6vVKn9/f7sHAAAAAOSGU0NQvXr1dPDgQbu2Q4cOqWTJkk6qCAAAAEB+59TV4Z555hnVrVtXEyZMUMeOHbVjxw7NnTtXc+fOdWZZAAAAwE1VWtvjjp1rYauFd+xckhQXF6ehQ4cqISHhjp73TnHqTFCtWrW0fPlyffLJJ4qOjta4ceM0bdo0devWzZllAQAAAPnC2d/O6r+D/6sHox9U1dCqalatmSa+OFEJfybY+jxU/SHNnz3feUU6gVNngiSpdevWat26tbPLAAAAAPKV0ydOq9vD3RQeEa7X5rym4iWL68gvR/TGmDe0df1Wfbz6YwUUCLijNV29elXu7u539JxZcepMEAAAAIC8MX7EeLm7u2vukrmqVa+WQoqHqH7T+nrv0/cUfy5e0ydMV6+2vXTm9BlNfnmyooOiZbFY7I6xZs0aVahQQb6+vmrRooXOnj1rt/29995ThQoV5OnpqfLly2vmzJm2bSdOnJDFYtGiRYvUsGFDeXp6asGCBXdk7Dfj9JkgAAAAAI6V+Feitm3YpsEvDpanl6fdtsJFC6vVY620esVqfbn9Sz324GPq0KODHu/+uMoVKmfrl5KSoilTpmj+/PlycXFR9+7dNWzYMFuQWbBggV555RXNmDFD1apV0+7du9WvXz/5+PioZ8+etuO88MILeuONN1StWjV5etrX4iyEIAAAACCfOXnspAzDUETZiCy3R5SNUFJCktLT0+Xq6iofHx8VLlpYwYWDbX2uXr2q2bNnq3Tp0pKkQYMGaezYsbbto0aN0htvvKFHH31UklSqVCkdOHBAc+bMsQtBQ4cOtfW5WxCCAAAAgHzKMIxb3tfb29sWgKS/P+MzPj5eknTp0iUdPXpUffv2Vb9+/Wx9rl27poAA+/uMatasecs15BVCEAAAAJDPlChVQhaLRccOHZNaZd5+7NAx+Qf6q2Dhgtke498LGFgsFluoSk5OliS9++67ql27tl0/V1dXu+c+Pj63MoQ8xcIIAAAAQD4TWDBQdRrW0aLYRbpy+Yrdtgu/X9AXS79Qi3YtZLFY5O7urvSM9Fwdv2jRogoNDdWxY8cUGRlp9yhVqpQjh5InCEEAAABAPvTSpJeUlpam/h37a+c3O3X2t7Paun6r+nXopyLBRTTkxSGSpNASodr17S79fvZ3XbhwIcfHHzNmjCZOnKi33npLhw4d0r59+xQbG6upU6fm1ZAchsvhAAAAgFuwr9mHDj3efg8Phx6vZOmSWrR2kd6Z/I6ee/I5JSYkqnCRwmrcsrEGPj/Q9hlBg0YM0phhY9SyVkulpabl+D6iJ598Ut7e3nr99df1/PPPy8fHR5UqVdLQoUMdOo68QAgCAAAA8qnQsFCNnzH+hn2q1KyiZRuXSZIqFq4oSerVq5d69epl169du3aZAlLXrl3VtWvXLI8bHh5+Wwsz5CUuhwMAAABgKoQgAAAAAKZCCAIAAABgKoQgAAAAAKZCCAIAAACy8/9v7L9L7+83HUcttEAIAgAAALLhnvqnlJ6mlKvOrgSSlJKSIklyd3e/reOwRDYAAACQDddrKQo8uUrxHo9LCpS3u2Sx5M25MiwZeXPgXLhy5YqzS8iSYRhKSUlRfHy8AgMD5erqelvHIwQBAAAANxB8+GNJUnzJlpKrYz/Q9J/i3Zz/p7lbgvNruJHAwEAFBwff9nHu7lECAAAATmaRoZDDC1Tk2DJd9SyUZ1NBQ4qF5slxc+Pz9p87u4Rsubu73/YM0HWEIAAAACAHXNMvy/XSr3l2/LNpeXSdXS54eno6u4Q7goURAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJiKU0PQ6NGjZbFY7B7ly5d3ZkkAAAAA8jk3ZxdQsWJFrVu3zvbczc3pJQEAAADIx5yeONzc3BQcHOzsMgAAAACYhNPvCTp8+LBCQ0MVERGhbt266dSpU9n2TU1NVVJSkt0DAAAAAHLDqSGodu3aiouL0+rVqzVr1iwdP35c9evX18WLF7PsP3HiRAUEBNgeYWFhd7hiAAAAAPc6p4agli1bqkOHDqpcubKaN2+uL7/8UgkJCVq8eHGW/UeOHKnExETb4/Tp03e4YgAAAAD3OqffE/RPgYGBKlu2rI4cOZLldqvVKqvVeoerAgAAAJCfOP2eoH9KTk7W0aNHFRIS4uxSAAAAAORTTg1Bw4YN06ZNm3TixAl98803at++vVxdXdWlSxdnlgUAAAAgH3Pq5XC//vqrunTpoj/++ENBQUF64IEH9N133ykoKMiZZQEAAADIx5waghYuXOjM0wMAAAAwobvqniAAAAAAyGuEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmcksh6Nq1a1q3bp3mzJmjixcvSpLOnDmj5ORkhxYHAAAAAI7mltsdTp48qRYtWujUqVNKTU1Vs2bN5Ofnp8mTJys1NVWzZ8/OizoBAAAAwCFyPRM0ZMgQ1axZU3/99Ze8vLxs7e3bt9f69esdWhwAAAAAOFquZ4K2bNmib775Rh4eHnbt4eHh+u233xxWGAAAAADkhVzPBGVkZCg9PT1T+6+//io/Pz+HFAUAAAAAeSXXIeihhx7StGnTbM8tFouSk5M1atQoPfzww46sDQAAAAAcLtchaMqUKdq2bZuioqJ05coVde3a1XYp3OTJk2+5kEmTJslisWjo0KG3fAwAAAAAuJlc3xMUFhamvXv3atGiRdq7d6+Sk5PVt29fdevWzW6hhNz4/vvvNWfOHFWuXPmW9gcAAACAnMpVCLp69arKly+vlStXqlu3burWrdttF5CcnKxu3brp3Xff1auvvnrbxwMAAACAG8nV5XDu7u66cuWKQwuIiYlRq1at1LRp05v2TU1NVVJSkt0DAAAAAHIj1/cExcTEaPLkybp27dptn3zhwoX64YcfNHHixBz1nzhxogICAmyPsLCw264BAAAAgLnk+p6g77//XuvXr9dXX32lSpUqycfHx277smXLcnSc06dPa8iQIVq7dq08PT1ztM/IkSP17LPP2p4nJSURhAAAAADkSq5DUGBgoB577LHbPvGuXbsUHx+v6tWr29rS09O1efNmzZgxQ6mpqXJ1dbXbx2q1ymq13va5AQAAAJhXrkNQbGysQ07cpEkT7du3z66td+/eKl++vEaMGJEpAAEAAACAI+Q6BF13/vx5HTx4UJJUrlw5BQUF5Wp/Pz8/RUdH27X5+PioUKFCmdoBAAAAwFFyvTDCpUuX1KdPH4WEhKhBgwZq0KCBQkND1bdvX6WkpORFjQAAAADgMLkOQc8++6w2bdqk//3vf0pISFBCQoI+++wzbdq0Sc8999xtFbNx40ZNmzbtto4BAAAAADeS68vhli5dqk8//VSNGjWytT388MPy8vJSx44dNWvWLEfWBwAAAAAOleuZoJSUFBUtWjRTe5EiRbgcDgAAAMBdL9chqE6dOho1apSuXLlia7t8+bLGjBmjOnXqOLQ4AAAAAHC0XF8ON336dDVv3lzFixdXlSpVJEl79+6Vp6en1qxZ4/ACAQAAAMCRch2CoqOjdfjwYS1YsEC//PKLJKlLly7q1q2bvLy8HF4gAAAAADjSLX1OkLe3t/r16+foWgAAAAAgz+X6nqCJEydq3rx5mdrnzZunyZMnO6QoAAAAAMgruQ5Bc+bMUfny5TO1V6xYUbNnz3ZIUQAAAACQV3Idgs6dO6eQkJBM7UFBQTp79qxDigIAAACAvJLrEBQWFqZt27Zlat+2bZtCQ0MdUhQAAAAA5JVcL4zQr18/DR06VFevXlXjxo0lSevXr9fw4cP13HPPObxAAAAAAHCkXIeg559/Xn/88YcGDhyotLQ0SZKnp6dGjBihkSNHOrxAAAAAAHCkXIcgi8WiyZMn6+WXX9bPP/8sLy8vlSlTRlarNS/qAwAAAACHyvU9Qdf5+vqqVq1a8vPz09GjR5WRkeHIugAAAAAgT+Q4BM2bN09Tp061a3vqqacUERGhSpUqKTo6WqdPn3Z4gQAAAADgSDkOQXPnzlWBAgVsz1evXq3Y2Fh9+OGH+v777xUYGKgxY8bkSZEAAAAA4Cg5vifo8OHDqlmzpu35Z599prZt26pbt26SpAkTJqh3796OrxAAAAAAHCjHM0GXL1+Wv7+/7fk333yjBg0a2J5HRETo3Llzjq0OAAAAABwsxyGoZMmS2rVrlyTpwoUL2r9/v+rVq2fbfu7cOQUEBDi+QgAAAABwoBxfDtezZ0/FxMRo//79+vrrr1W+fHnVqFHDtv2bb75RdHR0nhQJAAAAAI6S4xA0fPhwpaSkaNmyZQoODtaSJUvstm/btk1dunRxeIEAAAAA4Eg5DkEuLi4aO3asxo4dm+X2f4ciAAAAALgb3fKHpQIAAADAvYgQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATCXHq8Ndl56erri4OK1fv17x8fHKyMiw2/711187rDgAAAAAcLRch6AhQ4YoLi5OrVq1UnR0tCwWS17UBQAAAAB5ItchaOHChVq8eLEefvjhvKgHAAAAAPJUru8J8vDwUGRkZF7UAgAAAAB5Ltch6LnnntP06dNlGEZe1AMAAAAAeSrXl8Nt3bpVGzZs0KpVq1SxYkW5u7vbbV+2bJnDigMAAAAAR8t1CAoMDFT79u3zohYAAAAAyHO5DkGxsbF5UQcAAAAA3BF8WCoAAAAAU8n1TJAkffrpp1q8eLFOnTqltLQ0u20//PCDQwoDAAAAgLyQ65mgt956S71791bRokW1e/du3XfffSpUqJCOHTumli1b5kWNAAAAAOAwuQ5BM2fO1Ny5c/X222/Lw8NDw4cP19q1azV48GAlJibmRY0AAAAA4DC5DkGnTp1S3bp1JUleXl66ePGiJOmJJ57QJ5984tjqAAAAAMDBch2CgoOD9eeff0qSSpQooe+++06SdPz4cT5AFQAAAMBdL9chqHHjxvr8888lSb1799YzzzyjZs2aqVOnTnx+EAAAAIC7Xq5Xh5s7d64yMjIkSTExMSpUqJC++eYbPfLII+rfv7/DCwQAAAAAR8p1CHJxcZGLy/9NIHXu3FmdO3d2aFEAAAAAkFdu6cNSt2zZou7du6tOnTr67bffJEnz58/X1q1bHVocAAAAADharkPQ0qVL1bx5c3l5eWn37t1KTU2VJCUmJmrChAkOLxAAAAAAHCnXIejVV1/V7Nmz9e6778rd3d3WXq9ePf3www8OLQ4AAAAAHC3XIejgwYNq0KBBpvaAgAAlJCQ4oiYAAAAAyDO39DlBR44cydS+detWRUREOKQoAAAAAMgruQ5B/fr105AhQ7R9+3ZZLBadOXNGCxYs0LBhwzRgwIC8qBEAAAAAHCbXS2S/8MILysjIUJMmTZSSkqIGDRrIarVq2LBh+s9//pMXNQIAAACAw+Q6BFksFr300kt6/vnndeTIESUnJysqKkq+vr55UR8AAAAAOFSuQ9B1Hh4eioqKcmQtAAAAAJDnchyC+vTpk6N+8+bNu+ViAAAAACCv5XhhhLi4OG3YsEEJCQn666+/sn3kxqxZs1S5cmX5+/vL399fderU0apVq3I9CAAAAADIqRzPBA0YMECffPKJjh8/rt69e6t79+4qWLDgbZ28ePHimjRpksqUKSPDMPTBBx+obdu22r17typWrHhbxwYAAACArOR4Juidd97R2bNnNXz4cP3vf/9TWFiYOnbsqDVr1sgwjFs6eZs2bfTwww+rTJkyKlu2rMaPHy9fX1999913t3Q8AAAAALiZXH1OkNVqVZcuXbR27VodOHBAFStW1MCBAxUeHq7k5OTbKiQ9PV0LFy7UpUuXVKdOnSz7pKamKikpye4BAAAAALmR6w9Lte3o4iKLxSLDMJSenn7LBezbt0++vr6yWq16+umntXz58mxXnZs4caICAgJsj7CwsFs+LwAAAABzylUISk1N1SeffKJmzZqpbNmy2rdvn2bMmKFTp07d8ucElStXTnv27NH27ds1YMAA9ezZUwcOHMiy78iRI5WYmGh7nD59+pbOCQAAAMC8crwwwsCBA7Vw4UKFhYWpT58++uSTT1S4cOHbLsDDw0ORkZGSpBo1auj777/X9OnTNWfOnEx9rVarrFbrbZ8TAAAAgHnlOATNnj1bJUqUUEREhDZt2qRNmzZl2W/ZsmW3VVBGRoZSU1Nv6xgAAAAAkJ0ch6AePXrIYrE49OQjR45Uy5YtVaJECV28eFEff/yxNm7cqDVr1jj0PAAAAABwXY5DUFxcnMNPHh8frx49eujs2bMKCAhQ5cqVtWbNGjVr1szh5wIAAAAAKRchKC+8//77zjw9AAAAABO65SWyAQAAAOBeRAgCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCpODUETJ05UrVq15OfnpyJFiqhdu3Y6ePCgM0sCAAAAkM85NQRt2rRJMTEx+u6777R27VpdvXpVDz30kC5duuTMsgAAAADkY27OPPnq1avtnsfFxalIkSLatWuXGjRo4KSqAAAAAORnTg1B/5aYmChJKliwYJbbU1NTlZqaanuelJR0R+oCAAAAkH/cNQsjZGRkaOjQoapXr56io6Oz7DNx4kQFBATYHmFhYXe4SgAAAAD3ursmBMXExOinn37SwoULs+0zcuRIJSYm2h6nT5++gxUCAAAAyA/uisvhBg0apJUrV2rz5s0qXrx4tv2sVqusVusdrAwAAABAfuPUEGQYhv7zn/9o+fLl2rhxo0qVKuXMcgAAAACYgFNDUExMjD7++GN99tln8vPz07lz5yRJAQEB8vLycmZpAAAAAPIpp94TNGvWLCUmJqpRo0YKCQmxPRYtWuTMsgAAAADkY06/HA4AAAAA7qS7ZnU4AAAAALgTCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATMWpIWjz5s1q06aNQkNDZbFYtGLFCmeWAwAAAMAEnBqCLl26pCpVquidd95xZhkAAAAATMTNmSdv2bKlWrZs6cwSAAAAAJiMU0NQbqWmpio1NdX2PCkpyYnVAAAAALgX3VMLI0ycOFEBAQG2R1hYmLNLAgAAAHCPuadC0MiRI5WYmGh7nD592tklAQAAALjH3FOXw1mtVlmtVmeXAQAAAOAedk/NBAEAAADA7XLqTFBycrKOHDlie378+HHt2bNHBQsWVIkSJZxYGQAAAID8yqkhaOfOnXrwwQdtz5999llJUs+ePRUXF+ekqgAAAADkZ04NQY0aNZJhGM4sAQAAAIDJcE8QAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwlbsiBL3zzjsKDw+Xp6enateurR07dji7JAAAAAD5lNND0KJFi/Tss89q1KhR+uGHH1SlShU1b95c8fHxzi4NAAAAQD7k9BA0depU9evXT71791ZUVJRmz54tb29vzZs3z9mlAQAAAMiH3Jx58rS0NO3atUsjR460tbm4uKhp06b69ttvM/VPTU1Vamqq7XliYqIkKSkpKe+LzUMZqSlOPX+SxXDq+dMvpzv1/Pf6z09+4Oz3gMT7gPeB8zn7feDs94DE+wC8D5z9HpDu7ffB9doN4+bfR6eGoAsXLig9PV1Fixa1ay9atKh++eWXTP0nTpyoMWPGZGoPCwvLsxrNIMDZBehnp549YIDzXwE4n/N/CngfwLnujp8A3gdwLuf/BDj3PSDlj/fBxYsXFRBw43E4NQTl1siRI/Xss8/anmdkZOjPP/9UoUKFZLFYnFiZeSUlJSksLEynT5+Wv7+/s8sBnIL3AcD7AOA94HyGYejixYsKDQ29aV+nhqDChQvL1dVVv//+u13777//ruDg4Ez9rVarrFarXVtgYGBelogc8vf35w0P0+N9APA+AHgPONfNZoCuc+rCCB4eHqpRo4bWr19va8vIyND69etVp04dJ1YGAAAAIL9y+uVwzz77rHr27KmaNWvqvvvu07Rp03Tp0iX17t3b2aUBAAAAyIecHoI6deqk8+fP65VXXtG5c+dUtWpVrV69OtNiCbg7Wa1WjRo1KtNlioCZ8D4AeB8AvAfuLRYjJ2vIAQAAAEA+4fQPSwUAAACAO4kQBAAAAMBUCEEAAAAATIUQBIcJDw/XtGnTbM8tFotWrFjhtHoAZ4mLi+MzzIBc4ncGgDuJEJSP9OrVSxaLJdOjRYsWzi7NYf4dtIC8lN176siRIzfcr1OnTjp06NAdqhJwnHPnzmnIkCGKjIyUp6enihYtqnr16mnWrFlKSUlxdnnAHfPP//97eHgoMjJSY8eO1bVr15xdGhzE6Utkw7FatGih2NhYuzaWagRuXVbvqaCgoBvu4+XlJS8vr2y3p6WlycPDwyH1AY5y7Ngx1atXT4GBgZowYYIqVaokq9Wqffv2ae7cuSpWrJgeeeQRZ5cJ3DHX//+fmpqqL7/8UjExMXJ3d9fIkSMdfi5+L9x5zATlM1arVcHBwXaPAgUKaOPGjfLw8NCWLVtsfV977TUVKVJEv//+uyQpISFB/fv3V9GiReXp6ano6GitXLnS1n/r1q2qX7++vLy8FBYWpsGDB+vSpUs5ru306dPq2LGjAgMDVbBgQbVt21YnTpywbe/Vq5fatWunKVOmKCQkRIUKFVJMTIyuXr0qSWrUqJFOnjypZ555xvavM0Bey+o9NX36dFWqVEk+Pj4KCwvTwIEDlZycbNvn35fDjR49WlWrVtV7772nUqVKydPT0wkjAW5s4MCBcnNz086dO9WxY0dVqFBBERERatu2rb744gu1adNGknTq1Cm1bdtWvr6+8vf3V8eOHW2/R66bNWuWSpcuLQ8PD5UrV07z58+323748GE1aNBAnp6eioqK0tq1a+/YOIGcuv7//5IlS2rAgAFq2rSpPv/8c/3111/q0aOHChQoIG9vb7Vs2VKHDx+223fp0qWqWLGirFarwsPD9cYbb9htDw8P17hx49SjRw/5+/vrqaeeupNDgwhBptGoUSMNHTpUTzzxhBITE7V79269/PLLeu+991S0aFFlZGSoZcuW2rZtmz766CMdOHBAkyZNkqurqyTp6NGjatGihR577DH9+OOPWrRokbZu3apBgwbl6PxXr15V8+bN5efnpy1btmjbtm3y9fVVixYtlJaWZuu3YcMGHT16VBs2bNAHH3yguLg4xcXFSZKWLVum4sWLa+zYsTp79qzOnj3r8NcJyAkXFxe99dZb2r9/vz744AN9/fXXGj58+A33OXLkiJYuXaply5Zpz549d6ZQIIf++OMPffXVV4qJiZGPj0+WfSwWizIyMtS2bVv9+eef2rRpk9auXatjx46pU6dOtn7Lly/XkCFD9Nxzz+mnn35S//791bt3b23YsEGSlJGRoUcffVQeHh7avn27Zs+erREjRtyRcQK3w8vLS2lpaerVq5d27typzz//XN9++60Mw9DDDz9s+0fbXbt2qWPHjurcubP27dun0aNH6+WXX7b9PXPdlClTVKVKFdvfZLjDDOQbPXv2NFxdXQ0fHx+7x/jx4w3DMIzU1FSjatWqRseOHY2oqCijX79+tn3XrFljuLi4GAcPHszy2H379jWeeuopu7YtW7YYLi4uxuXLlw3DMIySJUsab775pm27JGP58uWGYRjG/PnzjXLlyhkZGRm27ampqYaXl5exZs0aW/0lS5Y0rl27ZuvToUMHo1OnTrbn/z4HkJeyek89/vjjmfotWbLEKFSokO15bGysERAQYHs+atQow93d3YiPj78TZQO59t133xmSjGXLltm1FypUyPazP3z4cOOrr74yXF1djVOnTtn67N+/35Bk7NixwzAMw6hbt67d7xfD+Pv/5Q8//LBhGH//vnFzczN+++032/ZVq1bZ/c4AnK1nz55G27ZtDcMwjIyMDGPt2rWG1Wo12rVrZ0gytm3bZut74cIFw8vLy1i8eLFhGIbRtWtXo1mzZnbHe/75542oqCjb85IlSxrt2rXL+4EgW9wTlM88+OCDmjVrll1bwYIFJUkeHh5asGCBKleurJIlS+rNN9+09dmzZ4+KFy+usmXLZnncvXv36scff9SCBQtsbYZhKCMjQ8ePH1eFChVuWNfevXt15MgR+fn52bVfuXJFR48etT2vWLGibfZJkkJCQrRv376bjBrIO/9+T/n4+GjdunWaOHGifvnlFyUlJenatWu6cuWKUlJS5O3tneVxSpYsedN7iYC7zY4dO5SRkaFu3bopNTVVP//8s8LCwhQWFmbrExUVpcDAQP3888+qVauWfv7550yX9tSrV0/Tp0+XJNsxQkNDbdvr1KlzZwYE5MLKlSvl6+urq1evKiMjQ127dtWjjz6qlStXqnbt2rZ+hQoVUrly5fTzzz9L+vtnvG3btnbHqlevnqZNm6b09HTb3zk1a9a8c4NBJoSgfMbHx0eRkZHZbv/mm28kSX/++af+/PNP22UPN7qJW5KSk5PVv39/DR48ONO2EiVK3LSu5ORk1ahRwy5EXffPPwzd3d3ttl2//AJwln+/p06cOKHWrVtrwIABGj9+vAoWLKitW7eqb9++SktLyzYEZXeJEXA3iIyMlMVi0cGDB+3aIyIiJN38dwSQH13/RzAPDw+FhobKzc1Nn3/+ucOOz+8F5+KeIBM5evSonnnmGb377ruqXbu2evbsaQsYlStX1q+//prtsr7Vq1fXgQMHFBkZmemRk9VMqlevrsOHD6tIkSKZ9g8ICMjxGDw8PJSenp7j/oCj7dq1SxkZGXrjjTd0//33q2zZsjpz5oyzywJuS6FChdSsWTPNmDHjhgveVKhQQadPn9bp06dtbQcOHFBCQoKioqJsfbZt22a337Zt2+y2nz592u6+zu+++86RwwEc4vo/gpUoUUJubn/PG1SoUEHXrl3T9u3bbf3++OMPHTx48KbvgbJly9pd7QLnIgTlM6mpqTp37pzd48KFC0pPT1f37t3VvHlz9e7dW7Gxsfrxxx9tq5U0bNhQDRo00GOPPaa1a9fq+PHjWrVqlVavXi1JGjFihL755hsNGjRIe/bs0eHDh/XZZ5/leGGEbt26qXDhwmrbtq22bNmi48ePa+PGjRo8eLB+/fXXHI8vPDxcmzdv1m+//aYLFy7k/gUCblNkZKSuXr2qt99+W8eOHdP8+fM1e/ZsZ5cF3LaZM2fq2rVrqlmzphYtWqSff/5ZBw8e1EcffaRffvlFrq6uatq0qSpVqqRu3brphx9+0I4dO9SjRw81bNjQdmnP888/r7i4OM2aNUuHDx/W1KlTtWzZMg0bNkyS1LRpU5UtW1Y9e/bU3r17tWXLFr300kvOHDqQY2XKlFHbtm3Vr18/bd26VXv37lX37t1VrFgx2yVwzz33nNavX69x48bp0KFD+uCDDzRjxgzbewB3B0JQPrN69WqFhITYPR544AGNHz9eJ0+e1Jw5cyT9fa/N3Llz9d///ld79+6V9PdyjrVq1VKXLl0UFRWl4cOH22ZdKleurE2bNunQoUOqX7++qlWrpldeecXumu4b8fb21ubNm1WiRAk9+uijqlChgvr27asrV67I398/x+MbO3asTpw4odKlS3N/BZyiSpUqmjp1qiZPnqzo6GgtWLBAEydOdHZZwG0rXbq0du/eraZNm2rkyJGqUqWKatasqbffflvDhg3TuHHjZLFY9Nlnn6lAgQJq0KCBmjZtqoiICC1atMh2nHbt2mn69OmaMmWKKlasqDlz5ig2NlaNGjWS9PfqisuXL9fly5d133336cknn9T48eOdNGog92JjY1WjRg21bt1aderUkWEY+vLLL22X9FevXl2LFy/WwoULFR0drVdeeUVjx45Vr169nFs47FgMwzCcXQQAAAAA3CnMBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAHC4uLk6BgYHOLsOmV69eateu3Q37bNy4URaLRQkJCXekJgCA8xCCAOAe0atXL1ksFj399NOZtsXExMhisahXr14OPefo0aNVtWpVhx7zOovFohUrVmRqz0lguV2NGjXS0KFDHXKsTZs2qXHjxipYsKC8vb1VpkwZ9ezZU2lpaZJuPRASygAg7xCCAOAeEhYWpoULF+ry5cu2titXrujjjz9WiRIlnFiZOR04cEAtWrRQzZo1tXnzZu3bt09vv/22PDw8lJ6e7uzyAADZIAQBwD2kevXqCgsL07Jly2xty5YtU4kSJVStWjW7vhkZGZo4caJKlSolLy8vValSRZ9++qlt+/WZhvXr16tmzZry9vZW3bp1dfDgQUl/z2CMGTNGe/fulcVikcViUVxcnCRp6tSpqlSpknx8fBQWFqaBAwcqOTk5T8Z8s3Gkp6erb9++tu3lypXT9OnTsz1er169tGnTJk2fPt02rhMnTti279q1K8vXIytfffWVgoOD9dprryk6OlqlS5dWixYt9O6778rLy0sbN25U7969lZiYaDvX6NGjJUnz589XzZo15efnp+DgYHXt2lXx8fGSpBMnTujBBx+UJBUoUMBuli88PFzTpk2zq6Nq1aq24xqGodGjR6tEiRKyWq0KDQ3V4MGDc/hqA4A5EIIA4B7Tp08fxcbG2p7PmzdPvXv3ztRv4sSJ+vDDDzV79mzt379fzzzzjLp3765NmzbZ9XvppZf0xhtvaOfOnXJzc1OfPn0kSZ06ddJzzz2nihUr6uzZszp79qw6deokSXJxcdFbb72l/fv364MPPtDXX3+t4cOH58l4bzaOjIwMFS9eXEuWLNGBAwf0yiuv6MUXX9TixYuzPN706dNVp04d9evXzzausLCwm74eWQkODtbZs2e1efPmLLfXrVtX06ZNk7+/v+1cw4YNkyRdvXpV48aN0969e7VixQqdOHHCFnTCwsK0dOlSSdLBgwd19uzZGwa7f1q6dKnefPNNzZkzR4cPH9aKFStUqVKlHO0LAGbh5uwCAAC50717d40cOVInT56UJG3btk0LFy7Uxo0bbX1SU1M1YcIErVu3TnXq1JEkRUREaOvWrZozZ44aNmxo6zt+/Hjb8xdeeEGtWrXSlStX5OXlJV9fX7m5uSk4ONiuhn/eTxMeHq5XX31VTz/9tGbOnJmrsXTp0kWurq52bampqWrVqlWOx+Hu7q4xY8bY9i9VqpS+/fZbLV68WB07dsx0zoCAAHl4eMjb2zvTuG70enh6embq26FDB61Zs0YNGzZUcHCw7r//fjVp0kQ9evSQv7+/PDw8FBAQIIvFkulc/wxXEREReuutt1SrVi0lJyfL19dXBQsWlCQVKVIkV/cUnTp1SsHBwWratKnc3d1VokQJ3XfffTneHwDMgJkgALjHBAUFqVWrVoqLi1NsbKxatWqlwoUL2/U5cuSIUlJS1KxZM/n6+toeH374oY4ePWrXt3LlyravQ0JCJMl2WVZ21q1bpyZNmqhYsWLy8/PTE088oT/++EMpKSm5Gsubb76pPXv22D0eeeSRXI/jnXfeUY0aNRQUFCRfX1/NnTtXp06dylUt1+Xm9XB1dVVsbKx+/fVXvfbaaypWrJgmTJhgmz27kV27dqlNmzYqUaKE/Pz8bMHrVuu+rkOHDrp8+bIiIiLUr18/LV++XNeuXbutYwJAfsNMEADcg/r06aNBgwZJ+jsA/Nv1+3O++OILFStWzG6b1Wq1e+7u7m772mKxSPr7ErPsnDhxQq1bt9aAAQM0fvx4FSxYUFu3blXfvn2VlpYmb2/vHI8jODhYkZGRdm1+fn62FdFyMo6FCxdq2LBheuONN1SnTh35+fnp9ddf1/bt23Ncxz/l9vWQpGLFiumJJ57QE088oXHjxqls2bKaPXu23QzVP126dEnNmzdX8+bNtWDBAgUFBenUqVNq3ry5bVW57Li4uMgwDLu2q1ev2r4OCwvTwYMHtW7dOq1du1YDBw7U66+/rk2bNtmNDQDMjBAEAPegFi1aKC0tTRaLRc2bN8+0PSoqSlarVadOnbK79C23slrlbNeuXcrIyNAbb7whF5e/LyjI7v6b25WTcWzbtk1169bVwIEDbW3/nu36t7xcva1AgQIKCQnRpUuXsj3XL7/8oj/++EOTJk2y3Y+0c+fOTDVKyrRvUFCQ3SxTUlKSjh8/btfHy8tLbdq0UZs2bRQTE6Py5ctr3759ql69umMGCQD3OEIQANyDXF1d9fPPP9u+/jc/Pz8NGzZMzzzzjDIyMvTAAw8oMTFR27Ztk7+/v3r27Jmj84SHh+v48ePas2ePihcvLj8/P0VGRurq1at6++231aZNG23btk2zZ8926PhyM44yZcroww8/1Jo1a1SqVCnNnz9f33//vUqVKnXDcW3fvl0nTpywu/8mt+bMmaM9e/aoffv2Kl26tK5cuaIPP/xQ+/fv19tvv207V3JystavX68qVarI29tbJUqUkIeHh95++209/fTT+umnnzRu3Di7Y5csWVIWi0UrV67Uww8/bLtHq3HjxoqLi1ObNm0UGBioV155xe5nIC4uTunp6apdu7a8vb310UcfycvLSyVLlrylMQJAfsQ9QQBwj/L395e/v3+228eNG6eXX35ZEydOVIUKFdSiRQt98cUXNwwH//bYY4+pRYsWevDBBxUUFKRPPvlEVapU0dSpUzV58mRFR0drwYIFmjhxoiOGdEvj6N+/vx599FF16tRJtWvX1h9//GE3K5SVYcOGydXVVVFRUbZL0W7Ffffdp+TkZD399NOqWLGiGjZsqO+++04rVqywzVzVrVtXTz/9tDp16qSgoCC99tprCgoKUlxcnJYsWaKoqChNmjRJU6ZMsTt2sWLFNGbMGL3wwgsqWrSo7fLHkSNHqmHDhmrdurVatWqldu3aqXTp0rb9AgMD9e6776pevXqqXLmy1q1bp//9738qVKjQLY0RAPIji/HvC4sBAAAAIB9jJggAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqfw/g364qQyvyjIAAAAASUVORK5CYII=\n" + }, + "metadata": {} + } + ] + }, + { + "cell_type": "markdown", + "source": [ + "Pela relação apresentada acima as médias de horas usando tecnologia, a variação de horas usando tecnologia é pequena em relação ao estado mental. Mas o gênero feminimo que informou estado mental ruim fica um puco mais nas telas. o gênero masculino e outros, possui médias muito próximnas entre horas usando tecnologia e sua relação com a sensação dos estado mental. Acredito ser possivel inferir que a sensação do estado mental ao tempo de usando tecnologia não tenham uma realação significativa de acordo com as respostas no contexto de horas usando teconologia.\n", + "\n", + "Excellent: Excelente / Fair: Razoável/ Good: Bom/ Poor: Ruim" + ], + "metadata": { + "id": "4PoHgP0yAsjJ" + } + }, + { + "cell_type": "code", + "source": [ + "\n", + "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Mental_Health_Status'], values=dataframe['Social_Media_Usage_Hours'], aggfunc='mean')\n", + "print(dataframe_crosstab)" + ], + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "ccHkKUsEA2_F", + "outputId": "999bfa2b-056f-4eee-d104-4e9f91702555" + }, + "execution_count": 17, + "outputs": [ + { + "output_type": "stream", + "name": "stdout", + "text": [ + "Mental_Health_Status Excellent Fair Good Poor\n", + "Gender \n", + "Female 3.845260 4.110244 3.940130 3.953956\n", + "Male 4.024190 3.991393 4.072260 3.895152\n", + "Other 3.919147 3.977802 3.949212 4.003272\n" + ] + } + ] + }, + { + "cell_type": "markdown", + "source": [ + "Resolvi verificar as horas dedicadas a mídias sociais para verificar se há diferenças referente a análise anterior.\n", + "\n", + "Nesse sentido apesar das pequenas diferenças em relação as médias, para os grupos a sensação de estado mental são distintas entre si. Para as mulheres que passam mais tempo em redes sociais seu estado mental é razoável, diferente do tempo dedicado a telas que a sensação estado mental era ruim. Para os homens que passam mais tempo em redes sociais seu estado mental é bom, semelhante ao tempo dedicadas a telas. Para os outros que passam mais tempo em redes sociais seu estado mental é ruim, diferente do tempo dedicado a telas que a sensação estado mental era razoável." + ], + "metadata": { + "id": "wup_l88yBBys" + } + }, + { + "cell_type": "code", + "source": [ + "\n", + "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Mental_Health_Status'], values=dataframe['Social_Media_Usage_Hours'], aggfunc='mean')\n", + "print(dataframe_crosstab)" + ], + "metadata": { + "colab": { + "base_uri": "https://localhost:8080/" + }, + "id": "808hlt0UBWA8", + "outputId": "d6b16ecf-280a-4f47-f774-ee346594700e" + }, + "execution_count": 18, + "outputs": [ + { + "output_type": "stream", + "name": "stdout", + "text": [ + "Mental_Health_Status Excellent Fair Good Poor\n", + "Gender \n", + "Female 3.845260 4.110244 3.940130 3.953956\n", + "Male 4.024190 3.991393 4.072260 3.895152\n", + "Other 3.919147 3.977802 3.949212 4.003272\n" + ] + } + ] + }, + { + "cell_type": "markdown", + "source": [ + "Resolvi verificar as horas dedicadas a mídias sociais para verificar se há diferenças referente a análise anterior.\n", + "\n", + "Nesse sentido apesar das pequenas diferenças em relação as médias, para os grupos a sensação de estado mental são distintas entre si.\n", + "Para as mulheres que passam mais tempo em redes sociais seu estado mental é razoável, diferente do tempo dedicado a telas que a sensação estado mental era ruim.\n", + "Para os homens que passam mais tempo em redes sociais seu estado mental é bom, semelhante ao tempo dedicadas a telas.\n", + "Para os outros que passam mais tempo em redes sociais seu estado mental é ruim, diferente do tempo dedicado a telas que a sensação estado mental era razoável." + ], + "metadata": { + "id": "Ba3nw0nHBYfG" + } + }, + { + "cell_type": "markdown", + "source": [], + "metadata": { + "id": "XZjITheTZOdE" + } + } + ] +} \ No newline at end of file diff --git a/README.md b/README.md index 638127c..3d32a3a 100644 --- a/README.md +++ b/README.md @@ -1,29 +1,18 @@ -

- logo reprograma -

-# Tema da Aula - -Turma Online 34 | Python | Semanas 17 e 18 | 2024 | [Daniele Junior](https://travatech.com.br?router=danijr) - -### Instruções -Antes de começar, vamos organizar nosso setup. -* Fork esse repositório -* Clone o fork na sua máquina (Para isso basta abrir o seu terminal e digitar `git clone url-do-seu-repositorio-forkado`) -* Entre na pasta do seu repositório (Para isso basta abrir o seu terminal e digitar `cd nome-do-seu-repositorio-forkado`) -* [Add outras instruções caso necessário] - -### Resumo -O que veremos na aula de hoje? -* [Slide Semana 17](https://docs.google.com/presentation/d/1axo2Dlm0Hx35ahKdZW6s-UAdG61L41QXdete8ZcQV0w/edit?usp=sharing) -* Slide Semana 18 +Turma Online 34 | Python | Semanas 17 e 18 | 2024 | +* Realizado o Fork do repositório https://github.com/reprograma/on34-python-s17-s18-projeto-final +* Clonei o fork na minha máquina (Para isso basta abrir o seu terminal e digitar `git clone url-do -repositorio-forkado`) +* Add o arquivo da base de dados e o colab, bem como o README. +* Commit – m : das atualizações/ alterações +* Git Status: para verificação se está tudo ok +* Git push: para enviar as mudanças para o repositório remoto. * [fonte de dados escolhida](#https://www.kaggle.com/datasets/waqi786/mental-health-and-technology-usage-dataset?resource=download ) * Análise exploratória Semana destinada a esse tipo de análise para entendimento da base. Nessa etapa foi usado comandos da biblioteca pandas e matplotlib - Foram usados funções como: + Foram usadas funções como: DataFrame é uma estrutura de dados bidimensional amplamente usada na biblioteca pandas do Python. Ele se assemelha a uma tabela (como em uma planilha do Excel ou uma tabela SQL), onde os dados são organizados em linhas e colunas. A função value_counts() é muito usada em Pandas para contar a frequência de valores únicos em uma coluna de um DataFrame. A função sort_index(): é utilizada para ordenar os dados de uma Series ou DataFrame de acordo com o índice. @@ -31,42 +20,27 @@ O que veremos na aula de hoje? A função crosstab() do pandas é usada para criar uma tabela de frequência cruzada entre duas ou mais colunas. Ela é útil para gerar tabelas de contingência que mostram a relação entre variáveis categóricas, como a contagem de ocorrências entre elas. - - -* Criando uma história com dados - ## Conteúdo ### O que é um projeto de análise de dados? -Nesse ponto vocês já aprenderam que ter dados não é a mesma coisa que ter informação. +De acordo com nosso ensino/aprendizagem **Dados:** são elementos brutos e não processados, como números, palavras, ou símbolos que precisam ser interpretados para se tornarem úteis. **Informação:** é o resultado do processamento, organização e interpretação dos dados, fornecendo significado e contexto para tomar decisões ou entender situações. -Assim, dados são a matéria-prima da informação, que é o produto final após análise e interpretação dos dados. - -Por isso a importância de nós contarmos uma história estruturada a partir dos dados que conseguimos coletar. E é exatamente sobre isso, que se trata um projeto de análise de dados: **gerar informação útil a partir da construção de uma perspectiva contextualizada!** - -Então aqui vão algumas perguntas gerais que devemos nos fazer ao iniciar um projeto como esse: - **Conteúdo** - - O que eu quero informar? - compreender a percepção dos entrevistados sobre seu estado mental em relação ao tempo dedicada a telas. + Compreender a percepção dos entrevistados sobre seu estado mental em relação ao tempo dedicada a telas. - **Público** - - Para quem eu estou contando essa história? Com quem vou compartilhar essa informação? - Projeto destinado a conclusão de curso do Análise de dados Reprograma - O contéudo da base é relevante para compreender qual a percepção dos entrevistados frente ao uso de telas + Projeto destinado a conclusão de curso do Análise de dados no Reprograma + O conteúdo da base é relevante para compreender qual a percepção dos entrevistados frente ao uso de telas + - **Transformação** - - Por que essa informação é relevante? O conteúdo é relevante para analisar o nível de aprendizado, bem como ter acesso as informações relacionadas a base de dados * **Escolha do tema** Saúde mental e uso de tecnologia - * **Escolha da Base de Dados** - - https://www.kaggle.com/datasets/waqi786/mental-health-and-technology-usage-dataset?resource=download - -* **Definindo nossas perguntas** +* **Objetivos ** O objetivo da análise é compreender a percepção dos entrevistados sobre seu estado mental em relação ao tempo dedicada a telas. @@ -74,25 +48,6 @@ Então aqui vão algumas perguntas gerais que devemos nos fazer ao iniciar um pr Verificar a percepção sobre o impacto no trabalho em relação ao uso de telas. -*** - -### Material da aula - -* [Slides](https://docs.google.com/presentation/d/1axo2Dlm0Hx35ahKdZW6s-UAdG61L41QXdete8ZcQV0w/edit?usp=sharing) - -### Links Úteis -- [Documentação Pandas](https://pandas.pydata.org/docs/user_guide/index.html#user-guide) -- [Introdução ao Pandas](https://medium.com/tech-grupozap/introdu%C3%A7%C3%A3o-a-biblioteca-pandas-89fa8ed4fa38) -- [Análise Exploratória de Dados I](https://escoladedados.org/tutoriais/analise-exploratoria-de-dados/) -- [Análise Exploratória de Dados II](https://www.alura.com.br/artigos/analise-exploratoria) -- [Storytelling com Dados](https://medium.com/resumos-resenhas/storytelling-com-dados-resumo-fd63ebe4f704) -- [Markdown Cheastsheet](https://www.ibm.com/docs/en/watson-studio-local/1.2.3?topic=notebooks-markdown-jupyter-cheatsheet) - #### Base de Dados - [Kaggle](https://www.kaggle.com/datasets) -- -

-Desenvolvido com :purple_heart: -

- diff --git a/README_Manuelli.md b/README_Manuelli.md deleted file mode 100644 index 638127c..0000000 --- a/README_Manuelli.md +++ /dev/null @@ -1,98 +0,0 @@ -

- logo reprograma -

- -# Tema da Aula - -Turma Online 34 | Python | Semanas 17 e 18 | 2024 | [Daniele Junior](https://travatech.com.br?router=danijr) - -### Instruções -Antes de começar, vamos organizar nosso setup. -* Fork esse repositório -* Clone o fork na sua máquina (Para isso basta abrir o seu terminal e digitar `git clone url-do-seu-repositorio-forkado`) -* Entre na pasta do seu repositório (Para isso basta abrir o seu terminal e digitar `cd nome-do-seu-repositorio-forkado`) -* [Add outras instruções caso necessário] - -### Resumo -O que veremos na aula de hoje? -* [Slide Semana 17](https://docs.google.com/presentation/d/1axo2Dlm0Hx35ahKdZW6s-UAdG61L41QXdete8ZcQV0w/edit?usp=sharing) -* Slide Semana 18 - -* [fonte de dados escolhida](#https://www.kaggle.com/datasets/waqi786/mental-health-and-technology-usage-dataset?resource=download ) -* Análise exploratória - Semana destinada a esse tipo de análise para entendimento da base. - - Nessa etapa foi usado comandos da biblioteca pandas e matplotlib - Foram usados funções como: - DataFrame é uma estrutura de dados bidimensional amplamente usada na biblioteca pandas do Python. Ele se assemelha a uma tabela (como em uma planilha do Excel ou uma tabela SQL), onde os dados são organizados em linhas e colunas. - A função value_counts() é muito usada em Pandas para contar a frequência de valores únicos em uma coluna de um DataFrame. - A função sort_index(): é utilizada para ordenar os dados de uma Series ou DataFrame de acordo com o índice. - A função groupby() do pandas é usada para agrupar dados com base em uma ou mais colunas e realizar operações agregadas, como somas, médias, contagens, etc., em cada grupo - A função crosstab() do pandas é usada para criar uma tabela de frequência cruzada entre duas ou mais colunas. Ela é útil para gerar tabelas de contingência que mostram a relação entre variáveis categóricas, como a contagem de ocorrências entre elas. - - - - -* Criando uma história com dados - -## Conteúdo - -### O que é um projeto de análise de dados? -Nesse ponto vocês já aprenderam que ter dados não é a mesma coisa que ter informação. -**Dados:** são elementos brutos e não processados, como números, palavras, ou símbolos que precisam ser interpretados para se tornarem úteis. -**Informação:** é o resultado do processamento, organização e interpretação dos dados, fornecendo significado e contexto para tomar decisões ou entender situações. -Assim, dados são a matéria-prima da informação, que é o produto final após análise e interpretação dos dados. - -Por isso a importância de nós contarmos uma história estruturada a partir dos dados que conseguimos coletar. E é exatamente sobre isso, que se trata um projeto de análise de dados: **gerar informação útil a partir da construção de uma perspectiva contextualizada!** - -Então aqui vão algumas perguntas gerais que devemos nos fazer ao iniciar um projeto como esse: - -- **Conteúdo** - - O que eu quero informar? - compreender a percepção dos entrevistados sobre seu estado mental em relação ao tempo dedicada a telas. -- **Público** - - Para quem eu estou contando essa história? Com quem vou compartilhar essa informação? - Projeto destinado a conclusão de curso do Análise de dados Reprograma - O contéudo da base é relevante para compreender qual a percepção dos entrevistados frente ao uso de telas -- **Transformação** - - Por que essa informação é relevante? - O conteúdo é relevante para analisar o nível de aprendizado, bem como ter acesso as informações relacionadas a base de dados - - - * **Escolha do tema** - Saúde mental e uso de tecnologia - - * **Escolha da Base de Dados** - - https://www.kaggle.com/datasets/waqi786/mental-health-and-technology-usage-dataset?resource=download - -* **Definindo nossas perguntas** - - O objetivo da análise é compreender a percepção dos entrevistados sobre seu estado mental em relação ao tempo dedicada a telas. - - Verificar o padrão de horas dedicadas a horas de sono e atividade física. - - Verificar a percepção sobre o impacto no trabalho em relação ao uso de telas. - -*** - -### Material da aula - -* [Slides](https://docs.google.com/presentation/d/1axo2Dlm0Hx35ahKdZW6s-UAdG61L41QXdete8ZcQV0w/edit?usp=sharing) - -### Links Úteis -- [Documentação Pandas](https://pandas.pydata.org/docs/user_guide/index.html#user-guide) -- [Introdução ao Pandas](https://medium.com/tech-grupozap/introdu%C3%A7%C3%A3o-a-biblioteca-pandas-89fa8ed4fa38) -- [Análise Exploratória de Dados I](https://escoladedados.org/tutoriais/analise-exploratoria-de-dados/) -- [Análise Exploratória de Dados II](https://www.alura.com.br/artigos/analise-exploratoria) -- [Storytelling com Dados](https://medium.com/resumos-resenhas/storytelling-com-dados-resumo-fd63ebe4f704) -- [Markdown Cheastsheet](https://www.ibm.com/docs/en/watson-studio-local/1.2.3?topic=notebooks-markdown-jupyter-cheatsheet) - - #### Base de Dados -- [Kaggle](https://www.kaggle.com/datasets) -- -

-Desenvolvido com :purple_heart: -

- - From 4b81c2f1fe173d9d73c4843b37e2b344e452d26c Mon Sep 17 00:00:00 2001 From: manuellimartins Date: Fri, 4 Oct 2024 14:23:03 -0300 Subject: [PATCH 5/9] =?UTF-8?q?Altera=C3=A7=C3=B5es?= MIME-Version: 1.0 Content-Type: text/plain; charset=UTF-8 Content-Transfer-Encoding: 8bit --- Projeto_final_Manuelli_ipynb.ipynb | 1651 ---------------------------- 1 file changed, 1651 deletions(-) delete mode 100644 Projeto_final_Manuelli_ipynb.ipynb diff --git a/Projeto_final_Manuelli_ipynb.ipynb b/Projeto_final_Manuelli_ipynb.ipynb deleted file mode 100644 index 393c216..0000000 --- a/Projeto_final_Manuelli_ipynb.ipynb +++ /dev/null @@ -1,1651 +0,0 @@ -{ - "cells": [ - { - "cell_type": "markdown", - "metadata": { - "id": "ehsYCT0aRQV_" - }, - "source": [ - "Base de dados:\n", - "https://www.kaggle.com/datasets/waqi786/mental-health-and-technology-usage-dataset?resource=download\n", - "Conjunto de dados sobre saúde mental e uso de tecnologia 🌱\n", - "Explorando o impacto do tempo de tela no bem-estar 🧠\n", - "\n", - "📱💻 Conjunto de dados sobre saúde mental e uso de tecnologia 🌱\n", - "\n", - "Novo notebook\n", - "\n", - "Download (201 kB)\n", - "\n", - "Sobre o conjunto de dados\n", - "Este conjunto de dados oferece insights sobre como o uso diário da tecnologia, incluindo mídia social e tempo de tela, impacta a saúde mental. 📊 Ele captura vários padrões comportamentais e suas correlações com indicadores de saúde mental, como níveis de estresse, qualidade do sono e produtividade. Mergulhe para analisar a relação entre nossas vidas digitais e bem-estar mental! 🌟\n", - "\n", - "O objetivo da análise é compreender a percepção dos entrevistados sobre seu estado mental em relação ao tempo dedicada a telas.\n", - "\n", - "Verificar o padrão de horas dedicadas a horas de sono e atividade física.\n", - "\n", - "Verificar a percepção sobre o impacto no trabalho em relação ao uso de telas.\n" - ] - }, - { - "cell_type": "markdown", - "metadata": { - "id": "-ccf6wkBSJHM" - }, - "source": [ - "Imports\n", - "Para fazer a análise, primeiro precisamos importar as bibliotecas de Python: Pandas." - ] - }, - { - "cell_type": "code", - "execution_count": 33, - "metadata": { - "id": "GMC_maMISM-n" - }, - "outputs": [], - "source": [ - "import pandas as pd\n", - "import matplotlib.pyplot as plt\n", - "\n", - "\n" - ] - }, - { - "cell_type": "markdown", - "metadata": { - "id": "Bx-PZi-JSV1A" - }, - "source": [ - "Criação do Dataframe\n", - "Etapa de coleta de dados\n", - "Vamos análisar a fonte de dados em csv, assim precisamos criar um dataframe e ler o arquivos arquivos csv(s)." - ] - }, - { - "cell_type": "code", - "execution_count": 38, - "metadata": { - "colab": { - "base_uri": "https://localhost:8080/", - "height": 617 - }, - "id": "_IxsKqaCZ4UN", - "outputId": "45482164-1ab0-4e91-8590-5c9be971b384" - }, - "outputs": [ - { - "data": { - "application/vnd.google.colaboratory.intrinsic+json": { - "summary": "{\n \"name\": \"dataframe\",\n \"rows\": 10000,\n \"fields\": [\n {\n \"column\": \"User_ID\",\n \"properties\": {\n \"dtype\": \"string\",\n \"num_unique_values\": 10000,\n \"samples\": [\n \"USER-06253\",\n \"USER-04685\",\n \"USER-01732\"\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Age\",\n \"properties\": {\n \"dtype\": \"number\",\n \"std\": 13,\n \"min\": 18,\n \"max\": 65,\n \"num_unique_values\": 48,\n \"samples\": [\n 44,\n 35,\n 41\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Gender\",\n \"properties\": {\n \"dtype\": \"category\",\n \"num_unique_values\": 3,\n \"samples\": [\n \"Female\",\n \"Male\",\n \"Other\"\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Technology_Usage_Hours\",\n \"properties\": {\n \"dtype\": \"number\",\n \"std\": 3.169022410148379,\n \"min\": 1.0,\n \"max\": 12.0,\n \"num_unique_values\": 1101,\n \"samples\": [\n 8.06,\n 3.8,\n 6.09\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Social_Media_Usage_Hours\",\n \"properties\": {\n \"dtype\": \"number\",\n \"std\": 2.31370664233858,\n \"min\": 0.0,\n \"max\": 8.0,\n \"num_unique_values\": 801,\n \"samples\": [\n 4.34,\n 6.87,\n 2.95\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Gaming_Hours\",\n \"properties\": {\n \"dtype\": \"number\",\n \"std\": 1.4467484959442913,\n \"min\": 0.0,\n \"max\": 5.0,\n \"num_unique_values\": 501,\n \"samples\": [\n 2.35,\n 4.94,\n 3.28\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Screen_Time_Hours\",\n \"properties\": {\n \"dtype\": \"number\",\n \"std\": 4.042607737897336,\n \"min\": 1.0,\n \"max\": 15.0,\n \"num_unique_values\": 1400,\n \"samples\": [\n 14.21,\n 7.09,\n 3.19\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Mental_Health_Status\",\n \"properties\": {\n \"dtype\": \"category\",\n \"num_unique_values\": 4,\n \"samples\": [\n \"Poor\",\n \"Excellent\",\n \"Good\"\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Stress_Level\",\n \"properties\": {\n \"dtype\": \"category\",\n \"num_unique_values\": 3,\n \"samples\": [\n \"Low\",\n \"High\",\n \"Medium\"\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Sleep_Hours\",\n \"properties\": {\n \"dtype\": \"number\",\n \"std\": 1.450933133028419,\n \"min\": 4.0,\n \"max\": 9.0,\n \"num_unique_values\": 501,\n \"samples\": [\n 8.06,\n 7.54,\n 6.86\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Physical_Activity_Hours\",\n \"properties\": {\n \"dtype\": \"number\",\n \"std\": 2.9050439116152496,\n \"min\": 0.0,\n \"max\": 10.0,\n \"num_unique_values\": 1001,\n \"samples\": [\n 0.92,\n 1.0,\n 4.76\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Support_Systems_Access\",\n \"properties\": {\n \"dtype\": \"category\",\n \"num_unique_values\": 2,\n \"samples\": [\n \"Yes\",\n \"No\"\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Work_Environment_Impact\",\n \"properties\": {\n \"dtype\": \"category\",\n \"num_unique_values\": 3,\n \"samples\": [\n \"Negative\",\n \"Positive\"\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n },\n {\n \"column\": \"Online_Support_Usage\",\n \"properties\": {\n \"dtype\": \"category\",\n \"num_unique_values\": 2,\n \"samples\": [\n \"No\",\n \"Yes\"\n ],\n \"semantic_type\": \"\",\n \"description\": \"\"\n }\n }\n ]\n}", - 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.............................................
9995USER-0999642Male7.050.410.5313.90GoodMedium7.375.02YesNeutralNo
9996USER-0999731Other3.126.790.801.17FairMedium8.929.78NoNeutralYes
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9998USER-0999938Male4.441.483.2813.95PoorMedium7.262.24YesNeutralYes
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"3 Excellent Medium 5.62 5.28 \n", - "4 Good Low 5.55 4.00 \n", - "... ... ... ... ... \n", - "9995 Good Medium 7.37 5.02 \n", - "9996 Fair Medium 8.92 9.78 \n", - "9997 Poor High 7.59 2.99 \n", - "9998 Poor Medium 7.26 2.24 \n", - "9999 Fair Low 4.62 5.09 \n", - "\n", - " Support_Systems_Access Work_Environment_Impact Online_Support_Usage \n", - "0 No Negative Yes \n", - "1 Yes Positive No \n", - "2 No Negative No \n", - "3 Yes Negative Yes \n", - "4 No Positive Yes \n", - "... ... ... ... \n", - "9995 Yes Neutral No \n", - "9996 No Neutral Yes \n", - "9997 No Positive No \n", - "9998 Yes Neutral Yes \n", - "9999 Yes Positive Yes \n", - "\n", - "[10000 rows x 14 columns]" - ] - }, - "execution_count": 38, - "metadata": {}, - "output_type": "execute_result" - } - ], - "source": [ - "dataframe = pd.read_csv(\"mental_health_and_technology_usage_2024.csv\")\n", - "dataframe\n", - "#visualização de tabela completa\n", - "#DataFrame é uma estrutura de dados bidimensional amplamente usada na biblioteca pandas do Python.\n", - "#Ele se assemelha a uma tabela (como em uma planilha do Excel ou uma tabela SQL), onde os dados são organizados em linhas e colunas." - ] - }, - { - "cell_type": "markdown", - "metadata": { - "id": "MV90Tz5qHjz-" - }, - "source": [ - "Etapa: Visualização e Limpeza dos dados Para entender melhor os dados que temos, a distribuição deles e seus tipos, vamos verificar suas colunas e tamanho.\n", - "\n", - "Depois vamos limpar o que achamos necessário, como retirar linhas duplicadas ou deletar colunas que não nos ajudariam durante nossa análise." - ] - }, - { - "cell_type": "code", - "execution_count": 4, - "metadata": { - "colab": { - "base_uri": "https://localhost:8080/" - }, - "id": "1S5_6JAMHfwO", - "outputId": "6ed7dad6-8d20-471f-f6b4-93f66df80729" - }, - "outputs": [ - { - "name": "stdout", - "output_type": "stream", - "text": [ - "Número de linhas: 10000 \n", - "Número de colunas: 14 \n", - "Colunas: ['User_ID' 'Age' 'Gender' 'Technology_Usage_Hours'\n", - " 'Social_Media_Usage_Hours' 'Gaming_Hours' 'Screen_Time_Hours'\n", - " 'Mental_Health_Status' 'Stress_Level' 'Sleep_Hours'\n", - " 'Physical_Activity_Hours' 'Support_Systems_Access'\n", - " 'Work_Environment_Impact' 'Online_Support_Usage'] \n", - "\n" - ] - } - ], - "source": [ - "#identificar as quantidades de linhas e colunas\n", - "num_linhas = dataframe.shape[0]\n", - "num_colunas = dataframe.shape[1]\n", - "colunas = dataframe.columns.values\n", - "\n", - "print(f\"Número de linhas: {num_linhas} \\n\"\n", - " f\"Número de colunas: {num_colunas} \\n\"\n", - " f\"Colunas: {colunas} \\n\")" - ] - }, - { - "cell_type": "code", - "execution_count": 5, - "metadata": { - "colab": { - "base_uri": "https://localhost:8080/" - }, - "id": "W481EZZjH7kx", - "outputId": "3a0e4823-abda-4104-a7ff-c4225633453f" - }, - "outputs": [ - { - "name": "stdout", - "output_type": "stream", - "text": [ - "\n", - "RangeIndex: 10000 entries, 0 to 9999\n", - "Data columns (total 14 columns):\n", - " # Column Non-Null Count Dtype \n", - "--- ------ -------------- ----- \n", - " 0 User_ID 10000 non-null object \n", - " 1 Age 10000 non-null int64 \n", - " 2 Gender 10000 non-null object \n", - " 3 Technology_Usage_Hours 10000 non-null float64\n", - " 4 Social_Media_Usage_Hours 10000 non-null float64\n", - " 5 Gaming_Hours 10000 non-null float64\n", - " 6 Screen_Time_Hours 10000 non-null float64\n", - " 7 Mental_Health_Status 10000 non-null object \n", - " 8 Stress_Level 10000 non-null object \n", - " 9 Sleep_Hours 10000 non-null float64\n", - " 10 Physical_Activity_Hours 10000 non-null float64\n", - " 11 Support_Systems_Access 10000 non-null object \n", - " 12 Work_Environment_Impact 10000 non-null object \n", - " 13 Online_Support_Usage 10000 non-null object \n", - "dtypes: float64(6), int64(1), object(7)\n", - "memory usage: 1.1+ MB\n" - ] - } - ], - "source": [ - "# Informações do dataframe\n", - "dataframe.info()" - ] - }, - { - "cell_type": "code", - "execution_count": 6, - "metadata": { - "colab": { - "base_uri": "https://localhost:8080/", - "height": 523 - }, - "id": "ydO0XiVbIIE0", - "outputId": "fe9c4b78-04c2-4cd6-8bb8-310fa676310b" - 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" - ], - "text/plain": [ - "Age Gender\n", - "18 Other 78\n", - " Female 75\n", - " Male 67\n", - "19 Male 63\n", - " Other 63\n", - " ..\n", - "64 Female 72\n", - " Male 62\n", - "65 Male 80\n", - " Other 78\n", - " Female 72\n", - "Name: count, Length: 144, dtype: int64" - ] - }, - "execution_count": 30, - "metadata": {}, - "output_type": "execute_result" - } - ], - "source": [ - "# Quantidade de pessoas por idade\n", - "#value_conts(): do pandas é utilizada para contar a quantidade de ocorrências de cada valor em uma coluna.\n", - "#a coluna Age será contada e retornará a quantidade de pessoas por idade.\n", - "# sort_index(): é utilizada para ordenar os dados de uma Series ou DataFrame de acordo com o índice.\n", - "# contagem_idade será ordenada pelos valores do índice, que contém faixas etárias ou valores de idade.\n", - "# groupby() do pandas é usada para agrupar dados com base em uma ou mais colunas e realizar operações agregadas, como somas, médias, contagens, etc., em cada grupo\n", - "contagem_idade= dataframe['Age'].value_counts()\n", - "contagem_idade\n", - "order_idade = contagem_idade.sort_index()\n", - "order_idade\n", - "groupby_idade = dataframe.groupby('Age')['Gender'].value_counts()\n", - "groupby_idade" - ] - }, - { - "cell_type": "code", - "execution_count": 26, - "metadata": { - "colab": { - "base_uri": "https://localhost:8080/" - }, - "id": "2px9ffYGRKuq", - "outputId": "ae8aada2-0f92-4478-b36d-c4ef68d6aaf1" - }, - "outputs": [ - { - "name": "stdout", - "output_type": "stream", - "text": [ - "Stress_Level High Low Medium\n", - "Gender \n", - "Female 1107 1099 1080\n", - "Male 1110 1120 1120\n", - "Other 1113 1113 1138\n" - ] - } - ], - "source": [ - "#quantidade de respostas de acordo com a percepção de nível de estresse em relação ao gênero\n", - "#A função crosstab() do pandas é usada para criar uma tabela de frequência cruzada entre duas ou mais colunas.\n", - "# Ela é útil para gerar tabelas de contingência que mostram a relação entre variáveis categóricas, como a contagem de ocorrências entre elas.\n", - "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Stress_Level'])\n", - "print(dataframe_crosstab)" - ] - }, - { - "cell_type": "markdown", - "metadata": { - "id": "ghnh8pKpd_Xc" - }, - "source": [ - "De acordo com o resultado os niveis de estresse para o gênero feminino como alto teve maior incidência.\n", - "Para o gênero masculino o nível médio e baixo teve a mesma quantidade.\n", - "Para o gênero outros o nível de stress médio teve maior incidência.\n" - ] - }, - { - "cell_type": "code", - "execution_count": 27, - "metadata": { - "colab": { - "base_uri": "https://localhost:8080/" - }, - "id": "Id2zBo6XRTVT", - "outputId": "828411a7-32d0-48f4-eb78-21268e41d0f9" - }, - "outputs": [ - { - "name": "stdout", - "output_type": "stream", - "text": [ - "Mental_Health_Status Excellent Fair Good Poor\n", - "Gender \n", - "Female 846 779 847 814\n", - "Male 840 833 823 854\n", - "Other 832 878 838 816\n" - ] - } - ], - "source": [ - "#quantidade de respostas de acordo com a percepção a sensação do estado mental em relação ao gênero\n", - "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Mental_Health_Status'])\n", - "print(dataframe_crosstab)" - ] - }, - { - "cell_type": "markdown", - "metadata": { - "id": "o9EGG5oUhYe7" - }, - "source": [ - "De acordo com o resultado o estado de saúde mental para o gênero feminino como 'Excelente\" teve maior incidência. Para o gênero masculino o estado de saúde mental ruim teve maior incidência. Para o gênero outros o estado de saúde razoável maior incidência.\n", - "É possivel notar resultados interessantes pois a exemplo: apesar das mulheres em sua maioria descrevem estarem estressadas, a maioria classifica seu estado mental como Excelente.\n", - "Para o gênero masculino os resultados possuem mais relação entre o nível de strees entre médio e baixo com a percepção do estado mental(ruim).\n", - "Para o gênero outros os resultados possuem mais relação entre o nível de strees entre médio com a percepção do estado mental(razoável).\n" - ] - }, - { - "cell_type": "code", - "execution_count": 24, - "metadata": { - "colab": { - "base_uri": "https://localhost:8080/" - }, - "id": "LPs9IR8yVQKm", - "outputId": "d1649fb0-6fa9-412f-8356-4fe82bda24fa" - }, - "outputs": [ - { - "name": "stdout", - "output_type": "stream", - "text": [ - "Work_Environment_Impact Negative Neutral Positive\n", - "Gender \n", - "Female 1112 1069 1105\n", - "Male 1129 1119 1102\n", - "Other 1137 1124 1103\n" - ] - } - ], - "source": [ - "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Work_Environment_Impact'])\n", - "print(dataframe_crosstab)" - ] - }, - { - "cell_type": "markdown", - "metadata": { - "id": "_6jmEHfeFw7u" - }, - "source": [ - "Nessa tabela é possível identificar a quantidade de respostas sobre a sensação ao impacto no ambiente de trabalho em relação ao uso de tecnologias(telas, redes sociais, jogos, videogames).\n", - "A maioria acreditar ter impacto negativo, mas há uma variação pequena nas quantidade das respostas.\n" - ] - }, - { - "cell_type": "code", - "execution_count": 37, - "metadata": { - "colab": { - "base_uri": "https://localhost:8080/" - }, - "id": "keSd5dKjdDLC", - "outputId": "7f32aac6-113b-49b3-e5fd-e86453a240cf" - }, - "outputs": [ - { - "name": "stdout", - "output_type": "stream", - "text": [ - "Gender\n", - "Female 6.502684\n", - "Male 6.497627\n", - "Other 6.501894\n", - "Name: Sleep_Hours, dtype: float64\n" - ] - } - ], - "source": [ - "# Aplicar uma função que classifica os genêros a média de horas de sono\n", - "dataframe_horas_sono = dataframe.groupby('Gender')['Sleep_Hours'].mean()\n", - "print(dataframe_horas_sono)\n" - ] - }, - { - "cell_type": "markdown", - "metadata": { - "id": "W6MVupGdmhUG" - }, - "source": [ - "Os grupos de genêro apresentam uma média de horas de sono aproximadas.\n", - "\n", - "> Adicionar aspas\n", - "\n" - ] - }, - { - "cell_type": "code", - "execution_count": 25, - "metadata": { - "colab": { - "base_uri": "https://localhost:8080/" - }, - "id": "59uQmKatEmXW", - "outputId": "501d57a1-7739-4d34-909b-6f8690353850" - }, - "outputs": [ - { - "name": "stdout", - "output_type": "stream", - "text": [ - "Gender\n", - "Female 5.011625\n", - "Male 5.003287\n", - "Other 4.996846\n", - "Name: Physical_Activity_Hours, dtype: float64\n" - ] - } - ], - "source": [ - "# Aplicar uma função que classifica os generos a atividade física\n", - "dataframe_horas_at = dataframe.groupby('Gender')['Physical_Activity_Hours'].mean() # Define dataframe_horas_at and assign the result to the variable itself, not an attribute.\n", - "print(dataframe_horas_at)\n" - ] - }, - { - "cell_type": "markdown", - "metadata": { - "id": "-94G5cAmm1PG" - }, - "source": [ - "Os grupos de genêro apresentam uma média de horas praticando atividade físicas aproximadas." - ] - }, - { - "cell_type": "code", - "execution_count": 22, - "metadata": { - "colab": { - "base_uri": "https://localhost:8080/" - }, - "id": "-vf2PcW-Vx_5", - "outputId": "5244ed53-7f38-4cf6-f9f6-1db7475553f8" - }, - "outputs": [ - { - "name": "stdout", - "output_type": "stream", - "text": [ - "Gender\n", - "Female 8.078010\n", - "Male 7.868096\n", - "Other 7.983112\n", - "Name: Screen_Time_Hours, dtype: float64\n" - ] - } - ], - "source": [ - "dataframe_horas_tela = dataframe.groupby('Gender')['Screen_Time_Hours'].mean()\n", - "print(dataframe_horas_tela)\n", - "\n" - ] - }, - { - "cell_type": "markdown", - "metadata": { - "id": "oSm28K7onBxE" - }, - "source": [ - "O grupo do gênero feminimo passa mais tem nas telas." - ] - }, - { - "cell_type": "code", - "execution_count": 11, - "metadata": { - "colab": { - "base_uri": "https://localhost:8080/" - }, - "id": "mXbcmaOgWGo1", - "outputId": "bf3a9568-85b1-41a0-a9b7-38523b69a656" - }, - "outputs": [ - { - "name": "stdout", - "output_type": "stream", - "text": [ - "Gender Mental_Health_Status\n", - "Female Good 847\n", - " Excellent 846\n", - " Poor 814\n", - " Fair 779\n", - "Male Poor 854\n", - " Excellent 840\n", - " Fair 833\n", - " Good 823\n", - "Other Fair 878\n", - " Good 838\n", - " Excellent 832\n", - " Poor 816\n", - "Name: count, dtype: int64\n" - ] - } - ], - "source": [ - "dataframe_saude_mental = dataframe.groupby('Gender')['Mental_Health_Status'].value_counts()\n", - "print(dataframe_saude_mental)" - ] - }, - { - "cell_type": "code", - "execution_count": 15, - "metadata": { - "colab": { - "base_uri": "https://localhost:8080/" - }, - "id": "0-mQoAiXKa0X", - "outputId": "89d9fadd-afb5-429e-c39d-08cc5b24b67c" - }, - "outputs": [ - { - "name": "stdout", - "output_type": "stream", - "text": [ - "Age 18 19 20 21 22 23 24 25 26 27 ... 56 57 58 59 60 61 \\\n", - "Gender ... \n", - "Female 75 52 58 67 65 67 62 70 77 71 ... 71 73 64 78 63 66 \n", - "Male 67 63 74 81 71 84 71 70 75 64 ... 65 68 59 82 54 60 \n", - "Other 78 63 82 68 80 65 79 82 68 75 ... 67 77 73 75 69 61 \n", - "\n", - "Age 62 63 64 65 \n", - "Gender \n", - "Female 79 72 72 72 \n", - "Male 81 70 62 80 \n", - "Other 85 65 74 78 \n", - "\n", - "[3 rows x 48 columns]\n", - "Screen_Time_Hours 1.00 1.01 1.02 1.03 1.04 1.05 1.06 1.07 \\\n", - "Gender \n", - "Female 0 1 4 2 1 4 3 1 \n", - "Male 2 2 1 2 2 3 1 3 \n", - "Other 1 4 0 2 2 1 1 1 \n", - "\n", - "Screen_Time_Hours 1.08 1.09 ... 14.91 14.92 14.93 14.94 14.95 \\\n", - "Gender ... \n", - "Female 2 2 ... 6 5 2 2 4 \n", - "Male 2 5 ... 2 3 1 2 2 \n", - "Other 1 3 ... 3 2 1 2 5 \n", - "\n", - "Screen_Time_Hours 14.96 14.97 14.98 14.99 15.00 \n", - "Gender \n", - "Female 4 3 1 0 1 \n", - "Male 1 1 3 2 3 \n", - "Other 2 1 2 3 4 \n", - "\n", - "[3 rows x 1400 columns]\n", - "Gender\n", - "Female 8.078010\n", - "Male 7.868096\n", - "Other 7.983112\n", - "Name: Screen_Time_Hours, dtype: float64\n" - ] - } - ], - "source": [ - "# Criando uma tabela cruzada\n", - "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Age'])\n", - "print(dataframe_crosstab)\n", - "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Screen_Time_Hours'],)\n", - "print(dataframe_crosstab)\n", - "groupby_gender = dataframe.groupby('Gender')['Screen_Time_Hours'].mean()\n", - "print(groupby_gender)\n", - "# aqui é possivel notar que os entrevistados possuem a faixa etária de 18 as 65, com uma quantidade homogênea entre as idades.\n", - "# e as horas de tela varia de 1 a 15 horas\n", - "#identicação de gênero: feminino, masculino, outros." - ] - }, - { - "cell_type": "code", - "execution_count": 16, - "metadata": { - "colab": { - "base_uri": "https://localhost:8080/" - }, - "id": "HitPidcZAqrC", - "outputId": "3cc5e41b-aded-400c-cb60-3934f79854bc" - }, - "outputs": [ - { - "name": "stdout", - "output_type": "stream", - "text": [ - "Mental_Health_Status Excellent Fair Good Poor\n", - "Gender \n", - "Female 6.439634 6.174326 6.608654 6.772948\n", - "Male 6.455131 6.374454 6.427023 6.419180\n", - "Other 6.422055 6.488747 6.570501 6.525699\n" - ] - } - ], - "source": [ - "# Calcular a tabulação cruzada de Gênero e Status de Saúde Mental,\n", - "# agregando Horas de Uso de Tecnologia com a função média\n", - "\n", - "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Mental_Health_Status'], values=dataframe['Technology_Usage_Hours'], aggfunc='mean')\n", - "print(dataframe_crosstab)\n", - "\n", - "\n" - ] - }, - { - "cell_type": "code", - "execution_count": 35, - "metadata": { - "colab": { - "base_uri": "https://localhost:8080/", - "height": 564 - }, - "id": "0x66XwX0bz5a", - "outputId": "9e447960-7e19-4394-b63b-59f41b6cd266" - }, - "outputs": [ - { - "data": { - "image/png": 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L1KJFCxUuXPimxx8wYICKFi2qZ555xu6DZq/792yNq6urHnvsMS1dutQucF53/vz5m57z32rWrKmgoCDNnj3b7nOe4uLiMr32HTt21G+//aZ3330303EuX76sS5cu5fr8AHAdM0EA8o3sLtn5p4YNG6p///6aOHGi9uzZo4ceekju7u46fPiwlixZounTp2d7P1F2qlatKldXV02ePFmJiYmyWq1q3Lix6tatqwIFCqhnz54aPHiwLBaL5s+ff0uXBt2q559/Xp9//rlat25tW5b60qVL2rdvnz799FOdOHFChQsXVqtWrTR16lS1aNFCXbt2VXx8vN555x1FRkba/fGflezGn919Vzm1du1ajRo1So888ojuv/9++fr66tixY5o3b55SU1M1evRoW9/rCwoMHjxYzZs3l6urqzp37pyrcdWoUUPr1q3T1KlTFRoaqlKlSql27drq3LmzRowYofbt22vw4MFKSUnRrFmzVLZsWbvQMnbsWG3evFmtWrVSyZIlFR8fr5kzZ6p48eJ64IEHbjre6OhoNW/e3G6JbEkaM2ZMpr49evSw/ZxmFeizUrBgQS1fvlxt2rRRlSpV1LlzZ9WqVUvu7u46ffq0lixZIsn+vp5JkyZpw4YNql27tvr166eoqCj9+eef+uGHH7Ru3bosg9+NuLu769VXX1X//v3VuHFjderUScePH1dsbGyme4KeeOIJLV68WE8//bQ2bNigevXqKT09Xb/88osWL16sNWvWqGbNmrk6PwDYOG9hOgC4df9cIvtG/r1E9nVz5841atSoYXh5eRl+fn5GpUqVjOHDhxtnzpy56b4NGza0W8rXMAzj3XffNSIiIgxXV1e75aK3bdtm3H///YaXl5cRGhpqDB8+3FizZk2mJaVzs0R2xYoVs9x2/PjxTEtkG4ZhXLx40Rg5cqQRGRlpeHh4GIULFzbq1q1rTJkyxUhLS7P1e//9940yZcoYVqvVKF++vBEbG5tpGejrr8u/l5LObvy5eQ3/7dixY8Yrr7xi3H///UaRIkUMNzc3IygoyGjVqpXx9ddf2/W9du2a8Z///McICgoyLBaLXc05Hdcvv/xiNGjQwPDy8jIk2Y3xq6++MqKjow0PDw+jXLlyxkcffZTpGOvXrzfatm1rhIaGGh4eHkZoaKjRpUuXTMuTZ0WSERMTY3z00Ue2WqtVq5blsuOGYRipqalGgQIFjICAAOPy5cs3Pf4/nT171nj++eeNqKgow8vLy7BarUZERITRo0cPu6XMr/v999+NmJgYIywszHB3dzeCg4ONJk2aGHPnzrX1ub5E9pIlS+z2vf4zGRsba9c+c+ZMo1SpUobVajVq1qxpbN68OcufibS0NGPy5MlGxYoVDavVahQoUMCoUaOGMWbMGCMxMTHT6wcAOWUxjDv4T5IAAOC2Xbt2TaGhoWrTpo3ef/99Z5cDAPcc7gkCAOAes2LFCp0/f149evRwdikAcE9iJggAgHvE9u3b9eOPP2rcuHEqXLiwwz/wFQDMgpkgAADuEbNmzdKAAQNUpEgRffjhh84uBwDuWcwEAQAAADAVZoIAAAAAmAohCAAAAICp3NMflpqRkaEzZ87Iz89PFovF2eUAAAAAcBLDMHTx4kWFhobKxeXGcz33dAg6c+aMwsLCnF0GAAAAgLvE6dOnVbx48Rv2uadDkJ+fn6S/B+rv7+/kagAAAAA4S1JSksLCwmwZ4Ubu6RB0/RI4f39/QhAAAACAHN0m49SFEcLDw2WxWDI9YmJinFkWAAAAgHzMqTNB33//vdLT023Pf/rpJzVr1kwdOnRwYlUAAAAA8jOnhqCgoCC755MmTVLp0qXVsGFDJ1UEAAAAIL+7a+4JSktL00cffaRnn3022+v4UlNTlZqaanuelJR0p8oDAACAiRmGoWvXrtldxYQ7y9XVVW5ubg75aJy7JgStWLFCCQkJ6tWrV7Z9Jk6cqDFjxty5ogAAAGB6aWlpOnv2rFJSUpxdiul5e3srJCREHh4et3Uci2EYhoNqui3NmzeXh4eH/ve//2XbJ6uZoLCwMCUmJrI6HAAAABwuIyNDhw8flqurq4KCguTh4eGQmQjkjmEYSktL0/nz55Wenq4yZcpk+kDUpKQkBQQE5Cgb3BUzQSdPntS6deu0bNmyG/azWq2yWq13qCoAAACYXVpamjIyMhQWFiZvb29nl2NqXl5ecnd318mTJ5WWliZPT89bPpZTl8i+LjY2VkWKFFGrVq2cXQoAAACQyb9nHeAcjvo+OP27mZGRodjYWPXs2VNubnfFxBQAAACAfMzpIWjdunU6deqU+vTp4+xSAAAAAJiA00PQQw89JMMwVLZsWWeXAgAAAJhWo0aNNHToUGeXcUc4PQQBAAAA+Nu5c+c0ZMgQRUZGytPTU0WLFlW9evU0a9Ysluh2IG7CAQAAAO4Cx44dU7169RQYGKgJEyaoUqVKslqt2rdvn+bOnatixYrpkUcecXaZ2UpPT5fFYrknFpG4+ysEAAAATGDgwIFyc3PTzp071bFjR1WoUEERERFq27atvvjiC7Vp00aSlJCQoCeffFJBQUHy9/dX48aNtXfvXttxRo8erapVq2r+/PkKDw9XQECAOnfurIsXL9r6XLp0ST169JCvr69CQkL0xhtvZKonNTVVw4YNU7FixeTj46PatWtr48aNtu1xcXEKDAzU559/rqioKFmtVp06dSrvXiAHIgQBAAAATvbHH3/oq6++UkxMjHx8fLLsc/1DWjt06KD4+HitWrVKu3btUvXq1dWkSRP9+eeftr5Hjx7VihUrtHLlSq1cuVKbNm3SpEmTbNuff/55bdq0SZ999pm++uorbdy4UT/88IPd+QYNGqRvv/1WCxcu1I8//qgOHTqoRYsWOnz4sK1PSkqKJk+erPfee0/79+9XkSJFHPmy5BkuhwMAAACc7MiRIzIMQ+XKlbNrL1y4sK5cuSJJiomJUZs2bbRjxw7Fx8fLarVKkqZMmaIVK1bo008/1VNPPSXp74+hiYuLk5+fnyTpiSee0Pr16zV+/HglJyfr/fff10cffaQmTZpIkj744AMVL17cdt5Tp04pNjZWp06dUmhoqCRp2LBhWr16tWJjYzVhwgRJ0tWrVzVz5kxVqVIlD18dxyMEAQAAAHepHTt2KCMjQ926dVNqaqr27t2r5ORkFSpUyK7f5cuXdfToUdvz8PBwWwCSpJCQEMXHx0v6e5YoLS1NtWvXtm0vWLCgXQDbt2+f0tPTM63gnJqaanduDw8PVa5c2TGDvYMIQQAAAICTRUZGymKx6ODBg3btERERkiQvLy9JUnJyskJCQuzuzbkuMDDQ9rW7u7vdNovFooyMjBzXk5ycLFdXV+3atUuurq5223x9fW1fe3l52S7Tu5cQggAAAAAnK1SokJo1a6YZM2boP//5T7b3BVWvXl3nzp2Tm5ubwsPDb+lcpUuXlru7u7Zv364SJUpIkv766y8dOnRIDRs2lCRVq1ZN6enpio+PV/369W/pPHczQhAAAADuCuEvfOHU85+Y1Mqp5585c6bq1aunmjVravTo0apcubJcXFz0/fff65dfflGNGjXUtGlT1alTR+3atdNrr72msmXL6syZM/riiy/Uvn171axZ86bn8fX1Vd++ffX888+rUKFCKlKkiF566SW7pa3Lli2rbt26qUePHnrjjTdUrVo1nT9/XuvXr1flypXVqpVzX6vbRQgCAAAA7gKlS5fW7t27NWHCBI0cOVK//vqrrFaroqKiNGzYMA0cOFAWi0VffvmlXnrpJfXu3Vvnz59XcHCwGjRooKJFi+b4XK+//rqSk5PVpk0b+fn56bnnnlNiYqJdn9jYWL366qt67rnn9Ntvv6lw4cK6//771bp1a0cP/Y6zGIZhOLuIW5WUlKSAgAAlJibK39/f2eUAAADgNtyNM0FXrlzR8ePHVapUKXl6ejqhKvzTjb4fuckGfE4QAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFPhw1IBALgL3I2fjwIA+RUzQQAAAABMhZkgAAAA4BbcyRnc/DJbGx4erqFDh2ro0KFOrYMQBAAA7gqVPqjk1PPv67nPqecHHK1Xr1764IMPMrUfPnxYkZGRTqjo7kEIAgAAAPKpFi1aKDY21q4tKCjISdXcPbgnCAAAAMinrFargoOD7R6urq767LPPVL16dXl6eioiIkJjxozRtWvXbPtZLBbNmTNHrVu3lre3typUqKBvv/1WR44cUaNGjeTj46O6devq6NGjtn2OHj2qtm3bqmjRovL19VWtWrW0bt26G9aXkJCgJ598UkFBQfL391fjxo21d+/ePHs9rmMmCAAAALjL7b+wP9f7JFxJ0MW0i5n23fXtLsU8EaORE0aq+v3VdfrEaY15boziU+L1zuR3bP3GjRunqVOnaurUqRoxYoS6du2qiIgIjRw5UiVKlFCfPn00aNAgrVq1SpKUnJyshx9+WOPHj5fVatWHH36oNm3a6ODBgypRokSWNXbo0EFeXl5atWqVAgICNGfOHDVp0kSHDh1SwYIFcz3mnCIEAQAAAPnUpq82qVbJWrbn9ZvUV1JikvoO7qu2ndtKksLCwzTohUGaOmaqXQjq3bu3OnbsKEkaMWKE6tSpo5dfflnNmzeXJA0ZMkS9e/e29a9SpYqqVKliez5u3DgtX75cn3/+uQYNGpSptq1bt2rHjh2Kj4+X1WqVJE2ZMkUrVqzQp59+qqeeesqBr4Q9QhAA3AW4IRwAkBdqPVBLr7z2iu25l7eXHm30qHbv2K25b861tWdkZCj1SqpSUlLk7e0tSapcubJte9GiRSVJlSpVsmu7cuWKkpKS5O/vr+TkZI0ePVpffPGFzp49q2vXruny5cs6depUlrXt3btXycnJKlSokF375cuX7S6zywuEIAAAACCf8vb2VokI+0vRUi6lKGZ4jJq2apqpv6enp+1rd3d329cWiyXbtoyMDEnSsGHDtHbtWk2ZMkWRkZHy8vLS448/rrS0tCxrS05OVkhIiDZu3JhpW2BgYM4GeIsIQZBGBzj5/InOPT8AAICJVKhUQcePHM8UjiTJxeXW103btm2bevXqpfbt20v6O+ScOHEi2/7Vq1fXuXPn5ObmpvDw8Fs+760gBN0F7uQHbWXlhOfN+wAAACB/GDBsgGK6xSikeIgeavOQLC4WHdx/UEd+PqI5U+fc8nHLlCmjZcuWqU2bNrJYLHr55Zdts0RZadq0qerUqaN27drptddeU9myZXXmzBl98cUXat++vWrWrHnLtdwMIQgAADj/qgBJKpX16lHA3erEpFYOPd6trAB3K+o1rqd3FryjWVNmad7b8+Tm5qZSZUrpse6P3dZxp06dqj59+qhu3boqXLiwRowYoaSkpGz7WywWffnll3rppZfUu3dvnT9/XsHBwWrQoIHtHqS8YjEMw8jTM+ShpKQkBQQEKDExUf7+/s4u55Y5fyaoq1PPX8nJv/S4IRx3AxZGgNl/F0j8PsDd+T644hum4/XeUKliQfJ0s+Tp+fd7eOTp8XOiYuGKzi7hhq5cuaLjx4+rVKlSdvcvSbnLBnxYKgAAAABTIQQBAAAAMBXuCQIAyfn3Q3AvBAAAdwwzQQAAAABMhRAEAAAAwFQIQQAAAABMhRAEAAAAwFQIQQAAAABMhRAEAAAAwFRYIhsAAAC4FXMbOfRwFW+wbf+gbxx6rtw6ceKESpUqpd27d6tq1apOrcURmAkCAAAA8qGXBr2k6KBojRk2JtO2V4e/quigaL006CUnVOZ8hCAAAAAgnwouFqzVy1fryuUrtrbUK6n6ctmXCike4sTKnIsQBAAAAORTUZWjFFwsWOu+WGdrW/fFOgUXD1aFShVsbVvXb9UTrZ5QYGCgChUqpNatW+vo0aM3PPZPP/2kli1bytfXV0WLFtUTTzyhCxcu5NlYHIkQBAAAAORj7bu214pPVtieL/94udp3bm/X53LKZfUY0EM7d+7U+vXr5eLiovbt2ysjIyPLYyYkJKhx48aqVq2adu7cqdWrV+v3339Xx44d83IoDsPCCAAAAEA+1vrx1pr26jSdOX1GkrR7x269Pvd1ff/N97Y+zdo0kyRFFo6UJM2bN09BQUE6cOCAoqOjMx1zxowZqlatmiZMmGBrmzdvnsLCwnTo0CGVLVs2L4d02whBAJwu/IUvnF2CTng6uwIAAPJGwcIF1aBpA61YuEKGYahB0wYqUKiAXZ+TR09qxuQZ+mXPL7pw4YJtBujUqVNZhqC9e/dqw4YN8vX1zbTt6NGjhCAAAAAAztW+a3tNGPn3rM1LkzKvCDeo+yCFFA/Ru+++q9DQUGVkZCg6OlppaWlZHi85OVlt2rTR5MmTM20LCbn7F1wgBAEAAAD53ANNHtDVtKuyWCyq17ie3baEPxN0/MhxjZ46Wk2aNJEkbd269YbHq169upYuXarw8HC5ud17kYKFEQAAAIB8ztXVVZ9/87k+2/aZXF1d7bb5B/orsGCglsxfoiNHjujrr7/Ws88+e8PjxcTE6M8//1SXLl30/fff6+jRo1qzZo169+6t9PT0vByKQ9x7sQ0AAAC4Gzy10aGH2+/h4dDj/ZuvX+b7dyTJxcVFr899XRNfnKjo6GiVK1dOb731lho1apTtsUJDQ7Vt2zaNGDFCDz30kFJTU1WyZEm1aNFCLi53/zwLIQgAAADIh8bPGH/D7W99+Jbt6zoN6+jzbZ+rYuGKtjbDMGxfh4eH2z2XpDJlymjZsmUOqvbOuvtjGgAAAAA4kNND0G+//abu3burUKFC8vLyUqVKlbRz505nlwUAAAAgn3Lq5XB//fWX6tWrpwcffFCrVq1SUFCQDh8+rAIFCtx8ZwAAAAC4BU4NQZMnT1ZYWJhiY2NtbaVKlXJiRQAAAADyO6deDvf555+rZs2a6tChg4oUKaJq1arp3XffzbZ/amqqkpKS7B4AAAAAkBtODUHHjh3TrFmzVKZMGa1Zs0YDBgzQ4MGD9cEHH2TZf+LEiQoICLA9wsLC7nDFAAAAAO51Tg1BGRkZql69uiZMmKBq1arpqaeeUr9+/TR79uws+48cOVKJiYm2x+nTp+9wxQAAAADudU4NQSEhIYqKirJrq1Chgk6dOpVlf6vVKn9/f7sHAAAAAOSGU0NQvXr1dPDgQbu2Q4cOqWTJkk6qCAAAAEB+59TV4Z555hnVrVtXEyZMUMeOHbVjxw7NnTtXc+fOdWZZAAAAwE1VWtvjjp1rYauFd+xckhQXF6ehQ4cqISHhjp73TnHqTFCtWrW0fPlyffLJJ4qOjta4ceM0bdo0devWzZllAQAAAPnC2d/O6r+D/6sHox9U1dCqalatmSa+OFEJfybY+jxU/SHNnz3feUU6gVNngiSpdevWat26tbPLAAAAAPKV0ydOq9vD3RQeEa7X5rym4iWL68gvR/TGmDe0df1Wfbz6YwUUCLijNV29elXu7u539JxZcepMEAAAAIC8MX7EeLm7u2vukrmqVa+WQoqHqH7T+nrv0/cUfy5e0ydMV6+2vXTm9BlNfnmyooOiZbFY7I6xZs0aVahQQb6+vmrRooXOnj1rt/29995ThQoV5OnpqfLly2vmzJm2bSdOnJDFYtGiRYvUsGFDeXp6asGCBXdk7Dfj9JkgAAAAAI6V+Feitm3YpsEvDpanl6fdtsJFC6vVY620esVqfbn9Sz324GPq0KODHu/+uMoVKmfrl5KSoilTpmj+/PlycXFR9+7dNWzYMFuQWbBggV555RXNmDFD1apV0+7du9WvXz/5+PioZ8+etuO88MILeuONN1StWjV5etrX4iyEIAAAACCfOXnspAzDUETZiCy3R5SNUFJCktLT0+Xq6iofHx8VLlpYwYWDbX2uXr2q2bNnq3Tp0pKkQYMGaezYsbbto0aN0htvvKFHH31UklSqVCkdOHBAc+bMsQtBQ4cOtfW5WxCCAAAAgHzKMIxb3tfb29sWgKS/P+MzPj5eknTp0iUdPXpUffv2Vb9+/Wx9rl27poAA+/uMatasecs15BVCEAAAAJDPlChVQhaLRccOHZNaZd5+7NAx+Qf6q2Dhgtke498LGFgsFluoSk5OliS9++67ql27tl0/V1dXu+c+Pj63MoQ8xcIIAAAAQD4TWDBQdRrW0aLYRbpy+Yrdtgu/X9AXS79Qi3YtZLFY5O7urvSM9Fwdv2jRogoNDdWxY8cUGRlp9yhVqpQjh5InCEEAAABAPvTSpJeUlpam/h37a+c3O3X2t7Paun6r+nXopyLBRTTkxSGSpNASodr17S79fvZ3XbhwIcfHHzNmjCZOnKi33npLhw4d0r59+xQbG6upU6fm1ZAchsvhAAAAgFuwr9mHDj3efg8Phx6vZOmSWrR2kd6Z/I6ee/I5JSYkqnCRwmrcsrEGPj/Q9hlBg0YM0phhY9SyVkulpabl+D6iJ598Ut7e3nr99df1/PPPy8fHR5UqVdLQoUMdOo68QAgCAAAA8qnQsFCNnzH+hn2q1KyiZRuXSZIqFq4oSerVq5d69epl169du3aZAlLXrl3VtWvXLI8bHh5+Wwsz5CUuhwMAAABgKoQgAAAAAKZCCAIAAABgKoQgAAAAAKZCCAIAAACy8/9v7L9L7+83HUcttEAIAgAAALLhnvqnlJ6mlKvOrgSSlJKSIklyd3e/reOwRDYAAACQDddrKQo8uUrxHo9LCpS3u2Sx5M25MiwZeXPgXLhy5YqzS8iSYRhKSUlRfHy8AgMD5erqelvHIwQBAAAANxB8+GNJUnzJlpKrYz/Q9J/i3Zz/p7lbgvNruJHAwEAFBwff9nHu7lECAAAATmaRoZDDC1Tk2DJd9SyUZ1NBQ4qF5slxc+Pz9p87u4Rsubu73/YM0HWEIAAAACAHXNMvy/XSr3l2/LNpeXSdXS54eno6u4Q7goURAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJiKU0PQ6NGjZbFY7B7ly5d3ZkkAAAAA8jk3ZxdQsWJFrVu3zvbczc3pJQEAAADIx5yeONzc3BQcHOzsMgAAAACYhNPvCTp8+LBCQ0MVERGhbt266dSpU9n2TU1NVVJSkt0DAAAAAHLDqSGodu3aiouL0+rVqzVr1iwdP35c9evX18WLF7PsP3HiRAUEBNgeYWFhd7hiAAAAAPc6p4agli1bqkOHDqpcubKaN2+uL7/8UgkJCVq8eHGW/UeOHKnExETb4/Tp03e4YgAAAAD3OqffE/RPgYGBKlu2rI4cOZLldqvVKqvVeoerAgAAAJCfOP2eoH9KTk7W0aNHFRIS4uxSAAAAAORTTg1Bw4YN06ZNm3TixAl98803at++vVxdXdWlSxdnlgUAAAAgH3Pq5XC//vqrunTpoj/++ENBQUF64IEH9N133ykoKMiZZQEAAADIx5waghYuXOjM0wMAAAAwobvqniAAAAAAyGuEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmcksh6Nq1a1q3bp3mzJmjixcvSpLOnDmj5ORkhxYHAAAAAI7mltsdTp48qRYtWujUqVNKTU1Vs2bN5Ofnp8mTJys1NVWzZ8/OizoBAAAAwCFyPRM0ZMgQ1axZU3/99Ze8vLxs7e3bt9f69esdWhwAAAAAOFquZ4K2bNmib775Rh4eHnbt4eHh+u233xxWGAAAAADkhVzPBGVkZCg9PT1T+6+//io/Pz+HFAUAAAAAeSXXIeihhx7StGnTbM8tFouSk5M1atQoPfzww46sDQAAAAAcLtchaMqUKdq2bZuioqJ05coVde3a1XYp3OTJk2+5kEmTJslisWjo0KG3fAwAAAAAuJlc3xMUFhamvXv3atGiRdq7d6+Sk5PVt29fdevWzW6hhNz4/vvvNWfOHFWuXPmW9gcAAACAnMpVCLp69arKly+vlStXqlu3burWrdttF5CcnKxu3brp3Xff1auvvnrbxwMAAACAG8nV5XDu7u66cuWKQwuIiYlRq1at1LRp05v2TU1NVVJSkt0DAAAAAHIj1/cExcTEaPLkybp27dptn3zhwoX64YcfNHHixBz1nzhxogICAmyPsLCw264BAAAAgLnk+p6g77//XuvXr9dXX32lSpUqycfHx277smXLcnSc06dPa8iQIVq7dq08PT1ztM/IkSP17LPP2p4nJSURhAAAAADkSq5DUGBgoB577LHbPvGuXbsUHx+v6tWr29rS09O1efNmzZgxQ6mpqXJ1dbXbx2q1ymq13va5AQAAAJhXrkNQbGysQ07cpEkT7du3z66td+/eKl++vEaMGJEpAAEAAACAI+Q6BF13/vx5HTx4UJJUrlw5BQUF5Wp/Pz8/RUdH27X5+PioUKFCmdoBAAAAwFFyvTDCpUuX1KdPH4WEhKhBgwZq0KCBQkND1bdvX6WkpORFjQAAAADgMLkOQc8++6w2bdqk//3vf0pISFBCQoI+++wzbdq0Sc8999xtFbNx40ZNmzbtto4BAAAAADeS68vhli5dqk8//VSNGjWytT388MPy8vJSx44dNWvWLEfWBwAAAAAOleuZoJSUFBUtWjRTe5EiRbgcDgAAAMBdL9chqE6dOho1apSuXLlia7t8+bLGjBmjOnXqOLQ4AAAAAHC0XF8ON336dDVv3lzFixdXlSpVJEl79+6Vp6en1qxZ4/ACAQAAAMCRch2CoqOjdfjwYS1YsEC//PKLJKlLly7q1q2bvLy8HF4gAAAAADjSLX1OkLe3t/r16+foWgAAAAAgz+X6nqCJEydq3rx5mdrnzZunyZMnO6QoAAAAAMgruQ5Bc+bMUfny5TO1V6xYUbNnz3ZIUQAAAACQV3Idgs6dO6eQkJBM7UFBQTp79qxDigIAAACAvJLrEBQWFqZt27Zlat+2bZtCQ0MdUhQAAAAA5JVcL4zQr18/DR06VFevXlXjxo0lSevXr9fw4cP13HPPObxAAAAAAHCkXIeg559/Xn/88YcGDhyotLQ0SZKnp6dGjBihkSNHOrxAAAAAAHCkXIcgi8WiyZMn6+WXX9bPP/8sLy8vlSlTRlarNS/qAwAAAACHyvU9Qdf5+vqqVq1a8vPz09GjR5WRkeHIugAAAAAgT+Q4BM2bN09Tp061a3vqqacUERGhSpUqKTo6WqdPn3Z4gQAAAADgSDkOQXPnzlWBAgVsz1evXq3Y2Fh9+OGH+v777xUYGKgxY8bkSZEAAAAA4Cg5vifo8OHDqlmzpu35Z599prZt26pbt26SpAkTJqh3796OrxAAAAAAHCjHM0GXL1+Wv7+/7fk333yjBg0a2J5HRETo3Llzjq0OAAAAABwsxyGoZMmS2rVrlyTpwoUL2r9/v+rVq2fbfu7cOQUEBDi+QgAAAABwoBxfDtezZ0/FxMRo//79+vrrr1W+fHnVqFHDtv2bb75RdHR0nhQJAAAAAI6S4xA0fPhwpaSkaNmyZQoODtaSJUvstm/btk1dunRxeIEAAAAA4Eg5DkEuLi4aO3asxo4dm+X2f4ciAAAAALgb3fKHpQIAAADAvYgQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATCXHq8Ndl56erri4OK1fv17x8fHKyMiw2/711187rDgAAAAAcLRch6AhQ4YoLi5OrVq1UnR0tCwWS17UBQAAAAB5ItchaOHChVq8eLEefvjhvKgHAAAAAPJUru8J8vDwUGRkZF7UAgAAAAB5Ltch6LnnntP06dNlGEZe1AMAAAAAeSrXl8Nt3bpVGzZs0KpVq1SxYkW5u7vbbV+2bJnDigMAAAAAR8t1CAoMDFT79u3zohYAAAAAyHO5DkGxsbF5UQcAAAAA3BF8WCoAAAAAU8n1TJAkffrpp1q8eLFOnTqltLQ0u20//PCDQwoDAAAAgLyQ65mgt956S71791bRokW1e/du3XfffSpUqJCOHTumli1b5kWNAAAAAOAwuQ5BM2fO1Ny5c/X222/Lw8NDw4cP19q1azV48GAlJibmRY0AAAAA4DC5DkGnTp1S3bp1JUleXl66ePGiJOmJJ57QJ5984tjqAAAAAMDBch2CgoOD9eeff0qSSpQooe+++06SdPz4cT5AFQAAAMBdL9chqHHjxvr8888lSb1799YzzzyjZs2aqVOnTnx+EAAAAIC7Xq5Xh5s7d64yMjIkSTExMSpUqJC++eYbPfLII+rfv7/DCwQAAAAAR8p1CHJxcZGLy/9NIHXu3FmdO3d2aFEAAAAAkFdu6cNSt2zZou7du6tOnTr67bffJEnz58/X1q1bHVocAAAAADharkPQ0qVL1bx5c3l5eWn37t1KTU2VJCUmJmrChAkOLxAAAAAAHCnXIejVV1/V7Nmz9e6778rd3d3WXq9ePf3www8OLQ4AAAAAHC3XIejgwYNq0KBBpvaAgAAlJCQ4oiYAAAAAyDO39DlBR44cydS+detWRUREOKQoAAAAAMgruQ5B/fr105AhQ7R9+3ZZLBadOXNGCxYs0LBhwzRgwIC8qBEAAAAAHCbXS2S/8MILysjIUJMmTZSSkqIGDRrIarVq2LBh+s9//pMXNQIAAACAw+Q6BFksFr300kt6/vnndeTIESUnJysqKkq+vr55UR8AAAAAOFSuQ9B1Hh4eioqKcmQtAAAAAJDnchyC+vTpk6N+8+bNu+ViAAAAACCv5XhhhLi4OG3YsEEJCQn666+/sn3kxqxZs1S5cmX5+/vL399fderU0apVq3I9CAAAAADIqRzPBA0YMECffPKJjh8/rt69e6t79+4qWLDgbZ28ePHimjRpksqUKSPDMPTBBx+obdu22r17typWrHhbxwYAAACArOR4Juidd97R2bNnNXz4cP3vf/9TWFiYOnbsqDVr1sgwjFs6eZs2bfTwww+rTJkyKlu2rMaPHy9fX1999913t3Q8AAAAALiZXH1OkNVqVZcuXbR27VodOHBAFStW1MCBAxUeHq7k5OTbKiQ9PV0LFy7UpUuXVKdOnSz7pKamKikpye4BAAAAALmR6w9Lte3o4iKLxSLDMJSenn7LBezbt0++vr6yWq16+umntXz58mxXnZs4caICAgJsj7CwsFs+LwAAAABzylUISk1N1SeffKJmzZqpbNmy2rdvn2bMmKFTp07d8ucElStXTnv27NH27ds1YMAA9ezZUwcOHMiy78iRI5WYmGh7nD59+pbOCQAAAMC8crwwwsCBA7Vw4UKFhYWpT58++uSTT1S4cOHbLsDDw0ORkZGSpBo1auj777/X9OnTNWfOnEx9rVarrFbrbZ8TAAAAgHnlOATNnj1bJUqUUEREhDZt2qRNmzZl2W/ZsmW3VVBGRoZSU1Nv6xgAAAAAkJ0ch6AePXrIYrE49OQjR45Uy5YtVaJECV28eFEff/yxNm7cqDVr1jj0PAAAAABwXY5DUFxcnMNPHh8frx49eujs2bMKCAhQ5cqVtWbNGjVr1szh5wIAAAAAKRchKC+8//77zjw9AAAAABO65SWyAQAAAOBeRAgCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCqEIAAAAACmQggCAAAAYCpODUETJ05UrVq15OfnpyJFiqhdu3Y6ePCgM0sCAAAAkM85NQRt2rRJMTEx+u6777R27VpdvXpVDz30kC5duuTMsgAAAADkY27OPPnq1avtnsfFxalIkSLatWuXGjRo4KSqAAAAAORnTg1B/5aYmChJKliwYJbbU1NTlZqaanuelJR0R+oCAAAAkH/cNQsjZGRkaOjQoapXr56io6Oz7DNx4kQFBATYHmFhYXe4SgAAAAD3ursmBMXExOinn37SwoULs+0zcuRIJSYm2h6nT5++gxUCAAAAyA/uisvhBg0apJUrV2rz5s0qXrx4tv2sVqusVusdrAwAAABAfuPUEGQYhv7zn/9o+fLl2rhxo0qVKuXMcgAAAACYgFNDUExMjD7++GN99tln8vPz07lz5yRJAQEB8vLycmZpAAAAAPIpp94TNGvWLCUmJqpRo0YKCQmxPRYtWuTMsgAAAADkY06/HA4AAAAA7qS7ZnU4AAAAALgTCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATIUQBAAAAMBUCEEAAAAATMWpIWjz5s1q06aNQkNDZbFYtGLFCmeWAwAAAMAEnBqCLl26pCpVquidd95xZhkAAAAATMTNmSdv2bKlWrZs6cwSAAAAAJiMU0NQbqWmpio1NdX2PCkpyYnVAAAAALgX3VMLI0ycOFEBAQG2R1hYmLNLAgAAAHCPuadC0MiRI5WYmGh7nD592tklAQAAALjH3FOXw1mtVlmtVmeXAQAAAOAedk/NBAEAAADA7XLqTFBycrKOHDlie378+HHt2bNHBQsWVIkSJZxYGQAAAID8yqkhaOfOnXrwwQdtz5999llJUs+ePRUXF+ekqgAAAADkZ04NQY0aNZJhGM4sAQAAAIDJcE8QAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwlbsiBL3zzjsKDw+Xp6enateurR07dji7JAAAAAD5lNND0KJFi/Tss89q1KhR+uGHH1SlShU1b95c8fHxzi4NAAAAQD7k9BA0depU9evXT71791ZUVJRmz54tb29vzZs3z9mlAQAAAMiH3Jx58rS0NO3atUsjR460tbm4uKhp06b69ttvM/VPTU1Vamqq7XliYqIkKSkpKe+LzUMZqSlOPX+SxXDq+dMvpzv1/Pf6z09+4Oz3gMT7gPeB8zn7feDs94DE+wC8D5z9HpDu7ffB9doN4+bfR6eGoAsXLig9PV1Fixa1ay9atKh++eWXTP0nTpyoMWPGZGoPCwvLsxrNIMDZBehnp549YIDzXwE4n/N/CngfwLnujp8A3gdwLuf/BDj3PSDlj/fBxYsXFRBw43E4NQTl1siRI/Xss8/anmdkZOjPP/9UoUKFZLFYnFiZeSUlJSksLEynT5+Wv7+/s8sBnIL3AcD7AOA94HyGYejixYsKDQ29aV+nhqDChQvL1dVVv//+u13777//ruDg4Ez9rVarrFarXVtgYGBelogc8vf35w0P0+N9APA+AHgPONfNZoCuc+rCCB4eHqpRo4bWr19va8vIyND69etVp04dJ1YGAAAAIL9y+uVwzz77rHr27KmaNWvqvvvu07Rp03Tp0iX17t3b2aUBAAAAyIecHoI6deqk8+fP65VXXtG5c+dUtWpVrV69OtNiCbg7Wa1WjRo1KtNlioCZ8D4AeB8AvAfuLRYjJ2vIAQAAAEA+4fQPSwUAAACAO4kQBAAAAMBUCEEAAAAATIUQBIcJDw/XtGnTbM8tFotWrFjhtHoAZ4mLi+MzzIBc4ncGgDuJEJSP9OrVSxaLJdOjRYsWzi7NYf4dtIC8lN176siRIzfcr1OnTjp06NAdqhJwnHPnzmnIkCGKjIyUp6enihYtqnr16mnWrFlKSUlxdnnAHfPP//97eHgoMjJSY8eO1bVr15xdGhzE6Utkw7FatGih2NhYuzaWagRuXVbvqaCgoBvu4+XlJS8vr2y3p6WlycPDwyH1AY5y7Ngx1atXT4GBgZowYYIqVaokq9Wqffv2ae7cuSpWrJgeeeQRZ5cJ3DHX//+fmpqqL7/8UjExMXJ3d9fIkSMdfi5+L9x5zATlM1arVcHBwXaPAgUKaOPGjfLw8NCWLVtsfV977TUVKVJEv//+uyQpISFB/fv3V9GiReXp6ano6GitXLnS1n/r1q2qX7++vLy8FBYWpsGDB+vSpUs5ru306dPq2LGjAgMDVbBgQbVt21YnTpywbe/Vq5fatWunKVOmKCQkRIUKFVJMTIyuXr0qSWrUqJFOnjypZ555xvavM0Bey+o9NX36dFWqVEk+Pj4KCwvTwIEDlZycbNvn35fDjR49WlWrVtV7772nUqVKydPT0wkjAW5s4MCBcnNz086dO9WxY0dVqFBBERERatu2rb744gu1adNGknTq1Cm1bdtWvr6+8vf3V8eOHW2/R66bNWuWSpcuLQ8PD5UrV07z58+323748GE1aNBAnp6eioqK0tq1a+/YOIGcuv7//5IlS2rAgAFq2rSpPv/8c/3111/q0aOHChQoIG9vb7Vs2VKHDx+223fp0qWqWLGirFarwsPD9cYbb9htDw8P17hx49SjRw/5+/vrqaeeupNDgwhBptGoUSMNHTpUTzzxhBITE7V79269/PLLeu+991S0aFFlZGSoZcuW2rZtmz766CMdOHBAkyZNkqurqyTp6NGjatGihR577DH9+OOPWrRokbZu3apBgwbl6PxXr15V8+bN5efnpy1btmjbtm3y9fVVixYtlJaWZuu3YcMGHT16VBs2bNAHH3yguLg4xcXFSZKWLVum4sWLa+zYsTp79qzOnj3r8NcJyAkXFxe99dZb2r9/vz744AN9/fXXGj58+A33OXLkiJYuXaply5Zpz549d6ZQIIf++OMPffXVV4qJiZGPj0+WfSwWizIyMtS2bVv9+eef2rRpk9auXatjx46pU6dOtn7Lly/XkCFD9Nxzz+mnn35S//791bt3b23YsEGSlJGRoUcffVQeHh7avn27Zs+erREjRtyRcQK3w8vLS2lpaerVq5d27typzz//XN9++60Mw9DDDz9s+0fbXbt2qWPHjurcubP27dun0aNH6+WXX7b9PXPdlClTVKVKFdvfZLjDDOQbPXv2NFxdXQ0fHx+7x/jx4w3DMIzU1FSjatWqRseOHY2oqCijX79+tn3XrFljuLi4GAcPHszy2H379jWeeuopu7YtW7YYLi4uxuXLlw3DMIySJUsab775pm27JGP58uWGYRjG/PnzjXLlyhkZGRm27ampqYaXl5exZs0aW/0lS5Y0rl27ZuvToUMHo1OnTrbn/z4HkJeyek89/vjjmfotWbLEKFSokO15bGysERAQYHs+atQow93d3YiPj78TZQO59t133xmSjGXLltm1FypUyPazP3z4cOOrr74yXF1djVOnTtn67N+/35Bk7NixwzAMw6hbt67d7xfD+Pv/5Q8//LBhGH//vnFzczN+++032/ZVq1bZ/c4AnK1nz55G27ZtDcMwjIyMDGPt2rWG1Wo12rVrZ0gytm3bZut74cIFw8vLy1i8eLFhGIbRtWtXo1mzZnbHe/75542oqCjb85IlSxrt2rXL+4EgW9wTlM88+OCDmjVrll1bwYIFJUkeHh5asGCBKleurJIlS+rNN9+09dmzZ4+KFy+usmXLZnncvXv36scff9SCBQtsbYZhKCMjQ8ePH1eFChVuWNfevXt15MgR+fn52bVfuXJFR48etT2vWLGibfZJkkJCQrRv376bjBrIO/9+T/n4+GjdunWaOHGifvnlFyUlJenatWu6cuWKUlJS5O3tneVxSpYsedN7iYC7zY4dO5SRkaFu3bopNTVVP//8s8LCwhQWFmbrExUVpcDAQP3888+qVauWfv7550yX9tSrV0/Tp0+XJNsxQkNDbdvr1KlzZwYE5MLKlSvl6+urq1evKiMjQ127dtWjjz6qlStXqnbt2rZ+hQoVUrly5fTzzz9L+vtnvG3btnbHqlevnqZNm6b09HTb3zk1a9a8c4NBJoSgfMbHx0eRkZHZbv/mm28kSX/++af+/PNP22UPN7qJW5KSk5PVv39/DR48ONO2EiVK3LSu5ORk1ahRwy5EXffPPwzd3d3ttl2//AJwln+/p06cOKHWrVtrwIABGj9+vAoWLKitW7eqb9++SktLyzYEZXeJEXA3iIyMlMVi0cGDB+3aIyIiJN38dwSQH13/RzAPDw+FhobKzc1Nn3/+ucOOz+8F5+KeIBM5evSonnnmGb377ruqXbu2evbsaQsYlStX1q+//prtsr7Vq1fXgQMHFBkZmemRk9VMqlevrsOHD6tIkSKZ9g8ICMjxGDw8PJSenp7j/oCj7dq1SxkZGXrjjTd0//33q2zZsjpz5oyzywJuS6FChdSsWTPNmDHjhgveVKhQQadPn9bp06dtbQcOHFBCQoKioqJsfbZt22a337Zt2+y2nz592u6+zu+++86RwwEc4vo/gpUoUUJubn/PG1SoUEHXrl3T9u3bbf3++OMPHTx48KbvgbJly9pd7QLnIgTlM6mpqTp37pzd48KFC0pPT1f37t3VvHlz9e7dW7Gxsfrxxx9tq5U0bNhQDRo00GOPPaa1a9fq+PHjWrVqlVavXi1JGjFihL755hsNGjRIe/bs0eHDh/XZZ5/leGGEbt26qXDhwmrbtq22bNmi48ePa+PGjRo8eLB+/fXXHI8vPDxcmzdv1m+//aYLFy7k/gUCblNkZKSuXr2qt99+W8eOHdP8+fM1e/ZsZ5cF3LaZM2fq2rVrqlmzphYtWqSff/5ZBw8e1EcffaRffvlFrq6uatq0qSpVqqRu3brphx9+0I4dO9SjRw81bNjQdmnP888/r7i4OM2aNUuHDx/W1KlTtWzZMg0bNkyS1LRpU5UtW1Y9e/bU3r17tWXLFr300kvOHDqQY2XKlFHbtm3Vr18/bd26VXv37lX37t1VrFgx2yVwzz33nNavX69x48bp0KFD+uCDDzRjxgzbewB3B0JQPrN69WqFhITYPR544AGNHz9eJ0+e1Jw5cyT9fa/N3Llz9d///ld79+6V9PdyjrVq1VKXLl0UFRWl4cOH22ZdKleurE2bNunQoUOqX7++qlWrpldeecXumu4b8fb21ubNm1WiRAk9+uijqlChgvr27asrV67I398/x+MbO3asTpw4odKlS3N/BZyiSpUqmjp1qiZPnqzo6GgtWLBAEydOdHZZwG0rXbq0du/eraZNm2rkyJGqUqWKatasqbffflvDhg3TuHHjZLFY9Nlnn6lAgQJq0KCBmjZtqoiICC1atMh2nHbt2mn69OmaMmWKKlasqDlz5ig2NlaNGjWS9PfqisuXL9fly5d133336cknn9T48eOdNGog92JjY1WjRg21bt1aderUkWEY+vLLL22X9FevXl2LFy/WwoULFR0drVdeeUVjx45Vr169nFs47FgMwzCcXQQAAAAA3CnMBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAAAAwFUIQAAAAAFMhBAEAHC4uLk6BgYHOLsOmV69eateu3Q37bNy4URaLRQkJCXekJgCA8xCCAOAe0atXL1ksFj399NOZtsXExMhisahXr14OPefo0aNVtWpVhx7zOovFohUrVmRqz0lguV2NGjXS0KFDHXKsTZs2qXHjxipYsKC8vb1VpkwZ9ezZU2lpaZJuPRASygAg7xCCAOAeEhYWpoULF+ry5cu2titXrujjjz9WiRIlnFiZOR04cEAtWrRQzZo1tXnzZu3bt09vv/22PDw8lJ6e7uzyAADZIAQBwD2kevXqCgsL07Jly2xty5YtU4kSJVStWjW7vhkZGZo4caJKlSolLy8vValSRZ9++qlt+/WZhvXr16tmzZry9vZW3bp1dfDgQUl/z2CMGTNGe/fulcVikcViUVxcnCRp6tSpqlSpknx8fBQWFqaBAwcqOTk5T8Z8s3Gkp6erb9++tu3lypXT9OnTsz1er169tGnTJk2fPt02rhMnTti279q1K8vXIytfffWVgoOD9dprryk6OlqlS5dWixYt9O6778rLy0sbN25U7969lZiYaDvX6NGjJUnz589XzZo15efnp+DgYHXt2lXx8fGSpBMnTujBBx+UJBUoUMBuli88PFzTpk2zq6Nq1aq24xqGodGjR6tEiRKyWq0KDQ3V4MGDc/hqA4A5EIIA4B7Tp08fxcbG2p7PmzdPvXv3ztRv4sSJ+vDDDzV79mzt379fzzzzjLp3765NmzbZ9XvppZf0xhtvaOfOnXJzc1OfPn0kSZ06ddJzzz2nihUr6uzZszp79qw6deokSXJxcdFbb72l/fv364MPPtDXX3+t4cOH58l4bzaOjIwMFS9eXEuWLNGBAwf0yiuv6MUXX9TixYuzPN706dNVp04d9evXzzausLCwm74eWQkODtbZs2e1efPmLLfXrVtX06ZNk7+/v+1cw4YNkyRdvXpV48aN0969e7VixQqdOHHCFnTCwsK0dOlSSdLBgwd19uzZGwa7f1q6dKnefPNNzZkzR4cPH9aKFStUqVKlHO0LAGbh5uwCAAC50717d40cOVInT56UJG3btk0LFy7Uxo0bbX1SU1M1YcIErVu3TnXq1JEkRUREaOvWrZozZ44aNmxo6zt+/Hjb8xdeeEGtWrXSlStX5OXlJV9fX7m5uSk4ONiuhn/eTxMeHq5XX31VTz/9tGbOnJmrsXTp0kWurq52bampqWrVqlWOx+Hu7q4xY8bY9i9VqpS+/fZbLV68WB07dsx0zoCAAHl4eMjb2zvTuG70enh6embq26FDB61Zs0YNGzZUcHCw7r//fjVp0kQ9evSQv7+/PDw8FBAQIIvFkulc/wxXEREReuutt1SrVi0lJyfL19dXBQsWlCQVKVIkV/cUnTp1SsHBwWratKnc3d1VokQJ3XfffTneHwDMgJkgALjHBAUFqVWrVoqLi1NsbKxatWqlwoUL2/U5cuSIUlJS1KxZM/n6+toeH374oY4ePWrXt3LlyravQ0JCJMl2WVZ21q1bpyZNmqhYsWLy8/PTE088oT/++EMpKSm5Gsubb76pPXv22D0eeeSRXI/jnXfeUY0aNRQUFCRfX1/NnTtXp06dylUt1+Xm9XB1dVVsbKx+/fVXvfbaaypWrJgmTJhgmz27kV27dqlNmzYqUaKE/Pz8bMHrVuu+rkOHDrp8+bIiIiLUr18/LV++XNeuXbutYwJAfsNMEADcg/r06aNBgwZJ+jsA/Nv1+3O++OILFStWzG6b1Wq1e+7u7m772mKxSPr7ErPsnDhxQq1bt9aAAQM0fvx4FSxYUFu3blXfvn2VlpYmb2/vHI8jODhYkZGRdm1+fn62FdFyMo6FCxdq2LBheuONN1SnTh35+fnp9ddf1/bt23Ncxz/l9vWQpGLFiumJJ57QE088oXHjxqls2bKaPXu23QzVP126dEnNmzdX8+bNtWDBAgUFBenUqVNq3ry5bVW57Li4uMgwDLu2q1ev2r4OCwvTwYMHtW7dOq1du1YDBw7U66+/rk2bNtmNDQDMjBAEAPegFi1aKC0tTRaLRc2bN8+0PSoqSlarVadOnbK79C23slrlbNeuXcrIyNAbb7whF5e/LyjI7v6b25WTcWzbtk1169bVwIEDbW3/nu36t7xcva1AgQIKCQnRpUuXsj3XL7/8oj/++EOTJk2y3Y+0c+fOTDVKyrRvUFCQ3SxTUlKSjh8/btfHy8tLbdq0UZs2bRQTE6Py5ctr3759ql69umMGCQD3OEIQANyDXF1d9fPPP9u+/jc/Pz8NGzZMzzzzjDIyMvTAAw8oMTFR27Ztk7+/v3r27Jmj84SHh+v48ePas2ePihcvLj8/P0VGRurq1at6++231aZNG23btk2zZ8926PhyM44yZcroww8/1Jo1a1SqVCnNnz9f33//vUqVKnXDcW3fvl0nTpywu/8mt+bMmaM9e/aoffv2Kl26tK5cuaIPP/xQ+/fv19tvv207V3JystavX68qVarI29tbJUqUkIeHh95++209/fTT+umnnzRu3Di7Y5csWVIWi0UrV67Uww8/bLtHq3HjxoqLi1ObNm0UGBioV155xe5nIC4uTunp6apdu7a8vb310UcfycvLSyVLlrylMQJAfsQ9QQBwj/L395e/v3+228eNG6eXX35ZEydOVIUKFdSiRQt98cUXNwwH//bYY4+pRYsWevDBBxUUFKRPPvlEVapU0dSpUzV58mRFR0drwYIFmjhxoiOGdEvj6N+/vx599FF16tRJtWvX1h9//GE3K5SVYcOGydXVVVFRUbZL0W7Ffffdp+TkZD399NOqWLGiGjZsqO+++04rVqywzVzVrVtXTz/9tDp16qSgoCC99tprCgoKUlxcnJYsWaKoqChNmjRJU6ZMsTt2sWLFNGbMGL3wwgsqWrSo7fLHkSNHqmHDhmrdurVatWqldu3aqXTp0rb9AgMD9e6776pevXqqXLmy1q1bp//9738qVKjQLY0RAPIji/HvC4sBAAAAIB9jJggAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqRCCAAAAAJgKIQgAAACAqfw/g364qQyvyjIAAAAASUVORK5CYII=", - "text/plain": [ - "
" - ] - }, - "metadata": {}, - "output_type": "display_data" - } - ], - "source": [ - "data = {\n", - " 'Mental_Health_Status': ['Excellent', 'Fair', 'Good', 'Poor'],\n", - " 'Female': [6.439634, 6.174326, 6.608654, 6.772948],\n", - " 'Male': [6.455131, 6.374454, 6.427023, 6.419180],\n", - " 'Other': [6.422055, 6.488747, 6.570501, 6.525699]\n", - "}\n", - "\n", - "# Criando um DataFrame com os dados\n", - "df = pd.DataFrame(data)\n", - "\n", - "# Definindo o gráfico de barras\n", - "df.set_index('Mental_Health_Status').plot(kind='bar', figsize=(10,6))\n", - "\n", - "# Adicionando rótulos e título\n", - "plt.title('Mental Health Status by Gender')\n", - "plt.xlabel('Mental Health Status')\n", - "plt.ylabel('Mean Score')\n", - "plt.xticks(rotation=0) # Rotaciona os labels do eixo x\n", - "\n", - "# Exibindo o gráfico\n", - "plt.legend(title='Gender')\n", - "plt.show()\n" - ] - }, - { - "cell_type": "markdown", - "metadata": { - "id": "4PoHgP0yAsjJ" - }, - "source": [ - "Pela relação apresentada acima as médias de horas usando tecnologia, a variação de horas usando tecnologia é pequena em relação ao estado mental. Mas o gênero feminimo que informou estado mental ruim fica um puco mais nas telas. o gênero masculino e outros, possui médias muito próximnas entre horas usando tecnologia e sua relação com a sensação dos estado mental. Acredito ser possivel inferir que a sensação do estado mental ao tempo de usando tecnologia não tenham uma realação significativa de acordo com as respostas no contexto de horas usando teconologia.\n", - "\n", - "Excellent: Excelente / Fair: Razoável/ Good: Bom/ Poor: Ruim" - ] - }, - { - "cell_type": "code", - "execution_count": 17, - "metadata": { - "colab": { - "base_uri": "https://localhost:8080/" - }, - "id": "ccHkKUsEA2_F", - "outputId": "999bfa2b-056f-4eee-d104-4e9f91702555" - }, - "outputs": [ - { - "name": "stdout", - "output_type": "stream", - "text": [ - "Mental_Health_Status Excellent Fair Good Poor\n", - "Gender \n", - "Female 3.845260 4.110244 3.940130 3.953956\n", - "Male 4.024190 3.991393 4.072260 3.895152\n", - "Other 3.919147 3.977802 3.949212 4.003272\n" - ] - } - ], - "source": [ - "\n", - "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Mental_Health_Status'], values=dataframe['Social_Media_Usage_Hours'], aggfunc='mean')\n", - "print(dataframe_crosstab)" - ] - }, - { - "cell_type": "markdown", - "metadata": { - "id": "wup_l88yBBys" - }, - "source": [ - "Resolvi verificar as horas dedicadas a mídias sociais para verificar se há diferenças referente a análise anterior.\n", - "\n", - "Nesse sentido apesar das pequenas diferenças em relação as médias, para os grupos a sensação de estado mental são distintas entre si. Para as mulheres que passam mais tempo em redes sociais seu estado mental é razoável, diferente do tempo dedicado a telas que a sensação estado mental era ruim. Para os homens que passam mais tempo em redes sociais seu estado mental é bom, semelhante ao tempo dedicadas a telas. Para os outros que passam mais tempo em redes sociais seu estado mental é ruim, diferente do tempo dedicado a telas que a sensação estado mental era razoável." - ] - }, - { - "cell_type": "code", - "execution_count": 18, - "metadata": { - "colab": { - "base_uri": "https://localhost:8080/" - }, - "id": "808hlt0UBWA8", - "outputId": "d6b16ecf-280a-4f47-f774-ee346594700e" - }, - "outputs": [ - { - "name": "stdout", - "output_type": "stream", - "text": [ - "Mental_Health_Status Excellent Fair Good Poor\n", - "Gender \n", - "Female 3.845260 4.110244 3.940130 3.953956\n", - "Male 4.024190 3.991393 4.072260 3.895152\n", - "Other 3.919147 3.977802 3.949212 4.003272\n" - ] - } - ], - "source": [ - "\n", - "dataframe_crosstab = pd.crosstab(dataframe['Gender'], dataframe['Mental_Health_Status'], values=dataframe['Social_Media_Usage_Hours'], aggfunc='mean')\n", - "print(dataframe_crosstab)" - ] - }, - { - "cell_type": "markdown", - "metadata": { - "id": "Ba3nw0nHBYfG" - }, - "source": [ - "Resolvi verificar as horas dedicadas a mídias sociais para verificar se há diferenças referente a análise anterior.\n", - "\n", - "Nesse sentido apesar das pequenas diferenças em relação as médias, para os grupos a sensação de estado mental são distintas entre si.\n", - "Para as mulheres que passam mais tempo em redes sociais seu estado mental é razoável, diferente do tempo dedicado a telas que a sensação estado mental era ruim.\n", - "Para os homens que passam mais tempo em redes sociais seu estado mental é bom, semelhante ao tempo dedicadas a telas.\n", - "Para os outros que passam mais tempo em redes sociais seu estado mental é ruim, diferente do tempo dedicado a telas que a sensação estado mental era razoável." - ] - }, - { - "cell_type": "markdown", - "metadata": { - "id": "XZjITheTZOdE" - }, - "source": [] - } - ], - "metadata": { - "colab": { - "provenance": [] - }, - "kernelspec": { - "display_name": "Python 3", - "name": "python3" - }, - "language_info": { - "name": "python" - } - }, - "nbformat": 4, - "nbformat_minor": 0 -} From 8d725b9cfe5c8b464a10f0efb73b0541a23ffce1 Mon Sep 17 00:00:00 2001 From: manuellimartins Date: Sat, 5 Oct 2024 09:56:20 -0300 Subject: [PATCH 6/9] =?UTF-8?q?atualiza=C3=A7=C3=A3o=20de=20arquivo?= MIME-Version: 1.0 Content-Type: text/plain; charset=UTF-8 Content-Transfer-Encoding: 8bit --- ...inal_S17_ipynb.ipynb => Projeto_final_Manuelli_ipynb (2).ipynb | 0 1 file changed, 0 insertions(+), 0 deletions(-) rename Projeto_final_S17_ipynb.ipynb => Projeto_final_Manuelli_ipynb (2).ipynb (100%) diff --git a/Projeto_final_S17_ipynb.ipynb b/Projeto_final_Manuelli_ipynb (2).ipynb similarity index 100% rename from Projeto_final_S17_ipynb.ipynb rename to Projeto_final_Manuelli_ipynb (2).ipynb From 753d712f0cbe8728e76b3aea91fcf70ce7a6ba42 Mon Sep 17 00:00:00 2001 From: Manuelli Martins Date: Wed, 9 Oct 2024 23:15:33 -0300 Subject: [PATCH 7/9] Delete README.md --- README.md | 53 ----------------------------------------------------- 1 file changed, 53 deletions(-) delete mode 100644 README.md diff --git a/README.md b/README.md deleted file mode 100644 index 3d32a3a..0000000 --- a/README.md +++ /dev/null @@ -1,53 +0,0 @@ - -Turma Online 34 | Python | Semanas 17 e 18 | 2024 | -* Realizado o Fork do repositório https://github.com/reprograma/on34-python-s17-s18-projeto-final -* Clonei o fork na minha máquina (Para isso basta abrir o seu terminal e digitar `git clone url-do -repositorio-forkado`) -* Add o arquivo da base de dados e o colab, bem como o README. -* Commit – m : das atualizações/ alterações -* Git Status: para verificação se está tudo ok -* Git push: para enviar as mudanças para o repositório remoto. - -* [fonte de dados escolhida](#https://www.kaggle.com/datasets/waqi786/mental-health-and-technology-usage-dataset?resource=download ) -* Análise exploratória - Semana destinada a esse tipo de análise para entendimento da base. - - Nessa etapa foi usado comandos da biblioteca pandas e matplotlib - Foram usadas funções como: - DataFrame é uma estrutura de dados bidimensional amplamente usada na biblioteca pandas do Python. Ele se assemelha a uma tabela (como em uma planilha do Excel ou uma tabela SQL), onde os dados são organizados em linhas e colunas. - A função value_counts() é muito usada em Pandas para contar a frequência de valores únicos em uma coluna de um DataFrame. - A função sort_index(): é utilizada para ordenar os dados de uma Series ou DataFrame de acordo com o índice. - A função groupby() do pandas é usada para agrupar dados com base em uma ou mais colunas e realizar operações agregadas, como somas, médias, contagens, etc., em cada grupo - A função crosstab() do pandas é usada para criar uma tabela de frequência cruzada entre duas ou mais colunas. Ela é útil para gerar tabelas de contingência que mostram a relação entre variáveis categóricas, como a contagem de ocorrências entre elas. - - -## Conteúdo - -### O que é um projeto de análise de dados? -De acordo com nosso ensino/aprendizagem -**Dados:** são elementos brutos e não processados, como números, palavras, ou símbolos que precisam ser interpretados para se tornarem úteis. -**Informação:** é o resultado do processamento, organização e interpretação dos dados, fornecendo significado e contexto para tomar decisões ou entender situações. - -- **Conteúdo** - Compreender a percepção dos entrevistados sobre seu estado mental em relação ao tempo dedicada a telas. -- **Público** - Projeto destinado a conclusão de curso do Análise de dados no Reprograma - O conteúdo da base é relevante para compreender qual a percepção dos entrevistados frente ao uso de telas - -- **Transformação** - O conteúdo é relevante para analisar o nível de aprendizado, bem como ter acesso as informações relacionadas a base de dados - - - * **Escolha do tema** - Saúde mental e uso de tecnologia - -* **Objetivos ** - - O objetivo da análise é compreender a percepção dos entrevistados sobre seu estado mental em relação ao tempo dedicada a telas. - - Verificar o padrão de horas dedicadas a horas de sono e atividade física. - - Verificar a percepção sobre o impacto no trabalho em relação ao uso de telas. - - #### Base de Dados -- [Kaggle](https://www.kaggle.com/datasets) - From 1c21625f0b8274cf44d2c1ad1c026655d7c6ae25 Mon Sep 17 00:00:00 2001 From: manuellimartins Date: Wed, 9 Oct 2024 23:24:26 -0300 Subject: [PATCH 8/9] =?UTF-8?q?atualiza=C3=A7=C3=A3o=20Trabalho?= MIME-Version: 1.0 Content-Type: text/plain; charset=UTF-8 Content-Transfer-Encoding: 8bit --- README.md | 2 ++ S18 Trabalho_final.twbx | Bin 0 -> 437640 bytes Trabalho final Reprograma.pptx | Bin 0 -> 285920 bytes 3 files changed, 2 insertions(+) create mode 100644 S18 Trabalho_final.twbx create mode 100644 Trabalho final 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literal 0 HcmV?d00001 From 2ad915f5bb331ee8b31e1fa1234ae170ba300188 Mon Sep 17 00:00:00 2001 From: Manuelli Martins Date: Thu, 10 Oct 2024 00:14:29 -0300 Subject: [PATCH 9/9] Delete README.md --- README.md | 55 ------------------------------------------------------- 1 file changed, 55 deletions(-) delete mode 100644 README.md diff --git a/README.md b/README.md deleted file mode 100644 index 7187e62..0000000 --- a/README.md +++ /dev/null @@ -1,55 +0,0 @@ - -Turma Online 34 | Python | Semanas 17 e 18 | 2024 | -* Realizado o Fork do repositório https://github.com/reprograma/on34-python-s17-s18-projeto-final -* Clonei o fork na minha máquina (Para isso basta abrir o seu terminal e digitar `git clone url-do -repositorio-forkado`) -* Add o arquivo da base de dados e o colab, bem como o README. -* Commit – m : das atualizações/ alterações -* Git Status: para verificação se está tudo ok -* Git push: para enviar as mudanças para o repositório remoto. - -* [fonte de dados escolhida](#https://www.kaggle.com/datasets/waqi786/mental-health-and-technology-usage-dataset?resource=download ) -* Análise exploratória - Semana destinada a esse tipo de análise para entendimento da base. - - Nessa etapa foi usado comandos da biblioteca pandas e matplotlib - Foram usadas funções como: - DataFrame é uma estrutura de dados bidimensional amplamente usada na biblioteca pandas do Python. Ele se assemelha a uma tabela (como em uma planilha do Excel ou uma tabela SQL), onde os dados são organizados em linhas e colunas. - A função value_counts() é muito usada em Pandas para contar a frequência de valores únicos em uma coluna de um DataFrame. - A função sort_index(): é utilizada para ordenar os dados de uma Series ou DataFrame de acordo com o índice. - A função groupby() do pandas é usada para agrupar dados com base em uma ou mais colunas e realizar operações agregadas, como somas, médias, contagens, etc., em cada grupo - A função crosstab() do pandas é usada para criar uma tabela de frequência cruzada entre duas ou mais colunas. Ela é útil para gerar tabelas de contingência que mostram a relação entre variáveis categóricas, como a contagem de ocorrências entre elas. - - -## Conteúdo - -### O que é um projeto de análise de dados? -De acordo com nosso ensino/aprendizagem -**Dados:** são elementos brutos e não processados, como números, palavras, ou símbolos que precisam ser interpretados para se tornarem úteis. -**Informação:** é o resultado do processamento, organização e interpretação dos dados, fornecendo significado e contexto para tomar decisões ou entender situações. - -- **Conteúdo** - Compreender a percepção dos entrevistados sobre seu estado mental em relação ao tempo dedicada a telas. -- **Público** - Projeto destinado a conclusão de curso do Análise de dados no Reprograma - O conteúdo da base é relevante para compreender qual a percepção dos entrevistados frente ao uso de telas - -- **Transformação** - O conteúdo é relevante para analisar o nível de aprendizado, bem como ter acesso as informações relacionadas a base de dados - - - * **Escolha do tema** - Saúde mental e uso de tecnologia - -* **Objetivos ** - - O objetivo da análise é compreender a percepção dos entrevistados sobre seu estado mental em relação ao tempo dedicada a telas. - - Verificar o padrão de horas dedicadas a horas de sono e atividade física. - - Verificar a percepção sobre o impacto no trabalho em relação ao uso de telas. - - #### Base de Dados -- [Kaggle](https://www.kaggle.com/datasets) - - _ Adição de apresentação no Tableau - link: https://public.tableau.com/app/profile/manuelli.martins/viz/S18Trabalho_final/Painel1 \ No newline at end of file