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build_topic_model_browser.py
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169 lines (144 loc) · 6.79 KB
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# coding: utf-8
import os
import shutil
import tom_lib.utils as utils
from flask import Flask, render_template
from tom_lib.nlp.topic_model import NonNegativeMatrixFactorization
from tom_lib.structure.corpus import Corpus
__author__ = "Adrien Guille"
__email__ = "adrien.guille@univ-lyon2.fr"
# Flask Web server
app = Flask(__name__, static_folder='browser/static', template_folder='browser/templates')
# Parameters
max_tf = 0.8
min_tf = 4
num_topics = 15
vectorization = 'tfidf'
# Load corpus
corpus = Corpus(source_file_path='input/egc_lemmatized.csv',
language='french',
vectorization=vectorization,
max_relative_frequency=max_tf,
min_absolute_frequency=min_tf)
print('corpus size:', corpus.size)
print('vocabulary size:', len(corpus.vocabulary))
# Infer topics
topic_model = NonNegativeMatrixFactorization(corpus=corpus)
topic_model.infer_topics(num_topics=num_topics)
topic_model.print_topics(num_words=10)
# Clean the data directory
if os.path.exists('browser/static/data'):
shutil.rmtree('browser/static/data')
os.makedirs('browser/static/data')
# Export topic cloud
utils.save_topic_cloud(topic_model, 'browser/static/data/topic_cloud.json')
# Export details about topics
for topic_id in range(topic_model.nb_topics):
utils.save_word_distribution(topic_model.top_words(topic_id, 20),
'browser/static/data/word_distribution' + str(topic_id) + '.tsv')
utils.save_affiliation_repartition(topic_model.affiliation_repartition(topic_id),
'browser/static/data/affiliation_repartition' + str(topic_id) + '.tsv')
evolution = []
for i in range(2012, 2016):
evolution.append((i, topic_model.topic_frequency(topic_id, date=i)))
utils.save_topic_evolution(evolution, 'browser/static/data/frequency' + str(topic_id) + '.tsv')
# Export details about documents
for doc_id in range(topic_model.corpus.size):
utils.save_topic_distribution(topic_model.topic_distribution_for_document(doc_id),
'browser/static/data/topic_distribution_d' + str(doc_id) + '.tsv')
# Export details about words
for word_id in range(len(topic_model.corpus.vocabulary)):
utils.save_topic_distribution(topic_model.topic_distribution_for_word(word_id),
'browser/static/data/topic_distribution_w' + str(word_id) + '.tsv')
# Associate documents with topics
topic_associations = topic_model.documents_per_topic()
# Export per-topic author network
for topic_id in range(topic_model.nb_topics):
utils.save_json_object(corpus.collaboration_network(topic_associations[topic_id]),
'browser/static/data/author_network' + str(topic_id) + '.json')
@app.route('/')
def index():
return render_template('index.html',
topic_ids=range(topic_model.nb_topics),
doc_ids=range(corpus.size),
method=type(topic_model).__name__,
corpus_size=corpus.size,
vocabulary_size=len(corpus.vocabulary),
max_tf=max_tf,
min_tf=min_tf,
vectorization=vectorization,
num_topics=num_topics)
@app.route('/topic_cloud.html')
def topic_cloud():
return render_template('topic_cloud.html',
topic_ids=range(topic_model.nb_topics),
doc_ids=range(corpus.size))
@app.route('/vocabulary.html')
def vocabulary():
word_list = []
for i in range(len(corpus.vocabulary)):
word_list.append((i, corpus.word_for_id(i)))
splitted_vocabulary = []
words_per_column = int(len(corpus.vocabulary)/5)
for j in range(5):
sub_vocabulary = []
for l in range(j*words_per_column, (j+1)*words_per_column):
sub_vocabulary.append(word_list[l])
splitted_vocabulary.append(sub_vocabulary)
return render_template('vocabulary.html',
topic_ids=range(topic_model.nb_topics),
doc_ids=range(corpus.size),
splitted_vocabulary=splitted_vocabulary,
vocabulary_size=len(word_list))
@app.route('/topic/<tid>.html')
def topic_details(tid):
ids = topic_associations[int(tid)]
documents = []
for document_id in ids:
documents.append((corpus.title(document_id).capitalize(),
', '.join(corpus.author(document_id)),
corpus.date(document_id), document_id))
return render_template('topic.html',
topic_id=tid,
frequency=round(topic_model.topic_frequency(int(tid))*100, 2),
documents=documents,
topic_ids=range(topic_model.nb_topics),
doc_ids=range(corpus.size))
@app.route('/document/<did>.html')
def document_details(did):
vector = topic_model.corpus.vector_for_document(int(did))
word_list = []
for a_word_id in range(len(vector)):
word_list.append((corpus.word_for_id(a_word_id), round(vector[a_word_id], 3), a_word_id))
word_list.sort(key=lambda x: x[1])
word_list.reverse()
documents = []
for another_doc in corpus.similar_documents(int(did), 5):
documents.append((corpus.title(another_doc[0]).capitalize(),
', '.join(corpus.author(another_doc[0])),
corpus.date(another_doc[0]), another_doc[0], round(another_doc[1], 3)))
return render_template('document.html',
doc_id=did,
words=word_list[:21],
topic_ids=range(topic_model.nb_topics),
doc_ids=range(corpus.size),
documents=documents,
authors=', '.join(corpus.author(int(did))),
year=corpus.date(int(did)),
short_content=corpus.title(int(did)))
@app.route('/word/<wid>.html')
def word_details(wid):
documents = []
for document_id in corpus.docs_for_word(int(wid)):
documents.append((corpus.title(document_id).capitalize(),
', '.join(corpus.author(document_id)),
corpus.date(document_id), document_id))
return render_template('word.html',
word_id=wid,
word=topic_model.corpus.word_for_id(int(wid)),
topic_ids=range(topic_model.nb_topics),
doc_ids=range(corpus.size),
documents=documents)
if __name__ == '__main__':
# Access the browser at http://localhost:2016/
app.run(debug=True, host='localhost', port=2016)