Hot-keys on this page
r m x p toggle line displays
j k next/prev highlighted chunk
0 (zero) top of page
1 (one) first highlighted chunk
import json import logging import xml
import cophi import lda import numpy as np import pandas as pd
from application import database from application import utils
def wrapper(): """Wrapper for the topic modeling workflow. """ try: logging.info("Just started topic modeling.") data = utils.get_data("corpus", "topics", "iterations", "stopwords", "mfw") logging.info("Fetched user data...") database.insert_into("textfiles", data["corpus"]) logging.info("Inserted data into database.")
# 1. Preprocess: dtm, token_freqs = preprocess(data) logging.info("Successfully preprocessed data.") database.insert_into("token_freqs", json.dumps(token_freqs)) # 2. Create model: model = create_model(dtm, data["topics"], data["iterations"]) logging.info("Successfully created topic model.") # 3. Get model output: topics, descriptors, document_topic = get_model_output(model, dtm) logging.info("Got model output.") # 4. Calculate similarities: topic_similarities, document_similarities = get_similarities(document_topic) logging.info("Successfully calculated topic and document similarities.")
data = {"document_topic": document_topic.to_json(orient="index", force_ascii=False), "topics": json.dumps(topics, ensure_ascii=False), "document_similarities": document_similarities.to_json(force_ascii=False), "topic_similarities": topic_similarities.to_json(force_ascii=False)} database.insert_into("model", data) logging.info("Successfully inserted data into database.") logging.info("Very nice, great success!") except xml.etree.ElementTree.ParseError as error: logging.error("ERROR: There is something wrong with your XML files.") logging.error("ERROR: {}".format(error)) logging.error("Redirect to error page.") except UnicodeDecodeError: logging.error("ERROR: There is something wrong with your text files. " "Are they UTF-8 encoded?") logging.error("Redirect to error page.") except Exception as error: logging.error("ERROR: {}".format(error)) logging.error("Redirect to error page.")
def preprocess(data): """Preprocess text data. """ # Constructing corpus: textfiles = database.select("textfiles") documents = utils.get_documents(textfiles) corpus = cophi.model.Corpus(documents) # Cleaning corpus: stopwords = utils.get_stopwords(data, corpus) hapax = corpus.hapax features = set(stopwords).union(set(hapax)) logging.info("Cleaning corpus...") dtm = corpus.drop(corpus.dtm, features) # Save stopwords: database.insert_into("stopwords", json.dumps(stopwords)) return dtm, corpus.num_tokens.tolist()
def create_model(dtm, topics, iterations): """Create a topic model. """ logging.info("Creating topic model...") model = lda.LDA(n_topics=topics, n_iter=iterations) model.fit(dtm.values) return model
def get_model_output(model, dtm): """Get topics and distributions from topic model. """ logging.info("Fetching model output...") # Topics and their descriptors: topics = list(utils.get_topics(model, dtm.columns)) descriptors = list(utils.get_topic_descriptors(topics)) # Document-topic distribution: document_topic = utils.get_document_topic(model, dtm.index, descriptors) return topics, descriptors, document_topic
def get_similarities(document_topic): """Calculate similarities between vectors. """ logging.info("Calculating topic similarities...") topics = utils.get_cosine(document_topic.values, document_topic.columns) logging.info("Calculating document similarites...") documents = utils.get_cosine(document_topic.T.values, document_topic.index) return topics, documents |