Topics extraction with Non-Negative Matrix FactorizationΒΆ

This is a proof of concept application of Non Negative Matrix Factorization of the term frequency matrix of a corpus of documents so as to extract an additive model of the topic structure of the corpus. The output is a list of topics, each represented as a list of terms (weights are not shown).

The default parameters (n_samples / n_features / n_topics) should make the example runnable in a couple of tens of seconds. You can try to increase the dimensions of the problem, but be aware than the time complexity is polynomial.

Python source code: topics_extraction_with_nmf.py

# Author: Olivier Grisel <olivier.grisel@ensta.org>
#         Lars Buitinck <L.J.Buitinck@uva.nl>
# License: BSD 3 clause

from __future__ import print_function
from time import time

from sklearn.feature_extraction.text import TfidfVectorizer
from sklearn.decomposition import NMF
from sklearn.datasets import fetch_20newsgroups

n_samples = 2000
n_features = 1000
n_topics = 10
n_top_words = 20

# Load the 20 newsgroups dataset and vectorize it. We use a few heuristics
# to filter out useless terms early on: the posts are stripped of headers,
# footers and quoted replies, and common English words, words occurring in
# only one document or in at least 95% of the documents are removed.

t0 = time()
print("Loading dataset and extracting TF-IDF features...")
dataset = fetch_20newsgroups(shuffle=True, random_state=1,
                             remove=('headers', 'footers', 'quotes'))

vectorizer = TfidfVectorizer(max_df=0.95, min_df=2, max_features=n_features,
                             stop_words='english')
tfidf = vectorizer.fit_transform(dataset.data[:n_samples])
print("done in %0.3fs." % (time() - t0))

# Fit the NMF model
print("Fitting the NMF model with n_samples=%d and n_features=%d..."
      % (n_samples, n_features))
nmf = NMF(n_components=n_topics, random_state=1).fit(tfidf)
print("done in %0.3fs." % (time() - t0))

feature_names = vectorizer.get_feature_names()

for topic_idx, topic in enumerate(nmf.components_):
    print("Topic #%d:" % topic_idx)
    print(" ".join([feature_names[i]
                    for i in topic.argsort()[:-n_top_words - 1:-1]]))
    print()