.. _example_applications_topics_extraction_with_nmf.py: ======================================================== Topics extraction with Non-Negative Matrix Factorization ======================================================== 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:** :download:`topics_extraction_with_nmf.py ` .. literalinclude:: topics_extraction_with_nmf.py :lines: 18-