Key points are not available for this paper at this time.
This study involves a methodology for the automatic identification of semantic features and document clusters in a heterogeneous text collection. The methodology is based upon encoding the data using low rank non-negative matrix factorization algorithms to preserve natural data non-negativity and thus avoid subtractive basis vector and encoding interactions present in techniques such as principal component analysis. Some existing non-negative matrix factorization techniques are reviewed and some new ones are proposed. Numerical experiments are reported on the use of a hybrid NMF algorithm to produce a parts-based approximation of a sparse term-by-document matrix. The resulting basis vectors and matrix projection can be used to identify underlying semantic features (topics) and document clusters of the corresponding text collection.
Pauca et al. (Thu,) studied this question.