Semi-supervised NMF Models for Topic Modeling in Learning Tasks
Jamie Haddock
Lara Kassab
Sixian Li
Alona Kryshchenko
Rachel Grotheer
Elena Sizikova
Chuntian Wang
Thomas Merkh
R. W. M. A. Madushani
Miju Ahn
Deanna Needell
Kathryn Leonard

Abstract
We propose several new models for semi-supervised nonnegative matrix factorization (SSNMF) and provide motivation for SSNMF models as maximum likelihood estimators given specific distributions of uncertainty. We present multiplicative updates training methods for each new model, and demonstrate the application of these models to classification, although they are flexible to other supervised learning tasks. We illustrate the promise of these models and training methods on both synthetic and real data, and achieve high classification accuracy on the 20 Newsgroups dataset.
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