2014
DOI: 10.20965/jaciii.2014.p0366
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Hierarchical Semi-Supervised Factorization for Learning the Semantics

Abstract: Most semi-supervised learning methods are based on extending existing supervised or unsupervised techniques by incorporating additional information from unlabeled or labeled data. Unlabeled instances help in learning statistical models that fully describe the global property of our data, whereas labeled instances make learned knowledge more human-interpretable. In this paper we present a novel way of extending conventional non-negativematrix factorization (NMF) and probabilistic latent semantic analysis (pLSA)… Show more

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