发明名称 COLLAPSED GIBBS SAMPLER FOR SPARSE TOPIC MODELS AND DISCRETE MATRIX FACTORIZATION
摘要 In an inference system for organizing a corpus of objects, feature representations are generated comprising distributions over a set of features corresponding to the objects. A topic model defining a set of topics is inferred by performing latent Dirichlet allocation (LDA) with an Indian Buffet Process (IBP) compound Dirichlet prior probability distribution. The inference is performed using a collapsed Gibbs sampling algorithm by iteratively sampling (1) topic allocation variables of the LDA and (2) binary activation variables of the IBP compound Dirichlet prior In some embodiments the inference is configured such that each inferred topic model is a clean topic model with topics defined as distributions over sub-sets of the set of features selected by the prior. In some embodiments the inference is configured such that the inferred topic model associates a focused sub-set of the set of topics to each object of the training corpus.
申请公布号 US2012095952(A1) 申请公布日期 2012.04.19
申请号 US20100907219 申请日期 2010.10.19
申请人 ARCHAMBEAU CEDRIC P.C.J.G.;BOUCHARD GUILLAUME M.;XEROX CORPORATION 发明人 ARCHAMBEAU CEDRIC P.C.J.G.;BOUCHARD GUILLAUME M.
分类号 G06N5/04 主分类号 G06N5/04
代理机构 代理人
主权项
地址