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Deep Bayesian Nonparametric Factor Analysis

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 Added by Arunesh Mittal
 Publication date 2020
and research's language is English




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We propose a deep generative factor analysis model with beta process prior that can approximate complex non-factorial distributions over the latent codes. We outline a stochastic EM algorithm for scalable inference in a specific instantiation of this model and present some preliminary results.



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