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Bayesian Beta-Bernoulli Process Sparse Coding with Deep Neural Networks

Authors :
Mittal, Arunesh
Yang, Kai
Sajda, Paul
Paisley, John
Publication Year :
2023

Abstract

Several approximate inference methods have been proposed for deep discrete latent variable models. However, non-parametric methods which have previously been successfully employed for classical sparse coding models have largely been unexplored in the context of deep models. We propose a non-parametric iterative algorithm for learning discrete latent representations in such deep models. Additionally, to learn scale invariant discrete features, we propose local data scaling variables. Lastly, to encourage sparsity in our representations, we propose a Beta-Bernoulli process prior on the latent factors. We evaluate our spare coding model coupled with different likelihood models. We evaluate our method across datasets with varying characteristics and compare our results to current amortized approximate inference methods.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2303.08230
Document Type :
Working Paper