On the Variational Posterior of Dirichlet Process Deep Latent Gaussian Mixture Models

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Authors Amine Echraibi, Joachim Flocon-Cholet, Stรฉphane Gosselin, Sandrine Vaton arXiv ID 2006.08993 Category stat.ML: Machine Learning (Stat) Cross-listed cs.AI, cs.LG Citations 6 Venue International Conference on Machine Learning Last Checked 4 months ago
Abstract
Thanks to the reparameterization trick, deep latent Gaussian models have shown tremendous success recently in learning latent representations. The ability to couple them however with nonparamet-ric priors such as the Dirichlet Process (DP) hasn't seen similar success due to its non parameteriz-able nature. In this paper, we present an alternative treatment of the variational posterior of the Dirichlet Process Deep Latent Gaussian Mixture Model (DP-DLGMM), where we show that the prior cluster parameters and the variational posteriors of the beta distributions and cluster hidden variables can be updated in closed-form. This leads to a standard reparameterization trick on the Gaussian latent variables knowing the cluster assignments. We demonstrate our approach on standard benchmark datasets, we show that our model is capable of generating realistic samples for each cluster obtained, and manifests competitive performance in a semi-supervised setting.
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