Feb. 14, 2024, 5:44 a.m. | Charles C. Margossian David M. Blei

cs.LG updates on arXiv.org arxiv.org

In a probabilistic latent variable model, factorized (or mean-field) variational inference (F-VI) fits a separate parametric distribution for each latent variable. Amortized variational inference (A-VI) instead learns a common inference function, which maps each observation to its corresponding latent variable's approximate posterior. Typically, A-VI is used as a cog in the training of variational autoencoders, however it stands to reason that A-VI could also be used as a general alternative to F-VI. In this paper we study when and why …

cs.lg distribution function inference latent variable model maps mean observation parametric posterior stat.ml training

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