Jan. 1, 2022, midnight | Gábor Melis, András György, Phil Blunsom

JMLR www.jmlr.org

Posterior collapse is a common failure mode of density models trained as variational autoencoders, wherein they model the data without relying on their latent variables, rendering these variables useless. We focus on two factors contributing to posterior collapse, that have been studied separately in the literature. First, the underspecification of the model, which in an extreme but common case allows posterior collapse to be the theoretical optimium. Second, the looseness of the variational lower bound and the related underestimation of …

constraints information language modelling monte-carlo posterior

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