资源论文Learning Deep Latent Gaussian Models with Markov Chain Monte Carlo

Learning Deep Latent Gaussian Models with Markov Chain Monte Carlo

2020-03-09 | |  76 |   46 |   0

Abstract

Deep latent Gaussian models are powerful and popular probabilistic models of highdimensional data. These models are almost always fit using variational expectationmaximization, an approximation to true maximum-marginal-likelihood estimation. In this paper, we propose a different approach: rather than use a variational approximation (which produces biased gradient signals), we use Markov chain Monte Carlo (MCMC, which allows us to trade bias for computation). We find that our MCMC-based approach has several advantages: it yields higher held-out likelihoods, produces sharper images, and does not suffer from the variational overpruning effect. MCMC’s additional computational overhead proves to be significant, but not prohibitive.

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