Leveraging the Exact Likelihood of Deep Latent Variable Models
Mattei, Pierre-Alexandre, Frellsen, Jes
–Neural Information Processing Systems
Deep latent variable models (DLVMs) combine the approximation abilities of deep neural networks and the statistical foundations of generative models. Variational methods are commonly used for inference; however, the exact likelihood of these models has been largely overlooked. The purpose of this work is to study the general properties of this quantity and to show how they can be leveraged in practice. We focus on important inferential problems that rely on the likelihood: estimation and missing data imputation. First, we investigate maximum likelihood estimation for DLVMs: in particular, we show that most unconstrained models used for continuous data have an unbounded likelihood function.
Neural Information Processing Systems
Feb-14-2020, 13:29:28 GMT