NeurIPS2022

Posterior Matching for Arbitrary Conditioning

Ryan R. Strauss, Junier B. Oliva

被引用 7 次

摘要

Arbitrary conditioning is an important problem in unsupervised learning, where we seek to model the conditional densities p(xuxo)p(\mathbf{x}_u \mid \mathbf{x}_o) that underly some data, for all possible non-intersecting subsets o,u{1,,d}o, u \subset \{1, \dots , d\}. However, the vast majority of density estimation only focuses on modeling the joint distribution p(x)p(\mathbf{x}), in which important conditional dependencies between features are opaque. We propose a simple and general framework, coined Posterior Matching, that enables Variational Autoencoders (VAEs) to perform arbitrary conditioning, without modification to the VAE itself. Posterior Matching applies to the numerous existing VAE-based approaches to joint density estimation, thereby circumventing the specialized models required by previous approaches to arbitrary conditioning. We find that Posterior Matching is comparable or superior to current state-of-the-art methods for a variety of tasks with an assortment of VAEs (e.g. discrete, hierarchical, VaDE).