Projected Latent Markov Chain Monte Carlo: Conditional Sampling of Normalizing Flows
Machine Learning
2021-03-01 v4 Machine Learning
Abstract
We introduce Projected Latent Markov Chain Monte Carlo (PL-MCMC), a technique for sampling from the high-dimensional conditional distributions learned by a normalizing flow. We prove that a Metropolis-Hastings implementation of PL-MCMC asymptotically samples from the exact conditional distributions associated with a normalizing flow. As a conditional sampling method, PL-MCMC enables Monte Carlo Expectation Maximization (MC-EM) training of normalizing flows from incomplete data. Through experimental tests applying normalizing flows to missing data tasks for a variety of data sets, we demonstrate the efficacy of PL-MCMC for conditional sampling from normalizing flows.
Keywords
Cite
@article{arxiv.2007.06140,
title = {Projected Latent Markov Chain Monte Carlo: Conditional Sampling of Normalizing Flows},
author = {Chris Cannella and Mohammadreza Soltani and Vahid Tarokh},
journal= {arXiv preprint arXiv:2007.06140},
year = {2021}
}
Comments
27 pages, 22 figures, 4 tables