Efficient constrained sampling via the mirror-Langevin algorithm
Statistics Theory
2021-10-26 v2 Machine Learning
Statistics Theory
Abstract
We propose a new discretization of the mirror-Langevin diffusion and give a crisp proof of its convergence. Our analysis uses relative convexity/smoothness and self-concordance, ideas which originated in convex optimization, together with a new result in optimal transport that generalizes the displacement convexity of the entropy. Unlike prior works, our result both (1) requires much weaker assumptions on the mirror map and the target distribution, and (2) has vanishing bias as the step size tends to zero. In particular, for the task of sampling from a log-concave distribution supported on a compact set, our theoretical results are significantly better than the existing guarantees.
Cite
@article{arxiv.2010.16212,
title = {Efficient constrained sampling via the mirror-Langevin algorithm},
author = {Kwangjun Ahn and Sinho Chewi},
journal= {arXiv preprint arXiv:2010.16212},
year = {2021}
}
Comments
26 pages, 4 figures