Stein $\Pi$-Importance Sampling
Abstract
Stein discrepancies have emerged as a powerful tool for retrospective improvement of Markov chain Monte Carlo output. However, the question of how to design Markov chains that are well-suited to such post-processing has yet to be addressed. This paper studies Stein importance sampling, in which weights are assigned to the states visited by a -invariant Markov chain to obtain a consistent approximation of , the intended target. Surprisingly, the optimal choice of is not identical to the target ; we therefore propose an explicit construction for based on a novel variational argument. Explicit conditions for convergence of Stein -Importance Sampling are established. For of tasks in the PosteriorDB benchmark, a significant improvement over the analogous post-processing of -invariant Markov chains is reported.
Keywords
Cite
@article{arxiv.2305.10068,
title = {Stein $\Pi$-Importance Sampling},
author = {Congye Wang and Wilson Chen and Heishiro Kanagawa and Chris. J. Oates},
journal= {arXiv preprint arXiv:2305.10068},
year = {2023}
}