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Annealed Importance Sampling with q-Paths

14 December 2020
Rob Brekelmans
Vaden Masrani
T. Bui
Frank Wood
Aram Galstyan
Greg Ver Steeg
Frank Nielsen
ArXiv (abs)PDFHTML
Abstract

Annealed importance sampling (AIS) is the gold standard for estimating partition functions or marginal likelihoods, corresponding to importance sampling over a path of distributions between a tractable base and an unnormalized target. While AIS yields an unbiased estimator for any path, existing literature has been primarily limited to the geometric mixture or moment-averaged paths associated with the exponential family and KL divergence. We explore AIS using qqq-paths, which include the geometric path as a special case and are related to the homogeneous power mean, deformed exponential family, and α\alphaα-divergence.

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