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Fast Convergence of Langevin Dynamics on Manifold: Geodesics meet Log-Sobolev

Abstract

Sampling is a fundamental and arguably very important task with numerous applications in Machine Learning. One approach to sample from a high dimensional distribution efe^{-f} for some function ff is the Langevin Algorithm (LA). Recently, there has been a lot of progress in showing fast convergence of LA even in cases where ff is non-convex, notably [53], [39] in which the former paper focuses on functions ff defined in Rn\mathbb{R}^n and the latter paper focuses on functions with symmetries (like matrix completion type objectives) with manifold structure. Our work generalizes the results of [53] where ff is defined on a manifold MM rather than Rn\mathbb{R}^n. From technical point of view, we show that KL decreases in a geometric rate whenever the distribution efe^{-f} satisfies a log-Sobolev inequality on MM.

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