SOTAVerified

Functional Stochastic Localization

2026-03-17Unverified0· sign in to hype

Anming Gu, Bobby Shi, Kevin Tian

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

Eldan's stochastic localization is a probabilistic construction that has proved instrumental to modern breakthroughs in high-dimensional geometry and the design of sampling algorithms. Motivated by sampling under non-Euclidean geometries and the mirror descent algorithm in optimization, we develop a functional generalization of Eldan's process that replaces Gaussian regularization with regularization by any positive integer multiple of a log-Laplace transform. We further give a mixing time bound on the Markov chain induced by our localization process, which holds if our target distribution satisfies a functional Poincaré inequality. Finally, we apply our framework to differentially private convex optimization in _p norms for p [1, 2), where we improve state-of-the-art query complexities in a zeroth-order model.

Reproductions