In-and-Out: Algorithmic Diffusion for Sampling Convex Bodies

arXiv stat.ML / 3/23/2026

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Key Points

  • The paper introduces a new random-walk algorithm designed to uniformly sample points from high-dimensional convex bodies.
  • It claims state-of-the-art runtime complexity while providing stronger statistical guarantees measured via Rényi divergence, which also implies bounds in total variation, Wasserstein-2, KL divergence, and chi-squared distance.
  • The convergence analysis uses a novel “stochastic diffusion” viewpoint, showing contraction toward the target distribution.
  • The rate of convergence is characterized using functional isoperimetric constants of the target distribution, offering a refined theoretical lens compared with prior polytime sampling approaches.
  • The work is positioned as an advance in theory for convex-body sampling, potentially improving how sampling subroutines behave in high-dimensional algorithmic pipelines.

Abstract

We present a new random walk for uniformly sampling high-dimensional convex bodies. It achieves state-of-the-art runtime complexity with stronger guarantees on the output than previously known, namely in R\'enyi divergence (which implies TV, \mathcal{W}_2, KL, \chi^2). The proof departs from known approaches for polytime algorithms for the problem -- we utilize a stochastic diffusion perspective to show contraction to the target distribution with the rate of convergence determined by functional isoperimetric constants of the target distribution.