Log-concave Sampling from a Convex Body with a Barrier: a Robust and Unified Dikin Walk
Yuzhou Gu, Nikki Lijing Kuang, Yi-An Ma, Zhao Song, Lichen Zhang

TL;DR
This paper introduces a robust, unified Dikin walk algorithm for efficient sampling from log-concave distributions within convex bodies, improving mixing times and computational costs over prior methods, including for spectrahedra.
Contribution
It proposes a generalized soft-threshold Dikin walk that enhances mixing times and computational efficiency for sampling from convex bodies and spectrahedra, extending previous approaches.
Findings
Faster mixing time of steps for polytopes.
Improved mixing time for spectrahedra over prior methods.
Per iteration computational cost is optimized with spectral approximations.
Abstract
We consider the problem of sampling from a -dimensional log-concave distribution for -Lipschitz , constrained to a convex body with an efficiently computable self-concordant barrier function, contained in a ball of radius with a -warm start. We propose a \emph{robust} sampling framework that computes spectral approximations to the Hessian of the barrier functions in each iteration. We prove that for polytopes that are described by hyperplanes, sampling with the Lee-Sidford barrier function mixes within steps with a per step cost of , where is the fast matrix multiplication exponent. Compared to the prior work of Mangoubi and Vishnoi, our approach gives faster mixing time as we are able to design a generalized soft-threshold Dikin walk…
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Taxonomy
TopicsPoint processes and geometric inequalities · Bayesian Methods and Mixture Models
MethodsSparse Evolutionary Training
