Log-concave Sampling from a Convex Body with a Barrier: a Robust and
Unified Dikin Walk
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 beyond log-barrier. We further extend our result to show how to sample from a -dimensional spectrahedron, the constrained set of a semidefinite program, specified by the set where are real symmetric matrices. We design a walk that mixes in steps with a per iteration cost of . We improve the mixing time bound of prior best Dikin walk due to Narayanan and Rakhlin that mixes in steps.
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