22
22

Wasserstein distance estimates for the distributions of numerical approximations to ergodic stochastic differential equations

Abstract

We present a framework that allows for the non-asymptotic study of the 22-Wasserstein distance between the invariant distribution of an ergodic stochastic differential equation and the distribution of its numerical approximation in the strongly log-concave case. This allows us to study in a unified way a number of different integrators proposed in the literature for the overdamped and underdamped Langevin dynamics. In addition, we analyse a novel splitting method for the underdamped Langevin dynamics which only requires one gradient evaluation per time step. Under an additional smoothness assumption on a dd--dimensional strongly log-concave distribution with condition number κ\kappa, the algorithm is shown to produce with an O(κ5/4d1/4ϵ1/2)\mathcal{O}\big(\kappa^{5/4} d^{1/4}\epsilon^{-1/2} \big) complexity samples from a distribution that, in Wasserstein distance, is at most ϵ>0\epsilon>0 away from the target distribution.

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