From stability of Langevin diffusion to convergence of proximal MCMC for non-log-concave sampling

Neural Information Processing Systems 

We consider the problem of sampling distributions stemming from non-convex potentials with Unadjusted Langevin Algorithm (ULA). We prove the stability of the discrete-time ULA to drift approximations under the assumption that the potential is strongly convex at infinity.