Contractive kinetic Langevin samplers beyond global Lipschitz continuity
Published: Sep 15, 2025
Last Updated: Sep 15, 2025
Authors:Iosif Lytras, Panagiotis Mertikopoulos
Abstract
In this paper, we examine the problem of sampling from log-concave distributions with (possibly) superlinear gradient growth under kinetic (underdamped) Langevin algorithms. Using a carefully tailored taming scheme, we propose two novel discretizations of the kinetic Langevin SDE, and we show that they are both contractive and satisfy a log-Sobolev inequality. Building on this, we establish a series of non-asymptotic bounds in $2$-Wasserstein distance between the law reached by each algorithm and the underlying target measure.