Uniform Wasserstein convergence of penalized Markov processes

Abstract

For general penalized Markov processes with soft killing, we propose a simple criterion ensuring uniform convergence of conditional distributions in Wasserstein distance to a unique quasi-stationary distribution. We give several examples of application where our criterion can be checked, including Bernoulli convolutions and piecewise deterministic Markov processes of the form of switched dynamical systems, for which convergence in total variation is not possible.

Publication
(Preprint)
Denis Villemonais
Denis Villemonais
Assistant professor in Applied Mathematics - Membre junior IUF