Wellposedness, exponential ergodicity and numerical approximation of fully super-linear McKean–Vlasov SDEs and associated particle systems

Xingyuan Chen, Goncalo Dos Reis, Wolfgang Stockinger

Research output: Contribution to journalArticlepeer-review

Abstract

We study a class of McKean–Vlasov Stochastic Differential Equations (MV-SDEs) with drifts and diffusions having super-linear growth in measure and space – the maps have general polynomial form but also satisfy a certain monotonicity condition. The combination of the drift’s super-linear growth in measure (by way of a convolution) and the super-linear growth in space and measure of the diffusion coefficient requires novel technical elements in order to obtain the main results. We establish wellposedness, propagation of chaos (PoC), and under further assumptions on the model parameters, we show an exponential ergodicity property alongside the existence of an invariant distribution. No differentiability or non-degeneracy conditions are required.

Further, we present a particle system based Euler-type split-step scheme (SSM) for the simulation of this type of MV-SDEs. The scheme attains, in stepsize, the strong error rate
in the non-path-space root-mean-square error metric and we demonstrate the property of mean-square contraction. Our results are illustrated by numerical examples including: estimation of PoC rates across dimensions, preservation of periodic phase-space, and the observation that taming appears to be not a suitable method unless strong dissipativity is present.
Original languageEnglish
Pages (from-to)1-50
Number of pages50
JournalElectronic journal of probability
Volume30
DOIs
Publication statusPublished - 7 Feb 2025

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