Approximation of the ergodic measure of SDEs with singular drift by Euler-Maruyama scheme
Xinghu Jin, Wei Wang, Lihu Xu, Tusheng Zhang

TL;DR
This paper develops a novel method to approximate the ergodic measure of SDEs with singular drift using Zvonkin's transform and Euler-Maruyama scheme, overcoming challenges posed by irregular coefficients.
Contribution
It introduces a new approach combining Zvonkin's transform and Euler-Maruyama to approximate ergodic measures for SDEs with singular drifts, with a detailed regularity analysis.
Findings
Successfully approximates ergodic measures of SDEs with singular drifts.
Establishes regularity of solutions to a Poisson equation in this context.
Provides convergence analysis for the proposed approximation scheme.
Abstract
We study the approximation of the ergodic measure of the following stochastic differential equation (SDE) on : \begin{eqnarray}\label{e:SDEE} d X_t &=& (b_1(X_t)+b_2(X_t)) d t+\sigma(X_t) d W_t, \end{eqnarray} where is a -dimensional standard Brownian motion, and , and are the functions to be specified in Assumption 2.1 below. In particular, satisfies or with , which makes the standard numerical schemes not work or fail to give a good convergence rate. In order to overcome these two difficulties, we first apply a Zvonkin's transform to SDE and obtain a new SDE which has coefficients with…
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Taxonomy
TopicsStochastic processes and financial applications · Insurance, Mortality, Demography, Risk Management · Economic theories and models
