Conceitos essenciais
This paper establishes the convergence rate of the weighted empirical measure of a self-interacting process to the invariant probability measure of McKean-Vlasov stochastic differential equations (MV-SDEs). It then designs an Euler-Maruyama (EM) scheme for the self-interacting process and derives the convergence rate between the weighted empirical measure of the EM numerical solution and the invariant measure of MV-SDEs.
Resumo
The paper focuses on the numerical approximation of the invariant probability measure of McKean-Vlasov stochastic differential equations (MV-SDEs).
Key highlights:
- Establishes the convergence rate of the weighted empirical measure of a self-interacting process to the invariant probability measure of MV-SDEs.
- Designs an Euler-Maruyama (EM) scheme for the self-interacting process and derives the convergence rate between the weighted empirical measure of the EM numerical solution and the invariant measure of MV-SDEs.
- Compares the computational cost of the weighted empirical approximation and the averaged weighted empirical approximation, showing the former has a lower cost.
- Validates the theoretical results through numerical experiments.
The paper first introduces the MV-SDE model and the assumptions required for the well-posedness of the solution and the existence of a unique invariant probability measure. It then constructs a self-interacting process whose coefficients depend only on the current and historical information of the solution.
The key results are:
- The convergence rate of the weighted empirical measure of the self-interacting process and the invariant measure of MV-SDEs is obtained in the W2-Wasserstein metric.
- An EM scheme is constructed for the self-interacting process, and the convergence rate between the weighted empirical measure of the EM numerical solution and the invariant measure of MV-SDEs is derived.
- The convergence rate between the averaged weighted empirical measure of the EM numerical solution of the corresponding multi-particle system and the invariant measure of MV-SDEs is also provided.
- The computational cost analysis shows the averaged weighted empirical approximation of the particle system has a lower cost than the weighted empirical approximation.
Estatísticas
The paper does not contain any explicit numerical data or statistics. The focus is on theoretical analysis and convergence rate derivations.