A posteriori error estimates for fully coupled McKean–Vlasov forward-backward SDEs

IF 2.3 2区 数学 Q1 MATHEMATICS, APPLIED
Christoph Reisinger, Wolfgang Stockinger, Yufei Zhang
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引用次数: 0

Abstract

Abstract Fully coupled McKean–Vlasov forward-backward stochastic differential equations (MV-FBSDEs) arise naturally from large population optimization problems. Judging the quality of given numerical solutions for MV-FBSDEs, which usually require Picard iterations and approximations of nested conditional expectations, is typically difficult. This paper proposes an a posteriori error estimator to quantify the $L^2$-approximation error of an arbitrarily generated approximation on a time grid. We establish that the error estimator is equivalent to the global approximation error between the given numerical solution and the solution of a forward Euler discretized MV-FBSDE. A crucial and challenging step in the analysis is the proof of stability of this Euler approximation to the MV-FBSDE, which is of independent interest. We further demonstrate that, for sufficiently fine time grids, the accuracy of numerical solutions for solving the continuous MV-FBSDE can also be measured by the error estimator. The error estimates justify the use of residual-based algorithms for solving MV-FBSDEs. Numerical experiments for MV-FBSDEs arising from mean field control and games confirm the effectiveness and practical applicability of the error estimator.
完全耦合McKean-Vlasov正向向后SDEs的后验误差估计
完全耦合McKean-Vlasov正倒向随机微分方程(MV-FBSDEs)是求解大种群优化问题的自然方法。MV-FBSDEs通常需要Picard迭代和嵌套条件期望的近似,判断给定数值解的质量通常是困难的。本文提出了一种后验误差估计器,用于量化时间网格上任意生成的逼近的L^2逼近误差。我们建立了误差估计量等价于给定数值解与正演欧拉离散MV-FBSDE解之间的全局逼近误差。分析中的一个关键和具有挑战性的步骤是证明这个欧拉近似对MV-FBSDE的稳定性,这是一个独立的兴趣。我们进一步证明,对于足够精细的时间网格,求解连续MV-FBSDE的数值解的精度也可以通过误差估计器来测量。误差估计证明了使用基于残差的算法求解MV-FBSDEs是正确的。对平均场控制和博弈引起的MV-FBSDEs进行了数值实验,验证了误差估计器的有效性和实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
IMA Journal of Numerical Analysis
IMA Journal of Numerical Analysis 数学-应用数学
CiteScore
5.30
自引率
4.80%
发文量
79
审稿时长
6-12 weeks
期刊介绍: The IMA Journal of Numerical Analysis (IMAJNA) publishes original contributions to all fields of numerical analysis; articles will be accepted which treat the theory, development or use of practical algorithms and interactions between these aspects. Occasional survey articles are also published.
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