arXiv Analytics

Sign in

arXiv:2206.03095 [math.OC]AbstractReferencesReviewsResources

A Class of Mean-Field Games with Optimal Stopping and its Inverse Problem

Jianhui Huang, Tinghan Xie

Published 2022-06-07Version 1

This paper revisits the well-studied \emph{optimal stopping} problem but within the \emph{large-population} framework. In particular, two classes of optimal stopping problems are formulated by taking into account the \emph{relative performance criteria}. It is remarkable the relative performance criteria, also understood by the \emph{Joneses preference}, \emph{habit formation utility}, or \emph{relative wealth concern} in economics and finance, plays an important role in explaining various decision behaviors such as price bubbles. By introducing such criteria in large-population setting, a given agent can compare his individual stopping rule with the average behaviors of its cohort. The associated mean-field games are formulated in order to derive the decentralized stopping rules. The related consistency conditions are characterized via some coupled equation system and the asymptotic Nash equilibrium properties are also verified. In addition, some \emph{inverse} mean-field optimal stopping problem is also introduced and discussed.

Related articles: Most relevant | Search more
arXiv:2003.00978 [math.OC] (Published 2020-03-02)
Hyper-Differential Sensitivity Analysis for Inverse Problems Constrained by Partial Differential Equations
arXiv:1309.7421 [math.OC] (Published 2013-09-28)
An inverse problem of identifying the radiative coefficient in a degenerate parabolic equation
arXiv:2409.00498 [math.OC] (Published 2024-08-31)
An Optimal Control Approach for Inverse Problems with Deep Learnable Regularizers