Publication:
Learning mean-field games with discounted and average costs

Loading...
Thumbnail Image

Research Projects

Journal Title

Journal ISSN

Volume Title

Type

article

Access

openAccess
Attribution 4.0 International

Publication Status

Published

Creative Commons license

Except where otherwised noted, this item's license is described as openAccess

Journal Issue

Abstract

We consider learning approximate Nash equilibria for discrete-time mean-field games with stochastic nonlinear state dynamics subject to both average and discounted costs. To this end, we introduce a mean-field equilibrium (MFE) operator, whose fixed point is a mean-field equilibrium, i.e., equilibrium in the infinite population limit. We first prove that this operator is a contraction, and propose a learning algorithm to compute an approximate mean-field equilibrium by approximating the MFE operator with a random one. Moreover, using the contraction property of the MFE operator, we establish the error analysis of the proposed learning algorithm. We then show that the learned mean-field equilibrium constitutes an approximate Nash equilibrium for finite-agent games.

Date

2023

Publisher

Microtome Publishing

Description

Keywords

Citation


Page Views

0

File Download

0