连续时间、状态和行动空间中平均场博弈的行为批判强化学习算法

IF 1.6 2区 数学 Q2 MATHEMATICS, APPLIED
Hong Liang, Zhiping Chen, Kaili Jing
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引用次数: 0

摘要

本文研究的是连续时间、状态和行动空间中的均值场博弈,其中有无限多个代理,每个代理的目标都是最大化其预期累积奖励。利用随机策略技术,我们通过对代表性代理的关注,证明了策略评估和策略梯度等同于过程的马丁格尔条件。然后结合虚构博弈,我们提出了解决连续均值场博弈的在线和离线行动者批判算法,在给定的种群状态和行动分布下交替更新价值函数和策略。我们通过两个数值实验证明,我们提出的算法可以快速稳定地收敛到均值场均衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Actor-Critic Reinforcement Learning Algorithms for Mean Field Games in Continuous Time, State and Action Spaces

Actor-Critic Reinforcement Learning Algorithms for Mean Field Games in Continuous Time, State and Action Spaces

This paper investigates mean field games in continuous time, state and action spaces with an infinite number of agents, where each agent aims to maximize its expected cumulative reward. Using the technique of randomized policies, we show policy evaluation and policy gradient are equivalent to the martingale conditions of a process by focusing on a representative agent. Then combined with fictitious game, we propose online and offline actor-critic algorithms for solving continuous mean field games that update the value function and policy alternatively under the given population state and action distributions. We demonstrate through two numerical experiments that our proposed algorithms can converge to the mean field equilibrium quickly and stably.

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来源期刊
CiteScore
3.30
自引率
5.60%
发文量
103
审稿时长
>12 weeks
期刊介绍: The Applied Mathematics and Optimization Journal covers a broad range of mathematical methods in particular those that bridge with optimization and have some connection with applications. Core topics include calculus of variations, partial differential equations, stochastic control, optimization of deterministic or stochastic systems in discrete or continuous time, homogenization, control theory, mean field games, dynamic games and optimal transport. Algorithmic, data analytic, machine learning and numerical methods which support the modeling and analysis of optimization problems are encouraged. Of great interest are papers which show some novel idea in either the theory or model which include some connection with potential applications in science and engineering.
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