随机博弈中的满足路径与独立多智能体强化学习

IF 1.9 Q1 MATHEMATICS, APPLIED SIAM journal on mathematics of data science Pub Date : 2021-10-09 DOI:10.1137/22m1515112
Bora Yongacoglu, Gürdal Arslan, S. Yuksel
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引用次数: 9

摘要

在多智能体强化学习(MARL)中,独立学习器是那些不观察系统中其他智能体行为的学习器。由于信息的分散性,设计独立的学习器来驱动游戏达到平衡是一项挑战。研究了在随机博弈中,用满足动力学方法引导独立学习者逼近均衡的可行性。对于$\epsilon \geq 0$,满足$\epsilon$的策略更新规则是指当agent对剩余参与者的策略做出$\epsilon$ -最佳响应时,指示agent不要改变其策略的规则;$\epsilon$ -满意路径定义为每个agent使用某个$\epsilon$ -满意策略更新规则选择下一个策略时获得的联合策略序列。我们建立了对称的$N$ -参与人对策和一般的双参与人随机对策中$\epsilon$ -均衡的$\epsilon$ -满足路径存在的结构性结果。然后,我们提出了一个$N$ -玩家对称博弈的独立学习算法,并给出了在自游戏下收敛到$\epsilon$ -平衡的高概率保证。这种保证仅使用对称性,利用先前未开发的$\epsilon$ -令人满意的路径结构。
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Satisficing Paths and Independent Multiagent Reinforcement Learning in Stochastic Games
In multi-agent reinforcement learning (MARL), independent learners are those that do not observe the actions of other agents in the system. Due to the decentralization of information, it is challenging to design independent learners that drive play to equilibrium. This paper investigates the feasibility of using satisficing dynamics to guide independent learners to approximate equilibrium in stochastic games. For $\epsilon \geq 0$, an $\epsilon$-satisficing policy update rule is any rule that instructs the agent to not change its policy when it is $\epsilon$-best-responding to the policies of the remaining players; $\epsilon$-satisficing paths are defined to be sequences of joint policies obtained when each agent uses some $\epsilon$-satisficing policy update rule to select its next policy. We establish structural results on the existence of $\epsilon$-satisficing paths into $\epsilon$-equilibrium in both symmetric $N$-player games and general stochastic games with two players. We then present an independent learning algorithm for $N$-player symmetric games and give high probability guarantees of convergence to $\epsilon$-equilibrium under self-play. This guarantee is made using symmetry alone, leveraging the previously unexploited structure of $\epsilon$-satisficing paths.
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