求解多智能体随机博弈纳什均衡的价值函数与后悔最小化算法

Luping Liu, Wensheng Jia
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引用次数: 3

摘要

本文研究了求解多智能体随机博弈纳什均衡的带遗憾最小化的值函数算法。首先,将后悔最小化的思想引入到价值函数中,设计了带有后悔最小化算法的价值函数。进一步分析了贴现因子对预期收益的影响。最后,研究了单代理随机博弈和空间囚徒困境(SDP),以支持理论结果。仿真结果表明,当诱惑参数较小时,合作策略占主导地位;当诱惑参数较大时,背叛策略占主导地位。因此,我们通过设置合适的诱惑参数来提高agent之间的合作水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Value Function with Regret Minimization Algorithm for Solving the Nash Equilibrium of Multi-Agent Stochastic Game
In this paper, we study the value function with regret minimization algorithm for solving the Nash equilibrium of multi-agent stochastic game (MASG). To begin with, the idea of regret minimization is introduced to the value function, and the value functionwith regretminimization algorithm is designed. Furthermore, we analyze the effect of discount factor to the expected payoff. Finally, the single-agent stochastic game and spatial prisoner’s dilemma (SDP) are investigated in order to support the theoretical results. The simulation results show that when the temptation parameter is small, the cooperation strategy is dominant; when the temptation parameter is large, the defection strategy is dominant. Therefore, we improve the level of cooperation between agents by setting appropriate temptation parameters.
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