供应链采购问题中分布式任务授权建模的多阶段博弈合作

Kaizhi Tang, S. Kumara
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引用次数: 4

摘要

本文提出了一种结合强化学习和虚拟博弈的进化方法来寻求供应链采购环境下多智能体多阶段博弈的均衡解。该博弈被设计成在一组服务物流运输的自利运输公司之间建立任务委派模型。该博弈涉及两个以上的代理和多个阶段的矩阵博弈。强化学习和虚拟游戏的整合克服了每种方法的弱点,并利用了它们的优势。这种创新方法在只有3名玩家、未知阶段数量和巨大收益差距的游戏中表现得非常出色。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cooperation in a multi-stage game for modeling distributed task delegation in a supply chain procurement problem
We develop an evolutionary method that combines reinforcement learning and fictitious playing to seek equilibrium solution for a multi-agent and multi-stage game in the context of supply chain procurement. The game is designed to model task delegation among a group of self-interested transportation companies which serve logistic shipment. The game involves more than two agents and multiple stages of matrix games. The integration of reinforcement learning and fictitious play overcomes the weaknesses of each approach and exploits their strengths. This innovative approach performs extraordinarily well on a game with three players, unknown number of stages, and large gaps of payoff values.
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