Learning Nash equilibria by coevolving distributed classifier systems

F. Seredyński, C. Janikow
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引用次数: 8

Abstract

We consider a team of classifier systems (CSs), operating in a distributed environment of a game-theoretic model. This distributed model, a game with limited interaction, is a variant of N-person Prisoner Dilemma game. A payoff of each CS in this model depends only on its action and on actions of limited number of its neighbors in the game. CSs coevolve while competing for their payoffs. We show how such classifiers learn Nash equilibria, and what variety of behavior is generated: from pure competition to pure cooperation.
协同进化分布式分类器系统学习纳什均衡
我们考虑一组分类器系统(CSs),在博弈论模型的分布式环境中运行。这种有限互动的分布式博弈模型是n人囚徒困境博弈的一种变体。在这个模型中,每个CS的收益只取决于自己的行为以及游戏中有限数量的邻居的行为。CSs在竞争回报的同时共同进化。我们展示了这些分类器是如何学习纳什均衡的,以及产生了什么样的行为:从纯粹的竞争到纯粹的合作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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