Adaptation of Iterated Prisoner's Dilemma Strategies by Evolution and Learning

H. Quek, C. Goh
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引用次数: 9

Abstract

This paper examines the performance and adaptability of evolutionary, learning and memetic strategies to different environment settings in the iterated prisoner's dilemma (IPD). A memetic adaptation framework is devised for IPD strategies to exploit the complementary features of evolution and learning. In the paradigm, learning serves as a form of directed search to guide evolutionary strategies to attain good strategy traits while evolution helps to minimize disparity in performance between learning strategies. A cognitive double-loop incremental learning scheme (ILS) that encompasses a perception component, probabilistic revision of strategies and a feedback learning mechanism is also proposed and incorporated into evolution. Simulation results verify that the two techniques, when employed together, are able to complement each other's strengths and compensate each other's weaknesses, leading to the formation of good strategies that adapt and thrive well in complex, dynamic environments
迭代囚徒困境策略的进化与学习适应
本文研究了迭代囚徒困境中进化策略、学习策略和模因策略在不同环境情境下的表现和适应性。为利用进化和学习的互补性,设计了一个模因适应框架。在该范式中,学习作为一种定向搜索的形式,指导进化策略获得良好的策略特征,而进化有助于减少学习策略之间的表现差异。提出了一种包含感知成分、策略概率修正和反馈学习机制的认知双环增量学习方案(ILS),并将其纳入进化中。仿真结果验证了这两种技术在一起使用时能够互补,弥补彼此的弱点,从而形成良好的策略,在复杂的动态环境中适应并茁壮成长
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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