Cody T. Ross , Thomas Fikes , Hillary Lenfesty , Richard McElreath
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引用次数: 0
摘要
最近,研究人员开始研究第三方仲裁在合作演化过程中可能扮演的角色。他们利用迭代囚徒困境(IPD)表明,仲裁可以减轻认知错误对合作策略稳定性的负面影响。然而,在理论和实证方面仍有许多问题有待解决。为了促进对第三方仲裁作用的研究,我们引入了一个 R 软件包 IPDToolkit,该软件包可用于模拟合成数据和对经验数据进行贝叶斯分析。为解决理论问题,IPDToolkit 提供了一个蒙特卡罗模拟引擎,可用于在有仲裁的 IPD 中生成任意策略之间的博弈,并评估预期回报。为解决经验问题,IPDToolkit 提供了可定制的贝叶斯有限混杂模型,可用于识别产生经验博弈数据的策略。我们介绍了一个使用 IPDToolkit 的完整工作流程,以向最终用户传授其功能。
IPDToolkit: An R package for simulation and Bayesian analysis of iterated prisoner’s dilemma game-play under third-party arbitration
Recently, researchers have begun studying the role that third-party arbitration may play in the evolution of cooperation. Using the iterated prisoner’s dilemma (IPD), they show that arbitration can mitigate the negative effects of perception errors on the stability of cooperative strategies. Open questions, both theoretical and empirical, however, remain. To promote research on the role of third-party arbitration, we introduce an R package, IPDToolkit, which facilitates both simulation of synthetic data and Bayesian analysis of empirical data. To address theoretical questions, IPDToolkit provides a Monte Carlo simulation engine that can be used to generate play between arbitrary strategies in the IPD with arbitration and assess expected pay-offs. To address empirical questions, IPDToolkit provides customizable, Bayesian finite-mixture models that can be used to identify the strategies responsible for generating empirical game-play data. We present a complete workflow using IPDToolkit to teach end-users its functionality.