强化学习
社会困境
随机博弈
囚徒困境
困境
旅行者困境
计算机科学
社会学习
超理性
博弈论
重复博弈
微观经济学
正常形式游戏
经济
人工智能
知识管理
认识论
哲学
作者
Yi‐Jie Huang,Yanhong Chen
出处
期刊:Chaos
[American Institute of Physics]
日期:2025-04-01
卷期号:35 (4)
摘要
Reinforcement learning technology has been empirically demonstrated to facilitate cooperation in game models. However, traditional research has primarily focused on two-strategy frameworks (cooperation and defection), which inadequately captures the complexity of real-world scenarios. To address this limitation, we integrated Q-learning into the prisoner's dilemma game, incorporating three strategies: cooperation, defection, and going it alone. We defined each agent's state based on the number of neighboring agents opting for cooperation and included social payoff in the Q-table update process. Numerical simulations indicate that this framework significantly enhances cooperation and average payoff as the degree of social-attention increases. This phenomenon occurs because social payoff enables individuals to move beyond narrow self-interest and consider broader social benefits. Additionally, we conducted a thorough analysis of the mechanisms underlying this enhancement of cooperation.
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