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Emergence of Fair Leaders via Mediators in Multi-Agent Reinforcement Learning
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本文探讨了多智能体强化学习中Stackelberg博弈的领导者选择问题及其与公平性的关系,提出了一种基于调解者的公平最大化框架,以实现更公平的智能体回报。

arXiv:2508.02421v1 Announce Type: cross Abstract: Stackelberg games and their resulting equilibria have received increasing attention in the multi-agent reinforcement learning literature. Each stage of a traditional Stackelberg game involves a leader(s) acting first, followed by the followers. In situations where the roles of leader(s) and followers can be interchanged, the designated role can have considerable advantages, for example, in first-mover advantage settings. Then the question arises: Who should be the leader and when? A bias in the leader selection process can lead to unfair outcomes. This problem is aggravated if the agents are self-interested and care only about their goals and rewards. We formally define this leader selection problem and show its relation to fairness in agents' returns. Furthermore, we propose a multi-agent reinforcement learning framework that maximizes fairness by integrating mediators. Mediators have previously been used in the simultaneous action setting with varying levels of control, such as directly performing agents' actions or just recommending them. Our framework integrates mediators in the Stackelberg setting with minimal control (leader selection). We show that the presence of mediators leads to self-interested agents taking fair actions, resulting in higher overall fairness in agents' returns.

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Stackelberg博弈 领导者选择 公平性 多智能体强化学习 调解者
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