AI Agents 相关度: 8/10

Altruism and Fair Objective in Mixed-Motive Markov games

Yao-hua Franck Xu, Tayeb Lemlouma, Arnaud Braud, Jean-Marie Bonnin
arXiv: 2602.08389v1 发布: 2026-02-09 更新: 2026-02-09

AI 摘要

提出一种基于比例公平的新框架,旨在马尔可夫博弈中促进更公平的合作。

主要贡献

  • 提出了基于比例公平的智能体公平利他效用
  • 推导了经典社会困境中确保合作的分析条件
  • 定义了公平马尔可夫博弈,并推导了新的公平Actor-Critic算法

方法论

将标准的功利主义目标替换为比例公平,并在个体log-payoff空间上定义公平利他效用,设计Actor-Critic算法。

原文摘要

Cooperation is fundamental for society's viability, as it enables the emergence of structure within heterogeneous groups that seek collective well-being. However, individuals are inclined to defect in order to benefit from the group's cooperation without contributing the associated costs, thus leading to unfair situations. In game theory, social dilemmas entail this dichotomy between individual interest and collective outcome. The most dominant approach to multi-agent cooperation is the utilitarian welfare which can produce efficient highly inequitable outcomes. This paper proposes a novel framework to foster fairer cooperation by replacing the standard utilitarian objective with Proportional Fairness. We introduce a fair altruistic utility for each agent, defined on the individual log-payoff space and derive the analytical conditions required to ensure cooperation in classic social dilemmas. We then extend this framework to sequential settings by defining a Fair Markov Game and deriving novel fair Actor-Critic algorithms to learn fair policies. Finally, we evaluate our method in various social dilemma environments.

标签

多智能体 合作博弈 公平性 强化学习

arXiv 分类

cs.MA cs.AI cs.GT cs.LG