社会学习
强化学习
价值(数学)
理性
机制(生物学)
社会困境
人工智能
计算机科学
利他主义(生物学)
社会心理学
嵌入
秩(图论)
社会价值取向
空格(标点符号)
社会关系
合作学习
心理学
微观经济学
认知心理学
社会选择理论
协作学习
社会启发式
信息的价值
分工
投票
社会学习理论
方向(向量空间)
作者
Wenhao Li,Xiangfeng Wang,Bo Jin,Jingyi Lu,Hongyuan Zha
标识
DOI:10.1109/tpami.2025.3620954
摘要
Social dilemmas can be considered situations where individual rationality leads to collective irrationality. The multi-agent reinforcement learning community has leveraged ideas from social science, such as social value orientations (SVO), to solve social dilemmas in complex cooperative tasks. In this paper, we first introduce the typical "division of labor or roles" mechanism in human society, and provide a promising solution for intertemporal social dilemmas (ISD) with SVOs. A novel learning framework, called Learning Roles with Emergent SVOs (RESVO), is proposed to transform the learning of roles into the social value orientation emergence, which is symmetrically solved by endowing agents with altruism to share rewards with other agents. An SVO-based role embedding space is then constructed by individual conditioning policies on roles with a novel rank regularizer and mutual information maximizer. Experiments show that RESVO achieves a stable division of labor and cooperation in ISDs with different complexity.
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