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Simulating Prosocial Behavior and Social Contagion in LLM Agents under Institutional Interventions

Simulating Prosocial Behavior and Social Contagion in LLM Agents under Institutional Interventions

来源:Arxiv_logoArxiv
英文摘要

As large language models (LLMs) increasingly serve as autonomous agents in social contexts, understanding their capacity for prosocial behavior becomes essential. We present ProSim, a simulation framework designed to examine how prosocial behavior emerges, adapts, and erodes in LLM-based agents under diverse social and institutional conditions. The framework comprises four components: individual simulation, scenario simulation, interaction simulation, and intervention simulation. We conduct three progressive studies to evaluate prosocial alignment. First, we show that LLM agents can demonstrate stable and context-sensitive prosocial behavior across diverse scenarios and adapt their responses under normative policy interventions. Second, we find that agents engage in fairness-based third-party punishment and respond systematically to variations in inequity magnitude and enforcement cost. Third, we show that policy-induced inequities suppress prosocial behavior, propagate through social networks, and are mediated by agents' perceptions of unfairness. These findings lay the groundwork for evaluating social alignment and modeling institutional dynamics in agent-driven societies.

Yujia Zhou、Hexi Wang、Qingyao Ai、Zhen Wu、Yiqun Liu

计算技术、计算机技术

Yujia Zhou,Hexi Wang,Qingyao Ai,Zhen Wu,Yiqun Liu.Simulating Prosocial Behavior and Social Contagion in LLM Agents under Institutional Interventions[EB/OL].(2025-05-20)[2025-07-09].https://arxiv.org/abs/2505.15857.点此复制

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