指令微调语言模型智能体中的类人内群体偏好 / Human-like in-group bias in instruction-tuned language model agents
1️⃣ 一句话总结
这项研究通过多智能体仿真实验发现,经过指令微调的语言模型在群体标签可见时,会表现出类似人类的“内群体偏好”——优先信任和帮助同组成员,这种微小的单次偏向在长期互动中会积累成显著的结构性不平等,且无法通过常规的行为审计检测出来。
As autonomous AI agents are deployed in persistent, interacting networks -- coordinating tasks, routing resources, and accumulating reputational histories -- the social dynamics that emerge will determine who receives opportunity and who does not, at scales no human institution can supervise. We ran a controlled multi-agent simulation in which instruction-tuned language model agents interacted across 500 turns under three conditions manipulating group label salience and resource scarcity, across six model families with 20 seeds each. When group labels were visible, we observed in-group trust bias, action homophily, and network assortativity -- all absent when labels were hidden -- a pattern structurally consistent with salience-dependence in human social psychology. This discrimination was invisible to standard action-log audits: bias operated entirely through who received each action, not what actions were chosen, with action-type distributions showing no increase in negative actions across conditions. Per-turn in-group versus out-group differentials of 5 to 16 percentage points were statistically significant for all six models (Wilcoxon signed-rank, all Benjamini-Hochberg-corrected p < 0.001), establishing group-contingent targeting as a robust property of instruction-tuned language models across architectures and training regimes. Compounded through 500 turns of reciprocation, these differentials accumulated into in-group trust biases of +0.014 to +0.100 (d = 0.84-4.52) -- illustrating how modest per-interaction targeting propagates into structural inequality in persistent networks.
指令微调语言模型智能体中的类人内群体偏好 / Human-like in-group bias in instruction-tuned language model agents
这项研究通过多智能体仿真实验发现,经过指令微调的语言模型在群体标签可见时,会表现出类似人类的“内群体偏好”——优先信任和帮助同组成员,这种微小的单次偏向在长期互动中会积累成显著的结构性不平等,且无法通过常规的行为审计检测出来。
源自 arXiv: 2605.28114