AI Agents 相关度: 9/10

Normative Common Ground Replication (NormCoRe): Replication-by-Translation for Studying Norms in Multi-agent AI

Luca Deck, Simeon Allmendinger, Lucas Müller, Niklas Kühl
arXiv: 2603.11974v1 发布: 2026-03-12 更新: 2026-03-12

AI 摘要

NormCoRe框架通过翻译人类实验设计研究多智能体AI中的规范。

主要贡献

  • 提出NormCoRe框架,用于将人类实验转化为MAAI环境
  • 系统性地分析了AI智能体与人类在规范判断上的差异
  • 展示了基础模型和语言对AI智能体规范判断的影响

方法论

将人类受试者研究的结构层映射到AI智能体研究的设计上,实现系统性文档记录和MAAI中规范的分析。

原文摘要

In the late 2010s, the fashion trend NormCore framed sameness as a signal of belonging, illustrating how norms emerge through collective coordination. Today, similar forms of normative coordination can be observed in systems based on Multi-agent Artificial Intelligence (MAAI), as AI-based agents deliberate, negotiate, and converge on shared decisions in fairness-sensitive domains. Yet, existing empirical approaches often treat norms as targets for alignment or replication, implicitly assuming equivalence between human subjects and AI agents and leaving collective normative dynamics insufficiently examined. To address this gap, we propose Normative Common Ground Replication (NormCoRe), a novel methodological framework to systematically translate the design of human subject experiments into MAAI environments. Building on behavioral science, replication research, and state-of-the-art MAAI architectures, NormCoRe maps the structural layers of human subject studies onto the design of AI agent studies, enabling systematic documentation of study design and analysis of norms in MAAI. We demonstrate the utility of NormCoRe by replicating a seminal experimental study on distributive justice, in which participants negotiate fairness principles under a "veil of ignorance". We show that normative judgments in AI agent studies can differ from human baselines and are sensitive to the choice of the foundation model and the language used to instantiate agent personas. Our work provides a principled pathway for analyzing norms in MAAI and helps to guide, reflect, and document design choices whenever AI agents are used to automate or support tasks formerly carried out by humans.

标签

多智能体AI 规范研究 实验复制 行为科学

arXiv 分类

cs.AI