The challenge of finding compromises between agent proposals is fundamental to AI sub-fields such as argumentation, mediation, and negotiation. Building on this tradition, Elkind et al. (2021) introduced a process for coalition formation that seeks majority-supported proposals preferable to the status quo, using a metric space where each agent has an ideal point. The crucial step in this iterative process involves identifying compromise proposals around which agent coalitions can unite. How to effectively find such compromise proposals, however, remains an open question. We address this gap by formalizing a holistic model that encompasses agent bounded rationality and uncertainty and developing AI models to generate such compromise proposals. We focus on the domain of collaboratively writing text documents -- e.g., to enable the democratic creation of a community constitution. We apply NLP (Natural Language Processing) techniques and utilize LLMs (Large Language Models) to create a semantic metric space for text and develop algorithms to suggest suitable compromise points. To evaluate the effectiveness of our algorithms, we simulate various coalition formation processes and demonstrate the potential of AI to facilitate large-scale democratic text editing, such as collaboratively drafting a constitution, an area where traditional tools are limited.
翻译:在智能体提案间寻求妥协是AI论证、调解与谈判等子领域的基础挑战。基于这一传统,Elkind等人(2021)提出了一种联盟形成流程,通过在度量空间中设定各智能体的理想点,寻找优于现状且获多数支持的提案。该迭代流程的关键步骤在于识别能够凝聚智能体联盟的妥协提案。然而,如何有效发现此类妥协提案仍是一个开放问题。本研究通过形式化涵盖智能体有限理性与不确定性的整体模型,并开发AI模型以生成此类妥协提案,以填补这一空白。我们聚焦于协同撰写文本文档的领域——例如实现社区宪章的民主化创建。我们应用自然语言处理技术,利用大语言模型构建文本的语义度量空间,并开发算法以推荐合适的妥协点。为评估算法效能,我们模拟了多种联盟形成过程,并论证了AI在促进大规模民主化文本编辑(如协作起草宪章)方面的潜力,而传统工具在此领域存在局限。