AI Agents 相关度: 9/10

A Natural Language Agentic Approach to Study Affective Polarization

Stephanie Anneris Malvicini, Ewelina Gajewska, Arda Derbent, Katarzyna Budzynska, Jarosław A. Chudziak, Maria Vanina Martinez
arXiv: 2603.02711v1 发布: 2026-03-03 更新: 2026-03-03

AI 摘要

利用LLM驱动的多智能体模型,构建虚拟社交环境,研究情感极化现象。

主要贡献

  • 提出一种基于LLM的多智能体情感极化研究框架
  • 构建了一个虚拟社交平台,用于模拟社会讨论
  • 提供了一种新的视角和工具来分析情感极化

方法论

构建LLM驱动的智能体,模拟社交媒体互动,观察和测量不同粒度下的极化现象,并与社会科学文献进行对比。

原文摘要

Affective polarization has been central to political and social studies, with growing focus on social media, where partisan divisions are often exacerbated. Real-world studies tend to have limited scope, while simulated studies suffer from insufficient high-quality training data, as manually labeling posts is labor-intensive and prone to subjective biases. The lack of adequate tools to formalize different definitions of affective polarization across studies complicates result comparison and hinders interoperable frameworks. We present a multi-agent model providing a comprehensive approach to studying affective polarization in social media. To operationalize our framework, we develop a platform leveraging large language models (LLMs) to construct virtual communities where agents engage in discussions. We showcase the potential of our platform by (1) analyzing questions related to affective polarization, as explored in social science literature, providing a fresh perspective on this phenomenon, and (2) introducing scenarios that allow observation and measurement of polarization at different levels of granularity and abstraction. Experiments show that our platform is a flexible tool for computational studies of complex social dynamics such as affective polarization. It leverages advanced agent models to simulate rich, context-sensitive interactions and systematically explore research questions traditionally addressed through human-subject studies.

标签

LLM Agent Affective Polarization Social Media Multi-Agent System

arXiv 分类

cs.AI