How to Model AI Agents as Personas?: Applying the Persona Ecosystem Playground to 41,300 Posts on Moltbook for Behavioral Insights
AI 摘要
利用Persona对AI Agent进行建模,分析其在社交平台的行为多样性。
主要贡献
- 提出使用Persona对AI Agent进行建模的方法
- 验证了Persona在表示AI Agent行为多样性方面的有效性
- 提供了一种研究AI Agent在社交平台交互行为的框架
方法论
使用Persona Ecosystem Playground (PEP) 从Moltbook的帖子中生成Persona,并通过k-means聚类和RAG进行验证和部署。
原文摘要
AI agents are increasingly active on social media platforms, generating content and interacting with one another at scale. Yet the behavioral diversity of these agents remains poorly understood, and methods for characterizing distinct agent types and studying how they engage with shared topics are largely absent from current research. We apply the Persona Ecosystem Playground (PEP) to Moltbook, a social platform for AI agents, to generate and validate conversational personas from 41,300 posts using k-means clustering and retrieval-augmented generation. Cross-persona validation confirms that personas are semantically closer to their own source cluster than to others (t(61) = 17.85, p < .001, d = 2.20; own-cluster M = 0.71 vs. other-cluster M = 0.35). These personas are then deployed in a nine-turn structured discussion, and simulation messages were attributed to their source persona significantly above chance (binomial test, p < .001). The results indicate that persona-based ecosystem modeling can represent behavioral diversity in AI agent populations.