菜单

关于 🐙 GitHub
arXiv 提交日期: 2026-03-03
📄 Abstract - How to Model AI Agents as Personas?: Applying the Persona Ecosystem Playground to 41,300 Posts on Moltbook for Behavioral Insights

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.

顶级标签: agents systems model evaluation
详细标签: persona modeling social media agents behavioral diversity clustering agent simulation 或 搜索:

如何将AI智能体建模为角色?:将角色生态系统游乐场应用于Moltbook平台的41,300条帖子以获取行为洞察 / How to Model AI Agents as Personas?: Applying the Persona Ecosystem Playground to 41,300 Posts on Moltbook for Behavioral Insights


1️⃣ 一句话总结

这项研究通过分析AI社交平台上超过四万条帖子,成功创建了能够区分不同AI智能体行为模式的“角色模型”,并验证了这些模型能有效模拟和预测AI在群体讨论中的多样化表现。

源自 arXiv: 2603.03140