SAGE: A Quantitative Evaluation of Socialized Evolution in Agent Ecosystems 文章

ArXiv CS.CL2026-06-03NEWSen作者: Linyue Pan, Yaoming Zhu, Lin Qiu, Xuezhi Cao, Xunliang Cai

摘要

arXiv:2606.03544v1 Announce Type: cross Abstract: Self-improving language agents are typically evaluated in isolation: an agent attempts a task, receives feedback, and iteratively refines its own behavior. Yet agents increasingly operate alongside peers whose strategies and outcomes are publicly visible. This raises an under-studied question: when does shared experience produce improvements that self-improvement alone cannot achieve? We introduce SAGE (Social Agent Group Evolution),an evaluation framework that compares two compute-matched conditions: SocialEvo, where agents from five distinct model families co-evolve with access to all peers' histories; and SelfEvo, where each agent receives the same number of task attempts but sees only its own past, which is conventional in self-improving agent studies. We instantiate SAGE in three arenas: open-ended ML research, long-horizon economic planning, and strategic multiplayer play, evaluated across multiple evolutionary rounds.

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