AI RESEARCH
Mitigating Misalignment Contagion by Steering with Implicit Traits
arXiv CS.CL
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ArXi:2605.02751v1 Announce Type: cross Language models (LMs) are increasingly used in high-stakes, multi-agent settings, where following instructions and maintaining value alignment are critical. Most alignment research focuses on interactions between a single LM and a single user, failing to address the risk of misaligned behavior spreading between multiple LMs in multi-turn interactions. We find evidence of this phenomenon, which we call misalignment contagion, across multiple LMs as they engage multi-turn conversational social dilemma games.