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Main Authors: Chang, Maria, Luss, Ronny, Liu, Miao, Murugesan, Keerthiram, Ramamurthy, Karthikeyan, Bouneffouf, Djallel
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.02751
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author Chang, Maria
Luss, Ronny
Liu, Miao
Murugesan, Keerthiram
Ramamurthy, Karthikeyan
Bouneffouf, Djallel
author_facet Chang, Maria
Luss, Ronny
Liu, Miao
Murugesan, Keerthiram
Ramamurthy, Karthikeyan
Bouneffouf, Djallel
contents 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. Specifically, we find that LMs become more anti-social after gameplay and that this effect is intensified when other players are steered to act maliciously. We explore different steering techniques to mitigate such misalignment contagion and find that reinforcing an LM's system prompt is insufficient and often harmful. Instead, we propose steering with implicit traits: a technique that intermittently injects system prompts with statements that reinforce an LMs initial traits and is more effective than system prompt repetition at keeping models in line with their initial pro-social behaviors. Importantly, this method does not require access to model parameters or internal model states, making it suitable for increasingly common use cases where complex multi-agent workflows are being designed with black box models.
format Preprint
id arxiv_https___arxiv_org_abs_2605_02751
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Mitigating Misalignment Contagion by Steering with Implicit Traits
Chang, Maria
Luss, Ronny
Liu, Miao
Murugesan, Keerthiram
Ramamurthy, Karthikeyan
Bouneffouf, Djallel
Artificial Intelligence
Computation and Language
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. Specifically, we find that LMs become more anti-social after gameplay and that this effect is intensified when other players are steered to act maliciously. We explore different steering techniques to mitigate such misalignment contagion and find that reinforcing an LM's system prompt is insufficient and often harmful. Instead, we propose steering with implicit traits: a technique that intermittently injects system prompts with statements that reinforce an LMs initial traits and is more effective than system prompt repetition at keeping models in line with their initial pro-social behaviors. Importantly, this method does not require access to model parameters or internal model states, making it suitable for increasingly common use cases where complex multi-agent workflows are being designed with black box models.
title Mitigating Misalignment Contagion by Steering with Implicit Traits
topic Artificial Intelligence
Computation and Language
url https://arxiv.org/abs/2605.02751