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Main Authors: Zhang, Guoxi, Chen, Jiawei, Yang, Tianzhuo, Qin, Lang, Dai, Juntao, Yang, Yaodong, Yi, Jingwei
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.26846
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author Zhang, Guoxi
Chen, Jiawei
Yang, Tianzhuo
Qin, Lang
Dai, Juntao
Yang, Yaodong
Yi, Jingwei
author_facet Zhang, Guoxi
Chen, Jiawei
Yang, Tianzhuo
Qin, Lang
Dai, Juntao
Yang, Yaodong
Yi, Jingwei
contents As Large Language Models (LLMs) expand in capability and application scope, their trustworthiness becomes critical. A vital risk is intrinsic deception, wherein models strategically mislead users to achieve their own objectives. Existing alignment approaches based on chain-of-thought (CoT) monitoring supervise explicit reasoning traces. However, under optimization pressure, models are incentivized to conceal deceptive reasoning, rendering semantic supervision fundamentally unreliable. Grounded in cognitive psychology, we hypothesize that a deceptive LLM maintains a stable internal belief in its CoT while its external response remains fragile under perturbation. We term this phenomenon stability asymmetry and quantify it by measuring the contrast between internal CoT stability and external response stability under perturbation. Building on this structural signature, we propose the Stability Asymmetry Regularization (SAR), a novel alignment objective that penalizes this distributional asymmetry during reinforcement learning. Unlike CoT monitoring, SAR targets the statistical structure of model outputs, rendering it robust to semantic concealment. Extensive experiments confirm that stability asymmetry reliably identifies deceptive behavior, and that SAR effectively suppresses intrinsic deception without degrading general model capability.
format Preprint
id arxiv_https___arxiv_org_abs_2603_26846
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Stable Reasoning, Unstable Responses: Mitigating LLM Deception via Stability Asymmetry
Zhang, Guoxi
Chen, Jiawei
Yang, Tianzhuo
Qin, Lang
Dai, Juntao
Yang, Yaodong
Yi, Jingwei
Machine Learning
Artificial Intelligence
As Large Language Models (LLMs) expand in capability and application scope, their trustworthiness becomes critical. A vital risk is intrinsic deception, wherein models strategically mislead users to achieve their own objectives. Existing alignment approaches based on chain-of-thought (CoT) monitoring supervise explicit reasoning traces. However, under optimization pressure, models are incentivized to conceal deceptive reasoning, rendering semantic supervision fundamentally unreliable. Grounded in cognitive psychology, we hypothesize that a deceptive LLM maintains a stable internal belief in its CoT while its external response remains fragile under perturbation. We term this phenomenon stability asymmetry and quantify it by measuring the contrast between internal CoT stability and external response stability under perturbation. Building on this structural signature, we propose the Stability Asymmetry Regularization (SAR), a novel alignment objective that penalizes this distributional asymmetry during reinforcement learning. Unlike CoT monitoring, SAR targets the statistical structure of model outputs, rendering it robust to semantic concealment. Extensive experiments confirm that stability asymmetry reliably identifies deceptive behavior, and that SAR effectively suppresses intrinsic deception without degrading general model capability.
title Stable Reasoning, Unstable Responses: Mitigating LLM Deception via Stability Asymmetry
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2603.26846