诊断推理模型中的病态思维链 / Diagnosing Pathological Chain-of-Thought in Reasoning Models
1️⃣ 一句话总结
这篇论文发现并定义了大型语言模型在思维链推理中可能出现的三种病态模式,并提出了一套简单通用的评估指标来诊断它们,为提升AI推理的安全性和可解释性提供了实用工具。
Chain-of-thought (CoT) reasoning is fundamental to modern LLM architectures and represents a critical intervention point for AI safety. However, CoT reasoning may exhibit failure modes that we note as pathologies, which prevent it from being useful for monitoring. Prior work has identified three distinct pathologies: post-hoc rationalization, where models generate plausible explanations backwards from predetermined answers; encoded reasoning, where intermediate steps conceal information within seemingly interpretable text; and internalized reasoning, where models replace explicit reasoning with meaningless filler tokens while computing internally. To better understand and discriminate between these pathologies, we create a set of concrete metrics that are simple to implement, computationally inexpensive, and task-agnostic. To validate our approach, we develop model organisms deliberately trained to exhibit specific CoT pathologies. Our work provides a practical toolkit for assessing CoT pathologies, with direct implications for training-time monitoring.
诊断推理模型中的病态思维链 / Diagnosing Pathological Chain-of-Thought in Reasoning Models
这篇论文发现并定义了大型语言模型在思维链推理中可能出现的三种病态模式,并提出了一套简单通用的评估指标来诊断它们,为提升AI推理的安全性和可解释性提供了实用工具。
源自 arXiv: 2602.13904