推理失败之处,步骤流中断之所 / Reasoning Fails Where Step Flow Breaks
1️⃣ 一句话总结
这篇论文发现大型推理模型在长链思考中会出现信息流中断问题,并提出了一种无需重新训练就能修复这些问题、提升模型在数学和科学任务上表现的新方法。
Large reasoning models (LRMs) that generate long chains of thought now perform well on multi-step math, science, and coding tasks. However, their behavior is still unstable and hard to interpret, and existing analysis tools struggle with such long, structured reasoning traces. We introduce Step-Saliency, which pools attention--gradient scores into step-to-step maps along the question--thinking--summary trajectory. Across several models, Step-Saliency reveals two recurring information-flow failures: Shallow Lock-in, where shallow layers over-focus on the current step and barely use earlier context, and Deep Decay, where deep layers gradually lose saliency on the thinking segment and the summary increasingly attends to itself and the last few steps. Motivated by these patterns, we propose StepFlow, a saliency-inspired test-time intervention that adjusts shallow saliency patterns measured by Step-Saliency via Odds-Equal Bridge and adds a small step-level residual in deep layers via Step Momentum Injection. StepFlow improves accuracy on math, science, and coding tasks across multiple LRMs without retraining, indicating that repairing information flow can recover part of their missing reasoning performance.
推理失败之处,步骤流中断之所 / Reasoning Fails Where Step Flow Breaks
这篇论文发现大型推理模型在长链思考中会出现信息流中断问题,并提出了一种无需重新训练就能修复这些问题、提升模型在数学和科学任务上表现的新方法。
源自 arXiv: 2604.06695