Mitigating Overthinking in Large Reasoning Language Models via Reasoning Path Deviation Monitoring
arXiv cs.CL / 3/17/2026
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Key Points
- The paper identifies overthinking in LRLMs during long Chain-of-Thought reasoning as causing redundant steps and reduced performance and efficiency.
- It proposes an early-exit method deeply integrated with the native reasoning process that uses a path deviation index to detect high-entropy transition tokens and dynamically terminate overthinking.
- The approach avoids extra training overhead and excessive content switching by not relying on proxy models and by coupling termination decisions to the reasoning trajectory.
- Experiments across multiple benchmarks and model scales show the method delivers the largest performance improvement over vanilla CoT compared to existing early-exit methods.
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