AI RESEARCH
Measuring Reasoning Trace Legibility: Can Those Who Understand Teach?
arXiv CS.AI
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ArXi:2603.20508v1 Announce Type: cross Language models are increasingly being trained to "reason" before answering users' queries, outputting hundreds or even thousands of tokens worth of deliberation before their final answer. While the main intention of reasoning is to improve models' ability to arrive at a correct answer, we argue that these models should be assessed for the legibility of their reasoning traces in addition to the correctness of their final answers. In this paper, we evaluate 90k traces from 12 Reasoning Language Models (RLMs) for the quality of their reasoning traces. We.