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Think-with-Rubrics: From External Evaluator to Internal Reasoning Guidance

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abstract

Rubrics have been extensively utilized for evaluating unverifiable, open-ended tasks, with recent research incorporating them into reward systems for reinforcement learning. However, existing frameworks typically treat rubrics only as external evaluator disjointed from the policy's primary reasoning trace. Such design confines rubrics to post-hoc measurement, leaving them unable to actively guide the model's generation process. In this work, we introduce Think-with-Rubrics, a novel paradigm for instruction following tasks. Think-with-Rubrics integrates rubric generation into the reasoning context, transforming the rubric from an independent artifact into an internal guidance of LLM's generation. During training, LLM sequentially generates a rubric followed by a response, while a trained rubric verifier provides joint supervision by evaluating the consistency between the answer and the self-generated / golden rubrics. Experiments across multiple benchmarks demonstrate that Think-with-Rubrics consistently outperforms the Rubric-as-Reward baseline supervised by golden rubrics by an average of 3.87 points. We have also discussed the mechanism by which Think-with-Rubrics enhances model performance. Experimental results demonstrate that supervision from golden rubrics and self-generated rubrics enhances the performance of Think-with-Rubrics by improving the quality of self-generated rubrics and increasing the internal consistency of responses respectively.

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cs.AI 1

years

2026 1

verdicts

UNVERDICTED 1

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PReMISE: Policy Rubrics as Measurement Specifications for LLM Judges

cs.AI · 2026-05-29 · unverdicted · novelty 7.0

PReMISE discovers and audits rubric sets for LLM judges, finding no existing source meets all reliability, preference-fit, and robustness criteria simultaneously while showing two repair methods improve accuracy and reduce exploitability.

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  • PReMISE: Policy Rubrics as Measurement Specifications for LLM Judges cs.AI · 2026-05-29 · unverdicted · none · ref 7 · internal anchor

    PReMISE discovers and audits rubric sets for LLM judges, finding no existing source meets all reliability, preference-fit, and robustness criteria simultaneously while showing two repair methods improve accuracy and reduce exploitability.