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Reinforcement Learning-based Knowledge Distillation with LLM-as-a-Judge

About

Reinforcement Learning (RL) has been shown to substantially improve the reasoning capability of small and large language models (LLMs), but existing approaches typically rely on verifiable rewards, hence ground truth labels. We propose an RL framework that uses rewards from an LLM that acts as a judge evaluating model outputs over large amounts of unlabeled data, enabling label-free knowledge distillation and replacing the need of ground truth supervision. Notably, the judge operates with a single-token output, making reward computation efficient. When combined with verifiable rewards, our approach yields substantial performance gains across math reasoning benchmarks. These results suggest that LLM-based evaluators can produce effective training signals for RL fine-tuning.

Yiyang Shen, Lifu Tu, Weiran Wang• 2026

Related benchmarks

TaskDatasetResultRank
Instruction FollowingIFEval--
836
Mathematical ReasoningSVAMP (test)
Accuracy47
293
Mathematical ReasoningAIME 25
Pass@1 Accuracy65.48
178
Mathematical ReasoningGSM-PLUS
Accuracy55.52
90
Mathematical ReasoningGSM-Symbolic
GSM-Sym Accuracy68.12
73
Scientific ReasoningGPQA Diamond
Pass@1 Accuracy53.85
67
Mathematical ReasoningHMMT Feb25
Pass@138.75
27
Mathematical ReasoningHMMT25 Nov.
Pass@151.25
17
Medical KnowledgeHealthBench
Pass@185.58
11
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