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Too Correct to Learn: Reinforcement Learning on Saturated Reasoning Data

Machine Learning 2026-04-21 v1

Abstract

Reinforcement Learning (RL) enhances LLM reasoning, yet a paradox emerges as models scale: strong base models saturate standard benchmarks (e.g., MATH), yielding correct but homogeneous solutions. In such environments, the lack of failure cases causes the advantage signal in group-relative algorithms (e.g., GRPO) to vanish, driving policies into mode collapse. To address this, we propose Constrained Uniform Top-K Sampling (CUTS), a parameter-free decoding strategy enforcing structure-preserving exploration. Unlike standard sampling that follows model biases, CUTS flattens the local optimization landscape by sampling uniformly from constrained high-confidence candidates. We integrate this into Mixed-CUTS, a training framework synergizing exploitative and exploratory rollouts to amplify intra-group advantage variance. Experiments on Qwen3 models demonstrate that our approach prevents policy degeneration and significantly boosts out-of-domain generalization. Notably, Mixed-CUTS improves Pass@1 accuracy on the challenging AIME25 benchmark by up to 15.1% over standard GRPO, validating that maintaining diversity within the semantic manifold is critical for rigorous reasoning.

Keywords

Cite

@article{arxiv.2604.18493,
  title  = {Too Correct to Learn: Reinforcement Learning on Saturated Reasoning Data},
  author = {Zhenwen Liang and Yujun Zhou and Sidi Lu and Xiangliang Zhang and Haitao Mi and Dong Yu},
  journal= {arXiv preprint arXiv:2604.18493},
  year   = {2026}
}

Comments

ACL 2026 Main Paper

R2 v1 2026-07-01T12:18:44.411Z