MMODELYST
Papers/DARE: Difficulty-Adaptive Reinforcement Learning with Co-Evolved Difficulty Estimation
PAP

DARE: Difficulty-Adaptive Reinforcement Learning with Co-Evolved Difficulty Estimation

May 9, 2026

arXiv
Abstract

Reinforcement learning improves the reasoning ability of large language models but remains costly and sample-inefficient, as many rollouts provide weak learning signals. Difficulty-aware data selection methods attempt to address this by prioritizing moderately difficult prompts, yet our analysis reveals three limitations: difficulty estimates become inaccurate under policy drift, data selection alone yields limited final-performance gains, and inference efficiency remains largely unchanged. These findings suggest that efficient and effective RL requires more than filtering by difficulty: the policy should learn to solve hard tasks while producing concise responses for easy ones. To this end, we propose **Dare**, a unified framework that co-evolves difficulty estimation with the policy via self-normalized importance sampling, maintains diverse difficulty coverage through a symmetric Beta sampling distribution, and applies tailored training strategies across difficulty tiers with adaptive compute allocation. Extensive experiments across multiple models and domains demonstrate that **Dare** consistently outperforms existing methods in training efficiency, final effectiveness, and inference efficiency, producing more concise responses on easy tasks while improving correctness on hard ones. Code is available at https://github.com/EtaYang10th/DARE.

Select text to highlight · click a highlight to remove · saved in this browser only
Authors
Yang Zhou, Can Jin, Zihan Dong, Zhepeng Wang, Yanting Yang, Shiyu Zhao, Lei Li, Runxue Bao, Yaochen Xie, Dimitris N. Metaxas
Your notes (browser-local)
saved
arXiv:2605.09188