Hybrid Reinforcement: When Reward Is Sparse, Better to Be Dense
Abstract
Post-training for reasoning in large language models has increasingly relied on verifiable rewards: deterministic checkers that provide $0$–$1$ correctness signals. While reliable, such binary feedback is brittle—many tasks admit partially correct or alternative answers that verifiers under-credit, and the resulting all-or-nothing supervision limits learning. Reward models offer richer, continuous feedback, which can serve as a complementary supervisory signal to verifiers. We introduce HERO (Hybrid Ensemble Reward Optimization), a reinforcement learning framework that integrates sparse verifier signals with dense reward model scores in a structured way. HERO employs stratified normalization to bound reward-model scores within verifier-defined groups, preserving correctness while refining quality distinctions, and variance-aware weighting to emphasize challenging prompts where dense signals matter most. Across diverse mathematical reasoning benchmarks, HERO consistently outperforms reward model-only and verifier-only baselines, with strong gains on both verifiable and hard-to-verify tasks. Our results show that hybrid reward design retains the stability of verifiers while leveraging the nuance of reward models to advance reasoning.
Cite
Text
Tao et al. "Hybrid Reinforcement: When Reward Is Sparse, Better to Be Dense." International Conference on Learning Representations, 2026.Markdown
[Tao et al. "Hybrid Reinforcement: When Reward Is Sparse, Better to Be Dense." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/tao2026iclr-hybrid/)BibTeX
@inproceedings{tao2026iclr-hybrid,
title = {{Hybrid Reinforcement: When Reward Is Sparse, Better to Be Dense}},
author = {Tao, Leitian and Kulikov, Ilia and Saha, Swarnadeep and Wang, Tianlu and Xu, Jing and Li, Sharon and Weston, Jason E and Yu, Ping},
booktitle = {International Conference on Learning Representations},
year = {2026},
url = {https://mlanthology.org/iclr/2026/tao2026iclr-hybrid/}
}