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Placing Puzzle Pieces Where They Matter: A Question Augmentation Framework for Reinforcement Learning

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Reinforcement learning has become a powerful approach for enhancing large language model reasoning, but faces a fundamental dilemma: training on easy problems can cause overfitting and pass@k degradation, while training on hard problems often results in sparse rewards. Recent question augmentation methods address this by prepending partial solutions as hints. However, uniform hint provision may introduce redundant information while missing critical reasoning bottlenecks, and excessive hints can reduce reasoning diversity, causing pass@k degradation. We propose \textbf{PieceHint}, a hint injection framework that strategically identifies and provides critical reasoning steps during training. By scoring the importance of different reasoning steps, selectively allocating hints based on problem difficulty, and progressively withdrawing scaffolding, PieceHint enables models to transition from guided learning to independent reasoning. Experiments on six mathematical reasoning benchmarks show that our 1.5B model achieves comparable average performance to 32B baselines while preserving pass@k diversity across all $k$ values.

Yangyi Fang, Jiaye Lin, Xiaoliang Fu, Cong Qin, Haolin Shi• 2026

Related benchmarks

TaskDatasetResultRank
Mathematical ReasoningMinerva
Pass@1 Accuracy41.6
289
Mathematical ReasoningAIME 2024
Accuracy54.3
220
Mathematical ReasoningAIME 2025
Accuracy43.9
214
Mathematical ReasoningAMC23
PASS@1 Accuracy89.1
207
Mathematical ReasoningAIME 24
Pass@1 Accuracy54.5
128
Mathematical ReasoningOlympiad
Pass@1 Accuracy68.3
73
Mathematical ReasoningAMC 2023
Accuracy93.4
71
Mathematical ReasoningAIME25
Pass@143.7
48
Mathematical ReasoningMATH500
Pass@191.3
40
Mathematical ReasoningOlympiadBench
Accuracy59.5
36
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