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PACR: Progressively Ascending Confidence Reward for LLM Reasoning

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Reinforcement Learning with Verifiable Rewards (RLVR) has significantly improved LLM reasoning, but its sparse, outcome-based reward provides no guidance for intermediate steps, slowing exploration. We propose Progressively Ascending Confidence Reward (PACR), a dense, model-intrinsic reward computed directly from the model's evolving belief in the correct answer. PACR encodes the inductive bias that, along a well-formed reasoning trajectory, the probability of the ground-truth answer should have a generally ascending trend. We provide empirical and theoretical analysis validating that such an inductive bias constrains the exploration search space to regions richer in logically sound reasoning. We demonstrate that PACR accelerates exploration, reaches reward saturation with fewer trajectories, and yields improvements on multiple benchmarks. Our results suggest that dense, model-intrinsic shaping signals can make RLVR training more effective and reliable.

Eunseop Yoon, Hee Suk Yoon, Jaehyun Jang, SooHwan Eom, Qi Dai, Chong Luo, Mark A. Hasegawa-Johnson, Chang D. Yoo• 2025

Related benchmarks

TaskDatasetResultRank
Mathematical Multimodal ReasoningMathVerse
Accuracy54.3
259
Multimodal Math ReasoningMathVision
Accuracy44.7
246
Visual Mathematical ReasoningMathVerse
Accuracy69.9
155
General Visual UnderstandingRealworldQA
Accuracy70.6
62
General Visual UnderstandingMMMU
Accuracy56.1
35
General Visual UnderstandingMMMU-Pro
Accuracy49.9
30
General Visual UnderstandingVisNumBench
Accuracy40.1
30
Hallucination DiagnosisHallusionBench--
15
Visual Math & HallucinationMathVision
Accuracy50.4
5
Visual Math & HallucinationHallusionBench
Accuracy75.5
5
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