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Bridging Visual Representation and Reinforcement Learning from Verifiable Rewards in Large Vision-Language Models

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Reinforcement Learning from Verifiable Rewards (RLVR) has substantially enhanced the reasoning capabilities of large language models in abstract reasoning tasks. However, its application to Large Vision-Language Models (LVLMs) remains constrained by a structural representational bottleneck. Existing approaches generally lack explicit modeling and effective utilization of visual information, preventing visual representations from being tightly coupled with the reinforcement learning optimization process and thereby limiting further improvements in multimodal reasoning performance. To address this limitation, we propose KAWHI (Key-Region Aligned Weighted Harmonic Incentive), a plug-and-play reward reweighting mechanism that explicitly incorporates structured visual information into uniform reward policy optimization methods (e.g., GRPO and GSPO). The method adaptively localizes semantically salient regions through hierarchical geometric aggregation, identifies vision-critical attention heads via structured attribution, and performs paragraph-level credit reallocation to align spatial visual evidence with semantically decisive reasoning steps. Extensive empirical evaluations on diverse reasoning benchmarks substantiate KAWHI as a general-purpose enhancement module, consistently improving the performance of various uniform reward optimization methods. Project page: KAWHI (https://kawhiiiileo.github.io/KAWHI_PAGE/)

Yuhang Han, Yuyang Wu, Zhengbo Jiao, Yiyu Wang, Xuyang Liu, Shaobo Wang, Hanlin Xu, Xuming Hu, Linfeng Zhang• 2026

Related benchmarks

TaskDatasetResultRank
Chart Question AnsweringChartQA
Accuracy89.1
356
Chart-based Question AnsweringChartQA Pro
Accuracy45.3
52
Multimodal Mathematical ReasoningMathVision (test)
Accuracy32.57
47
Multimodal Mathematical ReasoningMathVista (test)
Accuracy72.1
34
Multimodal Mathematical ReasoningMathVerse (test)--
33
Multimodal Mathematical ReasoningWeMath (test)
Accuracy72.15
17
Chart MimickingChart Mimic
Accuracy45.1
3
Chart ReasoningCharXiv Rea
Accuracy46.4
3
Chart UnderstandingCharXiv Desc
Accuracy72.2
3
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