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A Nash Equilibrium Framework For Training-Free Multimodal Step Verification

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Multimodal large language models often generate reasoning chains containing subtle errors that lead to incorrect answers. Current verification approaches have notable limitations. Learned critics need extensive labeled data and show inconsistent performance across different tasks. Meanwhile, existing training-free methods simply average scores from different sources, missing a key insight: when these scores disagree, that disagreement itself carries important information about whether a reasoning step is truly valid or not. We propose a training-free verification approach that treats step-wise verification as a coordination problem among specialized judges. We formalize these judges' interaction as a Nash equilibrium game where agreement signals valid steps while disagreement reveals instability. Our method computes equilibrium scores through a closed-form solution, enabling both disagreement-aware filtering and stability-conscious ranking of reasoning steps. Evaluated across six benchmarks, our approach achieves consistent improvements of 2.4% to 5.2% over baseline models and shows competitive performance against learned critics, demonstrating that cross-modal agreement (not just average confidence) provides robust verification signals without task-specific adaptation.

Rohit Sinha, Kunal Tilaganji, Tanuja Ganu, Nagarajan Natarajan, Amit Sharma, Vineeth N. Balasubramanian• 2026

Related benchmarks

TaskDatasetResultRank
Spatial Reasoning3DSRBench
Overall Accuracy59.02
60
Spatial ReasoningCV-Bench-3D
Accuracy82.34
37
Visual GroundingBLINK
Accuracy46.15
27
Visual GroundingCVB 2D
Accuracy71.51
11
General reasoning / multi-disciplineAI2D
Accuracy78.95
11
Abstract ReasoningMMStar
Accuracy63.21
5
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