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CAMD: Coverage-Aware Multimodal Decoding for Efficient Reasoning of Multimodal Large Language Models

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Recent advances in Multimodal Large Language Models (MLLMs) have shown impressive reasoning capabilities across vision-language tasks, yet still face the challenge of compute-difficulty mismatch. Through empirical analyses, we identify that existing decoding methods may waste compute on easy cases while underserving hard ones, affecting both model effectiveness and efficiency. To address this issue, we first develop a theoretical framework that links sampling coverage, instance difficulty, and residual risk. Our analysis reveals that multimodal reasoning exhibits a heavy-tailed difficulty distribution; a small subset of hard or ambiguous samples dominates the residual failure probability. Based on this insight, we propose Coverage-Aware Multimodal Decoding (CAMD), an adaptive inference mechanism that dynamically allocates computation according to estimated uncertainty. CAMD integrates evidence-weighted scoring, posterior coverage estimation, and sequential Bayesian updating to balance efficiency and reliability under a limited token budget. Experiments on various benchmark datasets and baselines demonstrate the effectiveness and advantages of our approach.

Huijie Guo, Jingyao Wang, Lingyu Si, Jiahuan Zhou, Changwen Zheng, Wenwen Qiang• 2026

Related benchmarks

TaskDatasetResultRank
Visual Question AnsweringVizWiz
Accuracy51.2
1525
Object Hallucination EvaluationPOPE--
1455
Multimodal UnderstandingMM-Vet
MM-Vet Score33.3
531
Video Question AnsweringActivityNet-QA
Accuracy52
376
Video Question AnsweringMSVD-QA
Accuracy75.1
360
Hallucination EvaluationCHAIR
CHAIR_s51.2
252
Multi-modal UnderstandingLLaVA-Bench Wild
LLaVA^W Score75
86
Visual Question AnsweringScienceQA (SQA)
SQA Accuracy68
43
Multi-modal UnderstandingMMBench
Mean Accuracy66.6
32
Video-based Text GenerationVideo-Based Text Generation
Cr.3.51
12
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