TL;DR
This paper introduces a novel framework for robust multimodal sentiment analysis that dynamically evaluates and adapts to missing modalities without data imputation, achieving state-of-the-art results.
Contribution
It proposes a prompt-based adaptation framework with modules for modality evaluation, disentanglement, dynamic weighting, and global consistency, addressing key limitations in existing methods.
Findings
Achieves state-of-the-art performance on three benchmark datasets.
Demonstrates robustness under various missing modality scenarios.
Outperforms existing approaches in accuracy and stability.
Abstract
The missing modality problem poses a fundamental challenge in multimodal sentiment analysis, significantly degrading model accuracy and generalization in real world scenarios. Existing approaches primarily improve robustness through prompt learning and pre trained models. However, two limitations remain. First, the necessity of generating missing modalities lacks rigorous evaluation. Second, the structural dependencies among multimodal prompts and their global coherence are insufficiently explored. To address these issues, a Prompt based Missing Modality Adaptation framework is proposed. A Missing Modality Evaluator is introduced at the input stage to dynamically assess the importance of missing modalities using pretrained models and pseudo labels, thereby avoiding low quality data imputation. Building on this, a Modality invariant Prompt Disentanglement module decomposes shared prompts…
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