Msa-hcl: multimodal sentiment analysis model with hybrid contrastive learning

Wang Zhao,Yong Zhang,Qiang Hua,Chun-ru Dong, Jia-nan Wang,Feng Zhang

MATHEMATICAL FOUNDATIONS OF COMPUTING(2024)

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摘要
Multimodal sentiment analysis (MSA) has become a popular research topic due to the rapid growth of user -generated data on the Internet. However, it remains challenging to capture the interaction between modalities. To address this issue, a Multimodal Sentiment Analysis model with Hybrid Contrastive Learning (MSA-HCL) is proposed in this study by leveraging a hybrid contrastive learning model. The proposed MSA-HCL model is able to fuse different modalities based on their contextual similarity by incorporating inter -modal contrastive learning and intra-mo dal contrastive learning in a hybrid manner. The MSA-HCL model consists of three submodules. The inter -modal contrastive learning module performs the alignment of bimodal inputs with similar semantics and learns their interdependence. The intra-mo dal contrastive learning module preserves the modality -specific representations by learning similarity within the same modality. In order to reduce the noise introduced by multimodal fusion, a supervised contrastive learning module is employed to learn the consistency between fused modality and textual modality. To evaluate the performance of the proposed MSA-HCL model, extensive comparison experiments and ablation studies are conducted on two benchmark datasets, and the experimental results show that MSA-HCL achieves state-ofthe-art performance. Some useful insights are derived from the ablation results as well.
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关键词
Multimodal Sentiment Analysis,Contrastive Learning,Representation Learning
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