Multimodal Sentiment Analysis Based on Causal Reasoning
With the rapid development of multimedia, the shift from unimodal textual sentiment analysis to multimodal image-text sentiment analysis has obtained academic and industrial attention in recent years. However, multimodal sentiment analysis is affected by unimodal data bias, e.g., text sentiment is m...
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Zusammenfassung: | With the rapid development of multimedia, the shift from unimodal textual
sentiment analysis to multimodal image-text sentiment analysis has obtained
academic and industrial attention in recent years. However, multimodal
sentiment analysis is affected by unimodal data bias, e.g., text sentiment is
misleading due to explicit sentiment semantic, leading to low accuracy in the
final sentiment classification. In this paper, we propose a novel
CounterFactual Multimodal Sentiment Analysis framework (CF-MSA) using causal
counterfactual inference to construct multimodal sentiment causal inference.
CF-MSA mitigates the direct effect from unimodal bias and ensures heterogeneity
across modalities by differentiating the treatment variables between
modalities. In addition, considering the information complementarity and bias
differences between modalities, we propose a new optimisation objective to
effectively integrate different modalities and reduce the inherent bias from
each modality. Experimental results on two public datasets, MVSA-Single and
MVSA-Multiple, demonstrate that the proposed CF-MSA has superior debiasing
capability and achieves new state-of-the-art performances. We will release the
code and datasets to facilitate future research. |
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DOI: | 10.48550/arxiv.2412.07292 |