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Conditional Information Bottleneck for Multimodal Fusion: Overcoming Shortcut Learning in Sarcasm Detection

Conditional Information Bottleneck for Multimodal Fusion: Overcoming Shortcut Learning in Sarcasm Detection

来源:Arxiv_logoArxiv
英文摘要

Multimodal sarcasm detection is a complex task that requires distinguishing subtle complementary signals across modalities while filtering out irrelevant information. Many advanced methods rely on learning shortcuts from datasets rather than extracting intended sarcasm-related features. However, our experiments show that shortcut learning impairs the model's generalization in real-world scenarios. Furthermore, we reveal the weaknesses of current modality fusion strategies for multimodal sarcasm detection through systematic experiments, highlighting the necessity of focusing on effective modality fusion for complex emotion recognition. To address these challenges, we construct MUStARD++$^{R}$ by removing shortcut signals from MUStARD++. Then, a Multimodal Conditional Information Bottleneck (MCIB) model is introduced to enable efficient multimodal fusion for sarcasm detection. Experimental results show that the MCIB achieves the best performance without relying on shortcut learning.

Zhichun Wang、Lu Liu、Yihua Wang、Qi Jia、Cong Xu、Feiyu Chen、Yuhan Liu、Haotian Zhang、Liang Jin

计算技术、计算机技术

Zhichun Wang,Lu Liu,Yihua Wang,Qi Jia,Cong Xu,Feiyu Chen,Yuhan Liu,Haotian Zhang,Liang Jin.Conditional Information Bottleneck for Multimodal Fusion: Overcoming Shortcut Learning in Sarcasm Detection[EB/OL].(2025-08-14)[2025-08-24].https://arxiv.org/abs/2508.10644.点此复制

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