Yudi Zhang
2023
MMSD2.0: Towards a Reliable Multi-modal Sarcasm Detection System
Libo Qin
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Shijue Huang
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Qiguang Chen
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Chenran Cai
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Yudi Zhang
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Bin Liang
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Wanxiang Che
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Ruifeng Xu
Findings of the Association for Computational Linguistics: ACL 2023
Multi-modal sarcasm detection has attracted much recent attention. Nevertheless, the existing benchmark (MMSD) has some shortcomings that hinder the development of reliable multi-modal sarcasm detection system: (1) There are some spurious cues in MMSD, leading to the model bias learning; (2) The negative samples in MMSD are not always reasonable. To solve the aforementioned issues, we introduce MMSD2.0, a correction dataset that fixes the shortcomings of MMSD, by removing the spurious cues and re-annotating the unreasonable samples. Meanwhile, we present a novel framework called multi-view CLIP that is capable of leveraging multi-grained cues from multiple perspectives (i.e., text, image, and text-image interaction view) for multi-modal sarcasm detection. Extensive experiments show that MMSD2.0 is a valuable benchmark for building reliable multi-modal sarcasm detection systems and multi-view CLIP can significantly outperform the previous best baselines.
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Co-authors
- Libo Qin 1
- Shijue Huang 1
- Qiguang Chen 1
- Chenran Cai 1
- Bin Liang 1
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