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Cross-modal Contrastive Learning for Multimodal Fake News Detection

About

Automatic detection of multimodal fake news has gained a widespread attention recently. Many existing approaches seek to fuse unimodal features to produce multimodal news representations. However, the potential of powerful cross-modal contrastive learning methods for fake news detection has not been well exploited. Besides, how to aggregate features from different modalities to boost the performance of the decision-making process is still an open question. To address that, we propose COOLANT, a cross-modal contrastive learning framework for multimodal fake news detection, aiming to achieve more accurate image-text alignment. To further improve the alignment precision, we leverage an auxiliary task to soften the loss term of negative samples during the contrast process. A cross-modal fusion module is developed to learn the cross-modality correlations. An attention mechanism with an attention guidance module is implemented to help effectively and interpretably aggregate the aligned unimodal representations and the cross-modality correlations. Finally, we evaluate the COOLANT and conduct a comparative study on two widely used datasets, Twitter and Weibo. The experimental results demonstrate that our COOLANT outperforms previous approaches by a large margin and achieves new state-of-the-art results on the two datasets.

Longzheng Wang, Chuang Zhang, Hongbo Xu, Yongxiu Xu, Xiaohan Xu, Siqi Wang• 2023

Related benchmarks

TaskDatasetResultRank
Multimodal Fake News DetectionWeibo 17
Accuracy92.3
8
Multimodal Fake News DetectionWeibo 100 samples supervision budget
Macro F1 (Multimodal)89.92
5
Multimodal Fake News DetectionDGM4 0.25% budget
Macro F1 (multi)55.3
5
Multimodal Fake News DetectionDGM4 1% budget
Macro F1 (Multi)54.13
5
Multimodal Fake News DetectionDGM4 5% budget
Macro F1 (Multi)54.06
5
Multimodal Fake News DetectionDGM4 Avg.
Macro F1 (multimodal)54.49
5
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