Consistent and Invariant Generalization Learning for Short-video Misinformation Detection
Hanghui Guo, Weijie Shi, Mengze Li, Juncheng Li, Hao Chen, Yue Cui, Jiajie Xu, Jia Zhu, Jiawei Shen, Zhangze Chen, Sirui Han

TL;DR
This paper introduces DOCTOR, a novel domain generalization model for short-video misinformation detection that leverages consistency and invariance learning across modalities to improve performance on unseen domains.
Contribution
The paper proposes a new domain generalization approach with cross-modal feature interpolation and a diffusion model to enhance invariant features for misinformation detection.
Findings
Effective in improving cross-domain misinformation detection accuracy
Outperforms existing models on benchmark datasets
Code is publicly available for reproducibility
Abstract
Short-video misinformation detection has attracted wide attention in the multi-modal domain, aiming to accurately identify the misinformation in the video format accompanied by the corresponding audio. Despite significant advancements, current models in this field, trained on particular domains (source domains), often exhibit unsatisfactory performance on unseen domains (target domains) due to domain gaps. To effectively realize such domain generalization on the short-video misinformation detection task, we propose deep insights into the characteristics of different domains: (1) The detection on various domains may mainly rely on different modalities (i.e., mainly focusing on videos or audios). To enhance domain generalization, it is crucial to achieve optimal model performance on all modalities simultaneously. (2) For some domains focusing on cross-modal joint fraud, a comprehensive…
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Taxonomy
TopicsDigital Media Forensic Detection · Anomaly Detection Techniques and Applications · Generative Adversarial Networks and Image Synthesis
