FuDFEND: Fuzzy-domain for Multi-domain Fake News Detection
Chaoqi Liang, Yu Zhang, Xinyuan Li, Jinyu Zhang, Yongqi Yu

TL;DR
FuDFEND introduces a fuzzy inference-based model for multi-domain fake news detection, effectively capturing news features across multiple domains and transferring domain knowledge without explicit labels, outperforming existing single-domain models.
Contribution
The paper presents FuDFEND, a novel fuzzy inference-based model that addresses multi-domain fake news detection and domain knowledge transfer without domain labels.
Findings
Outperforms single domain label models on Weibo21 dataset.
Transfers domain knowledge effectively to datasets without domain labels.
Utilizes fuzzy domain labels to improve feature extraction.
Abstract
On the Internet, fake news exists in various domain (e.g., education, health). Since news in different domains has different features, researchers have be-gun to use single domain label for fake news detection recently. This emerg-ing field is called multi-domain fake news detection (MFND). Existing works show that using single domain label can improve the accuracy of fake news detection model. However, there are two problems in previous works. Firstly, they ignore that a piece of news may have features from different domains. The single domain label focuses only on the features of the news on particu-lar domain. This may reduce the performance of the model. Secondly, their model cannot transfer the domain knowledge to the other dataset without domain label. In this paper, we propose a novel model, FuDFEND, which solves the limitations above by introducing the fuzzy inference mechanism.…
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Taxonomy
TopicsMisinformation and Its Impacts · Spam and Phishing Detection · Advanced Malware Detection Techniques
