2022
DOI: 10.48550/arxiv.2206.05713
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Federated Graph Attention Network for Rumor Detection

Abstract: With the development of network technology, many social media are flourishing. Due to imperfect Internet regulation, the spread of false rumors has become a common problem on those social platforms. Social platforms can generate rumor data in their operation process, but existing rumor detection models are all constructed for a single social platform, which ignores the value of cross-platform rumor. This paper combines the federated learning paradigm with the bidirectional graph attention network rumor detecti… Show more

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