AI RESEARCH
Propagation Structure-Semantic Transfer Learning for Robust Fake News Detection
arXiv CS.CL
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ArXi:2604.23974v1 Announce Type: new Fake news generally refers to false information that is spread deliberately to deceive people, which has detrimental social effects. Existing fake news detection methods primarily learn the semantic features from news content or integrate structural features from propagation. However, in practical scenarios, due to the semantic ambiguity of informal language and unreliable user interactive behaviors on social media, there are inherent semantic and structural noises in news content and propagation.