2023
DOI: 10.20944/preprints202304.0387.v1
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Trust-Aware Evidence Reasoning and Spatiotemporal Feature Aggregation for Explainable Fake News Detection

Abstract: Fake news detection has become a significant topic based on the fast-spreading and detrimental effects of such news. Many methods based on deep neural networks learn clues from claim content and message propagation structure or temporal information, which have been widely recognized. However, such models (i) ignore the fact that information quality is uneven in propagation, which makes semantic representations unreliable. (ii) Most models do not fully leverage spatial and temporal structure in combination. (ii… Show more

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“…The pandemic led to many myths, misinformation, and conspiracy theories on COVID‐19, affecting response measures and compliance. The NML plays a crucial role in discerning and validating information, finding legitimate sources, and navigating online spaces effectively (Chen, 2023). The Reliance to Digital Platforms .…”
Section: Literature Reviewmentioning
confidence: 99%
“…The pandemic led to many myths, misinformation, and conspiracy theories on COVID‐19, affecting response measures and compliance. The NML plays a crucial role in discerning and validating information, finding legitimate sources, and navigating online spaces effectively (Chen, 2023). The Reliance to Digital Platforms .…”
Section: Literature Reviewmentioning
confidence: 99%