Proceedings of the ACM Web Conference 2024 2024
DOI: 10.1145/3589334.3645471
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Explainable Fake News Detection with Large Language Model via Defense Among Competing Wisdom

Bo Wang,
Jing Ma,
Hongzhan Lin
et al.

Abstract: Most fake news detection methods learn latent feature representations based on neural networks, which makes them black boxes to classify a piece of news without giving any justification. Existing explainable systems generate veracity justifications from investigative journalism, which suffer from debunking delayed and low efficiency. Recent studies simply assume that the justification is equivalent to the majority opinions expressed in the wisdom of crowds. However, the opinions typically contain some inaccura… Show more

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