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Domain Adaptive Fake News Detection via Reinforcement Learning

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With social media being a major force in information consumption, accelerated propagation of fake news has presented new challenges for platforms to distinguish between legitimate and fake news. Effective fake news detection is a non-trivial task due to the diverse nature of news domains and expensive annotation costs. In this work, we address the limitations of existing automated fake news detection models by incorporating auxiliary information (e.g., user comments and user-news interactions) into a novel reinforcement learning-based model called \textbf{RE}inforced \textbf{A}daptive \textbf{L}earning \textbf{F}ake \textbf{N}ews \textbf{D}etection (REAL-FND). REAL-FND exploits cross-domain and within-domain knowledge that makes it robust in a target domain, despite being trained in a different source domain. Extensive experiments on real-world datasets illustrate the effectiveness of the proposed model, especially when limited labeled data is available in the target domain.

Ahmadreza Mosallanezhad, Mansooreh Karami, Kai Shu, Michelle V. Mancenido, Huan Liu• 2022

Related benchmarks

TaskDatasetResultRank
Early Misinformation DetectionCOVID Domain 150 Labeled News Articles
Precision86.8
12
Misinformation DetectionCOVID Domain 1.0 (100 Labeled News Articles)
Precision84
10
Misinformation DetectionCOVID Domain News (50 labeled articles)
Precision77
10
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