A Survey on Explainable Fake News Detection

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Abstract

The increasing amount of fake news is a growing problem that will progressively worsen in our interconnected world. Machine learning, particularly deep learning, is being used to detect misinformation; however, the models employed are essentially black boxes, and thus are uninterpretable. This paper presents an overview of explainable fake news detection models. Specifically, we first review the existing models, datasets, evaluation techniques, and visualization processes. Subsequently, possible improvements in this field are identified and discussed.

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APA

Mishima, K., & Yamana, H. (2022). A Survey on Explainable Fake News Detection. IEICE Transactions on Information and Systems. Institute of Electronics Information Communication Engineers. https://doi.org/10.1587/transinf.2021EDR0003

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