XFake: Explainable fake news detector with visualizations

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Abstract

In this demo paper, we present the XFake system, an explainable fake news detector that assists end-users to identify news credibility. To effectively detect and interpret the fakeness of news items, we jointly consider both attributes (e.g., speaker) and statements. Specifically, MIMIC, ATTN and PERT frameworks are designed, where MIMIC is built for attribute analysis, ATTN is for statement semantic analysis and PERT is for statement linguistic analysis. Beyond the explanations extracted from the designed frameworks, relevant supporting examples as well as visualization are further provided to facilitate the interpretation. Our implemented system is demonstrated on a real-world dataset crawled from PolitiFact1, where thousands of verified political news have been collected.

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Yang, F., Du, M., Ragan, E. D., Pentyala, S. K., Yuan, H., Ji, S., … Hu, X. (2019). XFake: Explainable fake news detector with visualizations. In The Web Conference 2019 - Proceedings of the World Wide Web Conference, WWW 2019 (pp. 3600–3604). Association for Computing Machinery, Inc. https://doi.org/10.1145/3308558.3314119

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