XFake:可解释的假新闻检测器与可视化

Fan Yang, Shiva K. Pentyala, Sina Mohseni, Mengnan Du, Hao Yuan, Rhema Linder, E. Ragan, Shuiwang Ji, Xia Hu
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引用次数: 89

摘要

在这篇演示论文中,我们介绍了XFake系统,这是一个可解释的假新闻检测器,可帮助最终用户识别新闻的可信度。为了有效地检测和解释新闻的真实性,我们共同考虑了属性(例如,说话者)和陈述。具体来说,设计了MIMIC、ATTN和PERT框架,其中MIMIC用于属性分析,ATTN用于语句语义分析,PERT用于语句语言分析。除了从设计框架中提取的解释之外,还提供了相关的支持示例和可视化,以方便解释。我们实现的系统在从PolitiFact1抓取的真实数据集上进行了演示,该数据集收集了数千条经过验证的政治新闻。
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XFake: Explainable Fake News Detector with Visualizations
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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