用于可解释假新闻检测的粗到细级联证据蒸馏神经网络

Zhiwei Yang, Jing Ma, Hechang Chen, Hongzhan Lin, Ziyang Luo, Yi Chang
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引用次数: 5

摘要

现有的假新闻检测方法旨在对一条新闻进行真假分类,并提供真实性解释,取得了令人瞩目的成绩。然而,他们经常在人工事实核查报告的基础上定制自动化解决方案,遭受新闻报道有限和揭露延误的困扰。当一条新闻尚未被事实核查或揭穿时,一定数量的相关原始报道通常会在各种媒体上传播,其中包含了群众的智慧,以核实新闻主张并解释其结论。在本文中,我们提出了一种新的粗到细级联证据蒸馏(CofCED)神经网络,用于基于此类原始报道的可解释假新闻检测,减轻了对事实核查的依赖。具体来说,我们首先使用分层编码器进行web文本表示,然后开发两个级联选择器,以从粗到精的方式从所选的top- k报告中选择最可解释的句子作为判决。此外,我们构建了两个可解释的假新闻数据集,这些数据集是公开的。实验结果表明,我们的模型显著优于最先进的检测基线,并从不同的评估角度产生高质量的解释。
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A Coarse-to-fine Cascaded Evidence-Distillation Neural Network for Explainable Fake News Detection
Existing fake news detection methods aim to classify a piece of news as true or false and provide veracity explanations, achieving remarkable performances. However, they often tailor automated solutions on manual fact-checked reports, suffering from limited news coverage and debunking delays. When a piece of news has not yet been fact-checked or debunked, certain amounts of relevant raw reports are usually disseminated on various media outlets, containing the wisdom of crowds to verify the news claim and explain its verdict. In this paper, we propose a novel Coarse-to-fine Cascaded Evidence-Distillation (CofCED) neural network for explainable fake news detection based on such raw reports, alleviating the dependency on fact-checked ones. Specifically, we first utilize a hierarchical encoder for web text representation, and then develop two cascaded selectors to select the most explainable sentences for verdicts on top of the selected top-K reports in a coarse-to-fine manner. Besides, we construct two explainable fake news datasets, which is publicly available. Experimental results demonstrate that our model significantly outperforms state-of-the-art detection baselines and generates high-quality explanations from diverse evaluation perspectives.
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