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Where is your Evidence: Improving Fact-checking by Justification Modeling

机译:您的证据在哪里:通过辩护建模改善事实检查

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Fact-checking is a journalistic practice that compares a claim made publicly against trusted sources of facts. Wang (2017) introduced a large dataset of validated claims from the POLITIFACT.com website (LIAR dataset), enabling the development of machine learning approaches for fact-checking. However, approaches based on this dataset have focused primarily on modeling the claim and speaker-related metadata, without considering the evidence used by humans in labeling the claims. We extend the LIAR dataset by automatically extracting the justification from the fact-checking article used by humans to label a given claim. We show that modeling the extracted justification in conjunction with the claim (and metadata) provides a significant improvement regardless of the machine learning model used (feature-based or deep learning) both in a binary classification task (true, false) and in a six-way classification task (pants on fire, false, mostly false, half true, mostly true, true).
机译:事实 - 检查是一项新闻练习,可比较公开对抗有信任的事实来源的索赔。王(2017)从Politifact.com网站(骗子数据集)引入了一个验证索赔的大型数据集,从而开发了机器学习方法以进行事实检查。然而,基于该数据集的方法主要集中在索赔和扬声器相关的元数据上,而不考虑人类在标记索赔时使用的证据。我们通过自动从人类使用的事实检查文章中提取逻辑数据集来扩展骗子数据集以标记给定的索赔。我们表明,与索赔(和元数据)结合提取的提取的理由提供了显着的改进,而不管在二进制分类任务(真假)和六个中使用的机器学习模型(特征为基础或深度学习)。 - 道分类任务(裤子着火,虚假,大部分是假的,一半真实,大多是真实的)。

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