Automatic Fact-Checking Using Context and Discourse Information

Pepa Atanasova, Preslav Nakov, Lluís Màrquez i Villodre, Alberto Barrón-Cedeño, Georgi Karadzhov, Tsvetomila Mihaylova, Mitra Mohtarami, James R. Glass
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引用次数: 58

Abstract

We study the problem of automatic fact-checking, paying special attention to the impact of contextual and discourse information. We address two related tasks: (i) detecting check-worthy claims and (ii) fact-checking claims. We develop supervised systems based on neural networks, kernel-based support vector machines, and combinations thereof, which make use of rich input representations in terms of discourse cues and contextual features. For the check-worthiness estimation task, we focus on political debates, and we model the target claim in the context of the full intervention of a participant and the previous and following turns in the debate, taking into account contextual meta information. For the fact-checking task, we focus on answer verification in a community forum, and we model the veracity of the answer with respect to the entire question–answer thread in which it occurs as well as with respect to other related posts from the entire forum. We develop annotated datasets for both tasks and we run extensive experimental evaluation, confirming that both types of information—but especially contextual features—play an important role.
使用上下文和话语信息的自动事实检查
我们研究了自动事实核查问题,特别关注上下文和话语信息的影响。我们解决两个相关的任务:(i)检测值得检查的索赔和(ii)事实核查索赔。我们开发了基于神经网络、基于核的支持向量机及其组合的监督系统,这些系统在话语线索和上下文特征方面利用了丰富的输入表示。对于可靠性评估任务,我们将重点放在政治辩论上,并考虑上下文元信息,在参与者的全面干预以及辩论的前后回合的背景下对目标主张进行建模。对于事实核查任务,我们将重点放在社区论坛中的答案验证上,我们对答案的准确性进行建模,并将其与整个论坛中出现的整个问答线程以及其他相关帖子联系起来。我们为这两项任务开发了带注释的数据集,并进行了广泛的实验评估,确认了这两种类型的信息,尤其是上下文特征,发挥了重要作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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