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To Check or Not to Check: Syntax, Semantics, and Context in the Language of Check-Worthy Claims

机译:要检查或不要检查:检查值得声明语言中的语法,语义和上下文

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摘要

As the spread of information has received a compelling boost due to pervasive use of social media, so has the spread of misinformation. The sheer volume of data has rendered the traditional methods of expert-driven manual fact-checking largely infeasible. As a result, computational linguistics and data-driven algorithms have been explored in recent years. Despite this progress, identifying and prioritizing what needs to be checked has received little attention. Given that expert-driven manual intervention is likely to remain an important component of fact-checking, especially in specific domains (e.g., politics, environmental science), this identification and prioritization is critical. A successful algorithmic ranking of 'check-worthy' claims can help an expert-in-the-loop fact-checking system, thereby reducing the expert's workload while still tackling the most salient bits of misinformation. In this work, we explore how linguistic syntax, semantics, and the contextual meaning of words play a role in determining the check-worthiness of claims. Our preliminary experiments used explicit stylometric features and simple word embeddings on the English language dataset in the Check-worthiness task of the CLEF-2018 Fact-Checking Lab, where our primary solution outperformed the other systems in terms of the mean average precision, R-precision, reciprocal rank, and precision at k for multiple values k. Here, we present an extension of this approach with more sophisticated word embeddings and report further improvements in this task.
机译:由于社交媒体的广泛使用,信息的传播得到了令人信服的推动,错误信息的传播也是如此。庞大的数据量使传统的专家驱动的手动事实检查方法变得不可行。结果,近年来已经探索了计算语言学和数据驱动算法。尽管取得了这一进展,但是确定和确定需要检查的优先事项的注意却很少。鉴于专家驱动的手动干预可能仍然是事实检查的重要组成部分,尤其是在特定领域(例如,政治,环境科学),这种识别和优先级划分至关重要。对“值得检查”的声明进行成功的算法排名可以帮助专家进行环环相扣的事实检查系统,从而减少专家的工作量,同时仍能处理最明显的错误信息。在这项工作中,我们探索语言的语法,语义和单词的上下文含义如何在确定要求的可检查性方面发挥作用。在CLEF-2018事实检查实验室的Check-worthiness任务中,我们的初步实验在英语数据集上使用了显式的笔势特征和简单的词嵌入功能,其中我们的主要解决方案在平均平均精度R-方面优于其他系统多个值k的k的精度,倒数秩和精度。在这里,我们将介绍此方法的扩展,其中包含更复杂的单词嵌入,并报告此任务的进一步改进。

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