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A Review on Fact Extraction and Verification

机译:事实提取与验证研究进展

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We study the fact-checking problem, which aims to identify the veracity of a given claim. Specifically, we focus on the task of Fact Extraction and VERification (FEVER) and its accompanied dataset. The task consists of the subtasks of retrieving the relevant documents (and sentences) from Wikipedia and validating whether the information in the documents supports or refutes a given claim. This task is essential and can be the building block of applications such as fake news detection and medical claim verification. In this article, we aim at a better understanding of the challenges of the task by presenting the literature in a structured and comprehensive way. We describe the proposed methods by analyzing the technical perspectives of the different approaches and discussing the performance results on the FEVER dataset, which is the most well-studied and formally structured dataset on the fact extraction and verification task. We also conduct the largest experimental study to date on identifying beneficial loss functions for the sentence retrieval component. Our analysis indicates that sampling negative sentences is important for improving the performance and decreasing the computational complexity. Finally, we describe open issues and future challenges, and we motivate future research in the task.
机译:我们研究事实核查问题,旨在确定给定声明的真实性。具体来说,我们专注于事实提取和验证(FEVER)及其伴随的数据集的任务。该任务包括从维基百科检索相关文档(和句子)并验证文档中的信息是否支持或反驳给定声明的子任务。这项任务是必不可少的,可以成为假新闻检测和医疗索赔验证等应用程序的构建块。在本文中,我们旨在通过以结构化和全面的方式呈现文献来更好地理解任务的挑战。我们通过分析不同方法的技术观点并讨论FEVER数据集上的性能结果来描述所提出的方法,FEVER数据集是事实提取和验证任务中研究最充分和最正式的结构化数据集。我们还进行了迄今为止最大的实验研究,以确定句子检索组件的有益损失函数。我们的分析表明,对否定句进行采样对于提高性能和降低计算复杂度非常重要。最后,我们描述了开放的问题和未来的挑战,并激励了未来的研究任务。

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