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Automated Fact Checking: Task formulations, methods and future directions

机译:自动事实检查:任务制定,方法和未来方向

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The recently increased focus on misinformation has stimulated research in fact checking, the task of assessing the truthfulness of a claim. Research in automating this task has been conducted in a variety of disciplines including natural language processing, machine learning, knowledge representation, databases, and journalism. While there has been substantial progress, relevant papers and articles have been published in research communities that are often unaware of each other and use inconsistent terminology, thus impeding understanding and further progress. In this paper we survey automated fact checking research stemming from natural language processing and related disciplines, unifying the task formulations and methodologies across papers and authors. Furthermore, we highlight the use of evidence as an important distinguishing factor among them cutting across task formulations and methods. We conclude with proposing avenues for future NLP research on automated fact checking.
机译:最近对错误信息的关注增加了对事实检查的研究,这是评估索赔真实性的任务。已经在包括自然语言处理,机器学习,知识表示,数据库和新闻学在内的多种学科中进行了使该任务自动化的研究。尽管取得了长足的进步,但相关的论文和文章已在研究社区中发表,这些论文和文章通常彼此之间并不了解,并且使用不一致的术语,从而阻碍了理解和进一步的发展。在本文中,我们调查了源于自然语言处理和相关学科的自动事实检查研究,统一了论文和作者的任务制定和方法。此外,我们强调了证据的使用,将其作为跨越任务制定和方法的重要区别因素。最后,我们为未来的NLP研究提供了一些途径,以进行自动事实检查。

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