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Fighting post-truth using natural language processing: A review and open challenges

机译:使用自然语言处理对抗真相:回顾和挑战

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摘要

Post-truth is a term that describes a distorting phenomenon that aims to manipulate public opinion and behavior. One of its key engines is the spread of Fake News. Nowadays most news is rapidly disseminated in written language via digital media and social networks. Therefore, to detect fake news it is becoming increasingly necessary to apply Artificial Intelligence (Al) and, more specifically Natural Language Processing (NLP). This paper presents a review of the application of AI to the complex task of automatically detecting fake news. The review begins with a definition and classification of fake news. Considering the complexity of the fake news detection task, a divide-and-conquer methodology was applied to identify a series of subtasks to tackle the problem from a computational perspective. As a result, the following subtasks were identified: deception detection; stance detection; controversy and polarization; automated fact checking; clickbait detection; and, credibility scores. From each subtask, a PRISMA compliant systematic review of the main studies was undertaken, searching Google Scholar. The various approaches and technologies are surveyed, as well as the resources and competitions that have been involved in resolving the different subtasks. The review concludes with a roadmap for addressing the future challenges that have emerged from the analysis of the state of the art, providing a rich source of potential work for the research community going forward. (C) 2019 Elsevier Ltd. All rights reserved.
机译:后真相是一个描述扭曲现象的术语,旨在操纵公众舆论和行为。其主要引擎之一是“假新闻”的传播。如今,大多数新闻都通过数字媒体和社交网络以书面形式迅速传播。因此,为了检测虚假新闻,越来越有必要应用人工智能(Al),尤其是自然语言处理(NLP)。本文概述了人工智能在自动检测假新闻这一复杂任务中的应用。审查从假新闻的定义和分类开始。考虑到伪造新闻检测任务的复杂性,采用分而治之的方法来识别一系列子任务以从计算角度解决该问题。结果,确定了以下子任务:欺骗检测;姿势检测;争议和两极分化;自动事实检查;点击诱饵检测;以及信誉分数。从每个子任务中,对主要研究进行了PRISMA兼容的系统评价,搜索了Google Scholar。调查了各种方法和技术,以及解决不同子任务所涉及的资源和竞争。审查总结了应对未来挑战的路线图,这些挑战来自对现有技术的分析中出现的挑战,为研究界的未来工作提供了丰富的潜在资源。 (C)2019 Elsevier Ltd.保留所有权利。

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