Seeing Should Probably Not Be Believing: The Role of Deceptive Support in COVID-19 Misinformation on Twitter

IF 1.5 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Chaoyuan Zuo, Ritwik Banerjee, H. Shirazi, Fateme Hashemi Chaleshtori, I. Ray
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引用次数: 2

Abstract

With the spread of the SARS-CoV-2, enormous amounts of information about the pandemic are disseminated through social media platforms such as Twitter. Social media posts often leverage the trust readers have in prestigious news agencies and cite news articles as a way of gaining credibility. Nevertheless, it is not always the case that the cited article supports the claim made in the social media post. We present a cross-genre ad hoc pipeline to identify whether the information in a Twitter post (i.e., a “Tweet”) is indeed supported by the cited news article. Our approach is empirically based on a corpus of over 46.86 million Tweets and is divided into two tasks: (i) development of models to detect Tweets containing claim and worth to be fact-checked and (ii) verifying whether the claims made in a Tweet are supported by the newswire article it cites. Unlike previous studies that detect unsubstantiated information by post hoc analysis of the patterns of propagation, we seek to identify reliable support (or the lack of it) before the misinformation begins to spread. We discover that nearly half of the Tweets (43.4%) are not factual and hence not worth checking—a significant filter, given the sheer volume of social media posts on a platform such as Twitter. Moreover, we find that among the Tweets that contain a seemingly factual claim while citing a news article as supporting evidence, at least 1% are not actually supported by the cited news and are hence misleading.
眼见为实:推特上COVID-19错误信息中欺骗性支持的作用
随着新冠肺炎的扩散,有关新冠肺炎的大量信息通过推特等社交媒体平台传播。社交媒体帖子经常利用读者对知名新闻机构的信任,并引用新闻文章作为获得可信度的一种方式。然而,被引用的文章并不总是支持社交媒体帖子中的说法。我们提出了一个跨类型的特别管道来识别Twitter帖子(即“Tweet”)中的信息是否确实被引用的新闻文章所支持。我们的方法是基于超过4686万条推文的语料库,并分为两个任务:(i)开发模型来检测包含声明和值得事实核查的推文;(ii)验证推文中的声明是否得到其引用的新闻专线文章的支持。不像以前的研究,通过对传播模式的事后分析来检测未经证实的信息,我们试图在错误信息开始传播之前确定可靠的支持(或缺乏支持)。我们发现近一半的推文(43.4%)是不真实的,因此不值得检查——考虑到Twitter等平台上社交媒体帖子的绝对数量,这是一个重要的过滤器。此外,我们发现,在引用新闻文章作为支持证据的同时,包含看似事实的主张的推文中,至少有1%的推文实际上并没有被引用的新闻所支持,因此具有误导性。
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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来源期刊
ACM Journal of Data and Information Quality
ACM Journal of Data and Information Quality COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
4.10
自引率
4.80%
发文量
0
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