区分谣言与反谣言的推文真实性研究

A. Chua, Snehasish Banerjee
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引用次数: 7

摘要

众所周知,谣言很容易通过Twitter等以计算机为媒介的沟通渠道传播。它们的爆发往往伴随着“反谣言”的传播,这是揭穿谣言的信息。在本文中,一条推文成为反谣言的概率被称为“推文真实性”。由于谣言和反谣言都被认为包含对事实的声明,这两者可能不容易区分。如果互联网用户不能区分谣言和反谣言,后者将无法达到其目的。因此,本文研究了推文真实性在多大程度上可以通过内容和贡献者的个人资料来预测。调查的重点是新加坡首任总理李光耀在推特上的死亡骗局。使用二项逻辑回归分析了总共1000条推文(500条谣言+ 500条反谣言)。结果表明,推文的真实性可以通过清晰度、专有名词、视觉线索、参考可信来源、贡献者的会员时间和关注者数量来预测。强调了这些发现的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Study of Tweet Veracity to Separate Rumours from Counter-Rumours
Rumours are known to propagate easily through computer-mediated communication channels such as Twitter. Their outbreak is often followed by the spread of 'counter-rumours', which are messages that debunk rumours. The probability of a tweet to be a counter-rumour is referred to as 'tweet veracity' in this paper. Since both rumours and counter-rumours are expected to contain claims of truth, the two might not be easily distinguishable. If Internet users fail to separate rumours from counter-rumours, the latter will not serve its purpose. Hence, this paper investigates the extent to which tweet veracity could be predicted by content as well as contributors' profile. The investigation focuses on the death hoax case of Singapore's first Prime Minister Lee Kuan Yew on Twitter. A total of 1,000 tweets (500 rumours + 500 counter-rumours) are analyzed using binomial logistic regression. Results indicate that tweet veracity could be predicted by clarity, proper nouns, visual cues, references to credible sources, as well as contributors' duration of membership, and number of followers. The significance of these findings are highlighted.
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