A behavioural analysis of credulous Twitter users

Q1 Social Sciences Online Social Networks and Media Pub Date : 2021-05-01 DOI:10.1016/j.osnem.2021.100133
Alessandro Balestrucci , Rocco De Nicola , Marinella Petrocchi , Catia Trubiani
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引用次数: 4

Abstract

Thanks to platforms such as Twitter and Facebook, people can know facts and events that otherwise would have been silenced. However, social media significantly contribute also to fast spreading biased and false news while targeting specific segments of the population. We have seen how false information can be spread using automated accounts, known as bots. Using Twitter as a benchmark, we investigate behavioural attitudes of so called ‘credulous’ users, i.e., genuine accounts following many bots. Leveraging our previous work, where supervised learning is successfully applied to single out credulous users, we improve the classification task with a detailed features’ analysis and provide evidence that simple and lightweight features are crucial to detect such users. Furthermore, we study the differences in the way credulous and not credulous users interact with bots and discover that credulous users tend to amplify more the content posted by bots and argue that their detection can be instrumental to get useful information on possible dissemination of spam content, propaganda, and, in general, little or no reliable information.

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对轻信的Twitter用户的行为分析
多亏了Twitter和Facebook这样的平台,人们可以知道原本会被封锁的事实和事件。然而,社交媒体在针对特定人群的同时,也极大地促进了有偏见和虚假新闻的快速传播。我们已经看到虚假信息是如何通过被称为机器人的自动账户传播的。以Twitter为基准,我们调查了所谓的“轻信”用户的行为态度,即跟随许多机器人的真实账户。利用我们之前的工作,我们成功地将监督学习应用于挑选轻信的用户,我们通过详细的特征分析改进了分类任务,并提供了证据,证明简单和轻量级的特征对于检测这样的用户至关重要。此外,我们研究了轻信用户和不轻信用户与机器人互动方式的差异,发现轻信用户倾向于放大机器人发布的内容,并认为他们的检测可以帮助获得关于垃圾内容、宣传以及通常很少或没有可靠信息的可能传播的有用信息。
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来源期刊
Online Social Networks and Media
Online Social Networks and Media Social Sciences-Communication
CiteScore
10.60
自引率
0.00%
发文量
32
审稿时长
44 days
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