在社交媒体上噤声:美国twitter世界中暗影禁令的把关功能

IF 6.1 1区 文学 Q1 COMMUNICATION
Kokil Jaidka, Subhayan Mukerjee, Yphtach Lelkes
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引用次数: 6

摘要

算法在引导社交媒体的在线注意力方面发挥着关键作用。许多人声称,算法会使偏见永久化。这项研究审核了shadowbanning,即用户或其内容暂时隐藏在Twitter上。我们反复测试了美国Twitter账户(n≈25,000)的分层随机样本是否受到各种形式的影子禁令的影响。然后,我们确定了预测shadowban的用户类型和tweet特征。一般来说,暗影禁令很少见。我们发现,有类似机器人行为的账户更有可能面临影子禁令,而经过验证的账户不太可能被影子禁令。发布攻击性推文和有关政治的推文的推特账户(无论是来自左翼还是右翼)的回复更有可能被降级。这些发现对算法问责制和未来社交媒体平台审计研究的设计具有启示意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Silenced on social media: the gatekeeping functions of shadowbans in the American Twitterverse
Algorithms play a critical role in steering online attention on social media. Many have alleged that algorithms can perpetuate bias. This study audited shadowbanning, where a user or their content is temporarily hidden on Twitter. We repeatedly tested whether a stratified random sample of American Twitter accounts (n ≈ 25,000) had been subject to various forms of shadowbans. We then identified the type of user and tweet characteristics that predict a shadowban. In general, shadowbans are rare. We found that accounts with bot-like behavior were more likely to face shadowbans, while verified accounts were less likely to be shadowbanned. The replies by Twitter accounts that posted offensive tweets and tweets about politics (from both the left and the right) were more likely to be downtiered. The findings have implications for algorithmic accountability and the design of future audit studies of social media platforms.
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来源期刊
Journal of Communication
Journal of Communication COMMUNICATION-
CiteScore
11.60
自引率
5.10%
发文量
41
期刊介绍: The Journal of Communication, the flagship journal of the International Communication Association, is a vital publication for communication specialists and policymakers alike. Focusing on communication research, practice, policy, and theory, it delivers the latest and most significant findings in communication studies. The journal also includes an extensive book review section and symposia of selected studies on current issues. JoC publishes top-quality scholarship on all aspects of communication, with a particular interest in research that transcends disciplinary and sub-field boundaries.
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