Exposure to Marginally Abusive Content on Twitter

Jack Bandy, Tomo Lazovich
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Abstract

Social media platforms can help people find connection and entertainment, but they can also show potentially abusive content such as insults and targeted cursing. While platforms do remove some abusive content for rule violation, some is considered "margin content" that does not violate any rules and thus stays on the platform. This paper presents a focused analysis of exposure to such content on Twitter, asking (RQ1) how exposure to marginally abusive content varies across Twitter users, and (RQ2) how algorithmically-ranked timelines impact exposure to marginally abusive content. Based on one month of impression data from November 2021, descriptive analyses (RQ1) show significant variation in exposure, with more active users experiencing higher rates and higher volumes of marginal impressions. Experimental analyses (RQ2) show that users with algorithmically-ranked timelines experience slightly lower rates of marginal impressions. However, they tend to register more total impression activity and thus experience a higher cumulative volume of marginal impressions. The paper concludes by discussing implications of the observed concentration, the multifaceted impact of algorithmically-ranked timelines, and potential directions for future work.
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在推特上接触到近乎辱骂的内容
社交媒体平台可以帮助人们找到联系和娱乐,但它们也可以显示潜在的辱骂内容,如侮辱和有针对性的诅咒。虽然平台确实会删除一些违反规则的滥用内容,但有些内容被认为是“边际内容”,不违反任何规则,因此会留在平台上。本文对Twitter上此类内容的曝光率进行了重点分析,询问(RQ1) Twitter用户对轻度滥用内容的曝光率如何变化,以及(RQ2)算法排名时间表如何影响对轻度滥用内容的曝光率。根据从2021年11月开始的一个月的印象数据,描述性分析(RQ1)显示了曝光率的显著变化,越活跃的用户的边际印象率和数量越高。实验分析(RQ2)表明,使用算法排序时间线的用户的边际印象率略低。然而,他们倾向于记录更多的整体印象活动,从而经历更高的边际印象累积量。本文最后讨论了观察到的浓度的含义,算法排序时间表的多方面影响,以及未来工作的潜在方向。
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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