The Structure of Toxic Conversations on Twitter

Martin Saveski, Brandon Roy, D. Roy
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引用次数: 34

Abstract

Social media platforms promise to enable rich and vibrant conversations online; however, their potential is often hindered by antisocial behaviors. In this paper, we study the relationship between structure and toxicity in conversations on Twitter. We collect 1.18M conversations (58.5M tweets, 4.4M users) prompted by tweets that are posted by or mention major news outlets over one year and candidates who ran in the 2018 US midterm elections over four months. We analyze the conversations at the individual, dyad, and group level. At the individual level, we find that toxicity is spread across many low to moderately toxic users. At the dyad level, we observe that toxic replies are more likely to come from users who do not have any social connection nor share many common friends with the poster. At the group level, we find that toxic conversations tend to have larger, wider, and deeper reply trees, but sparser follow graphs. To test the predictive power of the conversational structure, we consider two prediction tasks. In the first prediction task, we demonstrate that the structural features can be used to predict whether the conversation will become toxic as early as the first ten replies. In the second prediction task, we show that the structural characteristics of the conversation are also predictive of whether the next reply posted by a specific user will be toxic or not. We observe that the structural and linguistic characteristics of the conversations are complementary in both prediction tasks. Our findings inform the design of healthier social media platforms and demonstrate that models based on the structural characteristics of conversations can be used to detect early signs of toxicity and potentially steer conversations in a less toxic direction.
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推特上有毒对话的结构
社交媒体平台有望实现丰富而充满活力的在线对话;然而,他们的潜力往往受到反社会行为的阻碍。在本文中,我们研究了Twitter对话中的结构和毒性之间的关系。我们收集了118万次对话(5850万条推文,440万用户),这些对话是由一年多来主要新闻媒体发布或提及的推文以及2018年美国中期选举候选人在四个月内发布的推文引发的。我们在个人、二人组和小组层面分析对话。在个体水平上,我们发现毒性在许多低到中度毒性使用者中扩散。在双元层面上,我们观察到有害回复更可能来自那些没有任何社交关系,也没有与发帖者分享很多共同朋友的用户。在群体层面,我们发现有害的对话往往有更大、更广、更深入的回复树,但更稀疏的跟随图。为了测试会话结构的预测能力,我们考虑了两个预测任务。在第一个预测任务中,我们证明了结构特征可以用来预测对话是否会在前十个回复中变得有害。在第二个预测任务中,我们展示了对话的结构特征也可以预测特定用户发布的下一个回复是否有害。我们观察到对话的结构和语言特征在两个预测任务中是互补的。我们的研究结果为更健康的社交媒体平台的设计提供了信息,并证明基于对话结构特征的模型可用于检测毒性的早期迹象,并有可能将对话引导到毒性较小的方向。
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