The Structure of Toxic Conversations on Twitter
Martin Saveski, Brandon Roy, Deb Roy

TL;DR
This study analyzes the structure of Twitter conversations to understand and predict toxicity, revealing that certain structural features can forecast toxic interactions early and inform healthier social media design.
Contribution
It introduces a comprehensive analysis of conversation structures related to toxicity and demonstrates predictive models using structural features for early toxicity detection.
Findings
Toxicity is spread across many low to moderately toxic users.
Toxic replies are more common from users with no social connection to the poster.
Toxic conversations have larger, wider, and deeper reply trees.
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…
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Taxonomy
TopicsHate Speech and Cyberbullying Detection · Social Media and Politics · Media Influence and Politics
