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Hauptverfasser: Wang, Yian, Umashankar, Mukhilshankar, Chandrasekharan, Eshwar, Sundaram, Hari
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2508.15061
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author Wang, Yian
Umashankar, Mukhilshankar
Chandrasekharan, Eshwar
Sundaram, Hari
author_facet Wang, Yian
Umashankar, Mukhilshankar
Chandrasekharan, Eshwar
Sundaram, Hari
contents On social platforms like Twitter, strategic targeted attacks are becoming increasingly common, especially against vulnerable groups such as female journalists. Two key challenges in identifying strategic online behavior are the complex structure of online conversations and the hidden nature of potential strategies that drive user behavior. To address these, we develop a new tree structured Transformer model that categorizes replies based on their hierarchical conversation structures. Extensive experiments demonstrate that our proposed classification model can effectively detect different user groups, namely attackers, supporters, and bystanders, and their latent strategies. To demonstrate the utility of our approach, we apply this classifier to real time Twitter data and conduct a series of quantitative analyses on the interactions between journalists with different groups of users. Our classification approach allows us to not only explore strategic behaviors of attackers but also those of supporters and bystanders who engage in online interactions. When examining the impact of online attacks, we find a strong correlation between the presence of attackers' interactions and chilling effects, where journalists tend to slow their subsequent posting behavior. This paper provides a deeper understanding of how different user groups engage in online discussions and highlights the detrimental effects of attacker presence on journalists, other users, and conversational outcomes. Our findings underscore the need for social platforms to develop tools that address coordinated toxicity. By detecting patterns of coordinated attacks early, platforms could limit the visibility of toxic content to prevent escalation. Additionally, providing journalists and users with tools for real time reporting could empower them to manage hostile interactions more effectively.
format Preprint
id arxiv_https___arxiv_org_abs_2508_15061
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle The Chilling: Identifying Strategic Antisocial Behavior Online and Examining the Impact on Journalists
Wang, Yian
Umashankar, Mukhilshankar
Chandrasekharan, Eshwar
Sundaram, Hari
Social and Information Networks
On social platforms like Twitter, strategic targeted attacks are becoming increasingly common, especially against vulnerable groups such as female journalists. Two key challenges in identifying strategic online behavior are the complex structure of online conversations and the hidden nature of potential strategies that drive user behavior. To address these, we develop a new tree structured Transformer model that categorizes replies based on their hierarchical conversation structures. Extensive experiments demonstrate that our proposed classification model can effectively detect different user groups, namely attackers, supporters, and bystanders, and their latent strategies. To demonstrate the utility of our approach, we apply this classifier to real time Twitter data and conduct a series of quantitative analyses on the interactions between journalists with different groups of users. Our classification approach allows us to not only explore strategic behaviors of attackers but also those of supporters and bystanders who engage in online interactions. When examining the impact of online attacks, we find a strong correlation between the presence of attackers' interactions and chilling effects, where journalists tend to slow their subsequent posting behavior. This paper provides a deeper understanding of how different user groups engage in online discussions and highlights the detrimental effects of attacker presence on journalists, other users, and conversational outcomes. Our findings underscore the need for social platforms to develop tools that address coordinated toxicity. By detecting patterns of coordinated attacks early, platforms could limit the visibility of toxic content to prevent escalation. Additionally, providing journalists and users with tools for real time reporting could empower them to manage hostile interactions more effectively.
title The Chilling: Identifying Strategic Antisocial Behavior Online and Examining the Impact on Journalists
topic Social and Information Networks
url https://arxiv.org/abs/2508.15061