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Hauptverfasser: Huang, Yiting, Zhu, Wenting, Wang, Zekun, Yang, Qingpo, Chen, Yakai, Xu, Zihui, Zhang, Yueyue, Guo, Sanchuan, Zhang, Xi
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2605.27584
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author Huang, Yiting
Zhu, Wenting
Wang, Zekun
Yang, Qingpo
Chen, Yakai
Xu, Zihui
Zhang, Yueyue
Guo, Sanchuan
Zhang, Xi
author_facet Huang, Yiting
Zhu, Wenting
Wang, Zekun
Yang, Qingpo
Chen, Yakai
Xu, Zihui
Zhang, Yueyue
Guo, Sanchuan
Zhang, Xi
contents The proliferation of social media platforms and online communities has inadvertently catalyzed the spread of cyberbullying, hate speech, and other forms of online toxicity, making the effective governance of such harm a critical societal and computational challenge. While significant strides have been made in automating content moderation, existing research predominantly treats cyberbullying governance as passive, isolated detection at the post level. This reductionist view overlooks the continuous behavioral dynamics of users, the structural diffusion of toxic events, and the critical need for proactive mitigation. To bridge these gaps, this paper proposes a unified full-lifecycle governance framework that shifts the paradigm of cyberbullying governance from isolated static detection toward integrated, continuous, and proactive moderation. Drawing on cyberbullying research and adjacent fields, we systematically synthesize the state-of-the-art literature across four interconnected stages: (1) Content Identification, (2) User and Behavior Modeling, (3) Diffusion Dynamics and Early Warning, and (4) Intervention and Governance. Furthermore, we review available datasets and evaluation practices, and discuss emerging challenges including multimodality, explainability, algorithmic fairness, and the dual-use risks of generative AI, providing a roadmap for future research toward a safer and more resilient digital ecosystem.
format Preprint
id arxiv_https___arxiv_org_abs_2605_27584
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Cyberbullying Governance on Social Media: A Unified Framework from Content Identification to Intervention
Huang, Yiting
Zhu, Wenting
Wang, Zekun
Yang, Qingpo
Chen, Yakai
Xu, Zihui
Zhang, Yueyue
Guo, Sanchuan
Zhang, Xi
Artificial Intelligence
Social and Information Networks
The proliferation of social media platforms and online communities has inadvertently catalyzed the spread of cyberbullying, hate speech, and other forms of online toxicity, making the effective governance of such harm a critical societal and computational challenge. While significant strides have been made in automating content moderation, existing research predominantly treats cyberbullying governance as passive, isolated detection at the post level. This reductionist view overlooks the continuous behavioral dynamics of users, the structural diffusion of toxic events, and the critical need for proactive mitigation. To bridge these gaps, this paper proposes a unified full-lifecycle governance framework that shifts the paradigm of cyberbullying governance from isolated static detection toward integrated, continuous, and proactive moderation. Drawing on cyberbullying research and adjacent fields, we systematically synthesize the state-of-the-art literature across four interconnected stages: (1) Content Identification, (2) User and Behavior Modeling, (3) Diffusion Dynamics and Early Warning, and (4) Intervention and Governance. Furthermore, we review available datasets and evaluation practices, and discuss emerging challenges including multimodality, explainability, algorithmic fairness, and the dual-use risks of generative AI, providing a roadmap for future research toward a safer and more resilient digital ecosystem.
title Cyberbullying Governance on Social Media: A Unified Framework from Content Identification to Intervention
topic Artificial Intelligence
Social and Information Networks
url https://arxiv.org/abs/2605.27584