Challenge: Recent studies have highlighted that private instant messaging platforms are major mediums of cyber aggression among teens.
Approach: They present a dataset of aggressive chats in French collected through a role-playing game in high-schools . they provide insights on the different types of aggression and verbal abuse depending on the targeted victims .
Outcome: The proposed dataset analyzes aggressive conversations in French on a role-playing game in high schools . it provides insights on the different types of aggression and verbal abuse depending on the targeted victims .

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Challenge: Using a hierarchical tagset, cyberbullying narratives are described in the dataset CyberAgressionAdo-V1 . resulting dataset comprises 19 conversations that have been manually annotated .
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Aggression-annotated Corpus of Hindi-English Code-mixed Data (L18-1)

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Challenge: a number of incidents of aggression and related events have increased over the web . the reach and extent of the Internet has given these events unprecedented power and influence to affect the lives of billions of people.
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Challenge: Detecting and classifying online abuse is a complex and nuanced task, despite many advances in the power and availability of computational tools.
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Challenge: Existing studies on how to automatically detect abusive short texts are gaining interest in the natural language processing community.
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Challenge: Existing datasets and models fail to address the complexities of multilingual data, authors say . detection of radical content on online platforms has become an increasingly pressing concern .
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