Context Matters: Incorporating Target Awareness in Conversational Abusive Language Detection
Raneem Alharthi, Rajwa Alharthi, Aiqi Jiang, Arkaitz Zubiaga

TL;DR
This paper demonstrates that incorporating conversational context, especially content-based features from parent posts, significantly improves abusive language detection in social media replies.
Contribution
It introduces a context-aware approach to abusive language detection, highlighting the importance of parent tweet features over reply-only models, and evaluates multiple classifiers on conversational data.
Findings
Contextual features improve detection accuracy.
Content-based features are more influential than account-based features.
Combining diverse features yields the best performance.
Abstract
Abusive language detection has become an increasingly important task as a means to tackle this type of harmful content in social media. There has been a substantial body of research developing models for determining if a social media post is abusive or not; however, this research has primarily focused on exploiting social media posts individually, overlooking additional context that can be derived from surrounding posts. In this study, we look at conversational exchanges, where a user replies to an earlier post by another user (the parent tweet). We ask: does leveraging context from the parent tweet help determine if a reply post is abusive or not, and what are the features that contribute the most? We study a range of content-based and account-based features derived from the context, and compare this to the more widely studied approach of only looking at the features from the reply…
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Taxonomy
TopicsHate Speech and Cyberbullying Detection · Text Readability and Simplification · Authorship Attribution and Profiling
