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Predicting Hateful Discussions on Reddit using Graph Transformer Networks and Communal Context

2023-01-10 23:47:13
Liam Hebert, Lukasz Golab, Robin Cohen

Abstract

We propose a system to predict harmful discussions on social media platforms. Our solution uses contextual deep language models and proposes the novel idea of integrating state-of-the-art Graph Transformer Networks to analyze all conversations that follow an initial post. This framework also supports adapting to future comments as the conversation unfolds. In addition, we study whether a community-specific analysis of hate speech leads to more effective detection of hateful discussions. We evaluate our approach on 333,487 Reddit discussions from various communities. We find that community-specific modeling improves performance two-fold and that models which capture wider-discussion context improve accuracy by 28\% (35\% for the most hateful content) compared to limited context models.

Abstract (translated)

URL

https://arxiv.org/abs/2301.04248

PDF

https://arxiv.org/pdf/2301.04248.pdf


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