Qualitative Analysis of a Graph Transformer Approach to Addressing Hate Speech: Adapting to Dynamically Changing Content
Liam Hebert, Hong Yi Chen, Robin Cohen, Lukasz Golab

TL;DR
This paper presents a graph transformer-based method for detecting hate speech in social media by analyzing the context of discussions, including images, to improve accuracy and adapt to dynamic online content.
Contribution
It introduces a novel approach combining graph transformers, attention modeling, and BERT-level NLP for qualitative analysis of hate speech detection in social networks.
Findings
The method outperforms competitors in key scenarios.
Contextual analysis improves detection accuracy.
Identifies challenges with multimodal content.
Abstract
Our work advances an approach for predicting hate speech in social media, drawing out the critical need to consider the discussions that follow a post to successfully detect when hateful discourse may arise. Using graph transformer networks, coupled with modelling attention and BERT-level natural language processing, our approach can capture context and anticipate upcoming anti-social behaviour. In this paper, we offer a detailed qualitative analysis of this solution for hate speech detection in social networks, leading to insights into where the method has the most impressive outcomes in comparison with competitors and identifying scenarios where there are challenges to achieving ideal performance. Included is an exploration of the kinds of posts that permeate social media today, including the use of hateful images. This suggests avenues for extending our model to be more…
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Taxonomy
TopicsHate Speech and Cyberbullying Detection · Social Media and Politics · Misinformation and Its Impacts
MethodsAttention Is All You Need · Laplacian EigenMap · Dense Connections · Adam · Position-Wise Feed-Forward Layer · Laplacian Positional Encodings · Softmax · Linear Layer · Multi-Head Attention · Absolute Position Encodings
