Enhancing social network hate detection using back translation and GPT-3 augmentations during training and test-time — Seffi Cohen (2023) | RDL Network
Enhancing social network hate detection using back translation and GPT-3 augmentations during training and test-time
Information Fusion 99: 101887-101887
Article 2023 English
Authors
SC
Seffi Cohen
DP
Dan Presil
OK
Or Katz
Abstract
1 min read
Social media platforms have become an essential means of communication, but they also serve as a breeding ground for hateful content. Detecting hate speech accurately is challenging due to factors such as slang and implicit hate speech. In response to these challenges, this paper presents a novel ensemble approach utilizing DeBERTa models, integrating back-translation and GPT-3 augmentation techniques during both training and test time. This method aims to address the complexities associated with detecting hate speech, resulting in more robust and accurate results. Our findings indicate that the proposed approach significantly enhances hate speech detection performance across various metrics and models in both the Parler and GAB datasets. For reproducibility and further exploration, our code is publicly available at https://github.com/OrKatz7/parler-hate-speech.
Discussion(0)
No comments yet. Be the first to comment.