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Main Authors: Ye, Haotian, Wisiorek, Axel, Maronikolakis, Antonis, Alaçam, Özge, Schütze, Hinrich
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.04942
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author Ye, Haotian
Wisiorek, Axel
Maronikolakis, Antonis
Alaçam, Özge
Schütze, Hinrich
author_facet Ye, Haotian
Wisiorek, Axel
Maronikolakis, Antonis
Alaçam, Özge
Schütze, Hinrich
contents Hate speech online remains an understudied issue for marginalized communities, particularly in the Global South, which includes developing societies with increasing internet penetration. In this paper, we aim to provide marginalized communities in societies where the dominant language is low-resource with a privacy-preserving tool to protect themselves from online hate speech by filtering offensive content in their native languages. Our contributions are twofold: 1) we release REACT (REsponsive hate speech datasets Across ConTexts), a collection of high-quality, culture-specific hate speech detection datasets comprising multiple target groups and low-resource languages, curated by experienced data collectors; 2) we propose a few-shot hate speech detection approach based on federated learning (FL), a privacy-preserving method for collaboratively training a central model that exhibits robustness when tackling different target groups and languages. By keeping training local to user devices, we ensure data privacy while leveraging the collective learning benefits of FL. Furthermore, we explore personalized client models tailored to specific target groups and evaluate their performance. Our findings indicate the overall effectiveness of FL across different target groups, and point to personalization as a promising direction.
format Preprint
id arxiv_https___arxiv_org_abs_2412_04942
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Federated Approach to Few-Shot Hate Speech Detection for Marginalized Communities
Ye, Haotian
Wisiorek, Axel
Maronikolakis, Antonis
Alaçam, Özge
Schütze, Hinrich
Computation and Language
Artificial Intelligence
Hate speech online remains an understudied issue for marginalized communities, particularly in the Global South, which includes developing societies with increasing internet penetration. In this paper, we aim to provide marginalized communities in societies where the dominant language is low-resource with a privacy-preserving tool to protect themselves from online hate speech by filtering offensive content in their native languages. Our contributions are twofold: 1) we release REACT (REsponsive hate speech datasets Across ConTexts), a collection of high-quality, culture-specific hate speech detection datasets comprising multiple target groups and low-resource languages, curated by experienced data collectors; 2) we propose a few-shot hate speech detection approach based on federated learning (FL), a privacy-preserving method for collaboratively training a central model that exhibits robustness when tackling different target groups and languages. By keeping training local to user devices, we ensure data privacy while leveraging the collective learning benefits of FL. Furthermore, we explore personalized client models tailored to specific target groups and evaluate their performance. Our findings indicate the overall effectiveness of FL across different target groups, and point to personalization as a promising direction.
title A Federated Approach to Few-Shot Hate Speech Detection for Marginalized Communities
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2412.04942