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Main Authors: Marzea, Tom, Israeli, Abraham, Tsur, Oren
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.19603
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author Marzea, Tom
Israeli, Abraham
Tsur, Oren
author_facet Marzea, Tom
Israeli, Abraham
Tsur, Oren
contents Automatic detection of online hate speech serves as a crucial step in the detoxification of the online discourse. Moreover, accurate classification can promote a better understanding of the proliferation of hate as a social phenomenon. While most prior work focus on the detection of hateful utterances, we argue that focusing on the user level is as important, albeit challenging. In this paper we consider a multimodal aggregative approach for the detection of hate-mongers, taking into account the potentially hateful texts, user activity, and the user network. Evaluating our method on three unique datasets X (Twitter), Gab, and Parler we show that processing a user's texts in her social context significantly improves the detection of hate mongers, compared to previously used text and graph-based methods. We offer comprehensive set of results obtained in different experimental settings as well as qualitative analysis of illustrative cases. Our method can be used to improve the classification of coded messages, dog-whistling, and racial gas-lighting, as well as to inform intervention measures. Moreover, we demonstrate that our multimodal approach performs well across very different content platforms and over large datasets and networks.
format Preprint
id arxiv_https___arxiv_org_abs_2506_19603
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Social Hatred: Efficient Multimodal Detection of Hatemongers
Marzea, Tom
Israeli, Abraham
Tsur, Oren
Computation and Language
Social and Information Networks
Automatic detection of online hate speech serves as a crucial step in the detoxification of the online discourse. Moreover, accurate classification can promote a better understanding of the proliferation of hate as a social phenomenon. While most prior work focus on the detection of hateful utterances, we argue that focusing on the user level is as important, albeit challenging. In this paper we consider a multimodal aggregative approach for the detection of hate-mongers, taking into account the potentially hateful texts, user activity, and the user network. Evaluating our method on three unique datasets X (Twitter), Gab, and Parler we show that processing a user's texts in her social context significantly improves the detection of hate mongers, compared to previously used text and graph-based methods. We offer comprehensive set of results obtained in different experimental settings as well as qualitative analysis of illustrative cases. Our method can be used to improve the classification of coded messages, dog-whistling, and racial gas-lighting, as well as to inform intervention measures. Moreover, we demonstrate that our multimodal approach performs well across very different content platforms and over large datasets and networks.
title Social Hatred: Efficient Multimodal Detection of Hatemongers
topic Computation and Language
Social and Information Networks
url https://arxiv.org/abs/2506.19603