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Towards a Robust Framework for Multimodal Hate Detection: A Study on Video vs. Image-based Content
Conference proceeding

Towards a Robust Framework for Multimodal Hate Detection: A Study on Video vs. Image-based Content

Girish A. Koushik, Diptesh Kanojia and Helen Treharne
Companion Proceedings of the ACM on Web Conference 2025, pp.2014-2023
ACM Conferences
WWW '25: The ACM Web Conference 2025
08/05/2025

Abstract

Computing methodologies -- Artificial intelligence -- Computer vision -- Computer vision representations -- Image representations Computing methodologies -- Artificial intelligence -- Natural language processing -- Information extraction Computing methodologies -- Artificial intelligence -- Natural language processing -- Speech recognition
Social media platforms enable the propagation of hateful content across different modalities such as textual, auditory, and visual, necessitating effective detection methods. While recent approaches have shown promise in handling individual modalities, their effectiveness across different modality combinations remains unexplored. Our paper presents a systematic analysis of fusion-based approaches for multimodal hate detection, focusing on performance across video and image-based content. Our comprehensive evaluation reveals significant modality-specific limitations: while simple embedding fusion achieves state-of-the-art performance on video content with a 9.9% points F1-score improvement, it struggles with complex image-text relationships in memes. Through detailed ablation studies and error analysis, we demonstrate how current fusion approaches fail to capture nuanced cross-modal interactions, particularly in cases involving benign confounders. Our findings provide crucial insights for developing more robust hate detection systems and highlight the need for modality-specific architectural considerations. The code is available at: https://github.com/surrey-nlp/Video-vs-Meme-Hate.

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