基于文本和图片深度多模态融合的仇恨言论分类研究

Fan Yang, Xiaochang Peng, Gargi Ghosh, Reshef Shilon, Hao Ma, E. Moore, Goran Predović
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引用次数: 64

摘要

社交网络平台上用户之间的互动通常是积极的、建设性的和有见地的。然而,有时人们也会接触到令人反感的内容,如仇恨言论、欺凌和辱骂等。大多数社交平台都有明确的政策反对仇恨言论,因为它创造了一个恐吓和排斥的环境,在某些情况下可能会促进现实世界的暴力。由于用户在当今社交网络上的交互涉及多种模式,如文本、图像和视频,在本文中,我们探索了使用深度多模式技术自动识别仇恨言论的挑战,扩展了以往主要关注文本信号的研究。我们提出了一些融合的方法来整合文本和照片信号。我们表明,用图像嵌入信息增强文本可以立即提高性能,而应用额外的注意力融合方法可以进一步提高性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Deep Multimodal Fusion of Text and Photo for Hate Speech Classification
Interactions among users on social network platforms are usually positive, constructive and insightful. However, sometimes people also get exposed to objectionable content such as hate speech, bullying, and verbal abuse etc. Most social platforms have explicit policy against hate speech because it creates an environment of intimidation and exclusion, and in some cases may promote real-world violence. As users’ interactions on today’s social networks involve multiple modalities, such as texts, images and videos, in this paper we explore the challenge of automatically identifying hate speech with deep multimodal technologies, extending previous research which mostly focuses on the text signal alone. We present a number of fusion approaches to integrate text and photo signals. We show that augmenting text with image embedding information immediately leads to a boost in performance, while applying additional attention fusion methods brings further improvement.
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