基于文本和视觉线索的网络性别歧视模因检测

E. Fersini, F. Gasparini, S. Corchs
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引用次数: 20

摘要

近年来,人们显然对妇女在社会中的作用感兴趣,特别是对我们对待和提及她们的方式感兴趣。然而,性别歧视作为一种对女性的歧视形式,在网络上以非常高的频率呈指数级传播,尤其是以模因的形式传播。模因通常由图片和文字组成,可以传达从对女性的刻板印象、羞辱、物化到暴力等信息。为了反击这一现象,本文通过研究单模态和多模态方法来了解文本和视觉线索的贡献,首次深入研究了性别歧视模因的自动检测领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Sexist MEME On The Web: A Study on Textual and Visual Cues
In recent years, it is evident the interest in the role of women within society and, in particular, the way we approach and refer to them. However, sexism as a form of discrimination towards women spread exponentially through the web and at a very high frequency, especially in the form of memes. Memes, which are typically composed of pictorial and textual components, can convey messages ranging from women stereotype, shaming, objectification to violence. In order to counterattack this phenomenon, in this paper we give a first insight in the field of automatic detection of sexist memes, by investigating both unimodal and multimodal approaches to understand the contribution of textual and visual cues.
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