Abusive Language on Social Media Through the Legal Looking Glass

Thales Bertaglia, A. Grigoriu, M. Dumontier, Gijs van Dijck
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引用次数: 4

Abstract

Abusive language is a growing phenomenon on social media platforms. Its effects can reach beyond the online context, contributing to mental or emotional stress on users. Automatic tools for detecting abuse can alleviate the issue. In practice, developing automated methods to detect abusive language relies on good quality data. However, there is currently a lack of standards for creating datasets in the field. These standards include definitions of what is considered abusive language, annotation guidelines and reporting on the process. This paper introduces an annotation framework inspired by legal concepts to define abusive language in the context of online harassment. The framework uses a 7-point Likert scale for labelling instead of class labels. We also present ALYT – a dataset of Abusive Language on YouTube. ALYT includes YouTube comments in English extracted from videos on different controversial topics and labelled by Law students. The comments were sampled from the actual collected data, without artificial methods for increasing the abusive content. The paper describes the annotation process thoroughly, including all its guidelines and training steps.
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透过法律的镜子看社交媒体上的辱骂语言
在社交媒体平台上,辱骂性语言日益成为一种现象。它的影响可以超越网络环境,对用户造成精神或情感压力。用于检测滥用的自动工具可以缓解这个问题。在实践中,开发自动化方法来检测辱骂性语言依赖于高质量的数据。然而,目前在该领域缺乏创建数据集的标准。这些标准包括对被认为是滥用语言的定义、注释指南和过程报告。本文引入了一个受法律概念启发的注释框架来定义网络骚扰背景下的辱骂性语言。该框架使用7点李克特量表来标记,而不是分类标签。我们也提出ALYT -在YouTube上的辱骂语言的数据集。ALYT包括从YouTube上不同争议话题的视频中提取的英语评论,并由法律学生标记。评论是从实际收集的数据中抽取的,没有人为增加滥用内容的方法。本文详细地描述了标注过程,包括所有的指导方针和训练步骤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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