Since the proliferation of social media usage, hate speech has become a major crisis. Hateful content can spread quickly and create an environment of distress and hostility. Further, what can be considered hateful is contextual and varies with time. While online hate speech reduces the ability of already marginalised groups to participate in discussion freely, offline hate speech leads to hate crimes and violence against individuals and communities. The multifaceted nature of hate speech and its real-world impact have already piqued the interest of the data mining and machine learning communities. Despite our best efforts, hate speech remains an evasive issue for researchers and practitioners alike. This article presents methodological challenges that hinder building automated hate mitigation systems. These challenges inspired our work in the broader area of combating hateful content on the web. We discuss a series of our proposed solutions to limit the spread of hate speech on social media.
翻译:自社交媒体使用量激增以来,仇恨言论已成为一个重大危机。仇恨内容可以迅速传播,并营造一种危难和敌意的环境。此外,可以视为仇恨的内容是背景的,且随时间变化而变化。在线仇恨言论削弱了已经处于边缘地位的群体自由参与讨论的能力,而网上仇恨言论则导致针对个人和社区的仇恨犯罪和暴力。仇恨言论的多面性及其真实世界影响已经激起了数据挖掘和机器学习社区的兴趣。尽管我们尽了最大努力,但仇恨言论仍然是研究人员和从业人员的回避问题。这篇文章提出了阻碍建立自动减少仇恨系统的方法挑战。这些挑战激励我们在打击网上仇恨内容的更广泛领域开展工作。我们讨论了一系列拟议解决方案,以限制仇恨言论在社会媒体上传播。