The last decade has witnessed a surge in the interaction of people through social networking platforms. While there are several positive aspects of these social platforms, the proliferation has led them to become the breeding ground for cyber-bullying and hate speech. Recent advances in NLP have often been used to mitigate the spread of such hateful content. Since the task of hate speech detection is usually applicable in the context of social networks, we introduce CRUSH, a framework for hate speech detection using user-anchored self-supervision and contextual regularization. Our proposed approach secures ~ 1-12% improvement in test set metrics over best performing previous approaches on two types of tasks and multiple popular english social media datasets.
翻译:在过去的十年里,人们通过社交网络平台的互动急剧增加,尽管这些社交平台有一些积极方面,但扩散导致这些平台成为网络欺凌和仇恨言论的温床。国家语言平台最近的进展常常被用来缓解这种仇恨内容的传播。由于仇恨言论的发现任务通常适用于社交网络,我们引入了CRUSH,这是一个利用用户自视和背景规范来检测仇恨言论的框架。我们建议的方法确保了在测试标准方面改进到1至12 %, 以衡量先前在两类任务和多种受欢迎的英国社交媒体数据集方面的最佳表现。