论文标题
种族主义是一种病毒:在危机期间,社交媒体中的反亚洲仇恨和反语
Racism is a Virus: Anti-Asian Hate and Counterspeech in Social Media during the COVID-19 Crisis
论文作者
论文摘要
Covid-19的传播激发了针对亚洲社区的社交媒体的种族主义和仇恨。但是,关于种族仇恨在大流行期间的传播以及反语在减轻这种传播中的作用知之甚少。在这项工作中,我们研究了反亚洲仇恨言论通过Twitter镜头的演变和传播。我们创建了Covid Hate,这是最大的反亚洲仇恨和反语的数据集,跨越了14个月,其中包含超过2.06亿条推文,以及一个超过1.27亿个节点的社交网络。通过创建一个新颖的手持标签数据集,该数据集的3,355条推文,我们训练了一个文本分类器,以识别仇恨和反复推文,以达到平均宏F1得分为0.832。使用此数据集,我们对推文和用户进行纵向分析。对社交网络的分析表明,可恶的和反语言用户相互互动和广泛互动,而不是生活在孤立的两极分化社区中。我们发现,在暴露于仇恨内容之后,节点很可能会变得仇恨。值得注意的是,反语言消息可能会阻止用户转向仇恨,并有可能提出解决网络和社交媒体平台上的仇恨解决方案。数据和代码在http://claws.cc.gatech.edu/covid上。
The spread of COVID-19 has sparked racism and hate on social media targeted towards Asian communities. However, little is known about how racial hate spreads during a pandemic and the role of counterspeech in mitigating this spread. In this work, we study the evolution and spread of anti-Asian hate speech through the lens of Twitter. We create COVID-HATE, the largest dataset of anti-Asian hate and counterspeech spanning 14 months, containing over 206 million tweets, and a social network with over 127 million nodes. By creating a novel hand-labeled dataset of 3,355 tweets, we train a text classifier to identify hate and counterspeech tweets that achieves an average macro-F1 score of 0.832. Using this dataset, we conduct longitudinal analysis of tweets and users. Analysis of the social network reveals that hateful and counterspeech users interact and engage extensively with one another, instead of living in isolated polarized communities. We find that nodes were highly likely to become hateful after being exposed to hateful content. Notably, counterspeech messages may discourage users from turning hateful, potentially suggesting a solution to curb hate on web and social media platforms. Data and code is at http://claws.cc.gatech.edu/covid.