We investigate predictors of anti-Asian hate among Twitter users throughout COVID-19. With the rise of xenophobia and polarization that has accompanied widespread social media usage in many nations, online hate has become a major social issue, attracting many researchers. Here, we apply natural language processing techniques to characterize social media users who began to post anti-Asian hate messages during COVID-19. We compare two user groups -- those who posted anti-Asian slurs and those who did not -- with respect to a rich set of features measured with data prior to COVID-19 and show that it is possible to predict who later publicly posted anti-Asian slurs. Our analysis of predictive features underlines the potential impact of news media and information sources that report on online hate and calls for further investigation into the role of polarized communication networks and news media.
翻译:我们调查了在COVID-19期间推特用户中反亚洲仇恨的预测数据。随着仇外心理和两极分化的抬头,随着许多国家社会媒体的广泛使用,在线仇恨已成为一个重要的社会问题,吸引了许多研究人员。在这里,我们运用自然语言处理技术来描述在COVID-19期间开始张贴反亚洲仇恨信息的社会媒体用户的特点。我们比较了两个用户群体 -- -- 那些张贴反亚洲短片的人和那些没有公布的人 -- -- 与在COVID-19之前用数据衡量的一套内容丰富的特征相比,并表明有可能预测谁后来公开张贴了反亚洲短片。我们对预测特征的分析强调了报道网上仇恨的新闻媒体和信息来源的潜在影响,并呼吁进一步调查极化通信网络和新闻媒体的作用。