悲剧(事件)
种族主义
突出
批评
社会学
社会化媒体
潜在Dirichlet分配
主题(计算)
白色(突变)
主题模型
集合(抽象数据类型)
社会运动
社交网络(社会语言学)
媒体研究
犯罪学
政治学
性别研究
计算机科学
政治
法学
社会科学
人工智能
万维网
基因
化学
程序设计语言
生物化学
标识
DOI:10.1177/20563051221146182
摘要
With large, representative, and comparable data scraped from Twitter, this study tries to provide comprehensive understanding of the salient topics under #BlackLivesMatter and #StopAsianHate online movements. Employing semi-supervised Latent Dirichlet allocation topic modeling, five topics have been extracted from 3-month tweets data after George Floyd’s death in 2020. Six topics have been extracted from 3-month tweets data after the Atlantic spa shooting tragedy in 2021. Both movements reflected salient topics on the tragedy that just took place during the data collection period. In addition, general violence, collective actions, community support, and criticism on White racism are all identified as important issues of the counter-racism discourse flooded on social media. In addition, our study explores the network agenda-setting effects of hashtag activisms. The results show that issue networks of the first 2 weeks’ counter-racism discourses after the crime could not set network agenda for the next 2 weeks’ discourses. However, the network agenda-setting effects became significant after the first 2 weeks and stayed stable as time went on. In addition, we do not find a significant relationship between issue networks of the two movements under study. It counter-argues any assumption that one counter-racism movement online could trigger similar movements among different groups.
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