Quora中的反语篇:新冠肺炎大流行前后与机器学习和深度学习方法的比较

IF 2.1 3区 社会学 Q1 CRIMINOLOGY & PENOLOGY Race and Justice Pub Date : 2022-10-30 DOI:10.1177/21533687221134690
S. Jang, Sangpil Youm, Y. J. Yi
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引用次数: 3

摘要

目前的研究试图通过分析Quora上的大数据来比较新冠肺炎大流行前后的反亚裔言论,Quora是最常用的社区驱动知识网站之一。我们在2010年至2021年间从Quora问答中创建了两个关于“亚洲人”和“反亚洲人”的数据集。共分析了1477个问题和5346个答案,数据集分为两个时间段:新冠肺炎大流行之前和期间。我们进行了基于机器学习的主题建模和基于深度学习的单词嵌入(Word2Vec)。在疫情之前,身体差异和种族主义的话题很普遍,而在疫情之后,仇恨犯罪、制止亚洲仇恨犯罪的必要性以及亚洲团结运动的必要性出现了。最重要的是,亚洲人和黑人之间的语义相似性变得更紧密,而亚洲人和其他种族/族裔群体之间的相似性则减少了。负面和激进语言的出现,在疫情爆发后显著增加,亚洲人和白人之间的语义距离大大扩大,表明这两个种族之间的关系已经减弱。研究结果表明,在疫情期间,需要开展长期的运动或教育系统来缓解种族紧张局势。
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Anti-Asian Discourse in Quora: Comparison of Before and During the COVID-19 Pandemic with Machine- and Deep-Learning Approaches
The current study attempts to compare anti-Asian discourse before and during the COVID-19 pandemic by analyzing big data on Quora, one of the most frequently used community-driven knowledge sites. We created two datasets regarding “Asians” and “anti-Asians” from Quora questions and answers between 2010 and 2021. A total of 1,477 questions and 5,346 answers were analyzed, and the datasets were divided into two time periods: before and during the COVID-19 pandemic. We conducted machine-learning-based topic modeling and deep-learning-based word embedding (Word2Vec). Before the pandemic, the topics of physical difference and racism were prevalent, whereas, after the pandemic, the topics of hate crime, the need to stop Asian hate crimes, and the need for the Asian solidarity movement emerged. Above all, the semantic similarity between Asian and Black people became closer, while the similarity between Asian people and other racial/ethnic groups was diminished. The emergence of negative and radical language, which increased saliently after the outbreak of the pandemic, and the considerably wider semantic distance between Asian and White people indicates that the relationship between the two races has been weakened. The findings suggest a long-term campaign or education system to reduce racial tensions during the pandemic.
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来源期刊
Race and Justice
Race and Justice Multiple-
CiteScore
5.50
自引率
19.00%
发文量
37
期刊介绍: Race and Justice: An International Journal serves as a quarterly forum for the best scholarship on race, ethnicity, and justice. Of particular interest to the journal are policy-oriented papers that examine how race/ethnicity intersects with justice system outcomes across the globe. The journal is also open to research that aims to test or expand theoretical perspectives exploring the intersection of race/ethnicity, class, gender, and justice. The journal is open to scholarship from all disciplinary origins and methodological approaches (qualitative and/or quantitative).Topics of interest to Race and Justice include, but are not limited to, research that focuses on: Legislative enactments, Policing Race and Justice, Courts, Sentencing, Corrections (community-based, institutional, reentry concerns), Juvenile Justice, Drugs, Death penalty, Public opinion research, Hate crime, Colonialism, Victimology, Indigenous justice systems.
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