#WashTheHate: Understanding the Prevalence of Anti-Asian Prejudice on Twitter During the COVID-19 Pandemic

Brittany Wheeler, Seong Jung, M. Barioni, Monika Purohit, Deborah L. Hall, Yasin N. Silva
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引用次数: 2

Abstract

Prejudice and hate directed toward Asian individuals has increased in prevalence and salience during the COVID-19 pandemic, with notable rises in physical violence. Concurrently, as many governments enacted stay-at-home mandates, the spread of anti-Asian content increased in online spaces, including social media. In the present study, we investigated temporal and geographical patterns in social media content relevant to anti-Asian prejudice during the COVID-19 pandemic. Using the Twitter Data Collection API, we queried over 13 million tweets posted between January 30, 2020, and April 30, 2021, for both negative (e.g., #kungflu) and positive (e.g., #stopAAPIhate) hashtags and keywords related to anti-Asian prejudice. In a series of descriptive analyses, we found differences in the frequency of negative and positive keywords based on geographic location. Using burst detection, we also identified distinct increases in negative and positive content in relation to key political tweets and events. These largely exploratory analyses shed light on the role of social media in the expression and proliferation of prejudice as well as positive responses online.
#洗涤仇恨:了解2019冠状病毒病大流行期间推特上反亚洲偏见的盛行
在2019冠状病毒病大流行期间,针对亚洲人的偏见和仇恨在流行和突出程度上有所增加,身体暴力也明显增加。与此同时,随着许多政府颁布居家令,反亚洲内容在网络空间(包括社交媒体)的传播有所增加。在本研究中,我们调查了COVID-19大流行期间与反亚洲偏见相关的社交媒体内容的时间和地理模式。使用推特数据收集API,我们查询了2020年1月30日至2021年4月30日期间发布的1300多万条推文,包括负面(例如,#kungflu)和正面(例如,#stopAAPIhate)标签以及与反亚洲偏见相关的关键词。在一系列描述性分析中,我们发现基于地理位置的消极和积极关键词的频率存在差异。使用突发检测,我们还发现了与关键政治推文和事件相关的负面和正面内容的明显增加。这些主要是探索性的分析揭示了社交媒体在偏见的表达和扩散以及在线积极回应方面的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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