TY - JOUR
T1 - Spatial Associations of Anti-Asian Hate on Social Media in the USA During COVID-19
AU - Hohl, Alexander
AU - Huang, Xiao
AU - Han, Daniel
AU - Yao, Alexander
AU - Liu, Alex
AU - Medina, Richard M.
AU - Horse, Aggie Yellow
AU - Wan, Neng
AU - Li, Zhenlong
AU - Wen, Ming
N1 - Publisher Copyright:
© W. Montague Cobb-NMA Health Institute 2025.
PY - 2025
Y1 - 2025
N2 - Since the first confirmed case of COVID-19 in the USA on January 19, 2020, the anti-Asian racist and xenophobic rhetoric began to surge on social media, followed by acts of discrimination and harassment against Asians and Asian Americans. In this study, we identified anti-Asian hate language from 17 million geotagged social media posts between December 2019 and August 2022 using an established keyword-based approach, illustrated their spatial and temporal distributions, and explored relationships between socioeconomic and demographic characteristics of places and hate. We found clusters of hate using the spatial relative risk (SPARR) function and used Bayesian hierarchical modeling to draw associations of hate with multiple covariates. We identified 16 clusters, especially in the southern and eastern USA, where anti-Asian hateful tweets surged around March/April 2020. Increased hate was associated with higher COVID-19 death rates, a higher share of the foreign-born population, and a lower share of the Asian population in poverty compared to the White population. There was no indication that spatial structure affected hate. Our results can inform decision-makers in public health and safety for allocating resources for place-based preparedness and response to the pandemic-induced racism as a public health threat.
AB - Since the first confirmed case of COVID-19 in the USA on January 19, 2020, the anti-Asian racist and xenophobic rhetoric began to surge on social media, followed by acts of discrimination and harassment against Asians and Asian Americans. In this study, we identified anti-Asian hate language from 17 million geotagged social media posts between December 2019 and August 2022 using an established keyword-based approach, illustrated their spatial and temporal distributions, and explored relationships between socioeconomic and demographic characteristics of places and hate. We found clusters of hate using the spatial relative risk (SPARR) function and used Bayesian hierarchical modeling to draw associations of hate with multiple covariates. We identified 16 clusters, especially in the southern and eastern USA, where anti-Asian hateful tweets surged around March/April 2020. Increased hate was associated with higher COVID-19 death rates, a higher share of the foreign-born population, and a lower share of the Asian population in poverty compared to the White population. There was no indication that spatial structure affected hate. Our results can inform decision-makers in public health and safety for allocating resources for place-based preparedness and response to the pandemic-induced racism as a public health threat.
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U2 - 10.1007/s40615-025-02386-w
DO - 10.1007/s40615-025-02386-w
M3 - Article
C2 - 40100613
AN - SCOPUS:105000338634
SN - 2197-3792
JO - Journal of Racial and Ethnic Health Disparities
JF - Journal of Racial and Ethnic Health Disparities
ER -