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Ethnic Differences in Response to COVID-19: A Study of American-Asian and Non-Asian College Students.

Yijun ZhaoYi DingHayet ChekiredYing WuQian Wang
Published in: Behavioral sciences (Basel, Switzerland) (2023)
Asian American students have experienced additional physical and emotional hardships associated with the COVID-19 pandemic due to increased xenophobic and anti-Asian discrimination. This study investigates different coping patterns and risk factors affecting Asian and non-Asian college students in response to COVID-19 challenges by studying the differences in their responses within four domains after the onset of the pandemic: academic adjustment, emotional adjustment, social support, and discriminatory impacts related to COVID-19. We first employed a machine learning approach to identify well-adjusted and poorly adjusted students in each of the four domains for the Asian and non-Asian groups, respectively. Next, we applied the SHAP method to study the principal risk factors associated with each classification task and analyzed the differences between the two groups. We based our study on a proprietary survey dataset collected from U.S. college students during the initial peak of the pandemic. Our findings provide insights into the risk factors and their directional impact affecting Asian and non-Asian students' well-being during the pandemic. The results could help universities establish customized strategies to support these two groups of students in this era of uncertainty. Applications for international communities are discussed.
Keyphrases
  • coronavirus disease
  • sars cov
  • social support
  • machine learning
  • risk factors
  • deep learning
  • mental health
  • high school
  • respiratory syndrome coronavirus
  • drug induced