首页> 美国卫生研究院文献>International Journal of Environmental Research and Public Health >Predicting Psychological Distress Amid the COVID-19 Pandemic by Machine Learning: Discrimination and Coping Mechanisms of Korean Immigrants in the U.S.
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Predicting Psychological Distress Amid the COVID-19 Pandemic by Machine Learning: Discrimination and Coping Mechanisms of Korean Immigrants in the U.S.

机译:通过机器学习在Covid-19大流行中预测心理困扰:韩国移民在美国的歧视和应对机制

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摘要

The current study examined the predictive ability of discrimination-related variables, coping mechanisms, and sociodemographic factors on the psychological distress level of Korean immigrants in the U.S. amid the COVID-19 pandemic. Korean immigrants (both foreign-born and U.S.-born) in the U.S. above the age of 18 were invited to participate in an online survey through purposive sampling. In order to verify the variables predicting the level of psychological distress on the final sample from 42 states (n = 790), the Artificial Neural Network (ANN) analysis, which is able to examine complex non-linear interactions among variables, was conducted. The most critical predicting variables in the neural network were a person’s resilience, experiences of everyday discrimination, and perception that racial discrimination toward Asians has increased in the U.S. since the beginning of the COVID-19 pandemic.
机译:目前的研究审查了与Covid-19大流行中美国韩国移民的心理困扰水平对歧视相关变量,应对机制和社会渗塑因素的预测能力。韩国移民(外国出生和美国出生)在美国超过18岁以上,通过有目的的抽样参加在线调查。为了验证从42个态(n = 790)的最终样本上预测心理困扰水平的变量,进行了人工神经网络(ANN)分析,其能够检查变量之间复杂的非线性相互作用。神经网络中最关键的预测变量是一个人的恢复力,日常歧视的经历,以及对美国的种族歧视对亚洲人的种族歧视增加的看法在Covid-19流行的开始以来。

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