Exploring Factors That Affected Student Well-Being during the COVID-19 Pandemic: A Comparison of Data-Mining Approaches

被引:5
作者
Yurekli, Hulya [1 ]
Yigit, Oykum Esra [1 ]
Bulut, Okan [2 ]
Lu, Min [3 ]
Oz, Ersoy [1 ]
机构
[1] Yildiz Tech Univ, Dept Stat, TR-34220 Istanbul, Turkey
[2] Univ Alberta, Ctr Res Appl Measurement & Evaluat, Edmonton, AB T6G 2G5, Canada
[3] Univ Miami, Miler Sch Med, Dept Publ Hlth Sci, Miami, FL 33136 USA
关键词
student well-being; data mining; educational disruption; COVID-19; school closures;
D O I
10.3390/ijerph191811267
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
COVID-19-related school closures caused unprecedented and prolonged disruption to daily life, education, and social and physical activities. This disruption in the life course affected the well-being of students from different age groups. This study proposed analyzing student well-being and determining the most influential factors that affected student well-being during the COVID-19 pandemic. With this aim, we adopted a cross-sectional study designed to analyze the student data from the Responses to Educational Disruption Survey (REDS) collected between December 2020 and July 2021 from a large sample of grade 8 or equivalent students from eight countries (n = 20,720), including Burkina Faso, Denmark, Ethiopia, Kenya, the Russian Federation, Slovenia, the United Arab Emirates, and Uzbekistan. We first estimated a well-being IRT score for each student in the REDS student database. Then, we used 10 data-mining approaches to determine the most influential factors that affected the well-being of students during the COVID-19 outbreak. Overall, 178 factors were analyzed. The results indicated that the most influential factors on student well-being were multifarious. The most influential variables on student well-being were students' worries about contracting COVID-19 at school, their learning progress during the COVID-19 disruption, their motivation to learn when school reopened, and their excitement to reunite with friends after the COVID-19 disruption.
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页数:16
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