Affiliation:
1. Marsal Family School of Education and Department of Psychology University of Michigan Ann Arbor Michigan USA
2. Department of Educational and Counselling Psychology, Faculty of Education McGill University Montreal Quebec Canada
Abstract
AbstractBackgroundLife satisfaction is a key component of students' subjective well‐being due to its impact on academic achievement and lifelong health. Although previous studies have investigated life satisfaction through different lenses, few of them employed machine learning (ML) approaches.ObjectiveUsing ML algorithms, the current study predicts secondary students' life satisfaction from individual‐level variables.MethodTwo supervised ML models, random forest (RF) and k‐nearest neighbours (KNN), were developed based on the UK data and the Japan data in PISA 2018.ResultsFindings show that (1) both models yielded better performance on the UK data than on the Japanese data; (2) the RF model outperformed the KNN model in predicting students' life satisfaction; (3) meaning in life, student competition, teacher support, exposure to bullying and ICT resources at home and at school played important roles in predicting students' life satisfaction.ConclusionsTheoretically, this study highlights the multi‐dimensional nature of life satisfaction and identifies several key predictors. Methodologically, this study is the first to use ML to explore the predictors of life satisfaction. Practically, it serves as a reference for improving secondary students' life satisfaction.
Funder
Alberta Innovates
Natural Sciences and Engineering Research Council of Canada
Social Sciences and Humanities Research Council of Canada
Subject
Developmental and Educational Psychology,Education
Cited by
2 articles.
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