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랜덤포레스트 머신러닝 기반 초등학생과 중학생의 전반적 행복감 예측요인 비교A comparison of predictive factors for overall happiness in elementary and middle school students using random forest machine learning

Other Titles
A comparison of predictive factors for overall happiness in elementary and middle school students using random forest machine learning
Authors
이세라김현수
Issue Date
Dec-2025
Publisher
한국아동심리치료학회
Keywords
초등학생; 중학생; 전반적 행복감; 랜덤포레스트; 한국아동패널; elementary school students; middle school students; overall; happiness; random forest; PSKC
Citation
한국아동심리치료학회지, v.20, no.4, pp 55 - 74
Pages
20
Indexed
KCI
Journal Title
한국아동심리치료학회지
Volume
20
Number
4
Start Page
55
End Page
74
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/212502
DOI
10.23931/kacp.2025.20.4.55
ISSN
1975-9290
2508-1470
Abstract
This study utilized the random forest machine learning technique to investigate predictors of overall happiness in elementary and middle school students and compared differences between age groups. Using longitudinal data from the 2020 and 2022 Korean Children’s Panel Survey (PSKC), predictive models were built and the importance of various child and parent factors was analyzed. The results showed that elementary students’ happiness was rated at 90.0%, while the corresponding rating for middle school students was 85.7%, indicating higher happiness among younger students. To predict overall happiness, one model for elementary students and three for middle school students (single-time-point, delta, and time-weighted) were compared. Across all models, school adaptation and self-esteem were significant predictors. However, key predictors differed by age. For elementary students, a sense of community and peer attachment were important. In contrast, the single-time-point model for middle school students emphasized executive function difficulties and sleep duration. The delta model highlighted changes in school change, while the time-weighted model showed greater influence from peer attachment and various parent factors. Overall, this study demonstrates the usefulness of machine learning in predicting student happiness and highlights the need for tailored, age-specific interventions for educational and developmental policy planning in future research.
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