Student well-being and mathematical literacy performance in PISA 2018: a machine-learning approach.

Autor: Arroyo Resino, Delia, Constante-Amores, Alexander, Gil Madrona, Pedro, Carrillo López, Pedro José
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Zdroj: Educational Psychology; Feb-Apr2024, Vol. 44 Issue 3, p340-357, 18p
Abstrakt: One of the goals of the educational system is to promote the well-being of students due to its associated on their academic performance. This research aims to shed light on the main role of well-being variables (introduced by PISA 2018 for the first time, as far as our knowledge) in the mathematical competence throughout of the PISA 2018 evaluation with a sample of 35,943 Spanish students. Students ranged in age from 15 to 16 years old (SD = 0.288). Supervised learning techniques such as decision tree methodology, random forest, and a linear hierarchical model have been used throughout this study. The criterion variable was competency performance in mathematics, while the independent variables consisted of a total of 83 items extracted from the student well-being questionnaire. These predictors are grouped into five domains: physical, psychological, material, cognitive and social. We have proved that well-being plays an important role in mathematical understanding in PISA 2018. Specifically, social well-being is the most important variable in our study. To conclude, we observe that social well-being, contextualised in terms of the relationships that the students maintain with their teachers, peers and families, plays a detrimental role in mathematics achievement. [ABSTRACT FROM AUTHOR]
Databáze: Complementary Index