There is extensive evidence linking loneliness to adverse mental health outcomes in adolescents. Yet, research on school-based loneliness predictors is hindered by small sample sizes and a restricted number of variables tested in models. To fill this research gap, this study investigates predictive factors for loneliness at school using data from 60,498 students (30,909 aged 10 and 29,589 aged 15), derived from the SSES survey. Adopting a data-driven approach, we employ 3 machine learning algorithms (Elastic Net, Random Forests, and XGBoost) alongside eXplainable Artificial Intelligence (XAI) techniques to analyze the relationship between a broad range of psychosocial variables and loneliness. Results showed that bullying is the strongest negative predictor of loneliness for 10-year-olds, its influence persisting but getting dampened in 15-year-olds. In contrast, two personality traits, namely extraversion and emotional stability, emerge as key protective factors of loneliness for both 10 and 15-year-olds. Additional important predictors of loneliness include low-quality relationships with parents or friends and high screen use. By integrating classical and interpretable machine learning techniques, this study provides a nuanced understanding of the relative importance of a large number of predictors of loneliness at school, also taking into account nonlinear relationships within the data.

Predictors of loneliness at school: An explainable artificial intelligence approach on a large-scale cross-cultural assessment / Zasso, S.; De Marco, L.; Sette, S.; Stella, M.; Perinelli, E.. - In: PERSONALITY AND INDIVIDUAL DIFFERENCES. - ISSN 0191-8869. - 246:(2025). [10.1016/j.paid.2025.113346]

Predictors of loneliness at school: An explainable artificial intelligence approach on a large-scale cross-cultural assessment

Zasso S.
Primo
;
De Marco L.;Sette S.;
2025

Abstract

There is extensive evidence linking loneliness to adverse mental health outcomes in adolescents. Yet, research on school-based loneliness predictors is hindered by small sample sizes and a restricted number of variables tested in models. To fill this research gap, this study investigates predictive factors for loneliness at school using data from 60,498 students (30,909 aged 10 and 29,589 aged 15), derived from the SSES survey. Adopting a data-driven approach, we employ 3 machine learning algorithms (Elastic Net, Random Forests, and XGBoost) alongside eXplainable Artificial Intelligence (XAI) techniques to analyze the relationship between a broad range of psychosocial variables and loneliness. Results showed that bullying is the strongest negative predictor of loneliness for 10-year-olds, its influence persisting but getting dampened in 15-year-olds. In contrast, two personality traits, namely extraversion and emotional stability, emerge as key protective factors of loneliness for both 10 and 15-year-olds. Additional important predictors of loneliness include low-quality relationships with parents or friends and high screen use. By integrating classical and interpretable machine learning techniques, this study provides a nuanced understanding of the relative importance of a large number of predictors of loneliness at school, also taking into account nonlinear relationships within the data.
2025
adolescence; explainable artificial intelligence; loneliness; machine learning; personality traits; psychosocial skills; school
01 Pubblicazione su rivista::01a Articolo in rivista
Predictors of loneliness at school: An explainable artificial intelligence approach on a large-scale cross-cultural assessment / Zasso, S.; De Marco, L.; Sette, S.; Stella, M.; Perinelli, E.. - In: PERSONALITY AND INDIVIDUAL DIFFERENCES. - ISSN 0191-8869. - 246:(2025). [10.1016/j.paid.2025.113346]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1748945
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