Back to Search Start Over

Using machine learning to identify early predictors of adolescent emotion regulation development

Authors :
Van Lissa, C.J.
Beinhauer, L.
Branje, S.
Meeus, W.H.J.
Van Lissa, C.J.
Beinhauer, L.
Branje, S.
Meeus, W.H.J.
Source :
Journal of Research on Adolescence vol.33 (2023) nr.3 p.870-889 [ISSN 1050-8392]
Publication Year :
2023

Abstract

As 20% of adolescents develop emotion regulation difficulties, it is important to identify important early predictors thereof. Using the machine learning algorithm SEM-forests, we ranked the importance of (87) candidate variables assessed at age 13 in predicting quadratic latent trajectory models of emotion regulation development from age 14 to 18. Participants were 497 Dutch families. Results indicated that the most important predictors were individual differences (e.g., in personality), aspects of relationship quality and conflict behaviors with parents and peers, and internalizing and externalizing problems. Relatively less important were demographics, bullying, delinquency, substance use, and specific parenting practices-although negative parenting practices ranked higher than positive ones. We discuss implications for theory and interventions, and present an open source risk assessment tool, ERRATA.

Details

Database :
OAIster
Journal :
Journal of Research on Adolescence vol.33 (2023) nr.3 p.870-889 [ISSN 1050-8392]
Notes :
DOI: 10.1111/jora.12845, Journal of Research on Adolescence vol.33 (2023) nr.3 p.870-889 [ISSN 1050-8392], English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1419941687
Document Type :
Electronic Resource