Applying machine learning to understand the role of social-emotional skills on subjective well-being and physical health.

IF 3.8 2区 心理学 Q1 PSYCHOLOGY, APPLIED Applied psychology. Health and well-being Pub Date : 2024-11-11 DOI:10.1111/aphw.12624
Han Meng, Shiyu He, Jiesi Guo, Huiru Wang, Xin Tang
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Abstract

Social-emotional skills are vital for individual development, yet research on which skills most effectively promote students' mental and physical health, particularly from a global perspective, remains limited. This study aims to address this gap by identifying the most important social-emotional skills using global data and machine learning approaches. Data from 61,585 students across nine countries, drawn from the OECD Social-Emotional Skills Survey, were analyzed (NChina = 7246, NFinland = 5482, NColombia = 13,528, NCanada = 7246, NRussia =6434, NTurkey = 5482, NSouth Korea = 7246, NPortugal=6434, and NUSA=6434). Six machine learning techniques-including Random Forest, Logistic Regression, AdaBoost, LightGBM, Artificial Neural Networks, and Support Vector Machines-were employed to identify critical social-emotional skills. The results indicated that the Random Forest algorithm performed best in the prediction models. After controlling for demographic variables, optimism, energy, and stress resistance were identified as the top three social-emotional skills contributing to both subjective well-being and physical health. Additionally, sociability and trust were found to be the fourth most important skills for well-being and physical health, respectively. These findings have significant implications for designing tailored interventions and training programs that enhance students' social-emotional skills and overall health.

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应用机器学习了解社交情感技能对主观幸福感和身体健康的作用。
社交情感技能对个人发展至关重要,但有关哪些技能能最有效地促进学生身心健康的研究仍然有限,尤其是从全球视角来看。本研究旨在利用全球数据和机器学习方法确定最重要的社交情感技能,从而弥补这一不足。研究分析了来自经合组织社会情感技能调查的九个国家的61585名学生的数据(中国=7246人、芬兰=5482人、哥伦比亚=13528人、加拿大=7246人、俄罗斯=6434人、土耳其=5482人、韩国=7246人、葡萄牙=6434人、美国=6434人)。六种机器学习技术(包括随机森林、逻辑回归、AdaBoost、LightGBM、人工神经网络和支持向量机)被用来识别关键的社会情感技能。结果表明,随机森林算法在预测模型中表现最佳。在控制人口统计学变量后,乐观、精力充沛和抗压能力被确定为对主观幸福感和身体健康最有帮助的三种社交情感技能。此外,交际能力和信任感分别被认为是对幸福感和身体健康最重要的第四大技能。这些发现对于设计有针对性的干预措施和培训计划,提高学生的社交情感技能和整体健康水平具有重要意义。
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来源期刊
CiteScore
12.10
自引率
2.90%
发文量
95
期刊介绍: Applied Psychology: Health and Well-Being is a triannual peer-reviewed academic journal published by Wiley-Blackwell on behalf of the International Association of Applied Psychology. It was established in 2009 and covers applied psychology topics such as clinical psychology, counseling, cross-cultural psychology, and environmental psychology.
期刊最新文献
Daily relationship satisfaction and markers of health: Findings from a smartphone-based assessment. Evaluation of a meaning in life intervention applied to work: A randomized clinical trial. Applying machine learning to understand the role of social-emotional skills on subjective well-being and physical health. Subjective well-being of children with special educational needs: Longitudinal predictors using machine learning. Increasing student well-being through a positive psychology intervention: changes in salivary cortisol, depression, psychological well-being, and hope.
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