Using machine learning to explore the predictors of life satisfaction trajectories in older adults.

IF 3.8 2区 心理学 Q1 PSYCHOLOGY, APPLIED
Applied psychology. Health and well-being Pub Date : 2024-11-01 Epub Date: 2024-08-14 DOI:10.1111/aphw.12579
Honghui Chen, Xueting Zhang, Wenjun Bian
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引用次数: 0

Abstract

Life satisfaction is vital for older adults' well-being, impacting various life aspects. It is dynamic, necessitating nuanced approaches to capture its trajectories accurately. This study aimed to explore the diverse trajectories and predictors of life satisfaction among older adults in China using longitudinal data from the China Health and Retirement Longitudinal Study. Latent class growth modeling and growth mixture modeling were employed to identify distinct trajectories of life satisfaction. Machine learning (ML) models were developed to predict different trajectories and identify important predictors of different trajectories. Four distinct trajectories of life satisfaction were identified, showcasing nuanced patterns of life satisfaction that changed over time. ML models, especially random forest, effectively predicted these trajectories. Emotional experiences (particularly the frequency of happiness and loneliness), body mass index, and self-report health emerged as significant predictors of different life satisfaction trajectories. Our finding revealed the importance of focusing on individuals or groups with consistently low life satisfaction and paying more attention to mental and physical health predictors. Our models might guide future targeted preventative treatments.

利用机器学习探索老年人生活满意度轨迹的预测因素。
生活满意度对老年人的福祉至关重要,影响到生活的各个方面。生活满意度是动态的,需要采用细致入微的方法才能准确捕捉其变化轨迹。本研究旨在利用中国健康与退休纵向研究(China Health and Retirement Longitudinal Study)的纵向数据,探索中国老年人生活满意度的不同轨迹和预测因素。研究采用了潜类增长模型和增长混合模型来识别生活满意度的不同轨迹。建立了机器学习(ML)模型来预测不同的生活满意度轨迹,并识别不同轨迹的重要预测因子。我们确定了四种不同的生活满意度轨迹,展示了生活满意度随时间变化的细微模式。ML 模型,尤其是随机森林模型,有效地预测了这些轨迹。情感体验(尤其是快乐和孤独的频率)、体重指数和自我报告的健康状况成为不同生活满意度轨迹的重要预测因素。我们的发现揭示了关注生活满意度持续较低的个人或群体以及更多关注身心健康预测因素的重要性。我们的模型可以为未来有针对性的预防治疗提供指导。
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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.
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