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Identifying the key predictors of positive self-perceptions of aging using machine learning

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  • Joshanloo, Mohsen

Abstract

This study aimed to identify key predictors of self-perceptions of aging (SPA) among older adults by examining a comprehensive set of potential predictors across physical, psychological, social, and demographic domains. Data from over 4000 American adults (mean age ≈ 70) from the Health and Retirement Study were used. A machine learning approach using Random Forest regression was employed to assess the relative importance of 49 potential predictors of SPA. The results revealed that health status, age, and psychological resources emerged as the strongest predictors of SPA. The psychological resources included the positive triad of self-esteem, life satisfaction, and optimism, as well as sense of mastery. Emotional tendencies and experiences, financial satisfaction, personality traits, and social factors had substantially lower predictive power. This study provides a comprehensive understanding of the factors that predict SPA and their relative importance, offering insights for both theory and practice. The results highlight the potential for designing targeted, evidence-based interventions that enhance psychological resources, address health and functional well-being, provide tailored support across the lifespan, and incorporate lifestyle changes to foster positive aging perceptions.

Suggested Citation

  • Joshanloo, Mohsen, 2025. "Identifying the key predictors of positive self-perceptions of aging using machine learning," Social Science & Medicine, Elsevier, vol. 374(C).
  • Handle: RePEc:eee:socmed:v:374:y:2025:i:c:s0277953625003909
    DOI: 10.1016/j.socscimed.2025.118060
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    References listed on IDEAS

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