Using machine learning to explore the efficacy of administrative variables in prediction of subjective-wellbeing outcomes in New Zealand
- PMID: 40000735
- PMCID: PMC11861262
- DOI: 10.1038/s41598-025-90852-0
Using machine learning to explore the efficacy of administrative variables in prediction of subjective-wellbeing outcomes in New Zealand
Abstract
The growing acknowledgment of population wellbeing as a key indicator of societal prosperity has propelled governments worldwide to devise policies aimed at improving their citizens' overall wellbeing. In New Zealand, the General Social Survey provides wellbeing metrics for a representative subset of the population (~ 10,000 individuals). However, this sample size only provides a surface-level understanding of the country's wellbeing landscape, limiting our ability to comprehensively assess the impacts of governmental policies, particularly on smaller subgroups who may be of high policy interest. To overcome this challenge, comprehensive population-level wellbeing data is imperative. Leveraging New Zealand's Integrated Data Infrastructure, this study developed and validated the efficacy of three predictive models-Stepwise Linear Regression, Elastic Net Regression, and Random Forest-for predicting subjective wellbeing outcomes (life satisfaction, life worthwhileness, family wellbeing, and mental wellbeing) using census-level administrative variables as predictors. Our results demonstrated the Random Forest model's effectiveness in predicting subjective wellbeing, reflected in low RMSE values (~ 1.5). Nonetheless, the models exhibited low R2 values, suggesting limited explanatory capacity for the nuanced variability in outcome variables. While achieving reasonable predictive accuracy, our findings underscore the necessity for further model refinements to enhance the prediction of subjective wellbeing outcomes.
Keywords: Administrative data; Census; Machine learning; Predictive models; Subjective wellbeing.
© 2025. The Author(s).
Conflict of interest statement
Declarations. Competing interests: The authors declare no competing interests.
Similar articles
-
Does lifelong learning matter for the subjective wellbeing of the elderly? A machine learning analysis on Singapore data.PLoS One. 2024 Jun 5;19(6):e0303478. doi: 10.1371/journal.pone.0303478. eCollection 2024. PLoS One. 2024. PMID: 38837996 Free PMC article.
-
Subjective wellbeing, suicide and socioeconomic factors: an ecological analysis in Hong Kong.Epidemiol Psychiatr Sci. 2019 Feb;28(1):112-130. doi: 10.1017/S2045796018000124. Epub 2018 Apr 10. Epidemiol Psychiatr Sci. 2019. PMID: 29633681 Free PMC article.
-
Promoting happiness: the malleability of individual and societal subjective wellbeing.Int J Psychol. 2013;48(3):159-76. doi: 10.1080/00207594.2013.779379. Epub 2013 Apr 4. Int J Psychol. 2013. PMID: 23551025 Review.
-
Predicting Prefecture-Level Well-Being Indicators in Japan Using Search Volumes in Internet Search Engines: Infodemiology Study.J Med Internet Res. 2024 Nov 11;26:e64555. doi: 10.2196/64555. J Med Internet Res. 2024. PMID: 39527805 Free PMC article.
-
The 2023 Latin America report of the Lancet Countdown on health and climate change: the imperative for health-centred climate-resilient development.Lancet Reg Health Am. 2024 Apr 23;33:100746. doi: 10.1016/j.lana.2024.100746. eCollection 2024 May. Lancet Reg Health Am. 2024. PMID: 38800647 Free PMC article. Review.
References
-
- Coscieme, L. et al. Overcoming the myths of mainstream economics to enable a new wellbeing economy. Sustainability11(16), 4374 (2019).
-
- Treasury, N. Z. (ed.) The Wellbeing Budget 2019 (Wellington, 2019).
-
- Jahoda, M., Current concepts of positive mental health. Current concepts of positive mental health. Basic Books. xxi, 136-xxi, 136 (1958).
-
- Seligman, M.E.P., Authentic Happiness: Using the New Positive Psychology to Realize Your Potential for Lasting Fulfillment (Free Press. xiv, 321-xiv, 321, 2002).
MeSH terms
LinkOut - more resources
Full Text Sources
Medical