Investigating the Relationship Between Nominal GDP and Adult HIV/AIDS Prevalence Using Machine Learning Methods

Anna Landowska, Marek Landowski
European Research Studies Journal, Volume XXVIII, Issue 4, 1786-1794, 2025
DOI: 10.35808/ersj/4264

Abstract:

Purpose: The aim of this article is to analyze and model the relationship between nominal gross domestic product (GDP) and adult HIV/AIDS prevalence by machine learning methods. Design/Methodology/Approach: The study utilized publicly available GDP and adult HIV/AIDS prevalence data. To achieve the research objective, machine learning and statistical regression models were used. Findings: Using machine learning models and methods, it is possible to model the relationship between nominal GDP and adult HIV/AIDS prevalence. Selected indicators examining the differences between actual and predicted values indicated the best fit for the Ensemble Boosted Trees model. The relationship between nominal GDP and adult HIV/AIDS prevalence is negative and statistically significant. Practical Implications: Possibilities of modeling adult HIV/AIDS prevalence and nominal GDP using machine learning models and methods. Originality/Value: This article makes a significant contribution to the development of knowledge on the relationship between nominal GDP and adult HIV/AIDS prevalence. Furthermore, it demonstrates the feasibility of using machine learning methods to model this relationship.


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