Investigation into U.S. Citizen and Non-Citizen Worker Health Insurance and Employment
Annabelle Yao

TL;DR
This study combines statistical analysis and machine learning to uncover hidden socioeconomic disparities among U.S. citizens and non-citizens, revealing significant inequalities in health insurance and employment access.
Contribution
It introduces an integrated approach using statistical tests and clustering techniques to identify distinct demographic groups and systemic inequalities in socioeconomic integration.
Findings
Citizenship status is associated with healthcare insurance access.
Five distinct demographic clusters were identified.
Non-citizens face disproportionate employment and healthcare disparities.
Abstract
Socioeconomic integration is a critical dimension of social equity, yet persistent disparities remain in access to health insurance, education, and employment across different demographic groups. While previous studies have examined isolated aspects of inequality, there is limited research that integrates both statistical analysis and advanced machine learning to uncover hidden structures within population data. This study leverages statistical analysis ( test of independence and Two Proportion Z-Test) and machine learning clustering techniques -- K-Modes and K-Prototypes -- along with t-SNE visualization and CatBoost classification to analyze socioeconomic integration and inequality. Using statistical tests, we identified the proportion of the population with healthcare insurance, quality education, and employment. With this data, we concluded that there was an association…
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Taxonomy
TopicsHealthcare Systems and Reforms · Healthcare Policy and Management · Food Security and Health in Diverse Populations
