Modeling National Latent Socioeconomic Health and Examination of Policy Effects via Causal Inference
F. Swen Kuh, Grace S. Chiu, Anton H. Westveld

TL;DR
This paper introduces a Bayesian hierarchical model combining latent health indices, spatial dependence, and causal inference to evaluate policy impacts on national socioeconomic health.
Contribution
It develops a novel integrated framework that models latent health, spatial effects, and policy impacts simultaneously, advancing beyond traditional GDP or observable metric-based indices.
Findings
The model quantifies the impact of maternity leave policy on national health.
It accounts for spatial dependencies among countries in health assessments.
Results demonstrate the effectiveness of the causal Bayesian approach.
Abstract
This research develops a socioeconomic health index for nations through a model-based approach which incorporates spatial dependence and examines the impact of a policy through a causal modeling framework. As the gross domestic product (GDP) has been regarded as a dated measure and tool for benchmarking a nation's economic performance, there has been a growing consensus for an alternative measure---such as a composite `wellbeing' index---to holistically capture a country's socioeconomic health performance. Many conventional ways of constructing wellbeing/health indices involve combining different observable metrics, such as life expectancy and education level, to form an index. However, health is inherently latent with metrics actually being observable indicators of health. In contrast to the GDP or other conventional health indices, our approach provides a holistic quantification of…
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Taxonomy
TopicsHealth disparities and outcomes · Global Health Care Issues · Spatial and Panel Data Analysis
