Assessing the informative value of macroeconomic indicators for public health forecasting
- URL: http://arxiv.org/abs/2601.15514v1
- Date: Wed, 21 Jan 2026 22:54:49 GMT
- Title: Assessing the informative value of macroeconomic indicators for public health forecasting
- Authors: Shome Chakraborty, Fardil Khan, Soutik Ghosal,
- Abstract summary: We examine whether selected macroeconomic indicators contain predictive information for several capacity-related public health targets.<n>We find that macroeconomic indicators provide a consistent and reproducible predictive signal for some public health targets.<n>These findings suggest that macroeconomic indicators may serve as useful upstream signals for digital public health monitoring.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Macroeconomic conditions influence the environments in which health systems operate, yet their value as leading signals of health system capacity has not been systematically evaluated. In this study, we examine whether selected macroeconomic indicators contain predictive information for several capacity-related public health targets, including employment in the health and social assistance workforce, new business applications in the sector, and health care construction spending. Using monthly U.S. time series data, we evaluate multiple forecasting approaches, including neural network models with different optimization strategies, generalized additive models, random forests, and time series models with exogenous macroeconomic indicators, under alternative model fitting designs. Across evaluation settings, we find that macroeconomic indicators provide a consistent and reproducible predictive signal for some public health targets, particularly workforce and infrastructure measures, while other targets exhibit weaker or less stable predictability. Models emphasizing stability and implicit regularization tend to perform more reliably during periods of economic volatility. These findings suggest that macroeconomic indicators may serve as useful upstream signals for digital public health monitoring, while underscoring the need for careful model selection and validation when translating economic trends into health system forecasting tools.
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