Examining the Structure of Spatial Health Effects in Germany Using Hierarchical Bayes Models

Referierte Aufsätze Web of Science

Peter Eibich, Nicolas R. Ziebarth

In: Regional Science & Urban Economics 49 (2014), S. 305-320

Abstract

This paper uses Hierarchical Bayes Models to model and estimate spatial health effects in Germany. We combine rich individual-level household panel data from the German SOEP with administrative county-level data to estimate spatial county-level health dependencies. As dependent variable we use the generic, continuous, and quasi-objective SF12 health measure. We find strong and highly significant spatial dependencies and clusters. The strong and systematic county-level impact is equivalent to 0.35 standard deviations in health. Even 20 years after German reunification, we detect a clear spatial East–West health pattern that equals an age impact on health of up to 5 life years for a 40-year old.



JEL-Classification: C21;C11;I12;I14;I18
Keywords: Spatial health effects, Hierarchical Bayes Models, Germany, SOEP, SF12
DOI:
http://dx.doi.org/10.1016/j.regsciurbeco.2014.06.005

Frei zugängliche Version: (econstor)
http://hdl.handle.net/10419/106944

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