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http://dx.doi.org/10.5351/KJAS.2014.27.6.933

Bayesian Spatiotemporal Modeling in Epidemiology: Hepatitis A Incidence Data in Korea  

Choi, Jungsoon (Department of Mathematics, Hanyang University)
Publication Information
The Korean Journal of Applied Statistics / v.27, no.6, 2014 , pp. 933-945 More about this Journal
Abstract
Bayesian spatiotemporal analysis is of considerable interest to epidemiological applications because health data is collected over space-time with complicated dependency structures. A basic concept in spatiotemporal modeling is introduced in this paper to analyze space-time disease data. The paper reviews a range of Bayesian spatiotemporal models and analyzes Hepatitis A data in Korea.
Keywords
Spatiotemporal Model; Bayesian inference; Hepatitis A;
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