Application of Dynamic Poisson Models to Japanese Cancer Mortality Data
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Nov 1, 2008
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Shuichi Midorikawa
Tokyo University of Science
Etsuo Miyaoka
Tokyo University of Science
Bruce Smith
Dalhousie University
Abstract
A dynamic Poisson model is used with a Bayesian approach to modeling to predict cancer mortality. The complexity of the posterior distribution prohibits direct evaluation of the posterior, and so parameters are estimated by using a Markov Chain Monte Carlo method. The model is applied to analyze lung and stomach cancer data which have been collected in Japan.
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