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Prediction interval for disease mapping using hierarchical likelihood

Year of publication:
2011
Authors: Lee, Youngjo ; Jang, Myoungjin ; Lee, Woojoo
Published in:
Computational Statistics. - Springer. - Vol. 26.2011, 1, p. 159-179
Publisher: Springer
Subject: Empirical Bayes | Fully Bayes | Disease mapping | Hierarchical generalized linear model | Hierarchical likelihood | Prediction
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Type of publication: Article
Source:
RePEc - Research Papers in Economics
Persistent link: https://www.econbiz.de/10008925416
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