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Prior choice in discrete latent modeling of spatially referenced cancer survival

Title
Prior choice in discrete latent modeling of spatially referenced cancer survival
Author
최정순
Keywords
spatial; health; prior; Bayesian; latent; survival
Issue Date
2014-03
Publisher
SAGE Publications
Citation
Statistical Methods in Medical Research, Vol.23 No.2 [2014], pp. 183-200
Abstract
In this article, we examine the development and use of covariate models where the relation with explanantory covariates is spatially adaptive. In this way space is regarded as an effect modifier. We examine the possibility of discrete groupings of coefficients (clustering of coefficients). Our application is to prostate cancer survival based on the SEER cancer registry for the state of Louisiana, USA. This registry holds individual records linked to vital outcomes and is geo-coded at county level. We examine a range of potential prior distributions for groupings of regression coefficients in application to these data.
URI
http://eds.b.ebscohost.com/eds/detail/detail?vid=0&sid=bd9a2f30-b9dc-4e68-83c9-8698c30b6c1e%40sessionmgr103&bdata=Jmxhbmc9a28mc2l0ZT1lZHMtbGl2ZQ%3d%3d#db=edswsc&AN=000336226000006http://hdl.handle.net/20.500.11754/49544
ISSN
0962-2802
DOI
10.1177/0962280212447148
Appears in Collections:
COLLEGE OF NATURAL SCIENCES[S](자연과학대학) > MATHEMATICS(수학과) > Articles
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