In:
Journal of the Royal Statistical Society Series C: Applied Statistics, Oxford University Press (OUP), Vol. 54, No. 5 ( 2005-11-01), p. 919-939
Abstract:
The method of Bayesian model selection for join point regression models is developed. Given a set of K+1 join point models M0, M1, …, MK with 0, 1, …, K join points respec-tively, the posterior distributions of the parameters and competing models Mk are computed by Markov chain Monte Carlo simulations. The Bayes information criterion BIC is used to select the model Mk with the smallest value of BIC as the best model. Another approach based on the Bayes factor selects the model Mk with the largest posterior probability as the best model when the prior distribution of Mk is discrete uniform. Both methods are applied to analyse the observed US cancer incidence rates for some selected cancer sites. The graphs of the join point models fitted to the data are produced by using the methods proposed and compared with the method of Kim and co-workers that is based on a series of permutation tests. The analyses show that the Bayes factor is sensitive to the prior specification of the variance σ2, and that the model which is selected by BIC fits the data as well as the model that is selected by the permutation test and has the advantage of producing the posterior distribution for the join points. The Bayesian join point model and model selection method that are presented here will be integrated in the National Cancer Institute’s join point software (http://www.srab.cancer.gov/joinpoint/) and will be available to the public.
Type of Medium:
Online Resource
ISSN:
0035-9254
,
1467-9876
DOI:
10.1111/j.1467-9876.2005.00518.x
Language:
English
Publisher:
Oxford University Press (OUP)
Publication Date:
2005
detail.hit.zdb_id:
204797-4
detail.hit.zdb_id:
1482300-7
detail.hit.zdb_id:
1476894-X
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