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A Bayes method for a monotone hazard rate via S-paths (2006)

Abstract
A class of random hazard rates, which is defined as a mixture of an indicator kernel convolved with a completely random measure, is of interest. We provide an explicit characterization of the posterior distribution of this mixture hazard rate model via a finite mixture of S-paths. A closed and tractable Bayes estimator for the hazard rate is derived to be a finite sum over S-paths. The path characterization or the estimator is proved to be a Rao–Blackwellization of an existing partition characterization or partition-sum estimator. This accentuates the importance of S-paths in Bayesian modeling of monotone hazard rates. An efficient Markov chain Monte Carlo (MCMC) method is proposed to approximate this class of estimates. It is shown that S-path characterization also exists in modeling with covariates by a proportional hazard model, and the proposed algorithm again applies. Numerical results of the method are given to demonstrate its practicality and effectiveness.

Publication details
Download http://ProjectEuclid.org/getRecord?id=euclid.aos/1151418242
Publisher The Institute of Mathematical Statistics
Repository Project Euclid (Hosted at Cornell University Library) (United States)
Keywords 62G05 (MSC2000), 62F15 (MSC2000), Completely random measure, weighted gamma process, random partition, Rao–Blackwellization, Markov chain Monte Carlo, proportional hazard model, Gibbs sampler
Type text
Language Englisch