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Exponential progressive step-stress life-testing with link function based on Box–Cox transformation
Authors:Tsai-Hung Fan  Wan-Lun Wang  N Balakrishnan
Institution:

aGraduate Institute of Statistics, National Central University, Jhongli 32001, Taiwan

bDepartment of Mathematics and Statistics, McMaster University, Hamilton, Ont., Canada

Abstract:In order to quickly extract information on the life of a product, accelerated life-tests are usually employed. In this article, we discuss a k-stage step-stress accelerated life-test with M-stress variables when the underlying data are progressively Type-I group censored. The life-testing model assumed is an exponential distribution with a link function that relates the failure rate and the stress variables in a linear way under the Box–Cox transformation, and a cumulative exposure model for modelling the effect of stress changes. The classical maximum likelihood method as well as a fully Bayesian method based on the Markov chain Monte Carlo (MCMC) technique is developed for inference on all the parameters of this model. Numerical examples are presented to illustrate all the methods of inference developed here, and a comparison of the ML and Bayesian methods is also carried out.
Keywords:Step-stress test  Accelerated life-testing  Maximum likelihood estimates  Bayesian inference  Fisher-scoring algorithm  Markov chain Monte Carlo  Cumulative exposure model  Box–Cox transformation  Progressive censoring  Link function
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