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Bayesian estimation for the exponential distribution based on generalized multiply Type-II hybrid censoring
Author(s) -
Young Eun Jeon,
Suk-Bok Kang
Publication year - 2020
Publication title -
communications for statistical applications and methods
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.326
H-Index - 6
eISSN - 2383-4757
pISSN - 2287-7843
DOI - 10.29220/csam.2020.27.4.413
Subject(s) - censoring (clinical trials) , estimator , mathematics , exponential distribution , markov chain monte carlo , bayes estimator , statistics , bayes' theorem , scale parameter , prior probability , conjugate prior , exponential family , monte carlo method , bayesian probability
The multiply Type-II hybrid censoring scheme is disadvantaged by an experiment time that is too long. To overcome this limitation, we propose a generalized multiply Type-II hybrid censoring scheme. Some estimators of the scale parameter of the exponential distribution are derived under a generalized multiply Type-II hybrid censoring scheme. First, the maximum likelihood estimator of the scale parameter of the exponential distribution is obtained under the proposed censoring scheme. Second, we obtain the Bayes estimators under different loss functions with a noninformative prior and an informative prior. We approximate the Bayes estimators by Lindleys approximation and the Tierney-Kadane method since the posterior distributions obtained by the two priors are complicated. In addition, the Bayes estimators are obtained by using the Markov Chain Monte Carlo samples. Finally, all proposed estimators are compared in the sense of the mean squared error through the Monte Carlo simulation and applied to real data.

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