Bayesian Inference and Prediction of Burr Type XII Distribution for Progressive First Failure Censored Sampling

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DOI: 10.4236/iim.2011.35021    6,473 Downloads   12,444 Views  Citations

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ABSTRACT

This paper deals with Bayesian inference and prediction problems of the Burr type XII distribution based on progressive first failure censored data. We consider the Bayesian inference under a squared error loss function. We propose to apply Gibbs sampling procedure to draw Markov Chain Monte Carlo (MCMC) samples, and they have in turn, been used to compute the Bayes estimates with the help of importance sampling technique. We have performed a simulation study in order to compare the proposed Bayes estimators with the maximum likelihood estimators. We further consider two sample Bayes prediction to predicting future order statistics and upper record values from Burr type XII distribution based on progressive first failure censored data. The predictive densities are obtained and used to determine prediction intervals for unobserved order statistics and upper record values. A real life data set is used to illustrate the results derived.

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A. Soliman, A. Ellah, N. Abou-Elheggag and A. Modhesh, "Bayesian Inference and Prediction of Burr Type XII Distribution for Progressive First Failure Censored Sampling," Intelligent Information Management, Vol. 3 No. 5, 2011, pp. 175-185. doi: 10.4236/iim.2011.35021.

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