Inference and optimal design of multiple constant-stress testing for generalized half-normal distribution under type-II progressive censoring |
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Authors: | A. M. Abd El-Raheem |
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Affiliation: | Department of Mathematics, Faculty of Education, Ain Shams University, Cairo, Egypthttps://orcid.org/0000-0002-3823-9346 |
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Abstract: | The generalized half-normal (GHN) distribution and progressive type-II censoring are considered in this article for studying some statistical inferences of constant-stress accelerated life testing. The EM algorithm is considered to calculate the maximum likelihood estimates. Fisher information matrix is formed depending on the missing information law and it is utilized for structuring the asymptomatic confidence intervals. Further, interval estimation is discussed through bootstrap intervals. The Tierney and Kadane method, importance sampling procedure and Metropolis-Hastings algorithm are utilized to compute Bayesian estimates. Furthermore, predictive estimates for censored data and the related prediction intervals are obtained. We consider three optimality criteria to find out the optimal stress level. A real data set is used to illustrate the importance of GHN distribution as an alternative lifetime model for well-known distributions. Finally, a simulation study is provided with discussion. |
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Keywords: | Accelerated life testing Bayes estimation Bayesian prediction EM algorithm generalized half-normal distribution optimal stress level simulation study type-II progressive censoring |
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