Title of article :
Estimation of stress–strength reliability in the inverse Gaussian distribution under progressively type II censored data
Author/Authors :
Rostamian, S Department of Statistics - Science and Research Branch - Islamic Azad University , Nematollahi, N Department of Statistics - Allameh Tabataba’i University
Abstract :
The stress–strength parameter R = P(Y < X), as a reliability parameter, is considered in different statistical distributions. In the present paper, the stress–strength reliability is estimated based on progressively type II censored samples, in which X and Y are two independent random variables with inverse Gaussian distributions. The maximum likelihood estimate of R via expectation–maximization algorithm and the Bayes estimate of R are obtained. Furthermore, we obtain the bootstrap confidence intervals, HPD credible interval and confidence intervals based on generalized pivotal quantity for R. Additionally, the performance of point estimators and confidence intervals are evaluated by a simulation study. Finally, the proposed methods are conducted on a set of real data for illustrative purposes.
Keywords :
Inverse Gaussian distribution , EM algorithm , Generalized pivotal quantity , Gibbs sampling , Progressively type II censoring