1. STATISTICAL ANALYSIS OF INVERSE WEIBULL DISTRIBUTION BASED ON GENERALIZED PROGRESSIVE HYBRID TYPE-I CENSORING WITH COMPETING RISKS.
- Author
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Samia, A. Salem, Osama, E. Abo-Kasem, and Amarat, A. Khairy
- Subjects
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COMPETING risks , *WEIBULL distribution , *MARKOV chain Monte Carlo , *STATISTICS , *CENSORING (Statistics) , *MAXIMUM likelihood statistics - Abstract
The competing risks model plays an important role in the statistical analysis of engineering, econometric, biological and other fields. A tested product may fail from different causes. Therefore, these failure causes as if competing with each other to bring about the failure of tested products (an experimental unit). Hence, in the statistical literature, this is known as the competing risk problem and it has been studied quite extensively by several researchers when the lifetime of the product is the latent failure time of the first failure cause among all the possible failure causes. In this paper, a competing risks model based on a generalized progressive hybrid type-I (GPH type-I) censoring is considered when the latent lifetime distributions of failure causes are inverse Weibull (IW) distributed and partially observed. We established various estimation methods including Maximum likelihood estimates (MLEs) and Bayes estimates (BEs). MLEs with the corresponding asymptotic confidence intervals are obtained. Bayes estimates of the parameters are obtained based on squared error loss (SEL) function under the assumption of independent gamma priors. Furthermore, we applied Markov Chain Monte Carlo (MCMC) techniques to compute BEs and to calculate the credible intervals. Finally, simulation studies and real data set are used for illustrative purpose. [ABSTRACT FROM AUTHOR]
- Published
- 2024