Abstract
The families of mixture distributions have a wider range of applications in different fields such as fisheries, agriculture, botany, economics, medicine, psychology, electrophoresis, finance, communication theory, geology and zoology. They provide the necessary flexibility to model failure distributions of components with multiple failure modes. Mostly, the Bayesian procedure for the estimation of parameters of mixture model is described under the scheme of Type-I censoring. In particular, the Bayesian analysis for the mixture models under doubly censored samples has not been considered in the literature yet. The main objective of this paper is to develop the Bayes estimation of the inverse Weibull mixture distributions under doubly censoring. The posterior estimation has been conducted under the assumption of gamma and inverse levy using precautionary loss function and weighted squared error loss function. The comparisons among the different estimators have been made based on analysis of simulated and real life data sets.
Highlights
In survival analysis, data are subject to censoring
On assessing the behavior of estimates, in case of the extremely different value of the parameters ( 1, 2 and 1 2) = (0.1, 15 and 10, 0.15) i.e. one is small and other is hundred fold large, it is noticed that the parameters are once again underestimated, and this underestimation is higher at every point using precautionary loss function under both priors
We have considered the Bayesian inference of inverse Weibull mixture distribution based on doubly type II censored data
Summary
Data are subject to censoring. The most common type of censoring is right censoring, in which the survival time is larger than the observed right censoring time. Fernandez (2000) investigated maximum likelihood prediction based on type II doubly censored exponential data. Khan et al (2010) studied predictive inference from a two-parameter Rayleigh life model given a doubly censored sample. Kim and Song (2010) have discussed Bayesian estimation of the parameters of the generalized exponential distribution from doubly censored samples. Khan et al (2011) studied sensitivity analysis of predictive modeling for responses from the threeparameter Weibull model with a follow-up doubly censored sample of cancer patients. Soliman (2006) derived estimators for the finite mixture of Rayleigh model based on progressively censored data. Kundu and Howalder (2010) considered the Bayesian inference and prediction of the inverse Weibull distribution for type-II censored data. Sultan and Moisheer (2012) developed approximate Bayes estimation of the parameters and reliability function of mixture of two inverse Weibull distributions under Type-2 censoring.
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More From: Pakistan Journal of Statistics and Operation Research
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