Title of article :
On the Bayesian analysis of the mixture of power function distribution using the complete and the censored sample
Author/Authors :
M. Saleem، نويسنده , , M. Aslam & P. Economou، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Abstract :
The power function distribution is often used to study the electrical component reliability. In this paper, we
model a heterogeneous population using the two-component mixture of the power function distribution.
A comprehensive simulation scheme including a large number of parameter points is followed to highlight
the properties and behavior of the estimates in terms of sample size, censoring rate, parameters size and the
proportion of the components of the mixture. The parameters of the power function mixture are estimated
and compared using the Bayes estimates.A simulated mixture data with censored observations is generated
by probabilistic mixing for the computational purposes. Elegant closed form expressions for the Bayes
estimators and their variances are derived for the censored sample as well as for the complete sample.
Some interesting comparison and properties of the estimates are observed and presented. The system of
three non-linear equations, required to be solved iteratively for the computations of maximum likelihood
(ML) estimates, is derived. The complete sample expressions for the ML estimates and for their variances
are also given. The components of the information matrix are constructed as well. Uninformative as well as
informative priors are assumed for the derivation of the Bayes estimators.A real-life mixture data example
has also been discussed. The posterior predictive distribution with the informative Gamma prior is derived,
and the equations required to find the lower and upper limits of the predictive intervals are constructed.
The Bayes estimates are evaluated under the squared error loss function
Keywords :
inverse transform method , Censored sampling , squared error lossfunction , Predictive distribution , Information matrix
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS