AbstractAs compared to simple models, the mixture models of underlying lifetime distributions are intuitively more appropriate and appealing to model the heterogeneous nature of process. This study focuses on the problem of estimating the parameters of a newly developed 3-component mixture of Burr Type-XII distributions using Type-I right censored data. Firstly, considering a Bayesian structure, some mathematical properties of a 3-component mixture of Burr Type-XII distributions are discussed. These mathematical properties include Bayes estimators and posterior risks for the unknown component and proportion parameters using the non-informative and the informative priors under squared error loss function, precautionary loss function and DeGr...
The purpose of the paper is to address the problem of estimation and prediction of the Burr type XI ...
The paper deals with Bayesian estimation of unknown parameters of Burr type XII distribution under t...
In this paper we review a nonparametric Bayesian estimation technique in mixture of distributions em...
As compared to simple models, the mixture models of underlying lifetime distributions are intuitivel...
AbstractAs compared to simple models, the mixture models of underlying lifetime distributions are in...
In recent years, the finite mixtures of distributions have been proved to be of considerable attenti...
In recent years, the finite mixtures of distributions have been proved to be of considerable attenti...
Since the last few decades, constructing flexible parametric classes of probability distributions ha...
The paper is concerned with the preference of prior for the Bayesian analysis of the shape parameter...
<div><p>To study lifetimes of certain engineering processes, a lifetime model which can accommodate ...
Bayesian study of 3-component mixture modeling of exponentiated inverted Weibull distribution under ...
This paper has to do with 3-component mixture of the Frechet dis- tributions when the shape paramete...
The purpose of the paper is to estimate the parameters of the two-component mixture of Weibull distr...
The families of mixture distributions have a wider range of applications in different fields such as...
In this paper, the Bayesian estimation of the parameters of mixture of two components of Gumbel type...
The purpose of the paper is to address the problem of estimation and prediction of the Burr type XI ...
The paper deals with Bayesian estimation of unknown parameters of Burr type XII distribution under t...
In this paper we review a nonparametric Bayesian estimation technique in mixture of distributions em...
As compared to simple models, the mixture models of underlying lifetime distributions are intuitivel...
AbstractAs compared to simple models, the mixture models of underlying lifetime distributions are in...
In recent years, the finite mixtures of distributions have been proved to be of considerable attenti...
In recent years, the finite mixtures of distributions have been proved to be of considerable attenti...
Since the last few decades, constructing flexible parametric classes of probability distributions ha...
The paper is concerned with the preference of prior for the Bayesian analysis of the shape parameter...
<div><p>To study lifetimes of certain engineering processes, a lifetime model which can accommodate ...
Bayesian study of 3-component mixture modeling of exponentiated inverted Weibull distribution under ...
This paper has to do with 3-component mixture of the Frechet dis- tributions when the shape paramete...
The purpose of the paper is to estimate the parameters of the two-component mixture of Weibull distr...
The families of mixture distributions have a wider range of applications in different fields such as...
In this paper, the Bayesian estimation of the parameters of mixture of two components of Gumbel type...
The purpose of the paper is to address the problem of estimation and prediction of the Burr type XI ...
The paper deals with Bayesian estimation of unknown parameters of Burr type XII distribution under t...
In this paper we review a nonparametric Bayesian estimation technique in mixture of distributions em...