This paper develops Bayesian estimation and prediction, for a mixture of Weibull and Lomax distributions, in the context of the new life test plan called progressive first failure censored samples. Maximum likelihood estimation and Bayes estimation, under informative and non-informative priors, are obtained using Markov Chain Monte Carlo methods, based on the symmetric square error Loss function and the asymmetric linear exponential (LINEX) and general entropy loss functions. The maximum likelihood estimates and the different Bayes estimates are compared via a Monte Carlo simulation study. Finally, Bayesian prediction intervals for future observations are obtained using a numerical exampl
In this paper we develop approximate Bayes estimators of the scale parameter of the logistic distrib...
[[abstract]]It is often the case that some information is available on the parameter of failure time...
The Lomax distribution has been used as a statistical model in several fields, especially for busine...
Censored data play a pivotal role in life testing experiments since they significantly reduce cost a...
The present study deals with the classical and Bayesian estimation of the progressive Type-II censor...
The Bayesian prediction of future failures from Lomax distribution is the subject of this research. ...
[[abstract]]This article presents the statistical inferences on Weibull parameters with the data tha...
The main purpose of this work is to draw comparisons between the classical maximum likelihood and th...
In this article we consider statistical inferences about the unknown parameters of the inverse Weibu...
In this paper, we discuss the problem of estimating the parameters of the Lindely Weibull distributi...
Bayesian estimates involve the selection of hyper-parameters in the prior distribution. To deal with...
Bayes and frequentist estimators are obtained for the two-parameter Weibull failure time distributio...
Inthis article, we consider the problem of estimating the parameters and reliability function of the...
This paper investigates the statistical inference of inverse power Lomax distribution parameters und...
This paper describes the Bayesian inference and prediction of the generalized Pareto (GP) distributi...
In this paper we develop approximate Bayes estimators of the scale parameter of the logistic distrib...
[[abstract]]It is often the case that some information is available on the parameter of failure time...
The Lomax distribution has been used as a statistical model in several fields, especially for busine...
Censored data play a pivotal role in life testing experiments since they significantly reduce cost a...
The present study deals with the classical and Bayesian estimation of the progressive Type-II censor...
The Bayesian prediction of future failures from Lomax distribution is the subject of this research. ...
[[abstract]]This article presents the statistical inferences on Weibull parameters with the data tha...
The main purpose of this work is to draw comparisons between the classical maximum likelihood and th...
In this article we consider statistical inferences about the unknown parameters of the inverse Weibu...
In this paper, we discuss the problem of estimating the parameters of the Lindely Weibull distributi...
Bayesian estimates involve the selection of hyper-parameters in the prior distribution. To deal with...
Bayes and frequentist estimators are obtained for the two-parameter Weibull failure time distributio...
Inthis article, we consider the problem of estimating the parameters and reliability function of the...
This paper investigates the statistical inference of inverse power Lomax distribution parameters und...
This paper describes the Bayesian inference and prediction of the generalized Pareto (GP) distributi...
In this paper we develop approximate Bayes estimators of the scale parameter of the logistic distrib...
[[abstract]]It is often the case that some information is available on the parameter of failure time...
The Lomax distribution has been used as a statistical model in several fields, especially for busine...