In this article, based on progressively type-II censored schemes, the maximum likelihood, Bayes, and two parametric bootstrap methods are used for estimating the unknown parameters of the Weibull Fréchet distribution and some lifetime indices as reliability and hazard rate functions. Moreover, approximate confidence intervals and asymptotic variance-covariance matrix have been obtained. Markov chain Monte Carlo technique based on Gibbs sampler within Metropolis–Hasting algorithm is used to generate samples from the posterior density functions. Furthermore, Bayesian estimate is computed under both balanced square error loss and balanced linear exponential loss functions. Simulation results have been implemented to obtain the accuracy of the ...
The time to event or survival time usually follows certain skewed probability distributions. These d...
We have developed the Bayesian estimation procedure for flexible Weibull distribution under Type-II ...
This paper develops Bayesian estimation and prediction, for a mixture of Weibull and Lomax distribut...
Censored data play a pivotal role in life testing experiments since they significantly reduce cost a...
The main purpose of this work is to draw comparisons between the classical maximum likelihood and th...
Abstract This paper develops the Weibull distribution by adding a new parameter to the classical di...
In this paper, the problem of estimation for the new Weibull-Pareto distribution based on progressiv...
In this paper, we introduce a Bayesian approach for segmented Weibull distributions which could be a...
Bayesian Inference of the Weibull-Pareto Distribution Weibull distribution has been extensively used...
Bayes and frequentist estimators are obtained for the two-parameter Weibull failure time distributio...
As the most useful distribution for modeling and analyzing life time data in the medical, paramedica...
Mixture cure rate models are commonly used to analyze lifetime data with long-term survivors. On the...
AbstractThe cure fraction models are usually used to model lifetime time data with long-term survivo...
Comparative lifetime experiments are vital when the interest is in learning the overall benefits of ...
In this paper, the point at issue is to deliberate point and interval estimations for the parameters...
The time to event or survival time usually follows certain skewed probability distributions. These d...
We have developed the Bayesian estimation procedure for flexible Weibull distribution under Type-II ...
This paper develops Bayesian estimation and prediction, for a mixture of Weibull and Lomax distribut...
Censored data play a pivotal role in life testing experiments since they significantly reduce cost a...
The main purpose of this work is to draw comparisons between the classical maximum likelihood and th...
Abstract This paper develops the Weibull distribution by adding a new parameter to the classical di...
In this paper, the problem of estimation for the new Weibull-Pareto distribution based on progressiv...
In this paper, we introduce a Bayesian approach for segmented Weibull distributions which could be a...
Bayesian Inference of the Weibull-Pareto Distribution Weibull distribution has been extensively used...
Bayes and frequentist estimators are obtained for the two-parameter Weibull failure time distributio...
As the most useful distribution for modeling and analyzing life time data in the medical, paramedica...
Mixture cure rate models are commonly used to analyze lifetime data with long-term survivors. On the...
AbstractThe cure fraction models are usually used to model lifetime time data with long-term survivo...
Comparative lifetime experiments are vital when the interest is in learning the overall benefits of ...
In this paper, the point at issue is to deliberate point and interval estimations for the parameters...
The time to event or survival time usually follows certain skewed probability distributions. These d...
We have developed the Bayesian estimation procedure for flexible Weibull distribution under Type-II ...
This paper develops Bayesian estimation and prediction, for a mixture of Weibull and Lomax distribut...