In reliability analysis and life testing studies, the experimenter is frequently interested in studying a specific risk factor in the presence of other factors. In this paper, the estimation of the unknown parameters, reliability and hazard functions of alpha power exponential distribution is considered based on progressively Type-II censored competing risks data. We assume that the latent cause of failures has independent alpha power exponential distributions with different scale and shape parameters. The maximum likelihood method is considered to estimate the model parameters as well as the reliability and hazard rate functions. The approximate and two parametric bootstrap confidence intervals of the different estimators are constructed. ...
Theestimatingproblemsofthemodelparameters,reliabilityandhazardfunctionsofextendedexponentialdistribu...
It is extremely frequent for systems to fail in their demanding operating environments in many real-...
Bayesian estimates involve the selection of hyper-parameters in the prior distribution. To deal with...
This paper is an endeavor to investigate some estimation problems of the unknown parameters and some...
The present study deals with the estimation procedure for the parameter, reliability and hazard func...
This paper addresses the estimation of the unknown parameters of the alphapower exponential distribu...
In several studies in Survival Analysis, the cause of failure / death of items or individuals may be...
The exponential distribution is the most widely used reliability analysis. This distribution is very...
In this paper, we consider the classical and Bayesian estimation of the parameters, reliability func...
In this paper, reliability estimation for a competing risks model is discussed under a block progres...
The exponential distribution is the most widely used reliability analysis. This distribution is very...
Abstract This paper is devoted to the estimation of the reliability measures in an exponential reli...
Censored data are considered to be of the interval type where the upper and lower bounds of an event...
In modeling reliability data, the exponential distribution is commonly used due to its simplicity. F...
Competing risks are frequently overlooked, and the event of interest is analyzed with conventional s...
Theestimatingproblemsofthemodelparameters,reliabilityandhazardfunctionsofextendedexponentialdistribu...
It is extremely frequent for systems to fail in their demanding operating environments in many real-...
Bayesian estimates involve the selection of hyper-parameters in the prior distribution. To deal with...
This paper is an endeavor to investigate some estimation problems of the unknown parameters and some...
The present study deals with the estimation procedure for the parameter, reliability and hazard func...
This paper addresses the estimation of the unknown parameters of the alphapower exponential distribu...
In several studies in Survival Analysis, the cause of failure / death of items or individuals may be...
The exponential distribution is the most widely used reliability analysis. This distribution is very...
In this paper, we consider the classical and Bayesian estimation of the parameters, reliability func...
In this paper, reliability estimation for a competing risks model is discussed under a block progres...
The exponential distribution is the most widely used reliability analysis. This distribution is very...
Abstract This paper is devoted to the estimation of the reliability measures in an exponential reli...
Censored data are considered to be of the interval type where the upper and lower bounds of an event...
In modeling reliability data, the exponential distribution is commonly used due to its simplicity. F...
Competing risks are frequently overlooked, and the event of interest is analyzed with conventional s...
Theestimatingproblemsofthemodelparameters,reliabilityandhazardfunctionsofextendedexponentialdistribu...
It is extremely frequent for systems to fail in their demanding operating environments in many real-...
Bayesian estimates involve the selection of hyper-parameters in the prior distribution. To deal with...