A method is described for the calculation of the three-parameter Weibull distribution function from censored samples. The method introduces a data driven technique based on an adapted Gaussian like kernel to match the censoring scheme. The method minimizes the Cramer von Mises distance from a non-parametric density estimate and the parametric estimate at the order statistics. The maximum likelihood estimators are found and a comparison is made with the new estimator. A Monte Carlo experiment of size 1000 is conducted to test the performance of the new parameter estimation technique. The mean integrated square error is taken as a measure of the closeness of the estimated density and the true density
Abstract-- This paper presents estimations of the modified Weibull distribution model based on group...
The three-parameter Weibull distribution is a commonly-used distribution for the study of reliabilit...
Abstract: This paper deals with the estimation of R P(Y X) = < where X and Y are two independent ...
In this paper, we use the setup proposed by Balakrishnan and Ag-garwala (2000) to compute approximat...
none4siThe paper considers the estimation of the parameters of the 2-parameter Weibull distribution ...
none4siThe paper considers the estimation of the parameters of the 2-parameter Weibull distribution ...
The estimation of parameters of a Weibull distribution, requiring numerical methods, has been discus...
none4siThe paper considers the estimation of the parameters of the 2-parameter Weibull distribution ...
We obtained estimation results concerning a randomly censored sample from a two- parameter Weibull ...
We obtained estimation results concerning a randomly censored sample from a two- parameter Weibull ...
For the Weibull distribution the maximum likelihood method does not provide an explicit estimator fo...
[[abstract]]We obtained estimation results concerning a progressively type-II censored sample from a...
Six techniques (maximum likelihood, least squares regression and the Jacquelin, Ross, White and Bain...
Six techniques (maximum likelihood, least squares regression and the Jacquelin, Ross, White and Bain...
We consider the problem of estimating the scale parameter of the Weibull distribution based on multi...
Abstract-- This paper presents estimations of the modified Weibull distribution model based on group...
The three-parameter Weibull distribution is a commonly-used distribution for the study of reliabilit...
Abstract: This paper deals with the estimation of R P(Y X) = < where X and Y are two independent ...
In this paper, we use the setup proposed by Balakrishnan and Ag-garwala (2000) to compute approximat...
none4siThe paper considers the estimation of the parameters of the 2-parameter Weibull distribution ...
none4siThe paper considers the estimation of the parameters of the 2-parameter Weibull distribution ...
The estimation of parameters of a Weibull distribution, requiring numerical methods, has been discus...
none4siThe paper considers the estimation of the parameters of the 2-parameter Weibull distribution ...
We obtained estimation results concerning a randomly censored sample from a two- parameter Weibull ...
We obtained estimation results concerning a randomly censored sample from a two- parameter Weibull ...
For the Weibull distribution the maximum likelihood method does not provide an explicit estimator fo...
[[abstract]]We obtained estimation results concerning a progressively type-II censored sample from a...
Six techniques (maximum likelihood, least squares regression and the Jacquelin, Ross, White and Bain...
Six techniques (maximum likelihood, least squares regression and the Jacquelin, Ross, White and Bain...
We consider the problem of estimating the scale parameter of the Weibull distribution based on multi...
Abstract-- This paper presents estimations of the modified Weibull distribution model based on group...
The three-parameter Weibull distribution is a commonly-used distribution for the study of reliabilit...
Abstract: This paper deals with the estimation of R P(Y X) = < where X and Y are two independent ...