We propose three new estimation procedures in the linear regression model with randomly-right censored data when the distribution function of the error term is unspecified, regressors are stochastic and the distribution function of the censoring variable is not necessarily the same for all observations ("unequal censoring"). The proposed procedures are derived combining techniques which produce accurate estimates with "equal censoring" with kernel-conditionalı Kaplan-Meier estimates. The performance of six estimation procedures (the three proposed methods and three alternative ones) is compared by means of some Monte Carlo experiments
In this paper, we study a number of issues that arise for estimation of coe ¢ cients of a linear mod...
Koul, Susarla and Van Ryzin (1981) proposed a regression estimator for linear regression models with...
This thesis contributes in several ways to the existing knowledge on estimation of truncated, censor...
We propose three new estimation procedures in the linear regression model with randomly-right censor...
This paper presents two basic methods called as weighted least squares (WLS) and synthetic data tran...
summary:This paper proposes a bias reduction of the coefficients' estimator for linear regression mo...
This thesis is mainly concerned with the estimation of parameters in autoregressive models with cens...
International audienceIn this article, we propose some new generalizations of M-estimation procedure...
We study issues that arise for estimation of a linear model when a regressor is censored. We discuss...
A noniterative method of estimation is presented in a simple linear regression model where the indep...
Three methods for linear regression with censored data are considered, that of Buckley & James (...
This paper develops a semiparametric method for estimation of the censored regres-sion model when so...
[[abstract]]This paper proposes a method for estimation of a class of partially linear single-index ...
Quantile regression for censored survival (duration) data offers a more flexible alternative to the ...
AbstractThis paper proposes a method for estimation of a class of partially linear single-index mode...
In this paper, we study a number of issues that arise for estimation of coe ¢ cients of a linear mod...
Koul, Susarla and Van Ryzin (1981) proposed a regression estimator for linear regression models with...
This thesis contributes in several ways to the existing knowledge on estimation of truncated, censor...
We propose three new estimation procedures in the linear regression model with randomly-right censor...
This paper presents two basic methods called as weighted least squares (WLS) and synthetic data tran...
summary:This paper proposes a bias reduction of the coefficients' estimator for linear regression mo...
This thesis is mainly concerned with the estimation of parameters in autoregressive models with cens...
International audienceIn this article, we propose some new generalizations of M-estimation procedure...
We study issues that arise for estimation of a linear model when a regressor is censored. We discuss...
A noniterative method of estimation is presented in a simple linear regression model where the indep...
Three methods for linear regression with censored data are considered, that of Buckley & James (...
This paper develops a semiparametric method for estimation of the censored regres-sion model when so...
[[abstract]]This paper proposes a method for estimation of a class of partially linear single-index ...
Quantile regression for censored survival (duration) data offers a more flexible alternative to the ...
AbstractThis paper proposes a method for estimation of a class of partially linear single-index mode...
In this paper, we study a number of issues that arise for estimation of coe ¢ cients of a linear mod...
Koul, Susarla and Van Ryzin (1981) proposed a regression estimator for linear regression models with...
This thesis contributes in several ways to the existing knowledge on estimation of truncated, censor...