Motivated by weak small-sample performance of the censored regression quantile estimator proposed by Powell (1986a), two- and three-step estimation methods were introduced for estimation of the censored regression model under conditional quantile restriction. While those stepwise estimators have been proven to be consistent and asymptotically normal, their finite sample performance greatly depends on the specification of an initial estimator that selects the subsample to be used in subsequent steps. In this paper, an alternative semiparametric estimator is introduced that does not involve a selection procedure in the first step. The proposed estimator is based on the indirect inference principle and is shown to be consistent and asymptotica...
Powell (Journal of Econometrics 25 (1984) 303-325; journal of Econometrics 32 (1986) 143-155) consid...
M.Sc. (Mathematical Statistics)Comparison of two distributions via use of the quantile comparison fu...
When the dimension of the covariate space is high, semiparametric regression models become indispens...
In this paper, an extension of the indirect inference methodology to semiparametric estimation is ex...
It has previously been shown that consistent estimation of the unknown coefficients of the censored ...
Root-n-consistent estimators of the regression coefficients in the linear censored regression model ...
In this paper we propose an estimation procedure for a censored regression model where the latent re...
Censored regression models have received a great deal of attention in both the theoretical and appli...
<p>Quantile regression provides an attractive tool to the analysis of censored responses, because th...
We propose a censored quantile regression estimator motivated by unbiased estimating equations. Unde...
<p>In this paper, we study a novel approach for the estimation of quantiles when facing potential ri...
The paper introduces an estimator for the linear censored quantile regression model when the censori...
In this paper, we present an algorithm for Censored Quantile Regression (CQR) estimation problems. O...
When the dimension of the covariate space is high, semiparametric regression models become indispens...
Censored quantile regression has become an important alternative to the Cox proportional hazards mod...
Powell (Journal of Econometrics 25 (1984) 303-325; journal of Econometrics 32 (1986) 143-155) consid...
M.Sc. (Mathematical Statistics)Comparison of two distributions via use of the quantile comparison fu...
When the dimension of the covariate space is high, semiparametric regression models become indispens...
In this paper, an extension of the indirect inference methodology to semiparametric estimation is ex...
It has previously been shown that consistent estimation of the unknown coefficients of the censored ...
Root-n-consistent estimators of the regression coefficients in the linear censored regression model ...
In this paper we propose an estimation procedure for a censored regression model where the latent re...
Censored regression models have received a great deal of attention in both the theoretical and appli...
<p>Quantile regression provides an attractive tool to the analysis of censored responses, because th...
We propose a censored quantile regression estimator motivated by unbiased estimating equations. Unde...
<p>In this paper, we study a novel approach for the estimation of quantiles when facing potential ri...
The paper introduces an estimator for the linear censored quantile regression model when the censori...
In this paper, we present an algorithm for Censored Quantile Regression (CQR) estimation problems. O...
When the dimension of the covariate space is high, semiparametric regression models become indispens...
Censored quantile regression has become an important alternative to the Cox proportional hazards mod...
Powell (Journal of Econometrics 25 (1984) 303-325; journal of Econometrics 32 (1986) 143-155) consid...
M.Sc. (Mathematical Statistics)Comparison of two distributions via use of the quantile comparison fu...
When the dimension of the covariate space is high, semiparametric regression models become indispens...