In this article, we study a novel approach for the estimation of quantiles when facing potential right censoring of the responses. Contrary to the existing literature on the subject, the adopted strategy of this article is to tackle censoring at the very level of the loss function usually employed for the computation of quantiles, the so-called “check” function. For interpretation purposes, a simple comparison with the latter reveals how censoring is accounted for in the newly proposed loss function. Subsequently, when considering the inclusion of covariates for conditional quantile estimation, by defining a new general loss function the proposed methodology opens the gate to numerous parametric, semiparametric, and nonparametric modeling t...
Motivated by weak small-sample performance of the censored regression quantile estimator proposed by...
Quantile regression coefficient functions describe how the coefficients of a quantile regression mod...
In this paper, an extension of the indirect inference methodology to semiparametric estimation is ex...
In this paper, we study a novel approach for the estimation of quantiles when facing potential right...
In this paper, we investigate a new procedure for the estimation of a linear quantile regression wit...
In this paper, we investigate a new procedure for the estimation of a linear quantile regression wit...
<p>Quantile regression provides an attractive tool to the analysis of censored responses, because th...
It has previously been shown that consistent estimation of the unknown coefficients of the censored ...
We propose a censored quantile regression estimator motivated by unbiased estimating equations. Unde...
Censored regression models have received a great deal of attention in both the theoretical and appli...
When the dimension of the covariate space is high, semiparametric regression models become indispens...
Censored regression models have received a great deal of attention in both the theoretical and appli...
We propose a way to estimate a parametric quantile function when the dependent variable, e.g. the su...
When the dimension of the covariate space is high, semiparametric regression models become indispens...
The paper introduces an estimator for the linear censored quantile regression model when the censori...
Motivated by weak small-sample performance of the censored regression quantile estimator proposed by...
Quantile regression coefficient functions describe how the coefficients of a quantile regression mod...
In this paper, an extension of the indirect inference methodology to semiparametric estimation is ex...
In this paper, we study a novel approach for the estimation of quantiles when facing potential right...
In this paper, we investigate a new procedure for the estimation of a linear quantile regression wit...
In this paper, we investigate a new procedure for the estimation of a linear quantile regression wit...
<p>Quantile regression provides an attractive tool to the analysis of censored responses, because th...
It has previously been shown that consistent estimation of the unknown coefficients of the censored ...
We propose a censored quantile regression estimator motivated by unbiased estimating equations. Unde...
Censored regression models have received a great deal of attention in both the theoretical and appli...
When the dimension of the covariate space is high, semiparametric regression models become indispens...
Censored regression models have received a great deal of attention in both the theoretical and appli...
We propose a way to estimate a parametric quantile function when the dependent variable, e.g. the su...
When the dimension of the covariate space is high, semiparametric regression models become indispens...
The paper introduces an estimator for the linear censored quantile regression model when the censori...
Motivated by weak small-sample performance of the censored regression quantile estimator proposed by...
Quantile regression coefficient functions describe how the coefficients of a quantile regression mod...
In this paper, an extension of the indirect inference methodology to semiparametric estimation is ex...