M-quantile regression is defined as a ‘quantile-like’ generalization of robust regression based on influence functions. The paper outlines asymptotic properties for the M-quantile regression coefficients estimators in the case of i.i.d. data with stochastic regressors, paying attention to ad- justments due to the first-step scale estimation. A variance estimator of the M-quantile regression coefficients based on the sandwich approach is proposed. Empirical results show that this estima- tor appears to perform well under different simulated scenarios. The sandwich estimator is applied in the small area estimation context for the estimation of the mean squared error of an estimator for the small area means. The results obtained improve previo...
A new, broad family of quantile-based estimators is described, and theoretical and empirical evidenc...
Quantile regression investigates the conditional quantile functions of a response variable in terms ...
Small area estimators associated with M-quantile regression methods have been recently proposed by C...
M-quantile regression is defined as a ‘quantile-like’ generalization of robust regression based on i...
In recent years, M-quantile regression has been applied to small area estimation to obtain reliable ...
In recent years, M-quantile regression has been applied to small area estimation to obtain reliable ...
Parametric and semiparametric regression beyond the mean have become important tools for multivariat...
M-quantile regression generalizes both quantile and expectile regression using M-estimation ideas. T...
M-quantile estimators are a generalised form of quantile-like M-estimators introduced by Breckling a...
This paper explores a class of robust estimators of normal quantiles filling the gap between maximum...
An M-quantile regression model is developed for the analysis of multiple dependent outcomes by intro...
We present the asymptotic properties of double-stage quantile regression estimators with random regr...
Quantile regression provides a method for estimating quantiles of a distribution while incorporating...
This paper studies estimation and inference for linear quantile regression models with generated reg...
Quantile regression investigates the conditional quantile functions of a response variable in terms ...
A new, broad family of quantile-based estimators is described, and theoretical and empirical evidenc...
Quantile regression investigates the conditional quantile functions of a response variable in terms ...
Small area estimators associated with M-quantile regression methods have been recently proposed by C...
M-quantile regression is defined as a ‘quantile-like’ generalization of robust regression based on i...
In recent years, M-quantile regression has been applied to small area estimation to obtain reliable ...
In recent years, M-quantile regression has been applied to small area estimation to obtain reliable ...
Parametric and semiparametric regression beyond the mean have become important tools for multivariat...
M-quantile regression generalizes both quantile and expectile regression using M-estimation ideas. T...
M-quantile estimators are a generalised form of quantile-like M-estimators introduced by Breckling a...
This paper explores a class of robust estimators of normal quantiles filling the gap between maximum...
An M-quantile regression model is developed for the analysis of multiple dependent outcomes by intro...
We present the asymptotic properties of double-stage quantile regression estimators with random regr...
Quantile regression provides a method for estimating quantiles of a distribution while incorporating...
This paper studies estimation and inference for linear quantile regression models with generated reg...
Quantile regression investigates the conditional quantile functions of a response variable in terms ...
A new, broad family of quantile-based estimators is described, and theoretical and empirical evidenc...
Quantile regression investigates the conditional quantile functions of a response variable in terms ...
Small area estimators associated with M-quantile regression methods have been recently proposed by C...