This paper obtains asymptotic representations of a class of L-estimators in a linear regression model when the errors are a function of long-range-dependent Gaussian random variables. These representations are then used to address some of the efficiency robustness properties of L-estimators compared to the least-squares estimator. It is observed that under the Gaussian error distribution, each member of the class has the same asymptotic efficiency as that of the least-squares estimator. The results are obtained as a consequence of the asymptotic uniform linearity of some weighted empirical processes based on long-range-dependent random variables
AbstractThis paper establishes the consistency and the root-n asymptotic normality of the exact maxi...
We consider semiparametric estimation in time series regression in the presence of long range depend...
A central limit theorem is established for time series regression estimates which include generalize...
This paper establishes the uniform closeness of a weighted residual empirical process to its natural...
This paper discusses the asymptotic representations of a class of L2-distance estimators based on we...
This paper discusses the asymptotic representations of a class of L2-distance estimators based on we...
AbstractThis paper obtains asymptotic representations of the regression quantiles and the regression...
This paper obtains asymptotic representations of the regression quantiles and the regression rank-sc...
AbstractThis paper establishes the consistency and the root-n asymptotic normality of the exact maxi...
The asymptotic behavior of S-estimators in a random design linear model with long-range-dependent Ga...
In this paper we study the rate of convergence to the normal approximation of the least squares esti...
In this paper we study the rate of convergence to the normal approximation of the least squares esti...
The asymptotic behavior of S-estimators in a random design linear model with long-range-dependent Ga...
AbstractConsider the nonparametric estimation of a multivariate regression function and its derivati...
Abstract: In this paper we study the asymptotic behaviour of empirical processes when parameters are...
AbstractThis paper establishes the consistency and the root-n asymptotic normality of the exact maxi...
We consider semiparametric estimation in time series regression in the presence of long range depend...
A central limit theorem is established for time series regression estimates which include generalize...
This paper establishes the uniform closeness of a weighted residual empirical process to its natural...
This paper discusses the asymptotic representations of a class of L2-distance estimators based on we...
This paper discusses the asymptotic representations of a class of L2-distance estimators based on we...
AbstractThis paper obtains asymptotic representations of the regression quantiles and the regression...
This paper obtains asymptotic representations of the regression quantiles and the regression rank-sc...
AbstractThis paper establishes the consistency and the root-n asymptotic normality of the exact maxi...
The asymptotic behavior of S-estimators in a random design linear model with long-range-dependent Ga...
In this paper we study the rate of convergence to the normal approximation of the least squares esti...
In this paper we study the rate of convergence to the normal approximation of the least squares esti...
The asymptotic behavior of S-estimators in a random design linear model with long-range-dependent Ga...
AbstractConsider the nonparametric estimation of a multivariate regression function and its derivati...
Abstract: In this paper we study the asymptotic behaviour of empirical processes when parameters are...
AbstractThis paper establishes the consistency and the root-n asymptotic normality of the exact maxi...
We consider semiparametric estimation in time series regression in the presence of long range depend...
A central limit theorem is established for time series regression estimates which include generalize...