A class of two-step robust regression estimators that achieve a high relative efficiency for data from light-tailed, heavy-tailed, and contaminated distributions irrespective of the sample size is proposed and studied. In particular, the least weighted squares (LWS) estimator is combined with data-adaptive weights, which are determined from the empirical distribution or quantile functions of regression residuals obtained from an initial robust fit. Just like many existing two-step robust methods, the LWS estimator with the proposed weights preserves robust properties of the initial robust estimate. However, contrary to the existing methods and despite the data-dependent weights, the first-order asymptotic behavior of LWS is fully independen...
In this paper, the robustness of weighted non-linear least-squares estimation based on some prelimin...
Ordinary least-squares (OLS) estimates for a linear model are very sensitive to unusual values in th...
The paper is devoted to the least weighted squares estimator, which is one of highly robust estimato...
This paper introduces a new class of robust regression estimators. The proposed twostep least weight...
summary:The paper studies a new class of robust regression estimators based on the two-step least we...
This paper introduces a new class of regression estimators robust to outliers, measurement errors, a...
The linear regression model requires robust estimation of parameters, if the measured data are conta...
A new class of robust regression estimators is proposed that forms an alternative to traditional rob...
A new class of robust regression estimators is proposed that forms an alternative to traditional rob...
The least squares estimator is probably the most frequently used estimation method in regression ana...
We propose a one-step estimator for the vector of regression and error-scale parameters in a linear ...
In a linear regression model, the ordinary least squares (OLS) method is considered the best method ...
Regression analysis is one of the most extensively used statistical tools applied across different f...
The weighted total least-squares (WTLS) estimate for the partial errors-in-variables (EIV) model is ...
The ordinary least squares (OLS) procedure is inefficient when the underlying assumption of constant...
In this paper, the robustness of weighted non-linear least-squares estimation based on some prelimin...
Ordinary least-squares (OLS) estimates for a linear model are very sensitive to unusual values in th...
The paper is devoted to the least weighted squares estimator, which is one of highly robust estimato...
This paper introduces a new class of robust regression estimators. The proposed twostep least weight...
summary:The paper studies a new class of robust regression estimators based on the two-step least we...
This paper introduces a new class of regression estimators robust to outliers, measurement errors, a...
The linear regression model requires robust estimation of parameters, if the measured data are conta...
A new class of robust regression estimators is proposed that forms an alternative to traditional rob...
A new class of robust regression estimators is proposed that forms an alternative to traditional rob...
The least squares estimator is probably the most frequently used estimation method in regression ana...
We propose a one-step estimator for the vector of regression and error-scale parameters in a linear ...
In a linear regression model, the ordinary least squares (OLS) method is considered the best method ...
Regression analysis is one of the most extensively used statistical tools applied across different f...
The weighted total least-squares (WTLS) estimate for the partial errors-in-variables (EIV) model is ...
The ordinary least squares (OLS) procedure is inefficient when the underlying assumption of constant...
In this paper, the robustness of weighted non-linear least-squares estimation based on some prelimin...
Ordinary least-squares (OLS) estimates for a linear model are very sensitive to unusual values in th...
The paper is devoted to the least weighted squares estimator, which is one of highly robust estimato...