A new class of robust regression estimators is proposed that forms an alternative to traditional robust one-step estimators and that achieves the √n rate of convergence irrespective of the initial estimator under a wide range of distributional assumptions. The proposed reweighted least trimmed squares (RLTS) estimator employs data-dependent weights determined from an initial robust fit. Just like many existing one- and two-step robust methods, the RLTS estimator preserves robust properties of the initial robust estimate. However contrary to existing methods, the first-order asymptotic behavior of RLTS is independent of the initial estimate even if errors exhibit heteroscedasticity, asymmetry, or serial correlation. Moreover, we derive the a...
Instead of minimizing the sum of all $n$ squared residuals as the classical least squares (LS) does,...
Many estimation methods of truncated and censored regression models such as the maximum likelihood a...
These days, it is common practice to base inference about the coefficients in a hetoskedastic linear...
A new class of robust regression estimators is proposed that forms an alternative to traditional rob...
A class of two-step robust regression estimators that achieve a high relative efficiency for data fr...
This paper introduces a new class of robust regression estimators. The proposed twostep least weight...
This paper introduces a new class of regression estimators robust to outliers, measurement errors, a...
We propose a one-step estimator for the vector of regression and error-scale parameters in a linear ...
summary:The paper studies a new class of robust regression estimators based on the two-step least we...
We present a unified treatment of different types of one-step M-estimation in regression models whic...
We present a unified treatment of different types of one-step M-estimation in regression models whic...
We present a unified treatment of different types of one-step M-estimation in regression models whic...
The Ordinary Least Squares (OLS) method has been the most popular technique for estimating the param...
The linear regression model requires robust estimation of parameters, if the measured data are conta...
This paper shows how asymptotically valid inference in regression models based on the weighted least...
Instead of minimizing the sum of all $n$ squared residuals as the classical least squares (LS) does,...
Many estimation methods of truncated and censored regression models such as the maximum likelihood a...
These days, it is common practice to base inference about the coefficients in a hetoskedastic linear...
A new class of robust regression estimators is proposed that forms an alternative to traditional rob...
A class of two-step robust regression estimators that achieve a high relative efficiency for data fr...
This paper introduces a new class of robust regression estimators. The proposed twostep least weight...
This paper introduces a new class of regression estimators robust to outliers, measurement errors, a...
We propose a one-step estimator for the vector of regression and error-scale parameters in a linear ...
summary:The paper studies a new class of robust regression estimators based on the two-step least we...
We present a unified treatment of different types of one-step M-estimation in regression models whic...
We present a unified treatment of different types of one-step M-estimation in regression models whic...
We present a unified treatment of different types of one-step M-estimation in regression models whic...
The Ordinary Least Squares (OLS) method has been the most popular technique for estimating the param...
The linear regression model requires robust estimation of parameters, if the measured data are conta...
This paper shows how asymptotically valid inference in regression models based on the weighted least...
Instead of minimizing the sum of all $n$ squared residuals as the classical least squares (LS) does,...
Many estimation methods of truncated and censored regression models such as the maximum likelihood a...
These days, it is common practice to base inference about the coefficients in a hetoskedastic linear...