An algorithm suggested by Hendry (1999) for estimation in a regression with more regressors than observations, is analyzed with the purpose of finding an estimator that is robust to outliers and structural breaks. This estimator is an example of a one-step M-estimator based on Huber's skip function. The asymptotic theory is derived in the situation where there are no outliers or structural breaks using empirical process techniques. Stationary processes, trend stationary autoregressions and unit root processes are considered.Empirical processes, Huber's skip, indicator saturation, M-estimator, outlier robustness, vector autoregressive process
An extended and improved theory is presented for marked and weighted empirical processes of residual...
We discuss a robust solution to the problem of prediction. Extending Barndorff-Nielsen and Cox [1996...
The paper deals with the property of asymptotic uniform linearity of residual empirical processes f...
An algorithm suggested by Hendry (1999) for estimation in a regression with more regressors than obs...
Preliminary version Several algorithms for indicator saturation are compared and found to have low p...
Outlier detection algorithms are intimately connected with robust statistics that down-weight some o...
We propose a new procedure for computing an approximation to regression estimates based on the minim...
The Robustified Least Squares and the Impulse Indicator Saturation are iterative algorithms concerne...
Regression analysis plays a vital role in many areas of science. Almost all regression analyses rely...
The indicator saturation approach is one of the latest methods in the literature that Can detect bo...
Robust methods are little applied (although much studied by statisticians). We monitor very robust r...
In this thesis, we study a “heuristic approach” that are frequently used for outlier robustness anal...
M-estimators are used as a robust replacement of the general classical estimators used in the field ...
This study attempts to investigate the effect of outliers on estimation of parameters in regression ...
Artículo de publicación ISIA quantitative study of the robustness properties of the and the Huber M-...
An extended and improved theory is presented for marked and weighted empirical processes of residual...
We discuss a robust solution to the problem of prediction. Extending Barndorff-Nielsen and Cox [1996...
The paper deals with the property of asymptotic uniform linearity of residual empirical processes f...
An algorithm suggested by Hendry (1999) for estimation in a regression with more regressors than obs...
Preliminary version Several algorithms for indicator saturation are compared and found to have low p...
Outlier detection algorithms are intimately connected with robust statistics that down-weight some o...
We propose a new procedure for computing an approximation to regression estimates based on the minim...
The Robustified Least Squares and the Impulse Indicator Saturation are iterative algorithms concerne...
Regression analysis plays a vital role in many areas of science. Almost all regression analyses rely...
The indicator saturation approach is one of the latest methods in the literature that Can detect bo...
Robust methods are little applied (although much studied by statisticians). We monitor very robust r...
In this thesis, we study a “heuristic approach” that are frequently used for outlier robustness anal...
M-estimators are used as a robust replacement of the general classical estimators used in the field ...
This study attempts to investigate the effect of outliers on estimation of parameters in regression ...
Artículo de publicación ISIA quantitative study of the robustness properties of the and the Huber M-...
An extended and improved theory is presented for marked and weighted empirical processes of residual...
We discuss a robust solution to the problem of prediction. Extending Barndorff-Nielsen and Cox [1996...
The paper deals with the property of asymptotic uniform linearity of residual empirical processes f...