Artículo de publicación ISIA quantitative study of the robustness properties of the and the Huber M-estimator on finite samples is presented. The focus is on the linear model involving a fixed design matrix and additive errors restricted to the dependent variables consisting of noise and sparse outliers. We derive sharp error bounds for the estimator in terms of the leverage constants of a design matrix introduced here. A similar analysis is performed for Huber's estimator using an equivalent problem formulation of independent interest. Our analysis considers outliers of arbitrary magnitude, and we recover breakdown point results as particular cases when outliers diverge. The practical implications of the theoretical analysis are discussed ...
Ordinary least-squares (OLS) estimates for a linear model are very sensitive to unusual values in th...
An algorithm suggested by Hendry (1999) for estimation in a regression with more regressors than obs...
In this work we extend the procedure proposed by Peña and Yohai (1999) for computing robust regressi...
peer reviewedWe consider the problem of estimating a deterministic unknown vector which depends line...
In the linear model Xn - 1 = Cn - p[theta]p - 1 + En - 1, Huber's theory of robust estimation of the...
A regression estimator is said to be robust if it is still reliable in the presence of outliers. On ...
A regression estimator is said to be robust if it is still reliable in the presence of outliers. On ...
Regression analysis plays a vital role in many areas of science. Almost all regression analyses rely...
Heavy-tailed errors impair the accuracy of the least squares estimate, which can be spoiled by a sin...
The robustification parameter, which balances bias and robustness, has played a critical role in the...
AbstractIn the linear model Xn × 1 = Cn × pθp × 1 + En × 1, Huber's theory of robust estimation of t...
Many datasets are collected automatically, and are thus easily contaminated by outliers. In order to...
Outliers in the data are a common problem in applied statistics. Estimators that give reliable resul...
This study attempts to investigate the effect of outliers on estimation of parameters in regression ...
Outlying observations are often disregarded at the sacrifice of degrees of freedom or downsized via ...
Ordinary least-squares (OLS) estimates for a linear model are very sensitive to unusual values in th...
An algorithm suggested by Hendry (1999) for estimation in a regression with more regressors than obs...
In this work we extend the procedure proposed by Peña and Yohai (1999) for computing robust regressi...
peer reviewedWe consider the problem of estimating a deterministic unknown vector which depends line...
In the linear model Xn - 1 = Cn - p[theta]p - 1 + En - 1, Huber's theory of robust estimation of the...
A regression estimator is said to be robust if it is still reliable in the presence of outliers. On ...
A regression estimator is said to be robust if it is still reliable in the presence of outliers. On ...
Regression analysis plays a vital role in many areas of science. Almost all regression analyses rely...
Heavy-tailed errors impair the accuracy of the least squares estimate, which can be spoiled by a sin...
The robustification parameter, which balances bias and robustness, has played a critical role in the...
AbstractIn the linear model Xn × 1 = Cn × pθp × 1 + En × 1, Huber's theory of robust estimation of t...
Many datasets are collected automatically, and are thus easily contaminated by outliers. In order to...
Outliers in the data are a common problem in applied statistics. Estimators that give reliable resul...
This study attempts to investigate the effect of outliers on estimation of parameters in regression ...
Outlying observations are often disregarded at the sacrifice of degrees of freedom or downsized via ...
Ordinary least-squares (OLS) estimates for a linear model are very sensitive to unusual values in th...
An algorithm suggested by Hendry (1999) for estimation in a regression with more regressors than obs...
In this work we extend the procedure proposed by Peña and Yohai (1999) for computing robust regressi...