Heavy-tailed errors impair the accuracy of the least squares estimate, which can be spoiled by a single grossly outlying observation. As argued in the seminal work of Peter Huber in 1973 [Ann. Statist.1 (1973) 799-821], robust alternatives to the method of least squares are sorely needed. To achieve robustness against heavy-tailed sampling distributions, we revisit the Huber estimator from a new perspective by letting the tuning parameter involved diverge with the sample size. In this paper, we develop nonasymptotic concentration results for such an adaptive Huber estimator, namely, the Huber estimator with the tuning parameter adapted to sample size, dimension, and the variance of the noise. Specifically, we obtain a sub-Gaussian-type devi...
International audienceThis paper provides an original asymptotic analysis of robust adaptive detecto...
Data sets where the number of variables p is comparable to or larger than the number of observations...
We consider the problem of constrained M-estimation when both explanatory and response variables hav...
A stylized feature of high-dimensional data is that many variables have heavy tails, and robust stat...
Big data can easily be contaminated by outliers or contain variables with heavy-tailed distributions...
Summary. Huber’s m-estimates use an estimating equation in which observations are permitted a con-tr...
Big data can easily be contaminated by outliers or contain variables with heavy-tailed distributions...
In multiple testing problems where the components come from a mixture model of noise and true effect...
Artículo de publicación ISIA quantitative study of the robustness properties of the and the Huber M-...
We consider multiple testing means of many dependent Normal random variables that do not necessarily...
peer reviewedWe consider the problem of estimating a deterministic unknown vector which depends line...
An important estimation problem that is closely related to large-scale multiple testing is that of e...
We review some first-and higher-order asymptotic techniques for M-estimators and we study their stab...
A method for robust nonparametric regression is discussed. A method for robust nonparametric regress...
International audienceWe present a new finite-sample analysis of M-estimators of locations in a Hilb...
International audienceThis paper provides an original asymptotic analysis of robust adaptive detecto...
Data sets where the number of variables p is comparable to or larger than the number of observations...
We consider the problem of constrained M-estimation when both explanatory and response variables hav...
A stylized feature of high-dimensional data is that many variables have heavy tails, and robust stat...
Big data can easily be contaminated by outliers or contain variables with heavy-tailed distributions...
Summary. Huber’s m-estimates use an estimating equation in which observations are permitted a con-tr...
Big data can easily be contaminated by outliers or contain variables with heavy-tailed distributions...
In multiple testing problems where the components come from a mixture model of noise and true effect...
Artículo de publicación ISIA quantitative study of the robustness properties of the and the Huber M-...
We consider multiple testing means of many dependent Normal random variables that do not necessarily...
peer reviewedWe consider the problem of estimating a deterministic unknown vector which depends line...
An important estimation problem that is closely related to large-scale multiple testing is that of e...
We review some first-and higher-order asymptotic techniques for M-estimators and we study their stab...
A method for robust nonparametric regression is discussed. A method for robust nonparametric regress...
International audienceWe present a new finite-sample analysis of M-estimators of locations in a Hilb...
International audienceThis paper provides an original asymptotic analysis of robust adaptive detecto...
Data sets where the number of variables p is comparable to or larger than the number of observations...
We consider the problem of constrained M-estimation when both explanatory and response variables hav...