Big data can easily be contaminated by outliers or contain variables with heavy-tailed distributions, which makes many conventional methods inadequate. To address this challenge, we propose the adaptive Huber regression for robust estimation and inference. The key observation is that the robustification parameter should adapt to the sample size, dimension and moments for optimal tradeoff between bias and robustness. Our theoretical framework deals with heavy-tailed distributions with bounded (1 + δ)-th moment for any δ > 0. We establish a sharp phase transition for robust estimation of regression parameters in both low and high dimensions: when δ ≥ 1, the estimator admits a sub-Gaussian-type deviation bound without sub-Gaussian assumptio...
Linear regression models are commonly used statistical models for predicting a response from a set o...
Data subject to heavy-tailed errors are commonly encountered in various scientific fields, es-pecial...
We consider the problem of constrained M-estimation when both explanatory and response variables hav...
Big data can easily be contaminated by outliers or contain variables with heavy-tailed distributions...
Big data can easily be contaminated by outliers or contain variables with heavy-tailed distributions...
The robustification parameter, which balances bias and robustness, has played a critical role in the...
It is traditionally believed that robustness is obtained by sacrificing efficiency. Estimators with ...
Heavy-tailed errors impair the accuracy of the least squares estimate, which can be spoiled by a sin...
International audienceThe Huber's Criterion is a useful method for robust regression. The adaptive l...
Outlying observations are often disregarded at the sacrifice of degrees of freedom or downsized via ...
<p>It is traditionally believed that robustness is obtained by sacrificing efficiency. Estimators wi...
Robust estimation often relies on a dispersion function that is more slowly varying at large values ...
Outliers in the data are a common problem in applied statistics. Estimators that give reliable resul...
Quantifying the uncertainty of estimated parameters in high dimensional sparse models gives critical...
Abstract—We consider the problem of estimating a determin-istic unknown vector which depends linearl...
Linear regression models are commonly used statistical models for predicting a response from a set o...
Data subject to heavy-tailed errors are commonly encountered in various scientific fields, es-pecial...
We consider the problem of constrained M-estimation when both explanatory and response variables hav...
Big data can easily be contaminated by outliers or contain variables with heavy-tailed distributions...
Big data can easily be contaminated by outliers or contain variables with heavy-tailed distributions...
The robustification parameter, which balances bias and robustness, has played a critical role in the...
It is traditionally believed that robustness is obtained by sacrificing efficiency. Estimators with ...
Heavy-tailed errors impair the accuracy of the least squares estimate, which can be spoiled by a sin...
International audienceThe Huber's Criterion is a useful method for robust regression. The adaptive l...
Outlying observations are often disregarded at the sacrifice of degrees of freedom or downsized via ...
<p>It is traditionally believed that robustness is obtained by sacrificing efficiency. Estimators wi...
Robust estimation often relies on a dispersion function that is more slowly varying at large values ...
Outliers in the data are a common problem in applied statistics. Estimators that give reliable resul...
Quantifying the uncertainty of estimated parameters in high dimensional sparse models gives critical...
Abstract—We consider the problem of estimating a determin-istic unknown vector which depends linearl...
Linear regression models are commonly used statistical models for predicting a response from a set o...
Data subject to heavy-tailed errors are commonly encountered in various scientific fields, es-pecial...
We consider the problem of constrained M-estimation when both explanatory and response variables hav...