Distribution-Free Robust Linear Regression
Mourtada, Jaouad, Vaškevičius, Tomas, Zhivotovskiy, Nikita
We study random design linear regression with no assumptions on the distribution of the covariates and with a heavy-tailed response variable. In this distribution-free regression setting, we show that boundedness of the conditional second moment of the response given the covariates is a necessary and sufficient condition for achieving nontrivial guarantees. As a starting point, we prove an optimal version of the classical in-expectation bound for the truncated least squares estimator due to Gy\"{o}rfi, Kohler, Krzy\.{z}ak, and Walk. However, we show that this procedure fails with constant probability for some distributions despite its optimal in-expectation performance. Then, combining the ideas of truncated least squares, median-of-means procedures, and aggregation theory, we construct a non-linear estimator achieving excess risk of order $d/n$ with an optimal sub-exponential tail. While existing approaches to linear regression for heavy-tailed distributions focus on proper estimators that return linear functions, we highlight that the improperness of our procedure is necessary for attaining nontrivial guarantees in the distribution-free setting.
Oct-21-2021
- Country:
- Europe
- Switzerland > Zürich
- Zürich (0.14)
- United Kingdom > England
- Oxfordshire > Oxford (0.14)
- Switzerland > Zürich
- Europe
- Genre:
- Research Report (1.00)
- Technology: