Open Access
April 2018 Regularization and the small-ball method I: Sparse recovery
Guillaume Lecué, Shahar Mendelson
Ann. Statist. 46(2): 611-641 (April 2018). DOI: 10.1214/17-AOS1562
Abstract

We obtain bounds on estimation error rates for regularization procedures of the form \begin{equation*}\hat{f}\in\mathop{\operatorname{argmin}}_{f\in F}(\frac{1}{N}\sum_{i=1}^{N}(Y_{i}-f(X_{i}))^{2}+\lambda \Psi(f))\end{equation*} when $\Psi$ is a norm and $F$ is convex.

Our approach gives a common framework that may be used in the analysis of learning problems and regularization problems alike. In particular, it sheds some light on the role various notions of sparsity have in regularization and on their connection with the size of subdifferentials of $\Psi$ in a neighborhood of the true minimizer.

As “proof of concept” we extend the known estimates for the LASSO, SLOPE and trace norm regularization.

Copyright © 2018 Institute of Mathematical Statistics
Guillaume Lecué and Shahar Mendelson "Regularization and the small-ball method I: Sparse recovery," The Annals of Statistics 46(2), 611-641, (April 2018). https://doi.org/10.1214/17-AOS1562
Received: 1 February 2016; Published: April 2018
Vol.46 • No. 2 • April 2018
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