Iterative regularization for low complexity regularizers
Author(s)
Molinari, Cesare; Massias, Mathurin; Rosasco, Lorenzo; Villa, Silvia
Download211_2023_1390_ReferencePDF.pdf (1.256Mb)
Publisher Policy
Publisher Policy
Article is made available in accordance with the publisher's policy and may be subject to US copyright law. Please refer to the publisher's site for terms of use.
Terms of use
Metadata
Show full item recordAbstract
Iterative regularization exploits the implicit bias of optimization algorithms to regularize ill-posed problems. Constructing algorithms with such built-in regularization mechanisms is a classic challenge in inverse problems but also in modern machine learning, where it provides both a new perspective on algorithms analysis, and significant speed-ups compared to explicit regularization. In this work, we propose and study the first iterative regularization procedure with explicit computational steps able to handle biases described by non smooth and non strongly convex functionals, prominent in low-complexity regularization. Our approach is based on a primal-dual algorithm of which we analyze convergence and stability properties, even in the case where the original problem is unfeasible. The general results are illustrated considering the special case of sparse recovery with the ℓ 1 penalty. Our theoretical results are complemented by experiments showing the computational benefits of our approach.
Date issued
2024-02-10Journal
Numerische Mathematik
Publisher
Springer Berlin Heidelberg
Citation
Molinari, C., Massias, M., Rosasco, L. et al. Iterative regularization for low complexity regularizers. Numer. Math. 156, 641–689 (2024).
Version: Author's final manuscript