This paper introduces a novel approach to learning sparsity-promoting regularizers for solving linear inverse problems. We develop a bilevel optimization framework to select an optimal synthesis operator, denoted as B, which regularizes the inverse problem while promoting sparsity in the solution. The method leverages statistical properties of the underlying data and incorporates prior knowledge through the choice of B. We establish the well-posedness of the optimization problem, provide theoretical guarantees for the learning process, and present sample complexity bounds. The approach is demonstrated through theoretical infinite-dimensional examples, including compact perturbations of a known operator and the problem of learning the mother wavelet, and through extensive numerical simulations. This work extends previous efforts in Tikhonov regularization by addressing nondifferentiable norms and proposing a data-driven approach to sparse regularization in infinite dimensions.

Alberti, G.S., De Vito, E., Helin, T., Lassas, M., Ratti, L., Santacesaria, M. (2026). Learning Sparsity-Promoting Regularizers for Linear Inverse Problems. SIAM JOURNAL ON MATHEMATICS OF DATA SCIENCE, 8(1), 167-199 [10.1137/24M1719785].

Learning Sparsity-Promoting Regularizers for Linear Inverse Problems

De Vito E.;Ratti L.
;
2026

Abstract

This paper introduces a novel approach to learning sparsity-promoting regularizers for solving linear inverse problems. We develop a bilevel optimization framework to select an optimal synthesis operator, denoted as B, which regularizes the inverse problem while promoting sparsity in the solution. The method leverages statistical properties of the underlying data and incorporates prior knowledge through the choice of B. We establish the well-posedness of the optimization problem, provide theoretical guarantees for the learning process, and present sample complexity bounds. The approach is demonstrated through theoretical infinite-dimensional examples, including compact perturbations of a known operator and the problem of learning the mother wavelet, and through extensive numerical simulations. This work extends previous efforts in Tikhonov regularization by addressing nondifferentiable norms and proposing a data-driven approach to sparse regularization in infinite dimensions.
2026
Alberti, G.S., De Vito, E., Helin, T., Lassas, M., Ratti, L., Santacesaria, M. (2026). Learning Sparsity-Promoting Regularizers for Linear Inverse Problems. SIAM JOURNAL ON MATHEMATICS OF DATA SCIENCE, 8(1), 167-199 [10.1137/24M1719785].
Alberti, G. S.; De Vito, E.; Helin, T.; Lassas, M.; Ratti, L.; Santacesaria, M.
File in questo prodotto:
Eventuali allegati, non sono esposti

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/1064291
 Attenzione

Attenzione! I dati visualizzati non sono stati sottoposti a validazione da parte dell'ateneo

Citazioni
  • ???jsp.display-item.citation.pmc??? ND
  • Scopus ND
  • ???jsp.display-item.citation.isi??? ND
  • OpenAlex ND
social impact