Proximal gradient methods are popular in sparse optimization as they are straightforward to implement. Nevertheless, they achieve biased solutions, requiring many iterations to converge. This work addresses these issues through a suitable feedback control of the algorithm's hyperparameter. Specifically, by designing an integral control that does not substantially impact the computational complexity, we can reach an unbiased solution in a reasonable number of iterations. In the paper, we develop and analyze the convergence of the proposed approach for strongly-convex problems. Moreover, numerical simulations validate and extend the theoretical results to the non-strongly convex framework.

Integral control of the proximal gradient method for unbiased sparse optimization / Cerone, Vito; Fosson, Sophie Marie; Re, Alice; Regruto, Diego. - ELETTRONICO. - (In corso di stampa), pp. 1-6. (Intervento presentato al convegno 2025 European Control Conference (ECC) tenutosi a Thessaloniki (GRC) nel 24-27 June 2025).

Integral control of the proximal gradient method for unbiased sparse optimization

Cerone, Vito;Fosson, Sophie Marie;Re, Alice;Regruto, Diego
In corso di stampa

Abstract

Proximal gradient methods are popular in sparse optimization as they are straightforward to implement. Nevertheless, they achieve biased solutions, requiring many iterations to converge. This work addresses these issues through a suitable feedback control of the algorithm's hyperparameter. Specifically, by designing an integral control that does not substantially impact the computational complexity, we can reach an unbiased solution in a reasonable number of iterations. In the paper, we develop and analyze the convergence of the proposed approach for strongly-convex problems. Moreover, numerical simulations validate and extend the theoretical results to the non-strongly convex framework.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11583/3003595