In this paper, we evaluate the numerical performance of the alternating projection method (APM) and a regularized variant of the same method (RAPM) for matrix completion. Both methods are based on the reformulation of matrix completion as a nonconvex feasibility problem. However, the regularized method shares global convergence guarantees even in the nonconvex setting, unlike its standard counterpart. Numerical experiments on randomly generated Gaussian matrices show that RAPM is much more robust with respect to the choice of the initial guess than APM is, as well as being insensitive to the regularization effect for a wide range of regularization parameters. Preliminary numerical results showing the effectiveness of RAPM on some sparse image reconstruction test problems are also presented.

Numerical Assessment of Alternating Projection Methods for Matrix Completion with Application to Sparse Image Reconstruction / Silei, Mattia; Bellavia, Stefania; Rebegoldi, Simone. - STAMPA. - 15892 LNCS:(2026), pp. 430-446. ( Workshops of the International Conference on Computational Science and Its Applications, ICCSA 2025 tur 2025) [10.1007/978-3-031-97638-4_27].

Numerical Assessment of Alternating Projection Methods for Matrix Completion with Application to Sparse Image Reconstruction

Silei, Mattia
;
Bellavia, Stefania;Rebegoldi, Simone
2026

Abstract

In this paper, we evaluate the numerical performance of the alternating projection method (APM) and a regularized variant of the same method (RAPM) for matrix completion. Both methods are based on the reformulation of matrix completion as a nonconvex feasibility problem. However, the regularized method shares global convergence guarantees even in the nonconvex setting, unlike its standard counterpart. Numerical experiments on randomly generated Gaussian matrices show that RAPM is much more robust with respect to the choice of the initial guess than APM is, as well as being insensitive to the regularization effect for a wide range of regularization parameters. Preliminary numerical results showing the effectiveness of RAPM on some sparse image reconstruction test problems are also presented.
2026
Lecture Notes in Computer Science
Workshops of the International Conference on Computational Science and Its Applications, ICCSA 2025
tur
2025
Silei, Mattia; Bellavia, Stefania; Rebegoldi, Simone
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1435094
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