We focus on the optimization problem with smooth, possibly nonconvex objectives and a convex constraint set for which the Euclidean projection operation is practically available. Focusing on this setting, we carry out a general convergence and complexity analysis for algorithmic frameworks. Consequently, we discuss theoretically sound strategies to integrate momentum information within classical projected gradient-type algorithms. One of these approaches is then developed in detail, up to the definition of a tailored algorithm with both theoretical guarantees and reasonable per-iteration cost. The proposed method is finally shown to outperform the standard (spectral) projected gradient method in two different experimental benchmarks, indicating that the addition of momentum terms is as beneficial in the constrained setting as it is in the unconstrained scenario.

Projected Gradient Methods with Momentum / Lapucci, M., Liuzzi, G., Lucidi, S., Sciandrone, M., Scuppa, D.. - In: JOURNAL OF OPTIMIZATION THEORY AND APPLICATIONS. - ISSN 0022-3239. - ELETTRONICO. - 210:(2026), pp. 0-0. [10.1007/s10957-026-03054-7]

Projected Gradient Methods with Momentum

Lapucci, Matteo;Liuzzi, Giampaolo;Lucidi, Stefano;Sciandrone, Marco;
2026

Abstract

We focus on the optimization problem with smooth, possibly nonconvex objectives and a convex constraint set for which the Euclidean projection operation is practically available. Focusing on this setting, we carry out a general convergence and complexity analysis for algorithmic frameworks. Consequently, we discuss theoretically sound strategies to integrate momentum information within classical projected gradient-type algorithms. One of these approaches is then developed in detail, up to the definition of a tailored algorithm with both theoretical guarantees and reasonable per-iteration cost. The proposed method is finally shown to outperform the standard (spectral) projected gradient method in two different experimental benchmarks, indicating that the addition of momentum terms is as beneficial in the constrained setting as it is in the unconstrained scenario.
2026
210
0
0
Lapucci, Matteo; Liuzzi, Giampaolo; Lucidi, Stefano; Sciandrone, Marco; Scuppa, Diego
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1478432
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