English

Accelerated projected gradient algorithms for sparsity constrained optimization problems

Optimization and Control 2026-02-13 v2

Abstract

We consider the projected gradient algorithm for the nonconvex best subset selection problem that minimizes a given empirical loss function under an 0\ell_0-norm constraint. Through decomposing the feasible set of the given sparsity constraint as a finite union of linear subspaces, we present two acceleration schemes with global convergence guarantees, one by same-space extrapolation and the other by subspace identification. The former fully utilizes the problem structure to greatly accelerate the optimization speed with only negligible additional cost. The latter leads to a two-stage meta-algorithm that first uses classical projected gradient iterations to identify the correct subspace containing an optimal solution, and then switches to a highly-efficient smooth optimization method in the identified subspace to attain superlinear convergence. Experiments demonstrate that the proposed accelerated algorithms are magnitudes faster than their non-accelerated counterparts as well as the state of the art.

Keywords

Cite

@article{arxiv.2211.02271,
  title  = {Accelerated projected gradient algorithms for sparsity constrained optimization problems},
  author = {Jan Harold Alcantara and Ching-pei Lee},
  journal= {arXiv preprint arXiv:2211.02271},
  year   = {2026}
}

Comments

Updated theorem 3.2 to remove a wrong claim