English

Optimization over Sparse Symmetric Sets via a Nonmonotone Projected Gradient Method

Optimization and Control 2015-12-01 v3 Machine Learning Numerical Analysis Computation Machine Learning

Abstract

We consider the problem of minimizing a Lipschitz differentiable function over a class of sparse symmetric sets that has wide applications in engineering and science. For this problem, it is known that any accumulation point of the classical projected gradient (PG) method with a constant stepsize 1/L1/L satisfies the LL-stationarity optimality condition that was introduced in [3]. In this paper we introduce a new optimality condition that is stronger than the LL-stationarity optimality condition. We also propose a nonmonotone projected gradient (NPG) method for this problem by incorporating some support-changing and coordintate-swapping strategies into a projected gradient method with variable stepsizes. It is shown that any accumulation point of NPG satisfies the new optimality condition and moreover it is a coordinatewise stationary point. Under some suitable assumptions, we further show that it is a global or a local minimizer of the problem. Numerical experiments are conducted to compare the performance of PG and NPG. The computational results demonstrate that NPG has substantially better solution quality than PG, and moreover, it is at least comparable to, but sometimes can be much faster than PG in terms of speed.

Keywords

Cite

@article{arxiv.1509.08581,
  title  = {Optimization over Sparse Symmetric Sets via a Nonmonotone Projected Gradient Method},
  author = {Zhaosong Lu},
  journal= {arXiv preprint arXiv:1509.08581},
  year   = {2015}
}

Comments

30 pages

R2 v1 2026-06-22T11:07:44.397Z