English

An enriched second-order method for nonconvex composite sparse optimization problems

Optimization and Control 2021-02-15 v3

Abstract

In this paper we propose a second--order method for solving \emph{linear composite sparse optimization problems} consisting of minimizing the sum of a differentiable (possibly nonconvex function) and a nondifferentiable convex term. The composite nondifferentiable convex penalizer is given by 1\ell_1--norm of a matrix multiplied with the coefficient vector. The algorithm that we propose for the case of the linear composite 1\ell_1 problem relies on the three main ingredients that power the OESOM algorithm \cite{dlrlm07}: the minimum norm subgradient, a projection step and, in particular, the second--order information associated to the nondifferentiable term. By extending these devices, we obtain a full second--order method for solving composite sparse optimization problems which includes a wide range of applications. For instance, problems involving the minimization of a general class \emph{differential graph operators} can be solved with the proposed algorithm. We present several computational experiments to show the efficiency of our approach for different application examples.

Keywords

Cite

@article{arxiv.2009.01878,
  title  = {An enriched second-order method for nonconvex composite sparse optimization problems},
  author = {Pedro Merino and Juan Carlos De Los Reyes},
  journal= {arXiv preprint arXiv:2009.01878},
  year   = {2021}
}