Abstract

It is well known that the active set algorithm is very effective for smooth box constrained optimization. Many achievements have been obtained in this field. We extend the active set method to nonsmooth box constrained optimization problems, using the Moreau-Yosida regularization technique to make the objective function smooth. A limited memory BFGS method is introduced to decrease the workload of the computer. The presented algorithm has these properties: (1) all iterates are feasible and the sequence of objective functions is decreasing; (2) rapid changes in the active set are allowed; (3) the subproblem is a lower dimensional system of linear equations. The global convergence of the new method is established under suitable conditions and numerical results show that the method is effective for large-scale nonsmooth problems (5,000 variables).

Highlights

  • Consider min f ðxÞ; ð1Þ x2K where f:

  • This section states some results on nonsmooth analysis, a modified BFGS formula, and a limited memory BFGS (L-BFGS) formula for unconstrained optimization problems

  • The numerical results indicate that our algorithm is effective for these box constrained nonsmooth problems

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Summary

Introduction

Nonsmooth problems are very difficult to solve even when they are unconstrained. An active set algorithm for solving LS nonsmooth optimization models with box constraint The active-set method can be generalized when the objective function is nonsmooth.

Results
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