Article ID: | iaor20122821 |
Volume: | 153 |
Issue: | 1 |
Start Page Number: | 123 |
End Page Number: | 138 |
Publication Date: | Apr 2012 |
Journal: | Journal of Optimization Theory and Applications |
Authors: | Peypouquet Juan |
Keywords: | programming: convex |
In this paper, we propose and analyze an algorithm that couples the gradient method with a general exterior penalization scheme for constrained or hierarchical minimization of convex functions in Hilbert spaces. We prove that a proper but simple choice of the step sizes and penalization parameters guarantees the convergence of the algorithm to solutions for the optimization problem. We also establish robustness and stability results that account for numerical approximation errors, discuss implementation issues and provide examples in finite and infinite dimension.