Article ID: | iaor20127455 |
Volume: | 34 |
Issue: | 3 |
Start Page Number: | 283 |
End Page Number: | 303 |
Publication Date: | Jul 2000 |
Journal: | RAIRO - Operations Research |
Authors: | Humes Carlos, E Silva Paulo Jose Da Silva |
Keywords: | optimization |
Proximal Point Methods (PPM) can be traced to the pioneer works of Moreau [16], Martinet [14, 15] and Rockafellar [19, 20] who used as regularization function the square of the Euclidean norm. In this work, we study PPM in the context of optimization and we derive a class of such methods which contains Rockafellar's result. We also present a less stringent criterion to the acceptance of an approximate solution to the subproblems that arise in the inner loops of PPM. Moreover, we introduce a new family of augmented Lagrangian methods for convex constrained optimization, that generalizes the