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Optimization
A Journal of Mathematical Programming and Operations Research
Volume 64, 2015 - Issue 4
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Articles

The exact penalty map for nonsmooth and nonconvex optimization

, &
Pages 717-738 | Received 28 Jun 2012, Accepted 23 Jun 2013, Published online: 02 Sep 2013
 

Abstract

Augmented Lagrangian duality provides zero duality gap and saddle point properties for nonconvex optimization. On the basis of this duality, subgradient-like methods can be applied to the (convex) dual of the original problem. These methods usually recover the optimal value of the problem, but may fail to provide a primal solution. We prove that the recovery of a primal solution by such methods can be characterized in terms of (i) the differentiability properties of the dual function and (ii) the exact penalty properties of the primal-dual pair. We also connect the property of finite termination with exact penalty properties of the dual pair. In order to establish these facts, we associate the primal-dual pair to a penalty map. This map, which we introduce here, is a convex and globally Lipschitz function and its epigraph encapsulates information on both primal and dual solution sets.

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