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Primal-Dual Solution Perturbations in Convex Optimization
Authors:A. L. Dontchev and R. T. Rockafellar
Affiliation:(1) Mathematical Reviews, Ann Arbor, MI, 4801-8604, U.S.A;(2) Department of Mathematics, University of Washington, Seattle, WA, 98195-4350, U.S.A
Abstract:Solutions to optimization problems of convex type are typically characterized by saddle point conditions in which the primal vector is paired with a dual lsquomultiplierrsquo vector. This paper investigates the behavior of such a primal-dual pair with respect to perturbations in parameters on which the problem depends. A necessary and sufficient condition in terms of certain matrices is developed for the mapping from parameter vectors to saddle points to be single-valued and Lipschitz continuous locally. It is shown that the saddle point mapping is then semi-differentiable, and that its semi-derivative at any point and in any direction can be calculated by determining the unique solutions to an auxiliary problem of extended linear-quadratic programming and its dual. A matrix characterization of calmness of the solution mapping is provided as well.
Keywords:parametric convex optimization  saddle points  sensitivity analysis  stability  solution perturbations  semi-derivatives  proto-derivatives  variational analysis
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