Convex approximations in stochastic programming by semidefinite programming

Convex approximations in stochastic programming by semidefinite programming

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Article ID: iaor20126100
Volume: 200
Issue: 1
Start Page Number: 171
End Page Number: 182
Publication Date: Nov 2012
Journal: Annals of Operations Research
Authors: , , ,
Keywords: programming: probabilistic
Abstract:

The following question arises in stochastic programming: how can one approximate a noisy convex function with a convex quadratic function that is optimal in some sense. Using several approaches for constructing convex approximations we present some optimization models yielding convex quadratic regressions that are optimal approximations in L 1, L and L 2 norm. Extensive numerical experiments to investigate the behavior of the proposed methods are also performed.

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