A smoothing sample average approximation method for stochastic optimization problems with CVaR risk measure

A smoothing sample average approximation method for stochastic optimization problems with CVaR risk measure

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Article ID: iaor20119930
Volume: 50
Issue: 2
Start Page Number: 379
End Page Number: 401
Publication Date: Oct 2011
Journal: Computational Optimization and Applications
Authors: , ,
Keywords: stochastic processes, statistics: sampling, optimization, heuristics, management
Abstract:

This paper is concerned with solving single CVaR and mixed CVaR minimization problems. A CHKS‐type smoothing sample average approximation (SAA) method is proposed for solving these two problems, which retains the convexity and smoothness of the original problem and is easy to implement. For any fixed smoothing constant ϵ, this method produces a sequence whose cluster points are weak stationary points of the CVaR optimization problems with probability one. This framework of combining smoothing technique and SAA scheme can be extended to other smoothing functions as well. Practical numerical examples arising from logistics management are presented to show the usefulness of this method.

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