Surrogate duality for robust quasiconvex vector optimization

Applied Analysis and Optimization Volume 2 Issue 1 Page 27-39 published_at 2018
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Title
Surrogate duality for robust quasiconvex vector optimization
Creator
Source Title
Applied Analysis and Optimization
Volume 2
Issue 1
Start Page 27
End Page 39
Descriptions
In this paper, we study quasiconvex vector optimization with data uncertainty via robust optimization. By using scalarization, we introduce two types of surrogate duality theorems for robust quasiconvex vector optimization. We show surrogate min-max duality theorems for quasiconvex vector optimization with uncertain objective and/or constraints. For the problem with uncertain objective, we introduce its robust counterpart as a set-valued optimization problem.
Subjects
multiobjective programming ( Other)
robust vector optimization ( Other)
sur- rogate duality ( Other)
constraint quali cation ( Other)
Language
eng
Resource Type journal article
Date of Issued 2018
Access Rights restricted access
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isVersionOf [URI] http://yokohamapublishers.jp/online2/opaao/vol2/p27.html isVersionOf