A Conic Scalarization Method in Multi-Objective Optimization
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Date
2013
Authors
Kasimbeyli̇, Refail
Journal Title
Journal ISSN
Volume Title
Publisher
Springer
Open Access Color
Green Open Access
No
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Publicly Funded
No
Abstract
This paper presents the conic scalarization method for scalarization of nonlinear multi-objective optimization problems. We introduce a special class of monotonically increasing sublinear scalarizing functions and show that the zero sublevel set of every function from this class is a convex closed and pointed cone which contains the negative ordering cone. We introduce the notion of a separable cone and show that two closed cones (one of them is separable) having only the vertex in common can be separated by a zero sublevel set of some function from this class. It is shown that the scalar optimization problem constructed by using these functions, enables to characterize the complete set of efficient and properly efficient solutions of multi-objective problems without convexity and boundedness conditions. By choosing a suitable scalarizing parameter set consisting of a weighting vector, an augmentation parameter, and a reference point, decision maker may guarantee a most preferred efficient or properly efficient solution.
Description
Keywords
Separable cone, Cone separation theorem, Augmented dual cones, Sublinear scalarizing functions, Conic scalarization method, Multi-objective optimization, Proper efficiency, Nonconvex Vector Optimization, Proper Efficiency, Respect, Cones, Set, Preferences, Assignment, Separation, Duality, multi-objective optimization, separable cone, sublinear scalarizing functions, conic scalarization method, augmented dual cones, Multi-objective and goal programming, cone separation theorem, proper efficiency
Fields of Science
0211 other engineering and technologies, 02 engineering and technology
Citation
WoS Q
Q2
Scopus Q
Q2

OpenCitations Citation Count
38
Source
Journal of Global Optımızatıon
Volume
56
Issue
2
Start Page
279
End Page
297
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Citations
CrossRef : 19
Scopus : 49
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Mendeley Readers : 15
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