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2008 OPTIMIZATION THEORY FOR SET FUNCTIONS IN NONDIFFERENTIABLE FRACTIONAL PROGRAMMING WITH MIXED TYPE DUALITY
T.-Y. Huang, H.-C. Lai, S. Schaible
Taiwanese J. Math. 12(8): 2031-2044 (2008). DOI: 10.11650/twjm/1500405134

Abstract

We revisit optimization theory involving set functions which are defined on a family of measurable subsets in a measure space. In this paper, we focus on a minimax fractional programming problem with subdifferentiable set functions. Using nonparametric necessary optimality conditions, we introduce generalized $(\mathcal{F},\rho, \theta)$-convexity to establish several sufficient optimality conditions for a minimax programming problem, and construct a new dual model to unify the Wolfe type dual and the Mond-Weir type dual as special cases of this dual programming problem. Finally we establish a weak, strong, and strict converse duality theorem.

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T.-Y. Huang. H.-C. Lai. S. Schaible. "OPTIMIZATION THEORY FOR SET FUNCTIONS IN NONDIFFERENTIABLE FRACTIONAL PROGRAMMING WITH MIXED TYPE DUALITY." Taiwanese J. Math. 12 (8) 2031 - 2044, 2008. https://doi.org/10.11650/twjm/1500405134

Information

Published: 2008
First available in Project Euclid: 18 July 2017

zbMATH: 1173.90008
MathSciNet: MR2449961
Digital Object Identifier: 10.11650/twjm/1500405134

Subjects:
Primary: 26A51‎ , 49A50 , 90C25

Keywords: $(\mathcal{F}, \rho, \theta)$-convex, -pseudoconvex, -quasiconvex functions , convex family of measurable sets , convex set function , duality theorems , subdifferentiable set function

Rights: Copyright © 2008 The Mathematical Society of the Republic of China

Vol.12 • No. 8 • 2008
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