Difference of Convex Functions Programming Approaches for Minimax Fractional Optimization Problems: Optimality Conditions and Resolution Algorithms

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Difference of Convex Functions Programming Approaches for Minimax Fractional Optimization Problems: Optimality Conditions and Resolution Algorithms

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dc.contributor.advisor Ahmed ROUBI
dc.contributor.author Abdelouafi Ghazi
dc.description.collaborator Abdelkarim Hajjaj
dc.description.collaborator Abdelmalek Abousseror
dc.description.collaborator Mohammed Alaouli
dc.description.collaborator Rachid El Jid
dc.description.collaborator Ahmed Roubi
dc.date.accessioned 2023-09-22T14:17:26Z
dc.date.available 2023-09-22T14:17:26Z
dc.date.issued 2022
dc.identifier.uri http://toubkal.imist.ma/handle/123456789/25234
dc.description.abstract This work deals with scalar and vector minimax fractional programs whose objective functions are the maximum of the quotients of difference of convex (DC) functions. These problems are generally nonsmooth and nonconvex. We give optimality conditions and develop algorithms to find a solution to such problems. We begin our study by the particular generalized fractional programming problems with ratios of convex functions, and convex constraints. We then consider the more general case of minimax fractional programs with ratios of DC functions, and DC constraints. Optimality conditions and algorithms are also developed for vector fractional programs with ratios of DC functions, and DC constraints. For such scalar and vector problems, Dinkelbach-type algorithms fail to work since the parametric subproblems may be nonconvex, whereas the latter need a global optimal solution of these subproblems. To overcome this difficulty, we overestimate the objective function in these subproblems by a convex function, and the constraints set by an inner convex subset of the latter, which leads to convex subproblems. We establish optimality conditions of Karush-Kuhn-Tucker type for these various problems, and show that our algorithms can find points that satisfy these necessary optimality conditions. Finally, we give some numerical tests on various problems to evaluate the efficiency of the proposed algorithms.
dc.language.iso fr
dc.publisher Faculté des Sciences et Techniques, Settat - Doctorat ou Doctrat National fr_FR
dc.subject Fractional programming fr_FR
dc.subject Quotient of convex functions fr_FR
dc.subject Difference of convex functions fr_FR
dc.subject Convex programming fr_FR
dc.subject Optimality conditions fr_FR
dc.subject Proximal point methods fr_FR
dc.subject Bundle methods fr_FR
dc.subject Pareto optimality fr_FR
dc.subject Multiobjective programming fr_FR
dc.subject Dinkelbach algorithms fr_FR
dc.subject.other Mathematics
dc.title Difference of Convex Functions Programming Approaches for Minimax Fractional Optimization Problems: Optimality Conditions and Resolution Algorithms fr_FR
dc.subject.specific Applied Mathematics

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