Article ID Journal Published Year Pages File Type
478305 European Journal of Operational Research 2013 6 Pages PDF
Abstract

We develop a duality theory for minimax fractional programming problems in the face of data uncertainty both in the objective and constraints. Following the framework of robust optimization, we establish strong duality between the robust counterpart of an uncertain minimax convex–concave fractional program, termed as robust minimax fractional program, and the optimistic counterpart of its uncertain conventional dual program, called optimistic dual. In the case of a robust minimax linear fractional program with scenario uncertainty in the numerator of the objective function, we show that the optimistic dual is a simple linear program when the constraint uncertainty is expressed as bounded intervals. We also show that the dual can be reformulated as a second-order cone programming problem when the constraint uncertainty is given by ellipsoids. In these cases, the optimistic dual problems are computationally tractable and their solutions can be validated in polynomial time. We further show that, for robust minimax linear fractional programs with interval uncertainty, the conventional dual of its robust counterpart and the optimistic dual are equivalent.

► New duality theory for minimax fractional programs in the face of data uncertainty. ► Robust optimization approach to duality theory for inexact fractional programs. ► Easily solvable duals for minimax linear fractional programs under uncertainty.

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Physical Sciences and Engineering Computer Science Computer Science (General)
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