Article ID Journal Published Year Pages File Type
478312 European Journal of Operational Research 2013 8 Pages PDF
Abstract

The UTAs (UTilité Additives) type methods for constructing nondecreasing additive utility functions were first proposed by Jacquet-Lagrèze and Siskos in 1982 for handling decision problems of multicriteria ranking. In this article, by UTA functions, we mean functions which are constructed by the UTA type methods. Our purpose is to propose an algorithm for globally maximizing UTA functions of a class of linear/convex multiple objective programming problems. The algorithm is established based on a branch and bound scheme, in which the branching procedure is performed by a so-called I-rectangular bisection in the objective (outcome) space, and the bounding procedure by some convex or linear programs. Preliminary computational experiments show that this algorithm can work well for the case where the number of objective functions in the multiple objective optimization problem under consideration is much smaller than the number of variables.

► We propose an algorithm for globally maximizing UTA function for convex multi-objective optimization problems. ► This is a finite branch and bound algorithm.The most expensive tasks are performed in the space of the objectives. ► The algorithm works well for problems, in which the number of objectives is much smaller than the number of variables.

Related Topics
Physical Sciences and Engineering Computer Science Computer Science (General)
Authors
,