We study optimization problems extended by a flexible objective, namely the Ordered Median Function (OMF). The OMF incorporates a large number of objectives into one function. Concrete objectives are given by choosing values for a parameter vector. Using optimization problems extended by the OMF, only one model, solution algorithm and implementation is necessary to analyze many concrete objectives. In this paper, we propose a general framework to model optimization problems extended by the OMF. The approach is based on a formulation of the OMF using partial sums of sorted values. It is problem-independent and can be applied to any optimization problem if a linear or mixed-integer linear representation of the set of feasible solutions is ava...
Many problems can be formulated as the optimization of functions in R 2 which are implicitly defined...
A number of methods for multiple-objective optimization problems (MOP) give as solution to MOP the s...
A number of methods for multiple-objective optimization problems (MOP) give as solution to MOP the s...
Multiobjective combinatorial optimization deals with problems considering more than one viewpoint or...
Multiobjective combinatorial optimization deals with problems considering more than one viewpoint or...
Model-based optimization methods are a class of random search methods that are useful for solving gl...
Book chapter from Computer Science and Operations Research: New Developments in their Interfaces, ed...
Book chapter from Computer Science and Operations Research: New Developments in their Interfaces, ed...
Optimization is a process that aims to find the best, most favorable, or most optimized solution for...
To model flexible objectives for discrete location problems, ordered median functions can be applied...
Abstract: Meta-heuristics are an effective paradigm for solving large-scale combinatorial optimizati...
A new model for the weighted method of goal programming is proposed based on minimizing the distance...
AbstractFlexible discrete location problems are a generalization of most classical discrete location...
A partial-order plan (POP) compactly encodes a set of sequential plans that can be dynamically chose...
A partial-order plan (POP) compactly encodes a set of sequential plans that can be dynamically chose...
Many problems can be formulated as the optimization of functions in R 2 which are implicitly defined...
A number of methods for multiple-objective optimization problems (MOP) give as solution to MOP the s...
A number of methods for multiple-objective optimization problems (MOP) give as solution to MOP the s...
Multiobjective combinatorial optimization deals with problems considering more than one viewpoint or...
Multiobjective combinatorial optimization deals with problems considering more than one viewpoint or...
Model-based optimization methods are a class of random search methods that are useful for solving gl...
Book chapter from Computer Science and Operations Research: New Developments in their Interfaces, ed...
Book chapter from Computer Science and Operations Research: New Developments in their Interfaces, ed...
Optimization is a process that aims to find the best, most favorable, or most optimized solution for...
To model flexible objectives for discrete location problems, ordered median functions can be applied...
Abstract: Meta-heuristics are an effective paradigm for solving large-scale combinatorial optimizati...
A new model for the weighted method of goal programming is proposed based on minimizing the distance...
AbstractFlexible discrete location problems are a generalization of most classical discrete location...
A partial-order plan (POP) compactly encodes a set of sequential plans that can be dynamically chose...
A partial-order plan (POP) compactly encodes a set of sequential plans that can be dynamically chose...
Many problems can be formulated as the optimization of functions in R 2 which are implicitly defined...
A number of methods for multiple-objective optimization problems (MOP) give as solution to MOP the s...
A number of methods for multiple-objective optimization problems (MOP) give as solution to MOP the s...