We discuss methods for generating or approximating the Pareto set of multiobjective optimization problems by solving a sequence of constrained single-objective problems. The necessity of determining the constraint value a priori is shown to be a serious drawback of the original epsilon-constraint method. We therefore propose a new, adaptive scheme to generate appropriate constraint values during the run. A simple example problem is presented, where the running time (measured by the number of constrained single-objective sub-problems to be solved) of the original epsilon-constraint method is exponential in the problem size (number of decision variables), although the size of the Pareto set grows only linearly. We prove that --- independent o...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
In many multiobjective optimization problems, the Pareto Fronts and Sets contain a large number of s...
Abstract In this paper we consider the problem of generating a well sampled discrete representation ...
This paper presents a hybrid method to solve hard multiobjective problems. The proposed approach ado...
In this article, we propose novel strategies for the efficient determination of multiple solutions f...
Generation (or a posteriori) methods in Multi-Objective Mathematical Programming (MOMP) is the most ...
In this paper, we solve instances of the multiobjective multiconstraint (or multidimensional) knapsa...
The set of available multi-objective optimization algorithms continues to grow. This fact can be pa...
Engineering design often involves the optimization of different competing objectives. The aim is to ...
In this paper we revisit one of the most important scalarization techniques used in multiobjective p...
Many objective optimization is a natural extension to multi-objective optimization where the number ...
Since the suggestion of a computing procedure of multiple Pareto-optimal solutions in multi-objectiv...
This paper presents a hybrid method to solve hard multi- objective problems. The proposed approach a...
In this work we study the convergence of generic stochastic search algorithms toward the Pareto set ...
We rigorously analyze the runtime of evolutionary algorithms for the classical knapsack problem wher...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
In many multiobjective optimization problems, the Pareto Fronts and Sets contain a large number of s...
Abstract In this paper we consider the problem of generating a well sampled discrete representation ...
This paper presents a hybrid method to solve hard multiobjective problems. The proposed approach ado...
In this article, we propose novel strategies for the efficient determination of multiple solutions f...
Generation (or a posteriori) methods in Multi-Objective Mathematical Programming (MOMP) is the most ...
In this paper, we solve instances of the multiobjective multiconstraint (or multidimensional) knapsa...
The set of available multi-objective optimization algorithms continues to grow. This fact can be pa...
Engineering design often involves the optimization of different competing objectives. The aim is to ...
In this paper we revisit one of the most important scalarization techniques used in multiobjective p...
Many objective optimization is a natural extension to multi-objective optimization where the number ...
Since the suggestion of a computing procedure of multiple Pareto-optimal solutions in multi-objectiv...
This paper presents a hybrid method to solve hard multi- objective problems. The proposed approach a...
In this work we study the convergence of generic stochastic search algorithms toward the Pareto set ...
We rigorously analyze the runtime of evolutionary algorithms for the classical knapsack problem wher...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
In many multiobjective optimization problems, the Pareto Fronts and Sets contain a large number of s...
Abstract In this paper we consider the problem of generating a well sampled discrete representation ...