This paper proposes the Necessary-preference-enhanced Evolutionary Multiobjective Optimizer (NEMO), a combination of an evolutionary multiobjective optimization method, NSGA-II, and an interactive multiobjective optimization method, GRIP. In the course of NEMO, the decision maker is able to introduce preference information in a holistic way, by simply comparing some pairs of solutions and specifying which solution is preferred, or comparing intensities of preferences between pairs of solutions. From this information, the set of all compatible value functions is derived using GRIP, and a properly modified version of NSGA-II is then used to search for a representative set of all Pareto-optimal solutions compatible with this set of derived val...
We present a new hybrid approach to interactive evolutionary multi-objective optimization that uses ...
Nowadays, most approaches in the evolutionary multiobjective optimization literature concentrate mai...
Finding the overall Pareto optimal front while addressing the effect of an increasing number of obje...
This paper presents the Necessary-preference-enhanced Evolutionary Multiobjective Optimizer (NEMO), ...
This paper suggests a preference-based methodology, which is embedded in an evolutionary multiobject...
In this paper, we describe an interactive evolutionary algorithm called Interactive WASF-GA to solv...
In this chapter we present a new interactive procedure for multiobjective optimization, which is ba...
We propose an interactive multiobjective evolutionary algorithm that attempts to discover the most p...
This paper proposes an interactive multiobjective evolutionary algorithm (MOEA) that attempts to lea...
Abstract. In this chapter, we present a new interactive procedure for multiobjec-tive optimization, ...
In many practical situations the decision-maker has to pay special attention to decision space to de...
With the advent of efficient techniques for multi-objective evolutionary optimization (EMO), real-wo...
Solving multiobjective optimization problems with interactive methods enables a decision maker with ...
Preference-based Evolutionary Multiobjective Optimization (EMO) algorithms approximate the region of...
In optimization, multiple objectives and constraints cannot be handled independently of the underlyi...
We present a new hybrid approach to interactive evolutionary multi-objective optimization that uses ...
Nowadays, most approaches in the evolutionary multiobjective optimization literature concentrate mai...
Finding the overall Pareto optimal front while addressing the effect of an increasing number of obje...
This paper presents the Necessary-preference-enhanced Evolutionary Multiobjective Optimizer (NEMO), ...
This paper suggests a preference-based methodology, which is embedded in an evolutionary multiobject...
In this paper, we describe an interactive evolutionary algorithm called Interactive WASF-GA to solv...
In this chapter we present a new interactive procedure for multiobjective optimization, which is ba...
We propose an interactive multiobjective evolutionary algorithm that attempts to discover the most p...
This paper proposes an interactive multiobjective evolutionary algorithm (MOEA) that attempts to lea...
Abstract. In this chapter, we present a new interactive procedure for multiobjec-tive optimization, ...
In many practical situations the decision-maker has to pay special attention to decision space to de...
With the advent of efficient techniques for multi-objective evolutionary optimization (EMO), real-wo...
Solving multiobjective optimization problems with interactive methods enables a decision maker with ...
Preference-based Evolutionary Multiobjective Optimization (EMO) algorithms approximate the region of...
In optimization, multiple objectives and constraints cannot be handled independently of the underlyi...
We present a new hybrid approach to interactive evolutionary multi-objective optimization that uses ...
Nowadays, most approaches in the evolutionary multiobjective optimization literature concentrate mai...
Finding the overall Pareto optimal front while addressing the effect of an increasing number of obje...