Litcius/Paper detail

A Performance Indicator for Interactive Evolutionary Multiobjective Optimization Methods

Pouya Aghaei Pour, Sunith Bandaru, Bekir Afşar, Michael Emmerich, Kaisa Miettinen

2023IEEE Transactions on Evolutionary Computation12 citationsDOIOpen Access PDF

Abstract

In recent years, interactive evolutionary multiobjective optimization methods have been getting more and more attention. In these methods, a decision maker, who is a domain expert, is iteratively involved in the solution process and guides the solution process toward her/his desired region with preference information. However, there have not been many studies regarding the performance evaluation of interactive evolutionary methods. On the other hand, indicators have been developed for a priori methods, where the DM provides preference information before optimization. In the literature, some studies treat interactive evolutionary methods as a series of a priori steps when assessing and comparing them. In such settings, indicators designed for a priori methods can be utilized. In this paper, we propose a novel performance indicator for interactive evolutionary multiobjective optimization methods and show how it can assess the performance of these interactive methods as a whole process and not as a series of separate steps. In addition, we demonstrate the shortcomings of using indicators designed for a priori methods for comparing interactive evolutionary methods.

Topics & Concepts

A priori and a posterioriComputer scienceEvolutionary algorithmEvolutionary computationMulti-objective optimizationProcess (computing)Machine learningArtificial intelligenceDomain (mathematical analysis)Interactive evolutionary computationPreferenceOptimization problemMathematical optimizationEvolutionary programmingMathematicsAlgorithmStatisticsEpistemologyMathematical analysisOperating systemPhilosophyAdvanced Multi-Objective Optimization AlgorithmsMetaheuristic Optimization Algorithms ResearchEvolutionary Algorithms and Applications