6533b7dafe1ef96bd126e2d9
RESEARCH PRODUCT
A Preference-Based Evolutionary Algorithm for Multi-Objective Optimization
Pekka KorhonenLothar ThieleKaisa MiettinenJulián Molinasubject
Mathematical optimizationeducation.field_of_studyFitness functionDecision MakingPopulationEvolutionary algorithmInteractive evolutionary computationFunction (mathematics)Multi-objective optimizationPreferenceSet (abstract data type)Computational MathematicsData Interpretation StatisticalHumanseducationAlgorithmsMathematicsdescription
In this paper, we discuss the idea of incorporating preference information into evolutionary multi-objective optimization and propose a preference-based evolutionary approach that can be used as an integral part of an interactive algorithm. One algorithm is proposed in the paper. At each iteration, the decision maker is asked to give preference information in terms of his or her reference point consisting of desirable aspiration levels for objective functions. The information is used in an evolutionary algorithm to generate a new population by combining the fitness function and an achievement scalarizing function. In multi-objective optimization, achievement scalarizing functions are widely used to project a given reference point into the Pareto optimal set. In our approach, the next population is thus more concentrated in the area where more preferred alternatives are assumed to lie and the whole Pareto optimal set does not have to be generated with equal accuracy. The approach is demonstrated by numerical examples.
year | journal | country | edition | language |
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2009-08-28 | Evolutionary Computation |