JOURNAL ARTICLE

Preference-Inspired Coevolutionary Algorithms for Many-Objective Optimization

Rui WangRobin C. PurshouseP.J. Fleming

Year: 2012 Journal:   IEEE Transactions on Evolutionary Computation Vol: 17 (4)Pages: 474-494   Publisher: Institute of Electrical and Electronics Engineers

Abstract

The simultaneous optimization of many objectives (in excess of 3), in order to obtain a full and satisfactory set of tradeoff solutions to support a posteriori decision making, remains a challenging problem. The concept of coevolving a family of decision-maker preferences together with a population of candidate solutions is studied here and demonstrated to have promising performance characteristics for such problems. After introducing the concept of the preference-inspired coevolutionary algorithm (PICEA), a realization of this concept, PICEA-g, is systematically compared with four of the best-in-class evolutionary algorithms (EAs); random search is also studied as a baseline approach. The four EAs used in the comparison are a Pareto-dominance relation-based algorithm (NSGA-II), an $\epsilon$ -dominance relation-based algorithm [ $\epsilon$ -multiobjective evolutionary algorithm (MOEA)], a scalarizing function-based algorithm (MOEA/D), and an indicator-based algorithm [hypervolume-based algorithm (HypE)]. It is demonstrated that, for bi-objective problems, all of the multi-objective evolutionary algorithms perform competitively. As the number of objectives increases, PICEA-g and HypE, which have comparable performance, tend to outperform NSGA-II, $\epsilon$ -MOEA, and MOEA/D. All the algorithms outperformed random search.

Keywords:
Evolutionary algorithm Algorithm Notation Multi-objective optimization Population Mathematics Computer science Mathematical optimization Artificial intelligence Arithmetic

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70
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Citation History

Topics

Advanced Multi-Objective Optimization Algorithms
Physical Sciences →  Computer Science →  Computational Theory and Mathematics
Metaheuristic Optimization Algorithms Research
Physical Sciences →  Computer Science →  Artificial Intelligence
Optimal Experimental Design Methods
Social Sciences →  Decision Sciences →  Management Science and Operations Research
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