Title :
Preference-Inspired Coevolutionary Algorithms for Many-Objective Optimization
Author :
Rui Wang ; Purshouse, Robin C. ; Fleming, Peter J.
Author_Institution :
Dept. of Autom. Control & Syst. Eng., Univ. of Sheffield, Sheffield, UK
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 ε-dominance relation-based algorithm [ ε-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, ε-MOEA, and MOEA/D. All the algorithms outperformed random search.
Keywords :
Pareto optimisation; evolutionary computation; MOEA; PICEA; Pareto dominance relation based algorithm; biobjective problems; decision making; hypervolume based algorithm; many objective optimization; multiobjective evolutionary algorithm; performance characteristics; preference inspired coevolutionary algorithms; scalarizing function based algorithm; simultaneous optimization; Approximation algorithms; Evolutionary computation; Monte Carlo methods; Optimization; Search problems; Standards; Vectors; Coevolution; evolutionary algorithms; many-objective optimization;
Journal_Title :
Evolutionary Computation, IEEE Transactions on
DOI :
10.1109/TEVC.2012.2204264