4.7 Article

Performance of Decomposition-Based Many-Objective Algorithms Strongly Depends on Pareto Front Shapes

期刊

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TEVC.2016.2587749

关键词

Decomposition-based evolutionary algorithms; many-objective evolutionary algorithms; many-objective optimization; many-objective test problems

资金

  1. Japan Society for the Promotion of Science [KAKENHI 24300090, KAKENHI 26540128, KAKENHI 16H02877]
  2. Grants-in-Aid for Scientific Research [16H02877, 26540128] Funding Source: KAKEN

向作者/读者索取更多资源

Recently, a number of high performance many-objective evolutionary algorithms with systematically generated weight vectors have been proposed in the literature. Those algorithms often show surprisingly good performance on widely used DTLZ and WFG test problems. The performance of those algorithms has continued to be improved. The aim of this paper is to show our concern that such a performance improvement race may lead to the overspecialization of developed algorithms for the frequently used many-objective test problems. In this paper, we first explain the DTLZ and WFG test problems. Next, we explain many-objective evolutionary algorithms characterized by the use of systematically generated weight vectors. Then we discuss the relation between the features of the test problems and the search mechanisms of weight vector-based algorithms such as multiobjective evolutionary algorithm based on decomposition (MOEA/D), nondominated sorting genetic algorithm III (NSGA-III), MOEA/dominance and decomposition (MOEA/DD), and.-dominance based evolutionary algorithm (theta-DEA). Through computational experiments, we demonstrate that a slight change in the problem formulations of DTLZ and WFG deteriorates the performance of those algorithms. After explaining the reason for the performance deterioration, we discuss the necessity of more general test problems and more flexible algorithms.

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