DocumentCode
1301845
Title
Approximating the Set of Pareto-Optimal Solutions in Both the Decision and Objective Spaces by an Estimation of Distribution Algorithm
Author
Zhou, Aimin ; Zhang, Qingfu ; Jin, Yaochu
Author_Institution
Dept. of Comput. Sci. & Technol., East China Normal Univ., Shanghai, China
Volume
13
Issue
5
fYear
2009
Firstpage
1167
Lastpage
1189
Abstract
Most existing multiobjective evolutionary algorithms aim at approximating the Pareto front (PF), which is the distribution of the Pareto-optimal solutions in the objective space. In many real-life applications, however, a good approximation to the Pareto set (PS), which is the distribution of the Pareto-optimal solutions in the decision space, is also required by a decision maker. This paper considers a class of multiobjective optimization problems (MOPs), in which the dimensionalities of the PS and the PF manifolds are different so that a good approximation to the PF might not approximate the PS very well. It proposes a probabilistic model-based multiobjective evolutionary algorithm, called MMEA, for approximating the PS and the PF simultaneously for an MOP in this class. In the modeling phase of MMEA, the population is clustered into a number of subpopulations based on their distribution in the objective space, the principal component analysis technique is used to estimate the dimensionality of the PS manifold in each subpopulation, and then a probabilistic model is built for modeling the distribution of the Pareto-optimal solutions in the decision space. Such a modeling procedure could promote the population diversity in both the decision and objective spaces. MMEA is compared with three other methods, KP1, Omni-Optimizer and RM-MEDA, on a set of test instances, five of which are proposed in this paper. The experimental results clearly suggest that, overall, MMEA performs significantly better than the three compared algorithms in approximating both the PS and the PF.
Keywords
Pareto optimisation; decision making; evolutionary computation; principal component analysis; set theory; KP1 method; Omni-Optimizer method; Pareto front; Pareto set; Pareto-optimal solutions; RM-MEDA method; decision making; decision spaces; distribution algorithm estimation; multiobjective optimization problem; objective spaces; population diversity; principal component analysis; probabilistic model-based multiobjective evolutionary algorithm; Estimation of distribution algorithm; Pareto optimality; multiobjective optimization; principal component analysis;
fLanguage
English
Journal_Title
Evolutionary Computation, IEEE Transactions on
Publisher
ieee
ISSN
1089-778X
Type
jour
DOI
10.1109/TEVC.2009.2021467
Filename
5208353
Link To Document