DocumentCode
3988
Title
Objective Reduction in Many-Objective Optimization: Linear and Nonlinear Algorithms
Author
Saxena, D.K. ; Duro, J.A. ; Tiwari, Anish ; Deb, Kaushik ; Qingfu Zhang
Author_Institution
Dept. of Manuf., Cranfield Univ., Cranfield, UK
Volume
17
Issue
1
fYear
2013
fDate
Feb. 2013
Firstpage
77
Lastpage
99
Abstract
The difficulties faced by existing multiobjective evolutionary algorithms (MOEAs) in handling many-objective problems relate to the inefficiency of selection operators, high computational cost, and difficulty in visualization of objective space. While many approaches aim to counter these difficulties by increasing the fidelity of the standard selection operators, the objective reduction approach attempts to eliminate objectives that are not essential to describe the Pareto-optimal front (POF). If the number of essential objectives is found to be two or three, the problem could be solved by the existing MOEAs. It implies that objective reduction could make an otherwise unsolvable (many-objective) problem solvable. Even when the essential objectives are four or more, the reduced representation of the problem will have favorable impact on the search efficiency, computational cost, and decision-making. Hence, development of generic and robust objective reduction approaches becomes important. This paper presents a principal component analysis and maximum variance unfolding based framework for linear and nonlinear objective reduction algorithms, respectively. The major contribution of this paper includes: 1) the enhancements in the core components of the framework for higher robustness in terms of applicability to a range of problems with disparate degree of redundancy; mechanisms to handle input data that poorly approximates the true POF; and dependence on fewer parameters to minimize the variability in performance; 2) proposition of an error measure to assess the quality of results; 3) sensitivity analysis of the proposed algorithms for the critical parameter involved, and the characteristics of the input data; and 4) study of the performance of the proposed algorithms vis-à-vis dominance relation preservation based algorithms, on a wide range of test problems (scaled up to 50 objectives) and two real-world problems.
Keywords
Pareto optimisation; decision making; evolutionary computation; linear programming; mathematical operators; minimisation; nonlinear programming; principal component analysis; redundancy; sensitivity analysis; MOEA; POF; Pareto-optimal front; critical parameter; decision making; error measure; input data handling; linear objective reduction algorithms; many-objective optimization; many-objective problem; maximum variance unfolding-based framework; multiobjective evolutionary algorithm; nonlinear objective reduction algorithms; objective space visualization; performance variability minimization; principal component analysis; redundancy; search efficiency; selection operator inefficiency; sensitivity analysis; standard selection operators; Algorithm design and analysis; Computational efficiency; Decision making; Optical fibers; Optimization; Redundancy; Search problems; Evolutionary multiobjective optimization; many-objective optimization; maximum variance unfolding and kernels; principal component analysis;
fLanguage
English
Journal_Title
Evolutionary Computation, IEEE Transactions on
Publisher
ieee
ISSN
1089-778X
Type
jour
DOI
10.1109/TEVC.2012.2185847
Filename
6151114
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