Evolutionary Many-Objective Optimization Based on Adversarial Decomposition
April 07, 2017 ยท Declared Dead ยท ๐ IEEE Transactions on Cybernetics
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Authors
Mengyuan Wu, Ke Li, Sam Kwong, Qingfu Zhang
arXiv ID
1704.02340
Category
cs.NE: Neural & Evolutionary
Citations
117
Venue
IEEE Transactions on Cybernetics
Last Checked
4 months ago
Abstract
The decomposition-based method has been recognized as a major approach for multi-objective optimization. It decomposes a multi-objective optimization problem into several single-objective optimization subproblems, each of which is usually defined as a scalarizing function using a weight vector. Due to the characteristics of the contour line of a particular scalarizing function, the performance of the decomposition-based method strongly depends on the Pareto front's shape by merely using a single scalarizing function, especially when facing a large number of objectives. To improve the flexibility of the decomposition-based method, this paper develops an adversarial decomposition method that leverages the complementary characteristics of two different scalarizing functions within a single paradigm. More specifically, we maintain two co-evolving populations simultaneously by using different scalarizing functions. In order to avoid allocating redundant computational resources to the same region of the Pareto front, we stably match these two co-evolving populations into one-one solution pairs according to their working regions of the Pareto front. Then, each solution pair can at most contribute one mating parent during the mating selection process. Comparing with nine state-of-the-art many-objective optimizers, we have witnessed the competitive performance of our proposed algorithm on 130 many-objective test instances with various characteristics and Pareto front's shapes.
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