Predicting Effective Control Parameters for Differential Evolution using Cluster Analysis of Objective Function Features
June 25, 2018 ยท Declared Dead ยท ๐ Journal of Heuristics
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Authors
Sean P. Walton, M. Rowan Brown
arXiv ID
1806.09432
Category
cs.NE: Neural & Evolutionary
Cross-listed
math.OC
Citations
4
Venue
Journal of Heuristics
Last Checked
4 months ago
Abstract
A methodology is introduced which uses three simple objective function features to predict effective control parameters for differential evolution. This is achieved using cluster analysis techniques to classify objective functions using these features. Information on prior performance of various control parameters for each classification is then used to determine which control parameters to use in future optimisations. Our approach is compared to state-of-the-art adaptive and non-adaptive techniques. Two accepted bench mark suites are used to compare performance and in all cases we show that the improvement resulting from our approach is statistically significant. The majority of the computational effort of this methodology is performed off-line, however even when taking into account the additional on-line cost our approach outperforms other adaptive techniques. We also investigate the key tuning parameters of our methodology, such as number of clusters, which further support the finding that the simple features selected are predictors of effective control parameters. The findings presented in this paper are significant because they show that simple to calculate features of objective functions can help to select control parameters for optimisation algorithms. This can have an immediate positive impact on the application of these optimisation algorithms on real world problems, where it is often difficult to select effective control parameters.
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