Authors
Pascal Kerschke, Mike Preuss, Simon Wessing, Heike Trautmann
Publication date
2016/7/20
Conference
Proceedings of the Genetic and Evolutionary Computation Conference 2016
Pages
229-236
Publisher
ACM
Description
When selecting the best suited algorithm for an unknown optimization problem, it is useful to possess some a priori knowledge of the problem at hand. In the context of single-objective, continuous optimization problems such knowledge can be retrieved by means of Exploratory Landscape Analysis (ELA), which automatically identifies properties of a landscape, e.g., the so-called funnel structures, based on an initial sample. In this paper, we extract the relevant features (for detecting funnels) out of a large set of landscape features when only given a small initial sample consisting of 50 x D observations, where D is the number of decision space dimensions. This is already in the range of the start population sizes of many evolutionary algorithms. The new Multiple Peaks Model Generator (MPM2) is used for training the classifier, and the approach is then very successfully validated on the Black-Box Optimization …
Total citations
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Scholar articles
P Kerschke, M Preuss, S Wessing, H Trautmann - Proceedings of the Genetic and Evolutionary …, 2016