Authors
Frederik Rehbach, Martin Zaefferer, Boris Naujoks, Thomas Bartz-Beielstein
Publication date
2020/6/25
Book
Proceedings of the 2020 Genetic and Evolutionary Computation Conference
Pages
868-876
Description
Surrogate-based optimization relies on so-called infill criteria (acquisition functions) to decide which point to evaluate next. When Kriging is used as the surrogate model of choice (also called Bayesian optimization), one of the most frequently chosen criteria is expected improvement. We argue that the popularity of expected improvement largely relies on its theoretical properties rather than empirically validated performance. Few results from the literature show evidence, that under certain conditions, expected improvement may perform worse than something as simple as the predicted value of the surrogate model. We benchmark both infill criteria in an extensive empirical study on the 'BBOB' function set. This investigation includes a detailed study of the impact of problem dimensionality on algorithm performance. The results support the hypothesis that exploration loses importance with increasing problem …
Total citations
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Scholar articles
F Rehbach, M Zaefferer, B Naujoks, T Bartz-Beielstein - Proceedings of the 2020 genetic and evolutionary …, 2020