Authors
Diederick Vermetten, Sander van Rijn, Thomas Bäck, Carola Doerr
Publication date
2019/7/13
Book
Proceedings of the Genetic and Evolutionary Computation Conference
Pages
951-959
Description
In the field of evolutionary computation, one of the most challenging topics is algorithm selection. Knowing which heuristics to use for which optimization problem is key to obtaining high-quality solutions. We aim to extend this research topic by taking a first step towards a selection method for adaptive CMA-ES algorithms. We build upon the theoretical work done by van Rijn et al. [PPSN'18], in which the potential of switching between different CMA-ES variants was quantified in the context of a modular CMA-ES framework.
We demonstrate in this work that their proposed approach is not very reliable, in that implementing the suggested adaptive configurations does not yield the predicted performance gains. We propose a revised approach, which results in a more robust fit between predicted and actual performance. The adaptive CMA-ES approach obtains performance gains on 18 out of 24 tested functions of the …
Total citations
2019202020212022202320243831021
Scholar articles
D Vermetten, S van Rijn, T Bäck, C Doerr - Proceedings of the Genetic and Evolutionary …, 2019