In this paper, we investigate how systemic errors due to random sampling impact on automated algorithm selection for bound-constrained, single-objective, continuous black-box optimization. We construct a machine learning-based algorithm selector, which uses exploratory landscape analysis features as inputs. We test the accuracy of the recommendations experimentally using resampling techniques and the hold-one-instance-out and hold-one-problem-out validation methods. The results demonstrate that the selector remains accurate even with sampling noise, although not without trade-offs.
CITATION STYLE
Muñoz, M. A., & Kirley, M. (2021). Sampling effects on algorithm selection for continuous black-box optimization. Algorithms, 14(1). https://doi.org/10.3390/a14010019
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