Authors
Ana Kostovska, Anja Jankovic, Diederick Vermetten, Jacob de Nobel, Hao Wang, Tome Eftimov, Carola Doerr
Publication date
2022/8/14
Book
International Conference on Parallel Problem Solving from Nature
Pages
46-60
Publisher
Springer International Publishing
Description
Per-instance algorithm selection seeks to recommend, for a given problem instance and a given performance criterion, one or several suitable algorithms that are expected to perform well for the particular setting. The selection is classically done offline, using openly available information about the problem instance or features that are extracted from the instance during a dedicated feature extraction step. This ignores valuable information that the algorithms accumulate during the optimization process. In this work, we propose an alternative, online algorithm selection scheme which we coin as “per-run” algorithm selection. In our approach, we start the optimization with a default algorithm, and, after a certain number of iterations, extract instance features from the observed trajectory of this initial optimizer to determine whether to switch to another optimizer. We test this approach using the CMA-ES as the default solver …
Total citations
20222023202431917
Scholar articles
A Kostovska, A Jankovic, D Vermetten, J de Nobel… - International Conference on Parallel Problem Solving …, 2022