SUNNY is a k-nearest neighbors based Algorithm Selection (AS) approach that schedules and runs a number of solvers for a given unforeseen problem. In this work we present sunny-as2, an enhancement of SUNNY for generic AS scenarios that advances the original approach with wrapper-based feature selection, neighborhood-size configuration and a greedy approach to speed-up the training phase. Empirical evidence shows that sunny-as2 is competitive w.r.t. state-of-the-art AS approaches.
Liu, T., Amadini, R., Gabbrielli, M., Mauro, J. (2022). sunny-as2: Enhancing SUNNY for Algorithm Selection (Extended Abstract) [10.24963/ijcai.2022/804].
sunny-as2: Enhancing SUNNY for Algorithm Selection (Extended Abstract)
Liu, Tong;Amadini, Roberto;Gabbrielli, Maurizio;Mauro, Jacopo
2022
Abstract
SUNNY is a k-nearest neighbors based Algorithm Selection (AS) approach that schedules and runs a number of solvers for a given unforeseen problem. In this work we present sunny-as2, an enhancement of SUNNY for generic AS scenarios that advances the original approach with wrapper-based feature selection, neighborhood-size configuration and a greedy approach to speed-up the training phase. Empirical evidence shows that sunny-as2 is competitive w.r.t. state-of-the-art AS approaches.File | Dimensione | Formato | |
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