Dynamic heuristic set selection for cross-domain selection hyper-heuristics
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Authors
Hassan, Ahmed
Pillay, Nelishia
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Publisher
Springer
Abstract
Selection hyper-heuristics have proven to be effective in solving various real-world problems. Hyper-heuristics differ from traditional heuristic approaches in that they explore a heuristic space rather than a solution space. These techniques select constructive or perturbative heuristics to construct a solution or improve an existing solution respectively. Previous work has shown that the set of problem-specific heuristics made available to the hyper-heuristic for selection has an impact on the performance of the hyper-heuristic. Hence, there have been initiatives to determine the appropriate set of heuristics that the hyper-heuristic can select from. However, there has not been much research done in this area. Furthermore, previous work has focused on determining a set of heuristics that is used throughout the lifespan of the hyper-heuristic with no change to this set during the application of the hyper-heuristic. This paper investigates dynamic heuristic set selection (DHSS) which applies dominance to select the set of heuristics at different points during the lifespan of a selection hyper-heuristic. The DHSS approach was evaluated on the benchmark set for the CHeSC cross-domain hyper-heuristic challenge. DHSS was found to improve the performance of the best performing hyper-heuristic for this challenge.
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Keywords
Dynamic heuristic set selection (DHSS), Selection perturbative hyper-heuristics, Cross-domain hyper-heuristics
Sustainable Development Goals
Citation
Hassan, A., Pillay, N. (2021). Dynamic Heuristic Set Selection for Cross-Domain Selection Hyper-heuristics. In: Aranha, C., Martín-Vide, C., Vega-Rodríguez, M.A. (eds) Theory and Practice of Natural Computing. TPNC 2021. Lecture Notes in Computer Science, vol. 13082. Springer, Cham. https://doi.org/10.1007/978-3-030-90425-8_3.
