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A Classifier-Assisted Level-Based Learning Swarm Optimizer for Expensive Optimization

Authors
Wei, Feng-FengChen, Wei-NengYang, QiangDeng, JeremiahLuo, Xiao-NanJin, HuZhang, Jun
Issue Date
Apr-2021
Publisher
Institute of Electrical and Electronics Engineers
Keywords
Expensive optimization; gradient boosting classifier (GBC); large-scale optimization; level-based learning swarm optimizer (LLSO); surrogate-assisted evolutionary algorithm (SAEA)
Citation
IEEE Transactions on Evolutionary Computation, v.25, no.2, pp.219 - 233
Indexed
SCIE
SCOPUS
Journal Title
IEEE Transactions on Evolutionary Computation
Volume
25
Number
2
Start Page
219
End Page
233
URI
https://scholarworks.bwise.kr/erica/handle/2021.sw.erica/423
DOI
10.1109/TEVC.2020.3017865
ISSN
1089-778X
Abstract
Surrogate-assisted evolutionary algorithms (SAEAs) have become one popular method to solve complex and computationally expensive optimization problems. However, most existing SAEAs suffer from performance degradation with the dimensionality increasing. To solve this issue, this article proposes a classifier-assisted level-based learning swarm optimizer on the basis of the level-based learning swarm optimizer (LLSO) and the gradient boosting classifier (GBC) to improve the robustness and scalability of SAEAs. Particularly, the level-based learning strategy in LLSO has a tight correspondence with the classification characteristic by setting the number of levels in LLSO to be the same as the number of classes in GBC. Together, the classification results feedback the distribution of promising candidates to accelerate the evolution of the optimizer, while the evolved population helps to improve the accuracy of the classifier. To select informative and valuable candidates for real evaluations, we devise an L1-exploitation strategy to extensively exploit promising areas. Then, the candidate selection is conducted between the predicted L1 offspring and the already real-evaluated L1 individuals based on their Euclidean distances. Extensive experiments on commonly used benchmark functions demonstrate that the proposed optimizer can achieve competitive or better performance with a very small training dataset compared with three state-of-the-art SAEAs.
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