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Learning-guided cross-sampling for large-scale evolutionary multi-objective optimization

Wang, Haofan; Chen, Li; Hao, Xingxing; Qu, Rong; Zhou, Wei; Wang, Dekui; Liu, Wei

Authors

Haofan Wang

Li Chen

Xingxing Hao

Profile image of RONG QU

RONG QU rong.qu@nottingham.ac.uk
Professor of Computer Science

Wei Zhou

Dekui Wang

Wei Liu



Abstract

When tackling large-scale multi-objective problems (LSMOPs), the computational budget could be wasted by traditional offspring generators that explore the search space in a nearly directionless manner, impairing the efficiency of many existing algorithms. To address this issue, this paper proposes a novel two-level large-scale multi-objective evolutionary algorithm called LMOEA-LGCS that incorporates neural network (NN) learning-guided cross-sampling for offspring generation in the first level and a layered competitive swarm optimizer in the second level. Specifically, in the first level, two NNs are trained online to learn promising vertical and horizontal search directions, respectively, against the Pareto Set, and then a batch of candidate solutions are sampled on the learned directions. The merit of learning two explicit search directions is to devote the employed NNs to concentrating on separate or even conflicting targets, i.e., the convergence and diversity of the population, thus achieving a good trade-off between them. In this way, the algorithm can thus explore adaptively towards more promising search directions that have the potential to facilitate the convergence of the population while maintaining a good diversity. In the second level, the layered competitive swarm optimizer is employed to perform a deeper optimization of the solutions generated in the first level across the entire search space to increase their diversity further. Comparisons with six state-of-the-art algorithms on three LSMOP benchmarks, i.e., the LSMOP, UF, and IMF, with 2-12 objectives and 500-8000 decision variables, and the real-world problem TREE demonstrate the advantages of the proposed algorithm.

Citation

Wang, H., Chen, L., Hao, X., Qu, R., Zhou, W., Wang, D., & Liu, W. (2024). Learning-guided cross-sampling for large-scale evolutionary multi-objective optimization. Swarm and Evolutionary Computation, 91, Article 101763. https://doi.org/10.1016/j.swevo.2024.101763

Journal Article Type Article
Acceptance Date Oct 18, 2024
Online Publication Date Nov 5, 2024
Publication Date Dec 1, 2024
Deposit Date Nov 11, 2024
Publicly Available Date Nov 6, 2025
Journal Swarm and Evolutionary Computation
Print ISSN 2210-6502
Electronic ISSN 2210-6510
Publisher Elsevier
Peer Reviewed Peer Reviewed
Volume 91
Article Number 101763
DOI https://doi.org/10.1016/j.swevo.2024.101763
Keywords Evolutionary algorithm -- Large-scale multi-objective optimization -- Learning-guided -- Cross-sampling -- Two-level
Public URL https://nottingham-repository.worktribe.com/output/41823807
Publisher URL https://www.sciencedirect.com/science/article/pii/S2210650224003018?via%3Dihub
Additional Information This article is maintained by: Elsevier; Article Title: Learning-guided cross-sampling for large-scale evolutionary multi-objective optimization; Journal Title: Swarm and Evolutionary Computation; CrossRef DOI link to publisher maintained version: https://doi.org/10.1016/j.swevo.2024.101763