A single-objective Sequential Search Assistance-based Multi-Objective Algorithm Framework
Author | Peng, Chen |
Author | Liang, Jing |
Author | Qiao, Kangjia |
Author | Ban, Xuanxuan |
Author | Suganthan, P.N. |
Author | Lin, Hongyu |
Author | Zhang, Jilong |
Available date | 2025-05-11T10:53:56Z |
Publication Date | 2025-03-28 |
Publication Name | Swarm and Evolutionary Computation |
Identifier | http://dx.doi.org/10.1016/j.swevo.2025.101916 |
Citation | Chen, P., Liang, J., Qiao, K., Ban, X., Suganthan, P. N., Lin, H., & Zhang, J. (2025). A single-objective Sequential Search Assistance-based Multi-Objective Algorithm Framework. Swarm and Evolutionary Computation, 95, 101916. |
ISSN | 2210-6502 |
Abstract | In recent years, multi-objective optimization has garnered significant attention from researchers. Evolutionary algorithms are proven to be highly effective in solving complex optimization problems in plenty of cases. However, in the pursuit of improved performance, the focus on generality and efficiency has gradually been sidelined. To address this problem, this paper proposes a generalized framework, called Single-objective Sequential Search Assistance-based Multi-objective Algorithm Framework (SSMAF), to enhance the efficiency of existing multi-objective algorithms while reducing computational costs. The framework comprises two phases. The first phase involves two mechanisms to expedite the convergence of the population: (1) A Sequential Search Mechanism (SSM) is utilized to sequentially search corner solutions to enhance the quality of final population, which includes a corner solution search step and a standard solution detection step to search the Pareto Front (PF) while avoiding obtaining unexpected solutions; (2) A Diversity Search Method (DSM) is designed to conduct reinforced searches within localized regions and assess the population’s crowding degree to prevent it from getting stuck in local optima. After obtaining a population with better distribution, the existing multi-objective algorithms can regard it as the initial population to further search the PF. In the experiments, SSMAF is compared with 13 existing algorithms on 42 widely used benchmark test problems and 4 real-world problems. The experimental results show that SSMAF simultaneously improves the solution quality of existing algorithms while reducing their computational complexity. |
Sponsor | The work is supported by National Natural Science Foundation of China ( U23A20340 ), Open Project of Longmen Laboratory ( LMQYTSKT031 ), National Key R&D Program of China ( 2022YFD2001200 ), Natural Science Foundation of Henan ( 242300421004 ), and Program for Science & Technology Innovation Teams in Universities of Henan Province ( 23IRTSTHN010 ). |
Language | en |
Publisher | Elsevier |
Subject | Generalized framework Single-objective-assisted multi-objective search Two phase search Corner solution search |
Type | Article |
Volume Number | 95 |
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