Batch subproblem coevolution with gaussian process-driven linear models for expensive multi-objective optimization

IF 8.2 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Zhenkun Wang , Yuanyao Chen , Genghui Li , Lindong Xie , Yu Zhang
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引用次数: 0

Abstract

The efficacy of surrogate-assisted multi-objective evolutionary algorithms (SAMOEAs) in addressing expensive multi-objective optimization problems (MOPs) is contingent upon the modeling techniques and model-based infill sampling strategies. In addressing this pivotal aspect, this paper introduces a pioneering methodology known as batch subproblem coevolution with Gaussian process-driven linear models (BSCo-GPLM). Specifically, from a modeling perspective, BSCo-GPLM decomposes the MOP into single-objective subproblems. Following this decomposition, for each subproblem, a Gaussian process-driven linear model (GPLM) is collaboratively trained to prevent overfitting and improve prediction accuracy. Regarding infill sampling, collaborative optimization of all GPLMs yields optimal candidate solutions for each subproblem, organized into coherent clusters. Within each cluster, only the solution with the highest utility is evaluated. Relying on the heightened prediction accuracy of the GPLM model and an efficient batch sampling strategy, BSCo-GPLM exhibits clear superiority over state-of-the-art SAMOEAs in effectively addressing expensive MOPs. The source code of BSCo-GPLM is available at https://github.com/CIAM-Group/EvolutionaryAlgorithm_Codes/tree/main/BSCo-GPLM.

利用高斯过程驱动的线性模型进行批量子问题协同进化,实现昂贵的多目标优化
代理辅助多目标进化算法(SAMOEAs)在解决昂贵的多目标优化问题(MOPs)方面的功效取决于建模技术和基于模型的填充采样策略。针对这一关键问题,本文介绍了一种开创性的方法,即高斯过程驱动线性模型的批次子问题协同进化(BSCo-GPLM)。具体来说,从建模的角度来看,BSCo-GPLM 将 MOP 分解为单目标子问题。分解之后,针对每个子问题,协同训练一个高斯过程驱动线性模型(GPLM),以防止过拟合并提高预测精度。在填充采样方面,对所有 GPLM 进行协同优化,可为每个子问题生成最佳候选解决方案,并将其组织成连贯的群组。在每个群组中,只有效用最高的解决方案才会被评估。依靠 GPLM 模型更高的预测精度和高效的批量采样策略,BSCo-GPLM 在有效解决昂贵的澳门威尼斯人官网程方面明显优于最先进的 SAMOEA。BSCo-GPLM 的源代码见 https://github.com/CIAM-Group/EvolutionaryAlgorithm_Codes/tree/main/BSCo-GPLM。
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来源期刊
Swarm and Evolutionary Computation
Swarm and Evolutionary Computation COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCEC-COMPUTER SCIENCE, THEORY & METHODS
CiteScore
16.00
自引率
12.00%
发文量
169
期刊介绍: Swarm and Evolutionary Computation is a pioneering peer-reviewed journal focused on the latest research and advancements in nature-inspired intelligent computation using swarm and evolutionary algorithms. It covers theoretical, experimental, and practical aspects of these paradigms and their hybrids, promoting interdisciplinary research. The journal prioritizes the publication of high-quality, original articles that push the boundaries of evolutionary computation and swarm intelligence. Additionally, it welcomes survey papers on current topics and novel applications. Topics of interest include but are not limited to: Genetic Algorithms, and Genetic Programming, Evolution Strategies, and Evolutionary Programming, Differential Evolution, Artificial Immune Systems, Particle Swarms, Ant Colony, Bacterial Foraging, Artificial Bees, Fireflies Algorithm, Harmony Search, Artificial Life, Digital Organisms, Estimation of Distribution Algorithms, Stochastic Diffusion Search, Quantum Computing, Nano Computing, Membrane Computing, Human-centric Computing, Hybridization of Algorithms, Memetic Computing, Autonomic Computing, Self-organizing systems, Combinatorial, Discrete, Binary, Constrained, Multi-objective, Multi-modal, Dynamic, and Large-scale Optimization.
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