Gradient-Guided Local Search for Large-Scale Hypervolume Subset Selection

IF 11.7 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE IEEE Transactions on Evolutionary Computation Pub Date : 2025-01-20 DOI:10.1109/TEVC.2025.3531950
Yang Nan;Tianye Shu;Hisao Ishibuchi;Ke Shang
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Abstract

The use of an unbounded archive (UA) has attracted much attention in the filed of evolutionary multiobjective optimization (EMO) since a solution set selected from the UA is often better than the final population. The size of the UA is very large (e.g., 1 000 000) since it is unbounded and it stores all the examined nondominated solutions during the execution of an EMO algorithm. Thus, an algorithm which can efficiently select a high-quality subset from a large-scale candidate set (e.g., UA) is needed. In this article, we propose a gradient-guided local search hypervolume subset selection (GL-HSS) algorithm to efficiently select a high-quality subset from a large-scale candidate set. In each iteration of GL-HSS, the gradient of the hypervolume (HV) contribution of each selected solution is used to guide the local search. As a result, the proposed algorithm can quickly improve the HV of the selected subset. Experimental results show that, compared to the existing subset selection algorithms, the proposed GL-HSS algorithm can efficiently select high-quality subsets from various large-scale candidate sets.
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大规模超卷子集选择的梯度引导局部搜索
无界档案(UA)的使用在进化多目标优化(EMO)领域引起了广泛的关注,因为从UA中选择的解集通常比最终总体更好。UA的大小非常大(例如,1 000 000),因为它是无界的,并且它存储了在执行EMO算法期间检查的所有非主导解。因此,需要一种能够从大规模候选集(如UA)中有效选择高质量子集的算法。在本文中,我们提出了一种梯度引导的局部搜索超体积子集选择(GL-HSS)算法,以有效地从大规模候选集中选择高质量的子集。在GL-HSS的每次迭代中,利用所选解的hypervolume (HV)贡献的梯度来指导局部搜索。结果表明,该算法可以快速提高所选子集的HV。实验结果表明,与现有的子集选择算法相比,本文提出的GL-HSS算法能够有效地从各种大规模候选集中选择出高质量的子集。
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来源期刊
IEEE Transactions on Evolutionary Computation
IEEE Transactions on Evolutionary Computation 工程技术-计算机:理论方法
CiteScore
21.90
自引率
9.80%
发文量
196
审稿时长
3.6 months
期刊介绍: The IEEE Transactions on Evolutionary Computation is published by the IEEE Computational Intelligence Society on behalf of 13 societies: Circuits and Systems; Computer; Control Systems; Engineering in Medicine and Biology; Industrial Electronics; Industry Applications; Lasers and Electro-Optics; Oceanic Engineering; Power Engineering; Robotics and Automation; Signal Processing; Social Implications of Technology; and Systems, Man, and Cybernetics. The journal publishes original papers in evolutionary computation and related areas such as nature-inspired algorithms, population-based methods, optimization, and hybrid systems. It welcomes both purely theoretical papers and application papers that provide general insights into these areas of computation.
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