MSBWO: A Multi-Strategies Improved Beluga Whale Optimization Algorithm for Feature Selection.

IF 3.4 3区 医学 Q1 ENGINEERING, MULTIDISCIPLINARY
Zhaoyong Fan, Zhenhua Xiao, Xi Li, Zhenghua Huang, Cong Zhang
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Abstract

Feature selection (FS) is a classic and challenging optimization task in most machine learning and data mining projects. Recently, researchers have attempted to develop more effective methods by using metaheuristic methods in FS. To increase population diversity and further improve the effectiveness of the beluga whale optimization (BWO) algorithm, in this paper, we propose a multi-strategies improved BWO (MSBWO), which incorporates improved circle mapping and dynamic opposition-based learning (ICMDOBL) population initialization as well as elite pool (EP), step-adaptive Lévy flight and spiral updating position (SLFSUP), and golden sine algorithm (Gold-SA) strategies. Among them, ICMDOBL contributes to increasing the diversity during the search process and reducing the risk of falling into local optima. The EP technique also enhances the algorithm's ability to escape from local optima. The SLFSUP, which is distinguished from the original BWO, aims to increase the rigor and accuracy of the development of local spaces. Gold-SA is introduced to improve the quality of the solutions. The hybrid performance of MSBWO was evaluated comprehensively on IEEE CEC2005 test functions, including a qualitative analysis and comparisons with other conventional methods as well as state-of-the-art (SOTA) metaheuristic approaches that were introduced in 2024. The results demonstrate that MSBWO is superior to other algorithms in terms of accuracy and maintains a better balance between exploration and exploitation. Moreover, according to the proposed continuous MSBWO, the binary MSBWO variant (BMSBWO) and other binary optimizers obtained by the mapping function were evaluated on ten UCI datasets with a random forest (RF) classifier. Consequently, BMSBWO has proven very competitive in terms of classification precision and feature reduction.

MSBWO:用于特征选择的多策略改进白鲸优化算法
在大多数机器学习和数据挖掘项目中,特征选择(FS)都是一项经典且具有挑战性的优化任务。最近,研究人员尝试在 FS 中使用元启发式方法来开发更有效的方法。为了增加种群多样性,进一步提高白鲸优化算法(BWO)的有效性,本文提出了一种多策略改进型白鲸优化算法(MSBWO),它结合了改进的圆映射和基于对立的动态学习(ICMDOBL)种群初始化以及精英池(EP)、步进自适应莱维飞行和螺旋更新位置(SLFSUP)和黄金正弦算法(Gold-SA)策略。其中,ICMDOBL 有助于增加搜索过程中的多样性,降低陷入局部最优的风险。EP 技术还增强了算法摆脱局部最优的能力。SLFSUP 有别于最初的 BWO,旨在提高局部空间开发的严谨性和准确性。为了提高解的质量,引入了 Gold-SA。在 IEEE CEC2005 测试函数上对 MSBWO 的混合性能进行了全面评估,包括定性分析以及与其他传统方法和 2024 年推出的最先进(SOTA)元启发式方法的比较。结果表明,MSBWO 在精度方面优于其他算法,并在探索和利用之间保持了更好的平衡。此外,根据所提出的连续 MSBWO,二进制 MSBWO 变体(BMSBWO)和通过映射函数获得的其他二进制优化器在十个 UCI 数据集上使用随机森林(RF)分类器进行了评估。结果表明,BMSBWO 在分类精度和特征减少方面非常有竞争力。
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来源期刊
Biomimetics
Biomimetics Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
3.50
自引率
11.10%
发文量
189
审稿时长
11 weeks
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