计算机系统应用2024,Vol.33Issue(7) :201-212.DOI:10.15888/j.cnki.csa.009569

基于F范数群组效应和谱聚类的无监督特征选择

Unsupervised Feature Selection Based on F-norm Group Effect and Spectral Clustering

林清水 田鹏飞 张旺
计算机系统应用2024,Vol.33Issue(7) :201-212.DOI:10.15888/j.cnki.csa.009569

基于F范数群组效应和谱聚类的无监督特征选择

Unsupervised Feature Selection Based on F-norm Group Effect and Spectral Clustering

林清水 1田鹏飞 2张旺2
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作者信息

  • 1. 辽宁工程技术大学软件学院,葫芦岛 125105;辽宁工程技术大学基础教学部,葫芦岛 125105
  • 2. 辽宁工程技术大学软件学院,葫芦岛 125105
  • 折叠

摘要

基于谱聚类的无监督特征选择主要涉及相关系数矩阵和聚类指示矩阵,在以往的研究中,学者们主要关注于相关系数矩阵,并为此设计了一系列约束和改进,但仅关注相关系数矩阵并不能充分学习到数据内在结构.考虑群组效应,本文向聚类指示矩阵施加F范数,并结合谱聚类以使相关系数矩阵学习更为准确的聚类指示信息,通过交替迭代法求解两个矩阵.不同类型的真实数据集实验表明文中方法的有效性,此外,实验表明F范数还可以使方法更加鲁棒.

Abstract

Unsupervised feature selection based on spectral clustering mainly involves the correlation coefficient matrix and the clustering indicator matrix.In previous studies,scholars have mainly focused on the correlation coefficient matrix,designing a series of constraints and improvements for it.However,focusing solely on the correlation coefficient matrix cannot fully learn the intrinsic structure of data.Considering the group effect,this study imposes the F-norm on the clustering indicator matrix and combines it with spectral clustering to make the correlation coefficient matrix learn more accurate clustering indicator information.The two matrices are solved through an alternating iteration method.Experiments on different types of real datasets show the effectiveness of the proposed method.In addition,experiments show that the F-norm can also make the method more robust.

关键词

无监督特征选择/谱聚类/群组效应/F范数/降维

Key words

unsupervised feature selection/spectral clustering/group effect/F-norm/dimension reduction

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出版年

2024
计算机系统应用
中国科学院软件研究所

计算机系统应用

CSTPCD
影响因子:0.449
ISSN:1003-3254
参考文献量2
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