Multiple kernel clustering with structure-preserving and block diagonal property

被引:0
|
作者
Cuiling Chen
Zhi Li
机构
[1] Guangxi Normal University,School of Computer Science and Engineering
来源
关键词
Multiple kernel clustering; Block diagonal representation; Structure preserving;
D O I
暂无
中图分类号
学科分类号
摘要
It is well known that graph-based multiple kernel clustering (GMKC) methods improve the clustering performance by integrating multiple kernel learning and graph-based clustering. However, existing GMKC methods either do not consider the global and local structure of data in kernel space simultaneously, or ignore block diagonal property of the affinity matrix, thus impairing the final clustering performance greatly. To address this issue, in this paper we propose a novel method named multiple kernel clustering with structure-preserving and block diagonal property (SBDMKC) by combining GMKC and block diagonal regularizer. Typically, the local structure-preserving regularization term is an accurate measurement for the similarity between data in kernel space, rather than original space. Furthermore, the affinity matrix is encouraged to be block diagonal by a soft regularizer, which helps to achieve good data clustering. In addition, a simple kernel weight strategy is given, which can automatically weight each base kernel to find an optimal consensus kernel. Experimental results on the ten benchmark data sets show that our method outperforms the nine state-of-the-art clustering methods.
引用
收藏
页码:6425 / 6445
页数:20
相关论文
共 50 条
  • [31] Structure-preserving neural networks
    Hernandez, Quercus
    Badias, Alberto
    Gonzalez, David
    Chinesta, Francisco
    Cueto, Elias
    JOURNAL OF COMPUTATIONAL PHYSICS, 2021, 426
  • [32] Structure-preserving model reduction
    Li, Ren-Cang
    Bai, Zhaojun
    APPLIED PARALLEL COMPUTING: STATE OF THE ART IN SCIENTIFIC COMPUTING, 2006, 3732 : 323 - 332
  • [33] Structure-preserving style transfer
    Calvo, Santiago
    Serrano, Ana
    Gutierrez, Diego
    Masia, Belen
    XXIX SPANISH COMPUTER GRAPHICS CONFERENCE (CEIG19), 2019, : 25 - 30
  • [34] Structure-Preserving Hierarchical Decompositions
    Irene Finocchi
    Rossella Petreschi
    Theory of Computing Systems, 2005, 38 : 687 - 700
  • [35] Structure-Preserving Instance Generation
    Malitsky, Yuri
    Merschformann, Marius
    O'Sullivan, Barry
    Tierney, Kevin
    LEARNING AND INTELLIGENT OPTIMIZATION (LION 10), 2016, 10079 : 123 - 140
  • [36] Structure-preserving deep learning
    Celledoni, E.
    Ehrhardt, M. J.
    Etmann, C.
    Mclachlan, R., I
    Owren, B.
    Schonlieb, C-B
    Sherry, F.
    EUROPEAN JOURNAL OF APPLIED MATHEMATICS, 2021, 32 (05) : 888 - 936
  • [37] Structure-preserving neural networks
    Hernández, Quercus
    Badías, Alberto
    González, David
    Chinesta, Francisco
    Cueto, Elías
    Journal of Computational Physics, 2021, 426
  • [38] Threshold Structure-Preserving Signatures
    Crites, Elizabeth
    Kohlweiss, Markulf
    Preneel, Bart
    Sedaghat, Mahdi
    Slamanig, Daniel
    ADVANCES IN CRYPTOLOGY, ASIACRYPT 2023, PT II, 2023, 14439 : 348 - 382
  • [39] Optimal Structure-Preserving Signatures
    Groth, Jens
    PROVABLE SECURITY, 2011, 6980 : 1 - 1
  • [40] Mutual structure learning for multiple kernel clustering
    Li, Zhenglai
    Tang, Chang
    Zheng, Xiao
    Wan, Zhiguo
    Sun, Kun
    Zhang, Wei
    Zhu, Xinzhong
    INFORMATION SCIENCES, 2023, 647