Wavelet-based Bayesian approximate kernel method for high-dimensional data analysis

被引:0
|
作者
Wenxing Guo
Xueying Zhang
Bei Jiang
Linglong Kong
Yaozhong Hu
机构
[1] University of Essex,School of Mathematics, Statistics and Actuarial Science
[2] University of Alberta,Department of Mathematical and Statistical Sciences
来源
Computational Statistics | 2024年 / 39卷
关键词
Kernel method; Wavelet transform; Randomized feature; Bayesian kernel model;
D O I
暂无
中图分类号
学科分类号
摘要
Kernel methods are often used for nonlinear regression and classification in statistics and machine learning because they are computationally cheap and accurate. The wavelet kernel functions based on wavelet analysis can efficiently approximate any nonlinear functions. In this article, we construct a novel wavelet kernel function in terms of random wavelet bases and define a linear vector space that captures nonlinear structures in reproducing kernel Hilbert spaces (RKHS). Based on the wavelet transform, the data are mapped into a low-dimensional randomized feature space and convert kernel function into operations of a linear machine. We then propose a new Bayesian approximate kernel model with the random wavelet expansion and use the Gibbs sampler to compute the model’s parameters. Finally, some simulation studies and two real datasets analyses are carried out to demonstrate that the proposed method displays good stability, prediction performance compared to some other existing methods.
引用
收藏
页码:2323 / 2341
页数:18
相关论文
共 50 条
  • [41] Approximate Cluster Heat Maps of Large High-Dimensional Data
    Rathore, Punit
    Bezdek, James C.
    Kumar, Dheeraj
    Rajasegarar, Sutharshan
    Palaniswami, Marimuthu
    2018 24TH INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR), 2018, : 195 - 200
  • [42] Fast approximate hubness reduction for large high-dimensional data
    Feldbauer, Roman
    Leodolter, Maximilian
    Plant, Claudia
    Flexer, Arthur
    2018 9TH IEEE INTERNATIONAL CONFERENCE ON BIG KNOWLEDGE (ICBK), 2018, : 358 - 367
  • [43] Bayesian analysis of mass spectrometry proteomic data using wavelet-based functional mixed models
    Morris, Jeffrey S.
    Brown, Philip J.
    Herrick, Richard C.
    Baggerly, Keith A.
    Coombes, Kevin R.
    BIOMETRICS, 2008, 64 (02) : 479 - 489
  • [44] Sparse kernel k-means for high-dimensional data
    Guan, Xin
    Terada, Yoshikazu
    PATTERN RECOGNITION, 2023, 144
  • [45] ON HIGH-DIMENSIONAL WAVELET EIGENANALYSIS
    Abry, Patrice
    Boniece, B. cooper
    Didier, Gustavo
    Wendt, Herwig
    ANNALS OF APPLIED PROBABILITY, 2024, 34 (06): : 5287 - 5350
  • [46] ON THE PERFORMANCE OF KERNEL ESTIMATORS FOR HIGH-DIMENSIONAL, SPARSE BINARY DATA
    GRUND, B
    HALL, P
    JOURNAL OF MULTIVARIATE ANALYSIS, 1993, 44 (02) : 321 - 344
  • [47] Sparse kernel canonical correlation analysis for discovery of nonlinear interactions in high-dimensional data
    Yoshida, Kosuke
    Yoshimoto, Junichiro
    Doya, Kenji
    BMC BIOINFORMATICS, 2017, 18
  • [48] Approximate single linkage cluster analysis of large data sets in high-dimensional spaces
    Eddy, WF
    Mockus, A
    Oue, SG
    COMPUTATIONAL STATISTICS & DATA ANALYSIS, 1996, 23 (01) : 29 - 43
  • [49] Sparse kernel canonical correlation analysis for discovery of nonlinear interactions in high-dimensional data
    Kosuke Yoshida
    Junichiro Yoshimoto
    Kenji Doya
    BMC Bioinformatics, 18
  • [50] A modification of kernel discriminant analysis for high-dimensional data-with application to face recognition
    Zhou, Dake
    Tang, Zhenmin
    SIGNAL PROCESSING, 2010, 90 (08) : 2423 - 2430