A nonlinear extension of principal component analysis for clustering and spatial differentiation

被引:0
|
作者
Sudjianto, A [1 ]
Wasserman, GS [1 ]
机构
[1] HENRY FORD HOSP,DEPT IND & MFG ENGN,DETROIT,MI 48202
关键词
D O I
暂无
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
The limitations in the use of linear principal component analysis (PCA) for identifying morphological features of data sets are discussed. A nonlinear extension of PCA is introduced to provide this capability. It differs from ordinary PCA methods only in that the objective function involves a nonlinear transformation of the principal components. The procedure is shown to be closely related to the exploratory projection pursuit (EPP) algorithm proposed by Friedman (1987), and thus its usefulness in clustering and spatial differentiation applications is apparent. An efficient gradient ascent algorithm is proposed for implementation, based upon the use of a stochastic approximation. The inherent computational advantages in the suggested implementation over other EPP methods are evident, given that EPP methods require the estimation of a density function at every iteration. The nonlinear extension is evaluated by using several well-known datasets, including Fisher's (1936) Iris data. An industrial application of the technique is also presented. Necessary conditions for convergence are shown.
引用
收藏
页码:1023 / 1028
页数:6
相关论文
共 50 条
  • [21] Principal component analysis for clustering gene expression data
    Yeung, KY
    Ruzzo, WL
    BIOINFORMATICS, 2001, 17 (09) : 763 - 774
  • [22] An Eigenvalue test for spatial principal component analysis
    V. Montano
    T. Jombart
    BMC Bioinformatics, 18
  • [23] Effect of dimension reduction by principal component analysis on clustering
    Erisoglu, Murat
    Erisoglu, Ulku
    JOURNAL OF STATISTICS AND MANAGEMENT SYSTEMS, 2011, 14 (02) : 277 - 287
  • [24] A random version of principal component analysis in data clustering
    Palese, Luigi Leonardo
    COMPUTATIONAL BIOLOGY AND CHEMISTRY, 2018, 73 : 57 - 64
  • [25] Distributed Clustering Using Collective Principal Component Analysis
    Hillol Kargupta
    Weiyun Huang
    Krishnamoorthy Sivakumar
    Erik Johnson
    Knowledge and Information Systems, 2001, 3 (4) : 422 - 448
  • [26] Regularized Principal Component Analysis for Spatial Data
    Wang, Wen-Ting
    Huang, Hsin-Cheng
    JOURNAL OF COMPUTATIONAL AND GRAPHICAL STATISTICS, 2017, 26 (01) : 14 - 25
  • [27] An Eigenvalue test for spatial principal component analysis
    Montano, V.
    Jombart, T.
    BMC BIOINFORMATICS, 2017, 18
  • [28] Projection techniques for nonlinear principal component analysis
    Richard J. Bolton
    David J. Hand
    Andrew R. Webb
    Statistics and Computing, 2003, 13 : 267 - 276
  • [29] A nonlinear principal component analysis on image data
    Saegusa, R
    Sakano, H
    Hashimoto, S
    MACHINE LEARNING FOR SIGNAL PROCESSING XIV, 2004, : 589 - 598
  • [30] Nonlinear principal component analysis of noisy data
    Hsieh, William W.
    NEURAL NETWORKS, 2007, 20 (04) : 434 - 443