STATISTICAL BASIS OF NONLINEAR HEBBIAN LEARNING AND APPLICATION TO CLUSTERING

被引:15
|
作者
SUDJIANTO, A [1 ]
HASSOUN, MH [1 ]
机构
[1] WAYNE STATE UNIV,DEPT ELECT & COMP ENGN,DETROIT,MI 48202
关键词
HEBBIAN LEARNING; NONLINEAR HEBBIAN LEARNING; UNSUPERVISED LEARNING; PRINCIPAL COMPONENTS; CLUSTERING; DIMENSIONALITY REDUCTION; HIGHER ORDER CORRELATIONS; PROBABILITY INTEGRAL TRANSFORMATION;
D O I
10.1016/0893-6080(95)00028-X
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Recently, the extension of Hebbian learning to nonlinear units has received increased attention. Some successful applications of this learning rule to nonlinear principal component analysis have been reported as well; however, a fundamental understanding of the processing capability of this learning rule in the nonlinear setting is still lacking. In this paper, we pursue a better understanding of what the nonlinear unit is actually doing by exploring the statistical characteristics of the criterion function being optimized and interpreting the operation of the nonlinear activation as a probability integral transformation. To improve the computational capability of the nonlinear units, data preprocessing is suggested. This leads to the development of a two-layer network which consists of linear units in the first layer and nonlinear units in the second layer. The linear units capture and filter the linear aspect (low order correlations) of the data and the nonlinear units discover higher order correlations. Several potential applications are demonstrated through simulated data and previously analyzed data from real measurements. The relationship to exploratory data analysis in statistics is discussed.
引用
收藏
页码:707 / 715
页数:9
相关论文
共 50 条
  • [1] Hebbian Learning Clustering with Rulkov Neurons
    Held, Jenny
    Lorimer, Tom
    Albert, Carlo
    Stoop, Ruedi
    EMERGENT COMPLEXITY FROM NONLINEARITY, IN PHYSICS, ENGINEERING AND THE LIFE SCIENCES, 2017, 191 : 127 - 141
  • [2] Decorrelated hebbian learning for clustering and function approximation
    1600, MIT Press, Cambridge, MA, USA (07):
  • [3] DECORRELATED HEBBIAN LEARNING FOR CLUSTERING AND FUNCTION APPROXIMATION
    DECO, G
    OBRADOVIC, D
    NEURAL COMPUTATION, 1995, 7 (02) : 338 - 348
  • [4] A NONLINEAR EXTENSION OF THE GENERALIZED HEBBIAN LEARNING
    JOUTSENSALO, J
    KARHUNEN, J
    NEURAL PROCESSING LETTERS, 1995, 2 (01) : 5 - 8
  • [5] MOS CIRCUIT FOR NONLINEAR HEBBIAN LEARNING
    COHEN, MH
    ANDREOU, AC
    ELECTRONICS LETTERS, 1992, 28 (06) : 591 - 593
  • [6] MOS CIRCUIT FOR NONLINEAR HEBBIAN LEARNING
    COHEN, MH
    ANDREOU, AG
    ELECTRONICS LETTERS, 1992, 28 (09) : 809 - 810
  • [7] STATISTICAL-MECHANICS OF UNSUPERVISED HEBBIAN LEARNING
    PRUGELBENNETT, A
    SHAPIRO, JL
    JOURNAL OF PHYSICS A-MATHEMATICAL AND GENERAL, 1993, 26 (10): : 2343 - 2369
  • [8] Optimal Interval Clustering: Application to Bregman Clustering and Statistical Mixture Learning
    Nielsen, Frank
    Nock, Richard
    IEEE SIGNAL PROCESSING LETTERS, 2014, 21 (10) : 1289 - 1292
  • [9] Hebbian crosstalk prevents nonlinear unsupervised learning
    Cox, Kingsley J. A.
    Adams, Paul R.
    FRONTIERS IN COMPUTATIONAL NEUROSCIENCE, 2009, 3
  • [10] Statistical implications of clipped Hebbian learning of cell assemblies
    Knoblauch, A
    NEUROCOMPUTING, 2005, 65 : 647 - 652