LEAST MEAN-SQUARE ERROR RECONSTRUCTION PRINCIPLE FOR SELF-ORGANIZING NEURAL-NETS

被引:254
作者
XU, L [1 ]
机构
[1] BEIJING UNIV,BEIJING,PEOPLES R CHINA
关键词
SELF-ORGANIZATION; LEAST MSE RECONSTRUCTION; PCA NETS; CONVERGENCE ANALYSIS; SYMMETRY BREAKING;
D O I
10.1016/S0893-6080(05)80107-8
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
We proposed a new self-organizing net based on the principle of Least Mean Square Error Reconstruction (LMSER) of an input pattern. With this principle, a local learning rule called LMSER is naturally obtained for training nets consisting of either one or several layers. We proved that for one layer with n1 linear units, the LMSER rule lets their weights converge to rotations of the data's first n1 principal components. These converged points are stable and corresponding to the global minimum in the Mean Square Error (MSE) landscape, which has many saddles but no local minimum. The results indirectly provided a picture about LMSER's global convergence, which is also suitable for Oja rule since we proved that the evolution direction of the Oja rule has a positive projection on that of LMSER. We have also revealed an interesting fact that slight modifications of the LMSER rule (also the Oja rule) can perform the true Principal Component Analysis (PCA) without externally designing for building asymmetrical circuits required by previous studies.
引用
收藏
页码:627 / 648
页数:22
相关论文
共 57 条
[1]   COMPETITIVE LEARNING ALGORITHMS FOR VECTOR QUANTIZATION [J].
AHALT, SC ;
KRISHNAMURTHY, AK ;
CHEN, PK ;
MELTON, DE .
NEURAL NETWORKS, 1990, 3 (03) :277-290
[2]  
BALDI P, 1991, BACK PROPAGATION THE
[3]  
BALDI P, 1989, NEURAL NETWORKS, V2, P52
[4]   Unsupervised Learning [J].
Barlow, H. B. .
NEURAL COMPUTATION, 1989, 1 (03) :295-311
[5]  
BARROW HG, 1987, 1ST P IEEE ANN C NEU, V4, P115
[6]   SELF-ORGANIZING NEURAL NETWORK THAT DISCOVERS SURFACES IN RANDOM-DOT STEREOGRAMS [J].
BECKER, S ;
HINTON, GE .
NATURE, 1992, 355 (6356) :161-163
[7]   THEORY FOR THE DEVELOPMENT OF NEURON SELECTIVITY - ORIENTATION SPECIFICITY AND BINOCULAR INTERACTION IN VISUAL-CORTEX [J].
BIENENSTOCK, EL ;
COOPER, LN ;
MUNRO, PW .
JOURNAL OF NEUROSCIENCE, 1982, 2 (01) :32-48
[8]   DYNAMIC-SYSTEMS THAT SORT LISTS, DIAGONALIZE MATRICES, AND SOLVE LINEAR-PROGRAMMING PROBLEMS [J].
BROCKETT, RW .
LINEAR ALGEBRA AND ITS APPLICATIONS, 1991, 146 :79-91
[9]  
CAPENTER GA, 1987, APPL OPTICS, V26, P4919
[10]  
CAPENTER GA, 1988, IEEE COMPUT, P77