Title :
Self-organizing operator map for nonlinear dimension reduction
Author :
Joutsensalo, Jyrki ; Miettinen, Antti
Author_Institution :
Lab. of Comput. & Inf. Sci., Helsinki Univ. of Technol., Espoo, Finland
Abstract :
Dimension reduction is an important problem arising e.g. in feature extraction, pattern recognition, and data compression. Often this is done using principal component analysis (PCA), but this approach is suitable only when the data are sufficiently linearly distributed. In this paper, neural network learning algorithms combining Kohonen´s self-organizing map (SOM) and Oja´s PCA rule are studied for the challenging task of nonlinear dimension reduction. The neural network has a structure of a self-organizing operator map where neurons, i.e. operators, are affine spaces instead of vectors. Adaptive algorithms derived from an optimization criterion are shortly reviewed, but the emphasis is on computationally more efficient and stable learning-rate free, K-means type batch algorithms. Simulations using image data show that the methods outperform the sequential methods proposed earlier
Keywords :
data compression; feature extraction; optimisation; self-organising feature maps; Kohonen´s self-organizing map; adaptive algorithms; affine spaces; learning-rate free K-means type batch algorithms; neural network learning algorithms; nonlinear dimension reduction; optimization criterion; principal component analysis; self-organizing operator map; Adaptive algorithm; Computational modeling; Data compression; Feature extraction; Image coding; Information science; Laboratories; Neural networks; Neurons; Pattern recognition; Principal component analysis;
Conference_Titel :
Neural Networks, 1995. Proceedings., IEEE International Conference on
Conference_Location :
Perth, WA
Print_ISBN :
0-7803-2768-3
DOI :
10.1109/ICNN.1995.488076