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Self-organizing maps: stationary states, metastability and convergence rate

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Abstract

We investigate the effect of various types of neighborhood function on the convergence rates and the presence or absence of metastable stationary states of Kohonen's self-organizing feature map algorithm in one dimension. We demonstrate that the time necessary to form a topographic representation of the unit interval [0, 1] may vary over several orders of magnitude depending on the range and also the shape of the neighborhood function, by which the weight changes of the neurons in the neighborhood of the winning neuron are scaled. We will prove that for neighborhood functions which are convex on an interval given by the length of the Kohonen chain there exist no metastable states. For all other neighborhood functions, metastable states are present and may trap the algorithm during the learning process. For the widely-used Gaussian function there exists a threshold for the width above which metastable states cannot exist. Due to the presence or absence of metastable states, convergence time is very sensitive to slight changes in the shape of the neighborhood function. Fastest convergence is achieved using neighborhood functions which are “convex” over a large range around the winner neuron and yet have large differences in value at neighboring neurons.

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References

  • Erwin E, Obermayer K, Schulten K (1991) Convergence properties of self-organizing maps. In: Kohonen T et al. (ed) Artificial neural networks, vol I, North Holland, Amsterdam, pp 409–414

    Google Scholar 

  • Erwin E, Obermayer K, Schulten K (1992) Self-organizing maps: ordering, convergence properties and energy functions. Biol Cybern (this issue)

  • Geszti T (1990) Physical models of neural networks. World Scientific, Singapore

    Google Scholar 

  • Geszti T, Csabai I, Czakó F, Szakács T, Serneels R, Vattay G (1990) Dynamics of the Kohonen map. In: Statistical mechanics of neural networks: Proceedings, Sitges, Barcelona, Spain, Springer, Berlin Heidelberg New York, pp 341–349

    Google Scholar 

  • Kohonen T (1982a) Analysis of a simple self-organizing process. Biol Cybern 44:135–140

    Google Scholar 

  • Kohonen T (1982b) Self-organized formation of topologically correct feature maps. Biol Cybern 43:59–69

    Google Scholar 

  • Kohonen T (1988) Self-organization and associative memory. Springer, New York Berlin Heidelberg

    Google Scholar 

  • Lo ZP, Bavarian B (1991) On the rate of convergence in topology preserving neural networks. Biol Cybern 65:55–63

    Google Scholar 

  • Ritter H, Schulten K (1986) On the stationary state of Kohonen's self-organizing sensory mapping. Biol Cybern 54:99–106

    Google Scholar 

  • Ritter H, Martinetz T, Schulten K (1989) Topology conserving maps for learning visuomotor-coordination. Neural Networks 2:159–168

    Google Scholar 

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Erwin, E., Obermayer, K. & Schulten, K. Self-organizing maps: stationary states, metastability and convergence rate. Biol. Cybern. 67, 35–45 (1992). https://doi.org/10.1007/BF00201800

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  • DOI: https://doi.org/10.1007/BF00201800

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