Literature DB >> 1391116

Unsupervised clustering and centroid estimation using dynamic competitive learning.

S J Kia1, G G Coghill.   

Abstract

In this paper, an unsupervised learning algorithm is developed. Two versions of an artificial neural network, termed a differentiator, are described. It is shown that our algorithm is a dynamic variation of the competitive learning found in most unsupervised learning systems. These systems are frequently used for solving certain pattern recognition tasks such as pattern classification and k-means clustering. Using computer simulation, it is shown that dynamic competitive learning outperforms simple competitive learning methods in solving cluster detection and centroid estimation problems. The simulation results demonstrate that high quality clusters are detected by our method in a short training time. Either a distortion function or the minimum spanning tree method of clustering is used to verify the clustering results. By taking full advantage of all the information presented in the course of training in the differentiator, we demonstrate a powerful adaptive system capable of learning continuously changing patterns.

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Year:  1992        PMID: 1391116     DOI: 10.1007/bf00200987

Source DB:  PubMed          Journal:  Biol Cybern        ISSN: 0340-1200            Impact factor:   2.086


  3 in total

1.  Differential competitive learning for centroid estimation and phoneme recognition.

Authors:  S G Kong; B Kosko
Journal:  IEEE Trans Neural Netw       Date:  1991

2.  Self-organization of associative memory and pattern classification: recurrent signal processing on topological feature maps.

Authors:  P Tavan; H Grubmüller; H Kühnel
Journal:  Biol Cybern       Date:  1990       Impact factor: 2.086

3.  Self-organization of orientation sensitive cells in the striate cortex.

Authors:  C von der Malsburg
Journal:  Kybernetik       Date:  1973-12-31
  3 in total

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