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[61430] Artykuł:

Generalized Self-Organizing Maps for Automatic Determination of the Number of Clusters and Their Multiprototypes in Cluster Analysis

Czasopismo: IEEE Transactions on Neural Networks and Learning Systems   Tom: 29, Zeszyt: 7, Strony: 2833-2845
ISSN:  2162-237X
Opublikowano: Lipiec 2018
 
  Autorzy / Redaktorzy / Twórcy
Imię i nazwisko Wydział Katedra Do oświadczenia
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Marian Bolesław Gorzałczany orcid logo WEAiIKatedra Informatyki, Elektroniki i Elektrotechniki *Takzaliczony do "N"Automatyka, elektronika, elektrotechnika i technologie kosmiczne5045.00.00  
Filip Rudziński orcid logo WEAiIKatedra Informatyki, Elektroniki i Elektrotechniki *Takzaliczony do "N"Informatyka techniczna i telekomunikacja5045.00.00  

Grupa MNiSW:  Publikacja w czasopismach wymienionych w wykazie ministra MNiSzW (część A)
Punkty MNiSW: 45


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Keywords:

Clustering  multiprototypes  neuron chains  self-organizing maps SOMs 



Abstract:

This paper presents a generalization of self-organizing maps with 1-D neighborhoods (neuron chains) that can be effectively applied to complex cluster analysis problems. The essence of the generalization consists in introducing mechanisms that allow the neuron chain - during learning - to disconnect into subchains, to reconnect some of the subchains again, and to dynamically regulate the overall number of neurons in the system. These features enable the network - working in a fully unsupervised way (i.e., using unlabeled data without a predefined number of clusters) - to automatically generate collections of multiprototypes that are able to represent a broad range of clusters in data sets. First, the operation of the proposed approach is illustrated on some synthetic data sets. Then, this technique is tested using several real-life, complex, and multidimensional benchmark data sets available from the University of California at Irvine (UCI) Machine Learning repository and the Knowledge Extraction based on Evolutionary Learning data set repository. A sensitivity analysis of our approach to changes in control parameters and a comparative analysis with an alternative approach are also performed.