CLUSTERING ALGORITHMS AND KOHONEN MAPS FOR SYMBOLIC DATA(Symbolic Data Analysis)

抄録

This paper considers 'symbolic' data tables where variables take, as 'values', intervals, sets of categories, histograms etc. instead of single numbers or categories. After presenting some cases where this situation may occur, we concentrate on interval-type data and present methods for partitioning the underlying set of objects (rows of the data matrix) into a given number of homogeneous clusters. Our clustering strategies are typically based on a clustering criterion and generalize similar approaches in classical cluster analysis. Such methods are part of a general Symbolic Data Analysis described, e.g., in Bock and Diday (2000). Finally, we present a sequential clustering and updating strategy for constructing a Self-Organizing Map (SOM, Kohonen map) for visualizing symbolic interval-type data.

収録刊行物

Journal of the Japanese Society of Computational Statistics   [巻号一覧]

Journal of the Japanese Society of Computational Statistics 15(2), 217-229, 2003-06  [この号の目次]

日本計算機統計学会

参考文献:  12件

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各種コード

  • NII論文ID(NAID) :
    110001235176
  • NII書誌ID(NCID) :
    AA10823693
  • 本文言語コード :
    ENG
  • 資料種別 :
    REV
  • ISSN :
    09152350
  • 収録DB :
    CJP書誌  NII-ELS