MULTIDIMENSIONAL SCALING FOR DISSIMILARITY FUNCTIONS WITH CONTINUOUS ARGUMENT(Functional Data Analysis)

抄録

In this paper, a method of Multidimensional Scaling (MDS) for dissimilarity functions with continuous argument is discussed. MDS is one of the important methods for data analysis. Most conventional MDS methods suppose that dissimilarities are real values. Nowadays, the types of data set dealt with in data analysis are extended. Ramsay and Silverman proposed the concept of Functional Data Analysis (FDA). FDA deals with functional data or with data as functional data. When dissimilarity data among n objects are given dependent on a variable t, we would like to use methods of MDS of functional version; the aim of the method is to derive functional configuration X(t) that represents the dissimilarity functional data. A method of MDS for dissimilarity functions with discrete argument is also discussed, because most dissimilarity functions are given by discrete values in view of implementation on computer.

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), 327-333, 2003-06  [この号の目次]

日本計算機統計学会

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各種コード

  • NII論文ID(NAID) :
    110001235186
  • 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