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A study of symbolic data analysis based on neighborhood graphs.

Research Project

Project/Area Number 16500089
Research Category

Grant-in-Aid for Scientific Research (C)

Allocation TypeSingle-year Grants
Section一般
Research Field Intelligent informatics
Research InstitutionTokyo Denki University

Principal Investigator

ICHINO Manabu  Tokyo Denki Univ., Dept.of Inf.& Arts, Professor, 理工学部, 教授 (40057245)

Project Period (FY) 2004 – 2005
Project Status Completed (Fiscal Year 2005)
Budget Amount *help
¥1,500,000 (Direct Cost: ¥1,500,000)
Fiscal Year 2005: ¥600,000 (Direct Cost: ¥600,000)
Fiscal Year 2004: ¥900,000 (Direct Cost: ¥900,000)
Keywordssymbolic data / pattern recognition / feature selection / neighborhood graph / discrimination / correlation analysis / generalized correlation coefficient / geometrical thickness / 分離能力 / 記述の一般性 / 動的特徴選択 / 次元の呪い
Research Abstract

The purpose of this research is to develop new methods for Symbolic Data Analysis (SDA). The SDA is a new research field for generalized data table in which each object is described not only quantitative feature values but also qualitative feature values. The following is a summary of our research results.
1) Feature selection for classification problems
When we have only finite number of training samples, the classification performance may not be improved by the addition of new features to describe the given training samples. This means that we have to strike the balance between the interclass distinguish-ability and the generality of class descriptions. We introduce the Cartesian System Model (CSM) as a mathematical model to treat symbolic data. Then, we define the notions of the inside view and the outside view based on the neighborhood relations. For a feature subset, the size of outside view and the size of inside view indicate the interclass distinction and the generality of class … More descriptions, respectively. Our interclass analysis is realized by combining a simple local feature selection method with the sizes of inside and outside views. We showed the usefulness of our approach by using data sets of UCI database. Since our method of interclass analysis is classifier independent, we can use it as a preprocessing process in the design of many pattern classifiers.
2) Generalized correlation coefficient
Pearson's correlation coefficient is useful to detect linear causal relations. We need more general tools to treat nonlinear causal relations and wider covariant relations. If two feature variables follow to a functional structure, the scatter diagram of data samples indicates a geometrically thin structure. From this viewpoint, we developed the Calhoun correlation coefficient for two quantitative feature variables and a method based on the relative neighborhood relations of samples. In this study we found another method based on the chain connected covering (CCC). The CCC is able to treat general symbolic objects, and to detect monotonic structures embedded in symbolic data tables. This approach may be useful to generalize the PCA and clustering methods. Less

Report

(3 results)
  • 2005 Annual Research Report   Final Research Report Summary
  • 2004 Annual Research Report
  • Research Products

    (8 results)

All 2006 2005 2004

All Journal Article (8 results)

  • [Journal Article] Interclass analysis in symbolic pattern classification problems2006

    • Author(s)
      Manabu Ichino, Shinya Ishikawa
    • Journal Title

      Computational Statistics 21・1(印刷中)

    • Description
      「研究成果報告書概要(和文)」より
    • Related Report
      2005 Final Research Report Summary
  • [Journal Article] Interclass analysis in symbolic pattern classification problems.2006

    • Author(s)
      Manabu Ichino, Shinya Ishikawa
    • Journal Title

      Computational Statistics 21-1(in press)

    • Description
      「研究成果報告書概要(欧文)」より
    • Related Report
      2005 Final Research Report Summary
  • [Journal Article] Interclass analysis in symbolic pattern classification problems2006

    • Author(s)
      Manabu Ichino, Shinya Ishikawa
    • Journal Title

      Computational Statistics 21・1(in press)

    • Related Report
      2005 Annual Research Report
  • [Journal Article] Detection of monotonic chain structures in mixed feature type multidimensional data.2005

    • Author(s)
      Manabu Ichino
    • Journal Title

      Proceedings of the International Conference on Cognition and Recognition, Karnataka, India ICCR-2005

      Pages: 1-6

    • Description
      「研究成果報告書概要(和文)」より
    • Related Report
      2005 Final Research Report Summary
  • [Journal Article] Generalized correlation coefficients based on geometrical thickness.2005

    • Author(s)
      Manabu Ichino
    • Journal Title

      Proceedings of the International Conference on Cognition and Recognition, Karnataka, India ICCR-2005

      Pages: 6-12

    • Description
      「研究成果報告書概要(和文)」より
    • Related Report
      2005 Final Research Report Summary
  • [Journal Article] Detection of monotonic chain structures in mixed feature type multidimensional data.2005

    • Author(s)
      Manabu Ichino
    • Journal Title

      Proceedings of the International Conference on Cognition and Recognition ICCR-2005, Karnataka, India

      Pages: 1-6

    • Description
      「研究成果報告書概要(欧文)」より
    • Related Report
      2005 Final Research Report Summary
  • [Journal Article] Generalized correlation coefficients based on geometrical thickness.2005

    • Author(s)
      Manabu Ichino
    • Journal Title

      Proceedings of the International Conference on Cognition and Recognition ICCR-2005, Karnataka, India

      Pages: 6-12

    • Description
      「研究成果報告書概要(欧文)」より
    • Related Report
      2005 Final Research Report Summary
  • [Journal Article] 構造類似度による特徴選択法の研究2004

    • Author(s)
      小野, 石川, 名児耶, 市野
    • Journal Title

      信学技報 PRMU2004-34

      Pages: 7-12

    • NAID

      110003274046

    • Related Report
      2004 Annual Research Report

URL: 

Published: 2004-04-01   Modified: 2016-04-21  

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