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1998 Fiscal Year Final Research Report Summary

Neural network learning with regulatizers and generalization ability

Research Project

Project/Area Number 09680371
Research Category

Grant-in-Aid for Scientific Research (C)

Allocation TypeSingle-year Grants
Section一般
Research Field Intelligent informatics
Research InstitutionKyushu Institute of Technology

Principal Investigator

ISHIKAWA Masumi  Kyushu Institute of Technology Dept. of Control Engineering & Science, Professor, 情報工学部, 教授 (60222973)

Co-Investigator(Kenkyū-buntansha) ZHANG Hong  Kyushu Institute of Technology Dept. of Control Engineering & Science, Assistant Professor, 情報工学部, 助手 (30235709)
Project Period (FY) 1997 – 1998
Keywordsgeneralization / regularization / Gaussian regularizer / Laplace regularizer / linear regression
Research Abstract

The relation between neural network learning with regularizes and generalization ability is clarified both theoretically and empirically. In the present theoretical study, a Laplacian regularize, a Gaussian regularize and their combinations are considered.
In the first stage, various empirical procedures in a structural learning with forgetting proposed by the authors are theoretically clarified. For example, a structural learning with selective forgetting has something to do with the line process in vision under the assumption that a scene is almost smooth except a small number of discontinuous points.
In the second stage, a estimation of mean value using regularization is theoretically studied. It is the simplest case of multiple regression models. It is demonstrated that the proposed regularization method is effectively applied to real data.
In the third stage, excessive simplification in a formulation of generalization errors in multiple regression models is rectified. So for it has been assumed that input variables are mutually independent, and true model parameters and a noise variance are known a priori. We modified formulations so as to allow correlations between input variables. We propose a novel procedure for theoretically evaluating regularizes based on data. Firstly, we estimate model parameters and a noise variance from data. Secondly, assuming that these estimates are true, we calculate the optimal regularization parameters and model parameters by the previously proposed method. It provides, hopefully, their better estimates. Thirdly, assuming that the resulting estimates are true, we again calculate the optimal regularization parameters and model parameters. This procedure can be repeated iteratively. This iterative estimation is a key idea of the present study. Applications of the proposed method to real data demonstrates that better estimates with smaller generalization errors are obtained successfully.

  • Research Products

    (14 results)

All Other

All Publications (14 results)

  • [Publications] Masumi Ishikawa: "Designing neural netwarks by a combination of structural learning and genetic algorithms"Artifical Neural Networks-ICANN'97,Lasanne,Switzerland,Lecture Notes in Computer Science,1327. 415-420 (1997)

    • Description
      「研究成果報告書概要(和文)」より
  • [Publications] M.Ishikawa,K.Yoshida,S.Amari: "Designing regularizers by minimizing generalization errors"Proceedings of IJCNN'98,1988 IEEE World Congress on Computational Intelligence. 2328-2333 (1998)

    • Description
      「研究成果報告書概要(和文)」より
  • [Publications] 石川眞澄: "特集 脳と情報処理 -脳はどこまで創れるのか-ニューラルネットワークによるデータからの規則の発見"Computer Today. 90. 16-21 (1999)

    • Description
      「研究成果報告書概要(和文)」より
  • [Publications] 石川眞澄: "ソフトコンピューティングと情報統合"システム制御情報学会. 43・4. 174-179 (1999)

    • Description
      「研究成果報告書概要(和文)」より
  • [Publications] 島田博仁,石川眞澄,甘利俊一: "データに基づく汎化誤差最小化におる正則化項の設計"電子情報通信学会技術研究報告,NC99-128. 99・685. 81-88 (2000)

    • Description
      「研究成果報告書概要(和文)」より
  • [Publications] M.Ishikawa,H.Shimada,S.Amari: "Interative design of regularizers based on data by minimising generalization errors"IJCNN'2000. (to appear).

    • Description
      「研究成果報告書概要(和文)」より
  • [Publications] Masumi Ishikawa: "Knowledge-Based Neuroconputing,Chapter 5,"Structural learning and role discovery,in I.Clote and J.Zurada Eds.. 54 (2000)

    • Description
      「研究成果報告書概要(和文)」より
  • [Publications] Masumi Ishikawa: "Designing neural networks by a combination of structural learning and genetic algorithms"ICANN'97 Lecture Notes in Computer Science. 1327. 415-420 (1997)

    • Description
      「研究成果報告書概要(欧文)」より
  • [Publications] Masumi Ishikawa, Kazuhiro Yoshida, and Shun-ichi Amari: "Designing regularizes by Minimizing generalization errors"Proceedings of IJCNN'98, 1998 IEEE World Congress on Computational Intelligence. 2328-2333 (1998)

    • Description
      「研究成果報告書概要(欧文)」より
  • [Publications] M. Ishikawa: "Rule discovery from data using neural networks"Computer Today. No.90(in Japanese). 16-21 (1999)

    • Description
      「研究成果報告書概要(欧文)」より
  • [Publications] M. Ishikawa: "Soft computing and information integration"Systems, Control and Information. Vol.43, No.4(in Japanese). 174-179 (1999)

    • Description
      「研究成果報告書概要(欧文)」より
  • [Publications] H. Shimada, M. Ishikawa, and S. Amari: "Designing regularizes based on data by minimizing generalization errors"Technical Report of the Institute of Electronics, Information and Communication Engineers. NC99-128(in Japanese). 81-88 (2000)

    • Description
      「研究成果報告書概要(欧文)」より
  • [Publications] Masumi Ishikawa, Hirohito Shimada and Shun-ichi Amari: "Iterative design of regularizes based on data by minimizing generalization errors"Proceedings of IJCNN'2000. (to appear).

    • Description
      「研究成果報告書概要(欧文)」より
  • [Publications] Masumi Ishikawa: "Structural Learning and rule discovery Knowledge-based Neurocomputing, Chapter 5 (I. Cloete and J. Zurada Eds.)"MIT Press. 153-206 (2000)

    • Description
      「研究成果報告書概要(欧文)」より

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Published: 2001-10-23  

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