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2003 Fiscal Year Final Research Report Summary

Information separation via phasor neural networks and its application

Research Project

Project/Area Number 13650402
Research Category

Grant-in-Aid for Scientific Research (C)

Allocation TypeSingle-year Grants
Section一般
Research Field 情報通信工学
Research InstitutionThe University of Electro-Communications

Principal Investigator

TAKAHASHI Haruhisa  The University of Electro-Communications, Information and Communication Engineering, Professor, 電気通信学部, 教授 (90135418)

Co-Investigator(Kenkyū-buntansha) HOTTA Kazuhiro  The University of Electro-Communications, Information and Communication Engineering, Research Associate, 電気通信学部, 助手 (40345426)
ITAKURA Naoaki  The University of Electro-Communications, Information and Communication Engineering, Associate Professor, 電気通信学部, 助教授 (30223069)
KAWABATA Tsutom  The University of Electro-Communications, Information and Communication Engineering, Professor, 電気通信学部, 教授 (50152997)
Project Period (FY) 2001 – 2003
KeywordsCovariance / Mean field approximation / Complex neuron / Support vector machine / Markov random field
Research Abstract

The research was performed to develop the artificial neural network models for explaining and resolving the mammalian brain function. We proposed the covariance field neural network model which is a natural extension of the classical analogue neural network model, and gives a mean field approximation to Markov random fields. The covariance field neural network can represent the covariance of spike timing as the phase difference, which is important in brain information processing, and can perform information processing based on spike timing. As a mean field approximation it gives much better approximation accuracy for Markov random fields even for the large weight strength compared with the naive mean field model. We performed computer experiments to support this. We also applied this model to image segmentation, and confirmed the segmentation capability with phase-difference. We proposed the mean field learning for Boltzmann machine, and performed some fundamental experiments to confirm the quick training speed for the phase.
On the other hand, we proposed the efficient learning methods for neural netoworks, especially for the recently highlighted support vector machine(SVM). We extended SVM learning to the efficient multi-class algorithm, and apply the second order cone programming method to SVM learning. In addition we proposed the maximal margin classifier based on the geometric method, which behaves faster than the quick SVM known as SMO. Finally we proposed a new learning machine based on the kernel PCA, which can automatically determine the kernel parameter so that it can realize the no free parameter learning machine.

  • Research Products

    (12 results)

All Other

All Publications (12 results)

  • [Publications] I.V.Mayer: "Imaginary Motor Movement EEG Classification by Accumulative-Autocorrelation-Pulse"Electromyography and Clinical Neurophsiology. 41. 159-169 (2001)

    • Description
      「研究成果報告書概要(和文)」より
  • [Publications] Rameswer Debnath: "A New Approach to Structural Learning of Neural Networks"IEICE Trans.Fundamentals. (to appear). (2004)

    • Description
      「研究成果報告書概要(和文)」より
  • [Publications] H.Takahashi: "Covariance Phasor Neural Network as a mean field model"Proc.International Joint Confedrence of Neural Networks. 2923-2928 (2002)

    • Description
      「研究成果報告書概要(和文)」より
  • [Publications] Takahide Nogayama: "Generalization of kernel PCA and Automatic Paremeter Tuning"The 8th Australian and New Zealand Intelligent Information Systems Conference. 173-178 (2003)

    • Description
      「研究成果報告書概要(和文)」より
  • [Publications] 高橋治久: "位相ニューラルネットと平均場近似"電子情報通信学会技術研究報告. NC 2003-53. 43-48 (2003)

    • Description
      「研究成果報告書概要(和文)」より
  • [Publications] 向山 学: "幾何学的学習アルゴリズムによる最大マージン識別法"電子情報通信学会技術研究報告. NC2003-114. 37-42 (2003)

    • Description
      「研究成果報告書概要(和文)」より
  • [Publications] I.V.Mayer, H.Takahahi, K.Sakamoto: "Imaginary Motor Movement EEG Classification by Accumulative-Autocorrelation-Pulse"Electromyography and Clinical Neurophsiology. 41. 159-169 (2001)

    • Description
      「研究成果報告書概要(欧文)」より
  • [Publications] Rameswer Debnath, H.Takahashi: "A New Approach to Structural Learning of Neural Networks"IEICE Trans.Fundamentals. (to appear). (2004)

    • Description
      「研究成果報告書概要(欧文)」より
  • [Publications] H.Takahashi: "Covariance Phasor Neural Network"Proc.International Joint Confedrence of Neural Networks. 2923-2928 (2002)

    • Description
      「研究成果報告書概要(欧文)」より
  • [Publications] Rameswer Debnath, H.Takahashi: "Enlarging the Marginal Space of Suooprt Vector Machine"The 3rd International Conference on Neural Networkd and Artifical Intelligence, Nov.12-14, Minsk, Belarus. (2003)

    • Description
      「研究成果報告書概要(欧文)」より
  • [Publications] Takahide Nogayama, H.Takahashi, Masakazu Muramatsu: "Genetalization of kernel PCA and Automatic Paremeter Tuning"The 8th Australian and New Zealand Intelligent Information Systems Conference, Macquarie University, Sydney, Australia. (2003)

    • Description
      「研究成果報告書概要(欧文)」より
  • [Publications] Rameswer Debnath, H.Takahashi: "A Fast Learning Decision-Based SVM for Multi-Class Problems"ICMLA'03 (Proceedings of the International Conference of Machine Learning and Applications). 128-134 (2003)

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

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Published: 2005-04-19  

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