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Minimum Synthesis and Learning Algorithm for A Hybrid Nonlinear Predictor

Research Project

Project/Area Number 10650357
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 InstitutionKanazawa University

Principal Investigator

NAKAYAMA Kenji  Kanazawa Univ. Graduate School of Natural Science & Technology Professor, 自然科学研究科, 教授 (00207945)

Co-Investigator(Kenkyū-buntansha) HIRANO Akihoro  Kanazawa Univ. Faculty of Engineering, Research Assistant, 工学部, 助手 (70303261)
コナド キニ  金沢大学, 工学部, 助手 (80303262)
Project Period (FY) 1998 – 1999
Project Status Completed (Fiscal Year 1999)
Budget Amount *help
¥3,300,000 (Direct Cost: ¥3,300,000)
Fiscal Year 1999: ¥700,000 (Direct Cost: ¥700,000)
Fiscal Year 1998: ¥2,600,000 (Direct Cost: ¥2,600,000)
KeywordsPrediction / Nonlinear / Neural Networks / Linear Prediction / Learning Algorithm / Time Series / 雑音 / 学習
Research Abstract

Now a day, we have a lot of problems, environmental disruption, environmental pollution, economic crisis, population problem, natural disaster, nature conservation, and so on. In order to solve these problems, it is very important to analyze progress of these phenomena. These phenomena can be regarded as time series. Mainly they are nonlinear time series. So, nonlinear prediction becomes very important.
(1) A Nonlinear Predictor
In this research project, we have developed a hybrid nonlinear predictor, which combines a neural network and a feed-forward linear predictor. Since the neural network has linear output unit, most of nonlinear part and some linear part can be predicted by the neural network. The remaining part is predicted by the linear predictor.
(2) Learning Algorithms
An improved learning algorithm has been proposed, which separately optimize the neural network and the linear predictor in this order. An enhanced learning algorithm has been proposed for noisy nonlinear time series prediction.
(3) Nonlinearity Analysis of Time Series
Prediction is the mapping from the past sample x(n-1)=[x(n-1),x(n-2),..,x(n-N)] to the next sample x(n). When the past samples x(nィイD21ィエD2-1) and x(nィイD22ィエD2-1) are similar, however, the next samples x(nィイD21ィエD2) and x(nィイD22ィエD2) are far from to each other, then, nonlinearity of this time series is high. A measure, which can evaluate this property has been introduced.
(4) Prediction of Real Nonlinear Time Series
The proposed method was applied to many the real nonlinear time series, including Chaos, water levels of some lake, fog generation, and so on. The proposed hybrid nonlinear predictor demonstrated good performance compared with the conventional methods.

Report

(3 results)
  • 1999 Annual Research Report   Final Research Report Summary
  • 1998 Annual Research Report
  • Research Products

    (17 results)

All Other

All Publications (17 results)

  • [Publications] Ashraf A. M. Khalaf: "A cascade form predictor of neural network and FIR filters and its minimum size estimation based on nonlinearity analysis of time series"IEICE Trans.. E81-A. 364-373 (1998)

    • Description
      「研究成果報告書概要(和文)」より
    • Related Report
      1999 Final Research Report Summary
  • [Publications] Ashraf A. M. Khalaf: "A hybrid nonlinear predictor : Analysis of learning process and predictability for noisy time series"IEICE Trans.. E82-A. 1420-1427 (1999)

    • Description
      「研究成果報告書概要(和文)」より
    • Related Report
      1999 Final Research Report Summary
  • [Publications] K. Keeni: "Automatic generation of initial weights and estimation of hidden units for pattern classification using neural networks"Proc. 14th. Int. Conf. on Pattern Recognition. (1998)

    • Description
      「研究成果報告書概要(和文)」より
    • Related Report
      1999 Final Research Report Summary
  • [Publications] K. Keeni: "Automatic generation of initial weights and target outputs of multilayer neural networks and its application to pattern classification"Proc. 5th. Int. Conf. on Neural Information Processing. 1622-1625 (1998)

    • Description
      「研究成果報告書概要(和文)」より
    • Related Report
      1999 Final Research Report Summary
  • [Publications] Ashraf A. M. Khalaf: "A learning algorithm for a hybrid nonlinear predictor applied to noisy nonlinear time series"Proc. IJCNN'99. 3. 1590-1593 (1999)

    • Description
      「研究成果報告書概要(和文)」より
    • Related Report
      1999 Final Research Report Summary
  • [Publications] K. Keeni: "Estimation of initial weights and hidden units for fast learning of multi-layer neural networks for pattern classification"Proc. IJCNN'99. 3. 1652-1656 (1999)

    • Description
      「研究成果報告書概要(和文)」より
    • Related Report
      1999 Final Research Report Summary
  • [Publications] Ashraf A. M. Khalaf and N. Nakayama: "A cascade form predictor of neural network and FIR filters and its minimum size estimation based on nonlinearity analysis of time series"IEICE Trans. Fundamentals. Vol. E81-A. 364-373 (1998)

    • Description
      「研究成果報告書概要(欧文)」より
    • Related Report
      1999 Final Research Report Summary
  • [Publications] Ashraf A. M. Khalaf and N. Nakayama: "A hybrid nonlinear predictor : Analysis of learning process and predictability for noisy time series"IEICE Trans. Fundamentals. Vol. E82-A. 1420-1427 (1999)

    • Description
      「研究成果報告書概要(欧文)」より
    • Related Report
      1999 Final Research Report Summary
  • [Publications] K. Keeni, H. Simodaira and K. Nakayama: "Automatic generation of initial weights and estimation of hidden units for pattern classification using neural networks"Proc. 14th Int. Conf. on Pattern Recognition, Australia, Aug.. (1998)

    • Description
      「研究成果報告書概要(欧文)」より
    • Related Report
      1999 Final Research Report Summary
  • [Publications] K. keeni, K. Nakayama and H. Shimodaira: "Automatic generation of initial weights and target outputs of multilayer neural networks and its application to pattern classification"Proc. The 5th Int. Conf. on Neural Information Processing Japan. 1622-1625 (1998)

    • Description
      「研究成果報告書概要(欧文)」より
    • Related Report
      1999 Final Research Report Summary
  • [Publications] A. A. M. Khalaf and K. Nakayama: "A learning algorithm for a hybrid nonlinear predictor applied to noisy nonlinear time series"IEEE & INNS Proc. IJCNN'99, Washington, DC. 1590-1593 (1999)

    • Description
      「研究成果報告書概要(欧文)」より
    • Related Report
      1999 Final Research Report Summary
  • [Publications] K. Keeni, K. Nakayama and H. Shimodaira: "Estimation of initial weights and hidden units for fast learning of multi-layer neural networks for pattern classification"IEEE & INNS Proc. IJCNN'99, Washington, DC. 1652-1656 (1999)

    • Description
      「研究成果報告書概要(欧文)」より
    • Related Report
      1999 Final Research Report Summary
  • [Publications] A. A. M. Khalaf and K. Nakayama: "A Cascade Form Predictor of Neural Network and FIR Filters and Its Minimum Size Estimation"電子情報通信学会英文論文誌. E-81A・3. 364-373 (1998)

    • Related Report
      1999 Annual Research Report
  • [Publications] A. A. M. Khalaf and K. Nakayama: "A Hybrid Nonlinear Predictor : Analysis of Learning Process and Predictability for Noisy Time Series"電子情報通信学会英文論文誌. E-82-A・8. 1420-1427 (1999)

    • Related Report
      1999 Annual Research Report
  • [Publications] 三好誠司: "基本パーセプトロンの等比学習とその収束条件" 電子情報通信学会論文誌. J81-A,5. 844-853 (1998)

    • Related Report
      1998 Annual Research Report
  • [Publications] Kenji Nakayama: "Asimultaneous learning method for both activation functions and connection weights of multilager neural networks" Proc.of IJCNN'98. 2253-2257 (1998)

    • Related Report
      1998 Annual Research Report
  • [Publications] Ashraf.A.M.Khalaf: "Time series prediction using a hybrid model of neural network and FIR filter" Proc.of IJCNN'98. 1975-1980 (1998)

    • Related Report
      1998 Annual Research Report

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Published: 1998-04-01   Modified: 2016-04-21  

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