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[Keyword] RBF neural network(3hit)

1-3hit
  • Stock Index Trend Analysis Based on Signal Decomposition

    Liming ZHANG  Defu ZHANG  Weifeng LI  

     
    LETTER-Office Information Systems, e-Business Modeling

      Vol:
    E97-D No:8
      Page(s):
    2187-2190

    A new stock index trend analysis approach is proposed in this paper, which is based on a newly developed signal decomposition approach - adaptive Fourier decomposition (AFD). AFD can effectively extract the signal's primary trend, which specifically suits the Dow Theory based technique analysis. The proposed approach integrates two different kinds of forecasting approaches, including the Dow theory the RBF neural network. Effectiveness of the proposed approach is assessed through comparison with the direct RBF neural network approach. The result is proved to be promising.

  • An Immunity-Based RBF Network and Its Application in Equalization of Nonlinear Time-Varying Channels

    Xiaogang ZANG  Xinbao GONG  Ronghong JIN  Xiaofeng LING  Bin TANG  

     
    LETTER-Neural Networks and Bioengineering

      Vol:
    E92-A No:5
      Page(s):
    1390-1394

    This paper proposes a novel RBF training algorithm based on immune operations for dynamic problem solving. The algorithm takes inspiration from the dynamic nature of natural immune system and locally-tuned structure of RBF neural network. Through immune operations of vaccination and immune response, the RBF network can dynamically adapt to environments according to changes in the training set. Simulation results demonstrate that RBF equalizer based on the proposed algorithm obtains good performance in nonlinear time-varying channels.

  • Design of RBF Neural Network Using An Efficient Hybrid Learning Algorithm with Application in Human Face Recognition with Pseudo Zernike Moment

    Javad HADDADNIA  Karim FAEZ  Majid AHMADI  Payman MOALLEM  

     
    PAPER-Biocybernetics, Neurocomputing

      Vol:
    E86-D No:2
      Page(s):
    316-325

    This paper presents an efficient Hybrid Learning Algorithm (HLA) for Radial Basis Function Neural Network (RBFNN). The HLA combines the gradient method and the linear least squared method for adjusting the RBF parameters and connection weights. The number of hidden neurons and their characteristics are determined using an unsupervised clustering procedure, and are used as input parameters to the learning algorithm. We demonstrate that the HLA, while providing faster convergence in training phase, is also less sensitive to training and testing patterns. The proposed HLA in conjunction with RBFNN is used as a classifier in a face recognition system to show the usefulness of the learning algorithm. The inputs to the RBFNN are the feature vectors obtained by combining shape information and Pseudo Zernike Moment (PZM). Simulation results on the Olivetti Research Laboratory (ORL) database and comparison with other algorithms indicate that the HLA yields excellent recognition rate with less hidden neurons in human face recognition.