• DocumentCode
    1503226
  • Title

    Reformulated radial basis neural networks trained by gradient descent

  • Author

    Karayiannis, Nicolaos B.

  • Author_Institution
    Dept. of Electr. & Comput. Eng., Houston Univ., TX, USA
  • Volume
    10
  • Issue
    3
  • fYear
    1999
  • fDate
    5/1/1999 12:00:00 AM
  • Firstpage
    657
  • Lastpage
    671
  • Abstract
    This paper presents an axiomatic approach for constructing radial basis function (RBF) neural networks. This approach results in a broad variety of admissible RBF models, including those employing Gaussian RBFs. The form of the RBFs is determined by a generator function. New RBF models can be developed according to the proposed approach by selecting generator functions other than exponential ones, which lead to Gaussian RBFs. This paper also proposes a supervised learning algorithm based on gradient descent for training reformulated RBF neural networks constructed using the proposed approach. A sensitivity analysis of the proposed algorithm relates the properties of RBFs with the convergence of gradient descent learning. Experiments involving a variety of reformulated RBF networks generated by linear and exponential generator functions indicate that gradient descent learning is simple, easily implementable, and produces RBF networks that perform considerably better than conventional RBF models trained by existing algorithms
  • Keywords
    function approximation; gradient methods; learning (artificial intelligence); radial basis function networks; sensitivity analysis; vector quantisation; clustering; convergence; function approximation; gradient descent method; learning vector quantisation; radial basis neural networks; reformulation; sensitivity analysis; supervised learning; Clustering algorithms; Function approximation; Interpolation; Neural networks; Prototypes; Radial basis function networks; Sensitivity analysis; Supervised learning; Surface fitting; Training data;
  • fLanguage
    English
  • Journal_Title
    Neural Networks, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1045-9227
  • Type

    jour

  • DOI
    10.1109/72.761725
  • Filename
    761725