• DocumentCode
    1538240
  • Title

    A dynamic regularized radial basis function network for nonlinear, nonstationary time series prediction

  • Author

    Yee, Paul ; Haykin, Simon

  • Author_Institution
    Commun. Res. Lab., McMaster Univ., Hamilton, Ont., Canada
  • Volume
    47
  • Issue
    9
  • fYear
    1999
  • fDate
    9/1/1999 12:00:00 AM
  • Firstpage
    2503
  • Lastpage
    2521
  • Abstract
    In this paper, constructive approximation theorems are given which show that under certain conditions, the standard Nadaraya-Watson (1964) regression estimate (NWRE) can be considered a specially regularized form of radial basis function networks (RBFNs). From this and another related result, we deduce that regularized RBFNs are m.s., consistent, like the NWRE for the one-step-ahead prediction of Markovian nonstationary, nonlinear autoregressive time series generated by an i.i.d. noise processes. Additionally, choosing the regularization parameter to be asymptotically optimal gives regularized RBFNs the advantage of asymptotically realizing minimum m.s. prediction error. Two update algorithms (one with augmented networks/infinite memory and the other with fixed-size networks/finite memory) are then proposed to deal with nonstationarity induced by time-varying regression functions. For the latter algorithm, tests on several phonetically balanced male and female speech samples show an average 2.2-dB improvement in the predicted signal/noise (error) ratio over corresponding adaptive linear predictors using the exponentially-weighted RLS algorithm. Further RLS filtering of the predictions from an ensemble of three such RBFNs combined with the usual autoregressive inputs increases the improvement to 4.2 dB, on average, over the linear predictors
  • Keywords
    filtering theory; least mean squares methods; prediction theory; radial basis function networks; speech processing; time series; Markovian nonstationary; Nadaraya-Watson regression estimate; RLS filtering; adaptive linear predictors; approximation theorems; augmented networks/infinite memory; autoregressive inputs; dynamic regularized radial basis function network; exponentially-weighted RLS algorithm; female speech samples; fixed-size networks/finite memory; i.i.d. noise processes; male and female speech; male speech samples; minimum mean square prediction error; nonlinear autoregressive time series; nonlinear nonstationary time series prediction; one-step-ahead prediction; phonetically balanced speech samples; signal/noise ratio; time-varying regression functions; update algorithms; Neural networks; Noise generators; Nonlinear filters; Predictive models; Radial basis function networks; Resonance light scattering; Signal processing algorithms; Signal to noise ratio; Speech enhancement; Testing;
  • fLanguage
    English
  • Journal_Title
    Signal Processing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1053-587X
  • Type

    jour

  • DOI
    10.1109/78.782193
  • Filename
    782193