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12 - On-line Learning with Time-Correlated Examples

Published online by Cambridge University Press:  28 January 2010

Tom Heskes
Affiliation:
RWCP Theoretical Foundation, SNN, Department of Medical Physics and Biophysics, University of Nijmegen, Geert Grooteplein 21, 6525 EZ Nijmegen, The Netherlands
Wim Wiegerinck
Affiliation:
RWCP Theoretical Foundation, SNN, Department of Medical Physics and Biophysics, University of Nijmegen, Geert Grooteplein 21, 6525 EZ Nijmegen, The Netherlands.
David Saad
Affiliation:
Aston University
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Summary

Abstract

We study the dynamics of on-line learning with time-correlated patterns. In this, we make a distinction between “small” networks and “large” networks. “Small” networks have a finite number of input units and are usually studied using tools from stochastic approximation theory in the limit of small learning parameters. “Large” networks have an extensive number of input units. A description in terms of individual weights is no longer useful and tools from statistical mechanics can be applied to compute the evolution of macroscopic order parameters. We give general derivations for both cases, but in the end focus on the effect of correlations on plateaus. Plateaus are long time spans in which the performance of the networks hardly changes. Learning in both “small” and “large” multi-layered perceptrons is often hampered by the presence of plateaus. The effect of correlations, however, appears to be quite different: they can have a huge beneficial effect in small networks, but seem to have only marginal effects in large networks.

Introduction

On-line learning with correlations

The ability to learn from examples is an essential feature in many neural network applications (Hertz et al., 1991; Haykin, 1994). Learning from examples enables the network to adapt its parameters or weights to its environment without the need for explicit knowledge of that environment. In on-line learning examples from the environment are continually presented to the network at distinct time steps. At each time step a small adjustment of the network's weights is made on the basis of the currently presented pattern. This procedure is iterated as long as the network learns.

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Publisher: Cambridge University Press
Print publication year: 1999

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  • On-line Learning with Time-Correlated Examples
    • By Tom Heskes, RWCP Theoretical Foundation, SNN, Department of Medical Physics and Biophysics, University of Nijmegen, Geert Grooteplein 21, 6525 EZ Nijmegen, The Netherlands, Wim Wiegerinck, RWCP Theoretical Foundation, SNN, Department of Medical Physics and Biophysics, University of Nijmegen, Geert Grooteplein 21, 6525 EZ Nijmegen, The Netherlands.
  • Edited by David Saad, Aston University
  • Book: On-Line Learning in Neural Networks
  • Online publication: 28 January 2010
  • Chapter DOI: https://doi.org/10.1017/CBO9780511569920.013
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  • On-line Learning with Time-Correlated Examples
    • By Tom Heskes, RWCP Theoretical Foundation, SNN, Department of Medical Physics and Biophysics, University of Nijmegen, Geert Grooteplein 21, 6525 EZ Nijmegen, The Netherlands, Wim Wiegerinck, RWCP Theoretical Foundation, SNN, Department of Medical Physics and Biophysics, University of Nijmegen, Geert Grooteplein 21, 6525 EZ Nijmegen, The Netherlands.
  • Edited by David Saad, Aston University
  • Book: On-Line Learning in Neural Networks
  • Online publication: 28 January 2010
  • Chapter DOI: https://doi.org/10.1017/CBO9780511569920.013
Available formats
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Save book to Google Drive

To save content items to your account, please confirm that you agree to abide by our usage policies. If this is the first time you use this feature, you will be asked to authorise Cambridge Core to connect with your account. Find out more about saving content to Google Drive.

  • On-line Learning with Time-Correlated Examples
    • By Tom Heskes, RWCP Theoretical Foundation, SNN, Department of Medical Physics and Biophysics, University of Nijmegen, Geert Grooteplein 21, 6525 EZ Nijmegen, The Netherlands, Wim Wiegerinck, RWCP Theoretical Foundation, SNN, Department of Medical Physics and Biophysics, University of Nijmegen, Geert Grooteplein 21, 6525 EZ Nijmegen, The Netherlands.
  • Edited by David Saad, Aston University
  • Book: On-Line Learning in Neural Networks
  • Online publication: 28 January 2010
  • Chapter DOI: https://doi.org/10.1017/CBO9780511569920.013
Available formats
×