• DocumentCode
    3058650
  • Title

    Capacity control in linear classifiers for pattern recognition

  • Author

    Guyon, I. ; Vapnik, V. ; Boser, B. ; Bottou, L. ; Solla, S.A.

  • Author_Institution
    AT&T Bell Lab., Holmdel, NJ, USA
  • fYear
    1992
  • fDate
    30 Aug-3 Sep 1992
  • Firstpage
    385
  • Lastpage
    388
  • Abstract
    Achieving good performance in statistical pattern recognition requires matching the capacity of the classifier to the amount of training data. If the classifier has too many adjustable parameters (large capacity), it is likely to learn the training data without difficulty, but will probably not generalize properly to patterns that do not belong to the training set. Conversely, if the capacity of the classifier is not large enough, it might not be able to learn the task at all. In between, there is an optimal classifier capacity which ensures the best expected generalization for a given amount of training data. The method of structural risk minimization (SRM) refers to tuning the capacity of the classifier to the available amount of training data. This paper illustrates the method of SRM with several examples of algorithms. Experiments confirm theoretical predictions of performance improvement in application to handwritten digit recognition
  • Keywords
    character recognition; learning (artificial intelligence); SRM; handwritten digit recognition; linear classifiers; optimal classifier capacity; pattern recognition; structural risk minimization; training data; training set; tuning; Capacity planning; Error correction; Frequency; Handwriting recognition; Pattern matching; Pattern recognition; Risk management; Symmetric matrices; Testing; Training data;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Pattern Recognition, 1992. Vol.II. Conference B: Pattern Recognition Methodology and Systems, Proceedings., 11th IAPR International Conference on
  • Conference_Location
    The Hague
  • Print_ISBN
    0-8186-2915-0
  • Type

    conf

  • DOI
    10.1109/ICPR.1992.201798
  • Filename
    201798