• DocumentCode
    1343107
  • Title

    The sample complexity of pattern classification with neural networks: the size of the weights is more important than the size of the network

  • Author

    Bartlett, Peter L.

  • Author_Institution
    Dept. of Syst. Eng., Australian Nat. Univ., Canberra, ACT, Australia
  • Volume
    44
  • Issue
    2
  • fYear
    1998
  • fDate
    3/1/1998 12:00:00 AM
  • Firstpage
    525
  • Lastpage
    536
  • Abstract
    Sample complexity results from computational learning theory, when applied to neural network learning for pattern classification problems, suggest that for good generalization performance the number of training examples should grow at least linearly with the number of adjustable parameters in the network. Results in this paper show that if a large neural network is used for a pattern classification problem and the learning algorithm finds a network with small weights that has small squared error on the training patterns, then the generalization performance depends on the size of the weights rather than the number of weights. For example, consider a two-layer feedforward network of sigmoid units, in which the sum of the magnitudes of the weights associated with each unit is bounded by A and the input dimension is n. We show that the misclassification probability is no more than a certain error estimate (that is related to squared error on the training set) plus A3 √((log n)/m) (ignoring log A and log m factors), where m is the number of training patterns. This may explain the generalization performance of neural networks, particularly when the number of training examples is considerably smaller than the number of weights. It also supports heuristics (such as weight decay and early stopping) that attempt to keep the weights small during training. The proof techniques appear to be useful for the analysis of other pattern classifiers: when the input domain is a totally bounded metric space, we use the same approach to give upper bounds on misclassification probability for classifiers with decision boundaries that are far from the training examples
  • Keywords
    error analysis; feedforward neural nets; learning (artificial intelligence); pattern classification; probability; signal sampling; bounded metric space; computational learning theory; decision boundaries; early stopping; error estimate; generalization performance; input dimension; input domain; misclassification probability; network parameters; network size; neural network learning; neural networks; pattern classification; sample complexity; sigmoid units; small squared error; squared error; training patterns; two-layer feedforward network; upper bounds; weight decay; weights size; Computer networks; Neural networks; Pattern analysis; Pattern classification; Pattern recognition; Probability distribution; Statistical learning; Training data; Upper bound; Virtual colonoscopy;
  • fLanguage
    English
  • Journal_Title
    Information Theory, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0018-9448
  • Type

    jour

  • DOI
    10.1109/18.661502
  • Filename
    661502