• DocumentCode
    988625
  • Title

    A Kernel-Induced Space Selection Approach to Model Selection in KLDA

  • Author

    Wang, Lei ; Chan, Kap Luk ; Xue, Ping ; Zhou, Luping

  • Volume
    19
  • Issue
    12
  • fYear
    2008
  • Firstpage
    2116
  • Lastpage
    2131
  • Abstract
    Model selection in kernel linear discriminant analysis (KLDA) refers to the selection of appropriate parameters of a kernel function and the regularizer. By following the principle of maximum information preservation, this paper formulates the model selection problem as a problem of selecting an optimal kernel-induced space in which different classes are maximally separated from each other. A scatter-matrix-based criterion is developed to measure the “goodness” of a kernel-induced space, and the kernel parameters are tuned by maximizing this criterion. This criterion is computationally efficient and is differentiable with respect to the kernel parameters. Compared with the leave-one-out (LOO) or k -fold cross validation (CV), the proposed approach can achieve a faster model selection, especially when the number of training samples is large or when many kernel parameters need to be tuned. To tune the regularization parameter in the KLDA, our criterion is used together with the method proposed by Saadi (2004). Experiments on benchmark data sets verify the effectiveness of this model selection approach.
  • Keywords
    Kernel-induced space selection; kernel linear discriminant analysis (KLDA); kernel parameter tuning; model selection; Algorithms; Artificial Intelligence; Computer Simulation; Discriminant Analysis; Linear Models; Pattern Recognition, Automated;
  • fLanguage
    English
  • Journal_Title
    Neural Networks, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1045-9227
  • Type

    jour

  • DOI
    10.1109/TNN.2008.2005140
  • Filename
    4674597