• Title of article

    Pruning error minimization in least squares support vector machines

  • Author/Authors

    B.J.، de Kruif, نويسنده , , T.J.A.، de Vries, نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2003
  • Pages
    -695
  • From page
    696
  • To page
    0
  • Abstract
    The support vector machine (SVM) is a method for classification and for function approximation. This method commonly makes use of an (epsilon)-insensitive cost function, meaning that errors smaller than (epsilon) remain unpunished. As an alternative, a least squares support vector machine (LSSVM) uses a quadratic cost function. When the LSSVM method is used for function approximation, a nonsparse solution is obtained. The sparseness is imposed by pruning, i.e., recursively solving the approximation problem and subsequently omitting data that has a small error in the previous pass. However, omitting data with a small approximation error in the previous pass does not reliably predict what the error will be after the sample has been omitted. In this paper, a procedure is introduced that selects from a data set the training sample that will introduce the smallest approximation error when it will be omitted. It is shown that this pruning scheme outperforms the standard one.
  • Keywords
    Reflectance measurements , corn , Nitrogen deficiency , Crop N monitoring
  • Journal title
    IEEE TRANSACTIONS ON NEURAL NETWORKS
  • Serial Year
    2003
  • Journal title
    IEEE TRANSACTIONS ON NEURAL NETWORKS
  • Record number

    62706