DocumentCode
1202250
Title
Pruning error minimization in least squares support vector machines
Author
De Kruif, Bas J. ; De Vries, Theo J A
Author_Institution
Drebbel Inst. for Mechatronics, Univ. of Twente, Enschede, Netherlands
Volume
14
Issue
3
fYear
2003
fDate
5/1/2003 12:00:00 AM
Firstpage
696
Lastpage
702
Abstract
The support vector machine (SVM) is a method for classification and for function approximation. This method commonly makes use of an ε-insensitive cost function, meaning that errors smaller than ε 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
function approximation; learning (artificial intelligence); learning automata; least squares approximations; minimisation; classification; data set; error minimization; function approximation; insensitive cost function; least squares support vector machines; pruning; quadratic cost function; Approximation error; Cost function; Equations; Error correction; Function approximation; Helium; Least squares approximation; Least squares methods; Support vector machine classification; Support vector machines;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/TNN.2003.810597
Filename
1199664
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