Article ID Journal Published Year Pages File Type
10326004 Neural Networks 2005 9 Pages PDF
Abstract
The generalization properties of support vector machines (SVMs) are examined. From a geometrical point of view, the estimated parameter of an SVM is the one nearest the origin in the convex hull formed with given examples. Since introducing soft margins is equivalent to reducing the convex hull of the examples, an SVM with soft margins has a different learning curve from the original. In this paper we derive the asymptotic average generalization error of SVMs with soft margins in simple cases, that is, only when the dimension of inputs is one, and quantitatively show that soft margins increase the generalization error.
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Physical Sciences and Engineering Computer Science Artificial Intelligence
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