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Feature Weighting Using Margin and Radius Based Error Bound Optimization in SVMs

Published on Oct 20, 20092861 Views

The Support Vector Machine error bound is a function of the margin and radius. Standard SVM algorithms maximize the margin within a given feature space, therefore the radius is fixed and thus ignored