A Note on the Generalization Performance of Kernel Classifiers with Margin
Author(s)
Evgeniou, Theodoros; Pontil, Massimiliano
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We present distribution independent bounds on the generalization misclassification performance of a family of kernel classifiers with margin. Support Vector Machine classifiers (SVM) stem out of this class of machines. The bounds are derived through computations of the $V_gamma$ dimension of a family of loss functions where the SVM one belongs to. Bounds that use functions of margin distributions (i.e. functions of the slack variables of SVM) are derived.
Date issued
2000-05-01Other identifiers
AIM-1681
CBCL-184
Series/Report no.
AIM-1681CBCL-184
Keywords
AI, MIT, Artificial Intelligence, missing data, mixture models, statistical learning, EM algorithm, neural networks, kernel classifiers, Support Vector Machine, regularization networks, statistical learning theory, V-gamma dimension.