Journal of Applied Mathematics (Jan 2013)

Learning Rates for -Regularized Kernel Classifiers

  • Hongzhi Tong,
  • Di-Rong Chen,
  • Fenghong Yang

DOI
https://doi.org/10.1155/2013/496282
Journal volume & issue
Vol. 2013

Abstract

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We consider a family of classification algorithms generated from a regularization kernel scheme associated with -regularizer and convex loss function. Our main purpose is to provide an explicit convergence rate for the excess misclassification error of the produced classifiers. The error decomposition includes approximation error, hypothesis error, and sample error. We apply some novel techniques to estimate the hypothesis error and sample error. Learning rates are eventually derived under some assumptions on the kernel, the input space, the marginal distribution, and the approximation error.