Title :
Online Regularized Classification Algorithms
Author :
Ying, Yiming ; Zhou, Ding-Xuan
Author_Institution :
Dept. of Math., City Univ. of Hong Kong, Kowloon
Abstract :
This paper considers online classification learning algorithms based on regularization schemes in reproducing kernel Hilbert spaces associated with general convex loss functions. A novel capacity independent approach is presented. It verifies the strong convergence of the algorithm under a very weak assumption of the step sizes and yields satisfactory convergence rates for polynomially decaying step sizes. Explicit learning rates with respect to the misclassification error are given in terms of the choice of step sizes and the regularization parameter (depending on the sample size). Error bounds associated with the hinge loss, the least square loss, and the support vector machine q-norm loss are presented to illustrate our method
Keywords :
Hilbert spaces; convergence; pattern classification; support vector machines; convergence; kernel Hilbert space; online classification learning algorithm; regularization scheme; support vector machine; Classification algorithms; Convergence; Error analysis; Fasteners; Hilbert space; Kernel; Least squares methods; Mathematics; Polynomials; Support vector machines; Classification algorithm; error analysis; online learning; regularization; reproducing kernel Hilbert spaces;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2006.883632