DocumentCode :
1038351
Title :
Online learning with kernels
Author :
Kivinen, Jyrki ; Smola, Alexander J. ; Williamson, Robert C.
Author_Institution :
Res. Sch. of Inf. Sci. & Eng., Australian Nat. Univ., Canberra, ACT, Australia
Volume :
52
Issue :
8
fYear :
2004
Firstpage :
2165
Lastpage :
2176
Abstract :
Kernel-based algorithms such as support vector machines have achieved considerable success in various problems in batch setting, where all of the training data is available in advance. Support vector machines combine the so-called kernel trick with the large margin idea. There has been little use of these methods in an online setting suitable for real-time applications. In this paper, we consider online learning in a reproducing kernel Hilbert space. By considering classical stochastic gradient descent within a feature space and the use of some straightforward tricks, we develop simple and computationally efficient algorithms for a wide range of problems such as classification, regression, and novelty detection. In addition to allowing the exploitation of the kernel trick in an online setting, we examine the value of large margins for classification in the online setting with a drifting target. We derive worst-case loss bounds, and moreover, we show the convergence of the hypothesis to the minimizer of the regularized risk functional. We present some experimental results that support the theory as well as illustrating the power of the new algorithms for online novelty detection.
Keywords :
Hilbert spaces; convergence; learning (artificial intelligence); online operation; operating system kernels; regression analysis; signal classification; signal detection; stochastic processes; support vector machines; convergence; kernel Hilbert space; kernels-based algorithms; large margin classifiers; novelty detection; online learning; signal classification; signal detection; stochastic gradient descent; support vector machines; worst-case loss bounds; Australia; Condition monitoring; Convergence; Gaussian processes; Hilbert space; Kernel; Signal processing algorithms; Stochastic processes; Support vector machines; Training data; Classification; condition monitoring; large margin classifiers; novelty detection; regression; reproducing kernel Hilbert spaces; stochastic gradient descent; tracking;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2004.830991
Filename :
1315937
Link To Document :
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