An introduction to kernel-based learning algorithms
Top Cited Papers
- 1 March 2001
- journal article
- Published by Institute of Electrical and Electronics Engineers (IEEE) in IEEE Transactions on Neural Networks
- Vol. 12 (2), 181-201
- https://doi.org/10.1109/72.914517
Abstract
This paper provides an introduction to support vector machines, kernel Fisher discriminant analysis, and kernel principal component analysis, as examples for successful kernel-based learning methods. We first give a short background about Vapnik-Chervonenkis theory and kernel feature spaces and then proceed to kernel based learning in supervised and unsupervised scenarios including practical and algorithmic considerations. We illustrate the usefulness of kernel algorithms by discussing applications such as optical character recognition and DNA analysis.Keywords
This publication has 70 references indexed in Scilit:
- Improvements to Platt's SMO Algorithm for SVM Classifier DesignNeural Computation, 2001
- New Support Vector AlgorithmsNeural Computation, 2000
- Arbitrary-norm separating planeOperations Research Letters, 1999
- Comparison of DNA Sequences with Protein SequencesGenomics, 1997
- A Decision-Theoretic Generalization of On-Line Learning and an Application to BoostingJournal of Computer and System Sciences, 1997
- Support-vector networksMachine Learning, 1995
- Network information criterion-determining the number of hidden units for an artificial neural network modelIEEE Transactions on Neural Networks, 1994
- Neural Networks and the Bias/Variance DilemmaNeural Computation, 1992
- Fast Learning in Networks of Locally-Tuned Processing UnitsNeural Computation, 1989
- A new look at the statistical model identificationIEEE Transactions on Automatic Control, 1974