nips nips2007 nips2007-24 nips2007-24-reference knowledge-graph by maker-knowledge-mining
Source: pdf
Author: Olivier Chapelle, Alekh Agarwal, Fabian H. Sinz, Bernhard Schölkopf
Abstract: We study a pattern classification algorithm which has recently been proposed by Vapnik and coworkers. It builds on a new inductive principle which assumes that in addition to positive and negative data, a third class of data is available, termed the Universum. We assay the behavior of the algorithm by establishing links with Fisher discriminant analysis and oriented PCA, as well as with an SVM in a projected subspace (or, equivalently, with a data-dependent reduced kernel). We also provide experimental results. 1
[1] O. Chapelle, B. Sch¨ lkopf, and A. Zien, editors. Semi-Supervised Learning. MIT Press, Cambridge, MA, o 2006.
[2] N. J. Hill, T. N. Lal, M. Schr¨ der, T. Hinterberger, B. Wilhelm, F. Nijboer, U. Mochty, G. Widman, C. E. o Elger, B. Sch¨ lkopf, A. K¨ bler, and N. Birbaumer. Classifying EEG and ECoG signals without subject o u training for fast bci implementation: Comparison of non-paralysed and completely paralysed subjects. IEEE Transactions on Neural Systems and Rehabilitation Engineering, 14(2):183–186, 06 2006.
[3] T. N. Lal. Machine Learning Methods for Brain-Computer Interdaces. PhD thesis, University Darmstadt, 09 2005. Logos Verlag Berlin MPI Series in Biological Cybernetics, Bd. 12 ISBN 3-8325-1048-6.
[4] Neil D. Lawrence and Michael I. Jordan. Gaussian processes and the null-category noise model. In A. Zien O. Chapelle, Bernhard Sch¨ lkopf, editor, Semi-Supervised Learning, chapter 8, pages 137–150. o MIT University Press, 2006.
[5] S. Mika, G. R¨ tsch, J. Weston, B. Sch¨ lkopf, A. Smola, and K. M¨ ller. Invariant feature extraction and a o u classification in kernel spaces. In Advances in Neural Information Processing Systems 12, pages 526–532, 2000.
[6] Sebastian Mika, Gunnar R¨ tsch, and Klaus-Robert M¨ ller. A mathematical programming approach to the a u kernel fisher algorithm. In Advances in Neural Information Processing Systems, NIPS, 2000.
[7] J. del R. Mill´ n. On the need for on-line learning in brain-computer interfaces. IDIAP-RR 30, IDIAP, a Martigny, Switzerland, 2003. Published in “Proc. of the Int. Joint Conf. on Neural Networks”, 2004.
[8] P. Sollich. Probabilistic methods for support vector machines. In Advances in Neural Information Processing Systems, 1999.
[9] J. A. K. Suykens and J. Vandewalle. Least squares support vector machine classifiers. Neural Processing Letters, 9(3):293–300, 1999.
[10] V. Vapnik. Transductive Inference and Semi-Supervised Learning. In O. Chapelle, B. Sch¨ lkopf, and o A. Zien, editors, Semi-Supervised Learning, chapter 24, pages 454–472. MIT press, 2006.
[11] J. Weston, R. Collobert, F. Sinz, L. Bottou, and V. Vapnik. Inference with the universum. In Proceedings of the 23rd International Conference on Machine Learning, page 127, 06/25/ 2006.
[12] P. Zhong and M. Fukushima. A new support vector algorithm. Optimization Methods and Software, 21:359–372, 2006. 8