(Enter summary)
Abstract: The support-vector network is a new learning machine for two-group
classification problems. The machine conceptually implements the following idea: input
vectors are non-linearly mapped to a very high-dimension feature space. In this feature
space a linear decision surface is constructed. Special properties of the decision surface
ensures high generalization ability of the learning machine. The idea behind the supportvector
network was previously implemented for the restricted case where the... (Update)
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BibTeX entry: (Update)
C. Cortes and V. Vapnik, Support-Vector Networks, Machine Learning, 20(3):273-297, September 1995 http://citeseer.ist.psu.edu/cortes95supportvector.html More
@article{ cortes95supportvector,
author = "Corinna Cortes and Vladimir Vapnik",
title = "Support-Vector Networks",
journal = "Machine Learning",
volume = "20",
number = "3",
pages = "273-297",
year = "1995",
url = "citeseer.ist.psu.edu/cortes95supportvector.html" }
Citations (may not include all citations):
1491
Learning internal representations by error propagation (context) - Rumelhart, Hinton et al. - 1987 ACM
348
Estimation of Dependences Based on Empirical Data (context) - Vapnik - 1982
306
Methods of Mathematical Physics (context) - Courant, Hilbert - 1953
255
A training algorithm for optimal margin classifiers
- Boser, Guyon et al. - 1992 ACM DBLP
231
The use of multiple measurements in taxonomic problems (context) - Fisher - 1936
174
Principles of Neurodynamics (context) - Rosenblatt - 1962
103
Theoretical foundations of the potential function method in .. (context) - Aizerman, Braverman et al. - 1964
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Handwritten digit recognition with a back-propagation networ..
- LeCun, Boser et al. - 1990 ACM DBLP
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Learning internal representations by backpropagating errors (context) - Rumelhart, Hinton et al. - 1986
19
Comparison of classifier methods: A case study in handwritte.. (context) - Bottou, Cortes et al. - 1994
18
Center for Computational Research in Economics and Managemen.. (context) - Parker, Technical - 1985
6
Classification into two multivariate normal distributions wi.. (context) - Anderson, Bahadur - 1966
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Une procedure d'apprentissage pour reseau a seuil assymetriq.. (context) - LeCun - 1985
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Neural-network and k-nearest-neighbor classifiers (context) - Bromley, Sackinger - 1991
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Limits on Learning Machine Accuracy Imposed by Data Quality - Cortes, Jackel, Chiang (1995)
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Hancock: A Language for Extracting Signatures from.. - Cortes, Fisher.. (2000)
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