Vladimir Vapnik - Selected Bibliography
- V.Vapnik (1995)
- The Nature of Statistical Learning Theory, Springer,
1995
- V.Vapnik (1996)
- Structure of Statistical Learning Theory, Chapter in
the Book: Computational Learning and Probabilistic Reasoning,
ed. A. Gammerman, pp. 33-41, John Wiley and Sons, 1996.
- I. Guyon, J. Makhoul, and V.Vapnik (1998)
- What size test set gives good error rate estimates? IEEE
Pattern Analysis and Machine Intelligence, Vol. 20, January 1998, 52-64}
- A. Gammerman, V. Vovk and V. Vapnik (1998)
- Learning by transduction in Proceedings of the Fourteenth
Conference on Uncertainty in Artificial Intelligence 1998,
pp.148-156, San Francisco, CA: Morgan Kaufmann.
- B. Scholkopf, P. Simard, A. Smola and V.Vapnik
(1998)
- Prior knowledge in support vector kernels in Advances
in Neural Information Processing Systems, Vol.10,
MIT Press, 1998.
- V. Vapnik (1998)
- The support vector method of function estimation. In
J. Suykens and J. Vandewalle, ed Nonlinear Modeling:
Advanced Black-Box Techniques, p55-86, Kluwer Academic
Publishers, Boston 1998.
- V. Vapnik (1998)
- Statistical Learning Theory, John Wiley, 1998,
NY, p.732.
- V. Vapnik (1998)
- The support vector method of function estimation NATO ASI Series, Neural Network and Machine Learning,
C. Bishop (Ed.), Springer, 1998.
- V. Vapnik (1999)
- Three remarks on support vector function estimation in Advanced in Kernel methods: Support Vector Learning,
B. Scholkopf, B. Burges and A. Smola (Eds), The MIT Press,
Cambridge, Massachusetts, 1999.
- M. Stitson, A. Gammerman, V. Vapnik, V. Vovk,
C. Watkins and J. Weston (1999)
- Support vector regression with ANOVA decomposition kernels,
in Advanced in Kernel methods: Support Vector Learning,
B. Scholkoph, B. Burges and A. Smola (Eds), The MIT Press,
Cambridge, Massachusetts, 1999.
- J. Weston, A. Gammerman, M. Stitson, V. Vapnik,
V. Vovk and C. Watkins (1999)
- Support vector density estimation, in Advanced in
Kernel methods: Support Vector Learning, B. Scholkoph,
B. Burges and A. Smola (Eds), The MIT Press, Cambridge,
Massachusetts, 1999.
- V. Vapnik (1999)
- An overview of statistical learning theory, IEEE
transactions on Neural Networks 10,
5, 1999, pp. 988-1000.
- H. Drucker, D. Wu, and V. Vapnik (1999)
- Support vector machines for spam categorization. IEEE
transactions on Neural Networks ,10 5, 1999, pp. 1048-1055.
- O. Chapelle, P. Haffner and V.Vapnik (1999)
- Support vector for histogram-based image classification, IEEE transactions on Neural Networks 10, 5, 1999, pp.1055-1065.
- V. Chercassky, X. Shao, F. Mulier, and V. Vapnik
(1999)
- Model complexity control for regression using VC generalization
bounds, IEEE transactions on Neural Networks 10,
5, 1999, pp. 1075-1090.
- P. van Trappen, M. Stitson, R. Wools, S. Barnhill,
V. Vapnik, A.Gammerman and I. Jacobs (2000)
- Preoperative Differentiation of Ovarian Tumors using
Support Vector Machine and Risk Malignancy Index, In: Proceedings of the International Federation of Obstetrics
and Gynaecology (FIGO) Conference, Washington, 2000
- Asa Ben-Hur, David Horn, Hava T. Siegelmann, Vladimir Vapnik (2001)
- Support Vector Clustering, Journal of Medicine Learning Research 2: 125-137.
- Olivier Chapelle, Vladimir Vapnik, Yoshua Bengio
- Model Selection for Small Sample Regression. Machine Learning 48 (1-3): 9-23.
- Isabelle Guyon, Jason Weston, Stephen Barnhill, Vladimir Vapnik (2002)
- Gene Selection for Cancer Classification using Support Vector Machines. Machine Learning 46 (1-3): 389-422.
- Olivier Chapelle, Vladimir Vapnik, Olivier Bousquet, Sayan Mukherjee (2002)
- Choosing Multiple Parameters for Support Vector Machines. Machine Learning 46 (1-3): 131-159.
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