Support vector method for function approximation, regression estimation, and signal processing (1997) [124 citations — 27 self]
by Vladimir Vapnik, Steven E. Golowich, Alex Smola
Advances in Neural Information Processing Systems 9
http://www.kernel-machines.org/papers/vapgolsmo96.ps.gz
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Abstract:
The Support Vector (SV) method was recently proposed for estimating regressions, constructing multidimensional splines, and solving linear operator equations [Vapnik, 1995]. In this presentation we report results of applying the SV method to these problems. 1
Citations
| 4962 | The Nature of Statistical Learning Theory – Vapnik - 1998 |
| 79 | A statistical model for positron emission tomography – Vardi, Shepp, et al. - 1985 |
| 1 | Polynomial Splines and Wevelets - A Signal Perspectives – Unser, Aldroubi - 1992 |

