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Comparing Support Vector Machines with Gaussian Kernels to Radial Basis Function Classifiers
Schoelkopf, B.
Sung, K.
Burges, C.
Girosi, F.
Niyogi, P.
Poggio, T.
Vapnik, V.
Location: AIM-1599
CBCL-142
http://hdl.handle.net/1721.1/7180

The Support Vector (SV) machine is a novel type of learning machine, based on statistical learning theory, which contains polynomial classifiers, neural networks, and radial basis function (RBF) networks as special cases. In the RBF case, the SV algorithm automatically determines centers, weights and threshold such as to minimize an upper bound on the expected test error. The present study is devoted to an experimental comparison of these machines with a classical approach, where the centers are determined by $k$--means clustering and the weights are found using error backpropagation. We consider three machines, namely a classical RBF machine, an SV machine with Gaussian kernel, and a hybrid system with the centers determined by the SV method and the weights trained by error backpropagation. Our results show that on the US postal service database of handwritten digits, the SV machine achieves the highest test accuracy, followed by the hybrid approach. The SV approach is thus not only theoretically well--founded, but also superior in a practical application.

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Comparing Support Vector Machines with Gaussian Kernels to Radial Basis Function Classifiers
Id. 26506
Idioma inglés (Estados Unidos)
Titulo Comparing Support Vector Machines with Gaussian Kernels to Radial Basis Function Classifiers
Autor(es) Schoelkopf, B.
Sung, K.
Burges, C.
Girosi, F.
Niyogi, P.
Poggio, T.
Vapnik, V.
Location AIM-1599
CBCL-142
http://hdl.handle.net/1721.1/7180
Versión 1.0
Estado Final
Descripción The Support Vector (SV) machine is a novel type of learning machine, based on statistical learning theory, which contains polynomial classifiers, neural networks, and radial basis function (RBF) networks as special cases. In the RBF case, the SV algorithm automatically determines centers, weights and threshold such as to minimize an upper bound on the expected test error. The present study is devoted to an experimental comparison of these machines with a classical approach, where the centers are determined by $k$--means clustering and the weights are found using error backpropagation. We consider three machines, namely a classical RBF machine, an SV machine with Gaussian kernel, and a hybrid system with the centers determined by the SV method and the weights trained by error backpropagation. Our results show that on the US postal service database of handwritten digits, the SV machine achieves the highest test accuracy, followed by the hybrid approach. The SV approach is thus not only theoretically well--founded, but also superior in a practical application.
Tipo 6 p.
2032389 bytes
277809 bytes
application/postscript
application/pdf
Palabras clave AI
Tipo de Interactividad Expositivo
Nivel de Interactividad muy bajo
Audiencia Estudiante
Profesor
Autor
Estructura Atomic
Coste no
Copyright
Formatos 6 p.
2032389 bytes
277809 bytes
application/postscript
application/pdf
Requerimientos técnicos Browser: Any
Relación [References] AIM-1599
[References] CBCL-142
Fecha de contribución 07-may-2008
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