Title :
Input space versus feature space in kernel-based methods
Author :
Schölkopf, Bernhard ; Mika, Sebastian ; Burges, Chris J C ; Knirsch, Philipp ; Müller, Klaus-Robert ; Rätsch, Gunnar ; Smola, Alexander J.
Author_Institution :
GMD FIRST, Berlin, Germany
fDate :
9/1/1999 12:00:00 AM
Abstract :
This paper collects some ideas targeted at advancing our understanding of the feature spaces associated with support vector (SV) kernel functions. We first discuss the geometry of feature space. In particular, we review what is known about the shape of the image of input space under the feature space map, and how this influences the capacity of SV methods. Following this, we describe how the metric governing the intrinsic geometry of the mapped surface can be computed in terms of the kernel, using the example of the class of inhomogeneous polynomial kernels, which are often used in SV pattern recognition. We then discuss the connection between feature space and input space by dealing with the question of how one can, given some vector in feature space, find a preimage (exact or approximate) in input space. We describe algorithms to tackle this issue, and show their utility in two applications of kernel methods. First, we use it to reduce the computational complexity of SV decision functions; second, we combine it with the kernel PCA algorithm, thereby constructing a nonlinear statistical denoising technique which is shown to perform well on real-world data
Keywords :
computational complexity; geometry; image processing; noise; principal component analysis; SV decision functions; SV kernel functions; computational complexity; feature space; feature spaces; geometry; inhomogeneous polynomial kernels; input space; input space image shape; kernel PCA algorithm; mapped surface geometry; nonlinear statistical denoising technique; preimage; support vector kernel functions; Computational complexity; Computational geometry; Feature extraction; Kernel; Noise reduction; Pattern recognition; Polynomials; Principal component analysis; Shape; Support vector machines;
Journal_Title :
Neural Networks, IEEE Transactions on