From Regularization Operators to Support Vector Kernels
Smola, Alex J., Schölkopf, Bernhard
–Neural Information Processing Systems
Support Vector (SV) Machines for pattern recognition, regression estimation and operator inversion exploit the idea of transforming into a high dimensional feature space where they perform a linear algorithm. Instead of evaluating this map explicitly, one uses Hilbert Schmidt Kernels k(x, y) which correspond to dot products of the mapped data in high dimensional space, i.e. k(x, y) ( I (x) · I (y))
Neural Information Processing Systems
Dec-31-1998