Regularization Networks and Support Vector Machines are techniques for solving certain problems of learning from examples
– in particular, the regression problem of approximating a multivariate function from sparse data. Radial Basis Functions,
for example, are a special case of both regularization and Support Vector Machines. We review both formulations in the context
of Vapnik's theory of statistical learning which provides a general foundation for the learning problem, combining functional
analysis and statistics. The emphasis is on regression: classification is treated as a special case.
regularization - Radial Basis Functions - Support Vector Machines - Reproducing Kernel Hilbert Space - Structural Risk Minimization
This revised version was published online in June 2006 with corrections to the Cover Date.