AbstractMany radial basis function (RBF) methods contain a free shape parameter that plays an important role for the accuracy of the method. In most papers the authors end up choosing this shape parameter by trial and error or some other ad hoc means. The method of cross validation has long been used in the statistics literature, and the special case of leave-one-out cross validation forms the basis of the algorithm for choosing an optimal value of the shape parameter proposed by Rippa in the setting of scattered data interpolation with RBFs. We discuss extensions of this approach that can be applied in the setting of iterated approximate moving least squares approximation of function value data and for RBF pseudo-spectral methods for the solution of partial differential equations. The former method can be viewed as an efficient alternative to ridge regression or smoothing spline approximation, while the latter forms an extension of the classical polynomial pseudo-spectral approach. Numerical experiments illustrating the use of our algorithms are included.Keywords Radial basis functions - Approximate moving least squares - Shape parameter - Cross validation - Pseudo-spectral methods
Author(s): Fasshauer G.E., Zhang J.G.
Year: 2007
Language: English
Pages: 24
Abstract......Page 1
Introduction......Page 2
Some background information......Page 3
Iterated approximate MLS approximation......Page 6
Direct LOOCV for iterated AMLS approximation......Page 9
Iterative LOOCV for iterated AMLS approximation......Page 11
Numerical examples I......Page 14
The RBF-PS approach to PDEs......Page 15
Selecting a good shape parameter for the RBF-PS method......Page 18
Numerical examples II......Page 19
Remarks and conclusions......Page 22
References......Page 23