Data di Pubblicazione:
2015
Abstract:
Within kernel-based interpolation and its many applications, the handling of the scaling or the shape parameter is a well-documented but unsolved problem. We consider native spaces whose kernels allow us to change the kernel scale of a d-variate interpolation problem locally, depending on the requirements of the application. The trick is to define a scale function c on the domain ? ? Rd to transform an interpolation problem from data locations xj in Rd to data locations (xj, c(xj)) and to use a fixed-scale kernel on Rd+1 for interpolation there. The (d+1)-variate solution is then evaluated at (x, c(x)) for x ? Rd to give a d-variate interpolant with a varying scale. A large number of examples show how this can be done in practice to get results that are better than the fixed-scale technique, with respect to both condition number and error. The background theory coincides with fixed-scale interpolation on the submanifold of Rd+1 given by the points (x, c(x)) of the graph of the scale function c.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
positive-definite radial basis functions; shape parameter; scaling
Elenco autori:
Bozzini, MARIA TUGOMIRA; Lenarduzzi, Licia
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