A popular approach for modeling and inference in spatial statistics is to
represent Gaussian random fields as solutions to stochastic partial
differential equations (SPDEs) of the form Lβu=W, where
W is Gaussian white noise, L is a second-order differential
operator, and β>0 is a parameter that determines the smoothness of u.
However, this approach has been limited to the case 2β∈N,
which excludes several important models and makes it necessary to keep β
fixed during inference.
We propose a new method, the rational SPDE approach, which in spatial
dimension d∈N is applicable for any β>d/4, and thus remedies
the mentioned limitation. The presented scheme combines a finite element
discretization with a rational approximation of the function x−β to
approximate u. For the resulting approximation, an explicit rate of
convergence to u in mean-square sense is derived. Furthermore, we show that
our method has the same computational benefits as in the restricted case
2β∈N. Several numerical experiments and a statistical
application are used to illustrate the accuracy of the method, and to show that
it facilitates likelihood-based inference for all model parameters including
β.Comment: 28 pages, 4 figure