Reproducing Kernels of Generalized Sobolev Spaces via a Green Function Approach with Distributional Operators
Gregory E. Fasshauer, Qi Ye

TL;DR
This paper introduces a generalized Sobolev space framework using distributional operators and Green functions, connecting them to reproducing-kernel Hilbert spaces and enabling improved kernel-based approximation methods.
Contribution
It defines a new class of generalized Sobolev spaces via distributional operators and Green functions, extending the theory to include pseudo-differential operators and providing a basis for kernel selection.
Findings
Green functions are conditionally positive definite functions.
Reproducing-kernel Hilbert spaces can be isometrically embedded into generalized Sobolev spaces.
Examples include Matérn and Gaussian kernels illustrating the theory.
Abstract
In this paper we introduce a generalized Sobolev space by defining a semi-inner product formulated in terms of a vector distributional operator consisting of finitely or countably many distributional operators , which are defined on the dual space of the Schwartz space. The types of operators we consider include not only differential operators, but also more general distributional operators such as pseudo-differential operators. We deduce that a certain appropriate full-space Green function with respect to now becomes a conditionally positive definite function. In order to support this claim we ensure that the distributional adjoint operator of is well-defined in the distributional sense. Under sufficient conditions, the native space (reproducing-kernel Hilbert space) associated with the Green…
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