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Reproducing kernels of generalized Sobolev spaces via a Green function approach with distributional operators

机译:通过具有分布运算符的绿色功能方法再现广义Sobolev空间的核

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In this paper we introduce a generalized Sobolev space by defining a semi-inner product formulated in terms of a vector distributional operator P consisting of finitely or countably many distributional operators P n , 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 G with respect to L := P *T P now becomes a conditionally positive function. In order to support this claim we ensure that the distributional adjoint operator P * of P is well-defined in the distributional sense. Under sufficient conditions, the native space (reproducing-kernel Hilbert space) associated with the Green function G can be embedded into or even be equivalent to a generalized Sobolev space. As an application, we take linear combinations of translates of the Green function with possibly added polynomial terms and construct a multivariate minimum-norm interpolant s f,X to data values sampled from an unknown generalized Sobolev function f at data sites located in some set ${X subset mathbb{R}^d}$ . We provide several examples, such as Matérn kernels or Gaussian kernels, that illustrate how many reproducing-kernel Hilbert spaces of well-known reproducing kernels are equivalent to a generalized Sobolev space. These examples further illustrate how we can rescale the Sobolev spaces by the vector distributional operator P. Introducing the notion of scale as part of the definition of a generalized Sobolev space may help us to choose the “best” kernel function for kernel-based approximation methods.
机译:在本文中,我们通过定义由有限的或可选的许多分布运算符P n 由施瓦茨的双层空间定义的矢量分布算子P而制定的半内部产品来引入广义的SoboLev空间。空间。我们考虑的操作员的类型不仅包括差分运营商,而且包括更多的一般分布运算符,例如伪差分运算符。我们推导出一定适当的全空间绿色函数G,相对于L:= P * T P现在变成了条件正函数。为了支持这一点,我们确保P的分配伴随操作员P * 在分布意义上很好地定义。在充分条件下,与绿色函数G相关联的本机空间(再现 - 内核希尔特空间)可以嵌入到相当于广义的SoboLev空间中。作为应用程序,我们采用了绿色函数的转换的线性组合,并且可能添加多项式术语,并构建多变量最小规范间隔SF,x 到位于数据站点的未知广义Sobolev函数f中采样的数据值。一些设置$ {x subset mathbb {r} ^ d} $。我们提供了若干示例,例如Matérn内核或高斯内核,其示出了众所周知的再生核的再现 - 内核希尔伯特空间等同于广义sobolev空间。这些示例进一步说明了我们如何通过矢量分布操作员P rescale重新归类SoboLev空间。作为广​​义SoboLev空间的定义的一部分引入刻度的概念可以帮助我们为基于内核的近似方法选择“最佳”内核函数。

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