Reproducing Kernels of Sobolev Spaces on $\mathbb{R}^d$ and Applications to Embedding Constants and Tractability (1709.02568v1)
Abstract: The standard Sobolev space $Ws_2(\mathbb{R}d)$, with arbitrary positive integers $s$ and $d$ for which $s>d/2$, has the reproducing kernel $$ K_{d,s}(x,t)=\int_{\mathbb{R}d}\frac{\prod_{j=1}d\cos\left(2\pi\,(x_j-t_j)u_j\right)} {1+\sum_{0<|\alpha|1\le s}\prod{j=1}d(2\pi\,u_j){2\alpha_j}}\,{\rm d}u $$ for all $x,t\in\mathbb{R}d$, where $x_j,t_j,u_j,\alpha_j$ are components of $d$-variate $x,t,u,\alpha$, and $|\alpha|1=\sum{j=1}d\alpha_j$ with non-negative integers $\alpha_j$. We obtain a more explicit form for the reproducing kernel $K_{1,s}$ and find a closed form for the kernel $K_{d, \infty}$. Knowing the form of $K_{d,s}$, we present applications on the best embedding constants between the Sobolev space $Ws_2(\mathbb{R}d)$ and $L_\infty(\mathbb{R}d)$, and on strong polynomial tractability of integration with an arbitrary probability density. We prove that the best embedding constants are exponentially small in $d$, whereas worst case integration errors of algorithms using $n$ function values are also exponentially small in $d$ and decay at least like $n{-1/2}$. This yields strong polynomial tractability in the worst case setting for the absolute error criterion.
Paper Prompts
Sign up for free to create and run prompts on this paper using GPT-5.
Top Community Prompts
Collections
Sign up for free to add this paper to one or more collections.