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The Schoenberg Kernel and More Flexible Multivariate Covariance Models in Euclidean Spaces

Computational and Applied Mathematics(2023)

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摘要
The J-Bessel univariate kernel Ω _d introduced by Schoenberg plays a central role in the characterization of stationary isotropic covariance models defined in a d-dimensional Euclidean space. In the multivariate setting, a matrix-valued isotropic covariance is a scale mixture of the kernel Ω _d against a matrix-valued measure that is nondecreasing with respect to matrix inequality. We prove that constructions based on a p-variate kernel [Ω _d_ij]_i,j=1^p are feasible for different dimensions d_ij, at the expense of some parametric restrictions. We illustrate how multivariate covariance models inherit such restrictions and provide new classes of hypergeometric, Matérn, Cauchy and compactly-supported models to illustrate our findings.
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关键词
Matrix-valued covariance,Schoenberg measure,Multivariate hypergeometric covariance,Multivariate Matérn covariance,Multivariate Cauchy covariance,42A82,60G10,86A32
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