Asymptotic analysis in multivariate worst case approximation with Gaussian kernels
Abstract
We consider a problem of approximation of d-variate functions defined on Rd which belong to the Hilbert space with tensor product-type reproducing Gaussian kernel with constant shape parameter. Within worst case setting, we investigate the growth of the information complexity as d∞. The asymptotics are obtained for the case of fixed error threshold and for the case when it goes to zero as d∞.
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