Article ID Journal Published Year Pages File Type
4606817 Journal of Approximation Theory 2016 16 Pages PDF
Abstract

We present a lower error bound for approximating linear multivariate operators defined over Hilbert spaces in terms of the error bounds for appropriately constructed linear functionals as long as algorithms use function values. Furthermore, some of these linear functionals have the same norm as the linear operators. We then apply this error bound for linear (unweighted) tensor products. In this way we use negative tractability results known for linear functionals to conclude the same negative results for linear operators. In particular, we prove that L2L2-multivariate approximation defined for standard Sobolev space suffers the curse of dimensionality if function values are used although the curse is not present if linear functionals are allowed.

Related Topics
Physical Sciences and Engineering Mathematics Analysis
Authors
, ,