arXiv:1610.02852 [math.NA]AbstractReferencesReviewsResources
Truncation Dimension for Function Approximation
Peter Kritzer, Friedrich Pillichshammer, G. W. Wasilkowski
Published 2016-10-10Version 1
We consider approximation of functions of $s$ variables, where $s$ is very large or infinite, that belong to weighted anchored spaces. We study when such functions can be approximated by algorithms designed for functions with only very small number ${\rm dim^{trnc}}(\varepsilon)$ of variables. Here $\varepsilon$ is the error demand and we refer to ${\rm dim^{trnc}}(\varepsilon)$ as the $\varepsilon$-truncation dimension. We show that for sufficiently fast decaying product weights and modest error demand (up to about $\varepsilon \approx 10^{-5}$) the truncation dimension is surprisingly very small.
Categories: math.NA
Related articles: Most relevant | Search more
arXiv:2311.18333 [math.NA] (Published 2023-11-30)
Spherical Designs for Function Approximation and Beyond
Fredholm integral equations for function approximation and the training of neural networks
arXiv:1503.02352 [math.NA] (Published 2015-03-09)
Infinite-dimensional $\ell^1$ minimization and function approximation from pointwise data