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Nonlinear tensor product approximation of functions (1409.1403v1)

Published 4 Sep 2014 in stat.ML and math.NA

Abstract: We are interested in approximation of a multivariate function $f(x_1,\dots,x_d)$ by linear combinations of products $u1(x_1)\cdots ud(x_d)$ of univariate functions $ui(x_i)$, $i=1,\dots,d$. In the case $d=2$ it is a classical problem of bilinear approximation. In the case of approximation in the $L_2$ space the bilinear approximation problem is closely related to the problem of singular value decomposition (also called Schmidt expansion) of the corresponding integral operator with the kernel $f(x_1,x_2)$. There are known results on the rate of decay of errors of best bilinear approximation in $L_p$ under different smoothness assumptions on $f$. The problem of multilinear approximation (nonlinear tensor product approximation) in the case $d\ge 3$ is more difficult and much less studied than the bilinear approximation problem. We will present results on best multilinear approximation in $L_p$ under mixed smoothness assumption on $f$.

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