Sampling recovery in $L_2$ and other norms
Sampling recovery in $L_2$ and other norms
We study the recovery of functions in various norms, including $L_p$ with $1\le p\le\infty$, based on function evaluations. We obtain worst case error bounds for general classes of functions in terms of the best $L_2$-approximation from a given nested sequence of subspaces and the Christoffel function of these subspaces. In the case $p=\infty$, our results imply that linear sampling algorithms are optimal up to a constant factor for many reproducing kernel Hilbert spaces.
David Krieg、Kateryna Pozharska、Mario Ullrich、Tino Ullrich
数学
David Krieg,Kateryna Pozharska,Mario Ullrich,Tino Ullrich.Sampling recovery in $L_2$ and other norms[EB/OL].(2025-07-26)[2025-08-10].https://arxiv.org/abs/2305.07539.点此复制
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