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JOURNALS // Matematicheskie Zametki // Archive

Mat. Zametki, 2018 Volume 103, Issue 5, Pages 769–779 (Mi mzm12094)

This article is cited in 2 papers

Papers published in the English version of the journal

Exponential Convergence of an Approximation Problem for Infinitely Differentiable Multivariate Functions

Yongping Liua, Guiqiao Xub, Jie Zhanga

a School of Mathematical Sciences, Beijing Normal University, Beijing, People's Republic of China
b School of Mathematical Sciences, Tianjin Normal University, Tianjin, People's Republic of China

Abstract: We study approximation problems for infinitely differentiable multivariate functions in the worst-case setting. Using a series of information-based algorithms as approximation tools, in which each algorithm is constructed by performing finitely many standard information operations, we prove that the $L_\infty$-approximation problem is exponentially convergent. As a corollary, we show that the corresponding integral problem is exponentially convergent as well.

Keywords: infinitely differentiable function class, standard information, worst-case setting.

Received: 08.11.2017
Revised: 25.03.2018

Language: English


 English version:
Mathematical Notes, 2018, 103:5, 769–779

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