神经网络算子的同时逼近与Voronovskaja公式的应用

IF 0.8 3区 数学 Q2 MATHEMATICS
Marco Cantarini, Danilo Costarelli
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引用次数: 0

摘要

本文考虑了用s型函数激活的神经网络算子同时逼近函数及其导数的问题。除了NN算子导数的一致收敛定理外,我们还提供了基于近似导数的连续模的近似阶数的定量估计。此外,建立了一个定性和定量的voronovskaja型公式,该公式提供了神经网络算子可以实现的高阶近似的信息。为了证明上述定理,建立了几个涉及s型函数的辅助结果。本文最后还详细讨论了一些值得注意的例子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Simultaneous approximation by neural network operators with applications to Voronovskaja formulas

Simultaneous approximation by neural network operators with applications to Voronovskaja formulas

In this paper, we considered the problem of the simultaneous approximation of a function and its derivatives by means of the well-known neural network (NN) operators activated by the sigmoidal function. Other than a uniform convergence theorem for the derivatives of NN operators, we also provide a quantitative estimate for the order of approximation based on the modulus of continuity of the approximated derivative. Furthermore, a qualitative and quantitative Voronovskaja-type formula is established, which provides information about the high order of approximation that can be achieved by NN operators. To prove the above theorems, several auxiliary results involving sigmoidal functions have been established. At the end of the paper, noteworthy examples have been discussed in detail.

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来源期刊
CiteScore
1.50
自引率
0.00%
发文量
157
审稿时长
4-8 weeks
期刊介绍: Mathematische Nachrichten - Mathematical News publishes original papers on new results and methods that hold prospect for substantial progress in mathematics and its applications. All branches of analysis, algebra, number theory, geometry and topology, flow mechanics and theoretical aspects of stochastics are given special emphasis. Mathematische Nachrichten is indexed/abstracted in Current Contents/Physical, Chemical and Earth Sciences; Mathematical Review; Zentralblatt für Mathematik; Math Database on STN International, INSPEC; Science Citation Index
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