Approximation error of Fourier neural networks

Abylay Zhumekenov, Rustem Takhanov, Alejandro J. Castro, Z. Assylbekov
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Abstract

The paper investigates approximation error of two‐layer feedforward Fourier Neural Networks (FNNs). Such networks are motivated by the approximation properties of Fourier series. Several implementations of FNNs were proposed since 1980s: by Gallant and White, Silvescu, Tan, Zuo and Cai, and Liu. The main focus of our work is Silvescu's FNN, because its activation function does not fit into the category of networks, where the linearly transformed input is exposed to activation. The latter ones were extensively described by Hornik. In regard to non‐trivial Silvescu's FNN, its convergence rate is proven to be of order O(1/n). The paper continues investigating classes of functions approximated by Silvescu FNN, which appeared to be from Schwartz space and space of positive definite functions.
傅里叶神经网络的近似误差
研究了两层前馈傅立叶神经网络(FNNs)的逼近误差。这种网络是由傅里叶级数的近似性质驱动的。自20世纪80年代以来,提出了几种fnn的实现:Gallant和White, Silvescu, Tan, Zuo和Cai以及Liu。我们工作的主要焦点是Silvescu的FNN,因为它的激活函数不适合网络的类别,其中线性转换的输入暴露于激活。霍尼克对后者进行了广泛的描述。对于非平凡的Silvescu FNN,证明了其收敛速度为O(1/n)阶。本文继续研究了由Silvescu FNN逼近的函数类,它们似乎来自Schwartz空间和正定函数空间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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