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Approximation of multivariate 2¿¿-periodic functions by multiple 2¿¿-periodic approximate identity neural networks based on the universal approximation theorems

机译:基于通用逼近定理的多个2¿-周期近似恒等式神经网络对多元2¿-周期函数的逼近

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Universal approximation capability is an important research topic in artificial neural networks. The purpose of this study is to investigate universal approximation capability of a single hidden layer feed forward multiple 2π-periodic approximate identity neural networks in two function spaces. We present the notion of multiple 2π-periodic approximate identity. With respect to this notion, we prove two theorems in the space of continuous multivariate 2π-periodic functions. The second theorem shows that the above networks have universal approximation capability. The proof of the theorem uses a technique based on the notion of epsilon-net. Moreover, we discuss the universal approximation capability of the networks in the space of Lebesgue integrable multivariate 2π-periodic functions. The results of this study will be able to extend the standard theory of the universal approximation capability of feedforward neural networks.
机译:通用逼近能力是人工神经网络中的重要研究课题。本研究的目的是研究单个隐层在两个函数空间中前馈多个2π周期近似恒等式神经网络的通用逼近能力。我们提出了多个2π周期近似恒等式的概念。关于这个概念,我们证明了连续的多元2π周期函数空间中的两个定理。第二定理表明,上述网络具有通用逼近能力。定理的证明使用了一种基于epsilon-net概念的技术。此外,我们讨论了Lebesgue可积多元2π周期函数空间中网络的通用逼近能力。这项研究的结果将能够扩展前馈神经网络通用逼近能力的标准理论。

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