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首页> 外文期刊>IEEE Transactions on Neural Networks >Universal approximation to nonlinear operators by neural networks with arbitrary activation functions and its application to dynamical systems
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Universal approximation to nonlinear operators by neural networks with arbitrary activation functions and its application to dynamical systems

机译:具有任意激活函数的神经网络对非线性算子的通用逼近及其在动力学系统中的应用

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摘要

The purpose of this paper is to investigate neural network capability systematically. The main results are: 1) every Tauber-Wiener function is qualified as an activation function in the hidden layer of a three-layered neural network; 2) for a continuous function in S'(R/sup 1/) to be a Tauber-Wiener function, the necessary and sufficient condition is that it is not a polynomial; 3) the capability of approximating nonlinear functionals defined on some compact set of a Banach space and nonlinear operators has been shown; and 4) the possibility by neural computation to approximate the output as a whole (not at a fixed point) of a dynamical system, thus identifying the system.
机译:本文的目的是系统地研究神经网络的能力。主要结果是:1)在三层神经网络的隐藏层中,每个Tauber-Wiener函数都有资格作为激活函数; 2)对于S'(R / sup 1 /)中的连续函数为Tauber-Wiener函数,充要条件是它不是多项式; 3)证明了逼近在Banach空间的某些紧集上定义的非线性泛函和非线性算子的能力; 4)通过神经计算来近似整个动力系统(不是固定点)的输出,从而识别系统的可能性。

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