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Euler Neural Network with Its Weight-Direct-Determination and Structure-Automatic-Determination Algorithms

机译:欧拉神经网络具有其重量直接确定和结构自动测定算法

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To overcome the intrinsic weaknesses of conventional back-propagation (BP) neural networks, a novel type of feed-forward neural network is constructed in this paper, which adopts a three-layer structure but with the hidden-layer neurons activated by a group of Euler polynomials. A weights-direct-determination (WDD) method is thus able to be derived for it, which obtains the optimal weights of the neural network directly (i.e., just in one step). Furthermore, a structure-automatic-determination (SAD) algorithm is presented to determine the optimal number of hidden-layer neurons of the Euler neural network (ENN). Computer-simulations substantiate the efficacy of such a Euler neural network with its WDD and SAD algorithms.
机译:为了克服常规背部传播(BP)神经网络的内在弱点,本文构建了一种新型的前馈神经网络,其采用三层结构,但是用一组激活的隐藏层神经元欧拉多项式。因此,能够为其导出权重 - 直接确定(WDD)方法,其直接获得神经网络的最佳权重(即,在一步中)。此外,提出了一种结构 - 自动测定(SAD)算法以确定欧拉神经网络(ENN)的最佳数量的隐藏层神经元数。计算机模拟使这种欧拉神经网络与WDD和SAD算法的功效证实了这种欧拉神经网络的功效。

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