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Evidence of Efficiency of Recurrent Neural Networks with ARMA-like Units

机译:具有ARMA的单位经常性神经网络效率的证据

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We study in this paper a recurrent neural model where we associate an ARMA process to each neuron-like unit. In order to quantify the effects of the new free parameters on the network, we will use a statistical tool, the analysis of variance (or ANOVA) to establish our results. Finally, practical results highlighting the improvements are presented through the prediction of the Mackey-Glass chaotic signal.
机译:我们在本文中研究了一种经常性神经模型,我们将ARMA过程与每个神经元的单位相关联。为了量化网络上新的免费参数对网络的影响,我们将使用统计工具,方差分析(或ANOVA)来建立我们的结果。最后,通过预测Mackey-Glass混沌信号来介绍改进的实际结果。

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