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Design and Analysis of Neural Networks Based on Linearly Translated Features

机译:基于线性翻译特征的神经网络设计与分析

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In this paper, neural networks based on linearly translated features (LTFs) are presented. LTFs including uniform, non-uniform, and multiple translation vectors are embedded into feedforward neural networks. Learning algorithms are presented for the neural networks. Learning capabilities of the neural networks are analyzed. Experimental results on approximation’ identification, and evaluation problems are reported to substantiate the efficacy of the neural networks and learning algorithms.
机译:在本文中,提出了基于线性翻译特征(LTF)的神经网络。将包括统一,非统一和多个翻译向量的LTF嵌入到前馈神经网络中。提出了用于神经网络的学习算法。分析了神经网络的学习能力。据报道,关于近似识别和评估问题的实验结果证实了神经网络和学习算法的有效性。

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