具有多项式非线性的神经前馈网络

Nils Hoffmann
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引用次数: 2

摘要

提出了一种基于Wiener模型的神经网络。该网络由预处理神经元的隐层、多项式非线性神经元和线性输出神经元组成。作者试图用一种改进的反向传播算法来解决寻找合适的预处理方法的问题。计算树的使用表明,该方法易于实现,计算复杂度并不比在预处理网络中使用PCA确定权重的替代方法大多少。仿真结果表明,与PCA网络相比,该网络具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A neural feedforward network with a polynomial nonlinearity
A novel neural network based on the Wiener model is proposed. The network is composed of a hidden layer of preprocessing neurons followed by a polynomial nonlinearity and a linear output neuron. The author tries to solve the problem of finding an appropriate preprocessing method by using a modified backpropagation algorithm. It is shown by the use of calculation trees that the proposed approach is simple to implement, and that the computational complexity is not much larger than for the alternative method of using PCA to determine the weights in the preprocessing network. A simulation is given which indicates superior performance of the proposed network compared to the PCA network.<>
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