Multi-layered neural networks and Volterra series: The missing link

G. Govind, P. A. Ramamoorthy
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引用次数: 28

Abstract

The similarities and differences between the conventional Volterra series techniques and the neural network approach are discussed. The analysis is done from the point of view of representation capabilities for nonlinear systems, and it is shown that a small neural network can represent high-order nonlinear systems, whereas a very large number of terms are required for an equivalent Volterra series representation. This is shown by means of a series expansion of a neural network. Issues common to the two nonlinear modeling approaches are analyzed
多层神经网络和Volterra系列:缺失的一环
讨论了传统Volterra系列技术与神经网络方法的异同。从非线性系统表示能力的角度进行了分析,结果表明,一个小的神经网络可以表示高阶非线性系统,而等效的Volterra级数表示需要非常大量的项。这是通过神经网络的级数展开来证明的。分析了两种非线性建模方法的共同问题
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