复杂反向传播网络中的决策边界分析

T. Nitta
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引用次数: 5

摘要

本文给出了复值神经网络决策边界的一些分析结果。主要结果可以总结如下。(a)复值神经元的权参数具有与二维运动有关的限制。(b)复值神经元的决策边界由两个正交相交的超曲面组成,并将决策区域划分为四个相等的部分。三层复值神经网络的决策边界以此为基本结构,当每个隐藏神经元的网络输入都足够大时,其两个超曲面正交相交。
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An analysis on decision boundaries in the complex back-propagation network
This paper presents some results of an analysis on the decision boundaries of the complex valued neural networks. The main results may be summarized as follows. (a) Weight parameters of a complex valued neuron have a restriction which is concerned with two-dimensional motion. (b) The decision boundary of a complex valued neuron consists of two hypersurfaces which intersect orthogonally, and divides a decision region into four equal sections. The decision boundary of a three-layered complex valued neural network has this as a basic structure, and its two hypersurfaces intersect orthogonally if net inputs to each hidden neuron are all sufficiently large.<>
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