神经网络在ARMA模型分类中的实验研究

P. G. McKee, José M. F. Moura
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引用次数: 0

摘要

作者提出了一套广泛的实验与替代神经网络,学习算法。在白噪声驱动的自回归移动平均(ARMA)线性系统产生的信号判别问题上,对这些神经网络配置进行了测试。这些ARMA信号模拟了海洋环境中产生的各种各样的信号。作者测试了各种网络模型的分类准确性和学习速度。研究的模型包括反向传播、quickprop、高斯节点网络、径向基函数、改进的Kanerva方法和无隐藏单元的网络。为了比较,也测试了最近邻分类器。给出了分类性能和学习时间的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural networks for classification of ARMA models: an experimental study
The authors present a set of extensive experiments with alternative neural network, learning algorithms. These neural network configurations were tested on the problem of discriminating signals generated by an autoregressive moving-average (ARMA) linear system driven by white noise. These ARMA signals model a wide variety of signals arising in the ocean environment. The authors tested the various network models for their classification accuracy and speed of learning. The models investigated were back propagation, quickprop, Gaussian node networks, radial basis functions, the modified Kanerva methods, and networks without hidden units. For comparison, nearest-neighbor classifiers were also tested. Classification performance and learning time results are presented.<>
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