ScaleNet - MultiScale neural network architecture for time series prediction

被引:0
作者
Geva, AB
Altman, AK
机构
来源
NINETEENTH CONVENTION OF ELECTRICAL AND ELECTRONICS ENGINEERS IN ISRAEL | 1996年
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暂无
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
The effectiveness of multiscale neural network (NN) architecture fix time series prediction of nonlinear dynamic systems has been investigated. The prediction task is simplified by decomposing the time series into separate scales of wavelets, and predicting each scale by a separate multilayer perceptron NN. The different scales of the wavelet transform provides an interpretation of the series structures and information about the history of the series, using fewer coefficients than other methods. In the next stage, the predictions of all the scales are combined, applying another perceptron NN, in order to predict the original time series. Each network is trained by the back-propagation algorithm using the Levenberg-Marquadt method. The weights and biases are initialized by nay clustering methods, which improved the prediction results compared to random initialization. Three sets of data were analyzed: the sunspots' benchmark, fluctuations in a far-infrared laser and a numerically generated series (set A and D in the Santa Fe competition[2]). Taking the ultimate goal to be the accuracy of the prediction we find that our suggested architecture outperforms traditional nonlinear statistical approaches.
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页码:243 / 246
页数:4
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