Time series forecasting using recurrent neural networks and wavelet reconstructed signals

Á. García-Pedrero, P. Gómez-Gil
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引用次数: 18

Abstract

In this paper a novel neural network architecture for medium-term time series forecasting is presented. The proposed model, inspired on the Hybrid Complex Neural Network (HCNN) model, takes advantage of information obtained by wavelet decomposition and of the oscillatory abilities of recurrent neural networks (RNN). The prediction accuracy of the proposed architecture is evaluated using 11 economic time series of the NN5 Forecasting Competition for Artificial Neural Networks and Computational Intelligence, obtaining an average SMAPE of 27%. The proposed model shows a better mean performance in time series prediction of 56 values than a feed-forward network and a fully recurrent neural network with a similar number of nodes.
基于递归神经网络和小波重构信号的时间序列预测
本文提出了一种新的用于中期时间序列预测的神经网络结构。该模型以混合复杂神经网络(HCNN)模型为灵感,利用了小波分解获得的信息和循环神经网络(RNN)的振荡能力。使用NN5人工神经网络和计算智能预测竞赛的11个经济时间序列对所提出架构的预测精度进行了评估,平均SMAPE为27%。该模型在56个值的时间序列预测中表现出比前馈网络和具有相似节点数的全递归神经网络更好的平均性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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