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首页> 外文期刊>Information Sciences: An International Journal >Forecasting interval time series using a fully complex-valued RBF neural network with DPSO and PSO algorithms
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Forecasting interval time series using a fully complex-valued RBF neural network with DPSO and PSO algorithms

机译:使用具有DPSO和PSO算法的完全复数值RBF神经网络预测间隔时间序列

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摘要

Interval time series prediction is one of the most challenging research topics in the field of time series modeling and prediction. In view of the remarkable function approximation capability of fully complex-valued radial basis function neural networks (FCRBFNNs), we set out to investigate the possibility of forecasting interval time series by denoting the lower and upper bounds of the interval as real and imaginary parts of a complex number, respectively. This results in a complex-valued interval. We then model the resulted complex-valued interval time series via a FCRBFNN. Furthermore, we propose to evolve the FCRBFNN by using particle swarm optimization (PSO) and discrete PSO for joint optimization of the structure and parameters. Finally, the proposed interval time series prediction approach is tested with simulated interval time series data as well as real interval stock price time series data from the New York Stock Exchange. Our experimental results indicate that it is a promising alternative for interval time series forecasting. (C) 2015 Elsevier Inc. All rights reserved.
机译:间隔时间序列预测是时间序列建模和预测领域中最具挑战性的研究主题之一。考虑到全复数值径向基函数神经网络(FCRBFNN)的出色的函数逼近能力,我们开始通过将区间的上下边界表示为区间的实部和虚部,研究预测区间时间序列的可能性。一个复数。这导致复数值间隔。然后,我们通过FCRBFNN对所得的复值间隔时间序列进行建模。此外,我们建议通过使用粒子群优化(PSO)和离散PSO进行FCRBFNN的结构和参数联合优化。最后,使用模拟间隔时间序列数据以及来自纽约证券交易所的实际间隔股票价格时间序列数据对所建议的间隔时间序列预测方法进行了测试。我们的实验结果表明,它是间隔时间序列预测的有希望的替代方法。 (C)2015 Elsevier Inc.保留所有权利。

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