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Forecasting time series data using hybrid grey relational artificial neural network and auto regressive integrated moving average model

机译:使用混合灰色关联人工神经网络和自回归综合移动平均模型预测时间序列数据

摘要

In business, industry and government agencies, anticipating future behavior that involves many critical variables for nation wealth creation is vitally important, thus the necessity to make precise decision by the policy makers is really essential. Consequently, an accurate and reliable forecast system is needed to compose such predictions. Accordingly, the aim of this research is to develop a new hybrid model by combining a linear and nonlinear model for forecasting time series data. The proposed model (GRANN_ARIMA) integrates nonlinear grey relational articial neural network (GRANN) and linear ARIMA model, combining new features such as multivariate time series data as well as grey relational analysis to select the appropriate inputs and hybridization succession. To validate the performance of the proposed model, small and large scale data sets are used. The forecasting performance was compared with several models, and these include: individual models (ARIMA, multiple regression, grey relational articial neural network), several hybrid models (MARMA, MR_ANN, ARIMA_ANN), and articial neural network (ANN) trained using levenberg marquardt algorithm. The experiments have shown that the proposed model has outperformed other models with 99.5% forecasting accuracy for small-scale data and 99.84% for large-scale data. The empirical results obtained have proved that the GRANN_ARIMA model can provide a better alternative for time series forecasting due to its promising performance and capability in handling time series data for both small and large scale data.
机译:在商业,工业和政府机构中,预见涉及国家财富创造的许多关键变量的未来行为至关重要,因此,决策者做出准确决策的必要性确实至关重要。因此,需要一种准确而可靠的预测系统来构成这种预测。因此,本研究的目的是通过组合线性和非线性模型来预测时间序列数据,从而开发一种新的混合模型。提出的模型(GRANN_ARIMA)将非线性灰色关联人工神经网络(GRANN)与线性ARIMA模型集成在一起,并结合了诸如多元时间序列数据以及灰色关联分析等新功能,以选择合适的输入和杂交继承。为了验证所提出模型的性能,使用了小型和大型数据集。将预测性能与几种模型进行了比较,其中包括:单个模型(ARIMA,多元回归,灰色关联人工神经网络),几种混合模型(MARMA,MR_ANN,ARIMA_ANN)和使用levenberg marquardt训练的人工神经网络(ANN)算法。实验表明,所提出的模型优于其他模型,对小规模数据的预测准确性为99.5%,对大数据的预测准确性为99.84%。所获得的经验结果证明,GRANN_ARIMA模型因其有希望的性能和处理小型和大型数据的时间序列数据的能力而可以为时间序列预测提供更好的选择。

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