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Time-series analysis with a hybrid Box-Jenkins ARIMA and neural network model

机译:混合Box-Jenkins ARIMA和神经网络模型的时间序列分析

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摘要

Time-series analysis is important to a wide range of disciplines transcending both the physical and social sciences for proactive policy decisions. Statistical models have sound theoretical basis and have been successfully used in a number of problem domains in time series forecasting. Due to power and flexibility, Box-Jenkins ARIMA model has gained enormous popularity in many areas and research practice for the last three decades. More recently, the neural networks have been shown to be a promising alternative tool for modeling and forecasting owing to their ability to capture the nonlinearity in the data. However, despite the popularity and the superiority of ARIMA and ANN models, the empirical forecasting performance has been rather mixed so that no single method is best in every situation. In this study, a hybrid ARIMA and neural networks model to time series forecasting is proposed. The basic idea behind the model combination is to use each model' s unique features to capture different patterns in the data. With three real data sets, empirical results evidently show that the hybrid model outperforms ARIMA and ANN model noticeably in terms of forecasting accuracy used in isolation.
机译:时间序列分析对于超越物理和社会科学领域的主动决策的众多学科都很重要。统计模型具有良好的理论基础,并已成功地用于时间序列预测中的许多问题领域。由于功能强大且具有灵活性,过去三十年来,Box-Jenkins ARIMA模型在许多领域和研究实践中都获得了极大的普及。最近,由于神经网络能够捕获数据中的非线性,因此已被证明是一种有前途的建模和预测工具。但是,尽管ARIMA和ANN模型广受欢迎且具有优越性,但经验预测性能却相当混杂,因此,没有一种方法在每种情况下都是最佳的。在这项研究中,提出了一种混合的ARIMA和神经网络模型进行时间序列预测。模型组合背后的基本思想是使用每个模型的独特功能来捕获数据中的不同模式。根据三个真实数据集,经验结果显然表明,在孤立使用的预测准确性方面,混合模型明显优于ARIMA和ANN模型。

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