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Multiplicative Error Modeling Approach for Time Series Forecasting

机译:时间序列预测的乘法误差建模方法

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Real-world time series data sets contain a combination of linear and nonlinear patterns, making the time series forecasting problem more challenging. In this paper, a new hybrid methodology is introduced for forecasting univariate time series data sets using a multiplicative error modeling approach. An autoregressive integrated moving average (ARIMA) model is combined with an autoregressive neural network (ARNN) for improving the predictions of individual forecast models. The proposed multiplicative ARIMA-ARNN model glorifies the chances of capturing the different combinations of linear and nonlinear patterns in time series. The model shows outstanding performance on six standard time-series data sets compared to other widely used single and hybrid forecasting models.
机译:现实世界的时间序列数据集包含线性和非线性模式的组合,使得时间序列预测问题更具挑战性。在本文中,引入了一种使用乘法误差建模方法预测单变量时间序列数据集的新的混合方法。自回归综合移动平均(ARIMA)模型与自回归神经网络(ARNN)相结合,用于改善个别预测模型的预测。所提出的乘法ARIMA-ARNN模型使得在时间序列中捕获线性和非线性图案的不同组合的机会。与其他广泛使用的单一和混合预测模型相比,该模型在六个标准时间序列数据集中显示出出色的性能。

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