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Hybrid approach Wavelet seasonal autoregressive integrated moving average model (WSARIMA) for modeling time series

机译:混合方法小波季节性自回归综合移动平均模型(WSARIMA)用于建模时间序列

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Many prognosis studies have been conducted for a long time. There are many established and widely accepted prediction methods, such as linear extrapolation and SARIMA. However, their performance is far from perfect, especially when the time series is highly volatile. In this paper, we propose a hybrid prediction scheme that combines the classical SARIMA method and the wavelet transform (WT). Wavelet transform (WT) has emerged as an effective tool in decomposing time series into different components, which allows for improved prediction accuracy. However, this issue has so far been insufficiently tested and tried to predict different time series. Our goal is therefore to integrate modeling approaches as a decision support tool. The results of an empirical study show that this method can achieve high accuracy in prediction. Based on the results of the created model, it can be stated that the hybrid WSARIMA model overperformed the SARIMA model.
机译:许多预后研究已经进行了很长时间。 有许多已建立和广泛接受的预测方法,例如线性外推和砂马。 然而,它们的性能远非完美,特别是当时间序列高度波动时。 在本文中,我们提出了一种混合预测方案,其结合了经典Sarima方法和小波变换(WT)。 小波变换(WT)作为分解时间序列的有效工具,进入不同的组件,这允许改善预测精度。 但是,到目前为止,这个问题已经不够进行测试并试图预测不同的时间序列。 因此,我们的目标是将建模方法作为决策支持工具集成。 实证研究结果表明,该方法可以在预测中实现高精度。 基于所创建的模型的结果,可以说明混合WSARIMA模型过度地形成了Sarima模型。

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