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首页> 外文期刊>International Journal of Wavelets, Multiresolution and Information Processing >Using wavelet analysis to uncover the co-movement behavior of multiple energy commodity prices
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Using wavelet analysis to uncover the co-movement behavior of multiple energy commodity prices

机译:利用小波分析揭示多种能源商品价格的联动行为

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This study aims to investigate the dynamic correlations (co-movement) in between energy commodities such as WTI Crude Oil (WOIL), Brent Crude Oil (BOIL), Heating Oil and Electricity prices. To achieve this goal, we employed partial wavelet coherence (PWC) and multiple wavelet coherence (MWC). Wavelet analysis constitutes the core of these methodologies and MWC is essential to determine the dynamic correlation (co-movement) of time intervals and scales between the time series. We have developed a software program to compute PWC and MWC for quadruple data set. Coherent time intervals of the time series are determined. Vector ARMA models are shown to give a good fit due to having low mean squared errors compared to the univariate case. This allowed us to have better forecast performance.
机译:这项研究旨在调查能源商品(例如WTI原油(WOIL),布伦特原油(BOIL),取暖油和电价)之间的动态相关性(共同变动)。为了实现此目标,我们采用了部分小波相干(PWC)和多小波相干(MWC)。小波分析构成了这些方法的核心,MWC对于确定时间间隔和时间序列之间的比例的动态相关性(共同运动)至关重要。我们已经开发了一个软件程序,可以为四组数据集计算PWC和MWC。确定时间序列的相干时间间隔。与单变量情况相比,矢量ARMA模型由于均方误差低,因此显示出很好的拟合度。这使我们可以获得更好的预测效果。

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