首页> 外文会议>Computational Science - ICCS 2007 pt.3; Lecture Notes in Computer Science; 4489 >Oil Price Forecasting with an EMD-Based Multiscale Neural Network Learning Paradigm
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Oil Price Forecasting with an EMD-Based Multiscale Neural Network Learning Paradigm

机译:基于基于EMD的多尺度神经网络学习范例的油价预测

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In this study, a multiscale neural network learning paradigm based on empirical mode decomposition (EMD) is proposed for crude oil price prediction. In this learning paradigm, the original price series are first decomposed into various independent intrinsic mode components (IMCs) with a range of frequency scales. Then the internal correlation structures of different IMCs are explored by neural network model. With the neural network weights, some important IMCs are selected as final neural network inputs and some unimportant IMCs that are of little use in the mapping of input to output are discarded. Finally, the selected IMCs are input into another neural network model for prediction purpose. For verification, the proposed multiscale neural network learning paradigm is applied to a typical crude oil price - West Texas Intermediate (WTI) crude oil spot price prediction.
机译:在这项研究中,提出了一种基于经验模式分解(EMD)的多尺度神经网络学习范式来预测原油价格。在此学习范例中,首先将原始价格序列分解为具有一定频率范围的各种独立本征模式分量(IMC)。然后通过神经网络模型探索不同IMC的内部相关结构。利用神经网络权重,选择了一些重要的IMC作为最终的神经网络输入,并丢弃了在输入到输出的映射中几乎没有用的一些不重要的IMC。最后,将选定的IMC输入到另一个神经网络模型中以进行预测。为了进行验证,将提出的多尺度神经网络学习范例应用于典型的原油价格-西德克萨斯中质原油(WTI)原油现货价格预测。

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