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Crude oil price forecasting: Experimental evidence from wavelet decomposition and neural network modeling

机译:原油价格预测:小波分解和神经网络建模的实验证据

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Oil price prediction has usually proved to be an intractable task due to the intrinsic complexity of oil market mechanism. In addition, the recent oil shock and its consequences relaunch the debate on understanding the behavior underlying the expected oil prices. Combining the dynamic properties of multilayer back propagation neural network and the recent Harr A trous wavelet decomposition, a Hybrid model HTW-MPNN is implemented to achieve prominent prediction of crude oil price. While recent studies focus on the determination of the best forecasting model by comparing various neural architectures or applying several decomposition techniques to the ANN, the new insight of this paper is to target the issue of the transfer function selection providing robust simulations on both in sample and out of sample basis. Based on the work of Yonaba, H., Anctil, F., and Fortin, V. (2010) "Comparing Sigmoid Transfer Functions for Neural Network Multistep Ahead Stream flow forecasting". Journal of Hydrologic Engineering, April, 275-283, we use three variants of activation function namely sigmoid, bipolar sigmoid and hyperbolic tangent in order to test the model's flexibility. Furthermore, the forecasting robustness is checked through several levels of input-hidden nodes. Comparatively, results of HTW-MBPNN perform better than the conventional BPNN. Our conclusions add a major attribute to the previous studies corroborating the Occam razor's principle, especially when simulations are constructed through training and testing phases simultaneously. Finally, more eligible forecasting power is found according to the wavelet oil price signal which appears to be the closest to the real anticipations of future oil price fluctuations.
机译:由于石油市场机制的内在复杂性,石油价格预测通常被证明是一项棘手的任务。此外,最近的石油危机及其后果重新引发了关于了解预期油价行为的辩论。结合多层反向传播神经网络的动态特性和最近的Harr A小波分解,实现了混合模型HTW-MPNN,以实现对原油价格的突出预测。虽然最近的研究集中在通过比较各种神经体系结构或将几种分解技术应用于人工神经网络来确定最佳预测模型,但本文的新见识旨在解决传递函数选择的问题,从而对样本和样本提供了可靠的模拟。样本不足。基于Yonaba,H.,Anctil,F.和Fortin,V.(2010)的工作,“比较Sigmoid传递函数用于神经网络多步提前流预测”。水文工程学报,275-283年4月,我们使用激活函数的三个变体,即S型,双极S型和双曲正切,以测试模型的灵活性。此外,通过多个级别的输入隐藏节点检查了预测的鲁棒性。相比之下,HTW-MBPNN的结果要比常规BPNN更好。我们的结论为先前的研究证实了Occam剃刀的原理增加了一个主要属性,特别是当同时通过训练和测试阶段构建模拟时。最后,根据小波石油价格信号发现了更合格的预测能力,该信号似乎最接近未来石油价格波动的实际预期。

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