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Applying Neural Networks to Prices Prediction of Crude Oil Futures

机译:神经网络在原油期货价格预测中的应用

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The global economy experienced turbulent uneasiness for the past five years owing to large increases in oil prices and terrorist’s attacks. While accurate prediction of oil price is important but extremely difficult, this study attempts to accurately forecast prices of crude oil futures by adopting three popular neural networks methods including the multilayer perceptron, the Elman recurrent neural network (ERNN), and recurrent fuzzy neural network (RFNN). Experimental results indicate that the use of neural networks to forecast the crude oil futures prices is appropriate and consistent learning is achieved by employing different training times. Our results further demonstrate that, in most situations, learning performance can be improved by increasing the training time. Moreover, the RFNN has the best predictive power and the MLP has the worst one among the three underlying neural networks. This finding shows that, under ERNNs and RFNNs, the predictive power improves when increasing the training time. The exceptional case involved BPNs, suggesting that the predictive power improves when reducing the training time. To sum up, we conclude that the RFNN outperformed the other two neural networks in forecasting crude oil futures prices.
机译:过去五年来,由于油价大幅上涨和恐怖分子的袭击,全球经济经历了动荡不安。尽管准确预测油价很重要但非常困难,但本研究尝试通过采用三种流行的神经网络方法(包括多层感知器,Elman递归神经网络(ERNN)和递归模糊神经网络)准确预测原油期货价格( RFNN)。实验结果表明,使用神经网络预测原油期货价格是适当的,并且通过采用不同的培训时间可以实现一致的学习。我们的结果进一步表明,在大多数情况下,可以通过增加培训时间来提高学习成绩。此外,在三个基础神经网络中,RFNN具有最佳的预测能力,而MLP具有最差的预测能力。这一发现表明,在ERNN和RFNNs下,增加训练时间可以提高预测能力。特殊情况涉及BPN,这表明在减少训练时间时预测能力会提高。综上所述,我们得出结论,在预测原油期货价格时,RFNN优于其他两个神经网络。

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