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Applications of Neural Networks in modeling and forecasting volatility of crude oil markets: Evidences from US and China

机译:神经网络在原油市场建模与预测波动性中的应用:美国与中国的证据

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Previous researches on oil price volatility have been done with parametric models of GARCH types.In this work,we model volatility of crude oil price based on GARCH(p,q) by using Neural Network which is one of powerful classes of nonparametric models.The empirical analysis based on crude oil prices in US and China show that the proposed models significantly generate improved forecasting accuracy than the parametric model of normal GARCH(p,q).Among nine different combinations of hybrid models (for p =1,2,3 and q =1,2,3),it is found that NN-GARCH(1,1) and NN-GARCH(2,2) perform better than the others in US market whereas,NN-GARCH(1,1) and NN-GARCH(3,1) outperform in Chinese case.
机译:以前对油价波动的研究已经采用GARCH类型的参数模型来完成。在这项工作中,我们通过使用神经网络基于GARCH(P,Q)的原油价格的波动性,这是一个强大的非参数型号之一。该基于美国和中国原油价格的实证分析表明,拟议的模型显着地产生了比正常加法(P,Q)的参数模型更好地产生了改进的预测精度.AMONG九种不同组合的混合模型(P = 1,2,3和Q = 1,2,3),发现NN-GARCH(1,1)和NN-GARCH(2,2)比美国市场中的其他人更好地表现,而NN-GARCH(1,1)和NN-GARCH(3,1)优于中型形式。

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