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A New Hybrid Forecasting Model Based on SW-LSTM and Wavelet Packet Decomposition: A Case Study of Oil Futures Prices

机译:基于SW-LSTM和小波包分解的新型混合预测模型 - 以石油期货价格为例

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The crude oil futures prices forecasting is a significant research topic for the management of the energy futures market. In order to optimize the accuracy of energy futures prices prediction, a new hybrid model is established in this paper which combines wavelet packet decomposition (WPD) based on long short-term memory network (LSTM) with stochastic time effective weight (SW) function method (WPD-SW-LSTM). In the proposed framework, WPD is a signal processing method employed to decompose the original series into subseries with different frequencies and the SW-LSTM model is constructed based on random theory and the principle of LSTM network. To investigate the prediction performance of the new forecasting approach, SVM, BPNN, LSTM, WPD-BPNN, WPD-LSTM, CEEMDAN-LSTM, VMD-LSTM, and ST-GRU are considered as comparison models. Moreover, a new error measurement method (multiorder multiscale complexity invariant distance, MMCID) is improved to evaluate the forecasting results from different models, and the numerical results demonstrate that the high-accuracy forecast of oil futures prices is realized.
机译:原油期货价格预测是能源期货市场管理的重要研究课题。为了优化能源期货价格预测的准确性,在本文中建立了一种新的混合模型,其基于长短期内存网络(LSTM)与随机时间有效权重(SW)功能方法相结合了小波分组分解(WPD) (WPD-SW-LSTM)。在所提出的框架中,WPD是用于将原始系列分解为具有不同频率的子晶圆的信号处理方法,并且基于随机理论和LSTM网络的原理构建SW-LSTM模型。为了研究新的预测方法的预测性能,SVM,BPNN,LSTM,WPD-BPNN,WPD-LSTM,CeeMDAN-LSTM,VMD-LSTM和ST-GRU被认为是比较模型。此外,改进了一种新的误差测量方法(MultiOrder MultiScale复杂性不变距离,MMCID),以评估不同模型的预测结果,数值结果表明,实现了石油期货价格的高准确度预测。

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