使用计算计量经济学预测原油价格及其波动:深度学习,LSTM和卷积神经网络

Rayan H. Assaad, S. Fayek
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引用次数: 11

摘要

准确预测原油价格及其波动又引起了人们的兴趣。也就是说,本文的目的是研究是否可以使用顶级信息技术公司的股价来预测美国的原油价格。为此,收集时间序列数据并根据需要进行预处理,并测试了三种计算神经网络架构:深度神经网络、长短期记忆(LSTM)神经网络以及卷积和LSTM神经网络的组合。研究结果表明,LSTM网络是预测原油价格的最佳架构。本文的结果可能有助于使油价预测机制成为一项更容易处理的任务,并有助于决策者改善宏观经济政策,产生更好的宏观经济预测,更好地评估宏观经济风险。
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Predicting the Price of Crude Oil and its Fluctuations Using Computational Econometrics: Deep Learning, LSTM, and Convolutional Neural Networks
Abstract There has been a renewed interest in accurately forecasting the price of crude oil and its fluctuations. That said, this paper aims to study whether the price of crude oil in the United States (US) could be predicted using the stock prices of the top information technology companies. To this end, time-series data was collected and pre-processed as needed, and three architectures of computational neural networks were tested: deep neural networks, long-short term memory (LSTM) neural networks, and a combination of convolutional and LSTM neural networks. The findings suggest that LSTM networks are the best architectures to predict the crude oil price. The outcomes of this paper could potentially help in making the oil price prediction mechanism a more tractable task and in assisting decision-makers to improve macroeconomic policies, generate enhanced macroeconomic projections, and better assess macroeconomic risks.
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审稿时长
20 weeks
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