Crude Oil Price Forecasting Using Long Short-Term Memory

Muhamad Fariz Maulana, S. Sa'adah, Prasti Eko Yunanto
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引用次数: 2

Abstract

Crude oil has an important role in the financial indicators of global markets and economies. The price of crude oil influences the income of a country, both directly and indirectly. This includes affecting the prices of basic needs, transportation, commodities, and many more. Therefore, understanding the future price of crude oil is essential in helping to budgeting and planning for a better economy. The contribution of this research is in finding the best hyperparameters and using early stopping methods in the LSTM model to predict oil prices. This research implemented Long Short-Term Memory (LSTM), an artificial neural network that can handle long-term dependencies and the problems of time series data. The LSTM method will be used to predict Brent oil prices on daily and weekly time frames. The experiment has been conducted by tuning some parameters to obtain the best result. From the daily time frame experiment, the model obtained RMSE and MAE of 1.27055 and 0.92827, respectively, while the weekly time frame has RMSE and MAE of 3.37817 and 2.60603, respectively. The results show that the LSTM model can improve to the trends that occur in the original data.
利用长短期记忆预测原油价格
原油在全球市场和经济的金融指标中发挥着重要作用。原油价格直接或间接地影响着一个国家的收入。这包括影响基本需求、交通、商品等的价格。因此,了解原油的未来价格对于帮助制定更好的经济预算和计划至关重要。本研究的贡献是在LSTM模型中找到最佳超参数并使用早期停止方法来预测油价。本研究实现了长短期记忆(LSTM)这一人工神经网络,可以处理时间序列数据的长期依赖问题。LSTM方法将用于预测布伦特原油每日和每周的价格。为了获得最佳效果,对实验参数进行了调整。在日时间框架实验中,模型的RMSE和MAE分别为1.27055和0.92827,周时间框架的RMSE和MAE分别为3.37817和2.60603。结果表明,LSTM模型能较好地反映原始数据的变化趋势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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