Crude Oil Price Forecasting Using Long Short-Term Memory and Support Vector Regression

Rifdah Amelia, Ahmad Zuhdi, Abdul Rochman
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Abstract

Crude oil or petroleum is a non-renewable energy source derived from organic materials whose formation process is lengthy. Crude oil is a commodity whose prices often fluctuate. When there is a fluctuation, a nation's economy will be affected. The crude oil price datasets are categorized as non-linear. This research used two models to compare the performance of those two models to find the best model to predict Brent crude oil prices. The models used in this research are Long Short-Term Memory (LSTM) and Support Vector Regression (SVR). Those two methods are widely used for a similar case, such as forecasting the stock price. The dataset used in this study is the price of Brent crude oil from May 1987 to May 2022. The result of this study indicates that the deep learning algorithm, LSTM, performs better in forecasting the price of Brent crude oil with a root mean squared error value of 1.543. Index Terms—Crude Oil, Long Short-Term Memory (LSTM), Support Vector Regression (SVR), Deep Learning, Forecasting.
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基于长短期记忆和支持向量回归的原油价格预测
原油或石油是一种来源于有机物质的不可再生能源,其形成过程漫长。原油是一种价格经常波动的商品。当出现波动时,一个国家的经济就会受到影响。原油价格数据集被归类为非线性。本研究使用两个模型来比较这两个模型的表现,以找到预测布伦特原油价格的最佳模型。本研究使用的模型是长短期记忆(LSTM)和支持向量回归(SVR)。这两种方法在类似的情况下被广泛使用,比如预测股价。本研究使用的数据集是1987年5月至2022年5月布伦特原油的价格。研究结果表明,深度学习算法LSTM在预测布伦特原油价格方面表现较好,均方根误差值为1.543。指标术语:原油、长短期记忆(LSTM)、支持向量回归(SVR)、深度学习、预测
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