Comparison of ARIMA and SARIMA for Forecasting Crude Oil Prices

Vika Putri Ariyanti, Tristyanti Yusnitasari
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引用次数: 1

Abstract

Crude oil price fluctuations affect the business cycle due to affecting the ups and downs of the growth of the economy, which one of the indicators of the economic business cycle phenomenon. The importance of oil price prediction requires a model that can predict future oil prices quickly, easily, and accurately so that it can be used as a reference in determining future policies. Machine learning is an accurate method that can be used in predicting and makes it easier to predict because there is no need to program computers manually. ARIMA is a machine learning algorithm while ARIMA that uses a seasonal component is called SARIMA. Based on background, research purpose is modeling crude oil price forecasting by ARIMA and SARIMA. Forecasting is done on daily crude oil price data taken from Yahoo Finance from January 27, 2020 to January 25, 2023. The evaluation results show the RMSE value of ARIMA and SARIMA is 1.905. The forecast result of 7 days ahead with ARIMA is 86.230003 while SARIMA is 86.260002. The research results are expected to be helpful for policy makers to adopt policies and make the right decisions in the use of crude oil.  
ARIMA与SARIMA预测原油价格的比较
原油价格波动影响经济周期是由于影响经济增长的起落,这是经济景气周期现象的指标之一。油价预测的重要性需要一个能够快速、简单、准确地预测未来油价的模型,以便作为确定未来政策的参考。机器学习是一种准确的方法,可以用于预测,并且使预测变得更容易,因为不需要手动编程计算机。ARIMA是一种机器学习算法,而使用季节成分的ARIMA称为SARIMA。基于背景,研究目的是建立ARIMA和SARIMA对原油价格预测的模型。预测是根据雅虎财经从2020年1月27日至2023年1月25日的每日原油价格数据进行的。评价结果表明,ARIMA和SARIMA的RMSE值为1.905。ARIMA对未来7天的预测结果为86.230003,SARIMA为86.260002。研究结果有望为政策制定者在原油利用方面的政策制定和决策提供参考。
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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