Forecasting Crude Oil Prices By Using ARIMA Model: Evidence From Tanzania

Laban Gasper, H. Mbwambo
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Abstract

Purpose: The fluctuation in the price of crude oil on the global market has created a lot of attention to the researchers to investigate its price movement. This study tries to address the problem of predicting crude oil prices in a situation of unusual circumstances. Methodology: In this study, Box Jenkins methodology was used to analyze monthly dynamics of the Brent oil price from January 2002 to February 2022. Data were first differenced to achieve stationarity, and then ACF and residual diagnostics were utilized to choose models that were used for analysis Findings: The performance of various models were evaluated and ARIMA (0, 1, 1) was found to be the best model for forecasting crude oil prices. This study further reveals that despite the corona virus and the Ukraine war having a considerable impact on crude oil prices, such a model is still capable of capturing the underlying volatility in crude oil prices. Originality/Value: Oil demand suddenly decreased as a result of the corona outbreak, but then abruptly increased as a result of the conflict in Ukraine. Therefore, there is a need to update the ARIMA model in order to best predict the price of crude oil in a time of exceptional circumstances. Because of the nature of world oil market, predictions for the medium and long term are often therefore, we have limited the scope of our forecasts in this study to a single year in order to achieve the highest level of accuracy.
基于ARIMA模型的原油价格预测:来自坦桑尼亚的证据
目的:原油价格在全球市场上的波动引起了研究者的广泛关注,研究其价格走势。本研究试图解决在不寻常情况下预测原油价格的问题。方法:在本研究中,采用Box Jenkins方法分析了2002年1月至2022年2月布伦特原油价格的月度动态。首先对数据进行差分以达到平稳性,然后利用ACF和残差诊断来选择用于分析的模型。结果:对各种模型的性能进行了评估,发现ARIMA(0,1,1)是预测原油价格的最佳模型。这项研究进一步表明,尽管冠状病毒和乌克兰战争对原油价格产生了相当大的影响,但这种模型仍然能够捕捉到原油价格的潜在波动。独创性/价值:由于冠状病毒爆发,石油需求突然下降,但由于乌克兰冲突,石油需求突然增加。因此,有必要更新ARIMA模型,以便在特殊情况下最好地预测原油价格。由于世界石油市场的性质,对中期和长期的预测往往是如此,为了达到最高的准确性,我们将本研究的预测范围限制在一年。
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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