Forecasting of Monthly Crude Oil Prices in Kenya Using Comparative Time Series Models
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Date
2024-08-28
Journal Title
Journal ISSN
Volume Title
Publisher
Asian Journal of Probability and Statistics Volume 26, Issue 9, Page 97-109, 2024; Article no.AJPAS.121749
Abstract
Crude oil is one of the most vital products that ever existed and variation in prices affects all sectors of the
economy and variation in its prices is very crucial. Therefore, without an accurate and appropriate predictive
model for crude oil prices, it has proven difficult to predict future oil prices. Therefore, appropriate modeling
is crucial for the oil companies to adjust strategies used in the production and supply as well as structural
optimization. This study sought to fit several time series forecasting models namely; ARIMA, Naïve,
Seasonal Naïve, Time Series Linear Model (TSLM), and Exponential Smoothing (ETS) to model and
forecast crude oil prices. The study used Kenya’s monthly crude oil prices from Jan 2003 to Dec 2023, giving
a sample of 252 observations. The selection of the best model was based on the minimization of theinformation criteria, where ARIMA, ETS, and Seasonal Naïve attained an AIC of 1294.193, 1846.780, and
1403.821, respectively. Similarly, the models attained the BIC of 1304.991, 1863.071, and 1450.489,
respectively. Since the Naïve and TSLM could not provide the AIC and BIC, model selection was entirely
based on the forecast accuracy measures. From the results, the Naive model reported the lowest RMSE
(19.6329), indicating that it has the smallest average squared error, with the lowest MAE (15.5212),
suggesting it has the smallest average absolute error. Besides, the Naive model reported an ME (1.9819)
which is relatively low but not the lowest. The automatic ETS model has a slightly lower ME (3.478211).
The naive model reported lower MPE and MAPE values (-3.9525 and 26.8022, respectively) compared to
most models, indicating less percentage error. Similarly, a lower MASE and RMSSE were reported by the
naïve model, (0.7343624) and RMSSE (0.7228792), respectively, indicating that the model performs well
relative to forecasting crude oil prices in Kenya. The naïve model demonstrated a higher consistency and
reliability in forecasting crude oil prices in Kenya.
Description
Keywords
Crude oil, time series, forecasting, stationarity, oil prices.
Citation
Lumumba, Victor W., Teddy W. Mutugi, and Adolphus Wagala. 2024. “Forecasting of Monthly Crude Oil Prices in Kenya Using Comparative Time Series Models”. Asian Journal of Probability and Statistics 26 (9):97-109.
