预测加纳汽油和柴油价格:ARIMA 和 SARIMA 模型的比较

Sampson Agyare, Benjamin Odoi, E. N. Wiah
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摘要

在经济和金融领域,价格预测是一个非常重要的问题。本文使用自回归综合移动平均法(ARIMA)和季节自回归综合移动平均法(SARIMA)对加纳的汽油和柴油价格进行了比较分析。根据其预测准确性,采用最佳模型预测 2024 年 1 月至 2024 年 12 月的汽油和柴油未来价格。分析中使用了加纳银行(BoG)和国家石油管理局(NPA)提供的从 2016 年 1 月至 2023 年 12 月的汽油和柴油价格月度数据。ARIMA(0;1;2)和 ARIMA(2;1;3)分别被确定为汽油和柴油的最佳模型,SARIMA(0;1;2)x(0;1;1)12 和 SARIMA(1;1;1)x(0;1;1)12 也是在对序列进行季节性差分后根据 AIC 和 BIC 确定的。使用 Z 检验对所确定模型的系数进行了显著性检验。使用 RMSE、MAE 和 MAPE 对 ARIMA 模型和 SARIMA 模型进行了比较。在汽油和柴油方面,SARIMA 模型的性能普遍优于 ARIMA 模型,但柴油的 RMSE 值略高于 SARIMA 模型,分别为 0:9677988 和 1:011531。模型评估证明,汽油和柴油的 SARIMA 模型均优于 ARIMA 模型,并表明 SARIMA 模型适于预测加纳的汽油和柴油价格。
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Predicting Petrol and Diesel Prices in Ghana, A Comparison of ARIMA and SARIMA Models
Predicting prices is of great concern and important in the world of economics and finance. In this paper, a comparative analysis of gasoline and diesel in Ghana were analysed using Autoregressive Integrated Moving Average (ARIMA) and Seasonal Autoregressive Integrated Moving Average (SARIMA). Based on their forecasting accuracy, the best model was used for predicting future prices of gasoline and diesel from January 2024 to December 2024. A monthly data for the prices of gasoline and diesel spanning from January 2016 to December 2023 taken from the Bank of Ghana (BoG) and the National Petroleum Authority (NPA) was used for the analysis. ARIMA (0; 1; 2) and ARIMA (2; 1; 3) were identified as the best models for gasoline and diesel respectively, SARIMA(0; 1; 2) x (0; 1; 1)12 and SARIMA (1; 1; 1) x (0; 1; 1)12 were also identified after taking a seasonal difference of the series all based on AIC and BIC. The coefficient of the identified models were tested for its significance using the Z-test. The ARIMA and the SARIMA models were compared using RMSE, MAE, and MAPE. The SARIMA models generally performed better than the ARIMA models for both gasoline and diesel except RMSE for diesel where the ARIMA model was slightly better than the SARIMA models with values of 0:9677988 and 1:011531 respectively. The model evaluation proved that the SARIMA models for both gasoline and diesel were superior to the ARIMA and showed that, the SARIMA model is adequate and appropriate for forecasting of prices of gasoline and diesel prices in Ghana.
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