加强尼日利亚石油价格预测:模型平均技术的综合分析

Olawale Basheer Akanbi
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摘要

许多领域的努力都从统计预测中获益匪浅,这有助于规划人员和决策者的决策。本研究采用贝叶斯平均模型(BMA)和动态平均模型(DMA)对尼日利亚石油价格进行预测。它旨在预测尼日利亚的石油价格。从本质上讲,实证增长研究中存在着大量的模型不确定性。考虑BMA和DMA均方预测误差(MSFE)的预测性能值为920.23 &分别为540.40。移动均线对该模型的预测优于BMA。与理论知识一致,模型的高度不确定性确实得到了解释。
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Enhancing Nigerian Oil Price Forecasting: A Comprehensive Analysis of Model Averaging Techniques
Numerous fields of endeavour have benefited greatly from statistical forecasting, which has aided decision-making by planners and policy makers. In this study, Bayesian Model Averaging (BMA) and Dynamic Model Averaging (DMA) are employed to forecast oil prices in Nigeria. It aimed at predicting the oil prices in Nigeria. Essentially, there are lot of model uncertainties in empirical growth researches. The predictive performance value considering the Mean Squared Forecast Error (MSFE) for BMA and DMA were 920.23 & 540.40 respectively. The DMA predicted the model better than the BMA. High levels of model uncertainties were indeed accounted for, in conformity with the theoretical knowledge.
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