预测布伦特原油价格:解决预测绩效中的时间变化问题

Cristiana Mǎnescu, Ine Van Robays
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引用次数: 31

摘要

本文论证了不同布伦特原油价格预测模型的实时预测精度随时间的变化情况。我们发现所有被评估模型的表现都存在相当大的不稳定性,并认为依赖于平均预测统计可能会隐藏模型预测属性的重要信息。为了解决这种不稳定性,我们提出了一种预测组合方法来预测季度实际布伦特原油价格。四个模型的组合(包括期货、风险调整期货、贝叶斯VAR和石油市场的DGSE模型)平均比期货和11个季度后的随机游走更准确地预测布伦特原油价格,并产生一个随着时间的推移表现非常稳健的预测。此外,模型组合减少了预测偏差,比两种基准更准确地预测了油价变化的方向。JEL分类:Q43, C43, E32
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting the Brent Oil Price: Addressing Time-Variation in Forecast Performance
This paper demonstrates how the real-time forecasting accuracy of different Brent oil price forecast models changes over time. We find considerable instability in the performance of all models evaluated and argue that relying on average forecasting statistics might hide important information on a model`s forecasting properties. To address this instability, we propose a forecast combination approach to predict quarterly real Brent oil prices. A four-model combination (consisting of futures, risk-adjusted futures, a Bayesian VAR and a DGSE model of the oil market) predicts Brent oil prices more accurately than the futures and the random walk up to 11 quarters ahead, on average, and generates a forecast whose performance is remarkably robust over time. In addition, the model combination reduces the forecast bias and predicts the direction of the oil price changes more accurately than both benchmarks. JEL Classification: Q43, C43, E32
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