恒定波动率和时变波动率下的石油实际价格预测

Beili Zhu
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引用次数: 2

摘要

本文利用回溯法构建了月度实时油价数据集,并基于实时和事后修正数据对实际油价的点和密度预测的准确性,比较了不变波动率和时变波动率的替代模型的预测性能。本文研究了贝叶斯自回归和自回归移动平均模型,分别具有恒定波动率和两种时变波动率形式:GARCH和随机波动率。除了标准的时变模型外,还采用了更灵活的平均波动和移动平均波动模型来预测石油的实际价格。结果表明,时变波动率模型在较长视界的点预测和全视界的密度预测方面优于恒定波动率模型。在这两种时变模型中,移动平均分量的加入大大提高了点和密度的预测性能,而平均值的随机波动对于预测油价是多余的。
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Forecasting the Real Price of Oil Under Alternative Specifications of Constant and Time-Varying Volatility
This paper constructs a monthly real-time oil price dataset using backcasting and compares the forecast performance of alternative models of constant and timevarying volatility based on the accuracy of point and density forecasts of real oil prices of both real-time and ex-post revised data. The paper considers Bayesian autoregressive and autoregressive moving average models with respectively, constant volatility and two forms of time-varying volatility: GARCH and stochastic volatility. In addition to the standard time-varying models, more flexible models with volatility in mean and moving average innovations are used to forecast the real price of oil. The results show that timevarying volatility models dominate their counterparts with constant volatility in terms of point forecasting at longer horizons and density forecasting at all horizons. The inclusion of a moving average component provides a substantial improvement in the point and density forecasting performance for both types of time-varying models while stochastic volatility in mean is superfluous for forecasting oil prices.
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