GARCH自回归模型在原油波动率估计与预测中的应用

R. Mușetescu, G. Grigore, Simona Nicolae
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引用次数: 4

摘要

今天,石油是全球交易中最受欢迎的商品之一,因为它具有不可或缺的特性和为人类提供的多种特性。人们更加注意分析这种宝贵能源的总价格的波动趋势。利用GARCH(1,1)、GARCH- m(1,1)和EGARCH(1,1)等自回归条件异方差模型,本研究以估计和预测1987-2022年原油收益序列(布伦特原油收益序列)的波动性为优先目标。主要结果突出了在测量条件方差时使用非对称模型EGARCH(1,1)的偏好,表明布伦特原油对任何现有市场冲击(即:信息、事件、事实、新闻等)的反应超过90%。同时,采用ARCH-LM检验、Durbin-Waston检验、高对数似然、最低施瓦茨信息标准等多种检验和评价条件考察了原油条件波动率估计的性能水平。每个GARCH(1,1)模型都很好地满足了这些条件,并在使用中具有稳定性和有效性的特点。同时,对1987-2022年和2020-2022年两个不同时间段的原油波动率进行预测分析,结果表明,原油波动率在时间上存在聚类现象,对国际金融市场的运行机制具有较强的启示意义。在我们的案例中,满足这些限制条件的对称参数模型GARCH-M(1,1)成为预测分析期间布伦特原油收益率序列波动率的最有效模型。
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The Use of GARCH Autoregressive Models in Estimating and Forecasting the Crude Oil Volatility
Today, oil is one of the most popular commodities traded globally, due to its indispensable character and multiple properties offered to mankind. Increased attention is paid to the analysis of volatile and fluctuating trends in the overall price of this valuable energy source. Using the autoregressive conditional heteroskedasticity models such as GARCH(1,1), GARCH-M(1,1) and EGARCH(1,1), the present study has as a priority objective in estimating and predicting the volatility of the oil returns series (Brent Crude Oil return series) in the 1987-2022. The main results highlighted the preference in using the asymmetric model EGARCH (1,1) on the measurement of conditional variance, showing that Brent Crude Oil reacts over 90% to any existing market’s shock (i.e.: information, events, facts, news, etc.) in a negative manner/way. At the same time, various tests and evaluation conditions were used (ARCH-LM Test, Durbin-Waston Test, High Log likelihood, Lowest Schwarz Information Criteria) in investigating the level of performance in estimation the conditional crude oil volatility. Each GARCH (1,1) model is meeting brilliantly these conditions and acquiring the character of stability and validity in use. At the same time, performing forecast analysis on crude oil volatility in two different time periods: 1987-2022, respectively 2020-2022, it was shown that existence of the phenomenon of clustering-volatility over the time, with strong implications for the functioning mechanism of international financial markets. Fulfilling those restrictive conditions, the symmetric and parametric model GARCH-M (1,1) becomes, in our case, the most efficient model in forecasting the volatility of Brent Crude Oil return series in the analysed period.
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来源期刊
European Journal of Interdisciplinary Studies
European Journal of Interdisciplinary Studies Multidisciplinary-Multidisciplinary
CiteScore
1.40
自引率
0.00%
发文量
16
审稿时长
16 weeks
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