Does Mixed Frequency Information Help To Forecast the Value at Risk of the Crude Oil Market?

Yongjian Lyu, Mengzhen Kong, Rui Ke, Yu Wei
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Abstract

We test the value at risk (VaR) forecasting accuracy of seven generalised autoregressive condition heteroskedasticity (GARCH)-mixed data sampling (MIDAS) models, which potentially provide superior forecast accuracy than traditional GARCH models by capturing different forms of mixed frequency information from the market. The main empirical results are as follows. First, most traditional GARCH models have difficulties forecasting the VaR of the crude oil market. Second, although GARCH-MIDAS models generally produce more accurate forecasts than the traditional GARCH models, some specific GARCH-MIDAS models have poor forecasting accuracies. Third, we find that the mixed frequency information on the demand side of the crude oil market is most helpful for forecasting the VaR. The model that integrates the world industrial production index (GARCH-MIDAS-IP) robustly demonstrates good forecasting performance.
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混合频率信息是否有助于预测原油市场的风险价值?
我们测试了7种广义自回归条件异方差(GARCH)-混合数据抽样(MIDAS)模型的风险值(VaR)预测精度,这些模型通过捕获来自市场的不同形式的混合频率信息,可能提供比传统GARCH模型更高的预测精度。主要实证结果如下:首先,大多数传统GARCH模型难以预测原油市场的VaR。第二,虽然GARCH- midas模型一般比传统GARCH模型产生更准确的预测,但某些特定的GARCH- midas模型的预测精度较差。第三,我们发现原油市场需求侧的混合频率信息对预测VaR最有帮助,整合世界工业生产指数(GARCH-MIDAS-IP)的模型显示出良好的预测效果。
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