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A study of Shanghai fuel oil futures price volatility based on high frequency data: Long-range dependence, modeling and forecasting

机译:基于高频数据的上海燃料油期货价格波动性研究:长期相关性,建模与预测

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In existing researches, the investigations of oil price volatility are always performed based on daily data and squared daily return is always taken as the proxy of actual volatility. However, it is widely accepted that the popular realized volatility (RV) based on high frequency data is a more robust measure of actual volatility than squared return. Due to this motivation, we investigate dynamics of daily volatility of Shanghai fuel oil futures prices employing 5-minute high frequency data. First, using a nonparametric method, we find that RV displays strong long-range dependence and recent financial crisis can cause a lower degree of long-range dependence. Second, we model daily volatility using RV models and GARCH-class models. Our results indicate that RV models for intraday data overwhelmingly outperform GARCH-class models for daily data in forecasting fuel oil price volatility, regardless the proxy of actual volatility. Finally, we investigate the major source of such volatile prices and found that trader activity has major contribution to fierce variations of fuel oil prices.
机译:在现有研究中,石油价格波动性的调查总是基于每日数据进行的,而每日收益率的平方始终被视为实际波动性的代表。但是,众所周知,基于高频数据的流行的已实现波动率(RV)比平方收益率更可靠地衡量实际波动率。由于这种动机,我们使用5分钟的高频数据来研究上海燃料油期货价格的每日波动动态。首先,使用非参数方法,我们发现RV显示出很强的长期依赖关系,而最近的金融危机可能会导致较低程度的长期依赖关系。其次,我们使用RV模型和GARCH类模型对每日波动率进行建模。我们的结果表明,在预测燃料油价格波幅的过程中,无论实际波动的代理如何,用于日内数据的RV模型在性能上均优于GARCH类的日数据。最后,我们调查了这种波动的价格的主要来源,发现贸易商的活动对燃油价格的剧烈变化做出了重大贡献。

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