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首页> 外文期刊>Journal of Finance and Economics >Forecasting Financial Assets Volatility Using Integrated GARCH-Type Models: International Evidence
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Forecasting Financial Assets Volatility Using Integrated GARCH-Type Models: International Evidence

机译:使用集成GARCH类型的模型预测金融资产波动性的国际证据

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In this article we compare the forecasting ability of two symmetric integrated GARCH models (FIGARCH & HYGARCH) with an asymmetric model (FIAPARCH) based on a skewed Student distribution. Each model is used for forecasting the daily conditional variance of 10 financial assets, for a sample period of about 18 years. This exercise is done for seven stock indexes (Dow Jones, NASDAQ, S&P500, DAX30, FTSE100, CAC40 and Nikkei 225) and three exchange rates vis-a-vis the US dollar (the GBP- USD, YEN-USD and Euro-USD). Results indicate that the skewed Student AR (1) FIAPARCH (1.d.1) relatively outperforms the other models in out-of-sample forecasts for one, five and fifteen day forecast horizons. Results indicate also, no difference for the AR (1) FIGARCH (1.d.1) and AR (1) HYGARCH (1.d.1) models since they have the same forecasting ability.
机译:在本文中,我们根据偏斜的学生分布比较了两个对称集成GARCH模型(FIGARCH和HYGARCH)和非对称模型(FIAPARCH)的预测能力。每个模型都用于预测10个金融资产的每日条件方差,采样期约为18年。此练习针对七种股票指数(道琼斯,纳斯达克,S&P500,DAX30,FTSE100,CAC40和日经225)和三种汇率相对于美元的汇率(GBP-USD,YEN-USD和Euro-USD)完成。 )。结果表明,偏斜的Student AR(1)FIAPARCH(1.d.1)在1天,5天和15天的预测范围内的样本外预测中相对优于其他模型。结果还表明,AR(1)FIGARCH(1.d.1)和AR(1)HYGARCH(1.d.1)模型没有差异,因为它们具有相同的预测能力。

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