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Forecasting Financial Volatilities with Extreme Values: The Conditional Autoregressive Range (CARR) Model

机译:预测具有极高价值的金融波动:条件自回归范围(CARR)模型

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摘要

We propose a dynamic model for the high/low range of asset prices within fixed time intervals: the Conditional Autoregressive Range Model (henceforth CARR). The evolution of the conditional range is specified in a fashion similar to the conditional variance models as in GARCH and is very similar to the Autoregressive Conditional Duration (ACD) model of Engle and Russell (1998). Extreme value theories imply that the range is an efficient estimator of the local volatility, e.g., Parkinson (1980). Hence, CARR can be viewed as a model of volatility. Out-of-sample volatility forecasts using the S&P500 index data show that the CARR model does provide sharper volatility estimates compared with a standard GARCH model.
机译:我们为固定时间间隔内资产价格的高/低范围提出了一个动态模型:条件自回归范围模型(以下称为CARR)。条件范围的演变以类似于GARCH中的条件方差模型的方式指定,并且非常类似于Engle和Russell(1998)的自回归条件持续时间(ACD)模型。极值理论暗示该范围是当地波动率的有效估计器,例如Parkinson(1980)。因此,可以将CARR视为波动率的模型。使用S&P500指数数据进行的样本外波动率预测表明,与标准GARCH模型相比,CARR模型确实提供了更清晰的波动率估计。

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