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Forecasts for leverage heterogeneous autoregressive models with jumps and other covariates

机译:预测利用跳跃和其他协变量的异质自动评级模型

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摘要

For leverage heterogeneous autoregressive (LHAR) models with jumps and other covariates, called LHARX models, multistep forecasts are derived. Some optimal properties of forecasts in terms of conditional volatilities are discussed, which tells us to model conditional volatility for return but not for the LHARX regression error and other covariates. Forecast standard errors are constructed for which we need to model conditional volatilities both for return and for LHAR regression error and other blue covariates. The proposed methods are well illustrated by forecast analysis for the realized volatilities of the US stock price indexes: the S&P 500, the NASDAQ, the DJIA, and the RUSSELL indexes.
机译:对于具有跳跃和其他协变量的杠杆异质自回归(LHAR)模型,称为LHARX模型,推导了多步预测。讨论了基于条件波动率的预测的一些最优性质,这告诉我们要为收益率而不是LHARX回归误差和其他协变量建立条件波动率模型。构建了预测标准误差,我们需要对回报和LHAR回归误差以及其他蓝色协变量的条件波动率进行建模。通过对美国股票价格指数(标准普尔500指数、纳斯达克指数、道琼斯工业平均指数和罗素指数)的实际波动率进行预测分析,可以很好地说明所提出的方法。

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