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Inference in ARCH and GARCH models with heavy-tailed errors

机译:带有重尾错误的ARCH和GARCH模型中的推论

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ARCH and GARCH models directly address the dependency of conditional second moments, and have proved particularly valuable in modelling processes where a relatively large degree of fluctuation is present. These include financial time series, which can be particularly heavy tailed. However, little is known about properties of ARCH or GARCH models in the heavy-tailed setting, and no methods are available for approximating the distributions of parameter estimators there. In this paper we show that, for heavy-tailed errors, the asymptotic distributions of quasi-maximum likelihood parameter estimators in ARCH and GARCH models are nonnormal, and are particularly difficult to estimate directly using standard parametric methods. Standard bootstrap methods also fail to produce consistent estimators. To overcome these problems we develop percentile-t, subsample boot-strap approximations to estimator distributions. Studentizing is employed to approximate scale, and the subsample bootstrap is used to estimate shape. The good performance of this approach is demonstrated both theoretically and numerically.
机译:ARCH和GARCH模型直接解决了有条件的第二时刻的依赖性,并且在存在较大程度波动的建模过程中被证明特别有价值。这些包括财务时间序列,可能特别繁重。但是,关于重尾设置中ARCH或GARCH模型的属性知之甚少,并且没有可用的方法来估算那里的参数估计量的分布。在本文中,我们表明,对于重尾误差,ARCH和GARCH模型中的拟最大似然参数估计量的渐近分布是非正态的,尤其难以直接使用标准参数方法进行估计。标准的自举方法也无法产生一致的估计量。为了克服这些问题,我们针对估计量分布开发了百分位数,子样本引导带近似值。使用学生化来近似比例,使用子样本自举来估计形状。理论上和数值上都证明了这种方法的良好性能。

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