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GEL estimation for heavy-tailed GARCH models with robust empirical likelihood inference

机译:具有鲁棒经验似然推断的重尾GARCH模型的GEL估计

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We construct a Generalized Empirical Likelihood estimator for a GARCH(1, 1) model with a possibly heavy tailed error. The estimator imbeds tail-trimmed estimating equations allowing for over-identifying conditions, asymptotic normality, efficiency and empirical likelihood based confidence regions for very heavy-tailed random volatility data. We show the implied probabilities from the tail-trimmed Continuously Updated Estimator elevate weight for usable large values, assign large but not maximum weight to extreme observations, and give the lowest weight to non-leverage points. We derive a higher order expansion for GEL with imbedded tail-trimming (GELITT), which reveals higher order bias and efficiency properties, available when the GARCH error has a finite second moment. Higher order asymptotics for GEL without tail-trimming requires the error to have moments of substantially higher order. We use first order asymptotics and higher order bias to justify the choice of the number of trimmed observations in any given sample. We also present robust versions of Generalized Empirical Likelihood Ratio, Wald, and Lagrange Multiplier tests, and an efficient and heavy tail robust moment estimator with an application to expected shortfall estimation. Finally, we present a broad simulation study for GEL and GELITT, and demonstrate profile weighted expected shortfall for the Russian Ruble-US Dollar exchange rate. We show that tail-trimmed CUE-GMM dominates other estimators in terms of bias, mse and approximate normality. (C) 2015 Elsevier B.V. All rights reserved.
机译:我们为可能带有严重尾误差的GARCH(1,1)模型构造了一个广义经验似然估计。估计器嵌入了尾部修剪的估计方程式,从而允许针对非常重尾的随机波动率数据过度识别条件,渐近正态性,效率和基于经验似然性的置信区域。我们显示了从尾部修剪的“连续更新的估计量”中得出的隐含概率,将可用的较大值的权重提高了,将极端但不是最大的权重分配给了极端观测,并将最小的权重赋予了非杠杆点。我们使用嵌入的尾部修剪(GELITT)推导了GEL的高阶展开,它揭示了高阶偏差和效率属性,当GARCH误差具有有限的第二矩时可用。对于GEL而言,不进行尾部修整的更高阶渐近性要求误差具有实质上更高阶的矩。我们使用一阶渐近和较高阶偏差来证明在任何给定样本中选择修剪后的观察值的数量是合理的。我们还提供了广义经验似然比,Wald和Lagrange乘数检验的稳健版本,以及一种有效且重尾的稳健矩估计器,可应用于预期的缺口估计。最后,我们对GEL和GELITT进行了广泛的模拟研究,并证明了俄罗斯卢布对美元汇率的加权加权预期缺口。我们显示,在偏差,mse和近似正态性方面,尾部修剪的CUE-GMM主导了其他估计量。 (C)2015 Elsevier B.V.保留所有权利。

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