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The generalized Gudermannian distribution: inference and volatility modelling

机译:广义的Gudermannian分布:推论和波动建模

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摘要

In this paper, we introduce a new distribution, called generalized Gudermannian (GG) distribution, and its skew extension for GARCH models in modelling daily Value-at-Risk (VaR). Basic structural properties of the proposed distribution are obtained including probability density and cumulative distribution functions, moments, and stochastic representation. The maximum likelihood method is used to estimate unknown parameters of the proposed model and finite sample performance of maximum likelihood estimates are evaluated by means of Monte-Carlo simulation study. The real data application on Nikkei 225 index is given to demonstrate the performance of GARCH model specified under skew extension of GG innovation distribution against normal, Student's-t, skew normal and generalized error and skew generalized error distributions in terms of the accuracy of VaR forecasts. The empirical results show that the GARCH model with GG innovation distribution produces the most accurate VaR forecasts for all confidence levels.
机译:在本文中,我们介绍了一种新的分布,称为广义的Gudermannian(GG)分布,以及用于在日常值 - 风险(VAR)建模时的加粗模型的偏移扩展。获得所提出的分布的基本结构特性,包括概率密度和累积分布函数,时刻和随机表示。最大似然方法用于估计所提出的模型的未知参数,并通过Monte-Carlo仿真研究评估最大似然估计的有限样本性能。 Nikkei 225索引上的实际数据应用程序展示了GG创新分布歪斜延伸下规定的GARCH模型对阵正常,学生-T,歪斜正常和广义误差和偏光预测的准确性的偏移误差分布。实证结果表明,具有GG创新分布的GARCH模型产生了所有置信水平的最准确的VAR预测。

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