芝加哥:一种快速准确的投资组合风险评估方法

S. Broda, Marc S. Paolella
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引用次数: 8

摘要

即使在现代计算机环境中,多元GARCH模型的估计仍然是一项具有挑战性的任务。这篇手稿展示了如何使用独立成分分析来估计广义正交GARCH模型,否则需要的时间的一小部分。所提出的方法是一个两步过程,将相关结构的估计与单变量动力学的估计分开,从而便于以直接的方式纳入非高斯创新分布。广义双曲分布为金融回报数据提供了极好的参数描述,并用于单变量拟合,但其卷积(投资组合风险计算所必需的)是难以处理的。这种限制可以通过对所需分布函数的鞍点近似来克服,这种近似在计算上很便宜,而且非常准确——最明显的是在尾部,这对风险计算至关重要。仿真研究和股票收益的应用验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CHICAGO: A Fast and Accurate Method for Portfolio Risk
The estimation of multivariate GARCH models remains a challenging task, even in modern computer environments. This manuscript shows how Independent Component Analysis can be used to estimate the Generalized Orthogonal GARCH model in a fraction of the time otherwise required. The proposed method is a two-step procedure, separating the estimation of the correlation structure from that of the univariate dynamics, thus facilitating the incorporation of non-Gaussian innovations distributions in a straightforward manner. The generalized hyperbolic distribution provides an excellent parametric description of financial returns data and is used for the univariate fits, but its convolutions, necessary for portfolio risk calculations, are intractable. This restriction is overcome by a saddlepoint approximation to the required distribution function, which is computationally cheap and extremely accurate - most notably in the tail, which is crucial for risk calculations. A simulation study and an application to stock returns demonstrate the validity of the procedure.
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