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Inverse Gaussian quadrature and finite normal-mixture approximation of the generalized hyperbolic distribution

机译:逆高斯正交和有限的正常混合近似的广义双曲分布

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摘要

In this study, a numerical quadrature for the generalized inverse Gaussian distribution is derived from the Gauss-Hermite quadrature by exploiting its relationship with the normal distribution. The proposed quadrature is not Gaussian, but it exactly integrates the polynomials of both positive and negative orders. Using the quadrature, the generalized hyperbolic distribution is efficiently approximated as a finite normal variance-mean mixture. Therefore, the expectations under the distribution, such as cumulative distribution function and European option price, are accurately computed as weighted sums of those under normal distributions. The generalized hyperbolic random variates are also sampled in a straightforward manner. The accuracy of the methods is illustrated with numerical examples. (C) 2020 Elsevier B.V. All rights reserved.
机译:在本研究中,利用高斯-厄米特积分与正态分布的关系,从高斯-厄米特积分中导出了广义逆高斯分布的数值积分。所提出的求积不是高斯的,但它精确地集成了正负阶多项式。利用求积,将广义双曲分布有效地近似为有限正态方差-均值混合分布。因此,分布下的期望值,如累积分布函数和欧式期权价格,被精确地计算为正态分布下的期望值的加权和。广义双曲随机变量也以简单的方式采样。数值算例说明了方法的准确性。(C) 2020爱思唯尔B.V.版权所有。

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