偏态和重尾数据的正态加权反高斯分布

Calvin B. Maina, Patrick G. O. Weke, C. Ogutu, J. Ottieno
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引用次数: 1

摘要

高频金融数据的特征是非正态性:不对称、细峰和肥尾行为。因此,正态分布不足以捕捉这些特征。为此,提出了各种灵活的分发方案。众所周知,混合分布产生灵活的模型,具有良好的统计和概率性质。本文构造了广义逆高斯分布的两种特殊情况的有限混合。使用这个有限的混合作为正态方差均值混合的混合分布,我们得到一个正态加权逆高斯分布。因此,第二个目标是构造并获得NWIG分布的性质。利用EM算法对模型的最大似然参数估计进行了估计,并利用三个数据集进行了应用。结果表明,该模型具有较好的拟合性和灵活性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Normal Weighted Inverse Gaussian Distribution for Skewed and Heavy-Tailed Data
High frequency financial data is characterized by non-normality: asymmetric, leptokurtic and fat-tailed behaviour. The normal distribution is therefore in-adequate in capturing these characteristics. To this end, various flexible distributions have been proposed. It is well known that mixture distributions produce flexible models with good statistical and probabilistic properties. In this work, a finite mixture of two special cases of Generalized Inverse Gaussian distribution has been constructed. Using this finite mixture as a mixing distribution to the Normal Variance Mean Mixture we get a Normal Weighted Inverse Gaussian (NWIG) distribution. The second objective, therefore, is to construct and obtain properties of the NWIG distribution. The maximum likelihood parameter estimates of the proposed model are estimated via EM algorithm and three data sets are used for application. The result shows that the proposed model is flexible and fits the data well.
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