期刊文献+

A Normal Weighted Inverse Gaussian Distribution for Skewed and Heavy-Tailed Data

A Normal Weighted Inverse Gaussian Distribution for Skewed and Heavy-Tailed Data
下载PDF
导出
摘要 High frequency financial data is characterized by non-normality: asymmetric, leptokurtic and fat-tailed behaviour. The normal distribution is therefore inadequate 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. High frequency financial data is characterized by non-normality: asymmetric, leptokurtic and fat-tailed behaviour. The normal distribution is therefore inadequate 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.
作者 Calvin B. Maina Patrick G. O. Weke Carolyne A. Ogutu Joseph A. M. Ottieno Calvin B. Maina;Patrick G. O. Weke;Carolyne A. Ogutu;Joseph A. M. Ottieno(Department of Mathematics and Actuarial Science, Kisii University, Kisii, Kenya;School of Mathematics, University of Nairobi, Nairobi, Kenya)
出处 《Applied Mathematics》 2022年第2期163-177,共15页 应用数学(英文)
关键词 Inverse Gaussian Finite Mixture Weighted Distribution Mixed Model EM-ALGORITHM Inverse Gaussian Finite Mixture Weighted Distribution Mixed Model EM-Algorithm
  • 相关文献

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部