论文标题

分层阿基赛马库氏的外部功率转换:构造,抽样和估计

Outer power transformations of hierarchical Archimedean copulas: Construction, sampling and estimation

论文作者

Górecki, Jan, Hofert, Marius, Okhrin, Ostap

论文摘要

大量常用的参数Archimedean Copula(AC)家族仅限于单个参数,该参数连接到一致性措施,例如Kendall的Tau。这通常会导致统计差,尤其是在关节尾部,有时甚至可以限制与数学上的一致性或尾巴依赖性建模的能力。这项工作表明,阿基米德发电机的外部力量(OP)转换以克服这些局限性。例如,由运算转化的发电机生成的COPULA可以同时允许一个给定的一致性度量和尾部依赖系数同时捕获一个。对于可交换的操作转换AC,可以获得用于计算尾部依赖系数的公式,并提出了两个可行的OP AC估计器,并通过模拟研究了它们的性能。对于运行转化的AC的层次扩展,解决了新的构造原理,有效的采样和参数估计。通过模拟,研究了所提出的估计量的收敛速率和标准误差。风险管理应用程序显示了运算转换的层次交流模型的出色尾巴拟合功能。结果表明,OP转换能够改善可交换AC的统计拟合度,特别是那些无法捕获上尾依赖性或强大一致性的AC,以及层次ACS的统计拟合,尤其是在尾巴依赖性和较高尺寸方面。鉴于将OP转换纳入现有的可交换和分层AC模型非常简单,因此这种转换在计算工作和统计改进之间提供了一个有吸引力的权衡。

A large number of commonly used parametric Archimedean copula (AC) families are restricted to a single parameter, connected to a concordance measure such as Kendall's tau. This often leads to poor statistical fits, particularly in the joint tails, and can sometimes even limit the ability to model concordance or tail dependence mathematically. This work suggests outer power (OP) transformations of Archimedean generators to overcome these limitations. The copulas generated by OP-transformed generators can, for example, allow one to capture both a given concordance measure and a tail dependence coefficient simultaneously. For exchangeable OP-transformed ACs, a formula for computing tail dependence coefficients is obtained, as well as two feasible OP AC estimators are proposed and their properties studied by simulation. For hierarchical extensions of OP-transformed ACs, a new construction principle, efficient sampling and parameter estimation are addressed. By simulation, convergence rate and standard errors of the proposed estimator are studied. Excellent tail fitting capabilities of OP-transformed hierarchical AC models are demonstrated in a risk management application. The results show that the OP transformation is able to improve the statistical fit of exchangeable ACs, particularly of those that cannot capture upper tail dependence or strong concordance, as well as the statistical fit of hierarchical ACs, especially in terms of tail dependence and higher dimensions. Given how comparably simple it is to include OP transformations into existing exchangeable and hierarchical AC models, this transformation provides an attractive trade-off between computational effort and statistical improvement.

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