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On consistency of the likelihood moment estimators for a linear process with regularly varying innovations

机译:具有规则变化的线性过程的似然矩估计量的一致性

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摘要

In 1975 James Pickands III showed that the excesses over a high threshold are approximatly Generalized Pareto distributed. Since then, a variety of estimators for the parameters of this cdf have been studied, but always assuming the underlying data to be independent. In this paper we consider the special case where the underlying data arises from a linear process with regularly varying (i.e. heavy-tailed) innovations. Using this setup, we then show that the likelihood moment estimators introduced by Zhang Aust. N.Z. J. Stat. 49, 69-77 (2007) are consistent estimators for the parameters of the Generalized Pareto distribution.
机译:1975年,James Pickands III表明,超出高阈值的超出部分近似为广义Pareto分布。从那时起,已经研究了该cdf参数的各种估计器,但始终假定基础数据是独立的。在本文中,我们考虑了特殊情况,即基础数据来自具有规律变化(即重尾)创新的线性过程。然后,使用此设置,我们将证明Zhang Aust引入的似然矩估计量。 N.Z. J.统计49,69-77(2007)是广义帕累托分布参数的一致估计量。

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