Efficient likelihood-based inference for the generalized Pareto distribution

被引:0
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作者
Hideki Nagatsuka
N. Balakrishnan
机构
[1] Chuo University,Department of Industrial and Systems Engineering
[2] McMaster University,Department of Mathematics and Statistics
关键词
Asymptotic normality; Interval estimation; Hypothesis testing; Non-regularity problem; Extreme value; Peaks over threshold;
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摘要
It is well known that inference for the generalized Pareto distribution (GPD) is a difficult problem since the GPD violates the classical regularity conditions in the maximum likelihood method. For parameter estimation, most existing methods perform satisfactorily only in the limited range of parameters. Furthermore, the interval estimation and hypothesis tests have not been studied well in the literature. In this article, we develop a novel framework for inference for the GPD, which works successfully for all values of shape parameter k. Specifically, we propose a new method of parameter estimation and derive some asymptotic properties. Based on the asymptotic properties, we then develop new confidence intervals and hypothesis tests for the GPD. The numerical results are provided to show that the proposed inferential procedures perform well for all choices of k.
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页码:1153 / 1185
页数:32
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