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Estimation of the extreme value index in a censorship framework: Asymptotic and finite sample behavior

机译:审查框架中极值指数的估计:渐近和有限的样本行为

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We revisit the estimation of the extreme value index for randomly censored data from a heavy tailed distribution. We introduce a new class of estimators which encompasses earlier proposals given in Worms and Worms (2014) and Beirlant et al. (2018), which were shown to have good bias properties compared with the pseudo maximum likelihood estimator proposed in Beirlant et al. (2007) and Einmahl et al. (2008). However the asymptotic normality of the type of estimators first proposed in Worms and Worms (2014) was still lacking. We derive an asymptotic representation and the asymptotic normality of the larger class of estimators and consider their finite sample behavior. Special attention is paid to the case of heavy censoring, i.e. where the amount of censoring in the tail is at least 50%. We obtain the asymptotic normality with a classical root k rate where k denotes the number of top data used in the estimation, depending on the degree of censoring. (C) 2019 Elsevier B.V. All rights reserved.
机译:我们重新审视了从大尾分布中随机审查数据的极值指数的估计。我们介绍了一类新的估算,包括在蠕虫和蠕虫(2014)和烧烤等中给出的早期提案。 (2018),与饼图等人提出的伪最大似然估计相比,其被证明具有良好的偏置特性。 (2007)和EINMAHL等人。 (2008)。然而,在蠕虫和蠕虫(2014)中首先提出的估计类型的渐近常态仍然缺乏。我们源自渐近表达和较大类别估算器的渐近常态,并考虑其有限的样本行为。特别注意重审审查的情况,即尾巴中的审查金额至少为50%。通过经典的根k速率获得渐近常态,其中K表示估计中使用的顶部数据的数量,具体取决于审查的程度。 (c)2019年Elsevier B.V.保留所有权利。

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