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Nonparametric estimation of multivariate tail probabilities and tail dependence coefficients

机译:多变量尾概率和尾依赖系数的非参数估计

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摘要

We propose three methods for estimating the joint tail probabilities based on a d-variate copula with dimension d >= 2. For the first two methods, we use two different tail expansions of the copula which are valid under mild regularity conditions. We estimate the coefficients of these expansions using the maximum likelihood approach with appropriate data beyond a threshold in the tail. For the third method, we propose a family of tail-weighted measures of multivariate dependence and use these measures to estimate the coefficients of the second tail expansion using regression. This expansion is then used to estimate the joint tail probabilities when the empirical probabilities cannot be used because of lack of data in the tail. The three proposed methods can also be used to estimate tail dependence coefficients of a multivariate copula. Simulation studies are used to indicate when the methods give more accurate estimates of the tail probabilities and tail dependence coefficients. We apply the proposed methods to analyze tail properties of a data set of financial returns. (C) 2019 Elsevier Inc. All rights reserved.
机译:我们提出了三种方法,用于估计基于具有尺寸D> = 2.对于前两种方法的D-Variate Copula来估算关节尾部概率,我们使用两种不同的Copula的尾部扩展,这些尾部在温和的规律性条件下有效。我们利用具有超出尾部阈值的最大数据的最大似然方法来估计这些扩展的系数。对于第三种方法,我们提出了一系列多变量依赖性的尾部加权措施,并使用这些措施来估计使用回归的第二尾扩展的系数。然后使用这种扩展来估计由于尾部中的数据不能使用经验概率时,估计关节尾部概率。三种所提出的方法也可用于估计多元拷贝的尾依赖系数。仿真研究用于指示方法何时给出尾部概率和尾依赖系数的更准确的估计。我们应用建议的方法来分析数据集的数据集的尾部属性。 (c)2019 Elsevier Inc.保留所有权利。

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