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Goodness-of-fit tests for the family of multivariate chi-square copulas

机译:对多变量Chi-Square Copulas系列的健康测试

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Nonparametric moment-based goodness-of-fit tests are developed for the family of chi-square copulas of arbitrary dimensions. This class of dependence models allows for tail asymmetries and contains the family of multivariate normal copulas as a special case. The proposed tests are based on two rank correlation coefficients whose population versions are equal, up to a monotone transformation, when the underlying dependence structure is a chi-square copula. The test statistics are computed from natural rank-based estimations of these two correlation coefficients and their large-sample distributions under the null hypothesis of a chi-square copula are derived; the validity of a parametric bootstrap procedure for the computation of p-values is formally established as well. Particular attention is given to tests for the families of normal and centered chi-square copulas. The simulations that are reported indicate that the new tests are reliable alternatives to those based on the empirical copula, both in the bivariate and multivariate cases. The usefulness of the introduced methodology is illustrated on the five-dimensional Nutrient dataset. (C) 2019 Elsevier B.V. All rights reserved.
机译:基于非参数时刻的拟合性测试是为任意尺寸的Chi-Square Copulas系列开发的。这类依赖模型允许尾部不对称,并包含多变量正常金属块系列作为特殊情况。所提出的测试基于两个等级相关系数,当潜在的依赖结构是Chi-Square结构时,群体版本的级别等于单调转换。测试统计数据由基于自然秩的估计计算这两个相关系数的估计值,并导出了核心拷贝的零假设下的大样本分布;同样地建立了用于计算p值的参数自引导过程的有效性。特别注意对正常和居中的Chi-Square Copulas的家庭进行测试。报告的模拟表明新测试是基于生物和多变量案例的基于经验谱的可靠替代品。在五维营养数据集上示出了引入的方法的有用性。 (c)2019年Elsevier B.V.保留所有权利。

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