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Composite likelihood estimation method for hierarchical Archimedean copulas defined with multivariate compound distributions

机译:多元复合分布定义的分层ARCHIMEDEAN COPULAS的复合似然估计方法

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We consider the family of hierarchical Archimedean copulas obtained from multivariate exponential mixture distribution through compounding, as introduced by Cossette et al. (2017). We investigate ways of determining the structure of these copulas and estimating their parameters. An agglomerative clustering technique based on the matrix of Spearman's rhos, combined with a bootstrap procedure, is used to identify the tree structure. Parameters are estimated through a top-down composite likelihood. The validity of the approach is illustrated through two simulation studies in which the procedure is explained step by step. The composite likelihood method is also compared to the full likelihood method in a simple case where the latter is computable. (C) 2019 Elsevier Inc. All rights reserved.
机译:我们考虑通过复合的多变量指数混合混合物分布获得的分层阿基米德共克的家族,如Costette等。 (2017)。 我们调查了确定这些Copulas结构和估算其参数的方法。 基于Spearman RHOS矩阵的凝聚聚类技术,与引导程序相结合,用于识别树结构。 参数通过自上而下的复合可能性来估计。 通过两种模拟研究说明了方法的有效性,其中步骤解释了该过程。 复合似然方法也与后者是可计算的简单情况的完全似然方法进行比较。 (c)2019 Elsevier Inc.保留所有权利。

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