Selecting and estimating regular vine copulae and application to financial returns

藤蔓copula 连接词(语言学) 多元统计 计量经济学 典型相关 数学 多元正态分布 统计
作者
J. DiíMann,Eike Christian Brechmann,Claudia Czado,Dorota Kurowicka
出处
期刊:Computational Statistics & Data Analysis [Elsevier BV]
卷期号:59: 52-69 被引量:488
标识
DOI:10.1016/j.csda.2012.08.010
摘要

Regular vine distributions which constitute a flexible class of multivariate dependence models are discussed. Since multivariate copulae constructed through pair-copula decompositions were introduced to the statistical community, interest in these models has been growing steadily and they are finding successful applications in various fields. Research so far has however been concentrating on so-called canonical and D-vine copulae, which are more restrictive cases of regular vine copulae. It is shown how to evaluate the density of arbitrary regular vine specifications. This opens the vine copula methodology to the flexible modeling of complex dependencies even in larger dimensions. In this regard, a new automated model selection and estimation technique based on graph theoretical considerations is presented. This comprehensive search strategy is evaluated in a large simulation study and applied to a 16-dimensional financial data set of international equity, fixed income and commodity indices which were observed over the last decade, in particular during the recent financial crisis. The analysis provides economically well interpretable results and interesting insights into the dependence structure among these indices.

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