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Tail-Dependence in Stock-Return Pairs

机译:股票收益对中的尾部相关性

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摘要

The empirical joint distribution of return pairs on stock indices displays high tail-dependence in the lower tail and low tail-dependence in the upper tail. The presence of tail-dependence is not compatible with the assumption of (conditional) joint normality. The presence of asymmetric tail-dependence is not compatible with the assumption of a joint student-t distribution. A general test for one dependence structure versus another via the profile likelihood is described and employed in a bivariate GARCH model, where the joint distribution of the disturbances is split into its marginals and its copula. The copula used in the paper is such that it allows for the existence of lower tail-dependence and for asymmetric tail-dependence, and is such that it encompasses the normal or t-copula, depending on the benchmark tested. The model is estimated using bivariate data on a set of European stock indices. We find that the assumption of normal or student-t dependence is easily rejected in favour of an asymmetrically tail-dependent distribution.
机译:股指上收益对的经验联合分布在下尾部显示高尾部相关性,在上尾部显示低尾部相关性。尾部依赖的存在与(条件)关节正态性的假设不相容。不对称尾部相关性的存在与联合学生t分布的假设不相容。描述了一种通过分布似然性对一个依赖结构与另一个依赖结构的一般测试,并将其用于双变量GARCH模型,该模型将干扰的联合分布分为其边际和其系。在本文中使用的系词允许存在较低的尾部依赖性和不对称的尾部依赖性,并且其取决于正常基准或t系词,这取决于测试的基准。该模型是使用一组欧洲股票指数的双变量数据估算的。我们发现正态或学生t依赖性的假设很容易被拒绝,而倾向于不对称的尾部依赖性分布。

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