Measures of tail dependence between random variables aim to numerically quantify the degree of association between their extreme realizations. Existing tail dependence coefficients (TDCs) are based on an asymptotic analysis of relevant conditional probabilities, and do not provide a complete framework in which to compare extreme dependence between two random variables. In fact, for many important classes of bivariate distributions, these coefficients take on non-informative boundary values. We propose a new approach by first considering global measures based on the surface area of the conditional cumulative probability in copula space, normalized with respect to departures from independence and scaled by the difference between the two boundary copulas of co-monotonicity and counter-monotonicity. The measures could be approached by cumulating probability on either the lower left or upper right domain of the copula space, and offer the novel perspective of being able to differentiate asymmetric dependence with respect to direction of conditioning. The resulting TDCs produce a smoother and more refined taxonomy of tail dependence. The empirical performance of the measures is examined in a simulated data context, and illustrated through a case study examining tail dependence between stock indices.
翻译:现有尾依赖系数(TDCs)基于对相关有条件概率的无症状分析,没有提供一个完整的框架来比较两个随机变量之间的极端依赖性。事实上,对于许多重要的两变分布类别,这些系数采用非信息化边界值。我们提出一种新的办法,首先考虑基于在千叶空间中有条件累积概率表层的全球措施,在脱离独立方面实现正常化,并根据双向流动和反流动差异的差别而扩大尺度。这些措施可以通过在两极空间的左下或右上层的累积概率来接近,并且提供能够区分在调节方向上的不对称依赖性的新视角。由此产生的TDC产生一种更顺畅、更精细的尾依赖性分类学。措施的经验性表现在模拟数据背景下加以审查,并通过研究股票指数之间的尾部依赖性案例研究加以说明。