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On weak conditional convergence of bivariate Archimedean and Extreme Value copulas, and consequences to nonparametric estimation

12 June 2020
Thimo M. Kasper
Sebastian Fuchs
W. Trutschnig
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Abstract

Looking at bivariate copulas from the perspective of conditional distributions and considering weak convergence of almost all conditional distributions yields the notion of weak conditional convergence. At first glance, this notion of convergence for copulas might seem far too restrictive to be of any practical importance - in fact, given samples of a copula CCC the corresponding empirical copulas do not converge weakly conditional to CCC with probability one in general. Within the class of Archimedean copulas and the class of Extreme Value copulas, however, standard pointwise convergence and weak conditional convergence can even be proved to be equivalent. Moreover, it can be shown that every copula CCC is the weak conditional limit of a sequence of checkerboard copulas. After proving these three main results and pointing out some consequences we sketch some implications for two recently introduced dependence measures and for the nonparametric estimation of Archimedean and Extreme Value copulas.

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