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Bias-reduced estimators for bivariate tail modelling
Authors:J BeirlantG Dierckx  A Guillou
Institution:
  • a Department of Mathematics, Campus Kortrijk and Leuven Statistics Research Center, Katholieke Universiteit Leuven, Belgium
  • b Department of Mathematics and Statistics, Hogeschool-Universiteit Brussel, Belgium
  • c Université de Strasbourg et CNRS, IRMA UMR 7501, 7 rue René Descartes, 67084 Strasbourg cedex, France
  • Abstract:Ledford and Tawn (1997) introduced a flexible bivariate tail model based on the coefficient of tail dependence and on the dependence of the extreme values of the random variables. In this paper, we extend the concept by specifying the slowly varying part of the model as done by Hall (1982) with the univariate case. Based on Beirlant et al. (2009), we propose a bias-reduced estimator for the coefficient of tail dependence and for the estimation of small tail probabilities. We discuss the properties of these estimators via simulations and a real-life example. Furthermore, we discuss some theoretical asymptotic aspects of this approach.
    Keywords:62G32  62H12  62G20
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