Comparing and Quantifying Tail Dependence

9 Pages Posted: 13 Sep 2022

See all articles by Karl Friedrich Siburg

Karl Friedrich Siburg

Technical University of Dortmund

Christopher Strothmann

Technical University of Dortmund

Gregor N. F. Weiss

University of Leipzig - Faculty of Economics and Management Science

Abstract

We introduce a new stochastic order for the tail dependence between random variables. We then study different measures of tail dependence which are monotone in the proposed order, thereby extending various known tail dependence coefficients from the literature. We apply our concepts in an empirical study where we investigate the tail dependence for different pairs of S&P 500 stocks and indices, and illustrate the advantage of our measures of tail dependence over the classical tail dependence coefficient.

Keywords: Tail dependence, Measure of dependence, Dependence modeling

Suggested Citation

Siburg, Karl Friedrich and Strothmann, Christopher and Weiss, Gregor N. F., Comparing and Quantifying Tail Dependence. Available at SSRN: https://ssrn.com/abstract=4210159 or http://dx.doi.org/10.2139/ssrn.4210159

Karl Friedrich Siburg

Technical University of Dortmund ( email )

Friedrich-Wöhler-Weg 6
Dortmund, 44227
Germany

Christopher Strothmann

Technical University of Dortmund ( email )

Friedrich-Wöhler-Weg 6
Dortmund, 44227
Germany

Gregor N. F. Weiss (Contact Author)

University of Leipzig - Faculty of Economics and Management Science ( email )

Grimmaische Str. 12
Leipzig, 04109
Germany
+49 341 97 33821 (Phone)
+49 341 97 33829 (Fax)

HOME PAGE: http://www.wifa.uni-leipzig.de/nfdl

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