English

The realization problem for tail correlation functions

Probability 2016-03-25 v2

Abstract

For a stochastic process {Xt}tT\{X_t\}_{t \in T} with identical one-dimensional margins and upper endpoint τup\tau_{\text{up}} its tail correlation function (TCF) is defined through χ(X)(s,t)=limττupP(Xs>τXt>τ)\chi^{(X)}(s,t) = \lim_{\tau \to \tau_{\text{up}}} P(X_s > \tau \,\mid\, X_t > \tau ). It is a popular bivariate summary measure that has been frequently used in the literature in order to assess tail dependence. In this article, we study its realization problem. We show that the set of all TCFs on T×TT \times T coincides with the set of TCFs stemming from a subclass of max-stable processes and can be completely characterized by a system of affine inequalities. Basic closure properties of the set of TCFs and regularity implications of the continuity of χ\chi are derived. If TT is finite, the set of TCFs on T×TT \times T forms a convex polytope of T×T\lvert T \rvert \times \lvert T \rvert matrices. Several general results reveal its complex geometric structure. Up to T=6\lvert T \rvert = 6 a reduced system of necessary and sufficient conditions for being a TCF is determined. None of these conditions will become obsolete as T3\lvert T \rvert\geq 3 grows.

Keywords

Cite

@article{arxiv.1405.6876,
  title  = {The realization problem for tail correlation functions},
  author = {Ulf-Rainer Fiebig and Kirstin Strokorb and Martin Schlather},
  journal= {arXiv preprint arXiv:1405.6876},
  year   = {2016}
}

Comments

42 pages, 7 Tables

R2 v1 2026-06-22T04:24:06.686Z