Regular variation;
Domain of attraction;
Heavy tails;
Asymptotic independence;
Conditional extreme value model;
TAIL;
INDEPENDENCE;
INFERENCE;
NETWORK;
LAWS;
D O I:
10.1007/s10687-009-0097-3
中图分类号:
O1 [数学];
学科分类号:
0701 ;
070101 ;
摘要:
In classical extreme value theory probabilities of extreme events are estimated assuming all the components of a random vector to be in a domain of attraction of an extreme value distribution. In contrast, the conditional extreme value model assumes a domain of attraction condition on a sub-collection of the components of a multivariate random vector. This model has been studied in Heffernan and Tawn (JRSS B 66(3):497-546, 2004), Heffernan and Resnick (Ann Appl Probab 17(2):537-571, 2007), and Das and Resnick (2009). In this paper we propose three statistics which act as tools to detect this model in a bivariate set-up. In addition, the proposed statistics also help to distinguish between two forms of the limit measure that is obtained in the model.