Dynamic Bivariate Normal Copula
Abstract
Normal copula with a correlation coefficient between and is tail independent and so it severely underestimates extreme probabilities. By letting the correlation coefficient in a normal copula depend on the sample size, H\"usler and Reiss (1989) showed that the tail can become asymptotically dependent. In this paper, we extend this result by deriving the limit of the normalized maximum of independent observations, where the -th observation follows from a normal copula with its correlation coefficient being either a parametric or a nonparametric function of . Furthermore, both parametric and nonparametric inference for this unknown function are studied, which can be employed to test the condition in H\"usler and Reiss (1989). A simulation study and real data analysis are presented too.
Keywords
Cite
@article{arxiv.1505.03762,
title = {Dynamic Bivariate Normal Copula},
author = {Xin Liao and Liang Peng and Zuoxiang Peng and Yanting Zheng},
journal= {arXiv preprint arXiv:1505.03762},
year = {2016}
}
Comments
22pages, 4 figures