Copula models have been popular in risk management. Due to the properties of asymptotic dependence and easy simulation, the t-copula has often been employed in practice. A computationally simple estimation procedure for the t-copula is to first estimate the linear correlation via Kendall’s tau estimator and then to estimate the parameter of the number of degrees of freedom by maximizing the pseudo likelihood function. In this paper, we derive the asymptotic limit of this two-step estimator which results in a complicated asymptotic covariance matrix. Further, we propose jackknife empirical likelihood methods to construct confidence intervals/regions for the parameters and the tail dependence coefficient without estimating any additional quantities. A simulation study shows that the proposed methods perform well in finite sample.
Interval Estimation for Bivariate t-Copulas via Kendall’s Tau
Interval Estimation for Bivariate t-Copulas via Kendall’s Tau
Abstract
Volume
8
Issue
1
Page
43-54
Year
2014
Keywords
Jackknife empirical likelihood, Kendall’s tau, t-copula
Categories
Financial and Statistical Methods
Simulation
Copulas/Multi-Variate Distributions
Publications
Variance
Documents