A wavelet regression approach for dependence calibration in conditional copula model
Conference
64th ISI World Statistics Congress
Format: CPS Paper
Keywords: calibration, conditional, copulas, dependence, regression, wavelet
Session: CPS 86 - Statistical modelling V
Thursday 20 July 8:30 a.m. - 9:40 a.m. (Canada/Eastern)
Abstract
In presence of covariates, modeling dependence structure of random variables can be doneusing conditional copula function. If this latter belongs to a parametric copula family, an important question is how the dependence parameter, say \theta, is related to the covariates. Inthis paper, we propose a wavelet regression approach to estimate the relationship between \thetaand some real covariate. This relation is described by the so-called calibration function. We discuss asymptotic minimax properties for the linear and non-linear wavelet regression estimators and show their performance via a simulation study. An application to meteorological data reveals that the temperature influences the dependence structure between the maximum and the minimum relative humidity variables, when it takes either higher values or smaller values.