Multivariate and functional covariates and conditional copulas
Abstract
In this paper the interest is to estimate the dependence between two variables conditionally upon a covariate, through copula modelling. In recent literature nonparametric estimators for conditional copula functions in case of a univariate covariate have been proposed. The aim of this paper is to nonparametrically estimate a conditional copula when the covariate takes on values in more complex spaces. We consider multivariate covariates and functional covariates. We establish weak convergence, and bias and variance properties of the proposed nonparametric estimators. We also briefly discuss nonparametric estimation of conditional association measures such as a conditional Kendall’s tau. The case of functional covariates is of particular interest and challenge, both from theoretical as well as practical point of view. For this setting we provide an illustration with a real data example in which the covariates are spectral curves. A simulation study investigating the finite-sample performances of the discussed estimators is provided. In this paper the interest is to estimate the dependence between
two variables conditionally upon a covariate, through copula modelling. In
recent literature nonparametric estimators for conditional copula functions
in case of a univariate covariate have been proposed. The aim of this paper is
to nonparametrically estimate a conditional copula when the covariate takes
on values in more complex spaces. We consider multivariate covariates and
functional covariates. We establish weak convergence, and bias and variance
properties of the proposed nonparametric estimators.We also briefly discuss
nonparametric estimation of conditional association measures such as a
conditional Kendall’s tau. The case of functional covariates is of particular
interest and challenge, both from theoretical as well as practical point of
view. For this setting we provide an illustration with a real data example in
which the covariates are spectral curves. A simulation study investigating
the finite-sample performances of the discussed estimators is provided
URI
http://hdl.handle.net/10394/9957http://dx.doi.org/10.1214/12-EJS712
https://projecteuclid.org/download/pdfview_1/euclid.ejs/1343310298