AbstractThe manner in which two random variables influence one another often depends on covariates. A way to model this dependence is via a conditional copula function. This paper contributes to the study of semiparametric estimation of conditional copulas by starting from a parametric copula function in which the parameter varies with a covariate, and leaving the marginals unspecified. Consequently, the unknown parts in the model are the parameter function and the unknown marginals. The authors use a local pseudo-likelihood with nonparametrically estimated marginals approximating the unknown parameter function locally by a polynomial. Under this general setting, they prove the consistency of the estimators of the parameter function as well...
The theory of conditional copulas provides a means of constructing flexible multivariate density mod...
The estimation of density functions for positive multivariate data is discussed. The proposed approa...
Consider the model Y=m(X)+[epsilon], where m([dot operator])=med(Y[dot operator]) is unknown but smo...
AbstractThe manner in which two random variables influence one another often depends on covariates. ...
The primary aim of this thesis is the elucidation of covariate effects on the dependence structure o...
The primary aim of this thesis is the elucidation of covariate effects on the dependence structure o...
This paper is concerned with studying the dependence structure between two random variables Y1 and ...
We consider a new approach in quantile regression modeling based on the copula function that defines...
We consider a new approach in quantile regression modeling based on the copula function that defines...
When the copula of the conditional distribution of two random variables given a covariate does not d...
summary:In the paper we investigate properties of maximum pseudo-likelihood estimators for the copul...
International audienceThe tail copula is widely used to describe the dependence in the tail of multi...
In this paper the interest is to estimate the dependence between two variables conditionally upon a ...
This paper is concerned with inference about the dependence or association between two random variab...
In this paper we provide a brief survey of some parametric estimation procedures for copula models. ...
The theory of conditional copulas provides a means of constructing flexible multivariate density mod...
The estimation of density functions for positive multivariate data is discussed. The proposed approa...
Consider the model Y=m(X)+[epsilon], where m([dot operator])=med(Y[dot operator]) is unknown but smo...
AbstractThe manner in which two random variables influence one another often depends on covariates. ...
The primary aim of this thesis is the elucidation of covariate effects on the dependence structure o...
The primary aim of this thesis is the elucidation of covariate effects on the dependence structure o...
This paper is concerned with studying the dependence structure between two random variables Y1 and ...
We consider a new approach in quantile regression modeling based on the copula function that defines...
We consider a new approach in quantile regression modeling based on the copula function that defines...
When the copula of the conditional distribution of two random variables given a covariate does not d...
summary:In the paper we investigate properties of maximum pseudo-likelihood estimators for the copul...
International audienceThe tail copula is widely used to describe the dependence in the tail of multi...
In this paper the interest is to estimate the dependence between two variables conditionally upon a ...
This paper is concerned with inference about the dependence or association between two random variab...
In this paper we provide a brief survey of some parametric estimation procedures for copula models. ...
The theory of conditional copulas provides a means of constructing flexible multivariate density mod...
The estimation of density functions for positive multivariate data is discussed. The proposed approa...
Consider the model Y=m(X)+[epsilon], where m([dot operator])=med(Y[dot operator]) is unknown but smo...