We consider a new approach in quantile regression modeling based on the copula function that defines the dependence structure between the variables of interest. The key idea of this approach is to rewrite the characterization of a regression quantile in terms of a copula and marginal distributions. After the copula and the marginal distributions are estimated, the new estimator is obtained as the weighted quantile of the response variable in the model. The proposed conditional estimator has three main advantages: it applies to both iid and time series data, it is automatically monotonic across quantiles, and, unlike other copula-based methods, it can be directly applied to the multiple covariates case without introducing any extra complicat...
This is an electronic version of the paper presented at the Annual Conference on Neural Information ...
AbstractThe manner in which two random variables influence one another often depends on covariates. ...
Consider the model Y=m(X)+[epsilon], where m([dot operator])=med(Y[dot operator]) is unknown but smo...
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...
We consider a new approach in quantile regression modeling based on the copula function that defines...
This paper studies the estimation of a class of copula-based semiparametric stationary Markov models...
When facing multivariate covariates, general semiparametric regression techniques come at hand to pr...
When facing multivariate covariates, general semiparametric regression techniques come at hand to pr...
Parametric copulas are shown to be attractive devices for specifying quantile autoregressive models ...
When facing multivariate covariates, general semiparametric regression techniques come at hand to pr...
Parametric copulas are shown to be attractive devices for specifying quantile autoregressive models ...
Parametric copulas are shown to be attractive devices for specifying quantile autoregressive models ...
AbstractThe manner in which two random variables influence one another often depends on covariates. ...
Quantile regression is a field with steadily growing importance in statistical modeling. It is a com...
This is an electronic version of the paper presented at the Annual Conference on Neural Information ...
AbstractThe manner in which two random variables influence one another often depends on covariates. ...
Consider the model Y=m(X)+[epsilon], where m([dot operator])=med(Y[dot operator]) is unknown but smo...
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...
We consider a new approach in quantile regression modeling based on the copula function that defines...
This paper studies the estimation of a class of copula-based semiparametric stationary Markov models...
When facing multivariate covariates, general semiparametric regression techniques come at hand to pr...
When facing multivariate covariates, general semiparametric regression techniques come at hand to pr...
Parametric copulas are shown to be attractive devices for specifying quantile autoregressive models ...
When facing multivariate covariates, general semiparametric regression techniques come at hand to pr...
Parametric copulas are shown to be attractive devices for specifying quantile autoregressive models ...
Parametric copulas are shown to be attractive devices for specifying quantile autoregressive models ...
AbstractThe manner in which two random variables influence one another often depends on covariates. ...
Quantile regression is a field with steadily growing importance in statistical modeling. It is a com...
This is an electronic version of the paper presented at the Annual Conference on Neural Information ...
AbstractThe manner in which two random variables influence one another often depends on covariates. ...
Consider the model Y=m(X)+[epsilon], where m([dot operator])=med(Y[dot operator]) is unknown but smo...