This paper addresses the semiparametric estimation of the regression function in a situation where the response variable is right-censored and the covariate(s) is completely observed. We present a new copula-based method to estimate the regression function. The key concept presented in this manuscript is to write the regression function in terms of the copula density and marginal distributions. We suppose a parametric model for the copula density with unknown parameter(s), and we estimate the marginal distributions of the response and the covariate(s) by the Kaplan–Meier estimator and the empirical distribution, respectively. We establish the asymptotic properties of our estimator and extend it to the multivariate case. The proposed method ...
Bivariate survival outcomes arise frequently in applied studies where the occurrence of two events o...
In this thesis, we develop inference procedures for copula-based models of bivariate dependence. We ...
In this article, we investigate the dependent relationship between two failure time variables which ...
In many studies in medicine, economics, demography, sociology, education, among others, one is often...
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...
We investigate a new approach to estimating a regression function based on copulas. The main idea be...
Let (X, Y ) be a random vector, where Y denotes the variable of interest possibly subject to random ...
© 2017 EcoSta Econometrics and Statistics A common assumption when working with randomly right censo...
Many models of semiparametric multivariate survival functions are characterized by nonparametric mar...
In multivariate survival analyses, understanding and quantifying the association between survival ti...
We provide ways to test the fit of a parametric copula family for bivariate censored data with or wi...
This paper concerns the dependence structure of a random pair (Y1,Y2) conditionally upon a covariate...
This article proposes an approach to estimate and make inference on the parameters of copula link-ba...
Many multivariate models have been proposed and developed to model high dimensional data when the di...
Bivariate survival outcomes arise frequently in applied studies where the occurrence of two events o...
In this thesis, we develop inference procedures for copula-based models of bivariate dependence. We ...
In this article, we investigate the dependent relationship between two failure time variables which ...
In many studies in medicine, economics, demography, sociology, education, among others, one is often...
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...
We investigate a new approach to estimating a regression function based on copulas. The main idea be...
Let (X, Y ) be a random vector, where Y denotes the variable of interest possibly subject to random ...
© 2017 EcoSta Econometrics and Statistics A common assumption when working with randomly right censo...
Many models of semiparametric multivariate survival functions are characterized by nonparametric mar...
In multivariate survival analyses, understanding and quantifying the association between survival ti...
We provide ways to test the fit of a parametric copula family for bivariate censored data with or wi...
This paper concerns the dependence structure of a random pair (Y1,Y2) conditionally upon a covariate...
This article proposes an approach to estimate and make inference on the parameters of copula link-ba...
Many multivariate models have been proposed and developed to model high dimensional data when the di...
Bivariate survival outcomes arise frequently in applied studies where the occurrence of two events o...
In this thesis, we develop inference procedures for copula-based models of bivariate dependence. We ...
In this article, we investigate the dependent relationship between two failure time variables which ...