In this paper a copula-graphic estimator is proposed for censored survival data. It is assumed that there is some dependent censoring acting on the variable of interest, which may come from an existing competing risk. Furthermore, the full process is independently censored by some administrative censoring time. The dependent censoring is modeled through an Archimedean copula function, which is supposed to be known. An asymptotic representation of the estimator as a sum of independent and identically distributed random variables is obtained and, consequently, a central limit theorem is established. We investigate the finite sample performance of the estimator through simulations. A real data illustration is included.
Let (X, Y ) be a random vector, where Y denotes the variable of interest possibly subject to random ...
International audienceRivest & Wells (2001) proposed estimators of the marginal survival functions i...
Let (X, Y) be a random vector, where Y denotes the variable of interest possibly subject to random r...
AbstractThe product limit estimator is arguably the most popular method of estimating survival proba...
© 2017 EcoSta Econometrics and Statistics A common assumption when working with randomly right censo...
A common assumption when working with randomly right censored data, is the independence between the ...
Most existing copula models for dependent censoring in the literature assume that the parameter defi...
When time to death and time to censoring are associated one may be appreciably misled when the margi...
Bivariate survival outcomes arise frequently in applied studies where the occurrence of two events o...
Bivariate survival outcomes arise frequently in applied studies where the occurrence of two events o...
In many studies in medicine, economics, demography, sociology, education, among others, one is often...
This thesis focuses on the problem of survival analysis of data subject to generalized censoring by ...
We provide the identifiability conditions for the covariate effects modeling of bivariate survival d...
In this dissertation we solve the nonidentifiability problem of Archimedean copula models based on d...
Generalized copula-graphic estimator with left-truncated and right-censored data Jacobo de Uña-Álvar...
Let (X, Y ) be a random vector, where Y denotes the variable of interest possibly subject to random ...
International audienceRivest & Wells (2001) proposed estimators of the marginal survival functions i...
Let (X, Y) be a random vector, where Y denotes the variable of interest possibly subject to random r...
AbstractThe product limit estimator is arguably the most popular method of estimating survival proba...
© 2017 EcoSta Econometrics and Statistics A common assumption when working with randomly right censo...
A common assumption when working with randomly right censored data, is the independence between the ...
Most existing copula models for dependent censoring in the literature assume that the parameter defi...
When time to death and time to censoring are associated one may be appreciably misled when the margi...
Bivariate survival outcomes arise frequently in applied studies where the occurrence of two events o...
Bivariate survival outcomes arise frequently in applied studies where the occurrence of two events o...
In many studies in medicine, economics, demography, sociology, education, among others, one is often...
This thesis focuses on the problem of survival analysis of data subject to generalized censoring by ...
We provide the identifiability conditions for the covariate effects modeling of bivariate survival d...
In this dissertation we solve the nonidentifiability problem of Archimedean copula models based on d...
Generalized copula-graphic estimator with left-truncated and right-censored data Jacobo de Uña-Álvar...
Let (X, Y ) be a random vector, where Y denotes the variable of interest possibly subject to random ...
International audienceRivest & Wells (2001) proposed estimators of the marginal survival functions i...
Let (X, Y) be a random vector, where Y denotes the variable of interest possibly subject to random r...