AbstractWe propose a random censorship model which permits uncertainty in the cause of death assessments for a subset of the subjects in a survival experiment. A nonparametric maximum likelihood approach and a “self-consistency” approach are considered. The solution sets corresponding to both approaches are found. They are infinite and identical. Only some of the solutions are consistent; i.e., the MLEs and self-consistent estimators are not consistent in general. Two estimates are thus proposed and their asymptotic properties are studied. It is shown that both estimates are strongly consistent and converge to Gaussian processes. The covariance structures of these Gaussian processes are derived
This dissertation extends the results of Berliner and Hill (1988) in several directions, including a...
We present an application of nonparametric estimation of survival in the presence of left-truncated ...
The classical random censorship model assumes that we follow an individual continuously up to the ti...
In the past decade applications of the statistical methods for survival data analysis have been exte...
AbstractThis paper deals with estimation of life expectancy used in survival analysis and competing ...
We study an estimator of the survival function under the random censoring model. Bahadur-type repres...
The thesis studies change points in absolute time for censored survival data with some contributions...
Hazard function estimation is an important part of survival analysis. Interest often centers on esti...
AbstractIn this paper we consider a model for dependent censoring and derive a consistent asymptotic...
A frequent problem that appears in practical survival data analysis is censoring. A censored observa...
In survival analysis it often happens that some subjects under study do not experience the event of ...
In carcinogenicity experiments with animals where the tumor is not palpable it is common to observe ...
This work concerns some problems in the area of survival analysis that arise in real clinical or epi...
In this work we study the effect of several covariates X on a censored response variable T with unkn...
With the booming of big complex data, various Statistical methods and Data Science techniques have b...
This dissertation extends the results of Berliner and Hill (1988) in several directions, including a...
We present an application of nonparametric estimation of survival in the presence of left-truncated ...
The classical random censorship model assumes that we follow an individual continuously up to the ti...
In the past decade applications of the statistical methods for survival data analysis have been exte...
AbstractThis paper deals with estimation of life expectancy used in survival analysis and competing ...
We study an estimator of the survival function under the random censoring model. Bahadur-type repres...
The thesis studies change points in absolute time for censored survival data with some contributions...
Hazard function estimation is an important part of survival analysis. Interest often centers on esti...
AbstractIn this paper we consider a model for dependent censoring and derive a consistent asymptotic...
A frequent problem that appears in practical survival data analysis is censoring. A censored observa...
In survival analysis it often happens that some subjects under study do not experience the event of ...
In carcinogenicity experiments with animals where the tumor is not palpable it is common to observe ...
This work concerns some problems in the area of survival analysis that arise in real clinical or epi...
In this work we study the effect of several covariates X on a censored response variable T with unkn...
With the booming of big complex data, various Statistical methods and Data Science techniques have b...
This dissertation extends the results of Berliner and Hill (1988) in several directions, including a...
We present an application of nonparametric estimation of survival in the presence of left-truncated ...
The classical random censorship model assumes that we follow an individual continuously up to the ti...