The Cox model is one of the most widely used semi-parametric models in survival data analysis. For various types of censored data, such as left truncated and right censored data, doubly censored data, bivariate right censored data, bivariate data under univariate censoring, etc., the studies of statistical inferences on the Cox model become very difficultand challenging. Until now little work has been done for the Cox model with these complicated types of censored data. Among existing works, most of them are not likelihood-based and are case-by-case methods, which are not directly applicable to other types of censored data. In this dissertation, we extend the concept of weighted empirical likelihood (Ren, 2001, 2008) from univariate case to...
The term ‘survival analysis’ has been used in a broad sense to describe collection of statistical pr...
[[abstract]]For investigating differences between two treatment groups in medical science, selecting...
AbstractRecent advances in median regression model have made it possible to use this model for analy...
The currently existing estimation methods and goodness-of-fit tests for the Cox model mainly deal wi...
In survival analysis, the Cox model is one of the most widely used tools. However, up to now there h...
In this paper we investigate the empirical likelihood method for Cox regression model when the failu...
In survival analysis, proportional hazards model is the most commonly used and the Cox model is the ...
In survival analysis, the lifetime under study is not always observed. In certain applications, for ...
The Cox regression, a semi-parametric method of survival analysis, is extremely popular in biomedica...
Cox regression is a well-known approach for modeling censored survival data. However, the model has ...
Survival analysis typically deals with censored data. This thesis focuses on interval- censored data...
Cox regression model has an important and glaring place in survival analysis. The key assumption is ...
Cox Proportional Hazard Model is one of the most popular tools used in the study of Survival Analysi...
Cox Proportional Hazard Model is one of the most popular tools used in the study of Survival Analysi...
The term ‘survival analysis’ has been used in a broad sense to describe collection of statistical pr...
The term ‘survival analysis’ has been used in a broad sense to describe collection of statistical pr...
[[abstract]]For investigating differences between two treatment groups in medical science, selecting...
AbstractRecent advances in median regression model have made it possible to use this model for analy...
The currently existing estimation methods and goodness-of-fit tests for the Cox model mainly deal wi...
In survival analysis, the Cox model is one of the most widely used tools. However, up to now there h...
In this paper we investigate the empirical likelihood method for Cox regression model when the failu...
In survival analysis, proportional hazards model is the most commonly used and the Cox model is the ...
In survival analysis, the lifetime under study is not always observed. In certain applications, for ...
The Cox regression, a semi-parametric method of survival analysis, is extremely popular in biomedica...
Cox regression is a well-known approach for modeling censored survival data. However, the model has ...
Survival analysis typically deals with censored data. This thesis focuses on interval- censored data...
Cox regression model has an important and glaring place in survival analysis. The key assumption is ...
Cox Proportional Hazard Model is one of the most popular tools used in the study of Survival Analysi...
Cox Proportional Hazard Model is one of the most popular tools used in the study of Survival Analysi...
The term ‘survival analysis’ has been used in a broad sense to describe collection of statistical pr...
The term ‘survival analysis’ has been used in a broad sense to describe collection of statistical pr...
[[abstract]]For investigating differences between two treatment groups in medical science, selecting...
AbstractRecent advances in median regression model have made it possible to use this model for analy...