The problem of non-parametric estimation for the distribution function governing the time to occurrence of a recurrent event in the presence of censoring is considered. We derive Nelson-Aalen and Kaplan-Meier-type estimators for the distribution function, and establish their respective finite-sample and asymptotic properties. We allow for random observation periods for each subject under study and explicitly account for the informative sum-quota nature of the data accrual scheme. These allowances complicate technical matters considerably and in particular invalidate the direct use of Martingale methods. Consistency and weak convergence of our estimators are obtained by extending an approach due to Sellke (1988), who considered a single rene...
Nonparametric Estimation from a censored Markov Renewal Process Observed Over a Long Period of Tim
In this article we study a class of semiparametric transformation models with random effects for the...
Recurrent event data and panel count data are often encountered in longitudinal follow-up studies. T...
We consider a study which monitors the occurrences of a recurrent event for n subjects or units. Rec...
We consider a study which monitors the occurrence of a recurrent event for n subjects or units. Of i...
This paper considers statistical models in which two different types of events, such as the diagnosi...
This thesis deals with competing risks and recurrent events. In the competing risks model, the inter...
Recurrent event data are commonly encountered in health-related longitudinal studies. In this paper ...
Dependent censoring occurs in longitudinal studies of recurrent events when the censoring time depen...
Consider a recurrent event data where frailty models are used to account for correlations among the ...
Two major challenges arise in regression analyses of recurrent event data: first, popular existing m...
In reliability or medical studies, we may only observe each ongoing renewal process for a certain pe...
We consider a biomedical study which monitors the occurrences of a recurrent event for n subjects ov...
Time to occurrence of an event in a recurrent event data setting could be affected by many factors s...
Recurrent event data are frequently encountered in studies with longitudinal designs. Let the recurr...
Nonparametric Estimation from a censored Markov Renewal Process Observed Over a Long Period of Tim
In this article we study a class of semiparametric transformation models with random effects for the...
Recurrent event data and panel count data are often encountered in longitudinal follow-up studies. T...
We consider a study which monitors the occurrences of a recurrent event for n subjects or units. Rec...
We consider a study which monitors the occurrence of a recurrent event for n subjects or units. Of i...
This paper considers statistical models in which two different types of events, such as the diagnosi...
This thesis deals with competing risks and recurrent events. In the competing risks model, the inter...
Recurrent event data are commonly encountered in health-related longitudinal studies. In this paper ...
Dependent censoring occurs in longitudinal studies of recurrent events when the censoring time depen...
Consider a recurrent event data where frailty models are used to account for correlations among the ...
Two major challenges arise in regression analyses of recurrent event data: first, popular existing m...
In reliability or medical studies, we may only observe each ongoing renewal process for a certain pe...
We consider a biomedical study which monitors the occurrences of a recurrent event for n subjects ov...
Time to occurrence of an event in a recurrent event data setting could be affected by many factors s...
Recurrent event data are frequently encountered in studies with longitudinal designs. Let the recurr...
Nonparametric Estimation from a censored Markov Renewal Process Observed Over a Long Period of Tim
In this article we study a class of semiparametric transformation models with random effects for the...
Recurrent event data and panel count data are often encountered in longitudinal follow-up studies. T...