Frailty models with a non-parametric baseline hazard are widely used for the analysis of survival data. However, their maximum likelihood estimators can be substantially biased in finite samples, because the number of nuisance parameters associated with the baseline hazard increases with the sample size. The penalized partial likelihood based on a first-order Laplace approximation still has non-negligible bias. However, the second-order Laplace approximation to a modified marginal likelihood for a bias reduction is infeasible because of the presence of too many complicated terms. In this article, we find adequate modifications of these likelihood-based methods by using the hierarchical likelihood. Copyright (c) 2010 Board of the Foundation ...
Frailty models are getting more and more popular to account for overdispersion and/or clustering in ...
Correlated survival times can be modelled by introducing a random effect, or frailty component, into...
We propose a likelihood function endowed with a penalization that reduces the bias of the maximum li...
Frailty models are useful for measuring unobserved heterogeneity in risk of failures across clusters...
This study compared partial likelihood (PL) and penalized partial likelihood (PPL) estimators in non...
The frailty model is a random effect survival model, which allows for unobserved heterogeneity or fo...
<div><p>Variable selection methods using a penalized likelihood have been widely studied in various ...
Variable selection methods using a penalized likelihood have been widely studied in various statisti...
The shared frailty models allow for unobserved heterogeneity or for statistical dependence between o...
Os métodos de estimação para modelos de fragilidade vêm sendo bastante discutidos na literatura esta...
A key assumption of the popular Cox model is that the observations in the study are statistically in...
This book provides a groundbreaking introduction to the likelihood inference for correlated survival...
A marginal likelihood approach is proposed for estimating the parameters in a frailty model using cl...
Frailty mixture survival models are statistical models which allow for a cured fraction and frailty....
Frailty models are often the model of choice for heterogeneous survival data. A frailty model contai...
Frailty models are getting more and more popular to account for overdispersion and/or clustering in ...
Correlated survival times can be modelled by introducing a random effect, or frailty component, into...
We propose a likelihood function endowed with a penalization that reduces the bias of the maximum li...
Frailty models are useful for measuring unobserved heterogeneity in risk of failures across clusters...
This study compared partial likelihood (PL) and penalized partial likelihood (PPL) estimators in non...
The frailty model is a random effect survival model, which allows for unobserved heterogeneity or fo...
<div><p>Variable selection methods using a penalized likelihood have been widely studied in various ...
Variable selection methods using a penalized likelihood have been widely studied in various statisti...
The shared frailty models allow for unobserved heterogeneity or for statistical dependence between o...
Os métodos de estimação para modelos de fragilidade vêm sendo bastante discutidos na literatura esta...
A key assumption of the popular Cox model is that the observations in the study are statistically in...
This book provides a groundbreaking introduction to the likelihood inference for correlated survival...
A marginal likelihood approach is proposed for estimating the parameters in a frailty model using cl...
Frailty mixture survival models are statistical models which allow for a cured fraction and frailty....
Frailty models are often the model of choice for heterogeneous survival data. A frailty model contai...
Frailty models are getting more and more popular to account for overdispersion and/or clustering in ...
Correlated survival times can be modelled by introducing a random effect, or frailty component, into...
We propose a likelihood function endowed with a penalization that reduces the bias of the maximum li...