Bayesian nonparametric inferential procedures based on Markov chain Monte Carlo marginal methods typically yield point estimates in the form of posterior expectations. Though very useful and easy to implement in a variety of statistical problems, these methods may suffer from some limitations if used to estimate non-linear functionals of the posterior distribution. The main goal is to develop a novel methodology that extends a well-established marginal procedure designed for hazard mixture models, in order to draw approximate inference on survival functions that is not limited to the posterior mean but includes, as remarkable examples, credible intervals and median survival time. The proposed approach relies on a characterization of the pos...
The nonparametric part of a semiparametric regression model usually involves prior specification for...
[[abstract]]Bayesian survival analysis of right-censored survival data is studied using priors on Be...
In this paper we review a nonparametric Bayesian estimation technique in mixture of distributions em...
Bayesian nonparametric inferential procedures based on Markov chain Monte Carlo marginal methods typ...
Bayesian nonparametric marginal methods are very popular since they lead to fairly easy implementati...
International audienceBayesian nonparametric marginal methods are very popular since they lead to fa...
Standard Bayesian methods for time-to-event data rely on Markov chain Monte Carlo (MCMC) to sample f...
This paper is to study nonparametric Bayesian estimation for a proportional hazards model with "long...
This work deals with Bayesian inference for Cox's proportional hazards model. After a brief introduc...
An important issue in survival analysis is the investigation and the modeling of hazard rates. Withi...
In survival analysis interest lies in modeling data that describe the time to a particular event. In...
<p>We study objective Bayesian inference for linear regression models with residual errors distribut...
This article introduces a new Bayesian approach to the analysis of right-censored survival data. The...
In statistics, the proportional hazards model (PHM) is one of a class of survival models. This model...
Bayesian methods for flexible time-to-event models usually rely on the theory of Markov chain Monte ...
The nonparametric part of a semiparametric regression model usually involves prior specification for...
[[abstract]]Bayesian survival analysis of right-censored survival data is studied using priors on Be...
In this paper we review a nonparametric Bayesian estimation technique in mixture of distributions em...
Bayesian nonparametric inferential procedures based on Markov chain Monte Carlo marginal methods typ...
Bayesian nonparametric marginal methods are very popular since they lead to fairly easy implementati...
International audienceBayesian nonparametric marginal methods are very popular since they lead to fa...
Standard Bayesian methods for time-to-event data rely on Markov chain Monte Carlo (MCMC) to sample f...
This paper is to study nonparametric Bayesian estimation for a proportional hazards model with "long...
This work deals with Bayesian inference for Cox's proportional hazards model. After a brief introduc...
An important issue in survival analysis is the investigation and the modeling of hazard rates. Withi...
In survival analysis interest lies in modeling data that describe the time to a particular event. In...
<p>We study objective Bayesian inference for linear regression models with residual errors distribut...
This article introduces a new Bayesian approach to the analysis of right-censored survival data. The...
In statistics, the proportional hazards model (PHM) is one of a class of survival models. This model...
Bayesian methods for flexible time-to-event models usually rely on the theory of Markov chain Monte ...
The nonparametric part of a semiparametric regression model usually involves prior specification for...
[[abstract]]Bayesian survival analysis of right-censored survival data is studied using priors on Be...
In this paper we review a nonparametric Bayesian estimation technique in mixture of distributions em...