82 pages, 6 figures, 2 tablesPiecewise constant priors are routinely used in the Bayesian Cox proportional hazards model for survival analysis. Despite its popularity, large sample properties of this Bayesian method are not yet well understood. This work provides a unified theory for posterior distributions in this setting, not requiring the priors to be conjugate. We first derive contraction rate results for wide classes of histogram priors on the unknown hazard function and prove asymptotic normality of linear functionals of the posterior hazard in the form of Bernstein--von Mises theorems. Second, using recently developed multiscale techniques, we derive functional limiting results for the cumulative hazard and survival function. Frequen...
We present a novel Bayesian nonparametric model for regression in survival analysis. Our model build...
Abstract: The research on biomarkers has been limited in its effectiveness because biomarker levels ...
In this paper, we carry out an in-depth theoretical investigation of Bayesian inference for the Cox ...
82 pages, 6 figures, 2 tablesPiecewise constant priors are routinely used in the Bayesian Cox propor...
SUMMARY. In studying the relationship between an ordered categorical predictor and an event time, it...
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...
[[abstract]]Bayesian survival analysis of right-censored survival data is studied using priors on Be...
The proportional hazards model was proposed by Cox (1972, 1975), and the theoretical properties of i...
Standard Bayesian methods for time-to-event data rely on Markov chain Monte Carlo (MCMC) to sample f...
In studying the relationship between an ordered categorical predictor and an event time, it is stand...
In statistics, the proportional hazards model (PHM) is one of a class of survival models. This model...
Although Cox proportional hazards regression is the default analysis for time to event data, there i...
There is now a large literature on objective Bayesian model selection in the linear model based on t...
We study objective Bayesian inference for linear regression models with residual errors distributed ...
We present a novel Bayesian nonparametric model for regression in survival analysis. Our model build...
Abstract: The research on biomarkers has been limited in its effectiveness because biomarker levels ...
In this paper, we carry out an in-depth theoretical investigation of Bayesian inference for the Cox ...
82 pages, 6 figures, 2 tablesPiecewise constant priors are routinely used in the Bayesian Cox propor...
SUMMARY. In studying the relationship between an ordered categorical predictor and an event time, it...
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...
[[abstract]]Bayesian survival analysis of right-censored survival data is studied using priors on Be...
The proportional hazards model was proposed by Cox (1972, 1975), and the theoretical properties of i...
Standard Bayesian methods for time-to-event data rely on Markov chain Monte Carlo (MCMC) to sample f...
In studying the relationship between an ordered categorical predictor and an event time, it is stand...
In statistics, the proportional hazards model (PHM) is one of a class of survival models. This model...
Although Cox proportional hazards regression is the default analysis for time to event data, there i...
There is now a large literature on objective Bayesian model selection in the linear model based on t...
We study objective Bayesian inference for linear regression models with residual errors distributed ...
We present a novel Bayesian nonparametric model for regression in survival analysis. Our model build...
Abstract: The research on biomarkers has been limited in its effectiveness because biomarker levels ...
In this paper, we carry out an in-depth theoretical investigation of Bayesian inference for the Cox ...