There is now a large literature on objective Bayesian model selection in the linear model based on the $g$-prior. The methodology has been recently extended to generalized linear models using test-based Bayes factors (TBFs). In this paper we show that TBFs can also be applied to the Cox proportional hazards model. If the goal is to select a single model, then both the maximum {\em a posteriori} and the median probability model can be calculated. For clinical prediction of survival, we shrink the model-specific log hazard ratio estimates with subsequent calculation of the Breslow estimate of the cumulative baseline hazard function. A Bayesian model average can also be employed. We illustrate the proposed methodology with the analysis of s...
The selection of predictors to include is a crucial problem in building a multiple regression model....
Variable selection is fundamental to high-dimensional statistical modeling in diverse fields of scie...
Bayesian model selection poses two main challenges: the specification of parameter priors for all mo...
The advancement in data acquiring technology continues to see survival data sets with many covariate...
ABSTRACT. This article is concerned with variable selection methods for the pro-portional hazards re...
Royston (2014, Stata Journal 14: 738–755) explained how a popular application of the Cox proportiona...
Predictions of disease outcome in prognostic factor models are usually based on one selected model. ...
This article is concerned with variable selection methods for the proportional hazards regression mo...
Survival outcome has been one of the major endpoints for clinical trials; it gives information on th...
Bayesian variable selection becomes more and more important in statistical analyses, in particular w...
The Cox proportional hazards model has been used extensively in medicine over the last 40 years. A p...
Identifying biomarkers with predictive value for disease risk stratification is an important task in...
Abstract. This article is concerned with variable selection methods for the pro-portional hazards re...
Although Cox proportional hazards regression is the default analysis for time to event data, there i...
Title from PDF of title page (University of Missouri--Columbia, viewed on May 21, 2012).The entire t...
The selection of predictors to include is a crucial problem in building a multiple regression model....
Variable selection is fundamental to high-dimensional statistical modeling in diverse fields of scie...
Bayesian model selection poses two main challenges: the specification of parameter priors for all mo...
The advancement in data acquiring technology continues to see survival data sets with many covariate...
ABSTRACT. This article is concerned with variable selection methods for the pro-portional hazards re...
Royston (2014, Stata Journal 14: 738–755) explained how a popular application of the Cox proportiona...
Predictions of disease outcome in prognostic factor models are usually based on one selected model. ...
This article is concerned with variable selection methods for the proportional hazards regression mo...
Survival outcome has been one of the major endpoints for clinical trials; it gives information on th...
Bayesian variable selection becomes more and more important in statistical analyses, in particular w...
The Cox proportional hazards model has been used extensively in medicine over the last 40 years. A p...
Identifying biomarkers with predictive value for disease risk stratification is an important task in...
Abstract. This article is concerned with variable selection methods for the pro-portional hazards re...
Although Cox proportional hazards regression is the default analysis for time to event data, there i...
Title from PDF of title page (University of Missouri--Columbia, viewed on May 21, 2012).The entire t...
The selection of predictors to include is a crucial problem in building a multiple regression model....
Variable selection is fundamental to high-dimensional statistical modeling in diverse fields of scie...
Bayesian model selection poses two main challenges: the specification of parameter priors for all mo...