Joseph G. IbrahimMing‐Hui ChenSteven N. MacEachern
Abstract The authors consider the problem of Bayesian variable selection for proportional hazards regression models with right censored data. They propose a semi‐parametric approach in which a nonparametric prior is specified for the baseline hazard rate and a fully parametric prior is specified for the regression coefficients. For the baseline hazard, they use a discrete gamma process prior, and for the regression coefficients and the model space, they propose a semi‐automatic parametric informative prior specification that focuses on the observables rather than the parameters. To implement the methodology, they propose a Markov chain Monte Carlo method to compute the posterior model probabilities. Examples using simulated and real data are given to demonstrate the methodology.
Kyeong Eun LeeYongku KimRonghui Xu