Model uncertainty quantification in Cox regression Articles uri icon

authors

publication date

  • September 2023

start page

  • 1726

end page

  • 1736

issue

  • 3

volume

  • 79

International Standard Serial Number (ISSN)

  • 0006-341X

Electronic International Standard Serial Number (EISSN)

  • 1541-0420

abstract

  • We consider covariate selection and the ensuing model uncertainty aspects in the context of Cox regression. The perspective we take is probabilistic, and we handle it within a Bayesian framework. One of the critical elements in variable/model selection is choosing a suitable prior for model parameters. Here, we derive the so-called conventional prior approach and propose a comprehensive implementation that results in an automatic procedure. Our simulation studies and real applications show improvements over existing literature. For the sake of reproducibility but also for its intrinsic interest for practitioners, a web application requiring minimum statistical knowledge implements the proposed approach.

subjects

  • Statistics

keywords

  • bayesian variable selection; conventional prior; fisher information; median model; survival analysis