info:eu-repo/semantics/article
Review of bayesian analysis in additive hazards model
Date
2019-07Registration in:
Alvarez, Enrique Ernesto; Riddick, Maximiliano Luis; Review of bayesian analysis in additive hazards model; Asian Journal of Probability and Statistics; Asian Journal of Probability and Statistics; 4; 2; 7-2019; 1-14
2582-0230
CONICET Digital
CONICET
Author
Alvarez, Enrique Ernesto
Riddick, Maximiliano Luis
Abstract
In Survival Analysis, the focus of interest is a time $T^*$ until the occurrence of some event. A set of explanatory variables (denoted by a vector $Z$) is considered to analyze if there is a relationship between any of them and $T^*$. Accordingly, the ``hazard function´´ is defined: [ lambda(t,z) := lim_{Delta downarrow 0} rac{P[Tleq t+ Delta ert T >t,Z=z]}{Delta} .] Several models are defined based on this, as is the case of the additive model (among others). Bayesian techniques allow to incorporate previous knowledge or presumption information about the parameters into the model. This area grows extensively since the computationally techniques increase, giving rise to powerful Markov Chain Monte Carlo (MCMC) methods, which allow to generate random samples from the desired distributions. The purpose of this article is to offer a summary of the research developed in Bayesian techniques to approach the additive hazard models.