nombre de pages : 29 nombre de tableaux : 2 nombre de figures : 9The instability in the selection of models is a major concern with data sets containing a large number of covariates. This paper deals with variable selection methodology in the case of high-dimensional problems where the response variable can be right censored. We focuse on new stable variable selection methods based on bootstrap for two methodologies: the Cox proportional hazard model and survival trees. As far as the Cox model is concerned, we investigate the bootstrapping applied to two variable selection techniques: the stepwise algorithm based on the AIC criterion and the L1-penalization of Lasso. Regarding survival trees, we review two methodologies: the bootstrap node-...
ABSTRACT. This article is concerned with variable selection methods for the pro-portional hazards re...
Cox proportional hazards model (Cox PH model) is heavily used in survival analysis to assess the imp...
International audienceThe Cox proportional hazards model is the most popular model for the analysis ...
The instability in the selection of models is a major concern with data sets containing a large numb...
As a pivotal tool to build interpretive models, variable selection plays an increasingly important r...
The advancement in data acquiring technology continues to see survival data sets with many covariate...
This dissertation focuses on (1) developing an efficient variable selection method for a class of ge...
AbstractMedical prognostic models can be designed to predict the future course or outcome of disease...
In this thesis, shrinkage and variable selection is used on one of the most famous models in surviva...
Variable selection is fundamental to high-dimensional statistical modeling in diverse fields of scie...
Background When constructing new biomarker or gene signature scores for time-to-event outcomes, t...
National audienceOver the last decades, molecular signatures have become increasingly important in o...
ABSTRACT. This article is concerned with variable selection methods for the pro-portional hazards re...
Cox proportional hazards model (Cox PH model) is heavily used in survival analysis to assess the imp...
International audienceThe Cox proportional hazards model is the most popular model for the analysis ...
The instability in the selection of models is a major concern with data sets containing a large numb...
As a pivotal tool to build interpretive models, variable selection plays an increasingly important r...
The advancement in data acquiring technology continues to see survival data sets with many covariate...
This dissertation focuses on (1) developing an efficient variable selection method for a class of ge...
AbstractMedical prognostic models can be designed to predict the future course or outcome of disease...
In this thesis, shrinkage and variable selection is used on one of the most famous models in surviva...
Variable selection is fundamental to high-dimensional statistical modeling in diverse fields of scie...
Background When constructing new biomarker or gene signature scores for time-to-event outcomes, t...
National audienceOver the last decades, molecular signatures have become increasingly important in o...
ABSTRACT. This article is concerned with variable selection methods for the pro-portional hazards re...
Cox proportional hazards model (Cox PH model) is heavily used in survival analysis to assess the imp...
International audienceThe Cox proportional hazards model is the most popular model for the analysis ...