As a pivotal tool to build interpretive models, variable selection plays an increasingly important role in high-dimensional data analysis. In recent years, variable selection ensembles (VSEs) have gained much interest due to their many advantages. Stability selection (Meinshausen and Bühlmann, 2010), a VSE technique based on subsampling in combination with a base algorithm like lasso, is an effective method to control false discovery rate (FDR) and to improve selection accuracy in linear regression models. By adopting lasso as a base learner, we attempt to extend stability selection to handle variable selection problems in a Cox model. According to our experience, it is crucial to set the regularization region Λ in lasso and the parameter λ...
From the perspective of econometrics, an accurate variable selection method greatly enhances the rel...
This article introduces a novel two-stage variable selection method to solve the common asymmetry pr...
Sparsity or parsimony of statistical models is crucial for their proper interpretations, as in scie...
Estimation of structure, such as in variable selection, graphical modelling or cluster analysis, is ...
nombre de pages : 29 nombre de tableaux : 2 nombre de figures : 9The instability in the selection of...
Penalized regression methods are important when the number p of covariates exceeds the number of sam...
Within the design of a machine learning-based solution for classification or regression problems, va...
International audienceThe Cox proportional hazards model is the most popular model for the analysis ...
The performances of penalized least squares approaches profoundly depend on the selection of the tun...
In this thesis, shrinkage and variable selection is used on one of the most famous models in surviva...
Cox proportional hazards model (Cox PH model) is heavily used in survival analysis to assess the imp...
Cox proportional hazards model (Cox PH model) is heavily used in survival analysis to assess the imp...
Background Modern biotechnologies often result in high-dimensional data sets with many more varia...
The thesis give an overview of survival modelling and inference in Cox-models with high-dimensional ...
In statistics different models are used to emulate real world processes. Variable selection refers t...
From the perspective of econometrics, an accurate variable selection method greatly enhances the rel...
This article introduces a novel two-stage variable selection method to solve the common asymmetry pr...
Sparsity or parsimony of statistical models is crucial for their proper interpretations, as in scie...
Estimation of structure, such as in variable selection, graphical modelling or cluster analysis, is ...
nombre de pages : 29 nombre de tableaux : 2 nombre de figures : 9The instability in the selection of...
Penalized regression methods are important when the number p of covariates exceeds the number of sam...
Within the design of a machine learning-based solution for classification or regression problems, va...
International audienceThe Cox proportional hazards model is the most popular model for the analysis ...
The performances of penalized least squares approaches profoundly depend on the selection of the tun...
In this thesis, shrinkage and variable selection is used on one of the most famous models in surviva...
Cox proportional hazards model (Cox PH model) is heavily used in survival analysis to assess the imp...
Cox proportional hazards model (Cox PH model) is heavily used in survival analysis to assess the imp...
Background Modern biotechnologies often result in high-dimensional data sets with many more varia...
The thesis give an overview of survival modelling and inference in Cox-models with high-dimensional ...
In statistics different models are used to emulate real world processes. Variable selection refers t...
From the perspective of econometrics, an accurate variable selection method greatly enhances the rel...
This article introduces a novel two-stage variable selection method to solve the common asymmetry pr...
Sparsity or parsimony of statistical models is crucial for their proper interpretations, as in scie...