We consider the variable selection problem for a class of statistical models with missing data, including missing covariate and/or response data. We investigate the smoothly clipped absolute deviation penalty (SCAD) and adaptive LASSO and propose a unified model selection and estimation procedure for use in the presence of missing data. We develop a computationally attractive algorithm for simultaneously optimizing the penalized likelihood function and estimating the penalty parameters. Particularly, we propose to use a model selection criterion, called the ICQ statistic, for selecting the penalty parameters. We show that the variable selection procedure based on ICQ automatically and consistently selects the important covariates and leads ...
International audienceLogistic regression is a common classification method in supervised learning. ...
As applied sciences grow by leaps and bounds, semiparametric regression analyses have broad applicat...
We derive explicit formulae for estimation in logistic regression models where some of the covariate...
We consider the variable selection problem for a class of statistical models with missing data, incl...
This dissertation is composed of three papers which address the problem of variable selection for mo...
This dissertation is composed of three papers which address the problem of variable selection for mo...
We consider variable selection in the Cox regression model (Cox, 1975, Biometrika 362, 269–276) with...
We consider variable selection in the Cox regression model (Cox, 1975, Biometrika 362, 269–276) with...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/135979/1/sta4133_am.pdfhttp://deepblue....
In this paper, we develop Bayesian methodology and computational algorithms for variable subset sele...
In this paper, we develop Bayesian methodology and computational algorithms for variable subset sele...
Application of classical model selection methods such as Akaike’s information cri-terion AIC becomes...
Variable selection is a common problem in linear regression.Stepwise methods, such as forward select...
We consider novel methods for the computation of model selection criteria in missing-data problems b...
We consider novel methods for the computation of model selection criteria in missing-data problems b...
International audienceLogistic regression is a common classification method in supervised learning. ...
As applied sciences grow by leaps and bounds, semiparametric regression analyses have broad applicat...
We derive explicit formulae for estimation in logistic regression models where some of the covariate...
We consider the variable selection problem for a class of statistical models with missing data, incl...
This dissertation is composed of three papers which address the problem of variable selection for mo...
This dissertation is composed of three papers which address the problem of variable selection for mo...
We consider variable selection in the Cox regression model (Cox, 1975, Biometrika 362, 269–276) with...
We consider variable selection in the Cox regression model (Cox, 1975, Biometrika 362, 269–276) with...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/135979/1/sta4133_am.pdfhttp://deepblue....
In this paper, we develop Bayesian methodology and computational algorithms for variable subset sele...
In this paper, we develop Bayesian methodology and computational algorithms for variable subset sele...
Application of classical model selection methods such as Akaike’s information cri-terion AIC becomes...
Variable selection is a common problem in linear regression.Stepwise methods, such as forward select...
We consider novel methods for the computation of model selection criteria in missing-data problems b...
We consider novel methods for the computation of model selection criteria in missing-data problems b...
International audienceLogistic regression is a common classification method in supervised learning. ...
As applied sciences grow by leaps and bounds, semiparametric regression analyses have broad applicat...
We derive explicit formulae for estimation in logistic regression models where some of the covariate...