We derive explicit formulae for estimation in logistic regression models where some of the covariates are missing. Our approach allows for modeling the distribution of the missing covariates either as a multivariate normal or multivariate t-distribution. A main advantage of this method is that it is fast and does not require the use of iterative procedures. A model selection method is derived which allows to choose amongst these distributions. In addition we consider versions of AIC that are based on the EM algorithm and on multiple imputation methods that have a wide applicability to model selection in likelihood models in general.status: publishe
Missing covariate data often arise in various settings, including surveys, clinical trials, epidemio...
Maximum likelihood estimation of regression parameters with incomplete covariate information usually...
In this article, we propose and explore a multivariate logistic regression model for analyzing multi...
We derive explicit formulae for estimation in logistic regression models where some of the covariate...
We derive explicit formulae for estimation in logistic regression models where some of the covariate...
We derive explicit formulae for estimation in logistic regression models where some of the covariate...
We derive explicit formulae for estimation in logistic regression models where some of the covariate...
This research deals with logistic regression models under the pres-ence of missing covariates on som...
International audienceLogistic regression is a common classification method in supervised learning. ...
International audienceLogistic regression is a common classification method in supervised learning. ...
International audienceLogistic regression is a common classification method in supervised learning. ...
International audienceLogistic regression is a common classification method in supervised learning. ...
[[abstract]]This article considers semiparametric estimation in logistic regression with missing cov...
International audienceLogistic regression is a common classification method in supervised learning. ...
Missing covariate data often arise in various settings, including surveys, clinical trials, epidemio...
Missing covariate data often arise in various settings, including surveys, clinical trials, epidemio...
Maximum likelihood estimation of regression parameters with incomplete covariate information usually...
In this article, we propose and explore a multivariate logistic regression model for analyzing multi...
We derive explicit formulae for estimation in logistic regression models where some of the covariate...
We derive explicit formulae for estimation in logistic regression models where some of the covariate...
We derive explicit formulae for estimation in logistic regression models where some of the covariate...
We derive explicit formulae for estimation in logistic regression models where some of the covariate...
This research deals with logistic regression models under the pres-ence of missing covariates on som...
International audienceLogistic regression is a common classification method in supervised learning. ...
International audienceLogistic regression is a common classification method in supervised learning. ...
International audienceLogistic regression is a common classification method in supervised learning. ...
International audienceLogistic regression is a common classification method in supervised learning. ...
[[abstract]]This article considers semiparametric estimation in logistic regression with missing cov...
International audienceLogistic regression is a common classification method in supervised learning. ...
Missing covariate data often arise in various settings, including surveys, clinical trials, epidemio...
Missing covariate data often arise in various settings, including surveys, clinical trials, epidemio...
Maximum likelihood estimation of regression parameters with incomplete covariate information usually...
In this article, we propose and explore a multivariate logistic regression model for analyzing multi...