In this article, we propose and explore a multivariate logistic regression model for analyzing multiple binary outcomes with incomplete covariate data where auxiliary information is available. The auxiliary data are extraneous to the regression model of interest but predictive of the covariate with missing data. Horton and Laird [N.J. Horton, N.M. Laird, Maximum likelihood analysis of logistic regression models with incomplete covariate data and auxiliary information, Biometrics 57 (2001) 34-42] describe how the auxiliary information can be incorporated into a regression model for a single binary outcome with missing covariates, and hence the efficiency of the regression estimators can be improved. We consider extending the method of [9] to...
• Biomedical research often involves the measurement of multiple outcomes in differ-ent scales (cont...
In this article, we study the estimation of mean response and regression coefficient in semiparametr...
In this thesis, Bayesian semiparametric models for the missing data mechanisms of nonignorably missi...
AbstractIn this article, we propose and explore a multivariate logistic regression model for analyzi...
Logistic regression is one of the most important tools in the analysis of epidemiological and clinic...
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...
Maximum likelihood estimation of regression parameters with incomplete covariate information usually...
Maximum likelihood estimation of regression parameters with incomplete covariate information usually...
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...
[[abstract]]This article considers semiparametric estimation in logistic regression with missing cov...
In this article, two semiparametric approaches are developed for analyzing randomized response data ...
This dissertation addresses regression models with missing covariate data. These methods are shown t...
International audienceLogistic regression is a common classification method in supervised learning. ...
• Biomedical research often involves the measurement of multiple outcomes in differ-ent scales (cont...
In this article, we study the estimation of mean response and regression coefficient in semiparametr...
In this thesis, Bayesian semiparametric models for the missing data mechanisms of nonignorably missi...
AbstractIn this article, we propose and explore a multivariate logistic regression model for analyzi...
Logistic regression is one of the most important tools in the analysis of epidemiological and clinic...
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...
Maximum likelihood estimation of regression parameters with incomplete covariate information usually...
Maximum likelihood estimation of regression parameters with incomplete covariate information usually...
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...
[[abstract]]This article considers semiparametric estimation in logistic regression with missing cov...
In this article, two semiparametric approaches are developed for analyzing randomized response data ...
This dissertation addresses regression models with missing covariate data. These methods are shown t...
International audienceLogistic regression is a common classification method in supervised learning. ...
• Biomedical research often involves the measurement of multiple outcomes in differ-ent scales (cont...
In this article, we study the estimation of mean response and regression coefficient in semiparametr...
In this thesis, Bayesian semiparametric models for the missing data mechanisms of nonignorably missi...