[[abstract]]Errors in measurement frequently occur in observing responses. If case–control data are based on certain reported responses, which may not be the true responses, then we have contaminated case–control data. In this paper, we first show that the ordinary logistic regression analysis based on contaminated case–control data can lead to very serious biased conclusions. This can be concluded from the results of a theoretical argument, one example, and two simulation studies. We next derive the semiparametric maximum likelihood estimate (MLE) of the risk parameter of a logistic regression model when there is a validation subsample. The asymptotic normality of the semiparametric MLE will be shown along with consistent estimate of asymp...
In this paper robustness properties of the maximum likelihood estimator (MLE) and several robust est...
Assessment of the quality of the logistic regression model is central to the conclusion. Application...
Logistic regression is a sophisticated statistical tool for data analysis in both control experiment...
Abstract: We consider the estimation problem of a logistic regression model. We assume the response ...
[[abstract]]A new test is proposed for testing the validity of the logistic regression model based o...
AbstractIn logistic case–control studies, Prentice and Pyke (Biometrika 66 (1979) 403–411) showed th...
An important problem in logistic regression modeling is the existence of the maximum likelihood esti...
Consider a set of categorical variables P where at least one, denoted by Y, is binary. The log-linea...
In epidemiologic research, logistic regression is often used to estimate the odds of some outcome of...
Consider a set of categorical variables P where at least one, denoted by Y, is binary. The log-linea...
A criterion for choosing an estimator in a family of semi-parametric estimators from incomplete data...
Likelihood-based inference of odds ratios in logistic regression models is problematic for small sam...
This paper investigates the confidence intervals of R2 MAD, the coefficient of determination based o...
A common goal in environmental epidemiologic studies is to undertake logistic regression modeling to...
The extensive use of logistic regression models in analytical epidemiology as well as in randomized ...
In this paper robustness properties of the maximum likelihood estimator (MLE) and several robust est...
Assessment of the quality of the logistic regression model is central to the conclusion. Application...
Logistic regression is a sophisticated statistical tool for data analysis in both control experiment...
Abstract: We consider the estimation problem of a logistic regression model. We assume the response ...
[[abstract]]A new test is proposed for testing the validity of the logistic regression model based o...
AbstractIn logistic case–control studies, Prentice and Pyke (Biometrika 66 (1979) 403–411) showed th...
An important problem in logistic regression modeling is the existence of the maximum likelihood esti...
Consider a set of categorical variables P where at least one, denoted by Y, is binary. The log-linea...
In epidemiologic research, logistic regression is often used to estimate the odds of some outcome of...
Consider a set of categorical variables P where at least one, denoted by Y, is binary. The log-linea...
A criterion for choosing an estimator in a family of semi-parametric estimators from incomplete data...
Likelihood-based inference of odds ratios in logistic regression models is problematic for small sam...
This paper investigates the confidence intervals of R2 MAD, the coefficient of determination based o...
A common goal in environmental epidemiologic studies is to undertake logistic regression modeling to...
The extensive use of logistic regression models in analytical epidemiology as well as in randomized ...
In this paper robustness properties of the maximum likelihood estimator (MLE) and several robust est...
Assessment of the quality of the logistic regression model is central to the conclusion. Application...
Logistic regression is a sophisticated statistical tool for data analysis in both control experiment...