Abstract Background When developing risk models for binary data with small or sparse data sets, the standard maximum likelihood estimation (MLE) based logistic regression faces several problems including biased or infinite estimate of the regression coefficient and frequent convergence failure of the likelihood due to separation. The problem of separation occurs commonly even if sample size is large but there is sufficient number of strong predictors. In the presence of separation, even if one develops the model, it produces overfitted model with poor predictive performance. Firth-and logF-type penalized regression methods are popular alternative to MLE, particularly for solving separation-problem. Despite the attractive advantages, their u...
Likelihood-based inference of odds ratios in logistic regression models is problematic for small sam...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...
Estimating and selecting risk factors with extremely low prevalences of exposure for a binary outcom...
The impact of sparse data conditions was examined among one or more predictor variables in logistic ...
Estimating and selecting risk factors with extremely low prevalences of exposure for a binary outcom...
Recently, penalized regression methods have attracted much attention in the statistical literature. ...
Abstract Background For finite samples with binary outcomes penalized logistic regression such as ri...
Risk prediction models are used to predict a clinical outcome for patients using a set of predictors...
Abstract This paper focuses on inferential tools in the logistic regression model fitted by the Firt...
International audiencePredicting individual risk is needed to target preventive interventions toward...
This paper focuses on interval estimation in logistic regression models fitted through the Firth pen...
Logistic Regression (LR), LASSO regression, and RIDGE regression are standard classification techniq...
Binary logistic regression is one of the most frequently applied statistical approaches for developi...
Binary logistic regression is one of the most frequently applied statistical approaches for developi...
Likelihood-based inference of odds ratios in logistic regression models is problematic for small sam...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...
Estimating and selecting risk factors with extremely low prevalences of exposure for a binary outcom...
The impact of sparse data conditions was examined among one or more predictor variables in logistic ...
Estimating and selecting risk factors with extremely low prevalences of exposure for a binary outcom...
Recently, penalized regression methods have attracted much attention in the statistical literature. ...
Abstract Background For finite samples with binary outcomes penalized logistic regression such as ri...
Risk prediction models are used to predict a clinical outcome for patients using a set of predictors...
Abstract This paper focuses on inferential tools in the logistic regression model fitted by the Firt...
International audiencePredicting individual risk is needed to target preventive interventions toward...
This paper focuses on interval estimation in logistic regression models fitted through the Firth pen...
Logistic Regression (LR), LASSO regression, and RIDGE regression are standard classification techniq...
Binary logistic regression is one of the most frequently applied statistical approaches for developi...
Binary logistic regression is one of the most frequently applied statistical approaches for developi...
Likelihood-based inference of odds ratios in logistic regression models is problematic for small sam...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...
Logistic regression is a technique that uses statistics to develop a prediction model on any occurre...