Abstract Background For finite samples with binary outcomes penalized logistic regression such as ridge logistic regression has the potential of achieving smaller mean squared errors (MSE) of coefficients and predictions than maximum likelihood estimation. There is evidence, however, that ridge logistic regression can result in highly variable calibration slopes in small or sparse data situations. Methods In this paper, we elaborate this issue further by performing a comprehensive simulation study, investigating the performance of ridge logistic regression in terms of coefficients and predictions and comparing it to Firth’s correction that has been shown to perform well in low-dimensional settings. In addition to tuned ridge regression wher...
The adverse effects of multicollinearity and unusual observations are seen in logistic regression an...
In this paper we review some existing and propose some new estimators for estimating the ridge param...
The ridge regression model has been consistently demonstrated to be an attractive shrinkage method t...
Abstract Background When developing risk models for binary data with small or sparse data sets, the ...
When developing risk prediction models on datasets with limited sample size, shrinkage methods are r...
Objectives When developing a clinical prediction model, penalization techniques are recommended to ...
Recent minimum sample size formula (Riley et al.) for developing clinical prediction models help ens...
In this study, the techniques of ridge regression model as alternative to the classical ordinary lea...
Estimating and selecting risk factors with extremely low prevalences of exposure for a binary outcom...
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 ...
Objectives When developing a clinical prediction model, penalization techniques are recommended to a...
Recent minimum sample size formula (Riley et al.) for developing clinical prediction models help ens...
Logistic regression analysis may well be used to develop a predictive model for a dichotomous medica...
Ridge regression is regularization or shrinkage method and a common approach in dealing with multico...
The adverse effects of multicollinearity and unusual observations are seen in logistic regression an...
In this paper we review some existing and propose some new estimators for estimating the ridge param...
The ridge regression model has been consistently demonstrated to be an attractive shrinkage method t...
Abstract Background When developing risk models for binary data with small or sparse data sets, the ...
When developing risk prediction models on datasets with limited sample size, shrinkage methods are r...
Objectives When developing a clinical prediction model, penalization techniques are recommended to ...
Recent minimum sample size formula (Riley et al.) for developing clinical prediction models help ens...
In this study, the techniques of ridge regression model as alternative to the classical ordinary lea...
Estimating and selecting risk factors with extremely low prevalences of exposure for a binary outcom...
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 ...
Objectives When developing a clinical prediction model, penalization techniques are recommended to a...
Recent minimum sample size formula (Riley et al.) for developing clinical prediction models help ens...
Logistic regression analysis may well be used to develop a predictive model for a dichotomous medica...
Ridge regression is regularization or shrinkage method and a common approach in dealing with multico...
The adverse effects of multicollinearity and unusual observations are seen in logistic regression an...
In this paper we review some existing and propose some new estimators for estimating the ridge param...
The ridge regression model has been consistently demonstrated to be an attractive shrinkage method t...