BACKGROUND: Clinical prediction models are developed widely across medical disciplines. When predictors in such models are highly collinear, unexpected or spurious predictor-outcome associations may occur, thereby potentially reducing face-validity of the prediction model. Collinearity can be dealt with by exclusion of collinear predictors, but when there is no a priori motivation (besides collinearity) to include or exclude specific predictors, such an approach is arbitrary and possibly inappropriate.METHODS: We compare different methods to address collinearity, including shrinkage, dimensionality reduction, and constrained optimization. The effectiveness of these methods is illustrated via simulations.RESULTS: In the conducted simulations...
Collinearity refers to the non independence of predictor variables, usually in a regression-type ana...
We introduce a new approach to variable selection, called Predictive Correlation Screening, for pred...
This article considers the problem of selecting predictors of time to an event from a high-dimension...
BACKGROUND: Clinical prediction models are developed widely across medical disciplines. When predict...
Collinearity of predictor variables is a severe problem in the least square regression analysis. It ...
Risk prediction models are used to predict a clinical outcome for patients using a set of predictors...
When developing risk prediction models on datasets with limited sample size, shrinkage methods are r...
Objectives: The aim of this study was to quantify the impact of predictor measurement heterogeneity ...
Many prediction methods have been proposed in the literature, but most of them ignore heterogeneity ...
In many biomedical applications, we are more interested in the predicted probability that a numerica...
Machine learning approaches are increasingly suggested as tools to improve prediction of clinical ou...
Regression tends to give very unstable and unreliable regression weights when predictors are highly ...
Prediction models often yield inaccurate predictions for new individuals. Large data sets from poole...
Prediction models often yield inaccurate predictions for new individuals. Large data sets from poole...
In many application areas, predictive models are used to support or make important decisions. There ...
Collinearity refers to the non independence of predictor variables, usually in a regression-type ana...
We introduce a new approach to variable selection, called Predictive Correlation Screening, for pred...
This article considers the problem of selecting predictors of time to an event from a high-dimension...
BACKGROUND: Clinical prediction models are developed widely across medical disciplines. When predict...
Collinearity of predictor variables is a severe problem in the least square regression analysis. It ...
Risk prediction models are used to predict a clinical outcome for patients using a set of predictors...
When developing risk prediction models on datasets with limited sample size, shrinkage methods are r...
Objectives: The aim of this study was to quantify the impact of predictor measurement heterogeneity ...
Many prediction methods have been proposed in the literature, but most of them ignore heterogeneity ...
In many biomedical applications, we are more interested in the predicted probability that a numerica...
Machine learning approaches are increasingly suggested as tools to improve prediction of clinical ou...
Regression tends to give very unstable and unreliable regression weights when predictors are highly ...
Prediction models often yield inaccurate predictions for new individuals. Large data sets from poole...
Prediction models often yield inaccurate predictions for new individuals. Large data sets from poole...
In many application areas, predictive models are used to support or make important decisions. There ...
Collinearity refers to the non independence of predictor variables, usually in a regression-type ana...
We introduce a new approach to variable selection, called Predictive Correlation Screening, for pred...
This article considers the problem of selecting predictors of time to an event from a high-dimension...