© 2016, The Author(s). We assessed the ability of several penalized regression methods for linear and logistic models to identify outcome-associated predictors and the impact of predictor selection on parameter inference for practical sample sizes. We studied effect estimates obtained directly from penalized methods (Algorithm 1), or by refitting selected predictors with standard regression (Algorithm 2). For linear models, penalized linear regression, elastic net, smoothly clipped absolute deviation (SCAD), least angle regression and LASSO had a low false negative (FN) predictor selection rates but false positive (FP) rates above 20 % for all sample and effect sizes. Partial least squares regression had few FPs but many FNs. Only relaxo ha...
While it is imperative that attempts be made to assess the predictive accuracy of any prediction mod...
Strategies are compared for the development of a linear regression model with stochastic (multivaria...
International audiencePredicting individual risk is needed to target preventive interventions toward...
BACKGROUND: Penalised regression methods are a useful atheoretical approach for both developing pred...
BackgroundPenalised regression methods are a useful atheoretical approach for both developing predic...
Selection of variables and estimation of regression coefficients in datasets with the number of vari...
Objectives When developing a clinical prediction model, penalization techniques are recommended to a...
Since the proposal of the least absolute shrinkage and selection operator (LASSO) (Tibshirani, 1996)...
Objectives When developing a clinical prediction model, penalization techniques are recommended to ...
Background: Penalised regression methods are a useful atheoretical approach for identifying key pred...
International audienceLogistic regression is a standard tool in statistics for binary classification...
International audienceLogistic regression is a standard tool in statistics for binary classification...
International audienceLogistic regression is a standard tool in statistics for binary classification...
The issue of model selection has drawn the attention of both applied and theoretical statisticians f...
Linear regression models are commonly used statistical models for predicting a response from a set o...
While it is imperative that attempts be made to assess the predictive accuracy of any prediction mod...
Strategies are compared for the development of a linear regression model with stochastic (multivaria...
International audiencePredicting individual risk is needed to target preventive interventions toward...
BACKGROUND: Penalised regression methods are a useful atheoretical approach for both developing pred...
BackgroundPenalised regression methods are a useful atheoretical approach for both developing predic...
Selection of variables and estimation of regression coefficients in datasets with the number of vari...
Objectives When developing a clinical prediction model, penalization techniques are recommended to a...
Since the proposal of the least absolute shrinkage and selection operator (LASSO) (Tibshirani, 1996)...
Objectives When developing a clinical prediction model, penalization techniques are recommended to ...
Background: Penalised regression methods are a useful atheoretical approach for identifying key pred...
International audienceLogistic regression is a standard tool in statistics for binary classification...
International audienceLogistic regression is a standard tool in statistics for binary classification...
International audienceLogistic regression is a standard tool in statistics for binary classification...
The issue of model selection has drawn the attention of both applied and theoretical statisticians f...
Linear regression models are commonly used statistical models for predicting a response from a set o...
While it is imperative that attempts be made to assess the predictive accuracy of any prediction mod...
Strategies are compared for the development of a linear regression model with stochastic (multivaria...
International audiencePredicting individual risk is needed to target preventive interventions toward...