The conceptual predictive statistic, Cp, is a widely used criterion for model selection in linear regression. Cp serves as an estimator of a discrepancy, a measure that reflects the disparity between the generating model and a fitted candidate model. This discrepancy, based on scaled squared error loss, is asymmetric: an alternate measure is obtained by reversing the roles of the two models in the definition of the measure. We propose a variant of the Cp statistic based on estimating a symmetrized version of the discrepancy targeted by Cp. We claim that the resulting criterion provides better protection against overfitting than Cp, since the symmetric discrepancy is more sensitive towards detecting overspecification than its asymmetric coun...
One of the most influential findings in the study of recognition memory is that receiver operating c...
<p>Prediction models play an increasingly important role in clinical and shared decision making. In ...
Model selection is of fundamental importance to high dimensional modelling featured in many contempo...
An important statistical application is the problem of determining an appropriate set of input varia...
Model selection criteria often arise by constructing estimators of measures known as expected overal...
A model selection criterion is often formulated by constructing an approx-imately unbiased estimator...
In this paper, we focus on the progress of variant of conceptual predictive (Cp) statistic and we pr...
Model selection criteria often arise by constructing unbiased or approximately unbiased estimators o...
Evaluating the performance of models predicting a binary outcome can be done using a variety of meas...
In linear mixed model selection under ridge regression, we propose the model selection criteria base...
AbstractIt is a common situation in biomedical research that one or more variables are known to be a...
One of the most influential findings in the study of recognition memory is that receiver operating c...
One of the most influential findings in the study of recognition memory is that receiver operating c...
Statistical approaches for estimating treatment effectiveness commonly model the endpoint, or the pr...
One of the most influential findings in the study of recognition memory is that receiver operating c...
One of the most influential findings in the study of recognition memory is that receiver operating c...
<p>Prediction models play an increasingly important role in clinical and shared decision making. In ...
Model selection is of fundamental importance to high dimensional modelling featured in many contempo...
An important statistical application is the problem of determining an appropriate set of input varia...
Model selection criteria often arise by constructing estimators of measures known as expected overal...
A model selection criterion is often formulated by constructing an approx-imately unbiased estimator...
In this paper, we focus on the progress of variant of conceptual predictive (Cp) statistic and we pr...
Model selection criteria often arise by constructing unbiased or approximately unbiased estimators o...
Evaluating the performance of models predicting a binary outcome can be done using a variety of meas...
In linear mixed model selection under ridge regression, we propose the model selection criteria base...
AbstractIt is a common situation in biomedical research that one or more variables are known to be a...
One of the most influential findings in the study of recognition memory is that receiver operating c...
One of the most influential findings in the study of recognition memory is that receiver operating c...
Statistical approaches for estimating treatment effectiveness commonly model the endpoint, or the pr...
One of the most influential findings in the study of recognition memory is that receiver operating c...
One of the most influential findings in the study of recognition memory is that receiver operating c...
<p>Prediction models play an increasingly important role in clinical and shared decision making. In ...
Model selection is of fundamental importance to high dimensional modelling featured in many contempo...