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The Covariance Inflation Criterion for Adaptive Model Selection
Authors:Robert Tibshirani  & Keith Knight
Institution:Stanford University, USA,;University of Toronto, Canada
Abstract:We propose a new criterion for model selection in prediction problems. The covariance inflation criterion adjusts the training error by the average covariance of the predictions and responses, when the prediction rule is applied to permuted versions of the data set. This criterion can be applied to general prediction problems (e.g. regression or classification) and to general prediction rules (e.g. stepwise regression, tree-based models and neural nets). As a by-product we obtain a measure of the effective number of parameters used by an adaptive procedure. We relate the covariance inflation criterion to other model selection procedures and illustrate its use in some regression and classification problems. We also revisit the conditional bootstrap approach to model selection.
Keywords:Adaptive prediction  Bootstrap  Cross-validation  Model selection  Permutation
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