Litcius/Paper detail

Confidence intervals for the random forest generalization error

Paulo C. Marques F.

2022Pattern Recognition Letters15 citationsDOIOpen Access PDF

Abstract

We show that the byproducts of the standard training process of a random forest yield not only the well known and almost computationally free out-of-bag point estimate of the model generalization error, but also open a direct path to compute confidence intervals for the generalization error which avoids processes of data splitting and model retraining. Besides the low computational cost involved in their construction, these confidence intervals are shown through simulations to have good coverage and appropriate shrinking rate of their width in terms of the training sample size.

Topics & Concepts

GeneralizationConfidence intervalStatisticsGeneralization errorMathematicsSample size determinationRandom forestStandard errorPoint (geometry)Path (computing)AlgorithmPoint processComputer scienceApplied mathematicsArtificial intelligenceMathematical analysisGeometryArtificial neural networkProgramming languageNeural Networks and ApplicationsGenetic and phenotypic traits in livestockGaussian Processes and Bayesian Inference