SuperLearner
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Software:20166
swMATH8154CRANSuperLearnerMaRDI QIDQ20166
Super Learner Prediction
Chris Kennedy, Erin Ledell, Mark van der Laan, Eric Polley
Last update: 20 February 2024
Copyright license: GNU General Public License, version 3.0
Software version identifier: 2.0-4, 2.0-6, 2.0-9, 2.0-10, 2.0-15, 2.0-19, 2.0-21, 2.0-22, 2.0-23, 2.0-24, 2.0-25, 2.0-26, 2.0-28.1, 2.0-28, 2.0-29
Source code repository: https://github.com/cran/SuperLearner
Implements the super learner prediction method and contains a library of prediction algorithms to be used in the super learner.
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