L0Learn: A Scalable Package for Sparse Learning using L0 Regularization
Hazimeh, Hussein, Mazumder, Rahul, Nonet, Tim
We introduce L0Learn: an open-source package for sparse regression and classification using L0 regularization. L0Learn implements scalable, approximate algorithms, based on coordinate descent and local combinatorial optimization. The package is built using C++ and has a user-friendly R interface. Our experiments indicate that L0Learn can scale to problems with millions of features, achieving competitive run times with state-of-the-art sparse learning packages. L0Learn is available on both CRAN and GitHub.
Feb-9-2022
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