
oblique.tree
The oblique.tree package is a machine learning software designed for advanced decision tree modeling. It enables users to construct trees that can split data along oblique hyperplanes, enhancing predictive performance. Although previously available on the CRAN repository, it has been archived due to unresolved check errors, limiting current access.
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