randomUniformForest
Random Uniform Forests for Classification, Regression and Unsupervised Learning
Ensemble model, for classification, regression and unsupervised learning, based on a forest of unpruned and randomized binary decision trees. Each tree is grown by sampling, with replacement, a set of variables at each node. Each cut-point is generated randomly, according to the continuous Uniform distribution. For each tree, data are either bootstrapped or subsampled. The unsupervised mode introduces clustering, dimension reduction and variable importance, using a three-layer engine. Random Uniform Forests are mainly aimed to lower correlation between trees (or trees residuals), to provide a deep analysis of variable importance and to allow native distributed and incremental learning.
- Version1.1.6
- R versionunknown
- LicenseBSD_3_clause
- LicenseLICENSE
- Needs compilation?Yes
- randomUniformForest citation info
- Last release06/21/2022
Documentation
Team
Saip Ciss
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- Imports8 packages
- Suggests1 package
- Linking To1 package