ODRF - Oblique Decision Random Forest for Classification and Regression
The oblique decision tree (ODT) uses linear combinations
of predictors as partitioning variables in a decision tree.
Oblique Decision Random Forest (ODRF) is an ensemble of
multiple ODTs generated by feature bagging. Oblique Decision
Boosting Tree (ODBT) applies feature bagging during the
training process of ODT-based boosting trees to ensemble
multiple boosting trees. All three methods can be used for
classification and regression, and ODT and ODRF serve as
supplements to the classical CART of Breiman (1984)
<DOI:10.1201/9781315139470> and Random Forest of Breiman (2001)
<DOI:10.1023/A:1010933404324> respectively.