| ranktreeEnsemble-package | Ensemble Models of Rank-Based Trees for Single Sample Classification with Interpretable Rules | 
| extract.rules | Extract Interpretable Decision Rules from a Random Forest Model | 
| importance | Variable Importance Index for Each Predictor | 
| pair | Transform Continuous Variables into Ranked Binary Pairs | 
| predict | Prediction or Extract Predicted Values for Random Forest, Random Forest Rule or Boosting Models | 
| ranktreeEnsemble | Ensemble Models of Rank-Based Trees for Single Sample Classification with Interpretable Rules | 
| rboost | Generalized Boosted Modeling via Rank-Based Trees for Single Sample Classification with Gene Expression Profiles | 
| rforest | Random Forest via Rank-Based Trees for Single Sample Classification with Gene Expression Profiles | 
| rforest.tree | Random Forest via Rank-Based Trees for Single Sample Classification with Gene Expression Profiles | 
| select.rules | Select Decision Rules to Achieve Higher Prediction Accuracy | 
| tnbc | Gene expression profiles in triple-negative breast cancer cell |