| UBL-package | UBL: Utility-Based Learning |
| AdasynClassif | ADASYN algorithm for unbalanced classification problems, both binary and multi-class. |
| BaggingRegress | Standard Bagging ensemble for regression problems. |
| BagModel | Class "BagModel" |
| BagModel-class | Class "BagModel" |
| CNNClassif | Condensed Nearest Neighbors strategy for multiclass imbalanced problems |
| distances | Distance matrix between all data set examples according to a selected distance metric. |
| ENNClassif | Edited Nearest Neighbor for multiclass imbalanced problems |
| EvalClassifMetrics | Utility metrics for assessing the performance of utility-based classification tasks. |
| EvalRegressMetrics | Utility metrics for assessing the performance of utility-based regression tasks. |
| GaussNoiseClassif | Introduction of Gaussian Noise for the generation of synthetic examples to handle imbalanced multiclass problems. |
| GaussNoiseRegress | Introduction of Gaussian Noise for the generation of synthetic examples to handle imbalanced regression problems |
| ImbC | Synthetic Imbalanced Data Set for a Multi-class Task |
| ImbR | Synthetic Regression Data Set |
| NCLClassif | Neighborhood Cleaning Rule (NCL) algorithm for multiclass imbalanced problems |
| neighbours | Computation of nearest neighbours using a selected distance function. |
| OSSClassif | One-sided selection strategy for handling multiclass imbalanced problems. |
| phi | Relevance function. |
| phi.control | Estimation of parameters used for obtaining the relevance function. |
| predict-method | Predicting on new data with a *BagModel* model |
| RandOverClassif | Random over-sampling for imbalanced classification problems |
| RandOverRegress | Random over-sampling for imbalanced regression problems |
| RandUnderClassif | Random under-sampling for imbalanced classification problems |
| RandUnderRegress | Random under-sampling for imbalanced regression problems |
| ReBagg | REBagg: RE(sampled) BAG(ging), an ensemble method for dealing with imbalanced regression problems. |
| show-method | Class "BagModel" |
| SMOGNClassif | SMOGN algorithm for imbalanced classification problems |
| SMOGNRegress | SMOGN algorithm for imbalanced regression problems |
| SmoteClassif | SMOTE algorithm for unbalanced classification problems |
| SmoteRegress | SMOTE algorithm for imbalanced regression problems |
| TomekClassif | Tomek links for imbalanced classification problems |
| UtilInterpol | Utility surface obtained through methods for spatial interpolation of points. |
| UtilOptimClassif | Optimization of predictions utility, cost or benefit for classification problems. |
| UtilOptimRegress | Optimization of predictions utility, cost or benefit for regression problems. |
| WERCSClassif | WEighted Relevance-based Combination Strategy (WERCS) algorithm for imbalanced classification problems |
| WERCSRegress | WEighted Relevance-based Combination Strategy (WERCS) algorithm for imbalanced regression problems |