UBL-package |
UBL: Utility-Based Learning |
CNNClassif |
Condensed Nearest Neighbors strategy for multiclass imbalanced problems |
ENNClassif |
Edited Nearest Neighbor for multiclass imbalanced problems |
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 |
ImpSampClassif |
Importance Sampling algorithm for imbalanced classification problems |
ImpSampRegress |
Importance Sampling algorithm for imbalanced regression problems |
NCLClassif |
Neighborhood Cleaning Rule (NCL) algorithm for multiclass imbalanced problems |
OSSClassif |
One-sided selection strategy for handling multiclass imbalanced problems. |
phi |
Relevance function. |
phi.control |
Estimation of parameters used for obtaining the relevance function. |
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 |
SmoteClassif |
SMOTE algorithm for unbalanced classification problems |
SmoteRegress |
SMOTE algorithm for imbalanced regression problems |
TomekClassif |
Tomek links for imbalanced classification problems |