Launched: November, 2020
Updated: August, 2024
Actively maintained.
- 
Metrics - Limitations of the Accuracy
- Precision, Recall, F-Measure
- Confusion Matrix
- False Positive Rate and False Negative Rate
- Geometric Mean
- Dominance
- Index of imbalanced accuracy
- ROC-AUC
- Precision-Recall Curves
- Probability Distribution and Calibration
- Which metric to optimise
 
- 
Udersampling Methods - Random Undersampling
- Condensed Nearest Neighbour
- Tomek Links
- One Sided Selection
- Edited Nearest Neighbours
- Repeated Edited Nearest Neighbours
- All KNN
- Neighbourhood Cleaning Rule
- NearMiss
- Instance Hardness Threshold
 
- 
Oversampling methods - Random Oversampling
- ADASYN
- SMOTE
- BorderlineSMOTE
- KMeansSMOTE
- SMOTENC
- SVMSMOTE
 
- 
Over and Undersampling Methods - SMOTENN
- SMOTETomek
 
- 
Ensemble Methods - Coming Soon
 
- 
Cost Sensitive Learning - Types of cost
- Obtaining the Cost
- Missclassification Cost
- Bayes Risk
- MetaCost
 
- 
Probability Calibration - Probability Calibration Curves
- Brier Score
- Effect of under and over sampling on Probability Calibration
- Cost Sensitive Learning and Probability Calibration
- Calibrating a Classifier
 

