Skip to content

Navigation Menu

Sign in
Appearance settings

Search code, repositories, users, issues, pull requests...

Provide feedback

We read every piece of feedback, and take your input very seriously.

Saved searches

Use saved searches to filter your results more quickly

Sign up
Appearance settings

solegalli/machine-learning-imbalanced-data

Folders and files

NameName
Last commit message
Last commit date

Latest commit

History

58 Commits

Repository files navigation

PythonVersion License https://github.com/solegalli/machine-learning-imbalanced-data/blob/master/LICENSE Sponsorship https://www.trainindata.com/

Machine Learning with Imbalanced Data - Code Repository

Launched: November, 2020

Updated: August, 2024

Actively maintained.

Links

Table of Contents

  1. Metrics

    1. Limitations of the Accuracy
    2. Precision, Recall, F-Measure
    3. Confusion Matrix
    4. False Positive Rate and False Negative Rate
    5. Geometric Mean
    6. Dominance
    7. Index of imbalanced accuracy
    8. ROC-AUC
    9. Precision-Recall Curves
    10. Probability Distribution and Calibration
    11. Which metric to optimise
  2. Udersampling Methods

    1. Random Undersampling
    2. Condensed Nearest Neighbour
    3. Tomek Links
    4. One Sided Selection
    5. Edited Nearest Neighbours
    6. Repeated Edited Nearest Neighbours
    7. All KNN
    8. Neighbourhood Cleaning Rule
    9. NearMiss
    10. Instance Hardness Threshold
  3. Oversampling methods

    1. Random Oversampling
    2. ADASYN
    3. SMOTE
    4. BorderlineSMOTE
    5. KMeansSMOTE
    6. SMOTENC
    7. SVMSMOTE
  4. Over and Undersampling Methods

    1. SMOTENN
    2. SMOTETomek
  5. Ensemble Methods

    1. Coming Soon
  6. Cost Sensitive Learning

    1. Types of cost
    2. Obtaining the Cost
    3. Missclassification Cost
    4. Bayes Risk
    5. MetaCost
  7. Probability Calibration

    1. Probability Calibration Curves
    2. Brier Score
    3. Effect of under and over sampling on Probability Calibration
    4. Cost Sensitive Learning and Probability Calibration
    5. Calibrating a Classifier

Links

Sponsor this project

AltStyle によって変換されたページ (->オリジナル) /