Giter Site home page Giter Site logo

grace-ai-data / imbalanced-learn Goto Github PK

View Code? Open in Web Editor NEW

This project forked from scikit-learn-contrib/imbalanced-learn

0.0 0.0 0.0 21.5 MB

A Python Package to Tackle the Curse of Imbalanced Datasets in Machine Learning

Home Page: https://imbalanced-learn.org

License: MIT License

Python 95.75% Makefile 0.10% Shell 3.15% TeX 1.00%

imbalanced-learn's Introduction

_ Codecov_ CircleCI_ PythonVersion_ Pypi_ Gitter_ Black_

imbalanced-learn

imbalanced-learn is a python package offering a number of re-sampling techniques commonly used in datasets showing strong between-class imbalance. It is compatible with scikit-learn and is part of scikit-learn-contrib projects.

Documentation

Installation documentation, API documentation, and examples can be found on the documentation.

Installation

Dependencies

imbalanced-learn requires the following dependencies:

  • Python (>= 3.7)
  • NumPy (>= 1.14.6)
  • SciPy (>= 1.1.0)
  • Scikit-learn (>= 1.0.1)

Additionally, imbalanced-learn requires the following optional dependencies:

  • Pandas (>= 0.25.0) for dealing with dataframes
  • Tensorflow (>= 2.4.3) for dealing with TensorFlow models
  • Keras (>= 2.4.3) for dealing with Keras models

The examples will requires the following additional dependencies:

  • Matplotlib (>= 2.2.3)
  • Seaborn (>= 0.9.0)

Installation

From PyPi or conda-forge repositories

imbalanced-learn is currently available on the PyPi's repositories and you can install it via `pip`:

pip install -U imbalanced-learn

The package is release also in Anaconda Cloud platform:

conda install -c conda-forge imbalanced-learn

From source available on GitHub

If you prefer, you can clone it and run the setup.py file. Use the following commands to get a copy from Github and install all dependencies:

git clone https://github.com/scikit-learn-contrib/imbalanced-learn.git
cd imbalanced-learn
pip install .

Be aware that you can install in developer mode with:

pip install --no-build-isolation --editable .

If you wish to make pull-requests on GitHub, we advise you to install pre-commit:

pip install pre-commit
pre-commit install

Testing

After installation, you can use pytest to run the test suite:

make coverage

Development

The development of this scikit-learn-contrib is in line with the one of the scikit-learn community. Therefore, you can refer to their Development Guide.

About

If you use imbalanced-learn in a scientific publication, we would appreciate citations to the following paper:

@article{JMLR:v18:16-365,
author  = {Guillaume  Lema{{\^i}}tre and Fernando Nogueira and Christos K. Aridas},
title   = {Imbalanced-learn: A Python Toolbox to Tackle the Curse of Imbalanced Datasets in Machine Learning},
journal = {Journal of Machine Learning Research},
year    = {2017},
volume  = {18},
number  = {17},
pages   = {1-5},
url     = {http://jmlr.org/papers/v18/16-365}
}

Most classification algorithms will only perform optimally when the number of samples of each class is roughly the same. Highly skewed datasets, where the minority is heavily outnumbered by one or more classes, have proven to be a challenge while at the same time becoming more and more common.

One way of addressing this issue is by re-sampling the dataset as to offset this imbalance with the hope of arriving at a more robust and fair decision boundary than you would otherwise.

Re-sampling techniques are divided in two categories:
  1. Under-sampling the majority class(es).
  2. Over-sampling the minority class.
  3. Combining over- and under-sampling.
  4. Create ensemble balanced sets.

Below is a list of the methods currently implemented in this module.

  • Under-sampling
    1. Random majority under-sampling with replacement
    2. Extraction of majority-minority Tomek links1
    3. Under-sampling with Cluster Centroids
    4. NearMiss-(1 & 2 & 3)2
    5. Condensed Nearest Neighbour3
    6. One-Sided Selection4
    7. Neighboorhood Cleaning Rule5
    8. Edited Nearest Neighbours6
    9. Instance Hardness Threshold7
    10. Repeated Edited Nearest Neighbours8
    11. AllKNN9
  • Over-sampling
    1. Random minority over-sampling with replacement
    2. SMOTE - Synthetic Minority Over-sampling Technique10
    3. SMOTENC - SMOTE for Nominal and Continuous11
    4. SMOTEN - SMOTE for Nominal12
    5. bSMOTE(1 & 2) - Borderline SMOTE of types 1 and 213
    6. SVM SMOTE - Support Vectors SMOTE14
    7. ADASYN - Adaptive synthetic sampling approach for imbalanced learning15
    8. KMeans-SMOTE16
    9. ROSE - Random OverSampling Examples17
  • Over-sampling followed by under-sampling
    1. SMOTE + Tomek links18
    2. SMOTE + ENN19
  • Ensemble classifier using samplers internally
    1. Easy Ensemble classifier20
    2. Balanced Random Forest21
    3. Balanced Bagging
    4. RUSBoost22
  • Mini-batch resampling for Keras and Tensorflow

The different algorithms are presented in the sphinx-gallery.

References:


  1. : I. Tomek, “Two modifications of CNN,” IEEE Transactions on Systems, Man, and Cybernetics, vol. 6, pp. 769-772, 1976.

  2. I. Mani, J. Zhang. “kNN approach to unbalanced data distributions

    A case study involving information extraction,” In Proceedings of the Workshop on Learning from Imbalanced Data Sets, pp. 1-7, 2003.

  3. : P. E. Hart, “The condensed nearest neighbor rule,” IEEE Transactions on Information Theory, vol. 14(3), pp. 515-516, 1968.

  4. M. Kubat, S. Matwin, “Addressing the curse of imbalanced training sets

    One-sided selection,” In Proceedings of the 14th International Conference on Machine Learning, vol. 97, pp. 179-186, 1997.

  5. : J. Laurikkala, “Improving identification of difficult small classes by balancing class distribution,” Proceedings of the 8th Conference on Artificial Intelligence in Medicine in Europe, pp. 63-66, 2001.

  6. : D. Wilson, “Asymptotic Properties of Nearest Neighbor Rules Using Edited Data,” IEEE Transactions on Systems, Man, and Cybernetrics, vol. 2(3), pp. 408-421, 1972.

  7. : M. R. Smith, T. Martinez, C. Giraud-Carrier, “An instance level analysis of data complexity,” Machine learning, vol. 95(2), pp. 225-256, 2014.

  8. : I. Tomek, “An experiment with the edited nearest-neighbor rule,” IEEE Transactions on Systems, Man, and Cybernetics, vol. 6(6), pp. 448-452, 1976.

  9. : I. Tomek, “An experiment with the edited nearest-neighbor rule,” IEEE Transactions on Systems, Man, and Cybernetics, vol. 6(6), pp. 448-452, 1976.

  10. N. V. Chawla, K. W. Bowyer, L. O. Hall, W. P. Kegelmeyer, “SMOTE

    Synthetic minority over-sampling technique,” Journal of Artificial Intelligence Research, vol. 16, pp. 321-357, 2002.

  11. N. V. Chawla, K. W. Bowyer, L. O. Hall, W. P. Kegelmeyer, “SMOTE

    Synthetic minority over-sampling technique,” Journal of Artificial Intelligence Research, vol. 16, pp. 321-357, 2002.

  12. N. V. Chawla, K. W. Bowyer, L. O. Hall, W. P. Kegelmeyer, “SMOTE

    Synthetic minority over-sampling technique,” Journal of Artificial Intelligence Research, vol. 16, pp. 321-357, 2002.

  13. H. Han, W.-Y. Wang, B.-H. Mao, “Borderline-SMOTE

    A new over-sampling method in imbalanced data sets learning,” In Proceedings of the 1st International Conference on Intelligent Computing, pp. 878-887, 2005.

  14. : H. M. Nguyen, E. W. Cooper, K. Kamei, “Borderline over-sampling for imbalanced data classification,” In Proceedings of the 5th International Workshop on computational Intelligence and Applications, pp. 24-29, 2009.

  15. H. He, Y. Bai, E. A. Garcia, S. Li, “ADASYN

    Adaptive synthetic sampling approach for imbalanced learning,” In Proceedings of the 5th IEEE International Joint Conference on Neural Networks, pp. 1322-1328, 2008.

  16. : Felix Last, Georgios Douzas, Fernando Bacao, "Oversampling for Imbalanced Learning Based on K-Means and SMOTE"

  17. Menardi, G., Torelli, N.

    "Training and assessing classification rules with unbalanced data", Data Mining and Knowledge Discovery, 28, (2014): 92–122

  18. G. E. A. P. A. Batista, A. L. C. Bazzan, M. C. Monard, “Balancing training data for automated annotation of keywords

    A case study,” In Proceedings of the 2nd Brazilian Workshop on Bioinformatics, pp. 10-18, 2003.

  19. : G. E. A. P. A. Batista, R. C. Prati, M. C. Monard, “A study of the behavior of several methods for balancing machine learning training data,” ACM Sigkdd Explorations Newsletter, vol. 6(1), pp. 20-29, 2004.

  20. : X.-Y. Liu, J. Wu and Z.-H. Zhou, “Exploratory undersampling for class-imbalance learning,” IEEE Transactions on Systems, Man, and Cybernetics, vol. 39(2), pp. 539-550, 2009.

  21. C. Chao, A. Liaw, and L. Breiman. "Using random forest to learn imbalanced data." University of California, Berkeley 110 (2004)

    1-12.

  22. Seiffert, C., Khoshgoftaar, T. M., Van Hulse, J., & Napolitano, A. "RUSBoost

    A hybrid approach to alleviating class imbalance." IEEE Transactions on Systems, Man, and Cybernetics-Part A: Systems and Humans 40.1 (2010): 185-197.

imbalanced-learn's People

Contributors

akash-suresh avatar bganglia avatar chkoar avatar discdiver avatar dvro avatar fmfn avatar gitter-badger avatar glemaitre avatar hayesall avatar klizter avatar kmike avatar massich avatar matteding avatar microsheep avatar nv-jpt avatar orausch avatar osanai-hisashi avatar paulochf avatar pinnacleai avatar proinsias avatar pulkitmaloo avatar rasbt avatar sadrasabouri avatar seanbenhur avatar shaform avatar shihab-shahriar avatar ssaamm avatar stephanheijl avatar timgates42 avatar vivekk0903 avatar

Recommend Projects

  • React photo React

    A declarative, efficient, and flexible JavaScript library for building user interfaces.

  • Vue.js photo Vue.js

    🖖 Vue.js is a progressive, incrementally-adoptable JavaScript framework for building UI on the web.

  • Typescript photo Typescript

    TypeScript is a superset of JavaScript that compiles to clean JavaScript output.

  • TensorFlow photo TensorFlow

    An Open Source Machine Learning Framework for Everyone

  • Django photo Django

    The Web framework for perfectionists with deadlines.

  • D3 photo D3

    Bring data to life with SVG, Canvas and HTML. 📊📈🎉

Recommend Topics

  • javascript

    JavaScript (JS) is a lightweight interpreted programming language with first-class functions.

  • web

    Some thing interesting about web. New door for the world.

  • server

    A server is a program made to process requests and deliver data to clients.

  • Machine learning

    Machine learning is a way of modeling and interpreting data that allows a piece of software to respond intelligently.

  • Game

    Some thing interesting about game, make everyone happy.

Recommend Org

  • Facebook photo Facebook

    We are working to build community through open source technology. NB: members must have two-factor auth.

  • Microsoft photo Microsoft

    Open source projects and samples from Microsoft.

  • Google photo Google

    Google ❤️ Open Source for everyone.

  • D3 photo D3

    Data-Driven Documents codes.