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scikit-lexicographical-trees: Based upon Scikit-Learn(-tree), it offers adapted trees and forest for Longitudinal Classification

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Scikit-lexicographical-trees

Scikit-lexicographical-trees is an adaptation of the Scikit-Learn trees module to support lexicographical approaches for longitudinal data. Refer to the following document for further information: Lexico Decision Tree Classifier.

Classifiers and regressors supporting lexicographical approaches:

🌲 Decision Tree Classifier 🌲 Random Forest Classifier 🌲 Decision Tree Regressor

For more information, refer to the Scikit-Longitudinal – main library utilizing the current fork – : Scikit-Longitudinal.

Acknowledgements

This fork is from NeuroData, an endeavor that paved the path for improving trees/forests in Scikit-Learn. Nonetheless, while our compliments go to the NeuroData team, we also like to thank the original Scikit-Learn team for their excellent effort over the years in providing a robust and versatile library for machine learning.

Do not forget to cite them!

πŸ’¬πŸ’¬πŸ’¬πŸ’¬πŸ’¬πŸ’¬πŸ’¬πŸ’¬πŸ’¬πŸ’¬

πŸ”„πŸ”„πŸ”„ Original Scikit-Learn README πŸ”„πŸ”„πŸ”„

Azure CirrusCI Codecov CircleCI Nightly wheels Black PythonVersion PyPi DOI Benchmark

https://raw.githubusercontent.com/scikit-learn/scikit-learn/main/doc/logos/scikit-learn-logo.png

scikit-learn is a Python module for machine learning built on top of SciPy and is distributed under the 3-Clause BSD license.

The project was started in 2007 by David Cournapeau as a Google Summer of Code project, and since then many volunteers have contributed. See the About us page for a list of core contributors.

It is currently maintained by a team of volunteers.

Website: https://scikit-learn.org

Installation

Dependencies

scikit-learn requires:

  • Python (>= 3.9)
  • NumPy (>= 1.19.5)
  • SciPy (>= 1.6.0)
  • joblib (>= 1.2.0)
  • threadpoolctl (>= 3.1.0)

Scikit-learn 0.20 was the last version to support Python 2.7 and Python 3.4. scikit-learn 1.0 and later require Python 3.7 or newer. scikit-learn 1.1 and later require Python 3.8 or newer.

Scikit-learn plotting capabilities (i.e., functions start with plot_ and classes end with Display) require Matplotlib (>= 3.3.4). For running the examples Matplotlib >= 3.3.4 is required. A few examples require scikit-image >= 0.17.2, a few examples require pandas >= 1.1.5, some examples require seaborn >= 0.9.0 and plotly >= 5.14.0.

User installation

If you already have a working installation of NumPy and SciPy, the easiest way to install scikit-learn is using pip:

pip install -U scikit-learn

or conda:

conda install -c conda-forge scikit-learn

The documentation includes more detailed installation instructions.

Changelog

See the changelog for a history of notable changes to scikit-learn.

Development

We welcome new contributors of all experience levels. The scikit-learn community goals are to be helpful, welcoming, and effective. The Development Guide has detailed information about contributing code, documentation, tests, and more. We've included some basic information in this README.

Important links

Source code

You can check the latest sources with the command:

git clone https://github.com/scikit-learn/scikit-learn.git

Contributing

To learn more about making a contribution to scikit-learn, please see our Contributing guide.

Testing

After installation, you can launch the test suite from outside the source directory (you will need to have pytest >= 7.1.2 installed):

pytest sklearn

See the web page https://scikit-learn.org/dev/developers/contributing.html#testing-and-improving-test-coverage for more information.

Random number generation can be controlled during testing by setting the SKLEARN_SEED environment variable.

Submitting a Pull Request

Before opening a Pull Request, have a look at the full Contributing page to make sure your code complies with our guidelines: https://scikit-learn.org/stable/developers/index.html

Project History

The project was started in 2007 by David Cournapeau as a Google Summer of Code project, and since then many volunteers have contributed. See the About us page for a list of core contributors.

The project is currently maintained by a team of volunteers.

Note: scikit-learn was previously referred to as scikits.learn.

Help and Support

Documentation

Communication

Citation

If you use scikit-learn in a scientific publication, we would appreciate citations: https://scikit-learn.org/stable/about.html#citing-scikit-learn

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