Skip to content

Latest commit

 

History

History
86 lines (43 loc) · 4.35 KB

README.md

File metadata and controls

86 lines (43 loc) · 4.35 KB

scikit-learn-contrib

scikit-learn-contrib is a github organization for gathering high-quality scikit-learn compatible projects. It also provides a template for establishing new scikit-learn compatible projects.

Vision

With the explosion of the number of machine learning papers, it becomes increasingly difficult for users and researchers to implement and compare algorithms. Even when authors release their software, it takes time to learn how to use it and how to apply it to one's own purposes. The goal of scikit-learn-contrib is to provide easy-to-install and easy-to-use high-quality machine learning software. With scikit-learn-contrib, users can install a project by pip install sklearn-contrib-project-name and immediately try it on their data with the usual fit, predict and transform methods. In addition, projects are compatible with scikit-learn tools such as grid search, pipelines, etc.

Projects

If you would like to include your own project in scikit-learn-contrib, take a look at the workflow.

Large-scale linear classification, regression and ranking.

Maintained by Mathieu Blondel and Fabian Pedregosa.

A Python implementation of Jerome Friedman's Multivariate Adaptive Regression Splines.

Maintained by Jason Rudy and Mehdi.

Python module to perform under sampling and over sampling with various techniques.

Maintained by Guillaume Lemaitre, Fernando Nogueira, Dayvid Oliveira and Christos Aridas.

Factorization machines and polynomial networks for classification and regression in Python.

Maintained by Vlad Niculae.

Confidence intervals for scikit-learn forest algorithms.

Maintained by Ariel Rokem, Kivan Polimis and Bryna Hazelton.

A high performance implementation of HDBSCAN clustering.

Maintained by Leland McInnes, jc-healy, c-north and Steve Astels.

A library of sklearn compatible categorical variable encoders.

Maintained by Will McGinnis

Python implementations of the Boruta all-relevant feature selection method.

Maintained by Daniel Homola

Pandas integration with sklearn.

Maintained by Israel Saeta Pérez

Machine learning with logical rules in Python.

Maintained by Florian Gardin, Ronan Gautier, Nicolas Goix and Jean-Matthieu Schertzer.

A Python implementation of the stability selection feature selection algorithm.

Maintained by Thomas Huijskens

Metric learning algorithms in Python.

Maintained by CJ Carey, Yuan Tang, William de Vazelhes, Aurélien Bellet and Nathalie Vauquier.