dbenielli / scikit-multimodallearn

This Python package implements algorithms for multiviews (multimodals) learning
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.. image:: https://gitlab.lis-lab.fr/dev/scikit-multimodallearn/badges/master/pipeline.svg :target: https://gitlab.lis-lab.fr/dev/scikit-multimodallearn/badges/master :alt: pipeline status

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scikit-multimodallearn

scikit-multimodallearn is a Python package implementing algorithms multimodal data.

It is compatible with scikit-learn <http://scikit-learn.org/>_, a popular package for machine learning in Python.

Documentation

The documentation including installation instructions, API documentation and examples is available online <http://dev.pages.lis-lab.fr/scikit-multimodallearn>_.

Installation

Dependencies


**scikit-multimodallearn** works with **Python 3.5 or later**.

**scikit-multimodallearn** depends on **scikit-learn** (version 1.2.1).

Optionally, **matplotlib** is required to run the examples.

Installation using pip

scikit-multimodallearn is available on PyPI <https://pypi.org/project/scikit-multimodallearn/>_ and can be installed using pip::

pip install scikit-multimodallearn

Development

The development of this package follows the guidelines provided by the scikit-learn community.

Refer to the Developer's Guide <http://scikit-learn.org/stable/developers>_ of the scikit-learn project for more details.

Source code


You can get the **source code** from the **Git** repository of the project::

  git clone git@gitlab.lis-lab.fr:dev/scikit-multimodallearn.git

Testing

pytest and pytest-cov are required to run the test suite with::

cd multimodal pytest

A code coverage report is displayed in the terminal when running the tests. An HTML version of the report is also stored in the directory htmlcov.

Generating the documentation


The generation of the documentation requires **sphinx**, **sphinx-gallery**,
**numpydoc** and **matplotlib** and can be run with::

  python setup.py build_sphinx

The resulting files are stored in the directory **build/sphinx/html**.

Credits
-------

**scikit-multimodallearn** is developped by the
`development team <https://developpement.lis-lab.fr/>`_ of the
`LIS <http://www.lis-lab.fr/>`_.

If you use **scikit-multimodallearn** in a scientific publication, please cite the
following paper::

 @InProceedings{Koco:2011:BAMCC,
  author={Ko\c{c}o, Sokol and Capponi, C{\'e}cile},
  editor={Gunopulos, Dimitrios and Hofmann, Thomas and Malerba, Donato
          and Vazirgiannis, Michalis},
  title={A Boosting Approach to Multiview Classification with Cooperation},
  booktitle={Proceedings of the 2011 European Conference on Machine Learning
             and Knowledge Discovery in Databases - Volume Part II},
  year={2011},
  location={Athens, Greece},
  publisher={Springer-Verlag},
  address={Berlin, Heidelberg},
  pages={209--228},
  numpages = {20},
  isbn={978-3-642-23783-6}
  url={https://link.springer.com/chapter/10.1007/978-3-642-23783-6_14},
  keywords={boosting, classification, multiview learning,
            supervised learning},
 }

 @InProceedings{Huu:2019:BAMCC,
  author={Huusari, Riika, Kadri Hachem and Capponi, C{\'e}cile},
  editor={},
  title={Multi-view Metric Learning in Vector-valued Kernel Spaces},
  booktitle={arXiv:1803.07821v1},
  year={2018},
  location={Athens, Greece},
  publisher={},
  address={},
  pages={209--228},
  numpages = {12}
  isbn={978-3-642-23783-6}
  url={https://link.springer.com/chapter/10.1007/978-3-642-23783-6_14},
  keywords={boosting, classification, multiview learning,
            merric learning, vector-valued, kernel spaces},
 }

References

Copyright


Université d'Aix Marseille (AMU) -
Centre National de la Recherche Scientifique (CNRS) -
Université de Toulon (UTLN).

Copyright © 2017-2018 AMU, CNRS, UTLN

License

scikit-multimodallearn is free software: you can redistribute it and/or modify it under the terms of the New BSD License