Dirty Cat Save

Machine learning on dirty tabular data (legacy clone of skrub)

Project README

dirty_cat

.. warning::

*dirty_cat* has migrated to `skrub <https://github.com/skrub-data/skrub/>`_.
This repository will no longer be maintained.

.. image:: https://dirty-cat.github.io/stable/_static/dirty_cat.svg :align: center :alt: dirty_cat logo

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dirty_cat <https://dirty-cat.github.io/>_ is a Python library that facilitates machine-learning on dirty categorical variables.

For a detailed description of the problem of encoding dirty categorical data, see Similarity encoding for learning with dirty categorical variables <https://hal.inria.fr/hal-01806175>_ [1]_ and Encoding high-cardinality string categorical variables <https://hal.inria.fr/hal-02171256v4>_ [2]_.

If you like the package, please spread the word, and ⭐ the repository <https://github.com/dirty-cat/dirty_cat/>_!

What can dirty_cat do?

dirty_cat provides tools (TableVectorizer, fuzzy_join...) and encoders (GapEncoder, MinHashEncoder...) for morphological similarities, for which we usually identify three common cases: similarities, typos and variations

The first example notebook <https://dirty-cat.github.io/stable/auto_examples/01_dirty_categories.html>_ goes in-depth on how to identify and deal with dirty data using the dirty_cat library.

What dirty_cat does not


`Semantic similarities <https://en.wikipedia.org/wiki/Semantic_similarity>`_
are currently not supported.
For example, the similarity between *car* and *automobile* is outside the reach
of the methods implemented here.

This kind of problem is tackled by
`Natural Language Processing <https://en.wikipedia.org/wiki/Natural_language_processing>`_
methods.

`dirty_cat` can still help with handling typos and variations in this kind of setting.

Installation
------------

dirty_cat can be easily installed via `pip`::

    pip install dirty_cat

Dependencies
~~~~~~~~~~~~

Dependencies and minimal versions are listed in the `setup <https://github.com/dirty-cat/dirty_cat/blob/main/setup.cfg#L26>`_ file.

Related projects
----------------

Are listed on the `dirty_cat's website <https://dirty-cat.github.io/stable/#related-projects>`_

Contributing
------------

If you want to encourage development of `dirty_cat`,
the best thing to do is to *spread the word*!

If you encounter an issue while using `dirty_cat`, please
`open an issue <https://docs.github.com/en/issues/tracking-your-work-with-issues/creating-an-issue>`_ and/or
`submit a pull request <https://docs.github.com/en/pull-requests/collaborating-with-pull-requests/proposing-changes-to-your-work-with-pull-requests/creating-a-pull-request>`_.
Don't hesitate, you're helping to make this project better for everyone!

Additional resources
--------------------

* `Introductory video (YouTube) <https://youtu.be/_GNaaeEI2tg>`_
* `Overview poster for EuroSciPy 2022 (Google Drive) <https://drive.google.com/file/d/1TtmJ3VjASy6rGlKe0txKacM-DdvJdIvB/view?usp=sharing>`_

References
----------

.. [1] Patricio Cerda, Gaël Varoquaux, Balázs Kégl. Similarity encoding for learning with dirty categorical variables. 2018. Machine Learning journal, Springer.
.. [2] Patricio Cerda, Gaël Varoquaux. Encoding high-cardinality string categorical variables. 2020. IEEE Transactions on Knowledge & Data Engineering.
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