4.7 Article

sklvq: Scikit Learning Vector Quantization

Journal

JOURNAL OF MACHINE LEARNING RESEARCH
Volume 22, Issue -, Pages -

Publisher

MICROTOME PUBL

Keywords

Python; scikit-learn; learning vector quantization; matrix relevance learning

Funding

  1. Michael J. Fox Foundation [17081]

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sklvq is an open-source Python implementation of learning vector quantization algorithms, known for its modular and customizable design. Users can easily extend the algorithms, and detailed documentation and rich API make it easy to use.
The sklvq package is an open-source Python implementation of a set of learning vector quantization (LVQ) algorithms. In addition to providing the core functionality for the GLVQ, GMLVQ, and LGMLVQ algorithms, sklvq is distinctive by putting emphasis on its modular and customizable design. Not only resulting in a feature-rich implementation for users but enabling easy extensions of the algorithms for researchers. The theory behind this design is described in this paper. To facilitate adoptions and inspire future contributions, sklvq is publicly available on Github (under the BSD license) and can be installed through the Python package index (PyPI). Next to being well-covered by automated testing to ensure code quality, it is accompanied by detailed online documentation. The documentation covers usage examples and provides an in-depth API including theory and scientific references.

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