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

Overview
pipeline status coverage report

scikit-multimodallearn

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

It is compatible with scikit-learn, a popular package for machine learning in Python.

Documentation

The documentation including installation instructions, API documentation and examples is available online.

Installation

Dependencies

scikit-multimodallearn works with Python 3.5 or later.

scikit-multimodallearn depends on scikit-learn (version >= 0.19).

Optionally, matplotlib is required to run the examples.

Installation using pip

scikit-multimodallearn is available on PyPI 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 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 [email protected]:dev/multiconfusion.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 of the LIS.

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

  • Sokol Koço, Cécile Capponi, "Learning from Imbalanced Datasets with cross-view cooperation" Linking and mining heterogeneous an multi-view data, Unsupervised and semi-supervised learning Series Editor M. Emre Celeri, pp 161-182, Springer
  • Sokol Koço, Cécile Capponi, "A boosting approach to multiview classification with cooperation", Proceedings of the 2011 European Conference on Machine Learning (ECML), Athens, Greece, pp.209-228, 2011, Springer-Verlag.
  • Sokol Koço, "Tackling the uneven views problem with cooperation based ensemble learning methods", PhD Thesis, Aix-Marseille Université, 2013.
  • Riikka Huusari, Hachem Kadri and Cécile Capponi, "Multi-View Metric Learning in Vector-Valued Kernel Spaces" in International Conference on Artificial Intelligence and Statistics (AISTATS) 2018

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

pure-predict: Machine learning prediction in pure Python

pure-predict speeds up and slims down machine learning prediction applications. It is a foundational tool for serverless inference or small batch prediction with popular machine learning frameworks l

Ibotta 84 Dec 29, 2022
Open source time series library for Python

PyFlux PyFlux is an open source time series library for Python. The library has a good array of modern time series models, as well as a flexible array

Ross Taylor 2k Jan 02, 2023
Optuna is an automatic hyperparameter optimization software framework, particularly designed for machine learning

Optuna is an automatic hyperparameter optimization software framework, particularly designed for machine learning. It features an imperative, define-by-run style user API.

7.4k Jan 04, 2023
MosaicML Composer contains a library of methods, and ways to compose them together for more efficient ML training

MosaicML Composer MosaicML Composer contains a library of methods, and ways to compose them together for more efficient ML training. We aim to ease th

MosaicML 2.8k Jan 06, 2023
Python/Sage Tool for deriving Scattering Matrices for WDF R-Adaptors

R-Solver A Python tools for deriving R-Type adaptors for Wave Digital Filters. This code is not quite production-ready. If you are interested in contr

8 Sep 19, 2022
A complete guide to start and improve in machine learning (ML)

A complete guide to start and improve in machine learning (ML), artificial intelligence (AI) in 2021 without ANY background in the field and stay up-to-date with the latest news and state-of-the-art

Louis-François Bouchard 3.3k Jan 04, 2023
Machine Learning for Time-Series with Python.Published by Packt

Machine-Learning-for-Time-Series-with-Python Become proficient in deriving insights from time-series data and analyzing a model’s performance Links Am

Packt 124 Dec 28, 2022
This is an auto-ML tool specialized in detecting of outliers

Auto-ML tool specialized in detecting of outliers Description This tool will allows you, with a Dash visualization, to compare 10 models of machine le

1 Nov 03, 2021
Exemplary lightweight and ready-to-deploy machine learning project

Exemplary lightweight and ready-to-deploy machine learning project

snapADDY GmbH 6 Dec 20, 2022
Machine Learning e Data Science com Python

Machine Learning e Data Science com Python Arquivos do curso de Data Science e Machine Learning com Python na Udemy, cliqe aqui para acessá-lo. O prin

Renan Barbosa 1 Jan 27, 2022
Iterative stochastic gradient descent (SGD) linear regressor with regularization

SGD-Linear-Regressor Iterative stochastic gradient descent (SGD) linear regressor with regularization Dataset: Kaggle “Graduate Admission 2” https://w

Zechen Ma 1 Oct 29, 2021
DistML is a Ray extension library to support large-scale distributed ML training on heterogeneous multi-node multi-GPU clusters

DistML is a Ray extension library to support large-scale distributed ML training on heterogeneous multi-node multi-GPU clusters

27 Aug 19, 2022
2D fluid simulation implementation of Jos Stam paper on real-time fuild dynamics, including some suggested extensions.

Fluid Simulation Usage Download this repo and store it in your computer. Open a terminal and go to the root directory of this folder. Make sure you ha

Mariana Ávalos Arce 5 Dec 02, 2022
Price forecasting of SGB and IRFC Bonds and comparing there returns

Project_Bonds Project Title : Price forecasting of SGB and IRFC Bonds and comparing there returns. Introduction of the Project The 2008-09 global fina

Tishya S 1 Oct 28, 2021
Drug prediction

I have collected data about a set of patients, all of whom suffered from the same illness. During their course of treatment, each patient responded to one of 5 medications, Drug A, Drug B, Drug c, Dr

Khazar 1 Jan 28, 2022
A collection of Scikit-Learn compatible time series transformers and tools.

tsfeast A collection of Scikit-Learn compatible time series transformers and tools. Installation Create a virtual environment and install: From PyPi p

Chris Santiago 0 Mar 30, 2022
Library for machine learning stacking generalization.

stacked_generalization Implemented machine learning *stacking technic[1]* as handy library in Python. Feature weighted linear stacking is also availab

114 Jul 19, 2022
A simple example of ML classification, cross validation, and visualization of feature importances

Simple-Classifier This is a basic example of how to use several different libraries for classification and ensembling, mostly with sklearn. Example as

Rob 2 Aug 25, 2022
PyHarmonize: Adding harmony lines to recorded melodies in Python

PyHarmonize: Adding harmony lines to recorded melodies in Python About To use this module, the user provides a wav file containing a melody, the key i

Julian Kappler 2 May 20, 2022