What and How of Machine Learning Transparency: Building Bespoke Explainability Tools with Interoperable Algorithmic Components

Jupyter Notebook Python Submitted 09 April 2022Published 06 December 2022
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Editor: @ttimbers (all papers)
Reviewers: @kvarada (all reviews), @arokem (all reviews)

Authors

Kacper Sokol (0000-0002-9869-5896), Alexander Hepburn (0000-0002-2674-1478), Raul Santos-Rodriguez (0000-0001-9576-3905), Peter Flach (0000-0001-6857-5810)

Citation

Sokol et al., (2022). What and How of Machine Learning Transparency: Building Bespoke Explainability Tools with Interoperable Algorithmic Components. Journal of Open Source Education, 5(58), 175, https://doi.org/10.21105/jose.00175

@article{Sokol2022, doi = {10.21105/jose.00175}, url = {https://doi.org/10.21105/jose.00175}, year = {2022}, publisher = {The Open Journal}, volume = {5}, number = {58}, pages = {175}, author = {Kacper Sokol and Alexander Hepburn and Raul Santos-Rodriguez and Peter Flach}, title = {What and How of Machine Learning Transparency: Building Bespoke Explainability Tools with Interoperable Algorithmic Components }, journal = {Journal of Open Source Education} }
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Transparency Explainability Interpretability Surrogate Explainers Tabular Data Artificial Intelligence Machine Learning Hands-on Tutorial

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ISSN 2577-3569