L'explicabilit\'e au service de l'extraction de connaissances : application \`a des donn\'ees m\'edicales
Robin Cugny, Emmanuel Doumard, Elodie Escriva, Haomiao Wang

TL;DR
This paper demonstrates how explainability techniques in machine learning can be used to extract knowledge from medical data, improving feature selection, subgroup analysis, and instance selection through a complete data processing pipeline.
Contribution
It introduces a comprehensive data processing pipeline that leverages explainability methods to enhance knowledge extraction from medical datasets.
Findings
Explainability aids in feature selection and subgroup analysis.
Knowledge extraction is improved through explanations in medical data.
A complete pipeline for medical data exploration is proposed.
Abstract
The use of machine learning has increased dramatically in the last decade. The lack of transparency is now a limiting factor, which the field of explainability wants to address. Furthermore, one of the challenges of data mining is to present the statistical relationships of a dataset when they can be highly non-linear. One of the strengths of supervised learning is its ability to find complex statistical relationships that explainability allows to represent in an intelligible way. This paper shows that explanations can be used to extract knowledge from data and shows how feature selection, data subgroup analysis and selection of highly informative instances benefit from explanations. We then present a complete data processing pipeline using these methods on medical data. -- -- L'utilisation de l'apprentissage automatique a connu un bond cette derni\`ere d\'ecennie. Le manque de…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Bayesian Modeling and Causal Inference · Statistical and Computational Modeling
