On the Different Concepts and Taxonomies of eXplainable Artificial Intelligence

Informations générales

Année de publication

2023

Type

Conférence

Description

In : International Conference on Intelligent Systems and Pattern Recognition. Cham : Springer Nature, 2023, 75-85.

Résumé

Presently, Artificial Intelligence (AI) has seen a significant shift in focus towards the design and development of interpretable or explainable intelligent systems. This shift was boosted by the fact that AI and especially the Machine Learning (ML) field models are, currently, more complex to understand due to the large amount of the treated data. However, the interchangeable misuse of XAI concepts mainly “interpretability” and “explainability” was a hindrance to the establishment of common grounds for them. Hence, given the importance of this domain, we present an overview on XAI, in this paper, in which we focus on clarifying its misused concepts. We also present the interpretability levels, some taxonomies of the literature on XAI techniques as well as some recent XAI applications.

BibTeX
@inproceedings{kochkach2023different,
  title={On the Different Concepts and Taxonomies of eXplainable Artificial Intelligence},
  author={Kochkach, Arwa and Kacem, Saoussen Belhadj and Elkosantini, Sabeur and Lee, Seongkwan M and Suh, Wonho},
  booktitle={International Conference on Intelligent Systems and Pattern Recognition},
  pages={75--85},
  year={2023},
  organization={Springer}
}

Auteurs