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Survey on explainable AI : techniques, challenges and open issues

Adel Abusitta, Miles Q. Li et Benjamin C.M. Fung

Article de revue (2024)

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Abstract

Artificial Intelligence (AI) has become an important component of many software applications. It has reached a point where it can provide complex and critical decisions in our life. However, the success of most AI-powered applications is based on black-box approaches (e.g., deep neural networks), which can create learned models that are able to predict and make decisions. While these advanced models could achieve high accuracy, they are generally unable to explain their decisions (e.g., predictions) to users. As a result, there is a pressing need for explainable machine learning systems in order to be trustworthy by governments, organizations, industries, and users. This paper classifies and compares the main findings in the domain of explainable machine learning and deep learning. We also discuss the application of Explainable AI (XAI) in sensitive domains such as cybersecurity. In addition, we characterize each reviewed article on the basis of the methods and techniques used to achieve XAI. This, in turn, allows us to discern the strengths and limitations of the existing XAI techniques. We finally discuss some substantial challenges and future research directions related to XAI.

Mots clés

explainable artificial intelligence; machine learning; interpretability; trusted artificial intelligence

Sujet(s): 2800 Intelligence artificielle > 2800 Intelligence artificielle (Vision artificielle, voir 2603)
Département: Département de génie informatique et génie logiciel
Organismes subventionnaires: NSERC / CRSNG Discovery Grants, Canadian DND Innovation for Defence Excellence and Security, Canada Research Chairs Program
Numéro de subvention: RGPIN-2018-03872, W7714-217794/001/SV1, 950-230623
URL de PolyPublie: https://publications.polymtl.ca/58797/
Titre de la revue: Expert Systems With Applications (vol. 255)
Maison d'édition: Elsevier
DOI: 10.1016/j.eswa.2024.124710
URL officielle: https://doi.org/10.1016/j.eswa.2024.124710
Date du dépôt: 21 août 2024 00:09
Dernière modification: 25 sept. 2024 16:51
Citer en APA 7: Abusitta, A., Li, M. Q., & Fung, B. C.M. (2024). Survey on explainable AI : techniques, challenges and open issues. Expert Systems With Applications, 255, 124710 (18 pages). https://doi.org/10.1016/j.eswa.2024.124710

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