Article

Evolutionary Computation and Explainable AI: A Roadmap to Transparent Intelligent Systems

Details

Citation

Zhou R, Bacardit J, Brownlee A, Cagnoni S, Fyvie M, Iacca G, McCall J, van Stein N, Walker D & Hu T (2024) Evolutionary Computation and Explainable AI: A Roadmap to Transparent Intelligent Systems. IEEE Transactions on Evolutionary Computation.

Abstract
AI methods are finding an increasing number of applications, but their often black-box nature has raised concerns about accountability and trust. The field of explainable artificial intelligence (XAI) has emerged in response to the need for human understanding of AI models. Evolutionary computation (EC), as a family of powerful optimization and learning tools, has significant potential to contribute to XAI. In this paper, we provide an introduction to XAI and review various techniques in current use for explaining machine learning (ML) models. We then focus on how EC can be used in XAI, and review some XAI approaches which incorporate EC techniques. Additionally, we discuss the application of XAI principles within EC itself, examining how these principles can shed some light on the behavior and outcomes of EC algorithms in general, on the (automatic) configuration of these algorithms, and on the underlying problem landscapes that these algorithms optimize. Finally, we discuss some open challenges in XAI and opportunities for future research in this field using EC. Our aim is to demonstrate that EC is well-suited for addressing current problems in explainability and to encourage further exploration of these methods to contribute to the development of more transparent and trustworthy ML models and EC algorithms.

Keywords
Explainability; Interpretability; Evolutionary Computation; Machine Learning

Notes
Output Status: Forthcoming

Journal
IEEE Transactions on Evolutionary Computation

StatusAccepted
Date accepted by journal29/09/2024
URLhttp://hdl.handle.net/1893/36283
ISSN1089-778X

People (1)

Dr Sandy Brownlee

Dr Sandy Brownlee

Senior Lecturer in Computing Science, Computing Science and Mathematics - Division

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