NEAILGJun 12, 2024

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

arXiv:2406.07811v212 citations
Originality Synthesis-oriented
AI Analysis

It addresses the need for accountability and trust in AI across various domains, but is incremental as it reviews and connects existing fields.

This paper explores how evolutionary computation can enhance explainable AI to address the opacity of AI systems, aiming to develop more understandable and trustworthy models.

Artificial intelligence methods are being increasingly applied across various domains, but their often opaque nature has raised concerns about accountability and trust. In response, the field of explainable AI (XAI) has emerged to address the need for human-understandable AI systems. Evolutionary computation (EC), a family of powerful optimization and learning algorithms, offers significant potential to contribute to XAI, and vice versa. This paper provides an introduction to XAI and reviews current techniques for explaining machine learning models. We then explore how EC can be leveraged in XAI and examine existing XAI approaches that incorporate EC techniques. Furthermore, we discuss the application of XAI principles within EC itself, investigating how these principles can illuminate the behavior and outcomes of EC algorithms, their (automatic) configuration, and the underlying problem landscapes they optimize. Finally, we discuss open challenges in XAI and highlight opportunities for future research at the intersection of XAI and EC. Our goal is to demonstrate EC's suitability for addressing current explainability challenges and to encourage further exploration of these methods, ultimately contributing to the development of more understandable and trustworthy ML models and EC algorithms.

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