Meaningful human control: actionable properties for AI system development
Luciano Cavalcante Siebert, Maria Luce Lupetti, Evgeni Aizenberg, Niek, Beckers, Arkady Zgonnikov, Herman Veluwenkamp, David Abbink, Elisa Giaccardi,, Geert-Jan Houben, Catholijn M. Jonker, Jeroen van den Hoven, Deborah Forster,, Reginald L. Lagendijk

TL;DR
This paper identifies four actionable properties to help AI systems remain under meaningful human control, addressing responsibility gaps and guiding practical design in autonomous AI applications.
Contribution
It bridges philosophical concepts of human control with engineering practices by defining four concrete properties for AI systems to ensure meaningful human oversight.
Findings
Four actionable properties for AI control identified
Application scenarios include autonomous vehicles and hiring AI
Properties facilitate responsibility attribution and control
Abstract
How can humans remain in control of artificial intelligence (AI)-based systems designed to perform tasks autonomously? Such systems are increasingly ubiquitous, creating benefits - but also undesirable situations where moral responsibility for their actions cannot be properly attributed to any particular person or group. The concept of meaningful human control has been proposed to address responsibility gaps and mitigate them by establishing conditions that enable a proper attribution of responsibility for humans; however, clear requirements for researchers, designers, and engineers are yet inexistent, making the development of AI-based systems that remain under meaningful human control challenging. In this paper, we address the gap between philosophical theory and engineering practice by identifying, through an iterative process of abductive thinking, four actionable properties for…
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Taxonomy
MethodsAttentive Walk-Aggregating Graph Neural Network
