Unravelling Responsibility for AI
Zoe Porter, Philippa Ryan, Phillip Morgan, Joanna Al-Qaddoumi, Bernard Twomey, Paul Noordhof, John McDermid, Ibrahim Habli

TL;DR
This paper develops a conceptual framework and visual tools to clarify and analyze responsibility networks in AI systems, aiding stakeholders in addressing complex responsibility issues.
Contribution
It introduces a novel responsibility framework with graphical notation and methodology to visualize and trace responsibility in AI ecosystems.
Findings
Framework clarifies different responsibility types for AI
Graphical notation visualizes responsibility networks
Methodology applies to real-world AI scenarios
Abstract
It is widely acknowledged that we need to establish where responsibility lies for the outputs and impacts of AI-enabled systems. This is important to achieve justice and compensation for victims of AI harms, and to inform policy and engineering practice. But without a clear, thorough understanding of what "responsibility" means, deliberations about where responsibility lies will be, at best, unfocused and incomplete and, at worst, misguided. Furthermore, AI-enabled systems exist within a wider ecosystem of actors, decisions, and governance structures, giving rise to complex networks of responsibility relations. To address these issues, this paper presents a conceptual framework of responsibility, accompanied with a graphical notation and general methodology for visualising these responsibility networks and for tracing different responsibility attributions for AI. Taking the three-part…
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Taxonomy
TopicsEthics and Social Impacts of AI · Ethics in medical practice · Ethics in Clinical Research
