Mapping AI Risk Mitigations: Evidence Scan and Preliminary AI Risk Mitigation Taxonomy
Alexander K. Saeri, Sophia Lloyd George, Jess Graham, Clelia D. Lacarriere, Peter Slattery, Michael Noetel, Neil Thompson

TL;DR
This paper develops a preliminary taxonomy of AI risk mitigations based on an evidence scan of 13 frameworks, aiming to organize and standardize risk mitigation practices across the AI ecosystem.
Contribution
It introduces a structured AI Risk Mitigation Taxonomy derived from a comprehensive evidence scan, addressing fragmentation and inconsistent terminology in existing frameworks.
Findings
Identified 831 AI risk mitigations across 13 frameworks
Organized mitigations into 4 main categories and 23 subcategories
Revealed terminological inconsistencies in risk management practices
Abstract
Organizations and governments that develop, deploy, use, and govern AI must coordinate on effective risk mitigation. However, the landscape of AI risk mitigation frameworks is fragmented, uses inconsistent terminology, and has gaps in coverage. This paper introduces a preliminary AI Risk Mitigation Taxonomy to organize AI risk mitigations and provide a common frame of reference. The Taxonomy was developed through a rapid evidence scan of 13 AI risk mitigation frameworks published between 2023-2025, which were extracted into a living database of 831 AI risk mitigations. The mitigations were iteratively clustered & coded to create the Taxonomy. The preliminary AI Risk Mitigation Taxonomy organizes mitigations into four categories and 23 subcategories: (1) Governance & Oversight: Formal organizational structures and policy frameworks that establish human oversight mechanisms and decision…
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Taxonomy
TopicsEthics and Social Impacts of AI · Adversarial Robustness in Machine Learning · Explainable Artificial Intelligence (XAI)
