AI RESEARCH
Human Attribution of Causality to AI Across Agency, Misuse, and Misalignment
arXiv CS.AI
•
ArXi:2603.13236v1 Announce Type: new AI-related incidents are becoming increasingly frequent and severe, ranging from safety failures to misuse by malicious actors. In such complex situations, identifying which elements caused an adverse outcome, the problem of cause selection, is a critical first step for establishing liability. This paper investigates folk perceptions of causal responsibility in causal chain structures when AI systems are involved in harmful outcomes. We conduct human experiments to examine judgments of causality, blame, foreseeability, and counterfactual reasoning.