CYApr 21

AI Incident Monitoring through a Public Health Lens

arXiv:2604.1991411.2h-index: 11
Predicted impact top 34% in CY · last 90 daysOriginality Synthesis-oriented
AI Analysis

This work addresses the need for policymakers, companies, and the public to evaluate AI risks in context, though it is incremental in applying existing public-health concepts to AI incidents.

The paper tackles the problem of assessing AI system risks by proposing a public-health-inspired framework for incident monitoring, demonstrating its application through case studies on autonomous vehicles and deepfakes to enable expert-driven phase determinations.

Artificial intelligence systems are now deployed at scale across sectors, accompanied by a growing number of real-world incidents ranging from misinformation and cybercrime to autonomous-system failures. Databases of AI incidents index these events, but they cannot measure ``risk'' (i.e., a joint measure of likelihood and severity) without additional data regarding the prevalence of risk-associated systems and their incident reporting rates. As a result, policymakers, companies, and the general public lack a means to weigh the benefits of AI against their in-context risks. Inspired by public-health processes, which presume noisy and incomplete disease surveillance, we identify six phases of incident emergence. We demonstrate the framework through a detailed case study of autonomous vehicles, whose mandatory reporting requirements produces reliable incident-rate ground truth expressed in distance traveled. The case study shows that an informed panel of domain experts (e.g., self-driving experts) can combine their domain expertise, incident data, and a collection of statistical and visualization tools to arrive at incident phase determinations serving public needs. We further demonstrate the approach with a deepfake incident case study and chart a path for future research in incident phase determination.

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