Standardised schema and taxonomy for AI incident databases in critical digital infrastructure
Avinash Agarwal, Manisha J. Nene
TL;DR
The paper tackles the lack of standardized AI incident reporting for critical digital infrastructure. It proposes a unified schema and a domain-specific taxonomy to enable detailed, consistent incident documentation across databases. The main contributions are a standardized incident schema with expanded fields such as severity, causes, and harms, and a taxonomy tailored to critical infrastructure contexts. This framework aims to improve incident analysis, policy making, safety, and transparency, supporting a coordinated global response to AI incidents.
Abstract
The rapid deployment of Artificial Intelligence (AI) in critical digital infrastructure introduces significant risks, necessitating a robust framework for systematically collecting AI incident data to prevent future incidents. Existing databases lack the granularity as well as the standardized structure required for consistent data collection and analysis, impeding effective incident management. This work proposes a standardized schema and taxonomy for AI incident databases, addressing these challenges by enabling detailed and structured documentation of AI incidents across sectors. Key contributions include developing a unified schema, introducing new fields such as incident severity, causes, and harms caused, and proposing a taxonomy for classifying AI incidents in critical digital infrastructure. The proposed solution facilitates more effective incident data collection and analysis, thus supporting evidence-based policymaking, enhancing industry safety measures, and promoting transparency. This work lays the foundation for a coordinated global response to AI incidents, ensuring trust, safety, and accountability in using AI across regions.
