AICLCYJan 15, 2025

SAIF: A Comprehensive Framework for Evaluating the Risks of Generative AI in the Public Sector

arXiv:2501.08814v22 citationsh-index: 4
Originality Synthesis-oriented
AI Analysis

This work addresses the need for thorough risk evaluation in public sector AI applications, though it is incremental as it builds on existing taxonomies and methods.

The study tackled the insufficient risk assessment of generative AI in the public sector by proposing SAIF, a framework for systematic evaluation, which facilitates comprehensive risk mitigation through structured data generation and adaptation to emerging threats.

The rapid adoption of generative AI in the public sector, encompassing diverse applications ranging from automated public assistance to welfare services and immigration processes, highlights its transformative potential while underscoring the pressing need for thorough risk assessments. Despite its growing presence, evaluations of risks associated with AI-driven systems in the public sector remain insufficiently explored. Building upon an established taxonomy of AI risks derived from diverse government policies and corporate guidelines, we investigate the critical risks posed by generative AI in the public sector while extending the scope to account for its multimodal capabilities. In addition, we propose a Systematic dAta generatIon Framework for evaluating the risks of generative AI (SAIF). SAIF involves four key stages: breaking down risks, designing scenarios, applying jailbreak methods, and exploring prompt types. It ensures the systematic and consistent generation of prompt data, facilitating a comprehensive evaluation while providing a solid foundation for mitigating the risks. Furthermore, SAIF is designed to accommodate emerging jailbreak methods and evolving prompt types, thereby enabling effective responses to unforeseen risk scenarios. We believe that this study can play a crucial role in fostering the safe and responsible integration of generative AI into the public sector.

Foundations

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