GDPR Auto-Formalization with AI Agents and Human Verification

April 16, 2026 Β· Grace Period Β· πŸ› ICAIL 2026

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Authors Ha Thanh Nguyen, Wachara Fungwacharakorn, Sabine Wehnert, May Myo Zin, Yuntao Kong, Jieying Xue, MichaΕ‚ Araszkiewicz, Randy Goebel, Ken Satoh arXiv ID 2604.14607 Category cs.AI: Artificial Intelligence Citations 0 Venue ICAIL 2026
Abstract
We study the overall process of automatic formalization of GDPR provisions using large language models, within a human-in-the-loop verification framework. Rather than aiming for full autonomy, we adopt a role-specialized workflow in which LLM-based AI components, operating in a multi-agent setting with iterative feedback, generate legal scenarios, formal rules, and atomic facts. This is coupled with independent verification modules which include human reviewers' assessment of representational, logical, and legal correctness. Using this approach, we construct a high-quality dataset to be used for GDPR auto-formalization, and analyze both successful and problematic cases. Our results show that structured verification and targeted human oversight are essential for reliable legal formalization, especially in the presence of legal nuance and context-sensitive reasoning.
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