Journal of Intellectual Property (J Intellect Property; JIP)

KCI Indexed
OPEN ACCESS, PEER REVIEWED

pISSN 1975-5945
eISSN 2733-8487
Research Article

Generative AI-Based Judicial Ruling Disclosure System Innovation: A Legal and Technological Approach to Balancing Privacy Protection and the Right to Information

1Master of Engineering; Master of Laws; Manager, KDI School of Public Policy and Management, Republic of Korea
2Master of Engineering; Manager, KDI School of Public Policy and Management, Republic of Korea

Correspondence to MinSung Hyun, E-mail: ms_hyun@kdischool.ac.kr

Volume 20, Number 2, Pages 93-118, June 2025.
Journal of Intellectual Property 2025;20(2):93-118. https://doi.org/10.34122/jip.2025.20.2.93
Received on March 06, 2025, Revised on April 08, 2025, Accepted on May 30, 2025, Published on June 30, 2025.
Copyright © 2025 Korea Institute of Intellectual Property.
This is an Open Access article distributed under the terms of the Creative Commons Attribution-NonCommercial-NoDerivatives (https://creativecommons.org/licenses/by-nc-nd/4.0/) which permits use, distribution and reproduction in any medium, provided that the article is properly cited, the use is non-commercial and no modifications or adaptations are made.

Abstract

Current Korean court ruling disclosure systems inadequately balance public access and privacy regarding Artificial Intelligence (AI) owing to low disclosure rates and inefficient manual anonymization. This results in hindering AI development as well as the public’s right to information. This study proposes and evaluates a generative AI-based automatic anonymization system using fine-tuned Small Language Models (sLLMs, 7-8B scale), designed for secure operations within courts. Using actual court data, we compared the performance of fine-tuned sLLMs with that of few-shot Large Language Models (LLMs, e.g., GPT-4o). The results demonstrate that fine-tuned sLLMs achieve high accuracy and recall (F1 > 98%), compared to LLMs, proving their feasibility for safe and efficient internal automation without data leakage risks. Furthermore, we analyzed the legal liability challenges concerning potential AI anonymization errors. Reviewing the applicability of existing doctrines revealed legal uncertainties surrounding AI system failures. Fine-tuned sLLMs offer a realistic technological solution for harmonizing privacy protection and access rights. This study underscores the need for supportive legal and institutional frameworks to enhance judicial transparency and to advance the legal AI sector.

Keywords

Judicial Ruling Disclosure System, Privacy Protection, Right to Information, Generative Artificial Intelligence, Anonymization, Legal Liability

Notes

Conflicts of Interest

No potential conflict of interest relevant to this article was reported.

Funding

The author received manuscript fees for this article from Korea Institute of Intellectual Property.

Section