Score: 0

Breaking Anonymity at Scale: Re-identifying the Trajectories of 100K Real Users in Japan

Published: June 5, 2025 | arXiv ID: 2506.05611v1

By: Abhishek Kumar Mishra, Mathieu Cunche, Heber H. Arcolezi

Potential Business Impact:

Unmasks people's secret travel paths from fake data.

Business Areas:
Identity Management Information Technology, Privacy and Security

Mobility traces represent a critical class of personal data, often subjected to privacy-preserving transformations before public release. In this study, we analyze the anonymized Yjmob100k dataset, which captures the trajectories of 100,000 users in Japan, and demonstrate how existing anonymization techniques fail to protect their sensitive attributes. We leverage population density patterns, structural correlations, and temporal activity profiles to re-identify the dataset's real-world location and timing. Our results reveal that the anonymization process carried out for Yjmob100k is inefficient and preserves enough spatial and temporal structure to enable re-identification. This work underscores the limitations of current trajectory anonymization methods and calls for more robust privacy mechanisms in the publication of mobility data.

Page Count
11 pages

Category
Computer Science:
Cryptography and Security