TY - GEN
T1 - IFAA
T2 - 2025 5th International Conference on Big Data, Artificial Intelligence and Risk Management, ICBAR 2025
AU - Sun, Minsen
AU - Zhao, Xiaolin
AU - Liu, Zhenyan
AU - Xiao, Yuming
AU - Zhang, Ruiliang
AU - Tang, Yuxiang
N1 - Publisher Copyright:
© 2025 Copyright held by the owner/author(s).
PY - 2026/4/29
Y1 - 2026/4/29
N2 - Privacy protection for depression patients in mobile internet environments is critical, as the screening and assessment data typically exhibit characteristics of being scattered, multi-field, and highly sensitive. Existing solutions often struggle to balance data utility with privacy security for such specific data types. In this paper, based on the design of a Privacy Classification Protection (PCP) framework, we propose the Improved Field Anonymity Algorithm (IFAA) to enhance privacy protection for these multi-field datasets. While the PCP framework accommodates various techniques like encryption and differential privacy, IFAA specifically addresses the scenario where traditional anonymization is cost-effective but insecure against inference attacks. Guided by a rigorous mathematical formalization of re-identification risk, IFAA utilizes reversible non-linear square mapping and field name encryption to dynamically adjust data precision. Experimental results demonstrate that compared to full AES encryption, IFAA reduces processing time by over 95% while maintaining high resistance against distribution-based inference attacks. This approach achieves an optimal balance between security and utility, providing a lightweight solution particularly suitable for the real-time processing of depression screening data.
AB - Privacy protection for depression patients in mobile internet environments is critical, as the screening and assessment data typically exhibit characteristics of being scattered, multi-field, and highly sensitive. Existing solutions often struggle to balance data utility with privacy security for such specific data types. In this paper, based on the design of a Privacy Classification Protection (PCP) framework, we propose the Improved Field Anonymity Algorithm (IFAA) to enhance privacy protection for these multi-field datasets. While the PCP framework accommodates various techniques like encryption and differential privacy, IFAA specifically addresses the scenario where traditional anonymization is cost-effective but insecure against inference attacks. Guided by a rigorous mathematical formalization of re-identification risk, IFAA utilizes reversible non-linear square mapping and field name encryption to dynamically adjust data precision. Experimental results demonstrate that compared to full AES encryption, IFAA reduces processing time by over 95% while maintaining high resistance against distribution-based inference attacks. This approach achieves an optimal balance between security and utility, providing a lightweight solution particularly suitable for the real-time processing of depression screening data.
KW - Anonymization
KW - Big Data Privacy
KW - Federated Learning
KW - IFAA
KW - Privacy Risk Management
UR - https://www.scopus.com/pages/publications/105038612613
U2 - 10.1145/3800227.3800287
DO - 10.1145/3800227.3800287
M3 - Conference contribution
AN - SCOPUS:105038612613
T3 - Proceedings of 2025 5th International Conference on Big Data, Artificial Intelligence and Risk Management, ICBAR 2025
SP - 394
EP - 402
BT - Proceedings of 2025 5th International Conference on Big Data, Artificial Intelligence and Risk Management, ICBAR 2025
PB - Association for Computing Machinery, Inc
Y2 - 12 December 2025 through 14 December 2025
ER -