May the privacy be with us: Correlated differential privacy in location data for ITS

被引:4
作者
Chong, Kah Meng [1 ]
Malip, Amizah [1 ,2 ]
机构
[1] Univ Malaya, Fac Sci, Inst Math Sci, Kuala Lumpur 50603, Malaysia
[2] Univ Malaya, Inst Math Sci, Kuala Lumpur, Malaysia
关键词
Differential privacy; Data correlation; Privacy leakage; Location data; ITS; K-ANONYMITY; PRESERVATION; INTERNET;
D O I
10.1016/j.comnet.2024.110214
中图分类号
TP3 [计算技术、计算机技术];
学科分类号
0812 ;
摘要
With the development of Intelligent Transportation Systems (ITS), a vast amount of location data is being generated from various IoT devices equipped with location positioning sensors. Preserving the privacy of location data release is a critical concern, as the publication of aggregated data often reveals private information about the users. Differential Privacy (DP) has recently emerged as a robust framework to guarantee privacy in this context. However, conventional DP mechanisms commonly make no assumption about the distribution of the input data, which could lead to unexpected privacy leakage if the data are correlated. In this paper, we investigate the complex simultaneous impact of user correlation, spatial-temporal correlation and prior knowledge of an adversary on the privacy leakage of a DP mechanism, which has not been addressed in prior work. We derive several closed -form expressions that demonstrate and quantify the privacy leakage under correlated location data, followed by the design of efficient algorithms to compute such privacy leakage. Then, we propose a Delta-CDP (Correlated Differential Privacy) to provide a formal privacy guarantee against the additional privacy leakage incurred by these factors. Extensive comparisons, theoretical analysis, and experimental simulations are presented to validate the correctness and efficiency of the proposed work.
引用
收藏
页数:20
相关论文
共 53 条
[1]   Differential privacy under dependent tuples-the case of genomic privacy [J].
Almadhoun, Nour ;
Ayday, Erman ;
Ulusoy, Ozgur .
BIOINFORMATICS, 2020, 36 (06) :1696-1703
[2]  
Andres Miguel E., 2013, ACM C COMP COMM SEC, P901
[3]   Enhancing correlated big data privacy using differential privacy and machine learning [J].
Biswas, Sreemoyee ;
Fole, Anuja ;
Khare, Nilay ;
Agrawal, Pragati .
JOURNAL OF BIG DATA, 2023, 10 (01)
[4]   A Learning Theory Approach to Noninteractive Database Privacy [J].
Blum, Avrim ;
Ligett, Katrina ;
Roth, Aaron .
JOURNAL OF THE ACM, 2013, 60 (02)
[5]   Modularity, balance, and frustration in student social networks: The role of negative relationships in communities [J].
Brito-Montes, Jose ;
Canto-Lugo, Efrain ;
Huerta-Quintanilla, Rodrigo .
PLOS ONE, 2022, 17 (12)
[6]   A new clustering mining algorithm for multi-source imbalanced location data [J].
Cai, Li ;
Wang, Haoyu ;
Jiang, Fang ;
Zhang, Yihan ;
Peng, Yuzhong .
INFORMATION SCIENCES, 2022, 584 :50-64
[7]   Quantifying Differential Privacy in Continuous Data Release Under Temporal Correlations [J].
Cao, Yang ;
Yoshikawa, Masatoshi ;
Xiao, Yonghui ;
Xiong, Li .
IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2019, 31 (07) :1281-1295
[8]   Correlated Differential Privacy Protection for Mobile Crowdsensing [J].
Chen, Jianwei ;
Ma, Huadong ;
Zhao, Dong ;
Liu, Liang .
IEEE TRANSACTIONS ON BIG DATA, 2021, 7 (04) :784-795
[9]   Correlated network data publication via differential privacy [J].
Chen, Rui ;
Fung, Benjamin C. M. ;
Yu, Philip S. ;
Desai, Bipin C. .
VLDB JOURNAL, 2014, 23 (04) :653-676
[10]   PeGaSus: Data-Adaptive Differentially Private Stream Processing [J].
Chen, Yan ;
Machanavajjhala, Ashwin ;
Hay, Michael ;
Miklau, Gerome .
CCS'17: PROCEEDINGS OF THE 2017 ACM SIGSAC CONFERENCE ON COMPUTER AND COMMUNICATIONS SECURITY, 2017, :1375-1388