Learning Markov Chain Models from Sequential Data Under Local Differential Privacy

被引:0
作者
Guner, Efehan [1 ]
Gursoy, M. Emre [1 ]
机构
[1] Koc Univ, Dept Comp Engn, Istanbul, Turkiye
来源
COMPUTER SECURITY - ESORICS 2023, PT II | 2024年 / 14345卷
关键词
Privacy; local differential privacy; sequential data; Markov chain models;
D O I
10.1007/978-3-031-51476-0_18
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Markov chain models are frequently used in the analysis and modeling of sequential data such as location traces, time series, natural language, and speech. However, considering that many data sources are privacy-sensitive, it is imperative to design privacy-preserving methods for learning Markov models. In this paper, we propose Prima for learning discrete-time Markov chain models under local differential privacy (LDP), a state-of-the-art privacy standard. In Prima, each user locally encodes and perturbs their sequential record on their own device using LDP protocols. For this purpose, we adapt two bitvector-based LDP protocols (RAPPOR and OUE); and furthermore, we develop a novel extension of the GRR protocol called AdaGRR. We also propose to utilize custom privacy budget allocation strategies for perturbation, which enable uneven splitting of the privacy budget to better preserve utility in cases with uneven sequence lengths. On the server-side, Prima uses a novel algorithm for estimating Markov probabilities from perturbed data. We experimentally evaluate Prima using three real-world datasets, four utility metrics, and under various combinations of privacy budget and budget allocation strategies. Results show that Prima enables learning Markov chains under LDP with high utility and low error compared to Markov chains learned without privacy constraints.
引用
收藏
页码:359 / 379
页数:21
相关论文
共 32 条
  • [1] Differential privacy for symbolic systems with application to Markov Chains
    Chen, Bo
    Leahy, Kevin
    Jones, Austin
    Hale, Matthew
    [J]. AUTOMATICA, 2023, 152
  • [2] Chen R, 2012, ACM SIGSAC C COMPUTE, P638, DOI 10.1145/2382196.2382263
  • [3] Cheng YH, 2016, INT CONF NETW SER, P394, DOI 10.1109/CNSM.2016.7818454
  • [4] Privacy at Scale: Local Differential Privacy in Practice
    Cormode, Graham
    Jha, Somesh
    Kulkarni, Tejas
    Li, Ninghui
    Srivastava, Divesh
    Wang, Tianhao
    [J]. SIGMOD'18: PROCEEDINGS OF THE 2018 INTERNATIONAL CONFERENCE ON MANAGEMENT OF DATA, 2018, : 1655 - 1658
  • [5] Real-World Trajectory Sharing with Local Differential Privacy
    Cunningham, Teddy
    Cormode, Graham
    Ferhatosmanoglu, Hakan
    Srivastava, Divesh
    [J]. PROCEEDINGS OF THE VLDB ENDOWMENT, 2021, 14 (11): : 2283 - 2295
  • [6] Ding BL, 2017, ADV NEUR IN, V30
  • [7] RAPPOR: Randomized Aggregatable Privacy-Preserving Ordinal Response
    Erlingsson, Ulfar
    Pihur, Vasyl
    Korolova, Aleksandra
    [J]. CCS'14: PROCEEDINGS OF THE 21ST ACM CONFERENCE ON COMPUTER AND COMMUNICATIONS SECURITY, 2014, : 1054 - 1067
  • [8] Collective location statistics release with local differential privacy
    Errounda, Fatima Zahra
    Liu, Yan
    [J]. FUTURE GENERATION COMPUTER SYSTEMS-THE INTERNATIONAL JOURNAL OF ESCIENCE, 2021, 124 : 174 - 186
  • [9] Monitoring Web Browsing Behavior with Differential Privacy
    Fan, Liyue
    Bonomi, Luca
    Xiong, Li
    Sunderam, Vaidy
    [J]. WWW'14: PROCEEDINGS OF THE 23RD INTERNATIONAL CONFERENCE ON WORLD WIDE WEB, 2014, : 177 - 187
  • [10] Gagniuc Paul A, 2017, Markov Chains: From Theory to Implementation and Experimentation