Distribution Simulation Under Local Differential Privacy

被引:0
|
作者
Asoodeh, Shahab [1 ]
机构
[1] McMaster Univ, Dept Comp & Software, Hamilton, ON, Canada
来源
2022 17TH CANADIAN WORKSHOP ON INFORMATION THEORY (CWIT) | 2022年
关键词
INFORMATION; NOISE;
D O I
10.1109/CWIT55308.2022.9817663
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
We investigate the problem of distribution simulation under local differential privacy: Alice and Bob observe sequences X-n and Y-n respectively, where Y-n is generated by a non-interactive epsilon-locally differentially private (LDP) mechanism from X-n. The goal is for Alice and Bob to output U and V from a joint distribution that is close in total variation distance to a target distribution P-UV. As the main result, we show that such task is impossible if the hypercontractivity coefficient of P-UV is strictly bigger than (e(epsilon) - 1/e(epsilon) + 1)(2). The proof of this result also leads to a new operational interpretation of LDP mechanisms: if Y is an output of an "-LDP mechanism with input X, then the probability of correctly guessing f(X) given Y is bigger than the probability of blind guessing only by e(epsilon) - 1/e(epsilon) + 1, for any deterministic finitely-supported function f. If f(X) is continuous, then a similar result holds for the minimum mean-squared error in estimating f(X) given Y.
引用
收藏
页码:57 / 61
页数:5
相关论文
共 50 条
  • [1] Hierarchical Aggregation for Numerical Data under Local Differential Privacy
    Hao, Mingchao
    Wu, Wanqing
    Wan, Yuan
    SENSORS, 2023, 23 (03)
  • [2] On density estimation at a fixed point under local differential privacy
    Kroll, Martin
    ELECTRONIC JOURNAL OF STATISTICS, 2021, 15 (01): : 1783 - 1813
  • [3] Local Differential Privacy Is Not Enough: A Sample Reconstruction Attack Against Federated Learning With Local Differential Privacy
    You, Zhichao
    Dong, Xuewen
    Li, Shujun
    Liu, Ximeng
    Ma, Siqi
    Shen, Yulong
    IEEE TRANSACTIONS ON INFORMATION FORENSICS AND SECURITY, 2025, 20 : 1519 - 1534
  • [4] Exponential Separations in Local Differential Privacy
    Joseph, Matthew
    Mao, Jieming
    Roth, Aaron
    PROCEEDINGS OF THE 2020 ACM-SIAM SYMPOSIUM ON DISCRETE ALGORITHMS, SODA, 2020, : 515 - 527
  • [5] Exponential Separations in Local Differential Privacy
    Joseph, Matthew
    Mao, Jieming
    Roth, Aaron
    PROCEEDINGS OF THE THIRTY-FIRST ANNUAL ACM-SIAM SYMPOSIUM ON DISCRETE ALGORITHMS (SODA'20), 2020, : 515 - 527
  • [6] AHEAD: Adaptive Hierarchical Decomposition for Range Query under Local Differential Privacy
    Du, Linkang
    Zhang, Zhikun
    Bai, Shaojie
    Liu, Changchang
    Ji, Shouling
    Cheng, Peng
    Chen, Jiming
    CCS '21: PROCEEDINGS OF THE 2021 ACM SIGSAC CONFERENCE ON COMPUTER AND COMMUNICATIONS SECURITY, 2021, : 1266 - 1288
  • [7] A Comprehensive Survey on Local Differential Privacy
    Xiong, Xingxing
    Liu, Shubo
    Li, Dan
    Cai, Zhaohui
    Niu, Xiaoguang
    SECURITY AND COMMUNICATION NETWORKS, 2020, 2020
  • [8] Local Differential Privacy Is Equivalent to Contraction of an f-Divergence
    Asoodeh, Shahab
    Aliakbarpour, Maryam
    Calmon, Flavio P.
    2021 IEEE INTERNATIONAL SYMPOSIUM ON INFORMATION THEORY (ISIT), 2021, : 545 - 550
  • [9] Privacy preserving classification on local differential privacy in data centers
    Fan, Weibei
    He, Jing
    Guo, Mengjiao
    Li, Peng
    Han, Zhijie
    Wang, Ruchuan
    JOURNAL OF PARALLEL AND DISTRIBUTED COMPUTING, 2020, 135 (135) : 70 - 82
  • [10] Distribution-invariant differential privacy
    Bi, Xuan
    Shen, Xiaotong
    JOURNAL OF ECONOMETRICS, 2023, 235 (02) : 444 - 453