Better and Simpler Lower Bounds for Differentially Private Statistical Estimation

被引:0
|
作者
Narayanan, Shyam [1 ]
机构
[1] Citadel Secur, Miami, FL 33131 USA
关键词
Estimation; Complexity theory; Heavily-tailed distribution; Approximation algorithms; Privacy; Differential privacy; Polynomials; Upper bound; Gaussian distribution; Eigenvalues and eigenfunctions; statistics; parameter estimation; lower bounds; fingerprinting;
D O I
10.1109/TIT.2024.3511624
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 provide optimal lower bounds for two well-known parameter estimation (also known as statistical estimation) tasks in high dimensions with approximate differential privacy. First, we prove that for any alpha <= O(1) , estimating the covariance of a Gaussian up to spectral error ohm (d3/2/alpha epsilon+d/alpha(2)) samples, which is tight up to logarithmic factors. This result improves over previous work which established this for alpha <= O(1/root d) , and is also simpler than previous work. Next, we prove that estimating the mean of a heavy-tailed distribution with bounded kth moments requires ohm (d/alpha(k)/(k-1)epsilon+d/alpha(2)) samples. Previous work for this problem was only able to establish this lower bound against pure differential privacy, or in the special case of k = 2 . Our techniques follow the method of fingerprinting and are generally quite simple. Our lower bound for heavy-tailed estimation is based on a black-box reduction from privately estimating identity-covariance Gaussians. Our lower bound for covariance estimation utilizes a Bayesian approach to show that, under an Inverse Wishart prior distribution for the covariance matrix, no private estimator can be accurate even in expectation, without sufficiently many samples.
引用
收藏
页码:1376 / 1388
页数:13
相关论文
共 50 条
  • [41] A DIFFERENTIALLY PRIVATE ENSEMBLE KALMAN FILTER FOR ROAD TRAFFIC ESTIMATION
    Andre, Hubert
    Le Ny, Ferome
    2017 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING (ICASSP), 2017, : 6409 - 6413
  • [42] Differentially private high dimensional sparse covariance matrix estimation
    Wang, Di
    Xu, Jinhui
    THEORETICAL COMPUTER SCIENCE, 2021, 865 : 119 - 130
  • [43] Differentially Private Algorithms for Statistical Verification of Cyber-Physical Systems
    Wang, Yu
    Sibai, Hussein
    Yen, Mark
    Mitra, Sayan
    Dullerud, Geir E.
    IEEE OPEN JOURNAL OF CONTROL SYSTEMS, 2022, 1 : 294 - 305
  • [44] Node-Differentially Private Estimation of the Number of Connected Components
    Kalemaj, Iden
    Raskhodnikova, Sofya
    Smith, Adam
    Tsourakakis, Charalampos E.
    PROCEEDINGS OF THE 42ND ACM SIGMOD-SIGACT-SIGAI SYMPOSIUM ON PRINCIPLES OF DATABASE SYSTEMS, PODS 2023, 2023, : 183 - 194
  • [45] Differentially Private Set-Based Estimation Using Zonotopes
    Dawoud, Mohammed M.
    Liu, Changxin
    Alanwar, Amr
    Johansson, Karl H.
    2023 EUROPEAN CONTROL CONFERENCE, ECC, 2023,
  • [46] Differentially Private Multi-Site Treatment Effect Estimation
    Koga, Tatsuki
    Chaudhuri, Kamalika
    Page, David
    IEEE CONFERENCE ON SAFE AND TRUSTWORTHY MACHINE LEARNING, SATML 2024, 2024, : 472 - 489
  • [47] Lower bounds for linear locally decodable codes and private information retrieval
    Goldreich, Oded
    Karloff, Howard
    Schulman, Leonard J.
    Trevisan, Luca
    COMPUTATIONAL COMPLEXITY, 2006, 15 (03) : 263 - 296
  • [48] Lower bounds for linear locally decodable codes and private information retrieval
    Oded Goldreich
    Howard Karloff
    Leonard J. Schulman
    Luca Trevisan
    computational complexity, 2006, 15 : 263 - 296
  • [49] General Classes of Performance Lower Bounds for Parameter Estimation - Part II: Bayesian Bounds
    Todros, Koby
    Tabrikian, Joseph
    IEEE TRANSACTIONS ON INFORMATION THEORY, 2010, 56 (10) : 5064 - 5082
  • [50] TOWARD BETTER FORMULA LOWER BOUNDS: THE COMPOSITION OF A FUNCTION AND A UNIVERSAL RELATION
    Gavinsky, Dmitry
    Meir, Or
    Weinstein, Omri
    Wigderson, Avi
    SIAM JOURNAL ON COMPUTING, 2017, 46 (01) : 114 - 131