Testing Conditional Independence of Discrete Distributions

被引:0
|
作者
Canonne, Clement L. [1 ]
Diakonikolas, Ilias [2 ]
Kane, Daniel M. [3 ]
Stewart, Alistair [2 ]
机构
[1] Stanford Univ, Stanford, CA 94305 USA
[2] Univ Southern Calif, Los Angeles, CA 90007 USA
[3] Univ Calif San Diego, La Jolla, CA 92093 USA
关键词
INFORMATION;
D O I
暂无
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 study the problem of testing conditional independence for discrete distributions. Specifically, given samples from a discrete random variable (X, Y, Z) on domain [l(1)] x [l(2)] x [n], we want to distinguish, with probability at least 2/3, between the case that X and Y are conditionally independent given Z from the case that (X, Y, Z) is epsilon-far, in l(1)-distance, from every distribution that has this property. Conditional independence is a concept of central importance in probability and statistics with a range of applications in various scientific domains. As such, the statistical task of testing conditional independence has been extensively studied in various forms within the statistics and econometrics communities for nearly a century. Perhaps surprisingly, this problem has not been previously considered in the framework of distribution property testing and in particular no tester with sublinear sample complexity is known, even for the important special case that the domains of X and Y are binary. The main algorithmic result of this work is the first conditional independence tester with sublinear sample complexity for discrete distributions over [l(1)] x [l(2)] x [n]. To complement our upper bounds, we prove information-theoretic lower bounds establishing that the sample complexity of our algorithm is optimal, up to constant factors, for a number of settings. Specifically, for the prototypical setting when l(1), l(2) = O(1), we show that the sample complexity of testing conditional independence (upper bound and matching lower bound) is Theta(max(n(1/2)/epsilon(2), min(n(7/8)/epsilon, n(6/7)/epsilon(8/7)))). To obtain our tester, we employ a variety of tools, including (1) a suitable weighted adaptation of the flattening technique [DK16], and (2) the design and analysis of an optimal (unbiased) estimator for the following statistical problem of independent interest: Given a degree-d polynomial Q: R-n -> R and sample access to a distribution p over [n], estimate Q(p(1), ... , p(n)) up to small additive error. Obtaining tight variance analyses for specific estimators of this form has been a major technical hurdle in distribution testing (see, e.g., [CDVV14]). As an important contribution of this work, we develop a general theory providing tight variance bounds for all such estimators. Our lower bounds, established using the mutual information method, rely on novel constructions of hard instances that may be useful in other settings.
引用
收藏
页数:58
相关论文
共 50 条
  • [21] TESTING CONDITIONAL INDEPENDENCE USING MAXIMAL NONLINEAR CONDITIONAL CORRELATION
    Huang, Tzee-Ming
    [J]. ANNALS OF STATISTICS, 2010, 38 (04): : 2047 - 2091
  • [22] Testing conditional independence in supervised learning algorithms
    David S. Watson
    Marvin N. Wright
    [J]. Machine Learning, 2021, 110 : 2107 - 2129
  • [23] Testing conditional independence with data missing at random
    LIU Yi
    LIU Xiao-hui
    [J]. Applied Mathematics:A Journal of Chinese Universities, 2018, 33 (03) : 298 - 312
  • [24] TESTING CONDITIONAL INDEPENDENCE VIA ROSENBLATT TRANSFORMS
    Song, Kyungchul
    [J]. ANNALS OF STATISTICS, 2009, 37 (6B): : 4011 - 4045
  • [25] Testing conditional mean independence for functional data
    Lee, C. E.
    Zhang, X.
    Shao, X.
    [J]. BIOMETRIKA, 2020, 107 (02) : 331 - 346
  • [26] Causal Inference and Conditional Independence Testing with RCoT
    Agarwal, Mayank
    Kashyap, Abhay H.
    Shobha, G.
    Shetty, Jyothi
    Dev, Roger
    [J]. JOURNAL OF ADVANCES IN INFORMATION TECHNOLOGY, 2023, 14 (03) : 495 - 500
  • [27] TESTING INDEPENDENCE THROUGH CONDITIONAL AND MARGINAL DATA
    AHMAD, M
    [J]. COMMUNICATIONS IN STATISTICS PART A-THEORY AND METHODS, 1982, 11 (03): : 291 - 296
  • [28] Testing conditional independence with data missing at random
    Liu Yi
    Liu Xiao-hui
    [J]. APPLIED MATHEMATICS-A JOURNAL OF CHINESE UNIVERSITIES SERIES B, 2018, 33 (03): : 298 - 312
  • [29] Testing conditional independence with data missing at random
    Yi Liu
    Xiao-hui Liu
    [J]. Applied Mathematics-A Journal of Chinese Universities, 2018, 33 : 298 - 312
  • [30] Testing conditional independence in supervised learning algorithms
    Watson, David S.
    Wright, Marvin N.
    [J]. MACHINE LEARNING, 2021, 110 (08) : 2107 - 2129