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Information Extraction Under Privacy Constraints

Information Theory 2016-01-19 v3 math.IT Statistics Theory Machine Learning Statistics Theory

Abstract

A privacy-constrained information extraction problem is considered where for a pair of correlated discrete random variables (X,Y)(X,Y) governed by a given joint distribution, an agent observes YY and wants to convey to a potentially public user as much information about YY as possible without compromising the amount of information revealed about XX. To this end, the so-called {\em rate-privacy function} is introduced to quantify the maximal amount of information (measured in terms of mutual information) that can be extracted from YY under a privacy constraint between XX and the extracted information, where privacy is measured using either mutual information or maximal correlation. Properties of the rate-privacy function are analyzed and information-theoretic and estimation-theoretic interpretations of it are presented for both the mutual information and maximal correlation privacy measures. It is also shown that the rate-privacy function admits a closed-form expression for a large family of joint distributions of (X,Y)(X,Y). Finally, the rate-privacy function under the mutual information privacy measure is considered for the case where (X,Y)(X,Y) has a joint probability density function by studying the problem where the extracted information is a uniform quantization of YY corrupted by additive Gaussian noise. The asymptotic behavior of the rate-privacy function is studied as the quantization resolution grows without bound and it is observed that not all of the properties of the rate-privacy function carry over from the discrete to the continuous case.

Keywords

Cite

@article{arxiv.1511.02381,
  title  = {Information Extraction Under Privacy Constraints},
  author = {Shahab Asoodeh and Mario Diaz and Fady Alajaji and Tamás Linder},
  journal= {arXiv preprint arXiv:1511.02381},
  year   = {2016}
}

Comments

55 pages, 6 figures. Improved the organization and added detailed literature review

R2 v1 2026-06-22T11:39:44.010Z