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Journal ArticleDOI

A graph theoretic approach to statistical data security

Dan Gusfield
- 01 Jun 1988 - 
- Vol. 17, Iss: 3, pp 552-571
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TLDR
This paper studies the problem of protecting sensitive data in an n by n two-dimensional table of statistics, when the nonsensitive data are made public along with the row and column sums for the table.
Abstract
In this paper we study the problem of protecting sensitive data in an n by n two-dimensional table of statistics, when the nonsensitive data are made public along with the row and column sums for the table. A sensitive cell is considered unprotected if its exact value can be deduced from the nonsensitive cell values and the row and column sums. We give an efficient algorithm to identify all unprotected cells in a table. The algorithm runs in linear time if the sensitive values are known, and in $O(n^3 )$ time if they are not known. We then consider the problem of suppressing the fewest additional cell values to protect all the sensitive cells, when some cells are initially unprotected. We give a linear time algorithm for this problem in the useful special case that all cell values are strictly positive. We next consider the problem of computing the tightest upper and lower bounds on the values of sensitive cells. We show that each cell bound can be computed in $O(n^3 )$ time, but all $\Theta (n^2 )$ value...

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Citations
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Differential privacy: a survey of results

TL;DR: This survey recalls the definition of differential privacy and two basic techniques for achieving it, and shows some interesting applications of these techniques, presenting algorithms for three specific tasks and three general results on differentially private learning.
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Toward privacy in public databases

TL;DR: An important contribution of this work is a definition of privacy (and privacy compromise) for statistical databases, together with a method for describing and comparing the privacy offered by specific sanitization techniques.
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Differential Privacy for Statistics: What we Know and What we Want to Learn

TL;DR: A statistical database, in which the trusted and trustworthy curator gathers sensitive information from a large number of respondents (the sample), with the goal of learning and releasing to the public statistical facts about the underlying population.
Book ChapterDOI

Rectangular Arrays with Fixed Margins

TL;DR: In this paper, the number of rectangular arrays of nonnegative integers with given row and column sums has been studied in a variety of combinatorial and statistical applications, including counting magic squares, enumerating permutations by descent patterns, and representation theory.
Journal ArticleDOI

On the computational complexity of reconstructing lattice sets from their x-rays

TL;DR: It turns out that for all d ⩾ 2 and for a prescribed but arbitrary set of m ⩽ 2 pairwise nonparallel lattice directions, the problems are solvable in polynomial time if m = 2 and are NP-complete (or NP-equivalent) otherwise.
References
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Journal ArticleDOI

Automated cell suppression to preserve confidentiality of business statistics

TL;DR: In this paper, the authors describe the components of an experimental suite of software which seeks to resolve the conflict in the case of economic censuses, including those which identify sensitive statistics, determine complementary suppressions and audit the suppressed publications.
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