Privbayes : private data release via Bayesian networks

[thumbnail of WRAP_Cormode_PrivBayes.pdf]
Preview
PDF
WRAP_Cormode_PrivBayes.pdf - Accepted Version - Requires a PDF viewer.

Download (829kB) | Preview
[thumbnail of Publisher permission] PDF (Publisher permission)
Author rights query.pdf - Other
Embargoed item. Restricted access to Repository staff only - Requires a PDF viewer.

Download (167kB)

Request Changes to record.

Abstract

Privacy-preserving data publishing is an important problem that has been the focus of extensive study. The state-of-the-art goal for this problem is differential privacy, which offers a strong degree of privacy protection without making restrictive assumptions about the adversary. Existing techniques using differential privacy, however, cannot effectively handle the publication of high-dimensional data. In particular, when the input dataset contains a large number of attributes, existing methods require injecting a prohibitive amount of noise compared to the signal in the data, which renders the published data next to useless. To address the deficiency of the existing methods, this paper presents PrivBayes, a differentially private method for releasing high-dimensional data. Given a dataset D, PrivBayes first constructs a Bayesian network N, which (i) provides a succinct model of the correlations among the attributes in D and (ii) allows us to approximate the distribution of data in D using a set P of low-dimensional marginals of D. After that, PrivBayes injects noise into each marginal in P to ensure differential privacy, and then uses the noisy marginals and the Bayesian network to construct an approximation of the data distribution in D. Finally, PrivBayes samples tuples from the approximate distribution to construct a synthetic dataset, and then releases the synthetic data. Intuitively, PrivBayes circumvents the curse of dimensionality, as it injects noise into the low-dimensional marginals in P instead of the high-dimensional dataset D. Private construction of Bayesian networks turns out to be significantly challenging, and we introduce a novel approach that uses a surrogate function for mutual information to build the model more accurately. We experimentally evaluate PrivBayes on real data, and demonstrate that it significantly outperforms existing solutions in terms of accuracy.

Item Type: Conference Item (Paper)
Subjects: Q Science > QA Mathematics > QA76 Electronic computers. Computer science. Computer software
Divisions: Faculty of Science, Engineering and Medicine > Science > Computer Science
Library of Congress Subject Headings (LCSH): Database security, Confidential communications, Data protection, Bayesian statistical decision theory -- Data processing, Neural networks (Computer science), Electronic data processing, Data mining, Computer simulation
Journal or Publication Title: Proceedings of the 2014 ACM SIGMOD international conference on Management of data
Publisher: ACM
ISBN: 9781450323765
Official Date: 22 June 2014
Dates:
Date
Event
22 June 2014
Published
Page Range: pp. 1423-1434
DOI: 10.1145/2588555.2588573
Status: Peer Reviewed
Publication Status: Published
Access rights to Published version: Restricted or Subscription Access
Date of first compliant deposit: 28 December 2015
Date of first compliant Open Access: 28 December 2015
Funder: Singapore. Nanyang Technological University (NTU), Microsoft Research Asia, Singapore. Ministry of Education
Grant number: M4080094.020 (NTU) ; AcRF Tier-2 (Ministry of Education)
Adapted As: http://wrap.warwick.ac.uk/92273/
Embodied As: 1
Conference Paper Type: Paper
Title of Event: ACM SIGMOD Conference
Type of Event: Conference
Location of Event: Salt Lake City, Utah
Date(s) of Event: 22-27 Jun 2014
Related URLs:
Persistent URL: https://wrap.warwick.ac.uk/63459/

Export / Share Citation


Request changes or add full text files to a record

Repository staff actions (login required)

View Item View Item