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Enabling Multilevel Trust in Privacy Preserving Data Mining

Published: 01 September 2012 Publication History

Abstract

Privacy Preserving Data Mining (PPDM) addresses the problem of developing accurate models about aggregated data without access to precise information in individual data record. A widely studied perturbation-based PPDM approach introduces random perturbation to individual values to preserve privacy before data are published. Previous solutions of this approach are limited in their tacit assumption of single-level trust on data miners. In this work, we relax this assumption and expand the scope of perturbation-based PPDM to Multilevel Trust (MLT-PPDM). In our setting, the more trusted a data miner is, the less perturbed copy of the data it can access. Under this setting, a malicious data miner may have access to differently perturbed copies of the same data through various means, and may combine these diverse copies to jointly infer additional information about the original data that the data owner does not intend to release. Preventing such diversity attacks is the key challenge of providing MLT-PPDM services. We address this challenge by properly correlating perturbation across copies at different trust levels. We prove that our solution is robust against diversity attacks with respect to our privacy goal. That is, for data miners who have access to an arbitrary collection of the perturbed copies, our solution prevent them from jointly reconstructing the original data more accurately than the best effort using any individual copy in the collection. Our solution allows a data owner to generate perturbed copies of its data for arbitrary trust levels on-demand. This feature offers data owners maximum flexibility.

Cited By

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  • (2023)Answering Private Linear Queries Adaptively Using the Common MechanismProceedings of the VLDB Endowment10.14778/3594512.359451916:8(1883-1896)Online publication date: 1-Apr-2023
  • (2023)DProvDB: Differentially Private Query Processing with Multi-Analyst ProvenanceProceedings of the ACM on Management of Data10.1145/36267611:4(1-27)Online publication date: 12-Dec-2023
  • (2023)No more privacy ConcernExpert Systems with Applications: An International Journal10.1016/j.eswa.2023.121071234:COnline publication date: 30-Dec-2023
  • Show More Cited By

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Information & Contributors

Information

Published In

cover image IEEE Transactions on Knowledge and Data Engineering
IEEE Transactions on Knowledge and Data Engineering  Volume 24, Issue 9
September 2012
189 pages

Publisher

IEEE Educational Activities Department

United States

Publication History

Published: 01 September 2012

Author Tags

  1. Covariance matrix
  2. Data privacy
  3. Estimation
  4. Noise
  5. Privacy
  6. Privacy preserving data mining
  7. Random variables
  8. multilevel trust
  9. random perturbation

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Cited By

View all
  • (2023)Answering Private Linear Queries Adaptively Using the Common MechanismProceedings of the VLDB Endowment10.14778/3594512.359451916:8(1883-1896)Online publication date: 1-Apr-2023
  • (2023)DProvDB: Differentially Private Query Processing with Multi-Analyst ProvenanceProceedings of the ACM on Management of Data10.1145/36267611:4(1-27)Online publication date: 12-Dec-2023
  • (2023)No more privacy ConcernExpert Systems with Applications: An International Journal10.1016/j.eswa.2023.121071234:COnline publication date: 30-Dec-2023
  • (2019)Sensitive and Private Data AnalysisProceedings of the 3rd International Conference on Future Networks and Distributed Systems10.1145/3341325.3342002(1-11)Online publication date: 1-Jul-2019
  • (2019)Towards Model-based Pricing for Machine Learning in a Data MarketplaceProceedings of the 2019 International Conference on Management of Data10.1145/3299869.3300078(1535-1552)Online publication date: 25-Jun-2019
  • (2019)It Is About What They Could Do with the DataACM Transactions on Computer-Human Interaction10.1145/328144426:1(1-44)Online publication date: 30-Jan-2019
  • (2019)Privacy preserving frequent itemset miningComputers and Security10.1016/j.cose.2019.03.00884:C(17-34)Online publication date: 1-Jul-2019
  • (2017)A complete privacy preservation system for data mining using function approximationJournal of Web Engineering10.5555/3177580.317758616:3-4(277-292)Online publication date: 1-Jun-2017
  • (2017)P2P Lending SurveyACM Transactions on Intelligent Systems and Technology10.1145/30788488:6(1-28)Online publication date: 24-Jul-2017
  • (2016)A review of privacy preserving models for multi-party data release frameworkProceedings of the ACM Symposium on Women in Research 201610.1145/2909067.2909098(165-168)Online publication date: 21-Mar-2016
  • Show More Cited By

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