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A Multiplicative Weights Mechanism for Privacy-Preserving Data Analysis

Published: 23 October 2010 Publication History

Abstract

We consider statistical data analysis in the interactive setting. In this setting a trusted curator maintains a database of sensitive information about individual participants, and releases privacy-preserving answers to queries as they arrive. Our primary contribution is a new differentially private multiplicative weights mechanism for answering a large number of interactive counting (or linear) queries that arrive online and may be adaptively chosen. This is the first mechanism with worst-case accuracy guarantees that can answer large numbers of interactive queries and is {\em efficient} (in terms of the runtime's dependence on the data universe size). The error is asymptotically \emph{optimal} in its dependence on the number of participants, and depends only logarithmically on the number of queries being answered. The running time is nearly {\em linear} in the size of the data universe. As a further contribution, when we relax the utility requirement and require accuracy only for databases drawn from a rich class of databases, we obtain exponential improvements in running time. Even in this relaxed setting we continue to guarantee privacy for {\em any} input database. Only the utility requirement is relaxed. Specifically, we show that when the input database is drawn from a {\em smooth} distribution — a distribution that does not place too much weight on any single data item — accuracy remains as above, and the running time becomes {\em poly-logarithmic} in the data universe size. The main technical contributions are the application of multiplicative weights techniques to the differential privacy setting, a new privacy analysis for the interactive setting, and a technique for reducing data dimensionality for databases drawn from smooth distributions.

Cited By

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  • (2024)Continual Release of Differentially Private Synthetic Data from Longitudinal Data CollectionsProceedings of the ACM on Management of Data10.1145/36515952:2(1-26)Online publication date: 14-May-2024
  • (2023)Black-box differential privacy for interactive MLProceedings of the 37th International Conference on Neural Information Processing Systems10.5555/3666122.3669503(77313-77330)Online publication date: 10-Dec-2023
  • (2023)The target-charging technique for privacy analysis across interactive computationsProceedings of the 37th International Conference on Neural Information Processing Systems10.5555/3666122.3668837(62139-62168)Online publication date: 10-Dec-2023
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Published In

cover image Guide Proceedings
FOCS '10: Proceedings of the 2010 IEEE 51st Annual Symposium on Foundations of Computer Science
October 2010
782 pages
ISBN:9780769542447

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IEEE Computer Society

United States

Publication History

Published: 23 October 2010

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Cited By

View all
  • (2024)Continual Release of Differentially Private Synthetic Data from Longitudinal Data CollectionsProceedings of the ACM on Management of Data10.1145/36515952:2(1-26)Online publication date: 14-May-2024
  • (2023)Black-box differential privacy for interactive MLProceedings of the 37th International Conference on Neural Information Processing Systems10.5555/3666122.3669503(77313-77330)Online publication date: 10-Dec-2023
  • (2023)The target-charging technique for privacy analysis across interactive computationsProceedings of the 37th International Conference on Neural Information Processing Systems10.5555/3666122.3668837(62139-62168)Online publication date: 10-Dec-2023
  • (2023)Multi-task differential privacy under distribution skewProceedings of the 40th International Conference on Machine Learning10.5555/3618408.3619139(17784-17807)Online publication date: 23-Jul-2023
  • (2023)Learning-augmented private algorithms for multiple quantile releaseProceedings of the 40th International Conference on Machine Learning10.5555/3618408.3619078(16344-16376)Online publication date: 23-Jul-2023
  • (2023)PreFair: Privately Generating Justifiably Fair Synthetic DataProceedings of the VLDB Endowment10.14778/3583140.358316816:6(1573-1586)Online publication date: 1-Feb-2023
  • (2023)Turbo: Effective Caching in Differentially-Private DatabasesProceedings of the 29th Symposium on Operating Systems Principles10.1145/3600006.3613174(579-594)Online publication date: 23-Oct-2023
  • (2023)Communication Efficient and Differentially Private Logistic Regression under the Distributed SettingProceedings of the 29th ACM SIGKDD Conference on Knowledge Discovery and Data Mining10.1145/3580305.3599279(69-79)Online publication date: 6-Aug-2023
  • (2023)Private Graph Data Release: A SurveyACM Computing Surveys10.1145/356908555:11(1-39)Online publication date: 22-Feb-2023
  • (2023)Gradient leakage attacks in federated learningArtificial Intelligence Review10.1007/s10462-023-10550-z56:Suppl 1(1337-1374)Online publication date: 23-Jul-2023
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