Design of policy-aware differentially private algorithms
The problem of designing error optimal differentially private algorithms is well studied. Recent work applying differential privacy to real world settings have used variants of differential privacy that appropriately modify the notion of neighboring databases. The problem of designing error optimal algorithms for such variants of differential privacy is open. In this paper, we show a novel transformational equivalence result that can turn the problem of query answering under differential privacy with a modified notion of neighbors to one of query answering under standard differential privacy, for a large class of neighbor definitions. We utilize the Blowfish privacy framework that generalizes differential privacy. Blowfish uses a policy graph to instantiate different notions of neighboring databases. We show that the error incurred when answering a workload W on a database x under a Blowfish policy graph G is identical to the error required to answer a transformed workload fG(W) on database gG(x) under standard differential privacy, where fG and gG are linear transformations based on G. Using this result, we develop error effcient algorithms for releasing histograms and multidimensional range queries under different Blowfish policies. We believe the tools we develop will be useful for finding mechanisms to answer many other classes of queries with low error under other policy graphs. © 2015 VLDB Endowment 21508097/15/12.
Duke Scholars
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Related Subject Headings
- 4605 Data management and data science
- 0807 Library and Information Studies
- 0806 Information Systems
- 0802 Computation Theory and Mathematics
Citation
Publication Date
Volume
Start / End Page
Related Subject Headings
- 4605 Data management and data science
- 0807 Library and Information Studies
- 0806 Information Systems
- 0802 Computation Theory and Mathematics