Invention Grant
- Patent Title: Differentially private linear queries on histograms
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Application No.: US13831948Application Date: 2013-03-15
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Publication No.: US09672364B2Publication Date: 2017-06-06
- Inventor: Li Zhang , Kunal Talwar , Aleksandar Nikolov
- Applicant: Microsoft Corporation
- Applicant Address: US WA Redmond
- Assignee: MICROSOFT TECHNOLOGY LICENSING, LLC
- Current Assignee: MICROSOFT TECHNOLOGY LICENSING, LLC
- Current Assignee Address: US WA Redmond
- Agent Jonathan M. Waldman
- Main IPC: H04L9/00
- IPC: H04L9/00 ; G06F21/60 ; G06F21/62 ; G06F17/18

Abstract:
The privacy of linear queries on histograms is protected. A database containing private data is queried. Base decomposition is performed to recursively compute an orthonormal basis for the database space. Using correlated (or Gaussian) noise and/or least squares estimation, an answer having differential privacy is generated and provided in response to the query. In some implementations, the differential privacy is ε-differential privacy (pure differential privacy) or is (ε,δ)-differential privacy (i.e., approximate differential privacy). In some implementations, the data in the database may be dense. Such implementations may use correlated noise without using least squares estimation. In other implementations, the data in the database may be sparse. Such implementations may use least squares estimation with or without using correlated noise.
Public/Granted literature
- US20140283091A1 DIFFERENTIALLY PRIVATE LINEAR QUERIES ON HISTOGRAMS Public/Granted day:2014-09-18
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