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A workload-adaptive mechanism for linear queries under local differential privacy

Authors :
McKenna, Ryan
Maity, Raj Kumar
Mazumdar, Arya
Miklau, Gerome
Publication Year :
2020

Abstract

We propose a new mechanism to accurately answer a user-provided set of linear counting queries under local differential privacy (LDP). Given a set of linear counting queries (the workload) our mechanism automatically adapts to provide accuracy on the workload queries. We define a parametric class of mechanisms that produce unbiased estimates of the workload, and formulate a constrained optimization problem to select a mechanism from this class that minimizes expected total squared error. We solve this optimization problem numerically using projected gradient descent and provide an efficient implementation that scales to large workloads. We demonstrate the effectiveness of our optimization-based approach in a wide variety of settings, showing that it outperforms many competitors, even outperforming existing mechanisms on the workloads for which they were intended.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2002.01582
Document Type :
Working Paper