Adjusting Queries to Statistical Procedures Under Differential Privacy

10/12/2021
by   Tomer Shoham, et al.
0

We consider a dataset S held by an agency, and a vector query of interest, f(S) ∈ℝ^k, to be posed by an analyst, which contains the information required for certain planned statistical inference. The agency releases the requested vector query with noise that guarantees a given level of Differential Privacy – DP(ε,δ) – using the well-known Gaussian mechanism. The analyst can choose to pose the vector query f(S) or to adjust it by a suitable transformation that can make the agency's response more informative. For any given level of privacy DP(ε,δ) decided by the agency, we study natural situations where the analyst can achieve better statistical inference by adjusting the query with a suitable simple explicit transformation.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset