Sparse Point-wise Privacy Leakage: Mechanism Design and Fundamental Limits
Amirreza Zamani, Sajad Daei, Parastoo Sadeghi, Mikael Skoglund

TL;DR
This paper introduces a new privacy mechanism design criterion called sparse point-wise privacy leakage, analyzes its fundamental limits, and proposes computational methods for optimal solutions under this criterion.
Contribution
It formulates the sparse point-wise privacy leakage problem, derives a quadratic approximation for utility, and develops a convex relaxation approach for NP-hard optimization.
Findings
High-privacy regime characterized by local quadratic approximation.
SDP relaxation provides a polynomial-time surrogate for NP-hard problems.
Sparsity threshold identified where the optimal leakage saturates.
Abstract
We study an information-theoretic privacy mechanism design problem, where an agent observes useful data that is arbitrarily correlated with sensitive data , and design disclosed data generated from (the agent has no direct access to ). We introduce \emph{sparse point-wise privacy leakage}, a worst-case privacy criterion that enforces two simultaneous constraints for every disclosed symbol : (i) may be correlated with at most realizations of , and (ii) the total leakage toward those realizations is bounded. In the high-privacy regime, we use concepts from information geometry to obtain a local quadratic approximation of mutual information which measures utility between and . When the leakage matrix is invertible, this approximation reduces the design problem to a sparse quadratic maximization, known as the Rayleigh-quotient…
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Taxonomy
TopicsSmart Grid Security and Resilience · Privacy-Preserving Technologies in Data · Cryptography and Data Security
