Actual Knowledge Gain as Privacy Loss in Local Privacy Accounting
Mingen Pan

TL;DR
This paper introduces the concept of realized privacy loss in local differential privacy, providing a more accurate measure of privacy risk, and proposes the Bayesian Privacy Filter for improved privacy accounting in adaptive query settings.
Contribution
It defines realized privacy loss as a tighter upper bound on knowledge gain, and develops the Bayesian Privacy Filter for efficient, adaptive privacy management.
Findings
Bayesian Privacy Filter outperforms basic composition by 1-4 times.
Realized privacy loss tightly bounds actual knowledge gain.
Method effectively manages privacy budget in adaptive queries.
Abstract
This paper establishes the equivalence between Local Differential Privacy (LDP) and a global limit on learning any knowledge specific to a queried object. However, an output from an LDP query is not necessarily required to provide exact amount of knowledge equal to the upper bound of the learning limit. The LDP guarantee can overestimate the amount of knowledge gained by an analyst from some outputs. To address this issue, the least upper bound on the actual knowledge gain is derived and referred to as realized privacy loss. This measure is also shown to serve as an upper bound for the actual g-leakage in quantitative information flow. The gap between the LDP guarantee and realized privacy loss motivates the exploration of a more efficient privacy accounting for fully adaptive composition, where an adversary adaptively selects queries based on prior results. The Bayesian Privacy Filter…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Stochastic Gradient Optimization Techniques · Bayesian Modeling and Causal Inference
