Unifying Privacy Measures via Maximal (α,β)-Leakage (MαbeL)
Abstract
We introduce a family of information leakage measures called maximal (α,β)-leakage (MαbeL), parameterized by real numbers α and β greater than or equal to 1. The measure is formalized via an operational definition involving an adversary guessing an unknown (randomized) function of the data given the released data. We obtain a simplified computable expression for the measure and show that it satisfies several basic properties such as monotonicity in β for a fixed α, non-negativity, data processing inequalities, and additivity over independent releases. We highlight the relevance of this family by showing that it bridges several known leakage measures, including maximal α-leakage (β=1), maximal leakage (α=∞,β=1), local differential privacy (LDP) (α=∞,β=∞), and local Renyi differential privacy (LRDP) (α=β), thereby giving an operational interpretation to local Renyi differential privacy. We also study a conditional version of MαbeL on leveraging which we recover differential privacy and Renyi differential privacy. A new variant of LRDP, which we call maximal Renyi leakage, appears as a special case of MαbeL for α=∞ that smoothly tunes between maximal leakage (β=1) and LDP (β=∞). Finally, we show that a vector form of the maximal Renyi leakage relaxes differential privacy under Gaussian and Laplacian mechanisms.
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