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arxiv: 1902.00329 · v1 · pith:QXIRLPT4new · submitted 2019-02-01 · 💻 cs.IT · cs.CR· math.IT

Privacy Against Brute-Force Inference Attacks

classification 💻 cs.IT cs.CRmath.IT
keywords datameasureprivacybrute-forceguessinginformationlinearoptimal
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Privacy-preserving data release is about disclosing information about useful data while retaining the privacy of sensitive data. Assuming that the sensitive data is threatened by a brute-force adversary, we define Guessing Leakage as a measure of privacy, based on the concept of guessing. After investigating the properties of this measure, we derive the optimal utility-privacy trade-off via a linear program with any $f$-information adopted as the utility measure, and show that the optimal utility is a concave and piece-wise linear function of the privacy-leakage budget.

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