$\alpha$-Information-theoretic Privacy Watchdog and Optimal Privatization Scheme
Ni Ding, Mohammad Amin Zarrabian, Parastoo Sadeghi

TL;DR
This paper introduces an $oldsymbol{ extalpha}$-lift measure for data privacy, proposes an optimal privatization scheme minimizing this measure, and demonstrates its effectiveness in balancing privacy and utility through numerical experiments.
Contribution
It defines a tunable $oldsymbol{ extalpha}$-lift privacy measure and derives an optimal data sanitization scheme that minimizes this measure, extending existing privacy frameworks.
Findings
$oldsymbol{ extalpha}$-lift generalizes maximum lift with tunable parameter.
Optimal privatization is $X$-invariant, simplifying implementation.
Numerical results show improved privacy-utility tradeoff flexibility.
Abstract
This paper proposes an -lift measure for data privacy and determines the optimal privatization scheme that minimizes the -lift in the watchdog method. To release data that is correlated with sensitive information , the ratio denotes the `lift' of the posterior belief on and quantifies data privacy. The -lift is proposed as the -norm of the lift: . This is a tunable measure: When , each lift is weighted by its likelihood of appearing in the dataset (w.r.t. the marginal probability ); For , -lift reduces to the existing maximum lift. To generate the sanitized data , we adopt the privacy watchdog method using -lift: Obtain containing all 's such that…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cryptography and Data Security · Privacy, Security, and Data Protection
