Smooth Sensitivity for Geo-Privacy
Yuting Liang, Ke Yi

TL;DR
This paper extends the smooth sensitivity framework from differential privacy to geo-privacy, enabling more tailored noise addition for privacy-preserving data analysis in metric spaces.
Contribution
It introduces a generalized smooth sensitivity approach for geo-privacy, including definitions, mechanisms, and a generic computation procedure applicable to various functions.
Findings
Enhanced privacy mechanisms for geometric data
Improved utility in privacy-preserving threshold functions
Effective density estimation with geo-privacy
Abstract
Suppose each user holds a private value in some metric space , and an untrusted data analyst wishes to compute for some function by asking each user to send in a privatized . This is a fundamental problem in privacy-preserving population analytics, and the local model of differential privacy (LDP) is the predominant model under which the problem has been studied. However, LDP requires any two different to be -distinguishable, which can be overly strong for geometric/numerical data. On the other hand, Geo-Privacy (GP) stipulates that the level of distinguishability be proportional to , providing an attractive alternative notion of personal data privacy in a metric space. However, existing GP mechanisms for this problem, which add a uniform noise to…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
