Developing Non-Stochastic Privacy-Preserving Policies Using Agglomerative Clustering
Ni Ding, Farhad Farokhi

TL;DR
This paper introduces agglomerative clustering algorithms for non-stochastic privacy-preserving data release, optimizing privacy-utility trade-offs without relying on probabilistic models.
Contribution
It proposes novel clustering-based methods for non-stochastic privacy measures, specifically $L_0$ and $I_*$, to generate privacy-preserving data quantizations.
Findings
Algorithms converge to locally optimal solutions.
Maximin information relates to confusability graph structure.
Connections to probabilistic privacy measures are established.
Abstract
We consider a non-stochastic privacy-preserving problem in which an adversary aims to infer sensitive information from publicly accessible data without using statistics. We consider the problem of generating and releasing a quantization of to minimize the privacy leakage of to while maintaining a certain level of utility (or, inversely, the quantization loss). The variables and are treated as bounded and non-probabilistic, but are otherwise general. We consider two existing non-stochastic privacy measures, namely the maximum uncertainty reduction and the refined information (also called the maximin information) of . For each privacy measure, we propose a corresponding agglomerative clustering algorithm that converges to a locally optimal quantization solution by iteratively merging…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cryptography and Data Security · Distributed Sensor Networks and Detection Algorithms
