English

Toward Evaluating Re-identification Risks in the Local Privacy Model

Cryptography and Security 2021-12-21 v5 Databases

Abstract

LDP (Local Differential Privacy) has recently attracted much attention as a metric of data privacy that prevents the inference of personal data from obfuscated data in the local model. However, there are scenarios in which the adversary wants to perform re-identification attacks to link the obfuscated data to users in this model. LDP can cause excessive obfuscation and destroy the utility in these scenarios because it is not designed to directly prevent re-identification. In this paper, we propose a measure of re-identification risks, which we call PIE (Personal Information Entropy). The PIE is designed so that it directly prevents re-identification attacks in the local model. It lower-bounds the lowest possible re-identification error probability (i.e., Bayes error probability) of the adversary. We analyze the relation between LDP and the PIE, and analyze the PIE and utility in distribution estimation for two obfuscation mechanisms providing LDP. Through experiments, we show that when we consider re-identification as a privacy risk, LDP can cause excessive obfuscation and destroy the utility. Then we show that the PIE can be used to guarantee low re-identification risks for the local obfuscation mechanisms while keeping high utility.

Keywords

Cite

@article{arxiv.2010.08238,
  title  = {Toward Evaluating Re-identification Risks in the Local Privacy Model},
  author = {Takao Murakami and Kenta Takahashi},
  journal= {arXiv preprint arXiv:2010.08238},
  year   = {2021}
}

Comments

Accepted at Transactions on Data Privacy

R2 v1 2026-06-23T19:23:52.817Z