GDP vs. LDP: A Survey from the Perspective of Information-Theoretic Channel

Author:

Liu HaiORCID,Peng ChanggenORCID,Tian Youliang,Long Shigong,Tian Feng,Wu Zhenqiang

Abstract

The existing work has conducted in-depth research and analysis on global differential privacy (GDP) and local differential privacy (LDP) based on information theory. However, the data privacy preserving community does not systematically review and analyze GDP and LDP based on the information-theoretic channel model. To this end, we systematically reviewed GDP and LDP from the perspective of the information-theoretic channel in this survey. First, we presented the privacy threat model under information-theoretic channel. Second, we described and compared the information-theoretic channel models of GDP and LDP. Third, we summarized and analyzed definitions, privacy-utility metrics, properties, and mechanisms of GDP and LDP under their channel models. Finally, we discussed the open problems of GDP and LDP based on different types of information-theoretic channel models according to the above systematic review. Our main contribution provides a systematic survey of channel models, definitions, privacy-utility metrics, properties, and mechanisms for GDP and LDP from the perspective of information-theoretic channel and surveys the differential privacy synthetic data generation application using generative adversarial network and federated learning, respectively. Our work is helpful for systematically understanding the privacy threat model, definitions, privacy-utility metrics, properties, and mechanisms of GDP and LDP from the perspective of information-theoretic channel and promotes in-depth research and analysis of GDP and LDP based on different types of information-theoretic channel models.

Funder

National Natural Science Foundation of China

Project Funded by China Postdoctoral Science Foundation

Major Scientific and Technological Special Project of Guizhou Province

Publisher

MDPI AG

Subject

General Physics and Astronomy

Reference104 articles.

1. What Can We Learn Privately?

2. Bounded privacy-utility monotonicity indicating bounded tradeoff of differential privacy mechanisms

3. Extremal mechanisms for local differential privacy;Kairouz;J. Mach. Learn. Res.,2016

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