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Algorithms with More Granular Differential Privacy Guarantees

Authors :
Ghazi, Badih
Kumar, Ravi
Manurangsi, Pasin
Steinke, Thomas
Ghazi, Badih
Kumar, Ravi
Manurangsi, Pasin
Steinke, Thomas
Publication Year :
2022

Abstract

Differential privacy is often applied with a privacy parameter that is larger than the theory suggests is ideal; various informal justifications for tolerating large privacy parameters have been proposed. In this work, we consider partial differential privacy (DP), which allows quantifying the privacy guarantee on a per-attribute basis. In this framework, we study several basic data analysis and learning tasks, and design algorithms whose per-attribute privacy parameter is smaller that the best possible privacy parameter for the entire record of a person (i.e., all the attributes).

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1381565563
Document Type :
Electronic Resource