Enhancing Feature-Specific Data Protection via Bayesian Coordinate Differential Privacy

Published: 22 Jan 2025, Last Modified: 09 Mar 2025AISTATS 2025 PosterEveryoneRevisionsBibTeXCC BY 4.0
TL;DR: A Bayesian approach to quantify privacy across different features is proposed and characterized.
Abstract: Local Differential Privacy (LDP) offers strong privacy guarantees without requiring users to trust external parties. However, LDP applies uniform protection to all data features, including less sensitive ones, which degrades performance of downstream tasks. To overcome this limitation, we propose a Bayesian framework, Bayesian Coordinate Differential Privacy (BCDP), that enables feature-specific privacy quantification. This more nuanced approach complements LDP by adjusting privacy protection according to the sensitivity of each feature, enabling improved performance of downstream tasks without compromising privacy. We characterize the properties of BCDP and articulate its connections with standard non-Bayesian privacy frameworks. We further apply our BCDP framework to the problems of private mean estimation and ordinary least-squares regression. The BCDP-based approach obtains improved accuracy compared to a purely LDP-based approach, without compromising on privacy.
Submission Number: 1543
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