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Title: Collecting high-dimensional and correlation-constrained data with local differential privacy
Authors: Du, R 
Ye, Q 
Fu, Y 
Hu, H 
Issue Date: 2021
Source: In Proceedings of 2021 18th Annual IEEE International Conference on Sensing, Communication, and Networking (SECON), 06-09 July 2021, Rome, Italy
Abstract: Local differential privacy (LDP) is a promising privacy model for distributed data collection. It has been widely deployed in real-world systems (e.g. Chrome, iOS, macOS). In LDP-based mechanisms, an aggregator collects private values perturbed by each user and then analyses these values to estimate their statistics, such as frequency and mean. Most existing works focus on simple scalar value types, such as boolean and categorical values. However, with the emergence of smart sensors and internet of things, high-dimensional data are gaining increasing popularity. In many cases, correlations exist between various attributes of such data, e.g. temperature and luminance. To ensure LDP for high-dimensional data, existing solutions either partition the privacy budget ϵ among these correlated attributes or adopt sampling, both of which dilute the density of useful information and thus result in poor data utility.
In this paper, we propose a relaxed LDP model, namely, univariate dominance local differential privacy (UDLDP), for high-dimensional data. We quantify the correlations between attributes and present a correlation-bounded perturbation (CBP) mechanism that optimizes the partitioning of privacy budget on each correlated attribute. Furthermore, we extend CBP to support sampling, which is a common bandwidth reduction technique in sensor networks and Internet of Things. We derive the best allocation strategy of sampling probabilities among attributes in terms of data utility, which leads to the correlation-bounded perturbation mechanism with sampling (CBPS). The performance of both mechanisms is evaluated and compared with state-of-The-Art LDP mechanisms on real-world and synthetic datasets.
Publisher: Institute of Electrical and Electronics Engineers
ISBN: 978-1-6654-4108-7 (Electronic)
978-1-6654-3111-8 (Print on Demand(PoD))
DOI: 10.1109/SECON52354.2021.9491591
Description: 2021 18th Annual IEEE International Conference on Sensing, Communication, and Networking (SECON), 06-09 July 2021, Rome, Italy
Rights: © 2021 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works.
The following publication R. Du, Q. Ye, Y. Fu and H. Hu, "Collecting High-Dimensional and Correlation-Constrained Data with Local Differential Privacy," 2021 18th Annual IEEE International Conference on Sensing, Communication, and Networking (SECON), Rome, Italy, 2021 is available at https://doi.org/10.1109/SECON52354.2021.9491591.
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