On Subset Retrieval and Group Testing Problems with Differential Privacy Constraints
Mira Gonen, Michael Langberg, and Alex Sprintson

TL;DR
This paper develops a differential privacy framework for subset retrieval and noisy group testing, establishing bounds and reductions that balance privacy guarantees with testing accuracy in disease control scenarios.
Contribution
It introduces a novel differential privacy framework for subset retrieval and group testing, with tight bounds and reductions between the problems.
Findings
Established tight bounds on accuracy under privacy constraints
Formulated a reduction between subset retrieval and group testing
Demonstrated privacy-accuracy trade-offs in practical scenarios
Abstract
This paper focuses on the design and analysis of privacy-preserving techniques for group testing and infection status retrieval. Our work is motivated by the need to provide accurate information on the status of disease spread among a group of individuals while protecting the privacy of the infection status of any single individual involved. The paper is motivated by practical scenarios, such as controlling the spread of infectious diseases, where individuals might be reluctant to participate in testing if their outcomes are not kept confidential. The paper makes the following contributions. First, we present a differential privacy framework for the subset retrieval problem, which focuses on sharing the infection status of individuals with administrators and decision-makers. We characterize the trade-off between the accuracy of subset retrieval and the degree of privacy guaranteed to…
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Taxonomy
TopicsSARS-CoV-2 detection and testing · Advanced biosensing and bioanalysis techniques · Machine Learning and Algorithms
