Noisy Group Testing with Side Information
Esmaeil Karimi, Anoosheh Heidarzadeh, Krishna R. Narayanan, and Alex, Sprintson

TL;DR
This paper introduces a probabilistic interaction model and a belief propagation decoding scheme for noisy group testing with side information, significantly improving accuracy in identifying infected individuals under high noise conditions.
Contribution
It proposes a novel interaction model capturing side information and a belief propagation-based decoding method that enhances detection accuracy in noisy group testing scenarios.
Findings
Higher success probability compared to traditional methods
Lower false-negative rates in high noise regimes
Improved robustness with side information
Abstract
Group testing has recently attracted significant attention from the research community due to its applications in diagnostic virology. An instance of the group testing problem includes a ground set of individuals which includes a small subset of infected individuals. The group testing procedure consists of a number of tests, such that each test indicates whether or not a given subset of individuals includes one or more infected individuals. The goal of the group testing procedure is to identify the subset of infected individuals with the minimum number of tests. Motivated by practical scenarios, such as testing for viral diseases, this paper focuses on the following group testing settings: (i) the group testing procedure is noisy, i.e., the outcome of the group testing procedure can be flipped with a certain probability; (ii) there is a certain amount of side information on the…
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Taxonomy
TopicsSARS-CoV-2 detection and testing · Polyomavirus and related diseases · Respiratory viral infections research
