English

Noisy group testing via spatial coupling

Discrete Mathematics 2025-03-05 v1 Information Theory Combinatorics math.IT

Abstract

We study the problem of identifying a small set knθk\sim n^\theta, 0<θ<10<\theta<1, of infected individuals within a large population of size nn by testing groups of individuals simultaneously. All tests are conducted concurrently. The goal is to minimise the total number of tests required. In this paper we make the (realistic) assumption that tests are noisy, i.e.\ that a group that contains an infected individual may return a negative test result or one that does not contain an infected individual may return a positive test results with a certain probability. The noise need not be symmetric. We develop an algorithm called SPARC that correctly identifies the set of infected individuals up to o(k)o(k) errors with high probability with the asymptotically minimum number of tests. Additionally, we develop an algorithm called SPEX that exactly identifies the set of infected individuals w.h.p. with a number of tests that matches the information-theoretic lower bound for the constant column design, a powerful and well-studied test design.

Keywords

Cite

@article{arxiv.2402.02895,
  title  = {Noisy group testing via spatial coupling},
  author = {Amin Coja-Oghlan and Max Hahn-Klimroth and Lukas Hintze and Dominik Kaaser and Lena Krieg and Maurice Rolvien and Olga Scheftelowitsch},
  journal= {arXiv preprint arXiv:2402.02895},
  year   = {2025}
}