English

Sparsity-Constrained Community-Based Group Testing

Information Theory 2024-03-20 v1 math.IT

Abstract

In this work, we consider the sparsity-constrained community-based group testing problem, where the population follows a community structure. In particular, the community consists of FF families, each with MM members. A number kfk_f out of the FF families are infected, and a family is said to be infected if kmk_m out of its MM members are infected. Furthermore, the sparsity constraint allows at most ρT\rho_T individuals to be grouped in each test. For this sparsity-constrained community model, we propose a probabilistic group testing algorithm that can identify the infected population with a vanishing probability of error and we provide an upper-bound on the number of tests. When km=Θ(M)k_m = \Theta(M) and Mlog(FM)M \gg \log(FM), our bound outperforms the existing sparsity-constrained group testing results trivially applied to the community model. If the sparsity constraint is relaxed, our achievable bound reduces to existing bounds for community-based group testing. Moreover, our scheme can also be applied to the classical dilution model, where it outperforms existing noise-level-independent schemes in the literature.

Keywords

Cite

@article{arxiv.2403.12419,
  title  = {Sparsity-Constrained Community-Based Group Testing},
  author = {Sarthak Jain and Martina Cardone and Soheil Mohajer},
  journal= {arXiv preprint arXiv:2403.12419},
  year   = {2024}
}