A tight lower bound on non-adaptive group testing estimation
Abstract
Efficiently counting or detecting defective items is a crucial task in various fields ranging from biological testing to quality control to streaming algorithms. The \emph{group testing estimation problem} concerns estimating the number of defective elements in a collection of total within a given factor. We primarily consider the classical query model, in which a query reveals whether the selected group of elements contains a defective one. We show that any non-adaptive randomized algorithm that estimates the value of within a constant factor requires queries. This confirms that a known upper bound by Bshouty (2019) is tight and resolves a conjecture by Damaschke and Sheikh Muhammad (2010). Additionally, we prove similar matching upper and lower bounds in the threshold query model.
Cite
@article{arxiv.2309.10286,
title = {A tight lower bound on non-adaptive group testing estimation},
author = {Nader H. Bshouty and Tsun-Ming Cheung and Gergely Harcos and Hamed Hatami and Anthony Ostuni},
journal= {arXiv preprint arXiv:2309.10286},
year = {2023}
}
Comments
This work is a merger of arXiv:2309.09613 and arXiv:2309.10286