A tight lower bound on non-adaptive group testing estimation

09/19/2023
by   Tsun-Ming Cheung, et al.
0

Efficiently counting or detecting defective items is a crucial task in various fields ranging from biological testing to quality control to streaming algorithms. The group testing estimation problem concerns estimating the number of defective elements d in a collection of n total within a fixed 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 d within a constant factor requires Ω(log n) queries. This confirms that a known O(log n) upper bound by Bshouty (2019) is tight and resolves a conjecture by Damaschke and Sheikh Muhammad (2010). Additionally, we prove a similar lower bound in the threshold query model.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/18/2023

A Tight Lower Bound of Ω(log n) for the Estimation of the Number of Defective Items

Let X be a set of items of size n , which may contain some defective ite...
research
08/15/2023

Improved Lower Bound for Estimating the Number of Defective Items

Let X be a set of items of size n that contains some defective items, de...
research
06/27/2023

On Detecting Some Defective Items in Group Testing

Group testing is an approach aimed at identifying up to d defective item...
research
09/05/2020

Optimal Deterministic Group Testing Algorithms to Estimate the Number of Defectives

We study the problem of estimating the number of defective items d withi...
research
11/07/2022

Query Complexity of the Metric Steiner Tree Problem

We study the query complexity of the metric Steiner Tree problem, where ...
research
10/18/2018

Testing Matrix Rank, Optimally

We show that for the problem of testing if a matrix A ∈ F^n × n has rank...
research
07/07/2020

Streaming Complexity of SVMs

We study the space complexity of solving the bias-regularized SVM proble...

Please sign up or login with your details

Forgot password? Click here to reset