On Detecting Some Defective Items in Group Testing

Abstract

Group testing is an approach aimed at identifying up to d defective items among a total of n elements. This is accomplished by examining subsets to determine if at least one defective item is present. In our study, we focus on the problem of identifying a subset of ≤ d defective items. We develop upper and lower bounds on the number of tests required to detect defective items in both the adaptive and non-adaptive settings while considering scenarios where no prior knowledge of d is available, and situations where an estimate of d or at least some non-trivial upper bound on d is available. When no prior knowledge on d is available, we prove a lower bound of ( 2n + n) tests in the randomized non-adaptive settings and an upper bound of O( 2 n) for the same settings. Furthermore, we demonstrate that any non-adaptive deterministic algorithm must ask (n) tests, signifying a fundamental limitation in this scenario. For adaptive algorithms, we establish tight bounds in different scenarios. In the deterministic case, we prove a tight bound of ((n/)). Moreover, in the randomized settings, we derive a tight bound of ((n/d)). When d, or at least some non-trivial estimate of d, is known, we prove a tight bound of (d (n/d)) for the deterministic non-adaptive settings, and ((n/d)) for the randomized non-adaptive settings. In the adaptive case, we present an upper bound of O( (n/)) for the deterministic settings, and a lower bound of ((n/d)+ n). Additionally, we establish a tight bound of ( (n/d)) for the randomized adaptive settings.

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