Improved Probabilistic Lower Bounds for Separable Matrices
Daniil Goshkoder, Nikita Polyanskii, Ilya Vorobyev

Abstract
This work focuses on non-adaptive combinatorial group testing, with a primary goal of efficiently identifying a set of at most defective elements among a given set of elements using the fewest possible tests. Non-adaptive combinatorial group testing often employs disjunctive matrices (DM) and separable matrices (SM). This paper discusses separable matrices and recently introduced list-decoding separable matrices (LDSM) with list size , which allow for non-adaptive identification of defectives with the decoding complexity linear in the number of tests and the number of elements. In our study, we distinguish two subclasses of these matrices: matrices which can be used when the number of defectives is a priori known (-SM and -LDSM), and matrices which can be used for any subset of at most defectives (-SM and -LDSM). Our…
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