Partial Covering Arrays: Algorithms and Asymptotics
Kaushik Sarkar, Charles J. Colbourn, Annalisa De Bonis, and Ugo, Vaccaro

TL;DR
This paper introduces probabilistic algorithms and asymptotic bounds for relaxed versions of covering arrays, improving their efficiency and applicability in various testing and biological contexts.
Contribution
It provides new probabilistic bounds and polynomial-time algorithms for relaxed covering arrays, extending classical results to more flexible scenarios.
Findings
Significant improvements on upper bounds for relaxed covering arrays.
Probabilistic algorithms construct arrays in expected polynomial time.
Enhanced applicability in software, hardware, and biological testing.
Abstract
A covering array is an array with entries in , for which every subarray contains each -tuple of among its rows. Covering arrays find application in interaction testing, including software and hardware testing, advanced materials development, and biological systems. A central question is to determine or bound , the minimum number of rows of a . The well known bound is not too far from being asymptotically optimal. Sensible relaxations of the covering requirement arise when (1) the set need only be contained among the rows of at least of the subarrays and (2) the rows of every subarray need only contain a (large) subset of $\{1, 2,…
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