Novel Decoding Algorithm for Noiseless Non-Adaptive Group Testing
Manuel Franco-Vivo

TL;DR
This paper introduces a new decoding algorithm, W-SCOMP, for noiseless non-adaptive group testing, which improves detection success probability and efficiency over existing methods, supported by theoretical analysis and simulations.
Contribution
The paper presents W-SCOMP, a novel decoding algorithm that outperforms existing algorithms in noiseless non-adaptive group testing scenarios.
Findings
W-SCOMP achieves higher success probability than existing algorithms.
Theoretical analysis confirms W-SCOMP's superior performance.
Simulation results validate the theoretical advantages of W-SCOMP.
Abstract
Group testing enables the identification of a small subset of defective items within a larger population by performing tests on pools of items rather than on each item individually. Over the years, it has not only attracted attention from the academic community, but has also demonstrated its potential in addressing real-world problems such as infectious disease screening, drug discovery and manufacturing quality control. With the emergence of the COVID-19 pandemic, interest in group testing has grown further, particularly in non-adaptive testing, due to its time efficiency compared to adaptive approaches. This highlights the importance of improving the performance currently achievable in such a scheme. This article focuses on advancing the field of noiseless non-adaptive group testing. The main objective of this work is to study and maximize the probability of successfully identifying…
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Taxonomy
TopicsSARS-CoV-2 detection and testing · Biosensors and Analytical Detection · SARS-CoV-2 and COVID-19 Research
