Quantitative Group Testing and Pooled Data in the Linear Regime with Sublinear Tests
Nelvin Tan, Pablo Pascual Cobo, Ramji Venkataramanan

TL;DR
This paper introduces a spatially coupled Bernoulli test matrix and an AMP algorithm for efficient, near-exact recovery in quantitative group testing and pooled data problems, with robustness to noise and sublinear test complexity.
Contribution
It proposes a novel spatially coupled test scheme with AMP recovery for pooled data, providing rigorous performance guarantees in noisy and noiseless regimes.
Findings
Achieves almost-exact recovery with sublinear tests in noiseless case.
Degrades gracefully under noise, maintaining reliable recovery.
Outperforms existing schemes and convex programming methods at finite sizes.
Abstract
In the pooled data problem, the goal is to identify the categories associated with a large collection of items via a sequence of pooled tests. Each pooled test reveals the number of items in the pool belonging to each category. A prominent special case is quantitative group testing (QGT), which is the case of pooled data with two categories. We consider these problems in the non-adaptive and linear regime, where the fraction of items in each category is of constant order. We propose a scheme with a spatially coupled Bernoulli test matrix and an efficient approximate message passing (AMP) algorithm for recovery. We rigorously characterize its asymptotic performance in both the noiseless and noisy settings, and prove that in the noiseless case, the AMP algorithm achieves almost-exact recovery with a number of tests sublinear in the total number of items . Although there exist other…
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Taxonomy
TopicsSARS-CoV-2 detection and testing · Privacy-Preserving Technologies in Data · Machine Learning and Algorithms
