稀疏性约束和噪声群测试的快速分裂算法

IF 1.4 4区 数学 Q2 MATHEMATICS, APPLIED Information and Inference-A Journal of the Ima Pub Date : 2022-08-01 DOI:10.1093/imaiai/iaac031
Eric Price;Jonathan Scarlett;Nelvin Tan
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引用次数: 4

摘要

在小组测试中,目标是基于测试结果指示是否存在至少一个缺陷项目的测试,在更大的项目集合中识别缺陷项目的子集。这个问题与医学检测、DNA测序、通信协议等领域有关。在本文中,我们研究了(i)该问题的稀疏性约束版本,其中测试过程受到以下两个约束之一的约束:项目是有限可分的,因此最多可以参与$\gamma$测试;或者测试的大小被限制为每次测试汇集不超过$\rho$个项目;以及(ii)问题的噪声版本,其中每个测试结果以一定的恒定概率独立翻转。在每种设置下,考虑到误差概率渐近消失的每种恢复保证,我们引入了一种快速分裂算法,并建立了它的近似最优性,不仅在测试次数方面,而且在解码时间方面。虽然我们算法的最基本公式需要每个算法的$\varOmega(n)$存储,但我们也提供了基于哈希的低存储变体,具有类似的恢复保证。
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Fast splitting algorithms for sparsity-constrained and noisy group testing
In group testing, the goal is to identify a subset of defective items within a larger set of items based on tests whose outcomes indicate whether at least one defective item is present. This problem is relevant in areas such as medical testing, DNA sequencing, communication protocols and many more. In this paper, we study (i) a sparsity-constrained version of the problem, in which the testing procedure is subjected to one of the following two constraints: items are finitely divisible and thus may participate in at most $\gamma $ tests; or tests are size-constrained to pool no more than $\rho $ items per test; and (ii) a noisy version of the problem, where each test outcome is independently flipped with some constant probability. Under each of these settings, considering the for-each recovery guarantee with asymptotically vanishing error probability, we introduce a fast splitting algorithm and establish its near-optimality not only in terms of the number of tests, but also in terms of the decoding time. While the most basic formulations of our algorithms require $\varOmega (n)$ storage for each algorithm, we also provide low-storage variants based on hashing, with similar recovery guarantees.
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来源期刊
CiteScore
3.90
自引率
0.00%
发文量
28
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