利用先验统计数据进行分组测试的多阶段算法

ArXiv Pub Date : 2024-02-15 DOI:10.48550/arXiv.2402.10018
Ayelet C. Portnoy, Alejandro Cohen
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引用次数: 0

摘要

在本文中,我们提出了一种高效的多阶段算法,用于具有一般相关先验统计量的非自适应分组检验(GT)。所提出的解决方案可应用于任何以树状结构表示的相关统计先验,如有限状态机和马尔可夫过程。我们引入了列表维特比算法(LVA)的一种变体,使用比目标少得多的测试来实现精确恢复,从而有效地从相关先验统计结构中获益。我们的数值结果表明,所提出的多阶段 GT(MSGT)算法在实际应用中,如 COVID-19 和稀疏信号恢复应用中,能以可行的复杂度获得最佳的最大后验(MAP)性能,并且与现有的经典低复杂度 GT 算法相比,在所测试的场景中至少减少了 25%$ 的集合测试次数。此外,我们还分析了所提出的 MSGT 算法的复杂度特征,从而保证了其效率。
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Multi-Stage Algorithm for Group Testing with Prior Statistics
In this paper, we propose an efficient multi-stage algorithm for non-adaptive Group Testing (GT) with general correlated prior statistics. The proposed solution can be applied to any correlated statistical prior represented in trellis, e.g., finite state machines and Markov processes. We introduce a variation of List Viterbi Algorithm (LVA) to enable accurate recovery using much fewer tests than objectives, which efficiently gains from the correlated prior statistics structure. Our numerical results demonstrate that the proposed Multi-Stage GT (MSGT) algorithm can obtain the optimal Maximum A Posteriori (MAP) performance with feasible complexity in practical regimes, such as with COVID-19 and sparse signal recovery applications, and reduce in the scenarios tested the number of pooled tests by at least $25\%$ compared to existing classical low complexity GT algorithms. Moreover, we analytically characterize the complexity of the proposed MSGT algorithm that guarantees its efficiency.
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