具有图约束的序贯群检验

Amin Karbasi, Morteza Zadimoghaddam
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引用次数: 29

摘要

在传统的群体测试中,目标是通过将N的任意子集分组到不同的池中来检测大群体N中不合格物品D的小子集。每组测试T的结果是一个二进制输出,这取决于该组是否包含有缺陷的项目。主要的挑战是最小化识别集合d所需的池的数量。受网络监控和感染传播应用的激励,我们考虑了带有图约束的组测试问题。与传统的组测试相反,任何项目的子集都可以被池化,这里的测试是允许的,如果它诱导出一个连通的子图H∧g。与之前工作中使用的非自适应池化过程相反,我们首先表明,通过利用自适应策略,可以显着减少测试的数量。更具体地说,对于任何图G,我们设计了一个2逼近算法(因此是顺序最优的)来定位缺陷项d的集合。为了在自适应和非自适应策略之间获得一个很好的折衷,我们设计了一个多阶段算法。特别地,我们证明了如果缺陷项集是均匀分布的,那么l阶段池化策略平均可以在O(l·|D|·|N|1/l)次测试中识别出缺陷集。特别地,对于l = log(|N|)阶段,测试的数量减少到4|D| log(|N|),这是顺序最优的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sequential group testing with graph constraints
In conventional group testing, the goal is to detect a small subset of defecting items D in a large population N by grouping arbitrary subset of N into different pools. The result of each group test T is a binary output depending on whether the group contains a defective item or not. The main challenge is to minimize the number of pools required to identify the set D. Motivated by applications in network monitoring and infection propagation, we consider the problem of group testing with graph constraints. As opposed to conventional group testing where any subset of items can be pooled, here a test is admissible if it induces a connected subgraph H ⊂ G. In contrast to the non-adaptive pooling process used in previous work, we first show that by exploiting an adaptive strategy, one can dramatically reduce the number of tests. More specifically, for any graph G, we devise a 2-approximation algorithm (and hence order optimal) that locates the set of defective items D. To obtain a good compromise between adaptive and non-adaptive strategies, we then devise a multi-stage algorithm. In particular, we show that if the set of defective items are uniformly distributed, then an l-stage pooling strategy can identify the defective set in O(l·|D|·|N|1/l) tests, on the average. In particular, for l = log(|N|) stages, the number of tests reduces to 4|D| log(|N|), which in turn is order optimum.
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