论文标题
改进了稀疏受限组测试的界限和算法
Improved Bounds and Algorithms for Sparsity-Constrained Group Testing
论文作者
论文摘要
在小组测试中,目标是基于结果表明是否存在有缺陷的项目的测试,确定较大项目中有缺陷的项目的子集。此问题与医学测试,数据科学,沟通等领域有关。在身体方面的启发下,我们考虑了基于稀疏性的约束设置(Gandikota等,2019),其中测试程序受到以下两个约束之一的约束:项目可有限,因此最多可以参与$γ$测试;或测试对池的尺寸约束不超过每次测试的$ρ$项目。虽然信息理论限制和算法以非自适应设置而闻名,但在自适应环境中知之甚少。我们通过提供即使在自适应环境中也具有的信息理论匡威来解决这一差距,以及对于$γ$可见的物品,我们几乎毫无最佳的噪音自适应算法。在广泛的规模制度中,我们的上限和下限渐近匹配$ e $。我们还提供了一种简单的渐近自适应算法,用于$ρ$尺寸的测试。此外,在具有$γ$可分析物品的非自适应环境中,我们使用确定的缺陷(DD)解码算法和研究范围,并研究所需数量的测试数量,以消失在随机接近恒定测试的每个项目下的错误概率。我们表明,所需的测试数量可能显着少于组合正交匹配追踪(COMP)解码算法,并且在广泛的缩放方案中均无最佳。
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 any defective item is present. This problem is relevant in areas such as medical testing, data science, communications, and many more. Motivated by physical considerations, we consider a sparsity-based constrained setting (Gandikota et al., 2019) in which the testing procedure is subject to one of the following two constraints: items are finitely divisible and thus may participate in at most $γ$ tests; or tests are size-constrained to pool no more than $ρ$ items per test. While information-theoretic limits and algorithms are known for the non-adaptive setting, relatively little is known in the adaptive setting. We address this gap by providing an information-theoretic converse that holds even in the adaptive setting, as well as a near-optimal noiseless adaptive algorithm for $γ$-divisible items. In broad scaling regimes, our upper and lower bounds asymptotically match up to a factor of $e$. We also present a simple asymptotically optimal adaptive algorithm for $ρ$-sized tests. In addition, in the non-adaptive setting with $γ$-divisible items, we use the Definite Defectives (DD) decoding algorithm and study bounds on the required number of tests for vanishing error probability under the random near-constant test-per-item design. We show that the number of tests required can be significantly less than the Combinatorial Orthogonal Matching Pursuit (COMP) decoding algorithm, and is asymptotically optimal in broad scaling regimes.