Recent advances in noiseless non-adaptive group testing have led to a precise asymptotic characterization of the number of tests required for high-probability recovery in the sublinear regime $k = n^{\theta}$ (with $\theta \in (0,1)$), with $n$ individuals among which $k$ are infected. However, the required number of tests may increase substantially under real-world practical constraints, notably including bounds on the maximum number $\Delta$ of tests an individual can be placed in, or the maximum number $\Gamma$ of individuals in a given test. While previous works have given recovery guarantees for these settings, significant gaps remain between the achievability and converse bounds. In this paper, we substantially or completely close several of the most prominent gaps. In the case of $\Delta$-divisible items, we show that the definite defectives (DD) algorithm coupled with a random regular design is asymptotically optimal in dense scaling regimes, and optimal to within a factor of $e$ more generally; we establish this by strengthening both the best known achievability and converse bounds. In the case of $\Gamma$-sized tests, we provide a comprehensive analysis of the regime $\Gamma = \Theta(1)$, and again establish a precise threshold proving the asymptotic optimality of DD equipped with a tailored pooling scheme. Finally, for each of these two settings, we provide near-optimal adaptive algorithms based on sequential splitting, and provably demonstrate gaps between the performance of optimal adaptive and non-adaptive algorithms.
翻译:无噪音非适应性群体测试的最新进展导致对亚线性制度下高概率恢复所需的检验数量(美元=n ⁇ theta}$k=n ⁇ theta}美元(美元=0,1美元))进行精确的不精确的算法定性,以美元为单位,其中个人感染了美元;然而,在现实世界实际限制下,所需的检验数量可能会大幅增加,特别是包括个人在特定测试中可以被置于最高数量(Delta美元)或最高数量(Gamma美元)的限值。虽然先前的工程为这些设置提供了恢复差距的保证,但可感性和反面界限之间仍然存在着巨大的差距。在本文件中,我们大大或完全缩小了其中几个最显著的差距。在美元为单位的情况下,我们表明,在精确的精确度制度下,固定的缺陷(DD)算法加上随机的定期设计是最佳的,在更精确的缩放制度下,在更接近1美元的范围内,我们通过最精确的精确的测试来建立这个系统。