Group testing was conceived during World War II to identify soldiers infected with syphilis using as few tests as possible, and it has attracted renewed interest during the COVID-19 pandemic. A long-standing assumption in the probabilistic variant of the group testing problem is that individuals are infected by the disease independently. However, this assumption rarely holds in practice, as diseases often spread through interactions between individuals and therefore cause infections to be correlated. Inspired by characteristics of COVID-19 and other infectious diseases, we introduce an infection model over networks which generalizes the traditional i.i.d. model from probabilistic group testing. Under this model, we ask whether knowledge of the network structure can be leveraged to perform group testing more efficiently, focusing specifically on community-structured graphs drawn from the stochastic block model. We prove that a simple community-aware algorithm outperforms the baseline binary splitting algorithm when the model parameters are conducive to "strong community structure." Moreover, our novel lower bounds imply that the community-aware algorithm is order-optimal in certain parameter regimes. We extend our bounds to the noisy setting and support our results with numerical experiments.
翻译:在二战期间,设计了群体测试,以尽可能少的测试来识别感染梅毒的士兵,在COVID-19大流行期间,这种测试引起了新的兴趣。在群体测试问题的概率变方中,一个长期的假设是,个人是独立地受该疾病感染的。然而,这一假设很少在实际中存在,因为疾病往往通过个人之间的相互作用传播,从而导致感染。受COVID-19和其他传染病特点的启发,我们引入了一种感染模式,这种模式将传统的i.i.d.模型从概率组测试中归纳为一般的网络。在这个模式下,我们询问是否可以利用网络结构结构的知识来更有效地进行群体测试,具体侧重于从随机区块模型中提取的社区结构图。我们证明,当模型参数有利于“强大的社区结构”时,简单的社区觉悟算法超越了基线二分算法。此外,我们的新下限意味着在某些参数系统中,社区觉识的算法是符合最理想的。我们把我们的范围扩大到噪音的设置,并以数字实验来支持我们的结果。