In this paper, we present an efficient statistical method (denoted as "Adaptive Resources Allocation CUSUM") to robustly and efficiently detect the hotspot with limited sampling resources. Our main idea is to combine the multi-arm bandit (MAB) and change-point detection methods to balance the exploration and exploitation of resource allocation for hotspot detection. Further, a Bayesian weighted update is used to update the posterior distribution of the infection rate. Then, the upper confidence bound (UCB) is used for resource allocation and planning. Finally, CUSUM monitoring statistics to detect the change point as well as the change location. For performance evaluation, we compare the performance of the proposed method with several benchmark methods in the literature and showed the proposed algorithm is able to achieve a lower detection delay and higher detection precision. Finally, this method is applied to hotspot detection in a real case study of county-level daily positive COVID-19 cases in Washington State WA) and demonstrates the effectiveness with very limited distributed samples.
翻译:在本文中,我们提出了一个高效的统计方法(称为“优化资源分配 CUUU”),用有限的抽样资源对热点进行强有力和高效的检测,我们的主要想法是将多武器强盗(MAB)和变化点检测方法结合起来,以平衡热点检测资源分配的探索和利用;此外,还利用贝叶斯加权更新更新更新来更新感染率的事后分布;然后,在资源分配和规划中使用上层信任约束(UCB),最后,CUUUM监测统计数据,以探测变化点和变化地点;关于绩效评估,我们将拟议方法的性能与文献中的若干基准方法进行比较,并表明拟议的算法能够降低探测延迟和探测精确度;最后,在对华盛顿州县一级的每日正COVID-19病例进行实际案例研究时,将这种方法用于热点检测,并用非常有限的分布样本展示其有效性。