In this paper, we attempt to detect an inflection or change-point resulting from the Covid-19 pandemic on supply chain data received from a large furniture company. To accomplish this, we utilize a modified CUSUM (Cumulative Sum) procedure on the company's spatial-temporal order data as well as a GLR (Generalized Likelihood Ratio) based method. We model the order data using the Hawkes Process Network, a multi-dimensional self and mutually exciting point process, by discretizing the spatial data and treating each order as an event that has a corresponding node and time. We apply the methodologies on the company's most ordered item on a national scale and perform a deep dive into a single state. Because the item was ordered infrequently in the state compared to the nation, this approach allows us to show efficacy upon different degrees of data sparsity. Furthermore, it showcases use potential across differing levels of spatial detail.
翻译:在本文中,我们试图检测从一家大型家具公司收到的供应链数据Covid-19大流行造成的变化或变化点,为此,我们在公司空间-时序数据中使用了经过修改的CUSUM(Cumulative Sum)程序以及基于GLR(通用相似比率)的方法。我们用霍克斯过程网络(一个多维的自我和相互刺激点进程)对订单数据进行模型,将空间数据分离,将每个订单作为具有相应节点和时间的事件处理。我们在全国范围对公司最订购的物品应用了方法,并在一个单一的状态下进行了深度潜水。由于该物品是同国家相比不经常订购的,这种方法使我们能够显示不同程度的数据宽度的功效。此外,它展示了在不同空间细节级别上的潜力。