Bahrami Mohsen, Xu Yilun, Tweed Miles, Bozkaya Burcin, Pentland Alex 'Sandy'
MIT Connection Science, Institute for Data, Systems, and Society (IDSS), Massachusetts Institute of Technology, 77 Massachusetts Ave, E17, Cambridge, MA 02139, USA.
Laboratory for Innovation Science, Harvard University, Science and Engineering Complex, 150 Western Ave, Suite 6.220, Allston, MA 02134, USA.
Expert Syst Appl. 2022 Nov 1;205:117703. doi: 10.1016/j.eswa.2022.117703. Epub 2022 Jun 2.
Many studies propose methods for finding the best location for new stores and facilities, but few studies address the store closing problem. As a result of the recent COVID-19 pandemic, many companies have been facing financial issues. In this situation, one of the most common solutions to prevent loss is to downsize by closing one or more chain stores. Such decisions are usually made based on single-store performance; therefore, the under-performing stores are subject to closures. This study first proposes a multiplicative variation of the well-known Huff gravity model and introduces a new attractiveness factor to the model. Then a forward-backward approach is used to train the model and predict customer response and revenue loss after the hypothetical closure of a particular store from a chain. In this research the department stores in New York City are studied using large-scale spatial, mobility, and spending datasets. The case study results suggest that the stores recommended being closed under the proposed model may not always match the single store performance, and emphasizes the fact that the performance of a chain is a result of interaction among the stores rather than a simple sum of their performance considered as isolated and independent units. The proposed approach provides managers and decision-makers with new insights into store closing decisions and will likely reduce revenue loss due to store closures.
许多研究提出了寻找新商店和设施最佳位置的方法,但很少有研究涉及商店关闭问题。由于最近的新冠疫情,许多公司一直面临财务问题。在这种情况下,防止损失的最常见解决方案之一是通过关闭一家或多家连锁店来缩小规模。此类决策通常基于单店业绩做出;因此,业绩不佳的店铺会被关闭。本研究首先提出了著名的赫夫重力模型的乘法变体,并在模型中引入了一个新的吸引力因素。然后采用前后向方法训练模型,并预测假设关闭连锁中的某一家特定商店后客户的反应和收入损失。在本研究中,利用大规模的空间、流动性和消费数据集对纽约市的百货商店进行了研究。案例研究结果表明,在所提出的模型下建议关闭的商店可能并不总是与单店业绩相符,并强调了这样一个事实,即连锁店的业绩是各店铺之间相互作用的结果,而不是将它们视为孤立和独立的单位时其业绩的简单相加。所提出的方法为管理者和决策者提供了有关商店关闭决策的新见解,并可能减少因商店关闭造成的收入损失。