Using gravity model to make store closing decisions: A data driven approach

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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.

论文关键词:Store closing,Closure decision,Economic recession,Financial crisis,Huff gravity model,COVID-19 pandemic

论文评审过程:Received 29 November 2021, Revised 26 March 2022, Accepted 29 May 2022, Available online 2 June 2022, Version of Record 5 June 2022.

论文官网地址:https://doi.org/10.1016/j.eswa.2022.117703