基于位置的社交网络中锚店效应的因果分析

Anish K. Vallapuram, Young D. Kwon, Lik-Hang Lee, Fengli Xu, Pan Hui
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引用次数: 0

摘要

零售经济学中一个特别有趣的现象是,就客流量而言,锚店(拥有知名品牌的特定商店)对非锚店的溢出效应。该领域的先前工作依赖于小型和基于调查的数据集,这些数据集通常是机密的,或者大规模收集的成本很高。此外,很少有著作研究支撑溢出效应的因素之间的潜在因果机制。在这项工作中,我们分析了锚店和非锚店客流量之间的因果关系,并采用倾向得分匹配框架来更有效地研究这种影响。首先,为了证明效果,我们利用了伦敦数据存储和基于位置的社交网络(LBSNs)(如Foursquare)的开放和移动数据。然后,我们对位于大伦敦地区的锚店到非锚店(例如,非连锁餐厅)的客户访问模式进行了大规模的实证分析,作为案例研究。通过对大伦敦地区600多个街区的研究,我们发现,锚店导致非锚店的客流量增加14.2-26.5%,这加强了既定的经济理论。此外,我们通过研究混杂因素平衡、剂量差异和匹配框架在合成数据上的表现来评估我们方法的效率。通过这项工作,我们为零售业的决策者指出了一种更系统的方法来估计锚店效应,并为进一步研究铺平了道路,以利用开放数据发现这种效应背后更复杂的因果关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Causal Analysis on the Anchor Store Effect in a Location-based Social Network
A particular phenomenon of interest in Retail Eco-nomics is the spillover effect of anchor stores (specific stores with a reputable brand) to non-anchor stores in terms of customer traffic. Prior works in this area rely on small and survey-based datasets that are often confidential or expensive to collect on a large scale. Also, very few works study the underlying causal mechanisms between factors that underpin the spillover effect. In this work, we analyze the causal relationship between anchor stores and customer traffic to non-anchor stores and employ a propensity score matching framework to investigate this effect more efficiently. First of all, to demonstrate the effect, we leverage open and mobile data from London Datastore and Location-Based Social Networks (LBSNs) such as Foursquare. We then perform a large-scale empirical analysis of customer visit patterns from anchor stores to non-anchor stores (e.g., non-chain restaurants) located in the Greater London area as a case study. By studying over 600 neighbourhoods in the Greater London area, we find that anchor stores cause a 14.2-26.5% increase in customer traffic for the non-anchor stores reinforcing the established economic theory Moreover, we evaluate the efficiency of our methodology by studying the confounder balance, dose difference and performance of the matching framework on synthetic data. Through this work, we point decision-makers in the retail industry to a more systematic approach to estimate the anchor store effect and pave the way for further research to discover more complex causal relationships underlying this effect with open data.
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