基于顾客偏好的有向无环图表示的个性化零售促销

Oper. Res. Pub Date : 2022-01-26 DOI:10.1287/opre.2021.2108
Srikanth Jagabathula, Dmitry Mitrofanov, Gustavo J. Vulcano
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引用次数: 8

摘要

个人层面交易数据的可用性允许零售商实施个性化的运营决策。尽管这样的决定在在线平台上已经存在了好几年,但最近的技术发展为将类似的做法扩展到实体环境提供了新的机会(例如,通过使用电子价格标签向不同的客户显示不同的价格,或者通过使用基于信标的技术向目标客户发送促销优惠)。在“通过基于dag的客户偏好表示的个性化零售促销”中,Jagabathula、Mitrofanov和Vulcano提出了一个在零售运营环境中运行定制促销的背对背过程,从构建一个非参数选择模型(其中客户偏好由有向无环图表示)到促销优化问题的制定。对他们的建议在真实超市数据上的实证验证表明,他们的方法在最先进的基准上表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Personalized Retail Promotions Through a Directed Acyclic Graph-Based Representation of Customer Preferences
A Framework to Run Personalized Promotions The availability of individual-level transaction data allows retailers to implement personalized operational decisions. Although such decisions have been around for several years now in online platforms, recent technological developments open new opportunities to extend similar practices to bricks-and-mortar settings (e.g., by using electronic price tags to show different prices to different customers or by using beacon-based technology to send promotion offers to targeted customers). In “Personalized Retail Promotions through a DAG-Based Representation of Customer Preferences,” Jagabathula, Mitrofanov, and Vulcano propose a back-to-back procedure for running customized promotions in retail operations contexts, from the construction of a nonparametric choice model where customer preferences are represented by directed acyclic graphs to the formulation of the promotion optimization problem. The empirical validation of their proposal on real supermarket data shows the promising performance of their approach over state-of-the-art benchmarks.
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