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Discovering temporal regularities in retail customers’ shopping behavior

机译:在零售客户购物行为中发现时间正规

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In this paper we investigate the regularities characterizing the temporal purchasing behavior of the customers of a retail market chain. Most of the literature studying purchasing behavior focuses on what customers buy while giving few importance to the temporal dimension. As a consequence, the state of the art does not allow capturing which are the temporal purchasing patterns of each customers. These patterns should describe the customer’s temporal habits highlighting when she typically makes a purchase in correlation with information about the amount of expenditure, number of purchased items and other similar aggregates. This knowledge could be exploited for different scopes: set temporal discounts for making the purchases of customers more regular with respect the time, set personalized discounts in the day and time window preferred by the customer, provide recommendations for shopping time schedule, etc. To this aim, we introduce a framework for extracting from personal retail data a temporal purchasing profile able to summarize whether and when a customer makes her distinctive purchases. The individual profile describes a set of regular and characterizing shopping behavioral patterns, and the sequences in which these patterns take place. We show how to compare different customers by providing a collective perspective to their individual profiles, and how to group the customers with respect to these comparable profiles. By analyzing real datasets containing millions of shopping sessions we found that there is a limited number of patterns summarizing the temporal purchasing behavior of all the customers, and that they are sequentially followed in a finite number of ways. Moreover, we recognized regular customers characterized by a small number of temporal purchasing behaviors, and changing customers characterized by various types of temporal purchasing behaviors. Finally, we discuss on how the profiles can be exploited both by customers to enable personalized services, and by the retail market chain for providing tailored discounts based on temporal purchasing regularity.
机译:在本文中,我们调查了零售市场链的客户的时间购买行为的规律。研究购买行为的大多数文献侧重于客户购买的同时对时间维度的重视。结果,本领域的状态不允许捕获,这是每个客户的时间购买模式。这些模式应该描述客户的临时习惯,当她通常会在相关性与关于支出数量的信息中进行相关时突出显示,购买的物品和其他类似的聚集体的数量。这些知识可以利用不同的范围:设置时间折扣,以尊重时间,在客户首选的日期和时间窗口中设置个性化折扣,为此提供了个性化折扣,为此提供了建议目的,我们介绍了一个框架,用于从个人零售数据提取一个时间购买简介,能够总结客户是否以及当客户都是鲜明的购买。个体简档描述了一组规则和表征购物行为模式,以及这些模式发生的序列。我们展示了如何通过向他们的个人配置文件提供集体视角,以及如何对这些可比概况进行分组的集体视角来进行比较。通过分析包含数百万个购物会话的实际数据集,我们发现有一个有限数量的模式总结了所有客户的时间购买行为,并且它们按照有限的方式顺序遵循它们。此外,我们认识到常规客户,以少量的时间购买行为为特征,以及改变以各种类型的时间采购行为为特征的客户。最后,我们讨论了如何通过客户利用个人资料来启用个性化服务,并由零售市场链提供基于时间采购规律的定制折扣。

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