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Next-Purchase Prediction Using Projections of Discounted Purchasing Sequences

机译:使用折扣购买序列的投影进行的下一次购买预测

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摘要

A primary task of customer relationship management (CRM) is the transformation of customer data into business value related to customer binding and development, for instance, by offering additional products that meet customers' needs. A customer's purchasing history (or sequence) is a promising feature to better anticipate customer needs, such as the next purchase intention. To operationalize this feature, sequences need to be aggregated before applying supervised prediction. That is because numerous sequences might exist with little support (number of observations) per unique sequence, discouraging inferences from past observations at the individual sequence level. In this paper the authors propose mechanisms to aggregate sequences to generalized purchasing types. The mechanisms group sequences according to their similarity but allow for giving higher weights to more recent purchases. The observed conversion rate per purchasing type can then be used to predict a customer's probability of a next purchase and target the customers most prone to purchasing a particular product. The bias-variance trade-off when applying the models to target customers with respect to the lift criterion are discussed. The mechanisms are tested on empirical data in the realm of cross-selling campaigns. Results show that the expected bias-variance behavior well predicts the lift achieved with the mechanisms. Results also show a superior performance of the proposed methods compared to commonly used segmentation-based approaches, different similarity measures, and popular class predictors. While the authors tested the approaches for CRM campaigns, their parameterization can be adjusted to operationalize sequential features of high cardinality also in other domains or business functions.
机译:客户关系管理(CRM)的主要任务是将客户数据转换为与客户绑定和开发相关的业务价值,例如,通过提供满足客户需求的其他产品。客户的购买历史(或顺序)是一种很有前途的功能,可以更好地预测客户的需求,例如下一个购买意向。为了实现此功能,需要在应用监督预测之前对序列进行汇总。这是因为每个唯一序列可能存在许多序列而几乎没有支持(观察次数),因此不鼓励从单个序列级别的过去观察中得出推论。在本文中,作者提出了将序列聚合为广义购买类型的机制。这些机制根据序列的相似性对序列进行分组,但可以为最近的购买赋予更高的权重。然后,可以将观察到的每种购买类型的转化率用于预测客户下一次购买的可能性,并以最倾向于购买特定产品的客户为目标。讨论了在将模型应用于提升标准时将偏差应用于目标客户时的偏差方差折衷。该机制已在交叉销售活动领域的经验数据上进行了测试。结果表明,预期的偏差-方差行为很好地预测了通过该机制实现的升力。结果还显示,与常用的基于细分的方法,不同的相似性度量和流行的类别预测器相比,该方法的性能更高。当作者测试CRM活动的方法时,可以调整其参数设置,以在其他领域或业务功能中实现高基数的顺序功能。

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