基于支付数据集的客户购买行为预测

Y. Wen, Pei-Wen Yeh, Tzu-Hao Tsai, Wen-Chih Peng, Hong-Han Shuai
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引用次数: 29

摘要

随着移动支付的发展,银行收集了大量的支付数据。用户支付数据提供了一个很好的数据集来描述客户的行为模式。全面了解顾客的购买行为对于制定良好的营销策略至关重要,这可能会引发更大的购买金额。例如,通过探索客户行为模式,给定一个目标商店,就能够识别一组潜在客户。换句话说,在合适的时间和地点进行个性化活动,可以被视为消费的最后阶段。本文提出了一个概率图模型,利用支付数据从空间、时间、支付金额和产品类别等方面发现顾客的购买行为,命名为STPC-PGM。因此,单个用户的移动行为可以用概率图形模型来预测,该模型考虑了每个客户与支付平台关系的各个方面。为了实现实时广告,我们开发了一个在线框架,可以有效地计算预测结果。我们的实验结果表明,STPC-PGM在发现客户分析特征方面是有效的,并且在购买行为预测方面优于最先进的方法。此外,预测结果正被部署到真实世界的信用卡用户营销中,并呈现出广告转化率的显著增长。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Customer Purchase Behavior Prediction from Payment Datasets
With the advances in the development of mobile payments, a huge amount of payment data are collected by banks. User payment data offer a good dataset to depict customer behavior patterns. A comprehensive understanding of customers' purchase behavior is crucial to developing good marketing strategies, which may trigger much greater purchase amounts. For example, by exploring customer behavior patterns, given a target store, a set of potential customers is able to be identified. In other words, personalized campaigns at the right time and in the right place can be treated as the last stage of consumption. Here we propose a probability graphical model that exploits the payment data to discover customer purchase behavior in the spatial, temporal, payment amount and product category aspects, named STPC-PGM. As a result, the mobility behavior of an individual user could be predicted with a probabilistic graphical model that accounts for all aspects of each customer's relationship with the payment platform. To achieve real time advertising, we then develop an online framework that efficiently computes the prediction results. Our experiment results show that STPC-PGM is effective in discovering customers' profiling features, and outperforms the state-of-the-art methods in purchase behavior prediction. In addition, the prediction results are being deployed in the marketing of real-world credit card users, and have presented a significant growth in the advertising conversion rate.
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