Starting Cold: The Power of Social Networks in Predicting Non-Contractual Customer Behavior

Pantelis Loupos, A. Nathan, Moran Cerf
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引用次数: 3

Abstract

The last decade has seen a rapid emergence of non-contractual networked services. The standard approach in predicting future customer behavior in those services involves collecting data on a user's past purchase behavior, and building statistical models to extrapolate a user's actions into the future. However, this method fails in the case of newly acquired customers where you have little or no transactional data. In this work, we study the extent to which knowledge of a customer's social network can solve this “cold-start” problem and predict the following aspects of customer behavior: (1) activity, (2) transaction levels and (3) membership to the group of most frequent customers. We conduct a dynamic analysis on approximately one million users from the most popular peer-to-peer payment application, Venmo. Our models produce high quality forecasts and demonstrate that social networks lead to a significant boost in predictive performance primarily during the first month of a customer's lifetime. Finally, we characterize significant structural network differences between the top 10% and bottom 90% of most frequent customers immediately after joining the service.
启动冷:社会网络在预测非合同客户行为的力量
在过去的十年里,非契约式网络服务迅速兴起。在这些服务中,预测未来客户行为的标准方法包括收集用户过去购买行为的数据,并建立统计模型来推断用户未来的行为。然而,这种方法在您只有很少或没有交易数据的新获得的客户的情况下失败了。在这项工作中,我们研究了客户社交网络的知识在多大程度上可以解决这种“冷启动”问题,并预测了客户行为的以下方面:(1)活动,(2)交易水平和(3)最频繁客户群体的成员资格。我们对来自最流行的点对点支付应用Venmo的大约100万用户进行了动态分析。我们的模型产生了高质量的预测,并证明社交网络主要在客户生命周期的第一个月内显著提高了预测性能。最后,我们描述了在加入服务后最频繁的前10%和后90%的客户之间的显著结构网络差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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