Modeling Customer Engagement from Partial Observations

Jelena Stojanovic, Djordje Gligorijevic, Z. Obradovic
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引用次数: 5

Abstract

It is of high interest for a company to identify customers expected to bring the largest profit in the upcoming period. Knowing as much as possible about each customer is crucial for such predictions. However, their demographic data, preferences, and other information that might be useful for building loyalty programs is often missing. Additionally, modeling relations among different customers as a network can be beneficial for predictions at an individual level, as similar customers tend to have similar purchasing patterns. We address this problem by proposing a robust framework for structured regression on deficient data in evolving networks with a supervised representation learning based on neural features embedding. The new method is compared to several unstructured and structured alternatives for predicting customer behavior (e.g. purchasing frequency and customer ticket) on user networks generated from customer databases of two companies from different industries. The obtained results show 4% to 130% improvement in accuracy over alternatives when all customer information is known. Additionally, the robustness of our method is demonstrated when up to 80% of demographic information was missing where it was up to several folds more accurate as compared to alternatives that are either ignoring cases with missing values or learn their feature representation in an unsupervised manner.
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从部分观察中建模客户参与
对于一个公司来说,确定在未来一段时间内有望带来最大利润的客户是非常重要的。对于这样的预测,尽可能多地了解每个客户是至关重要的。然而,他们的人口统计数据、偏好和其他可能对建立忠诚计划有用的信息往往是缺失的。此外,将不同客户之间的关系建模为一个网络可能有利于个人层面的预测,因为相似的客户往往具有相似的购买模式。为了解决这个问题,我们提出了一个鲁棒框架,利用基于神经特征嵌入的监督表示学习对进化网络中的缺陷数据进行结构化回归。将新方法与几种非结构化和结构化的替代方法进行比较,以预测来自不同行业的两家公司的客户数据库生成的用户网络上的客户行为(例如购买频率和客户票)。所获得的结果表明,当所有客户信息都已知时,准确度比其他选择提高了4%到130%。此外,当高达80%的人口统计信息缺失时,我们的方法的鲁棒性得到了证明,与忽略缺失值的情况或以无监督的方式学习其特征表示的替代方法相比,它的准确性高达几倍。
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