A meta-learning based stacked regression approach for customer lifetime value prediction

Karan Gadgil, Sukhpal Singh Gill, Ahmed M. Abdelmoniem
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Abstract

Companies across the globe are keen on targeting potential high-value customers in an attempt to expand revenue, and this could be achieved only by understanding the customers more. Customer lifetime value (CLV) is the total monetary value of transactions or purchases made by a customer with the business over an intended period of time and is used as a means to estimate future customer interactions. CLV finds application in a number of distinct business domains, such as banking, insurance, online entertainment, gaming, and e-commerce. The existing distribution-based and basic (recency, frequency, and monetary)-based models face limitations in terms of handling a wide variety of input features. Moreover, the more advanced deep learning approaches could be superfluous and add an undesirable element of complexity in certain application areas. We, therefore, propose a system that is able to qualify as both effective and comprehensive, yet simple and interpretable. With that in mind, we develop a meta-learning-based stacked regression model that combines the predictions from bagging and boosting models that are found to perform well individually. Empirical tests have been carried out on an openly available online retail dataset to evaluate various models and show the efficacy of the proposed approach.

基于元学习的叠加回归法预测客户终身价值
全球各地的公司都热衷于瞄准潜在的高价值客户,试图扩大收入,而这只有通过进一步了解客户才能实现。客户终身价值(CLV)是指客户在预定时间内与企业进行交易或购买的总货币价值,它被用作估算未来客户互动的一种手段。客户终身价值适用于许多不同的业务领域,如银行、保险、在线娱乐、游戏和电子商务。现有的基于分布和基本(周期、频率和货币)的模型在处理各种输入特征方面存在局限性。此外,在某些应用领域,更先进的深度学习方法可能是多余的,会增加不必要的复杂性。因此,我们提出了一种既有效、全面,又简单、可解释的系统。有鉴于此,我们开发了一种基于元学习的堆叠回归模型,它结合了单独使用效果良好的袋集模型和提升模型的预测结果。我们在一个公开的在线零售数据集上进行了实证测试,对各种模型进行了评估,并展示了所建议方法的功效。
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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