A high-performance turnkey system for customer lifetime value prediction in retail brands

IF 1.3 4区 管理学 Q3 BUSINESS Qme-Quantitative Marketing and Economics Pub Date : 2023-11-08 DOI:10.1007/s11129-023-09272-x
Yan Yan, Nicholas Resnick
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Abstract

Abstract Customer lifetime value (CLV) modeling underpins modern marketing analytics, enabling the development of tailored customer relationship management strategies based on the predicted future value of their customers. As part of Amperity’s enterprise customer data platform (CDP), we deploy and maintain a CLV prediction system that caters to a rapidly growing list of brands across various industries, purchase behaviors, and scales. Given the impracticality of developing bespoke models for each brand, our solution must be adaptive, generalizable, and high-performing ”out of the box”. Furthermore, our platform demands daily prediction updates to facilitate prompt marketing decisions. This paper introduces a turnkey CLV prediction system that achieves state-of-the-art performance across a diverse set of brands. This system has several contributions: 1) the use of encodings and embeddings to incorporate signals from high-cardinality data; 2) a multi-stage churn-CLV modeling framework that augments additional flexibility in adjusting churn probabilities, subsequently reducing CLV prediction errors while maintaining a synergistic learning process; 3) a feature-weighted ensemble of both generative and discriminative models to accommodate diverse underlying purchase patterns. Empirical results show that our enhanced model consistently surpasses benchmark performances for twelve retail brands across six evaluation intervals from June 2020 to September 2022.

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零售品牌客户终身价值预测的高性能交钥匙系统
客户终身价值(CLV)模型是现代营销分析的基础,使客户关系管理策略的开发基于对客户未来价值的预测。作为Amperity企业客户数据平台(CDP)的一部分,我们部署并维护一个CLV预测系统,以满足不同行业、购买行为和规模的快速增长的品牌列表。考虑到为每个品牌开发定制模型的不切实际,我们的解决方案必须是适应性的、可推广的、高性能的“开箱即用”。此外,我们的平台要求每日更新预测,以促进及时的营销决策。本文介绍了一个交钥匙CLV预测系统,该系统在不同品牌中实现了最先进的性能。该系统有几个贡献:1)使用编码和嵌入来合并来自高基数数据的信号;2)一个多阶段的流失-CLV建模框架,增加了调整流失概率的额外灵活性,随后减少了CLV预测误差,同时保持了协同学习过程;3)生成模型和判别模型的特征加权集成,以适应不同的潜在购买模式。实证结果表明,我们的增强模型在2020年6月至2022年9月的六个评估区间内始终超过12个零售品牌的基准表现。
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来源期刊
CiteScore
2.30
自引率
10.50%
发文量
13
期刊介绍: Quantitative Marketing and Economics (QME) publishes research in the intersection of Marketing, Economics and Statistics. Our focus is on important applied problems of relevance to marketing using a quantitative approach. We define marketing broadly as the study of the interface between firms, competitors and consumers. This includes but is not limited to consumer preferences, consumer demand and decision-making, strategic interaction of firms, pricing, promotion, targeting, product design/positioning, and channel issues. We embrace a wide variety of research methods including applied economic theory, econometrics and statistical methods. Empirical research using primary, secondary or experimental data is also encouraged. Officially cited as: Quant Mark Econ
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