点选流向
杠杆(统计)
采购
顾客终身价值
计算机科学
客户参与度
客户情报
分析
客户保留
客户对客户
营销
业务
数据科学
服务(商务)
互联网
机器学习
服务质量
社会化媒体
万维网
Web建模
Web API
作者
Wael Jabr,Abhijeet Ghoshal,Yichen Cheng,Paul A. Pavlou
标识
DOI:10.1080/07421222.2023.2196778
摘要
Online retailers are increasingly focused on maintaining a long-term relationship with customers, encouraging repeat visits rather than single-time purchases to increase customer lifetime value. To help retailers maximize the probabilities of customers' revisiting and purchasing, we develop a two-stage model to better characterize and predict these two fundamental customer activities. In the first stage, we characterize the propensity of a customer revisiting the retailer's website. In the second stage, we develop a stochastic model that predicts revisits while also incorporating individual customer heterogeneity in exerted search effort during repeated visits. This heterogeneity is based on individual customer preferences in the choice of consideration sets, product information, pricing, and the search environment. Using customer level clickstream data, we show that our approach is not only better at predicting repeat customer visits, compared to existing methods, but also explainable and managerially interpretable. Most importantly, using computationally efficient simulation-based prescriptive analytics, we leverage our modeling approach to propose practical intervention strategies that maximize the joint likelihoods of customers revisiting and purchasing at the individual customer level.
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