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Predicting Customer Class using Customer Lifetime Value with Random Forest Algorithm

机译:使用客户生命周期值和随机森林算法预测客户类别

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摘要

As there are a lot of booming online retailers in e-commerce industry in the Internet age, the need of maintaining competitive advantages has become to pay attention to customer relationship management (CRM). To build a successful CRM strategy, it is needed to know individual customer class which can be calculated from Customer Lifetime Value (CLV): the monetary value of customers purchased from the business during their lifetime. CLV modelling allows us to identify customer's predicted business value. It provides the retailers for effectively allocating the resource in their business. This predictive model has been taken on the global Super Store Retail dataset with almost ten thousand transactions. Our model will predict the customers' class of the next year based on their CLV that will help the online retailer to decide which customer should be invested to get long term CRM. Random Forest (RF) algorithm is utilized to train our model and Random Search tuning is conducted to get the best predictive accuracy. The experimental analysis is performed to compare with AdaBoost algorithm on the same dataset.
机译:在Internet时代,电子商务行业中有许多蓬勃发展的在线零售商,因此保持竞争优势的需求已成为关注客户关系管理(CRM)的必要条件。要建立成功的CRM战略,需要了解可以根据客户生命周期价值(CLV)计算的各个客户类别:客户从企业购买的生命周期内的货币价值。 CLV建模使我们能够识别客户的预测业务价值。它为零售商提供了在其业务中有效分配资源的方法。该预测模型已在全球超级商店零售数据集上进行,交易量近一万次。我们的模型将根据客户的CLV预测明年的客户类别,这将帮助在线零售商确定应该投资哪个客户以获得长期CRM。利用随机森林(RF)算法训练我们的模型,并进行随机搜索调整以获得最佳预测精度。进行实验分析,以与同一数据集上的AdaBoost算法进行比较。

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