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A machine learning framework for customer purchase prediction in the non-contractual setting

机译:非合同环境中客户购买预测的机器学习框架

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Predicting future customer behavior provides key information for efficiently directing resources at sales and marketing departments. Such information supports planning the inventory at the warehouse and point of sales, as well strategic decisions during manufacturing processes. In this paper, we develop advanced analytics tools that predict future customer behavior in the non-contractual setting. We establish a dynamic and data driven framework for predicting whether a customer is going to make purchase at the company within a certain time frame in the near future. For that purpose, we propose a new set of customer relevant features that derives from times and values of previous purchases. These customer features are updated every month, and state of the art machine learning algorithms are applied for purchase prediction. In our studies, the gradient tree boosting method turns out to be the best performing method. Using a data set containing more than 10000 customers and a total number of 200000 purchases we obtain an accuracy score of 89% and an AUC value of 0.95 for predicting next moth purchases on the test data set. (C) 2018 Elsevier B.V. All rights reserved.
机译:预测未来的客户行为提供了有效地指导销售和营销部门资源的关键信息。在制造过程中的战略决策中,这些信息支持计划仓库和销售点的库存。在本文中,我们开发了在非合同设置中预测未来客户行为的高级分析工具。我们建立了一种动态和数据驱动框架,以预测客户是否将在不久的将来在一定时间内在公司购买。为此目的,我们提出了一套新的客户相关功能,这些功能来自以前购买的时间和价值。这些客户功能每月更新,并且应用最先进的机器学习算法用于购买预测。在我们的研究中,梯度树升压方法结果是最好的执行方法。使用包含超过10000个客户的数据集和200000个购买的总数,我们获得了89%的准确度和AUC值为0.95,用于预测测试数据集上的下一个蛾类购买。 (c)2018年elestvier b.v.保留所有权利。

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