Predictive Analysis of User Purchase Behavior based on Machine Learning

Zhenyu Liu, Xinyi Ma
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Abstract

In corporate customer management, companies are required to evaluate the costs and benefits of investment expenditures and determine the optimal resource allocation for marketing and sales activities within a period. Understanding the buying behavior of customers in the future is a key driving force for the sales and marketing departments to effectively allocate resources. This paper proposes a combined prediction model that uses the Stacking method to integrate multiple decision tree models to predict whether users will buy in the future and their specific purchase time. The model uses the idea of stacking model fusion to fuse the prediction results of three different integrated decision tree models of Light GBM, XG Boost, and Random Forest, and then uses a simple logistic regression classification model and a linear regression model to predict separately based on the fused prediction results Whether the user will buy in the future and the specific time of purchase. In addition, in this study, we used real retail sales data to evaluate the predictive performance of the proposed method.
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基于机器学习的用户购买行为预测分析
在企业客户管理中,企业需要评估投资支出的成本和收益,并确定在一段时间内营销和销售活动的最佳资源分配。了解客户未来的购买行为是销售和市场部门有效配置资源的关键动力。本文提出了一种组合预测模型,该模型采用堆叠法整合多个决策树模型来预测用户未来是否会购买以及具体购买时间。该模型采用堆叠模型融合的思想,将Light GBM、XG Boost、Random Forest三种不同的综合决策树模型的预测结果进行融合,然后根据融合的预测结果分别使用简单的逻辑回归分类模型和线性回归模型预测用户未来是否会购买以及购买的具体时间。此外,在本研究中,我们使用真实的零售销售数据来评估所提出方法的预测性能。
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