利用深度学习分析客户流失的原因

David Hason Rudd, Huan Huo, Guandong Xu
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引用次数: 2

摘要

客户流失是指在特定时期内终止与企业的关系或减少客户参与度。两种主要的商业营销策略在增加市场份额和价值方面起着至关重要的作用:获得新客户和保留现有客户。用户获取成本可能是用户留存成本的5到6倍,因此投资于有流失风险的用户是明智的。流失模型的因果分析可以预测客户是否会在可预见的未来流失,并帮助企业确定流失的影响和可能的原因,随后使用这些知识来应用量身定制的激励措施。本文提出了一种基于深度前馈神经网络的高维稀疏数据分类框架和序列模式挖掘方法。我们还提出了一个因果贝叶斯网络来预测导致客户流失的原因概率。测试数据的评估指标证实,XGBoost和我们的深度学习模型优于以前的技术。实验分析证实,一些独立的因果变量代表超保证贡献水平,账户增长和客户保留期被确定为客户流失的混杂因素,并具有高度的可信度。本文提供了一个现实世界的客户流失分析,从现状推断到未来的方向,地方养老基金。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Causal Analysis of Customer Churn Using Deep Learning
Customer churn describes terminating a relationship with a business or reducing customer engagement over a specific period. Two main business marketing strategies play vital roles to increase market share dollar- value: gaining new and preserving existing customers. Customer acquisition cost can be five to six times that for customer retention, hence investing in customers with churn risk is smart. Causal analysis of the churn model can predict whether a customer will churn in the foreseeable future and assist enterprises to identify effects and possible causes for churn and subsequently use that knowledge to apply tailored incentives. This paper proposes a framework using a deep feedforward neural network for classification accompanied by a sequential pattern mining method on high-dimensional sparse data. We also propose a causal Bayesian network to predict cause probabilities that lead to customer churn. Evaluation metrics on test data confirm the XGBoost and our deep learning model outperformed previous techniques. Experimental analysis confirms that some independent causal variables representing the level of super guarantee contribution, account growth, and customer tenure were identified as confounding factors for customer churn with a high degree of belief. This paper provides a real-world customer churn analysis from current status inference to future directions in local superannuation funds.
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