灵活选择模型的方法对客户流失预测和留存率有帮助

Mahdia Azzouz, Saïda Boukhedouma, Z. Alimazighi
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引用次数: 0

摘要

客户流失是公司面临的最关键问题之一。这些公司转向预测技术来预测客户的流失,因为在保留现有客户的情况下,获得新客户的成本更高。在本文中,我们提出了一种基于流程的方法来检测潜在的客户流失,并提供可能导致客户流失的问题的早期预警指标,并为实施有效的保留策略提供机会。采用一套数据挖掘和机器学习算法确定客户流失预测模型,以保持最佳预测算法的灵活选择。在确定客户流失类别后,应用关联规则挖掘算法分析和检测客户流失原因。所提出的方法基于CRISP-DM过程,具有灵活的预测模型选择,因为它实现了不同的机器学习算法,并允许选择最合适的算法来更好地预测客户流失(最佳模型)。在一个案例研究中说明了所提出的方法,结果表明该系统在检测客户流失和解决适当的保留解决方案方面是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An approach with flexible choice of model for customer churn prediction and retention help
Customer churn is one of the most critical issues faced by companies. These turn towards prediction techniques to predict the churn of their customers, because it is more expensive to acquire a new customer inside of retaining existing one. In this paper, we propose a process-based approach to detect potential customer churn and provide early warning indicator of problems that could lead to customer's loss and open up opportunities to implement effective retention strategies. The predictive churn model is determined by applying a set of data mining and machine learning algorithms, in order to keep flexible choice of the best prediction algorithm. Once the categories of churners are determined, association rule mining algorithm is applied to analyze and detect customer churn causes. The proposed approach is based on the CRISP-DM process with flexible choice of predictive model since it implements different machine learning algorithms and allows the selection of the most appropriate one for better churn prediction (the best model). The proposed approach is illustrated on a case study and the results indicate that the system is effective in detecting customer churners and addressing appropriate retention solutions.
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