A Customer Churn Prediction Model in Telecom Industry Using Boosting

IEEE Trans. Industrial Informatics(2014)

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摘要
With the rapid growth of digital systems and associated information technologies, there is an emerging trend in the global economy to build digital customer relationship management (CRM) systems. This trend is more obvious in the telecommunications industry, where companies become increasingly digitalized. Customer churn prediction is a main feature of in modern telecomcommunication CRM systems. This research conducts a real-world study on customer churn prediction and proposes the use of boosting to enhance a customer churn prediction model. Unlike most research that uses boosting as a method to boost the accuracy of a given basis learner, this paper tries to separate customers into two clusters based on the weight assigned by the boosting algorithm. As a result, a higher risk customer cluster has been identified. Logistic regression is used in this research as a basis learner, and a churn prediction model is built on each cluster, respectively. The result is compared with a single logistic regression model. Experimental evaluation reveals that boosting also provides a good separation of churn data; thus, boosting is suggested for churn prediction analysis.
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关键词
logistic regression,customer cluster,learning (artificial intelligence),regression analysis,telecommunications industry,digital customer relationship management systems,churn prediction analysis,logistic regression model,churn prediction,boosting algorithm,boosting,data handling,digital marketing,customer churn prediction model,customer relationship management,telecommunication industry,churn data separation,telecommunication,telecommunication crm systems,mobile communication,classification algorithms,prediction algorithms,predictive models,logistics,learning artificial intelligence
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