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An SVM based churn detector in prepaid mobile telephony

机译:预付费移动电话中基于SVM的流失检测器

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摘要

The context of prepaid mobile telephony is specific in the way that customers are not contractually linked to their operator and thus can cease their activity without notice. In order to estimate the retention efforts which can be engaged towards each individual customer, the operator must distinguish the customers presenting a strong churn risk from the other. This work presents a data mining application leading to a churn detector. We compare artificial neural networks (ANN) which have been historically applied to this problem, to support vectors machines (SVM) which are particularly effective in classification and adapted to noisy data. Thus, the objective of this article is to compare the application of SVM and ANN to churn detection in prepaid cellular telephony. We show that SVM gives better results than ANN on this specific problem.
机译:预付移动电话的背景是特定的,即客户不会与其运营商合同联系,因此可以在恕不另行通知停止其活动。为了估计可以对每个客户进行锻炼的保留工作,操作员必须区分展示呈现出强烈的流失风险的客户。这项工作提出了一种导致搅拌探测器的数据挖掘应用程序。我们比较在历史上应用于这个问题的人工神经网络(ANN),以支持在分类中特别有效的向量机器(SVM)并适应嘈杂的数据。因此,本文的目的是将SVM和ANN的应用进行比较以预付蜂窝电话的搅拌检测。我们表明SVM提供了比这个特定问题的ANN更好的结果。

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