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Customer Churn Prediction Based on the Decision Tree in Personal Handyphone System Service

机译:基于个人手机系统服务中决策树的客户流失预测

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Nowadays, churn prediction and management is critical for more and more companies in the fast changing and strongly competitive telecommunication market. In order to improve customer retention, telecommunication companies must be able to predict customers at risk who are prone to switch service provider. In this study, to overcome the limitations of lack of information of customers of Personal Handyphone System Service (PHSS) and to build an effective and accurate customer churn model, three research experimentations (changing sub-periods for training data sets, changing misclassification cost in churn model, changing sample methods for training data sets) are put forward to improve the prediction performance of churn model by using decision tree which is used widely, some optimal parameters (the time of sub-period being 10 days, misclassification cost being 1:5, and random sample method for train set) of models are found under the help of three research experimentations. The empirical evaluation results suggest that customer churn models built have a good performance through the course of model optical selecting, and show that the methods and techniques proposed are effective and feasible under the condition that information of customers is very little and class distribution is skewed. This study benefits not only churn prediction research and practice but also other data mining applications with similar characteristics.
机译:如今,流失预测和管理对于越来越多的公司在快速变化和强烈的竞争力市场中至关重要。为了提高客户保留,电信公司必须能够预测俯视服务提供商的风险的客户。在这项研究中,克服了个人智能手机系统服务(PHS)客户缺乏信息的局限性,并建立了一个有效准确的客户流失模型,三个研究实验(改变了培训数据集的子期,改变了错误分类费用Churl模型,改变培训数据集的样本方法)提出了通过使用广泛使用的决策树来改善流失模型的预测性能,一些最佳参数(次周期时间为10天,错误分类成本为1:在三个研究实验的帮助下,发现了模型的5,以及火车集的随机样品方法。经验评估结果表明,通过模型光学选择的课程建立了良好的性能,并表明所提出的方法和技术在客户信息信息很少和阶级分布倾斜的情况下,所提出的方法和技术是有效和可行的。这项研究不仅有利于流失预测研究和实践,还具有类似特征的其他数据挖掘应用。

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