Research on customer churn prediction model based on IG_NN double attribute selection

Jun Liu, Guangyu Yang
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引用次数: 5

Abstract

This paper discusses the problem of customer churn prediction, and proposes the customer churn prediction model based on double attribute selection of information gain (IG) and neural network (NN) by analyzing the characteristics of customer churn data. That is, firstly, undertake the main attribute selection for customer churn data by using IG, and then analyze every main attribute by using NN, which output results are analyzed by 80–20 rule to get the key attributes affecting customer churn; secondly, construct the prediction model based on IG_NN by taking the key attributes as input and customer churn probability as output. The model predicts lost customers next month by carrying on data acquisition about customer behavior and payment information of a telecom operator during first three months. Provably, there is improvement of various degrees of accuracy, coverage rate and hit rate than other methods for customer churn prediction. This model has a good prediction performance for dealing with a large quantity of non-equilibrium data set.
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基于IG_NN双属性选择的客户流失预测模型研究
讨论了客户流失预测问题,在分析客户流失数据特点的基础上,提出了基于信息增益(IG)和神经网络(NN)双属性选择的客户流失预测模型。即首先利用IG对客户流失数据进行主属性选择,然后利用神经网络对各主属性进行分析,对输出结果进行80-20规则分析,得到影响客户流失的关键属性;其次,以关键属性为输入,客户流失概率为输出,构建基于IG_NN的预测模型;该模型通过对电信运营商前三个月的客户行为和支付信息进行数据采集,预测下个月的流失客户。可以证明,与其他预测客户流失的方法相比,该方法的准确率、覆盖率和命中率都有不同程度的提高。该模型对于处理大量非均衡数据集具有良好的预测性能。
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