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Imbalance Classification Model for Churn Prediction

机译:流失预测的不平衡分类模型

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摘要

Churn prediction deals with challenging problem of detecting customers who probably cancel a subscription to a service. Data mining techniques such as decision tree, logistic regression, neural network are very successful in prediction customer churn. However, the prediction accuracyof these classification techniques reduces when handling with class-imbalanced data. Class-imbalanced data are common in the field of Churn prediction, mainly one or some of the classes have much more instances samples in comparison to the others. Classification techniques for imbalanced datasetsusually correctly predict the results for the majority class, but do not perform well to predict results for the minority class. In this paper, we propose SMOTEBagging, which combines SMOTE sampling technique with Bagging algorithm to enhance the classification model to predict results forthe minority class. The classification performance is obtained via 5-fold cross validation. The experimental results show the effectiveness of SMOTEBagging technique.
机译:Churn预测涉及挑战挑战,检测可能取消订阅服务的客户。数据挖掘技术如决策树,逻辑回归,神经网络在预测客户中非常成功。然而,在使用类别 - 不平衡数据处理时,这些分类技术的预测精度减少。类 - 不平衡数据在流失预测领域是常见的,主要是一个或某些类与其他类相比之下。用于实施的分类技术数据以便正确地预测大多数类别的结果,但对少数阶级的结果不表现良好。在本文中,我们提出了SmoteBagging,它结合了叠加算法的Smote采样技术来增强分类模型来预测少数阶级的结果。通过5倍交叉验证获得分类性能。实验结果表明了Smotebagging技术的有效性。

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