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首页> 外文期刊>International Journal of Communications, Network and System Sciences >Hybrid Data Mining Models for Predicting Customer Churn
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Hybrid Data Mining Models for Predicting Customer Churn

机译:预测客户流失的混合数据挖掘模型

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The term "customer churn" is used in the industry of information and communication technology (ICT) to indicate those customers who are about to leave for a new competitor, or end their subscription. Predicting this behavior is very important for real life market and competition, and it is essential to manage it. In this paper, three hybrid models are investigated to develop an accurate and efficient churn prediction model. The three models are based on two phases; the clustering phase and the prediction phase. In the first phase, customer data is filtered. The second phase predicts the customer behavior. The first model investigates the k-means algorithm for data filtering, and Multilayer Perceptron Artificial Neural Networks (MLP-ANN) for prediction. The second model uses hierarchical clustering with MLP-ANN. The third one uses self organizing maps (SOM) with MLP-ANN. The three models are developed based on real data then the accuracy and churn rate values are calculated and compared. The comparison with the other models shows that the three hybrid models outperformed single common models.
机译:信息和通信技术(ICT)行业中使用了“客户流失”一词,表示将要离开新竞争对手或终止其订阅的那些客户。预测这种行为对于现实生活中的市场和竞争非常重要,并且对其进行管理至关重要。本文研究了三种混合模型,以开发准确有效的客户流失预测模型。这三个模型基于两个阶段。聚类阶段和预测阶段。在第一阶段,将过滤客户数据。第二阶段预测客户行为。第一个模型研究了用于数据过滤的k均值算法,以及用于预测的多层感知器人工神经网络(MLP-ANN)。第二个模型使用带有MLP-ANN的层次聚类。第三个使用带有MLP-ANN的自组织图(SOM)。根据实际数据开发这三个模型,然后计算和比较准确率和流失率值。与其他模型的比较表明,三种混合模型的性能优于单个普通模型。

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