基于数据分类的付费电视客户流失预测

Ilayda Ulku, Fadime Üney Yüksektepe, Oznur Yilmaz, M. Aktas, Nergiz Akbalik
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引用次数: 1

摘要

在数据挖掘中,如果一个数据集对文献来说是新的,那么研究就是比较现有的算法,确定最合适的算法。这项研究就是一个例子,它包含了许多定量分析。我们从土耳其的一家付费电视公司获得了真实的数据来预测客户的流失行为。利用客户的会员期限、付款方式、教育程度、城市信息等属性来预测客户的流失状况。应用属性选择算法,得到最重要的属性。因此,提出了两个数据集。其中一个数据集包含所有属性,而另一个数据集只包含选定的属性。使用WEKA软件对这些数据集应用了许多不同的数据分类算法。向公司提出了具有最佳准确率的最佳方法和最佳数据集。该公司可以预测客户的流失状况,并通过提出的用户友好的预测方法联系合适的人群进行特定的活动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Churn Prediction in a Pay-TV Company via Data Classification
In data mining, if a data set is new to the literature, the study is comparing the existing algorithms and determining the most suitable algorithm. This study is an example of this by including many quantitative analysis. Real data was obtained from a Pay-TV Company in Turkey to predict the churn behavior of the customers. The attributes such as membership period, payment method, education status, and city information of customers were used in order to predict the customers' churn status. By applying attributes selection algorithms, the most important attributes are obtained. As a result, two datasets are proposed. While one of the datasets consists of all attributes, the other one just includes the selected attributes. Many different data classification algorithms were applied to these datasets by using WEKA software. The best method and the best dataset which has the best accuracy rate was proposed to the company. The company can predict the customers' churn status and contact the right group of people for a specific campaign with a proposed user-friendly prediction methodology.
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