Review of Data Mining Techniques for Detecting Churners in the Telecommunication Industry

Mahmoud Ewieda, Essam M. Shaaban, M. Roushdy
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引用次数: 3

Abstract

The telecommunication sector has been developed rapidly and with large amounts of data obtained as a result of increasing in the number of subscribers, modern techniques, data-based applications, and services. As well as better awareness of customer requirements and excellent quality that meets their satisfaction. This satisfaction raises rivalry between firms to maintain the quality of their services and upgrade them. These data can be helpfully extracted for analysis and used for predicting churners. Researchers around the world have conducted important research to understand the uses of Data mining (DM) that can be used to predict customers' churn. This paper supplies a review of nearly 73 recent journalistic articles starting in 2003 to introduce the different DM techniques used in many customerbased churning models. It epitomizes the present literature in the field of communications by highlighting the impact of service quality on customer satisfaction, detecting churners in the telecoms industry, in addition to the sample size used, the churn variables used and the results of various DM technologies. Eventually, the most common techniques for predicting telecommunication churning such as classification, regression analysis, and clustering are included, thus presenting a roadmap for new researchers to build new churn management models.
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电信行业流失检测的数据挖掘技术综述
由于用户数量、现代技术、基于数据的应用和服务的增加,电信部门发展迅速,获得了大量数据。以及更好的客户需求意识和卓越的质量,以满足他们的满意。这种满意度提高了公司之间的竞争,以保持服务质量并提高服务质量。这些数据可以被提取出来用于分析和预测流失。世界各地的研究人员进行了重要的研究,以了解数据挖掘(DM)的用途,该方法可用于预测客户的流失。本文回顾了从2003年开始的近73篇新闻文章,介绍了在许多基于客户的流失模型中使用的不同数据挖掘技术。它通过强调服务质量对客户满意度的影响,检测电信行业的流失者,以及使用的样本量,使用的流失者变量和各种DM技术的结果,概括了通信领域的现有文献。最后,最常见的预测电信流失的技术,如分类,回归分析和聚类,从而为新的研究人员提供了一个路线图,以建立新的流失管理模型。
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