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Variable selection by association rules for customer churn prediction of multimedia on demand

机译:关联规则的变量选择,用于按需多媒体的客户流失预测

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摘要

Multimedia on demand (MOD) is an interactive system that provides a number of value-added services in addition to traditional TV services, such as video on demand and interactive online learning. This opens a new marketing and managerial problem for the telecommunication industry to retain valuable MOD customers. Data mining techniques have been widely applied to develop customer churn prediction models, such as neural networks and decision trees in the domain of mobile telecommunication. However, much related work focuses on developing the prediction models per se. Few studies consider the pre-processing step during data mining whose aim is to filter out unrepresentative data or information. This paper presents the important processes of developing MOD customer churn prediction models by data mining techniques. They contain the pre-processing stage for selecting important variables by association rules, which have not been applied before, the model construction stage by neural networks (NN) and decision trees (DT), which are widely adapted in the literature, and four evaluation measures including prediction accuracy, precision, recall, and F-measure, all of which have not been considered to examine the model performance. The source data are based on one telecommunication company providing the MOD services in Taiwan, and the experimental results show that using association rules allows the DT and NN models to provide better prediction performances over a chosen validation dataset. In particular, the DT model performs better than the NN model. Moreover, some useful and important rules in the DT model, which show the factors affecting a high proportion of customer churn, are also discussed for the marketing and managerial purpose.
机译:多媒体点播(MOD)是一种交互式系统,除了传统的电视服务外,还提供许多增值服务,例如视频点播和交互式在线学习。这为电信行业留住了宝贵的MOD客户带来了新的营销和管理问题。数据挖掘技术已广泛应用于开发客户流失预测模型,例如移动电信领域的神经网络和决策树。但是,许多相关的工作都集中在开发预测模型本身上。很少有研究考虑数据挖掘过程中的预处理步骤,其目的是过滤出不具代表性的数据或信息。本文介绍了通过数据挖掘技术开发MOD客户流失预测模型的重要过程。它们包括通过关联规则选择重要变量的预处理阶段(之前尚未应用),通过神经网络(NN)和决策树(DT)进行模型构建的阶段(已在文献中广泛采用)以及四个评估包括预测准确性,精确度,召回率和F量度在内的所有量度,尚未考虑所有因素来检验模型性能。源数据基于一家在台湾提供MOD服务的电信公司,实验结果表明,使用关联规则可以使DT和NN模型在选定的验证数据集上提供更好的预测性能。特别是,DT模型的性能优于NN模型。此外,出于营销和管理目的,还讨论了DT模型中的一些有用且重要的规则,这些规则表明了影响客户流失比例较高的因素。

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