应用社会网络提高分类器在客户流失建模中的有效性

Witold Gruszczynski, P. Arabas
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引用次数: 4

摘要

所提出的工作的主题是预测用户流失的意愿-即改变电信服务提供商。该问题的典型解决方案是将分类方法应用于从客户端调用历史推断的数据。传统的数据挖掘方法被操作人员广泛使用,但其性能往往与预期相差甚远。这种情况的根源可能是忽视或忽视了社会关系的建模。本文提出的方法包括建立标准回归模型,并利用社会网络构建和分析所收集的数据对其进行扩充。这样就有可能利用两次呼叫记录,并建立一个仍然易于解释的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of social network to improve effectiveness of classifiers in churn modelling
The subject of presented work is prediction of users willingness to churn - i.e. to change the provider of telecommunication services. The typical solution of this problem is application of classification methods to data inferred from the client call history. Classical methods of data mining are widely used by operators however their performance is often far from desired. The source of such a situation may be in neglecting or week modeling of social relations. The proposed approach consists of preparing standard regression model and augmenting it with data gathered by the construction and analysis of the social network. This way it is possible to exploit call history twice and build a model which is still easy to interpret.
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