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Hidden Markov Models for churn prediction

机译:隐藏的马尔可夫模型用于潮流预测

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Most companies favour the creation and nurturing of long-term relationships with customers because retaining customers is more profitable than acquiring new ones. Churn prediction is a predictive analytics technique to identify churning customers ahead of their departure and enable customer relationship managers to take action to keep them. This work evaluates the development of an expert system for churn prediction and prevention using a Hidden Markov model (HMM). A HMM is implemented on unique data from a mobile application and its predictive performance is compared to other algorithms that are commonly used for churn prediction: Logistic Regression, Neural Network and Support Vector Machine. Predictive performance of the HMM is not outperformed by the other algorithms. HMM has substantial advantages for use in expert systems though due to low storage and computational requirements and output of highly relevant customer motivational states. Generic session data of the mobile app is used to train and test the models which makes the system very easy to deploy and the findings applicable to the whole ecosystem of mobile apps distributed in Apple's App and Google's Play Store.
机译:大多数公司都赞成与客户的长期关系创造和培养,因为挡住客户比收购新的客户更有利可图。 Churl预测是一种预测分析技术,可以在他们离开之前识别客户,并使客户关系经理能够采取行动以保持它们。这项工作评估了使用隐马尔可夫模型(HMM)的搅拌预测和预防专家系统的开发。从移动应用程序的唯一数据实现HMM,并将其预测性能与常用于流失预测的其他算法进行比较:Logistic回归,神经网络和支持向量机。 HMM的预测性能并不是由其他算法表现出来的。嗯,在专家系统中具有实质性优势,但由于较低的存储和计算要求以及高度相关的客户动机状态的输出。移动应用程序的通用会话数据用于培训和测试使系统易于部署的模型和适用于在Apple应用程序和谷歌的播放商店的移动应用程序的整个生态系统的调查结果。

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