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Churn prediction in subscription services: An application of support vector machines while comparing two parameter-selection techniques

机译:订阅服务中的客户流失预测:支持向量机在比较两种参数选择技术时的应用

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摘要

CRM gains increasing importance due to intensive competition and saturated markets. With the purpose of retaining customers, academics as well as practitioners find it crucial to build a churn prediction model that is as accurate as possible. This study applies support vector machines in a newspaper subscription context in order to construct a churn model with a higher predictive performance. Moreover, a comparison is made between two parameter-selection techniques, needed to implement support vector machines. Both techniques are based on grid search and cross-validation. Afterwards, the predictive performance of both kinds of support vector machine models is benchmarked to logistic regression and random forests. Our study shows that support vector machines show good generalization performance when applied to noisy marketing data. Nevertheless, the parameter optimization procedure plays an important role in the predictive performance. We show that only when the optimal parameter-selection procedure is applied, support vector machines outperform traditional logistic regression, whereas random forests outperform both kinds of support vector machines. As a substantive contribution, an overview of the most important churn drivers is given. Unlike ample research, monetary value and frequency do not play an important role in explaining churn in this subscription-services application. Even though most important churn predictors belong to the category of variables describing the subscription, the influence of several client/company-interaction variables cannot be neglected.
机译:由于竞争激烈和市场饱和,CRM越来越重要。为了留住客户,学者和从业人员都发现建立尽可能准确的客户流失预测模型至关重要。这项研究在报纸订阅环境中应用支持向量机,以构建具有更高预测性能的客户流失模型。此外,对实现支持向量机所需的两种参数选择技术进行了比较。两种技术都基于网格搜索和交叉验证。然后,将两种支持向量机模型的预测性能都以逻辑回归和随机森林为基准。我们的研究表明,将支持向量机应用于嘈杂的营销数据时,具有良好的泛化性能。然而,参数优化过程在预测性能中起着重要作用。我们表明,仅当应用最佳参数选择程序时,支持向量机才能胜过传统的逻辑回归,而随机森林的性能却优于两种支持向量机。作为实质性贡献,给出了最重要的流失驱动因素的概述。与大量研究不同,货币价值和频率在解释此订阅服务应用程序中的用户流失方面不发挥重要作用。即使最重要的客户流失预测变量属于描述订阅的变量类别,也不能忽略几个客户/公司交互变量的影响。

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