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A methodology for classification and validation of customer datasets

机译:客户数据集分类和验证的方法

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Purpose The purpose of this paper is to develop a method to classify customers according to their value to an organization. This process is complicated by the disconnected nature of a customer record in an industry such as insurance. With large numbers of customers, it is of significant benefit to managers and company analysts to create a broad classification for all customers. Design/methodology/approach The initial step is to construct a full customer history and extract a feature set suited to customer lifetime value calculations. This feature set must then be validated to determine its ability to classify customers in broad terms. Findings The method successfully classifies customer data sets with an accuracy of 90%. This study also discovered that by examining the average value for key variables in each customer segment, an algorithm can label the group of clusters with an accuracy of 99.3%. Research limitations/implications Working with a real-world data set, it is always the case that some features are unavailable as they were never recorded. This can impair the algorithm's ability to make good classifications in all cases. Originality/value This study believes that this research makes a novel contribution as it automates the classification of customers but in addition, the approach provides a high-level classification result (recall and precision identify the best cluster configuration) and detailed insights into how each customer is classified by two validation metrics. This supports managers in terms of market spend on new and existing customers.
机译:目的本文的目的是开发一种方法,根据其对组织的价值对客户进行分类。由于保险等行业的客户记录的断开性质,这一过程变得复杂。凭借大量客户,对管理人员和公司分析师对所有客户创造了广泛的分类,这是重大好处。设计/方法/方法初始步骤是构建完整的客户历史记录,并提取适合客户终身值计算的功能集。然后必须验证此功能集以确定其以广泛的方式对客户进行分类的能力。调查结果该方法成功对客户数据集进行了分类,精度为90%。本研究还发现,通过检查每个客户段中的关键变量的平均值,算法可以用99.3%的精度标记一组簇。研究限制/含义使用真实世界的数据集,始终是某些功能不可用的情况,因为它们从未记录过。这可能会损害算法在所有情况下做出良好分类的能力。本研究的原创性/价值认为,这项研究使新的贡献成为一种自动化客户的分类,而且还提供了高级分类结果(召回和精确识别最佳群集配置),并详细介绍了每个客户的详细洞察由两个验证度量分类。这支持管理人员在市场上的新款和现有客户。

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