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Auto Insurance Business Analytics Approach for Customer Segmentation Using Multiple Mixed-Type Data Clustering Algorithms

机译:使用多种混合类型数据聚类算法的客户细分的自动保险业务分析方法

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Customer segmentation is critical for auto insurance companies to gain competitive advantage by mining useful customer related information. While some efforts have been made for customer segmentation to support auto insurance decision making, their customer segmentation results tend to be affected by the characteristics of the algorithm used and lack multiple validation from multiple algorithms. To this end, we propose an auto insurance business analytics approach that segments customers by using three mixed-type data clustering algorithms including k-prototypes, improved k-prototypes and similarity-based agglomerative clustering. The customer segmentation results of these algorithms can complement and reinforce each other and demonstrate as much information as possible to support decision-making. To confirm its practical value, the proposed approach extracts seven rules for an auto insurance company that may support the company to make customer related decisions and develop insurance products.
机译:客户细分对于汽车保险公司通过挖掘有用的客户相关信息来获得竞争优势至关重要。尽管已经做出了一些努力来支持客户细分以支持汽车保险决策,但是他们的客户细分结果往往会受到所使用算法的特性的影响,并且缺乏来自多种算法的多次验证。为此,我们提出了一种汽车保险业务分析方法,该方法通过使用三种混合类型的数据聚类算法(包括k型原型,改进的k型原型和基于相似性的聚集型聚类)对客户进行细分。这些算法的客户细分结果可以相互补充和增强,并展示尽可能多的信息以支持决策。为了确认其实用价值,该建议方法为一家汽车保险公司提取了七个规则,这些规则可以支持该公司制定与客户相关的决策并开发保险产品。

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