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A Fuzzy ANP Based Weighted RFM Model for Customer Segmentation in Auto Insurance Sector

机译:基于模糊ANP的加权RFM模型在汽车保险领域的客户细分

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摘要

Data mining has a tremendous contribution for researchers to extract the hidden knowledge and information which have been inherited in the raw data. This study has proposed a brand new and practical fuzzy analytic network process (FANP) based weighted RFM (Recency, Frequency, Monetary value) model for application in K-means algorithm for auto insurance customers 'segmentation. The developed methodology has been implemented for a private auto insurance company in Iran which classified customers into four "best", "new", "risky", and "uncertain" patterns. Then, association rules among auto insurance services in two most valuable customer segments including "best" and "risky "patterns are discovered and proposed. Finally, some marketing strategies based on the research results are proposed. The authors believe the result of this paper can provide a noticeable capability to the insurer company in order to assess its customers' loyalty in marketing strategy.
机译:数据挖掘为研究人员提取原始数据中继承的隐藏知识和信息做出了巨大贡献。本研究提出了一种全新实用的基于模糊分析网络过程(FANP)的加权RFM(新近度,频率,货币价值)模型,用于K-means算法进行车险客户细分。已针对伊朗的一家私人汽车保险公司实施了开发的方法,该公司将客户分为四个“最佳”,“新”,“风险”和“不确定”模式。然后,发现并提出了包括“最佳”和“风险”模式在内的两个最有价值的客户群中的汽车保险服务之间的关联规则。最后,根据研究结果提出了一些营销策略。作者认为,本文的结果可以为保险公司提供明显的能力,以便评估其客户在营销策略中的忠诚度。

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