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Data mining application in customer relationship management of credit card business

机译:数据挖掘在信用卡业务客户关系管理中的应用

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First, we classify the selected customers into clusters using RFM model to identify high-profit, gold customers. Subsequently, we carry out data mining using association rules algorithm. We measure the similarity, difference and modified difference of mined association rules based on three rules, i.e. emerging pattern rule, unexpected change rule, and added/perished rule. In the meantime, we use rule matching threshold to derive all types of rules and explore the rules with significant change based on the degree of change measured. In this paper, we employ data mining tools and effectively discover the current spending pattern of customers and trends of behavioral change, which allow management to detect in a large database potential changes of customer preference, and provide as early as possible products and services desired by the customers to expand the clientele base and prevent customer attrition.
机译:首先,我们将所选客户分类为使用RFM模型的集群来识别高利润,黄金客户。随后,我们使用关联规则算法进行数据挖掘。我们根据三个规则测量挖掘关联规则的相似性,差异和修改差异,即新兴模式规则,意外变更规则和添加/捕获的规则。同时,我们使用规则匹配阈值来派生所有类型的规则,并根据测量的变化程度来探索具有显着变化的规则。在本文中,我们采用了数据挖掘工具,并有效地发现了当前的客户消费模式和行为变化的趋势,允许管理层在大量数据库潜在的客户偏好变化中,并尽早提供所需的产品和服务客户扩展客户的基础并防止客户的磨损。

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