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首页> 外文期刊>International Journal of Industrial Engineering & Production Research >Mining the Banking Customer Behavior Using Clustering and Association Rules Methods
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Mining the Banking Customer Behavior Using Clustering and Association Rules Methods

机译:使用聚类和关联规则方法挖掘银行业客户行为

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摘要

The unprecedented growth of competition in the banking technology has raised the importance of retaining current customers and acquires new customers so that is important analyzing Customer behavior, which is base on bank databases. Analyzing bank databases for analyzing customer behavior is difficult since bank databases are multi-dimensional, comprised of monthly account records and daily transaction records. Few works have focused on analyzing of bank databases from the viewpoint of customer behavioral analyze. This study presents a new two-stage frame-work of customer behavior analysis that integrated a K-means algorithm and Apriori association rule inducer. The K-means algorithm was used to identify groups of customers based on recency, frequency, monetary behavioral scoring predicators; it also divides customers into three major profitable groups of customers. Apriori association rule inducer was used to characterize the groups of customers by creating customer profiles. Identifying customers by a customer behavior analysis model is helpful characteristics of customer and facilitates marketing strategy development.
机译:银行技术竞争的空前增长已经提高了留住现有客户和获取新客户的重要性,因此基于银行数据库分析客户行为非常重要。由于银行数据库是多维的,包含月度帐户记录和每日交易记录,因此很难分析银行数据库以分析客户行为。从客户行为分析的角度来看,很少有工作致力于银行数据库的分析。这项研究提出了一个新的两阶段的客户行为分析框架,该框架整合了K-means算法和Apriori关联规则诱导器。 K-means算法用于根据新近度,频率,货币行为评分谓词来识别客户群;它还将客户分为三个主要的有利可图的客户组。 Apriori关联规则诱导程序用于通过创建客户资料来表征客户群。通过客户行为分析模型识别客户是客户的有用特征,并有助于营销策略的发展。

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