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An integrated data mining and behavioral scoring model for analyzing bank customers

机译:用于分析银行客户的集成数据挖掘和行为评分模型

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摘要

Analyzing bank databases for customer behavior management is difficult since bank databases are multi-dimensional, comprised of monthly account records and daily transaction records. This study proposes an integrated data mining and behavioral scoring model to manage existing credit card customers in a bank, A self-organizing map neural network was used to identify groups of customers based on repayment behavior and recency, frequency, monetary behavioral scoring predicators. It also classified bank customers into three major profitable groups of customers. The resulting groups of customers were then profiled by customer's feature attributes determined using an Apriori association rule inducer. This study demonstrates that identifying customers by a behavioral scoring model is helpful characteristics of customer and facilitates marketing strategy development.
机译:由于银行数据库是多维的,由月度帐户记录和每日交易记录组成,因此很难对银行数据库进行客户行为管理分析。这项研究提出了一个集成的数据挖掘和行为评分模型来管理银行中的现有信用卡客户。一个自组织地图神经网络用于根据还款行为和新近度,频率,货币行为评分谓词来识别客户组。它还将银行客户分为三大主要获利客户组。然后,通过使用Apriori关联规则诱导程序确定的客户特征属性来对生成的客户组进行概要分析。这项研究表明,通过行为评分模型识别客户是有益的客户特征,并有助于营销策略的发展。

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