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Optimized Methodology for Hassle-Free Clustering of Customer Issues in Banking

机译:在银行业务中无忧无虑的客户问题的无忧无虑群集优化方法

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The unprecedented growth of issues generated in banking sector is extremely huge. It is important to prevent customer churn by retaining existing customers and acquiring new customers so that is important for analyzing. Since data stored in the databases of banks are generally complex and are of varying dimensions such as consumer loan, debt collection, credit reporting and mortgage, the procedure for data analysis becomes very difficult. This paper presents a simplified framework for clustering the various issues by using a combination of data mining techniques. Hence in huge datasets issues from recorded by the customers are clustered using an efficient clustering algorithm. The parameters such as execution time and prediction accuracy are used to compare the results of the algorithms.
机译:银行业产生的问题的前所未有的增长极大。通过保留现有客户并获得新客户来防止客户流失是很重要的,这对于分析很重要。由于存储在银行数据库中的数据通常是复杂的并且具有不同维度,如消费者贷款,债务,信用报告和抵押,数据分析的程序变得非常困难。本文介绍了一种通过使用数据挖掘技术的组合来聚类各种问题的简化框架。因此,在庞大的数据集中,通过客户录制的问题使用有效的聚类算法群集。诸如执行时间和预测精度的参数用于比较算法的结果。

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