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Discovering cardholders' payment-patterns based on clustering analysis

机译:基于聚类分析发现持卡人的支付方式

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摘要

This paper sampled approximately 9.3 million entries of data, concerning payments from 300,000 credit card customers over the past two years of Bank A in Taiwan. By applying data mining techniques to decipher customers' behavior and perform risk analysis, the clustering algorithms divides card users into 9 groups of different levels of contributions and risk profiles, according to their consumption patterns. We generalize a set of clustering rules to identify high risk customer groups in advance. Therefore, the proposed suggestions could tell who was a bad risk and either deny their application or, for those who were already cardholders, start shrinking their available credit and increasing minimum payments to squeeze out as much cash as possible before they defaulted. On the other hand, banks are advised to adjust credit limits in a timely manner for the customer groups whose risks are low and contributions are high, in addition to the provision of value added services, in order to enhance earnings.
机译:本文抽取了大约930万个数据条目,这些数据涉及台湾A银行过去两年来300,000名信用卡客户的付款。通过应用数据挖掘技术来解密客户的行为并执行风险分析,聚类算法根据刷卡用户的消费模式将其分为9组,每个级别的贡献度和风险状况均不同。我们概括了一组聚类规则,以便提前识别高风险客户群。因此,提出的建议可以告诉谁是一个严重风险,或者拒绝他们的申请,或者对于已经是持卡人的人,开始缩减其可用信用并增加最低付款额,以便在违约前榨取尽可能多的现金。另一方面,除提供增值服务外,建议银行及时调整低风险,高缴费客户群的信用额度,以提高收益。

著录项

  • 来源
    《Expert Systems with Application》 |2011年第10期|p.13284-13290|共7页
  • 作者单位

    Department of Information and Communication, Tamkang University. Danshui Disl, New Taipei City 251, Taiwan;

    Department of Computer Science and Information Engineering, Tamkang University, Danshui Dist., New Taipei City 251, Taiwan;

    Department of Insurance, Tamkang University, Danshui Dist., New Taipei City 251, Taiwan;

    Department of Computer Science and Information Engineering, Tamkang University, Danshui Dist., New Taipei City 251, Taiwan;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    credit card data mining clustering algorithms;

    机译:信用卡数据挖掘聚类算法;

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