Customer Data Mining for Supporting Cross-Marketing of Financial Products
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    Abstract:

    This paper makes a comparison between Clustering algorithms such as DBSCAN, CLIQUE, CLARANS, K-means and X-means. The X-means clustering algorithm is selected to establish a customer segmentation model for financial products marketing. Based on relational analysis of financial products, a financial products customer data mining application system is designed to support the cross-marketing of financial products. In the end, a use case is given to illustrate the application of the system.

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黄洪,洪毅.支持交叉营销的金融产品客户数据挖掘.计算机系统应用,2010,19(5):100-103

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  • Received:September 07,2009
  • Revised:October 21,2009
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