基于数据挖掘的信用卡客户细分与目标营销

Wei Li, Xuemei Wu, Yayun Sun, Quan-ju Zhang
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引用次数: 36

摘要

本文以我国某商业银行信用卡的真实数据为基础,采用k均值法将信用卡客户分为四类。然后根据信用卡持卡人的背景信息,基于C5.0、神经网络、卡方自动交互检测器和分类回归树等四种数据挖掘方法分别构建预测模型。最后,我们通过四种模型中的最佳模型获得了一些有用的决策树调控信息。这些信息不仅有助于银行了解不同客户的相关特征,还有助于营销代表发现潜在客户,实施目标营销。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Credit Card Customer Segmentation and Target Marketing Based on Data Mining
Based on the real data of a Chinese commercial bank’s credit card, in this paper, we classify the credit card customers into four classifications by K-means. Then we built forecasting models separately based on four data mining methods such as C5.0, neural network, chi-squared automatic interaction detector, and classification and regression tree according to the background information of the credit cards holders. Conclusively, we obtain some useful information of decision tree regulation by the best model among the four. The information is not only helpful for the bank to understand related characteristics of different customers, but also marketing representatives to find potential customers and to implement target marketing.
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