摘要: 针对聚类算法在金融领域广泛应用的实际情况,基于银行客户数据集,对DBSCAN, K-means和X-means 3种聚类算法在执行效率、可扩展性、异常点检测能力等方面进行对比分析,并提出将X-means算法应用于银行业客户细分。利用X-means算法建立了一套银行客户细分模型,为银行决策者提供科学的决策支持。
关键词:
聚类,
K-means算法,
X-means算法,
客户细分
Abstract: This paper considers cluster analysis, which is the most often applied in commerce area and discusses three algorithms: DBSCAN, K-means and X-means based on the bank customer standard dataset. It compares algorithms concerning their effectiveness, scalability, outliers detection ability, and builds some bank customer models with X-means, which provides more powerful suggestions for bank decision-making man.
Key words:
clustering,
K-means algorithm,
X-means algorithm,
customer segmentation
中图分类号:
花海洋;赵怀慈. 聚类算法在银行客户细分中的应用[J]. 计算机工程, 2008, 34(24): 37-39.
HUA Hai-yang; ZHAO Huai-ci. Application of Clustering Algorithms in Bank Customer Segmentation[J]. Computer Engineering, 2008, 34(24): 37-39.