改进K-Means算法及其在客户细分中的应用

X. Qin, Shijue Zheng, Ying Huang, Guangsheng Deng
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引用次数: 9

摘要

目前,聚类算法被广泛应用于商业领域,如客户分析,并取得了良好的应用效果。K-means算法是目前最常用的聚类方法。但是,当面对大规模数据时,时间消耗相当高。在本文中,我们改进了K-means算法。我们的改进是基于三角不等式定理。并利用改进后的算法对客户分类进行了实例研究。实验结果表明,改进后的方法确实降低了时间消耗,因此对大规模数据集更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved K-Means Algorithm and Application in Customer Segmentation
Nowadays, clustering algorithms are widely used in the commercial field, such as customer analysis, and this application has achieved good effect. K-means algorithm is by far the most commonly used method for clustering. Although, the time consumption is fairly high when faced with lager-scale data. In this paper, we improved the K-means algorithm. Our improvement is based on the triangle inequality theorem. We use the improved algorithm to carry out a case study in the customer classification. The experimental results show that the improved method indeed lead to lower time consumption, and therefore more effective for large-scale dataset.
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