A Clustering Algorithm for Cross-border E-commerce Customer Segmentation

IF 0.6
Shuling Yang, Yan Hou
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Abstract

With the deepening of reform and opening up, cross-border e-commerce has made great progress and plays a very important role in today's society. Cross-border e-commerce is not only a place for commodity trading, but also a key channel for information communication when commodities are traded. Clustering analysis is one of the common technologies in the field of data mining, and it has its unique advantages in the application of customer segmentation. Firstly, this paper improves the selection of the initial clustering center of K-means clustering algorithm. Aiming at the defects of the existing literature, such as long time-consuming algorithm and poor accuracy when calculating the corresponding sample points for multiple maximum density parameter values as the initial clustering center, an improved scheme based on quadratic density is proposed and applied to customer value segmentation. The research shows that the improved K-means clustering algorithm significantly improves the quality of clustering, thus improving the effectiveness and pertinence of cross-border e-commerce marketing activities.
跨境电子商务客户细分的聚类算法
随着改革开放的不断深入,跨境电子商务取得了长足的发展,在当今社会中发挥着非常重要的作用。跨境电子商务不仅是商品交易的场所,也是商品交易过程中信息交流的重要渠道。聚类分析是数据挖掘领域的常用技术之一,在客户细分的应用中有其独特的优势。首先,本文改进了K-means聚类算法初始聚类中心的选择。针对现有文献中算法耗时长、以多个最大密度参数值作为初始聚类中心计算对应样本点精度差的缺陷,提出了一种基于二次密度的改进方案,并将其应用于客户价值分割中。研究表明,改进的K-means聚类算法显著提高了聚类质量,从而提高了跨境电商营销活动的有效性和针对性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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