CVM Model of Customer Purchasing Behavior Based on Clustering Analysis

R. Zhao
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引用次数: 0

Abstract

At this time, companies progressively gain revenue from their long-term relationship customers. Many online retailers are earger to practice data analysis and CVM in businesses. However, many companies lack expertises to do so. This paper will present how to use data analysis in business cases. The main idea is to teach many executives how to have a better understand for their customer and therefore in their future progress they can be more producive to make decisions. On account of model built in this paper, customers were segmented into various meaningful groups using the k-means clustering algorithm. The main traits of these consumers in each part have been pointed out. Consequently, a set of recommendations is further provided to the business on consumer marketing.
基于聚类分析的客户购买行为CVM模型
在这个时候,公司逐渐从他们的长期关系客户中获得收入。许多在线零售商都渴望在业务中实践数据分析和CVM。然而,许多公司缺乏这样做的专业知识。本文将介绍如何在商业案例中使用数据分析。主要的想法是教会许多高管如何更好地了解他们的客户,因此在他们未来的发展中,他们可以更有效地做出决策。根据本文建立的模型,使用k-means聚类算法将客户划分为各个有意义的群体。指出了各地区消费者的主要特征。因此,进一步向企业提供了一套关于消费者营销的建议。
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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