Fuzzy clustering in data mining for telco database marketing campaigns

S. Russell, W. Lodwick
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引用次数: 28

Abstract

Fuzzy methods have been applied to data mining and to databases of customer information for marketing. This paper explores fuzzy clustering approaches to telecommunications database marketing. Fuzzy clustering methods can be used to mine telco customer and prospect databases to gain residential and business customer market share. Four key fuzzy enhancements to traditional database marketing are developed in this paper. First, customers often have significant membership values in more than one distinct fuzzy cluster and can be considered in a natural manner for hybrid or multiple contacts in a given marketing campaign. Second, fuzzy clustering outcomes are shown to be dependent on the particular offer or marketing message. Third, there are differences in clustering outcomes over time, as various offers and treatments are successively presented to consumers, and as products and tastes change. This evolution of fuzzy clusters can be used to help understand customer loyalty and to extract a more optimal lifetime economic relationship value. Fourth, in the longer run, formal procedures can be suggested involving intuitive fuzzy-based clustering metrics for continuous process improvement, to support increasingly flexible and opportunistic campaign management.
电信数据库营销活动数据挖掘中的模糊聚类
模糊方法已被应用于数据挖掘和营销客户信息数据库中。本文探讨了电信数据库营销的模糊聚类方法。模糊聚类方法可以用于挖掘电信客户和前景数据库,以获得住宅和商业客户的市场份额。本文对传统数据库营销进行了四个关键的模糊增强。首先,客户通常在多个不同的模糊聚类中具有重要的成员值,并且可以以一种自然的方式考虑给定营销活动中的混合或多个联系人。其次,模糊聚类结果显示依赖于特定的报价或营销信息。第三,随着时间的推移,聚类结果会有所不同,因为各种各样的优惠和待遇会陆续呈现给消费者,而且产品和口味也会发生变化。这种模糊聚类的演变可以用来帮助理解客户忠诚度,并提取更优化的终身经济关系价值。第四,从长远来看,可以建议正式的程序,包括直观的基于模糊的聚类指标,以持续改进流程,以支持日益灵活和机会主义的竞选管理。
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