根据影响顾客购买意愿的因素对网上商店中的顾客进行细分

Eunmi Kim, Taeho Hong
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引用次数: 20

摘要

本文提出了一种基于顾客心理数据对顾客进行细分的方法,使网上商店能够提供定制化的营销。在线商店可以通过识别客户的价值,将他们的客户分成几个具有相似购买意图的客户群,从而专注于更有利可图的活动。为了对在线客户进行细分,该方法在先前解释在线客户购买行为的研究基础上,采用了影响客户在网络上购买意愿的因素。我们将SOM (Self-organized Map)和k-means算法的聚类结果整合到一个模型中。根据我们的方法所呈现的细分市场,网上商店可以针对更有价值、更有潜力的电子客户开展促销营销,提供个性化服务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmenting customers in online stores from factors that affect the customer's intention to purchase
This paper has proposed an approach that enables online stores to offer customized marketing by segmenting their customers based on customers' psychographic data. Online stores can concentrate on more profitable activities by identifying customers' value as they segment their customers into a few groups of customers with similar intentions to purchase. To segment online customers, based on previous research that explains the behavior of online customers regarding purchasing, the approach has employed the factors that affect the customers' intention to purchase on the Web. We integrated the clustering results of SOM (Self-organized Map) and the k-means algorithm into a single model. Online stores can develop promotional marketing and offer personalized service for e-customers, who are more valuable and more promising according to the market segments presented by our approach.
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