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Segmenting online consumers using K-means cluster analysis

机译:使用K-means聚类分析细分在线消费者

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Internet users have several eharacteristies that differentiate them from other online users, so the aim of this research study is to segregate online consumers into diverse consumers segments on the basis of their online shopping behaviour. In this paper, the diverse stages of the consumer decision making process have been discussed and this study explores only three important phases of consumer behaviour in impacting the pre purchase decision (need recognition, information search and evaluation of alternatives). Data was collected from a well defined sample of 1,014 respondents who had an active internet usage rate. K-Means cluster analysis was used to extract four consumer segments - cognizant techno strivers, conversant appraisers, moderate digital ambivalents and techno savvy impulsive consumers. Classifying consumers into well defined segments can aid marketing in developing a more streamlined and focused consumer targeting process.
机译:互联网用户具有多种将其与其他在线用户区分开的特征,因此,本研究的目的是基于在线购物行为将在线消费者划分为不同的消费者群体。在本文中,讨论了消费者决策过程的各个阶段,本研究仅探讨了影响预购决策的消费者行为的三个重要阶段(需要识别,信息搜索和替代方案评估)。数据是从明确定义的1,014名活跃互联网使用率的受访者中收集的。 K-Means聚类分析用于提取四个细分市场-精通技术的人,熟练的评估师,适度的数字矛盾和精通技术的冲动性消费者。将消费者分类为定义明确的细分市场可以帮助市场营销开发更加精简和集中的消费者定位过程。

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