基于粒计算的超市会员数据的聚类算法
Cluster Algorithm of Supermarket Member Data Based on Granular Computing
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摘要: 在粒计算理论的指导下,首先对超市客户数据库中的信息进行预处理,并根据处理后的信息对客户信息进行细分,从而有针对性地服务不同层面的群体.其次针对不同层次的客户的消费行为特征进行聚类,在此基础上对超市会员的行为模式进行分析,进而采用适宜的营销策略Abstract: Under the guidance of granular computing, the supermarket customer database information was firstly preprocessed, and according to the processed information after subdividing customer information, different service for different levels of groups can be given. Secondly, the behavior characteristics of customers were clustered into different levels and the behavior patterns of supermarket member were analyzed, further a suitable marketing strategy can be made.