客户序列数据库中多时间间隔加权RFM序列模式的知识发现

Chandni Naik, A. Kharwar, Mukesh Patel
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引用次数: 4

摘要

序列模式挖掘是一种从大型序列数据库中发现顾客购买行为的有效方法。顺序模式挖掘可用于医疗记录、市场营销、销售分析和web日志分析等。传统的顺序模式挖掘不能给出最近的、有利可图的模式。因此,引入了基于rfm的顺序模式挖掘技术。尽管基于rfm的顺序模式挖掘给出了最近活跃且有利可图的购买模式,但它并没有给出每个项目之间的时间间隔。为了发现时间间隔,提出了RFM-TI算法。考虑多时间间隔的好处是,我们可以从中了解客户在下一个“h”步而不是下一个步骤可能购买什么。实验结果表明,与基于rfm的序列模式挖掘相比,该方法能发现更多有价值的模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Knowledge discovery of weighted RFM sequential patterns with multi time interval from customer sequence database
Sequential pattern mining is helpful methodology to discover customer purchasing behaviour from large sequence database. Sequential pattern mining can be used in medical records, marketing, sales analysis, and web log analysis and so on. The traditional sequential pattern mining does not give the pattern which is recent and profitable. So, RFM-based sequential pattern mining techniques is introduced. Although RFM-based sequential pattern mining gives buying patterns which are recently active and profitable however it does not give the time interval between each and every items. To discover a time interval, RFM-TI algorithm is proposed. The advantages of considering multi time interval is, from that we are able to realize what customer would possibly buy in next “h” step rather than next step. The experimental evaluation shows that the proposed method can discover more valuable patterns than RFM-based sequential pattern mining.
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