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An anticipation model of potential customers' purchasing behavior based on clustering analysis and association rules analysis

机译:基于聚类分析和关联规则分析的潜在客户购买行为预期模型

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This paper proposes an anticipation model of potential customers' purchasing behavior. This model is inferred from past purchasing behavior of loyal customers and the web server log files of loyal and potential customers by means of clustering analysis and association rules analysis. Clustering analysis collects key characteristics of loyal customers' personal information; these are used to locate other potential customers. Association rules analysis extracts knowledge of loyal customers' purchasing behavior, which is used to detect potential customers' near-future interest in a star product. Despite using offline analysis to filter out potential customers based on loyal customers' personal information and generate rules of loyal customers' click streams based on loyal customers' web log data, an online analysis which observes potential customers' web logs and compares it with loyal customers' click stream rules can more readily target potential customers who may be interested in the star products in the near future.
机译:本文提出了潜在客户购买行为的预期模型。通过聚类分析和关联规则分析,从忠诚客户的过去购买行为以及忠诚和潜在客户的Web服务器日志文件中推断出此模型。聚类分析收集忠实客户个人信息的关键特征;这些用于查找其他潜在客户。关联规则分析可提取忠实客户的购买行为知识,该知识可用于检测潜在客户对明星产品的近期兴趣。尽管使用离线分析根据忠实客户的个人信息过滤出潜在客户并根据忠实客户的网络日志数据生成忠实客户的点击流规则,但在线分析会观察潜在客户的网络日志并将其与忠实客户进行比较点击流规则可以更轻松地针对不久的将来可能对明星产品感兴趣的潜在客户。

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