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点击流数据仓库系统应用研究 被引量:1

Research on Application of Click Stream Data Warehouses
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摘要 电子商务网站逐渐成为商务智能中数据量最大的地方之一。把数据仓库技术引入电子商务应用中,把用户在电子商务网站上的点击流(Click Stream)和Web日志文件作为数据源,利用高效的改进的关联规则算法,可以有效地分析出其中蕴涵的知识,如用户行为模式等。利用这些知识,商务人员能够拓展他们的市场,改善客户关系,降低成本,使操作流水化,有效地辅助他们改进商业策略。 Wcbsitc gradually becomes one of the places containing the biggest amount of data in business intelligence. This paper introduces the data warehousing technologies into the applications of E-business and takes the click stream data and Web log files of Website as the data source of data warehonse with the efficient association rule algorithm. Knowledge such as users' using patterns can be deduced. With these knowledge, business men can expand the business markets, develop relations with customers, low their cost, make their operations flow fluently, and enhance their busines strategies.
作者 黎客来 汤震
出处 《计算机与现代化》 2008年第2期53-56,共4页 Computer and Modernization
关键词 点击流 数据仓库 关联规则 APRIORI算法 click stream data warehouse association rule Apriori algorithm
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参考文献6

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