面向数据仓库环境的可伸缩Web挖掘架构

Dongkwon Joo, S. Moon
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引用次数: 4

摘要

对于Web挖掘来说,最大的问题是数据的稀缺性。为了克服这个问题,尽可能多地准备商业智能信息所需的数据,我们提出了Web挖掘中的逆向归纳。Web挖掘本身就是一个迭代的过程,其中数据挖掘技术是反复迭代地使用的。为了支持后向归纳和Web挖掘特性,提出了数据仓库环境下可扩展的Web挖掘体系结构。提出的Web挖掘架构具有三种可扩展性。它们是:操作数据库的可扩展性、数据模型的可扩展性和数据挖掘引擎的可扩展性。通过在数据仓库环境中实现具有三种可伸缩性的可伸缩Web挖掘体系结构来支持逆向归纳过程,我们可以从Web挖掘中提取业务智能信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scalable Web mining architecture for backward induction in data warehouse environment
For Web mining, the biggest problem is the scarcity of data. To overcome the problem and prepare as much needed data as possible for business intelligent information, we propose backward induction in Web mining. Web mining itself is an iterative process where data mining techniques are used back and forth and iteratively. To support backward induction and Web mining characteristics, the scalable Web mining architecture in a data warehouse environment is proposed. The proposed Web mining architecture has three kinds of scalabilities. These are: the scalabilities of operational database, the scalabilities of data model and the scalabilities of data mining engines. By implementing the scalable Web mining architecture with three kinds of scalabilities in a data warehouse environment to support backward induction procedures, we can extract business intelligent information from Web mining.
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