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Science / Web mining / Association rule learning / Structure mining / Visualization / Database / Oracle Data Mining / Social network analysis software / Data mining / Information science / Data management
Date: 2006-01-20 08:00:42
Science
Web mining
Association rule learning
Structure mining
Visualization
Database
Oracle Data Mining
Social network analysis software
Data mining
Information science
Data management

Web Usage Mining Structuring semantically enriched clickstream data

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