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Based On Online Analysis Of The Association Rule Mining

Posted on:2002-06-27Degree:MasterType:Thesis
Country:ChinaCandidate:F H HaoFull Text:PDF
GTID:2208360032956856Subject:Computer software and theory
Abstract/Summary:PDF Full Text Request
With wide applications of computers and automated data collection tools,rnassive amounts of data have been continuously collected and stored in databases,which creates an imminent need and great opportunities for mining interesting knowledge from data Association rule mining is one kind of data mining techniques which discovers strong association or correlation relationships among data The discovered rules may help market basket or cross-sales analysis,decision making,and business management.In this thesis,we propose and develop an interesting association rule mining approach,called on-line analytical mining of association rules,which integrates the recently developed OLAP(on-ltne analytical processing) technology with some efficient association mining methods It leads to lexible,multi-dimensional,multi-level association rule mining with high performance Several algorithms are developed based on this approach for mining various kinds of associations in multi-dimensional databases, including mtra-dimensional association,inter-dimensional association,hybnd association,and meta-rule-guided of association. These algorithms have been implemented in the DBMiner system. Our study shows that this approach presents great advantages over many existing algorithms in terms of both flexibility and efficiency...
Keywords/Search Tags:OLAP(on-line analytical processing), data mining, association rule mining, data warehouse
PDF Full Text Request
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