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Mining interesting association rules from customer databases and transaction databases

机译:从客户数据库和交易数据库中挖掘有趣的关联规则

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In this paper, we examine a new data mining issue of mining association rules from customer databases and transaction databases. The problem is decomposed into two subproblems: identifying all the large itemsets from the transaction database and mining association rules from the customer database and the large itemsets identified. For the first subproblem, we propose an efficient algorithm to discover all the large itemsets from the transaction database. Experimental results show that by our approach, the total execution time can be reduced significantly. For the second subproblem, a relationship graph is constructed according to the identified large itemsets from the transaction database and the priorities of condition attributes from the customer database. Based on the relationship graph, we present an efficient graph-based algorithm to discover interesting association rules embedded in the transaction database and the customer database.
机译:在本文中,我们研究了从客户数据库和交易数据库中挖掘关联规则的新数据挖掘问题。该问题被分解为两个子问题:从交易数据库中识别所有大项目集,从客户数据库和已识别的大项目集中挖掘关联规则。对于第一个子问题,我们提出了一种有效的算法,可以从交易数据库中发现所有大型项目集。实验结果表明,通过我们的方法,总执行时间可以大大减少。对于第二个子问题,根据从交易数据库中识别出的大项目集和来自客户数据库中条件属性的优先级,构建关系图。基于关系图,我们提出了一种基于图的高效算法,以发现嵌入在交易数据库和客户数据库中的有趣关联规则。

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