首页> 外文会议>International Conference on Database Systems for Advanced Applications(DASFAA 2005); 20050417-20; Beijing(CN) >NNF: An Effective Approach in Medicine Paring Analysis of Traditional Chinese Medicine Prescriptions
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NNF: An Effective Approach in Medicine Paring Analysis of Traditional Chinese Medicine Prescriptions

机译:NNF:一种有效的中药处方药价分析方法

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摘要

Medicine Paring Analysis is one of the most important tasks in the research of Traditional Chinese Medicine Prescriptions. The most essential and difficult step is to mine associations between different medicine items. This paper proposes an effective approach in solving this problem. The main contributions include: (1) proposing a novel data structure called indexed frequent pattern tree (IFPT) to maintain the mined frequent patterns (2) presenting an efficient algorithm called Nearest Neighbor First (NNF) to mine association rules from IFPT (3) designing and implementing two optimization strategies that avoid the examinations of a lot of subsets of Y that can't be the left part of any association rule of the form X = > Y - X and thus achieving a wonderful performance and (4) conducting extensive experiments which show that NNF runs far faster than Apriori algorithm and has better scalability. And finally we demonstrate the effectiveness of this method in Medicine Paring Analysis.
机译:配药分析是中药处方研究中最重要的任务之一。最基本和最困难的步骤是挖掘不同药物之间的关联。本文提出了解决这一问题的有效方法。主要贡献包括:(1)提出一种称为索引频繁模式树(IFPT)的新颖数据结构,以维护挖掘的频繁模式(2)提出一种称为“最近邻居优先(NNF)”的有效算法,以挖掘IFPT的关联规则(3)设计和实施两种优化策略,这些策略可以避免检查Y的许多子集,这些子集不能成为X => Y-X形式的任何关联规则的左部分,从而获得出色的性能,并且(4)进行广泛的实验表明,NNF比Apriori算法运行得快得多,并且具有更好的可伸缩性。最后,我们证明了该方法在医学配对分析中的有效性。

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