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基于概念格的频繁闭项集增量挖掘算法研究
引用本文:战立强,刘大昕.基于概念格的频繁闭项集增量挖掘算法研究[J].哈尔滨工程大学学报,2007,28(2):194-198.
作者姓名:战立强  刘大昕
作者单位:哈尔滨工程大学,计算机学院,黑龙江,哈尔滨,150001
摘    要:近年的研究表明,概念格可以应用于解决频繁闭项集的挖掘问题.针对已有渐进式概念格构造算法中存在的问题,提出了一种基于概念格的频繁闭项集增量挖掘新算法——FIPT-I算法.新算法利用模式树对概念格进行组织,并利用模式树压缩数据库中的事务,在渐进式构造概念格的同时实现了事务的批处理,减少了概念格的调整操作时间.实验结果表明,与其他同类算法相比,FIPT-I算法对于增量挖掘频繁闭项集来说具有更高的效率.

关 键 词:频繁闭项集  增量挖掘算法  模式树  概念格
文章编号:1006-7043(2007)02-0194-05
修稿时间:2005年12月26

Study on FCI mining algorithm based on concept lattice
ZHAN Li-qiang,LIU Da-xin.Study on FCI mining algorithm based on concept lattice[J].Journal of Harbin Engineering University,2007,28(2):194-198.
Authors:ZHAN Li-qiang  LIU Da-xin
Abstract:It is found in recent studies that concept lattice can be used to solve the problem of incremental frequent closed item-set mining.In order to solve the problems existing in the proposed incremental frequent closed item-set mining algorithm,a new algorithm named FIPT-I as a contribution to the issue of incremental frequent closed item-set mining is proposed.FIPT-I treats new transactions in batches by utilizing trees to compress new transactions and represent concept lattice,so it avoids adding new transactions one by one and greatly reduces time of concept lattice reconstructing.The experiment shows that the efficiency of FIPT-I outperforms other similar algorithms when treating incremental frequent closed item-set mining problem.
Keywords:frequent closed item-set  incremental mining algorithm  pattern tree  concept lattice
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