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Maximal and closed frequent itemsets mining from uncertain database and data stream

机译:从不确定的数据库和数据流挖掘最大和闭合频繁的项目集

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摘要

Frequent itemsets (FIs) mining from uncertain database is a very popular research area nowadays. Many algorithms have been proposed to mine FI from uncertain database. But in typical FI mining process, all the FIs have to be mined individually,which needs a huge memory. Four trees are proposed in this paper which are: (i) maximal frequent itemset from uncertain database (MFU) tree which contains only the maximal frequent itemsets generated from uncertain database, (ii) closed frequent itemset from uncertain database (CFU) tree which contains only closed frequent itemsets generated from uncertain database, (iii) maximal frequent itemset from uncertain data stream (MFUS) tree which contains maximal frequent itemsets generated from uncertain data stream and (iv) closed frequent itemset from uncertain data stream (CFUS) tree which contains closed frequent itemsets generated from uncertain data stream. Experimental results are also presented which show that maximal and closed frequent itemsets mining requires less time and memory than typical frequent itemsets mining.
机译:频繁的项目集(FIS)从不确定数据库挖掘,现在是一个非常流行的研究区。已经提出了许多算法从不确定的数据库中挖掘。但在典型的挖掘过程中,所有的FIS都必须单独开采,需要巨大的记忆。本文提出了四棵树:(i)来自不确定数据库(MFU)树的最大频繁项目集,该树仅包含从不确定的数据库生成的最大频繁项集,(ii)从包含的不确定数据库(CFU)树关闭频繁的项目集仅从不确定的数据库(III)从不确定的数据流(MFU)树(III)最大频繁的项目集,其中包含从不确定的数据流生成的最大频繁项目集的最大频繁项目集,其中包含包含的不确定数据流(CFU)树封闭频繁的项目集从不确定的数据流生成。还提出了实验结果,表明最大和封闭的频繁项目集比典型频繁项目集采矿需要更少的时间和记忆。

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