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A Novel Algorithm of Mining Maximal Frequent Pattern Based on Projection Sum Tree

机译:一种基于投影和树的挖掘最大频繁模式的新算法

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In this paper, a novel algorithm for mining maximal frequent patterns is proposed based on projection sum frequent items tree. This algorithm projects the transaction base into a projection sum tree and it can store the frequent itemsets in the tree in a compact manner. The algorithm builds frequent patterns tree directly as FPMax algorithm does. However, all the nodes of PSFIT are sorted and ordered, the children of which are also sorted and ordered. It doesn''t need to generate conditional FP-tree dynamically and recursively and it can take advantage of computational result that has been done. The experiment shows that PSFIT is an efficient algorithm, it has comparable performance with FPMax, and in most cases it outperforms FPMax. Key words: projection sum tree, maximal frequent patterns, data mining
机译:本文提出了一种基于投影和频繁项目树的挖掘最大频繁模式的新算法。该算法将事务库投影到投影和树中,它可以以紧凑的方式存储树中的频繁项目集。该算法直接构建频繁的模式树,因为FPMAX算法确实如此。但是,PSFIT的所有节点都被排序和订购,其中的儿童也被排序和订购。它不需要动态地和递归生成条件FP树,并且可以利用已完成的计算结果。实验表明,PSFIT是一种有效的算法,它具有与FPMAX相当的性能,并且在大多数情况下它优于FPMAX。关键词:投影和树,最大频繁模式,数据挖掘

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