搜索模式规则

Guichong Li, Howard J. Hamilton
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引用次数: 0

摘要

我们解决了从给定统计度量的事务数据集中找到一组模式规则的问题。提出了一种新的数据结构,称为增量计数后缀树(ICST),用于在线计算任何模式或项目集的支持度估计。使用ICST,我们的方法通过在分区中扫描整个数据集直接生成一组模式规则,而无需生成频繁的项集。可以通过从模式规则中删除冗余来找到非冗余规则。PPMCR算法在遍历ICST时通过生成有效的候选规则,首先找到模式规则,然后找到非冗余规则。实验结果表明,PPMCR算法可以有效地挖掘较少的非冗余规则。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Searching for Pattern Rules
We address the problem of finding a set of pattern rules, from a transaction dataset given a statistical metric. A new data structure, called an incrementally counting suffix tree (ICST), is proposed for online computation of estimates of the support of any pattern or itemset. Using an ICST, our approach directly generates a set of pattern rules by a single scan of the whole dataset in partitions without the generation of frequent itemsets. Non-redundant rules can be found by removing redundancies from the pattern rules. The PPMCR algorithm first finds pattern rules and then non-redundant rules by generating valid candidates while traversing the ICST. Experimental results show that the PPMCR algorithm can be used for efficiently mining fewer non-redundant rules.
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