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A SCALABLE ASSOCIATION RULES MINING ALGORITHM BASED ON SORTING, INDEXING AND TRIMING

机译:一种可扩展关联规则基于分类,索引和修剪的挖掘算法

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Apriori is an influential and well-known algorithm for mining association rules.However, the main drawback of Apriori algorithm is the large amount of candidate itemsets it generates.Several hash-based algorithms, such as DHP and MPIP, were proposed to deal with the problem.DHP employs hash functions to filter out potential-less candidate itemsets.MPIP further improves DHP by employing minimal perfect hashing functions to avoid generation of candidate itemsets.Though MPIP results in a very promising mining efficiency, the memory space required in MPIP increases rapidly as the number of items grows. To obtain even better mining efficiency while reducing the memory space required, a Sorting-Indexing-Trimming (SIT) algorithm for mining association rules is proposed in this paper.SIT uses the sorting, indexing, and trimming techniques to reduce the amount of itemsets to be considered.Then, to utilize both the advantages of Ariori and MPIP, a revised MPIP algorithm is employed to deal with 2-itemsets, and a revised Apriori algorithm to deal with k-itemsets for k>2. Though the memory space required in SIT is less than MPIP, from the experiment results, SIT outperforms both Apriori and MPIP.
机译:先验是挖掘关联rules.However一个有影响力的和众所周知的算法,Apriori算法的主要缺点是大量的候选项集它generates.Several基于散列的算法,如DHP和MPIP的,提出了应对问题.DHP采用哈希函数来过滤掉潜在的候选项目集.MPIP通过采用最小的完美散列函数来避免生成候选项目的函数来进一步改进DHP。虽然MPIP产生非常有前景的采矿效率,MPIP中所需的存储空间迅速增加随着物品数量的增长。为了获得更好的挖掘效率,同时减少所需的存储空间,在本文中提出了一种分类索引修剪(SIT)挖掘关联规则的挖掘算法.SIT使用分类,索引和修整技术来减少项目集的量是considered.Then,利用Ariori和MPIP,修订MPIP算法来处理2-项集,和订正Apriori算法的两个优点来处理的k项集对于k> 2。虽然静坐所需的内存空间小于MPIP,但从实验结果中,SIT优于APRIORI和MPIP。

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