An Adaptive Method for Discovering Maximal Frequent Itemsets to Large Databases

V. Rao, P. Geetha, P. Vaishali
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引用次数: 1

Abstract

A novel adaptive method included two phases for discovering maximal frequent itemsets is roposed. A flexible hybrid search method is given, which exploits key advantages of both the top-down strategy and the bottomup strategy. Information gathered in the bottom-up can be used to prune in the other top-down direction. Some efficient decomposition and pruning strategies are implied, which can reduce the original search space rapidly in the iterations. The compressed bitmap technique is employed in the counting of itemsets support. According to the big space requirement for the saving of intact bitmap, each bit vector is partitioned into some blocks, and hence every bit block is encoded as a shorter symbol. Therefore the original bitmap is impacted efficiently. Experimental and analytical results are presented in the end
大型数据库最大频繁项集的自适应发现方法
提出了一种包含两个阶段的自适应最大频繁项集发现方法。提出了一种灵活的混合搜索方法,充分利用了自顶向下和自底向上两种搜索策略的优点。自下而上收集的信息可以用于在另一个自上而下的方向上进行修剪。提出了一些有效的分解和剪枝策略,可以在迭代过程中迅速缩小原始搜索空间。在项集支持的计数中采用压缩位图技术。根据完整位图存储空间大的要求,将每个位向量划分为若干块,从而将每个位块编码为一个较短的符号。因此有效地影响了原始位图。最后给出了实验和分析结果
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