基于高效流剪枝策略的前缀图频繁闭项集挖掘

H. Moonesinghe, S. Fodeh, P. Tan
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引用次数: 35

摘要

提出了一种新的基于图的频繁闭项集挖掘算法PGMiner。我们的方法包括构造一个前缀图结构,并将数据库分解为可变长度的位向量,这些位向量分配给图的节点。这种表示的主要优点是每个节点上的位向量比现有垂直挖掘方法产生的位向量相对短。这有助于通过交叉操作快速计数项目集的频率。我们还设计了一些节点间和节点内的修剪策略,以大大减少组合搜索空间。与其他现有方法不同,我们不需要在内存中存储到目前为止已经挖掘的整个封闭项目集集,以便检查候选项目集是否关闭。这极大地减少了我们算法的内存使用,特别是对于低支持阈值。我们使用合成数据集和真实世界数据集进行的实验表明,PGMiner比现有的挖掘算法高出一个数量级,并且可以扩展到非常大的数据库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Frequent Closed Itemset Mining Using Prefix Graphs with an Efficient Flow-Based Pruning Strategy
This paper presents PGMiner, a novel graph-based algorithm for mining frequent closed itemsets. Our approach consists of constructing a prefix graph structure and decomposing the database to variable length bit vectors, which are assigned to nodes of the graph. The main advantage of this representation is that the bit vectors at each node are relatively shorter than those produced by existing vertical mining methods. This facilitates fast frequency counting of itemsets via intersection operations. We also devise several inter- node and intra-node pruning strategies to substantially reduce the combinatorial search space. Unlike other existing approaches, we do not need to store in memory the entire set of closed itemsets that have been mined so far in order to check whether a candidate itemset is closed. This dramatically reduces the memory usage of our algorithm, especially for low support thresholds. Our experiments using synthetic and real-world data sets show that PGMiner outperforms existing mining algorithms by as much as an order of magnitude and is scalable to very large databases.
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