Efficient pattern discovery for semistructured data

Zhou Feng, W. Hsu, M. Lee
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引用次数: 10

Abstract

The process of discovering frequent patterns from large semistructured data repositories is one of the hardest categories of tree mining problems, since it involves the discovery of unordered embedded tree patterns. Existing work has focused primarily on the discovery of ordered, induced trees. This work proposes a divide-and-conquer algorithm called WTIMiner to discover the complete set of frequent unordered embedded subtrees. The algorithm successfully reduces the complexity of pattern matching and counting problem that a regular tree mining algorithm faces. Experimental results demonstrate the efficiency and scalability of WTIMiner in terms of both time and space
半结构化数据的有效模式发现
从大型半结构化数据存储库中发现频繁模式的过程是树挖掘问题中最难的一类,因为它涉及发现无序的嵌入式树模式。现有的工作主要集中在有序诱导树的发现上。本文提出了一种名为wtinminer的分治算法来发现频繁无序嵌入子树的完整集合。该算法成功地降低了常规树挖掘算法所面临的模式匹配复杂性和计数问题。实验结果证明了该算法在时间和空间上的有效性和可扩展性
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