Mining Frequent Rooted Ordered Tree Generators Efficiently

Shengwei Yi, Jize Xu, Yong Peng, Qi Xiong, Ting Wang, Shilong Ma
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引用次数: 1

Abstract

With the wide applications of tree structured data, such as XML databases, research of mining frequent sub tree patterns have recently attracted much attention in the data mining and database communities. Due to the downward closure property, mining complete frequent sub tree patterns can lead to an exponential number of results. Although the existing studies have proposed several alleviative solutions (i.e. mining frequent closed sub tree patterns or maximal sub tree patterns) to compress the size of large results, the existing solutions are not suitable some real applications, such as frequent pattern-based classification. Furthermore, according to the Minimum Description Length (MDL) Principle, frequent rooted sub trees generators are preferable to frequent closed/maximal sub tree patterns in the applications of frequent pattern-based classification. In this paper, we study a novel problem of mining frequent rooted ordered tree generators. To speed up the efficiency of mining process, we propose a depth-first-search-based framework. Moreover, two effective pruning strategies are integrated into the framework to reduce the search space and avoid redundant computation. Finally, we verify the effectiveness and efficiency of our proposed approaches through extensive experiments.
高效挖掘频繁根有序树生成器
随着XML数据库等树状结构数据的广泛应用,频繁子树模式的挖掘研究近年来受到数据挖掘界和数据库界的广泛关注。由于其向下闭合的特性,挖掘完全频繁子树模式可以得到指数级的结果。虽然已有的研究提出了几种缓解方案(如挖掘频繁闭子树模式或最大子树模式)来压缩大型结果的大小,但现有的解决方案并不适合一些实际应用,如基于频繁模式的分类。此外,根据最小描述长度(MDL)原则,在基于频繁模式的分类应用中,频繁根子树生成器优于频繁闭/最大子树模式。本文研究了一个挖掘频繁根有序树发生器的新问题。为了提高挖掘过程的效率,我们提出了一种基于深度优先搜索的框架。此外,该框架还集成了两种有效的剪枝策略,减少了搜索空间,避免了冗余计算。最后,我们通过大量的实验验证了我们提出的方法的有效性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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