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Scalable Technique to Discover Items Support from Trie Data Structure

机译:通过Trie数据结构发现项目支持的可扩展技术

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One of the popular and compact trie data structure to represent frequent patterns is via frequent pattern tree (FP-Tree). There are two scanning processes involved in the original database before the FP-Tree can be constructed. One of them is to determine the items support (items and their support) that fulfill minimum support threshold by scanning the entire database. However, if the changes are suddenly occurred in the database, this process must be repeated all over again. In this paper, we introduce a technique called Fast Determination of Item Support Technique (F-DIST) to capture the items support from our proposed Disorder Support Trie Itemset (DOSTrielT) data structure. Experiments through three UCI benchmark datasets show that the computational time to capture the items support using F-DIST from DOSTrielT is significantly outperformed the classical FP-Tree technique about 3 orders of magnitude, thus verify its scalability.
机译:代表频繁模式的流行且紧凑的trie数据结构之一是通过频繁模式树(FP-Tree)。在可以构造FP-Tree之前,原始数据库涉及两个扫描过程。其中一项是通过扫描整个数据库来确定满足最小支持阈值的项目支持(项目及其支持)。但是,如果更改突然在数据库中发生,则必须重新重复此过程。在本文中,我们介绍了一种称为项目支持技术的快速确定(F-DIST)的技术,可以从我们提出的无障碍支持Trie项目集(DOSTrielT)数据结构中捕获项目支持。通过三个UCI基准数据集进行的实验表明,使用DOSTrielT的F-DIST捕获项目支持的计算时间明显优于传统的FP-Tree技术约3个数量级,从而验证了其可伸缩性。

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