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Incremental mining of closed inter- transaction itemsets over data stream sliding windows

机译:在数据流滑动窗口上增量挖掘封闭式交易间项目集

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摘要

Mining inter-transaction association rules is one of the most interesting issues in data mining research. However, in a data stream environment the previous approaches are unable to find the result of the new-incoming data and the original database without recomputing the whole database. In this paper, we propose an incremental mining algorithm, called DSM-CITI (Data Stream Mining for Closed Inter-Transaction Itemsets), for discovering the set of all frequent inter-transaction itemsets from data streams. In the framework of DSM-CITI, a new in-memory summary data structure, ITP-tree, is developed to maintain frequent inter-transaction itemsets. Moreover, algorithm DSM-CITI is able to construct ITP-tree incrementally and uses the property to avoid unnecessary updates. Experimental studies show that the proposed algorithm is efficient and scalable for mining frequent inter-transaction itemsets over stream sliding windows.
机译:事务间关联规则的挖掘是数据挖掘研究中最有趣的问题之一。但是,在数据流环境中,以前的方法无法在不重新计算整个数据库的情况下找到新传入数据和原始数据库的结果。在本文中,我们提出了一种增量挖掘算法,称为DSM-CITI(闭合交易项目集的数据流挖掘),用于从数据流中发现所有频繁交易项目集的集合。在DSM-CITI的框架中,开发了一种新的内存中摘要数据结构ITP树,以维护频繁的事务间项目集。此外,算法DSM-CITI能够递增地构造ITP树,并使用该属性来避免不必要的更新。实验研究表明,该算法对流滑动窗口上频繁的交互项集有效且可扩展。

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