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Efficient Mining of High Utility Patterns over Data Streams with a Sliding Window Method

机译:滑动窗口法在数据流上高效挖掘高实用性模式

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High utility pattern (HUP) mining over data streams has become a challenging research issue in data mining. The existing sliding window-based HUP mining algorithms over stream data suffer from the level-wise candidate generation-and-test problem. Therefore, they need a large amount of execution time and memory. Moreover, their data structures are not suitable for interactive mining. To solve these problems of the existing algorithms, in this paper, we propose a new tree structure, called HUS-tree (High Utility Stream tree) and a novel algorithm, called HUPMS (HUP Mining over Stream data), for sliding window-based HUP mining over data streams. By capturing the important information of the stream data into an HUS-tree, our HUPMS algorithm can mine all the HUPs in the current window with a pattern growth approach. Moreover, HUS-tree is very eflicient for interactive mining. Extensive performance analyses show that our algorithm significantly outperforms the existing sliding window-based HUP mining algorithms.
机译:在数据流上进行高实用性模式(HUP)挖掘已成为数据挖掘中一个具有挑战性的研究问题。现有的基于滑动窗口的基于HUP的流数据挖掘算法存在层次候选生成和测试问题。因此,它们需要大量的执行时间和内存。而且,它们的数据结构不适合交互式挖掘。为了解决现有算法的这些问题,在本文中,我们提出了一种新的树结构,称为HUS-tree(高效流树),以及一种新的算法,称为HUPMS(基于流的HUP挖掘),用于基于滑动窗口的HUP通过数据流进行挖掘。通过将流数据的重要信息捕获到HUS树中,我们的HUPMS算法可以使用模式增长方法来挖掘当前窗口中的所有HUP。此外,HUS-tree对于交互式挖掘非常有效。大量的性能分析表明,我们的算法明显优于现有的基于滑动窗口的HUP挖掘算法。

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