SeqStream:在流滑动窗口上挖掘封闭的顺序模式

Lei Chang, Tengjiao Wang, Dongqing Yang, Hua Luan
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引用次数: 43

摘要

先前的研究表明,挖掘封闭模式比挖掘完整的频繁模式集提供更多的好处,因为封闭模式挖掘导致更紧凑的结果和更有效的算法。它在主要关注内存和计算能力的数据流环境中非常有用。研究了数据流滑动窗口上封闭序列模式的挖掘问题。设计了一种概要结构IST (Inverse Closed Sequence Tree)来保持当前窗口中的逆封闭序列模式。提出了一种高效的算法SeqStream,对流窗口中的封闭序列模式进行增量挖掘,并采用了多种新颖的策略对搜索空间进行积极修剪。在真实数据集和合成数据集上进行的大量实验表明,SeqStream比PrefixSpan、CloSpan和bid的性能高出一到两个数量级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SeqStream: Mining Closed Sequential Patterns over Stream Sliding Windows
Previous studies have shown mining closed patterns provides more benefits than mining the complete set of frequent patterns, since closed pattern mining leads to more compact results and more efficient algorithms. It is quite useful in a data stream environment where memory and computation power are major concerns. This paper studies the problem of mining closed sequential patterns over data stream sliding windows. A synopsis structure IST (Inverse Closed Sequence Tree) is designed to keep inverse closed sequential patterns in current window. An efficient algorithm SeqStream is developed to mine closed sequential patterns in stream windows incrementally, and various novel strategies are adopted in SeqStream to prune search space aggressively. Extensive experiments on both real and synthetic data sets show that SeqStream outperforms PrefixSpan, CloSpan and BIDE by a factor of about one to two orders of magnitude.
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